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115 Commits

Author SHA1 Message Date
udlbook
e968741846 Add files via upload 2024-07-22 17:09:30 -04:00
udlbook
37011065d7 Add files via upload 2024-07-22 17:09:15 -04:00
udlbook
afd20d0364 Update 17_1_Latent_Variable_Models.ipynb 2024-07-22 15:03:17 -04:00
udlbook
0d135f1ee7 Fixed problems with MNIST1D 2024-07-19 15:55:44 -04:00
udlbook
54a020304e Merge pull request #211 from qualiaMachine/patch-1
Update 8_3_Double_Descent.ipynb
2024-07-10 15:53:00 -04:00
Chris Endemann
ccbbc4126e Update 8_3_Double_Descent.ipynb
Apologies, accidentally removed the "open in colab" button in the pull request you accepted earlier today. This corrects the mistake!
2024-07-10 14:15:21 -05:00
udlbook
d3273c99e2 Merge pull request #210 from qualiaMachine/main
Add vertical line to double descent plot indicating where count(weights) = count(train)
2024-07-10 14:33:31 -04:00
Chris Endemann
f9e45c976c Merge branch 'udlbook:main' into main 2024-07-10 09:43:18 -05:00
Chris Endemann
b005cec9c1 Update 8_3_Double_Descent.ipynb
I added a little code to include a vertical dashed line on the plot representing where total_weights = number of train observations.  I also moved n_epochs as an argument to fit_model() so learners can play around with the impact of n_epochs more easily.
2024-07-10 09:42:38 -05:00
udlbook
b8a91ad34d Merge pull request #208 from SwayStar123/patch-4
Update 12_2_Multihead_Self_Attention.ipynb
2024-07-09 17:53:31 -04:00
SwayStar123
a2a86c27bc Update 12_2_Multihead_Self_Attention.ipynb
title number is incorrect, its actually 12.2
2024-07-06 17:19:13 +05:30
udlbook
d80d04c2d4 Add files via upload 2024-07-02 14:42:18 -04:00
udlbook
c1f0181653 Update 10_4_Downsampling_and_Upsampling.ipynb 2024-07-02 14:24:36 -04:00
udlbook
6e18234d24 Merge pull request #206 from tomheaton/github-icon
website: Add GitHub social link
2024-07-02 14:23:00 -04:00
udlbook
5730c05547 Create LICENSE (MIT) 2024-07-01 09:34:05 -04:00
Tom Heaton
ccb80c16b8 GitHub social link 2024-06-27 19:41:34 +01:00
Tom Heaton
87387b2b4c fix import 2024-06-27 19:38:52 +01:00
Simon Prince
06eaec9749 Fix file extension 2024-06-24 17:49:03 -04:00
udlbook
9aeda14efa Merge pull request #203 from tomheaton/more-news
website: changes to news section
2024-06-21 09:51:51 -04:00
Tom Heaton
d1df6426b2 cleanup some state and functions 2024-06-21 10:21:11 +01:00
Tom Heaton
43b8fa3685 fix pdf download texts 2024-06-21 10:19:07 +01:00
Tom Heaton
ca6e4b29ac simple show more news working 2024-06-21 10:18:16 +01:00
Tom Heaton
267d6ccb7f remove book selling news 2024-06-20 10:43:35 +01:00
Tom Heaton
735947b728 dynamic rendering for news items 2024-06-20 10:39:17 +01:00
Tom Heaton
251aef1876 fix vite error 2024-06-20 10:12:05 +01:00
Tom Heaton
07ff6c06b1 fix import 2024-06-20 10:11:17 +01:00
Tom Heaton
29e4cec04e fix eslint error 2024-06-20 10:10:53 +01:00
Simon Prince
c3ce38410c minor fixes to website 2024-06-19 12:08:06 -04:00
udlbook
646e60ed95 Merge pull request #202 from tomheaton/path-aliases-new
website: Add path aliases + some fixes
2024-06-19 12:03:03 -04:00
Tom Heaton
5e61bcf694 fix links 2024-06-19 15:35:44 +01:00
Tom Heaton
54399a3c68 fix hero section on mobile 2024-06-19 15:35:17 +01:00
Tom Heaton
3926ff41ea fix navbar naming 2024-06-19 15:16:58 +01:00
Tom Heaton
9c34bfed02 Rename NavBar_temp to Navbar 2024-06-19 15:16:17 +01:00
Tom Heaton
9176623331 Rename NavBar to NavBar_temp 2024-06-19 15:15:45 +01:00
Tom Heaton
5534df187e refactor index page 2024-06-19 15:15:16 +01:00
Tom Heaton
9b58b2862f remove old dep 2024-06-19 15:14:34 +01:00
Tom Heaton
2070ac4400 delete old code 2024-06-19 15:13:46 +01:00
Tom Heaton
393e4907dc path aliases 2024-06-19 15:13:34 +01:00
udlbook
e850676722 Merge pull request #200 from tomheaton/dynamic
website dynamic data
2024-06-19 09:08:12 -04:00
Tom Heaton
796f17ed90 media dynamic rendering (partial) 2024-06-18 12:40:09 +01:00
Tom Heaton
dc0301a86e footer dynamic rendering 2024-06-18 12:33:53 +01:00
Tom Heaton
813f628e4e fixes 2024-06-18 12:23:48 +01:00
Tom Heaton
3ae7d68f6e more dynamic rendering 2024-06-18 12:21:35 +01:00
Tom Heaton
a96a14999f instructors dynamic rendering 2024-06-18 12:03:39 +01:00
Tom Heaton
f91e878eef notebooks dynamic rendering 2024-06-18 11:47:46 +01:00
Tom Heaton
9b89499b75 delete build dir 2024-06-17 21:53:13 +01:00
Simon Prince
7d6ac5e34f fixed tiny mistake in link 2024-06-17 16:42:54 -04:00
udlbook
55dbe7e0c4 Merge pull request #198 from tomheaton/cleanup
website code cleanup
2024-06-17 16:15:54 -04:00
udlbook
1cf21ea61a Created using Colab 2024-06-17 15:11:34 -04:00
Tom Heaton
e4191beb79 refactor styles 2024-06-17 15:28:43 +01:00
Tom Heaton
10b9dea9a4 change build dir to dist 2024-06-17 15:24:35 +01:00
Tom Heaton
414eeb3557 formatting 2024-06-17 15:22:26 +01:00
Tom Heaton
f126809572 Merge branch 'main' into cleanup 2024-06-17 15:20:21 +01:00
Tom Heaton
2a30c49d22 fix deploy 2024-06-17 14:52:47 +01:00
udlbook
bb32fe0cdf Created using Colab 2024-06-11 18:35:42 -04:00
udlbook
1ee756cf9a Update 17_3_Importance_Sampling.ipynb 2024-06-11 15:07:57 -04:00
udlbook
742d922ce7 Created using Colab 2024-06-07 15:21:45 -04:00
Simon Prince
c02eea499c Merge branch 'main' of https://github.com/udlbook/udlbook 2024-06-06 15:10:46 -04:00
Simon Prince
cb94b61abd new NKT tutorial 2024-06-06 15:02:21 -04:00
Tom Heaton
447bb82e2f remove nav listener on unmount 2024-06-06 00:46:46 +01:00
Tom Heaton
77da5694bb use default exports 2024-06-06 00:38:13 +01:00
Tom Heaton
96c7e41c9d update deps 2024-06-06 00:31:00 +01:00
Tom Heaton
625d1e29bb code cleanup 2024-06-06 00:23:19 +01:00
Tom Heaton
3cf0c4c418 add readme 2024-06-06 00:08:09 +01:00
Tom Heaton
03c92541ad formatting 2024-06-05 23:58:58 +01:00
Tom Heaton
def3e5234b setup formatting 2024-06-05 23:56:37 +01:00
Tom Heaton
815adb9b21 cleanup package.json 2024-06-05 23:51:49 +01:00
udlbook
5ba28e5b56 Update 12_2_Multihead_Self_Attention.ipynb 2024-06-05 16:11:17 -04:00
udlbook
8566a7322f Merge pull request #196 from tomheaton/website-changes
Migrate from `create-react-app` to `vite`
2024-06-05 16:09:55 -04:00
udlbook
c867e67e8c Created using Colab 2024-06-05 10:55:51 -04:00
udlbook
cba27b3da4 Add files via upload 2024-05-27 18:15:58 -04:00
Tom Heaton
1c706bd058 update eslint ignore 2024-05-25 01:38:19 +01:00
Tom Heaton
72514994bf delete dist dir 2024-05-25 00:53:16 +01:00
Tom Heaton
872926c17e remove dist dir from .gitignore 2024-05-25 00:51:05 +01:00
Tom Heaton
0dfeb169be fix build dir 2024-05-25 00:50:34 +01:00
Tom Heaton
89a0532283 vite 2024-05-25 00:07:44 +01:00
udlbook
af5a719496 Merge pull request #195 from SwayStar123/patch-3
Fix typo in 7_2_Backpropagation.ipynb
2024-05-23 15:02:54 -04:00
SwayStar123
56c31efc90 Update 7_2_Backpropagation.ipynb 2024-05-23 14:59:55 +05:30
udlbook
06fc37c243 Add files via upload 2024-05-22 15:41:23 -04:00
udlbook
45793f02f8 Merge pull request #189 from ferdiekrammer/patch-1
Update 3_3_Shallow_Network_Regions.ipynb
2024-05-22 15:22:55 -04:00
udlbook
7c4cc1ddb4 Merge pull request #192 from SwayStar123/patch-2
Fix typo in 6_5_Adam.ipynb
2024-05-22 15:15:28 -04:00
SwayStar123
35b6f67bbf Update 6_5_Adam.ipynb 2024-05-22 12:59:03 +05:30
ferdiekrammer
194baf622a Update 3_3_Shallow_Network_Regions.ipynb
removes  <br> correcting the format of the equation in the notebook
2024-05-18 01:15:29 +01:00
udlbook
a547fee3f4 Created using Colab 2024-05-16 16:30:16 -04:00
udlbook
ea4858e78e Created using Colab 2024-05-16 16:29:05 -04:00
udlbook
444b06d5c2 Created using Colab 2024-05-16 16:27:48 -04:00
udlbook
98bce9edb5 Created using Colab 2024-05-16 16:25:26 -04:00
udlbook
37e9ae2311 Created using Colab 2024-05-16 16:24:45 -04:00
udlbook
ea1b6ad998 Created using Colab 2024-05-16 16:22:35 -04:00
udlbook
d17a5a3872 Created using Colab 2024-05-16 16:21:10 -04:00
udlbook
3e7e059bff Created using Colab 2024-05-16 16:19:57 -04:00
udlbook
445ad11c46 Created using Colab 2024-05-16 16:18:07 -04:00
udlbook
6928b50966 Created using Colab 2024-05-16 16:16:44 -04:00
udlbook
e1d34ed561 Merge pull request #185 from DhruvPatel01/chap8_fixes
Fixed 8.1 Notebook to install mnist1d
2024-05-16 16:14:53 -04:00
udlbook
f3528f758b Merge pull request #187 from SwayStar123/patch-1
Remove redundant `to`
2024-05-16 16:02:25 -04:00
udlbook
5c7a03172a Merge pull request #188 from yrahal/main
Fix more Chap09 tiny typos
2024-05-16 16:01:49 -04:00
Youcef Rahal
0233131b07 Notebook 9.5 2024-05-12 15:27:57 -04:00
SwayStar123
8200299e64 Update 2_1_Supervised_Learning.ipynb 2024-05-12 15:01:36 +05:30
Youcef Rahal
2ac42e70d3 Fix more Chap09 tiny typos 2024-05-11 15:20:11 -04:00
udlbook
dd0eaeb781 Add files via upload 2024-05-10 10:14:29 -04:00
Dhruv Patel
2cdff544f3 Fixed to install mnist1d for collab 2024-05-10 09:32:20 +05:30
Dhruv Patel
384e122c5f Fixed mnist1d installation for collab 2024-05-10 09:25:05 +05:30
Youcef Rahal
1343b68c60 Fix more Chap09 tiny typos 2024-05-09 17:51:53 -04:00
udlbook
30420a2f92 Merge pull request #183 from yrahal/main
Fix typos in Chap09 notebooks
2024-05-08 17:30:27 -04:00
Youcef Rahal
89e8ebcbc5 Fix typos in Chap09 notebooks 2024-05-06 20:20:35 -04:00
udlbook
14b751ff47 Add files via upload 2024-05-01 17:11:24 -04:00
udlbook
80e99ef2da Created using Colab 2024-05-01 16:43:15 -04:00
udlbook
46214f64bc Delete Old directory 2024-05-01 09:45:28 -04:00
udlbook
c875fb0361 Added correct answer 2024-04-23 15:57:56 -04:00
udlbook
451ccc0832 Created using Colab 2024-04-23 15:43:27 -04:00
Simon Prince
4b939b7426 Merge branch 'main' of https://github.com/udlbook/udlbook 2024-04-18 17:41:24 -04:00
Simon Prince
2d300a16a1 Final website tweaks 2024-04-18 17:41:04 -04:00
udlbook
d057548be9 Add files via upload 2024-04-18 17:40:08 -04:00
udlbook
75976a32d0 Delete UDL_Answer_Booklet.pdf 2024-04-18 17:38:42 -04:00
udlbook
48b204df2c Add files via upload 2024-04-18 17:38:16 -04:00
93 changed files with 9810 additions and 25422 deletions

10
.editorconfig Normal file
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@@ -0,0 +1,10 @@
root = true
[*.{js,jsx,ts,tsx,md,mdx,json,cjs,mjs,css}]
indent_style = space
indent_size = 4
end_of_line = lf
charset = utf-8
trim_trailing_whitespace = true
insert_final_newline = true
max_line_length = 100

18
.eslintrc.cjs Normal file
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@@ -0,0 +1,18 @@
module.exports = {
root: true,
env: { browser: true, es2020: true, node: true },
extends: [
"eslint:recommended",
"plugin:react/recommended",
"plugin:react/jsx-runtime",
"plugin:react-hooks/recommended",
],
ignorePatterns: ["build", ".eslintrc.cjs"],
parserOptions: { ecmaVersion: "latest", sourceType: "module" },
settings: { react: { version: "18.2" } },
plugins: ["react-refresh"],
rules: {
"react/jsx-no-target-blank": "off",
"react-refresh/only-export-components": ["warn", { allowConstantExport: true }],
},
};

13
.gitignore vendored
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@@ -9,15 +9,22 @@
/coverage
# production
/build
/dist
# misc
.DS_Store
# ENV
.env.local
.env.development.local
.env.test.local
.env.production.local
# debug
npm-debug.log*
yarn-debug.log*
yarn-error.log*
# IDE
.idea
.vscode
# macOS
.DS_Store

7
.prettierignore Normal file
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@@ -0,0 +1,7 @@
# ignore these directories when formatting the repo
/Blogs
/CM20315
/CM20315_2023
/Notebooks
/PDFFigures
/Slides

14
.prettierrc.cjs Normal file
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@@ -0,0 +1,14 @@
/** @type {import("prettier").Config} */
const prettierConfig = {
trailingComma: "all",
tabWidth: 4,
useTabs: false,
semi: true,
singleQuote: false,
bracketSpacing: true,
printWidth: 100,
endOfLine: "lf",
plugins: [require.resolve("prettier-plugin-organize-imports")],
};
module.exports = prettierConfig;

1127
Blogs/Borealis_NNGP.ipynb Normal file

File diff suppressed because one or more lines are too long

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@@ -196,7 +196,7 @@
"source": [
"# Visualizing the loss function\n",
"\n",
"The above process is equivalent to to descending coordinate wise on the loss function<br>\n",
"The above process is equivalent to descending coordinate wise on the loss function<br>\n",
"\n",
"Now let's plot that function"
],

View File

@@ -221,7 +221,7 @@
{
"cell_type": "markdown",
"source": [
"This moves towards the minimum at a sensible speed, but we never actually converge -- the solution just bounces back and forth between the last two points. To make it converge, we add momentum to both the estimates of the gradient and the pointwise squared gradient. We also modify the statistics by a factor that depends on the time to make sure the progress is now slow to start with."
"This moves towards the minimum at a sensible speed, but we never actually converge -- the solution just bounces back and forth between the last two points. To make it converge, we add momentum to both the estimates of the gradient and the pointwise squared gradient. We also modify the statistics by a factor that depends on the time to make sure the progress is not slow to start with."
],
"metadata": {
"id": "_6KoKBJdGGI4"

View File

@@ -143,7 +143,7 @@
" # Run through the layers, calculating all_f[0...K-1] and all_h[1...K]\n",
" for layer in range(K):\n",
" # Update preactivations and activations at this layer according to eqn 7.16\n",
" # Remmember to use np.matmul for matrix multiplications\n",
" # Remember to use np.matmul for matrix multiplications\n",
" # TODO -- Replace the lines below\n",
" all_f[layer] = all_h[layer]\n",
" all_h[layer+1] = all_f[layer]\n",

View File

@@ -4,7 +4,6 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyOaATWBrwVMylV1akcKtHjt",
"include_colab_link": true
},
"kernelspec": {
@@ -250,7 +249,7 @@
"# Main backward pass routine\n",
"def backward_pass(all_weights, all_biases, all_f, all_h, y):\n",
" # Retrieve number of layers\n",
" K = all_weights\n",
" K = len(all_weights) - 1\n",
"\n",
" # We'll store the derivatives dl_dweights and dl_dbiases in lists as well\n",
" all_dl_dweights = [None] * (K+1)\n",
@@ -338,8 +337,8 @@
{
"cell_type": "code",
"source": [
"# You can see that the values of the hidden units are increasing on average (the variance is across all hidden units at the layer\n",
"# and the 1000 training examples\n",
"# You can see that the gradients of the hidden units are increasing on average (the standard deviation is across all hidden units at the layer\n",
"# and the 100 training examples\n",
"\n",
"# TO DO\n",
"# Change this to 50 layers with 80 hidden units per layer\n",

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@@ -46,8 +46,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"%pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "ifVjS4cTOqKz"

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@@ -5,7 +5,6 @@
"colab": {
"provenance": [],
"gpuType": "T4",
"authorship_tag": "ABX9TyN/KUpEObCKnHZ/4Onp5sHG",
"include_colab_link": true
},
"kernelspec": {
@@ -48,8 +47,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "fn9BP5N5TguP"
@@ -100,7 +99,7 @@
"# data['x'], data['y'], data['x_test'], and data['y_test']\n",
"print(\"Examples in training set: {}\".format(len(data['y'])))\n",
"print(\"Examples in test set: {}\".format(len(data['y_test'])))\n",
"print(\"Length of each example: {}\".format(data['x'].shape[-1]))"
"print(\"Dimensionality of each example: {}\".format(data['x'].shape[-1]))"
],
"metadata": {
"id": "PW2gyXL5UkLU"
@@ -148,7 +147,7 @@
{
"cell_type": "code",
"source": [
"def fit_model(model, data):\n",
"def fit_model(model, data, n_epoch):\n",
"\n",
" # choose cross entropy loss function (equation 5.24)\n",
" loss_function = torch.nn.CrossEntropyLoss()\n",
@@ -165,9 +164,6 @@
" # load the data into a class that creates the batches\n",
" data_loader = DataLoader(TensorDataset(x_train,y_train), batch_size=100, shuffle=True, worker_init_fn=np.random.seed(1))\n",
"\n",
" # loop over the dataset n_epoch times\n",
" n_epoch = 1000\n",
"\n",
" for epoch in range(n_epoch):\n",
" # loop over batches\n",
" for i, batch in enumerate(data_loader):\n",
@@ -204,6 +200,18 @@
"execution_count": null,
"outputs": []
},
{
"cell_type": "code",
"source": [
"def count_parameters(model):\n",
" return sum(p.numel() for p in model.parameters() if p.requires_grad)"
],
"metadata": {
"id": "AQNCmFNV6JpV"
},
"execution_count": null,
"outputs": []
},
{
"cell_type": "markdown",
"source": [
@@ -227,19 +235,27 @@
"# This code will take a while (~30 mins on GPU) to run! Go and make a cup of coffee!\n",
"\n",
"hidden_variables = np.array([2,4,6,8,10,14,18,22,26,30,35,40,45,50,55,60,70,80,90,100,120,140,160,180,200,250,300,400]) ;\n",
"\n",
"errors_train_all = np.zeros_like(hidden_variables)\n",
"errors_test_all = np.zeros_like(hidden_variables)\n",
"total_weights_all = np.zeros_like(hidden_variables)\n",
"\n",
"# loop over the dataset n_epoch times\n",
"n_epoch = 1000\n",
"\n",
"# For each hidden variable size\n",
"for c_hidden in range(len(hidden_variables)):\n",
" print(f'Training model with {hidden_variables[c_hidden]:3d} hidden variables')\n",
" # Get a model\n",
" model = get_model(hidden_variables[c_hidden]) ;\n",
" # Count and store number of weights\n",
" total_weights_all[c_hidden] = count_parameters(model)\n",
" # Train the model\n",
" errors_train, errors_test = fit_model(model, data)\n",
" errors_train, errors_test = fit_model(model, data, n_epoch)\n",
" # Store the results\n",
" errors_train_all[c_hidden] = errors_train\n",
" errors_test_all[c_hidden]= errors_test"
" errors_test_all[c_hidden]= errors_test\n",
"\n"
],
"metadata": {
"id": "K4OmBZGHWXpk"
@@ -250,12 +266,29 @@
{
"cell_type": "code",
"source": [
"import matplotlib.pyplot as plt\n",
"import numpy as np\n",
"\n",
"# Assuming data['y'] is available and contains the training examples\n",
"num_training_examples = len(data['y'])\n",
"\n",
"# Find the index where total_weights_all is closest to num_training_examples\n",
"closest_index = np.argmin(np.abs(np.array(total_weights_all) - num_training_examples))\n",
"\n",
"# Get the corresponding value of hidden variables\n",
"hidden_variable_at_num_training_examples = hidden_variables[closest_index]\n",
"\n",
"# Plot the results\n",
"fig, ax = plt.subplots()\n",
"ax.plot(hidden_variables, errors_train_all,'r-',label='train')\n",
"ax.plot(hidden_variables, errors_test_all,'b-',label='test')\n",
"ax.set_ylim(0,100);\n",
"ax.set_xlabel('No hidden variables'); ax.set_ylabel('Error')\n",
"ax.plot(hidden_variables, errors_train_all, 'r-', label='train')\n",
"ax.plot(hidden_variables, errors_test_all, 'b-', label='test')\n",
"\n",
"# Add a vertical line at the point where total weights equal the number of training examples\n",
"ax.axvline(x=hidden_variable_at_num_training_examples, color='g', linestyle='--', label='N(weights) = N(train)')\n",
"\n",
"ax.set_ylim(0, 100)\n",
"ax.set_xlabel('No. hidden variables')\n",
"ax.set_ylabel('Error')\n",
"ax.legend()\n",
"plt.show()\n"
],
@@ -264,6 +297,24 @@
},
"execution_count": null,
"outputs": []
},
{
"cell_type": "code",
"source": [],
"metadata": {
"id": "KT4X8_hE5NFb"
},
"execution_count": null,
"outputs": []
},
{
"cell_type": "code",
"source": [],
"metadata": {
"id": "iGKZSfVF2r4z"
},
"execution_count": null,
"outputs": []
}
]
}

View File

@@ -178,7 +178,7 @@
"\n",
"def draw_loss_function(compute_loss, data, model, my_colormap, phi_iters = None):\n",
"\n",
" # Make grid of intercept/slope values to plot\n",
" # Make grid of offset/frequency values to plot\n",
" offsets_mesh, freqs_mesh = np.meshgrid(np.arange(-10,10.0,0.1), np.arange(2.5,22.5,0.1))\n",
" loss_mesh = np.zeros_like(freqs_mesh)\n",
" # Compute loss for every set of parameters\n",
@@ -304,7 +304,7 @@
"for c_step in range (n_steps):\n",
" # Do gradient descent step\n",
" phi_all[:,c_step+1:c_step+2] = gradient_descent_step(phi_all[:,c_step:c_step+1],data, model)\n",
" # Measure loss and draw model every 4th step\n",
" # Measure loss and draw model every 8th step\n",
" if c_step % 8 == 0:\n",
" loss = compute_loss(data[0,:], data[1,:], model, phi_all[:,c_step+1:c_step+2])\n",
" draw_model(data,model,phi_all[:,c_step+1], \"Iteration %d, loss = %f\"%(c_step+1,loss))\n",
@@ -369,7 +369,7 @@
"# Code to draw the regularization function\n",
"def draw_reg_function():\n",
"\n",
" # Make grid of intercept/slope values to plot\n",
" # Make grid of offset/frequency values to plot\n",
" offsets_mesh, freqs_mesh = np.meshgrid(np.arange(-10,10.0,0.1), np.arange(2.5,22.5,0.1))\n",
" loss_mesh = np.zeros_like(freqs_mesh)\n",
" # Compute loss for every set of parameters\n",
@@ -399,7 +399,7 @@
"# Code to draw loss function with regularization\n",
"def draw_loss_function_reg(data, model, lambda_, my_colormap, phi_iters = None):\n",
"\n",
" # Make grid of intercept/slope values to plot\n",
" # Make grid of offset/frequency values to plot\n",
" offsets_mesh, freqs_mesh = np.meshgrid(np.arange(-10,10.0,0.1), np.arange(2.5,22.5,0.1))\n",
" loss_mesh = np.zeros_like(freqs_mesh)\n",
" # Compute loss for every set of parameters\n",
@@ -512,7 +512,7 @@
"for c_step in range (n_steps):\n",
" # Do gradient descent step\n",
" phi_all[:,c_step+1:c_step+2] = gradient_descent_step2(phi_all[:,c_step:c_step+1],lambda_, data, model)\n",
" # Measure loss and draw model every 4th step\n",
" # Measure loss and draw model every 8th step\n",
" if c_step % 8 == 0:\n",
" loss = compute_loss2(data[0,:], data[1,:], model, phi_all[:,c_step+1:c_step+2], lambda_)\n",
" draw_model(data,model,phi_all[:,c_step+1], \"Iteration %d, loss = %f\"%(c_step+1,loss))\n",
@@ -528,7 +528,7 @@
{
"cell_type": "markdown",
"source": [
"You should see that the gradient descent algorithm now finds the correct minimum. By applying a tiny bit of domain knowledge (the parameter phi0 tends to be near zero and the parameters phi1 tends to be near 12.5), we get a better solution. However, the cost is that this solution is slightly biased towards this prior knowledge."
"You should see that the gradient descent algorithm now finds the correct minimum. By applying a tiny bit of domain knowledge (the parameter phi0 tends to be near zero and the parameter phi1 tends to be near 12.5), we get a better solution. However, the cost is that this solution is slightly biased towards this prior knowledge."
],
"metadata": {
"id": "wrszSLrqZG4k"

View File

@@ -52,7 +52,7 @@
"# import libraries\n",
"import numpy as np\n",
"import matplotlib.pyplot as plt\n",
"# Define seed so get same results each time\n",
"# Define seed to get same results each time\n",
"np.random.seed(1)"
]
},
@@ -80,7 +80,7 @@
" for i in range(n_data):\n",
" x[i] = np.random.uniform(i/n_data, (i+1)/n_data, 1)\n",
"\n",
" # y value from running through functoin and adding noise\n",
" # y value from running through function and adding noise\n",
" y = np.ones(n_data)\n",
" for i in range(n_data):\n",
" y[i] = true_function(x[i])\n",
@@ -96,7 +96,7 @@
{
"cell_type": "code",
"source": [
"# Draw the fitted function, together win uncertainty used to generate points\n",
"# Draw the fitted function, together with uncertainty used to generate points\n",
"def plot_function(x_func, y_func, x_data=None,y_data=None, x_model = None, y_model =None, sigma_func = None, sigma_model=None):\n",
"\n",
" fig,ax = plt.subplots()\n",
@@ -137,7 +137,7 @@
"n_data = 15\n",
"x_data,y_data = generate_data(n_data, sigma_func)\n",
"\n",
"# Plot the functinon, data and uncertainty\n",
"# Plot the function, data and uncertainty\n",
"plot_function(x_func, y_func, x_data, y_data, sigma_func=sigma_func)"
],
"metadata": {
@@ -216,7 +216,7 @@
"# Closed form solution\n",
"beta, omega = fit_model_closed_form(x_data,y_data,n_hidden=14)\n",
"\n",
"# Get prediction for model across graph grange\n",
"# Get prediction for model across graph range\n",
"x_model = np.linspace(0,1,100);\n",
"y_model = network(x_model, beta, omega)\n",
"\n",
@@ -297,7 +297,7 @@
{
"cell_type": "code",
"source": [
"# Plot the median of the results\n",
"# Plot the mean of the results\n",
"# TODO -- find the mean prediction\n",
"# Replace this line\n",
"y_model_mean = all_y_model[0,:]\n",

View File

@@ -36,7 +36,7 @@
"# import libraries\n",
"import numpy as np\n",
"import matplotlib.pyplot as plt\n",
"# Define seed so get same results each time\n",
"# Define seed to get same results each time\n",
"np.random.seed(1)"
]
},
@@ -85,7 +85,7 @@
},
"outputs": [],
"source": [
"# Draw the fitted function, together win uncertainty used to generate points\n",
"# Draw the fitted function, together with uncertainty used to generate points\n",
"def plot_function(x_func, y_func, x_data=None,y_data=None, x_model = None, y_model =None, sigma_func = None, sigma_model=None):\n",
"\n",
" fig,ax = plt.subplots()\n",
@@ -220,7 +220,7 @@
" &\\propto&\\text{Norm}_{\\boldsymbol\\phi}\\biggl[\\frac{1}{\\sigma^2}\\left(\\frac{1}{\\sigma^2}\\mathbf{H}\\mathbf{H}^T+\\frac{1}{\\sigma_p^2}\\mathbf{I}\\right)^{-1}\\mathbf{H}\\mathbf{y},\\left(\\frac{1}{\\sigma^2}\\mathbf{H}\\mathbf{H}^T+\\frac{1}{\\sigma_p^2}\\mathbf{I}\\right)^{-1}\\biggr].\n",
"\\end{align}\n",
"\n",
"In fact, since this already a normal distribution, the constant of proportionality must be one and we can write\n",
"In fact, since this is already a normal distribution, the constant of proportionality must be one and we can write\n",
"\n",
"\\begin{align}\n",
" Pr(\\boldsymbol\\phi|\\{\\mathbf{x}_{i},\\mathbf{y}_{i}\\}) &=& \\text{Norm}_{\\boldsymbol\\phi}\\biggl[\\frac{1}{\\sigma^2}\\left(\\frac{1}{\\sigma^2}\\mathbf{H}\\mathbf{H}^T+\\frac{1}{\\sigma_p^2}\\mathbf{I}\\right)^{-1}\\mathbf{H}\\mathbf{y},\\left(\\frac{1}{\\sigma^2}\\mathbf{H}\\mathbf{H}^T+\\frac{1}{\\sigma_p^2}\\mathbf{I}\\right)^{-1}\\biggr].\n",

View File

@@ -4,7 +4,6 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyM38ZVBK4/xaHk5Ys5lF6dN",
"include_colab_link": true
},
"kernelspec": {
@@ -44,8 +43,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "syvgxgRr3myY"
@@ -95,7 +94,7 @@
"D_k = 200 # Hidden dimensions\n",
"D_o = 10 # Output dimensions\n",
"\n",
"# Define a model with two hidden layers of size 100\n",
"# Define a model with two hidden layers of size 200\n",
"# And ReLU activations between them\n",
"model = nn.Sequential(\n",
"nn.Linear(D_i, D_k),\n",
@@ -186,7 +185,7 @@
"ax.plot(errors_test,'b-',label='test')\n",
"ax.set_ylim(0,100); ax.set_xlim(0,n_epoch)\n",
"ax.set_xlabel('Epoch'); ax.set_ylabel('Error')\n",
"ax.set_title('TrainError %3.2f, Test Error %3.2f'%(errors_train[-1],errors_test[-1]))\n",
"ax.set_title('Train Error %3.2f, Test Error %3.2f'%(errors_train[-1],errors_test[-1]))\n",
"ax.legend()\n",
"plt.show()"
],
@@ -233,7 +232,7 @@
"cell_type": "code",
"source": [
"n_data_orig = data['x'].shape[0]\n",
"# We'll double the amount o fdata\n",
"# We'll double the amount of data\n",
"n_data_augment = n_data_orig+4000\n",
"augmented_x = np.zeros((n_data_augment, D_i))\n",
"augmented_y = np.zeros(n_data_augment)\n",

View File

@@ -4,7 +4,7 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyNJodaaCLMRWL9vTl8B/iLI",
"authorship_tag": "ABX9TyNb46PJB/CC1pcHGfjpUUZg",
"include_colab_link": true
},
"kernelspec": {
@@ -45,8 +45,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -301,7 +301,7 @@
"cell_type": "code",
"source": [
"# Define 2 by 2 original patch\n",
"orig_2_2 = np.array([[2, 4], [4,8]])\n",
"orig_2_2 = np.array([[6, 8], [8,4]])\n",
"print(orig_2_2)"
],
"metadata": {

View File

@@ -4,7 +4,7 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyMXS3SPB4cS/4qxix0lH/Hq",
"authorship_tag": "ABX9TyNIY8tswL9e48d5D53aSmHO",
"include_colab_link": true
},
"kernelspec": {
@@ -45,8 +45,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -4,7 +4,7 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyPVeAd3eDpEOCFh8CVyr1zz",
"authorship_tag": "ABX9TyPx2mM2zTHmDJeKeiE1RymT",
"include_colab_link": true
},
"kernelspec": {
@@ -45,8 +45,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -28,7 +28,7 @@
{
"cell_type": "markdown",
"source": [
"# **Notebook 12.1: Multhead Self-Attention**\n",
"# **Notebook 12.2: Multihead Self-Attention**\n",
"\n",
"This notebook builds a multihead self-attention mechanism as in figure 12.6\n",
"\n",

View File

@@ -4,7 +4,6 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyOMSGUFWT+YN0fwYHpMmHJM",
"include_colab_link": true
},
"kernelspec": {
@@ -99,7 +98,7 @@
"\n",
"# TODO -- Define node matrix\n",
"# There will be 9 nodes and 118 possible chemical elements\n",
"# so we'll define a 9x118 matrix. Each column represents one\n",
"# so we'll define a 118x9 matrix. Each column represents one\n",
"# node and is a one-hot vector (i.e. all zeros, except a single one at the\n",
"# chemical number of the element).\n",
"# Chemical numbers: Hydrogen-->1, Carbon-->6, Oxygen-->8\n",

View File

@@ -4,7 +4,6 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyM0StKV3FIZ3MZqfflqC0Rv",
"include_colab_link": true
},
"kernelspec": {
@@ -339,7 +338,7 @@
" print(\"Initial generator loss = \", compute_generator_loss(z, theta, phi0, phi1))\n",
" for iter in range(n_iter):\n",
" # Get gradient\n",
" dl_dtheta = compute_generator_gradient(x_real, x_syn, phi0, phi1)\n",
" dl_dtheta = compute_generator_gradient(z, theta, phi0, phi1)\n",
" # Take a gradient step (uphill, since we are trying to make synthesized data less well classified by discriminator)\n",
" theta = theta + alpha * dl_dtheta ;\n",
"\n",

View File

@@ -218,7 +218,8 @@
"cell_type": "code",
"source": [
"was = np.sum(TP * dist_mat)\n",
"print(\"Wasserstein distance = \", was)"
"print(\"Your Wasserstein distance = \", was)\n",
"print(\"Correct answer = 0.15148578811369506\")"
],
"metadata": {
"id": "yiQ_8j-Raq3c"

View File

@@ -55,7 +55,7 @@
"Pr(z) = \\text{Norm}_{z}[0,1]\n",
"\\end{equation}\n",
"\n",
"As in figure 17.2, we'll assume that the output is two dimensional, we we need to define a function that maps from the 1D latent variable to two dimensions. Usually, we would use a neural network, but in this case, we'll just define an arbitrary relationship.\n",
"As in figure 17.2, we'll assume that the output is two dimensional, we need to define a function that maps from the 1D latent variable to two dimensions. Usually, we would use a neural network, but in this case, we'll just define an arbitrary relationship.\n",
"\n",
"\\begin{align}\n",
"x_{1} &=& 0.5\\cdot\\exp\\Bigl[\\sin\\bigl[2+ 3.675 z \\bigr]\\Bigr]\\\\\n",

View File

@@ -61,7 +61,7 @@
"by drawing $I$ samples $y_i$ and using the formula:\n",
"\n",
"\\begin{equation}\n",
"\\mathbb{E}_{y}\\Bigl[\\exp\\bigl[- (y-1)^4\\bigr]\\Bigr] \\approx \\frac{1}{I} \\sum_{i=1}^I \\exp\\bigl[-(y-1)^4 \\bigr]\n",
"\\mathbb{E}_{y}\\Bigl[\\exp\\bigl[- (y-1)^4\\bigr]\\Bigr] \\approx \\frac{1}{I} \\sum_{i=1}^I \\exp\\bigl[-(y_i-1)^4 \\bigr]\n",
"\\end{equation}"
]
},

View File

@@ -4,7 +4,7 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyPkSYbEjOcEmLt8tU6HxNuR",
"authorship_tag": "ABX9TyNgBRvfIlngVobKuLE6leM+",
"include_colab_link": true
},
"kernelspec": {
@@ -45,8 +45,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -4,7 +4,7 @@
"metadata": {
"colab": {
"provenance": [],
"authorship_tag": "ABX9TyOo4vm4MXcIvAzVlMCaLikH",
"authorship_tag": "ABX9TyO6xuszaG4nNAcWy/3juLkn",
"include_colab_link": true
},
"kernelspec": {
@@ -44,8 +44,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -5,7 +5,7 @@
"colab": {
"provenance": [],
"gpuType": "T4",
"authorship_tag": "ABX9TyMjPBfDONmjqTSyEQDP2gjY",
"authorship_tag": "ABX9TyOG/5A+P053/x1IfFg52z4V",
"include_colab_link": true
},
"kernelspec": {
@@ -47,8 +47,8 @@
{
"cell_type": "code",
"source": [
"# Run this if you're in a Colab to make a local copy of the MNIST 1D repository\n",
"!git clone https://github.com/greydanus/mnist1d"
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d"
],
"metadata": {
"id": "D5yLObtZCi9J"

View File

@@ -43,7 +43,8 @@
"id": "Sg2i1QmhKW5d"
},
"source": [
"# Run this if you're in a Colab\n",
"# Run this if you're in a Colab to install MNIST 1D repository\n",
"!pip install git+https://github.com/greydanus/mnist1d\n",
"!git clone https://github.com/greydanus/mnist1d"
],
"execution_count": null,
@@ -95,6 +96,12 @@
"id": "I-vm_gh5xTJs"
},
"source": [
"from mnist1d.data import get_dataset, get_dataset_args\n",
"from mnist1d.utils import set_seed, to_pickle, from_pickle\n",
"\n",
"import sys ; sys.path.append('./mnist1d/notebooks')\n",
"from train import get_model_args, train_model\n",
"\n",
"args = mnist1d.get_dataset_args()\n",
"data = mnist1d.get_dataset(args=args) # by default, this will download a pre-made dataset from the GitHub repo\n",
"\n",
@@ -210,7 +217,7 @@
" # we would return [1,1,0,0,1]\n",
" # Remember that these are torch tensors and not numpy arrays\n",
" # Replace this function:\n",
" mask = torch.ones_like(scores)\n",
" mask = torch.ones_like(absolute_weights)\n",
"\n",
"\n",
" return mask"
@@ -237,7 +244,6 @@
"def find_lottery_ticket(model, dataset, args, sparsity_schedule, criteria_fn=None, **kwargs):\n",
"\n",
" criteria_fn = lambda init_params, final_params: final_params.abs()\n",
"\n",
" init_params = model.get_layer_vecs()\n",
" stats = {'train_losses':[], 'test_losses':[], 'train_accs':[], 'test_accs':[]}\n",
" models = []\n",
@@ -253,7 +259,7 @@
" model.set_layer_masks(masks)\n",
"\n",
" # training process\n",
" results = mnist1d.train_model(dataset, model, args)\n",
" results = train_model(dataset, model, args)\n",
" model = results['checkpoints'][-1]\n",
"\n",
" # store stats\n",
@@ -291,7 +297,8 @@
},
"source": [
"# train settings\n",
"model_args = mnist1d.get_model_args()\n",
"from train import get_model_args, train_model\n",
"model_args = get_model_args()\n",
"model_args.total_steps = 1501\n",
"model_args.hidden_size = 500\n",
"model_args.print_every = 5000 # print never\n",

7
Notebooks/LICENSE (MIT) Normal file
View File

@@ -0,0 +1,7 @@
Copyright 2023 Simon Prince
Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the “Software”), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:
The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.
THE SOFTWARE IS PROVIDED “AS IS”, WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.

34
README.md Normal file
View File

@@ -0,0 +1,34 @@
# Understanding Deep Learning
Understanding Deep Learning - Simon J.D. Prince
## Website
```shell
# Install dependencies
npm install
# Run the website in development mode
npm dev
# Build the website
npm build
# Preview the built website
npm preview
# Format the code
npm run format
# Lint the code
npm run lint
# Clean the repository
npm run clean
# Prepare to deploy the website
npm run predeploy
# Deploy the website
npm run deploy
```

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19
index.html Normal file
View File

@@ -0,0 +1,19 @@
<!doctype html>
<html lang="en">
<head>
<meta charset="utf-8" />
<meta name="viewport" content="width=device-width, initial-scale=1.0" />
<link rel="icon" type="image/x-icon" href="/favicon.ico" />
<link rel="preconnect" href="https://fonts.googleapis.com" />
<link rel="preconnect" href="https://fonts.gstatic.com" crossorigin />
<link
href="https://fonts.googleapis.com/css2?family=Encode+Sans+Expanded:wght@400;700&display=swap"
rel="stylesheet"
/>
<title>Understanding Deep Learning</title>
</head>
<body>
<div id="root"></div>
<script type="module" src="/src/index.jsx"></script>
</body>
</html>

View File

@@ -1,406 +0,0 @@
<!DOCTYPE html>
<html lang="en">
<head>
<meta charset="UTF-8">
<title>udlbook</title>
<link rel="stylesheet" href="style.css">
</head>
<body>
<div id="head">
<div>
<h1 style="margin: 0; font-size: 36px">Understanding Deep Learning</h1>
by Simon J.D. Prince
<br>Published by MIT Press Dec 5th 2023.<br>
<ul>
<li>
<p style="font-size: larger; margin-bottom: 0">Download full PDF <a
href="https://github.com/udlbook/udlbook/releases/download/v2.03/UnderstandingDeepLearning_02_26_24_C.pdf">here</a>
</p>2024-03-26. CC-BY-NC-ND license<br>
<img src="https://img.shields.io/github/downloads/udlbook/udlbook/total" alt="download stats shield">
</li>
<li> Order your copy from <a href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning/">here </a></li>
<li> Known errata can be found here: <a
href="https://github.com/udlbook/udlbook/raw/main/UDL_Errata.pdf">PDF</a></li>
<li> Report new errata via <a href="https://github.com/udlbook/udlbook/issues">github</a>
or contact me directly at udlbookmail@gmail.com
<li> Follow me on <a href="https://twitter.com/SimonPrinceAI">Twitter</a> or <a
href="https://www.linkedin.com/in/simon-prince-615bb9165/">LinkedIn</a> for updates.
</ul>
<h2>Table of contents</h2>
<ul>
<li> Chapter 1 - Introduction
<li> Chapter 2 - Supervised learning
<li> Chapter 3 - Shallow neural networks
<li> Chapter 4 - Deep neural networks
<li> Chapter 5 - Loss functions
<li> Chapter 6 - Training models
<li> Chapter 7 - Gradients and initialization
<li> Chapter 8 - Measuring performance
<li> Chapter 9 - Regularization
<li> Chapter 10 - Convolutional networks
<li> Chapter 11 - Residual networks
<li> Chapter 12 - Transformers
<li> Chapter 13 - Graph neural networks
<li> Chapter 14 - Unsupervised learning
<li> Chapter 15 - Generative adversarial networks
<li> Chapter 16 - Normalizing flows
<li> Chapter 17 - Variational autoencoders
<li> Chapter 18 - Diffusion models
<li> Chapter 19 - Deep reinforcement learning
<li> Chapter 20 - Why does deep learning work?
<li> Chapter 21 - Deep learning and ethics
</ul>
</div>
<div id="cover">
<img src="https://raw.githubusercontent.com/udlbook/udlbook/main/UDLCoverSmall.jpg"
alt="front cover">
</div>
</div>
<div id="body">
<h2>Resources for instructors </h2>
<p>Instructor answer booklet available with proof of credentials via <a
href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning"> MIT Press</a>.</p>
<p>Request an exam/desk copy via <a href="https://mitpress.ublish.com/request?cri=15055">MIT Press</a>.</p>
<p>Figures in PDF (vector) / SVG (vector) / Powerpoint (images):
<ul>
<li> Chapter 1 - Introduction: <a href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap1PDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=1udnl5pUOAc8DcAQ7HQwyzP9pwL95ynnv">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1IjTqIUvWCJc71b5vEJYte-Dwujcp7rvG/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 2 - Supervised learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap2PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1VSxcU5y1qNFlmd3Lb3uOWyzILuOj1Dla"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1Br7R01ROtRWPlNhC_KOommeHAWMBpWtz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 3 - Shallow neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap3PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=19kZFWlXhzN82Zx02ByMmSZOO4T41fmqI"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1e9M3jB5I9qZ4dCBY90Q3Hwft_i068QVQ/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 4 - Deep neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap4PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1ojr0ebsOhzvS04ItAflX2cVmYqHQHZUa"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1LTSsmY4mMrJbqXVvoTOCkQwHrRKoYnJj/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 5 - Loss functions: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap5PDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=17MJO7fiMpFZVqKeqXTbQ36AMpmR4GizZ">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1gcpC_3z9oRp87eMkoco-kdLD-MM54Puk/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 6 - Training models: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap6PDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=1VPdhFRnCr9_idTrX0UdHKGAw2shUuwhK">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1AKoeggAFBl9yLC7X5tushAGzCCxmB7EY/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 7 - Gradients and initialization: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap7PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1TTl4gvrTvNbegnml4CoGoKOOd6O8-PGs"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/11zhB6PI-Dp6Ogmr4IcI6fbvbqNqLyYcz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 8 - Measuring performance: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap8PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=19eQOnygd_l0DzgtJxXuYnWa4z7QKJrJx"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1SHRmJscDLUuQrG7tmysnScb3ZUAqVMZo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 9 - Regularization: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap9PDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=1LprgnUGL7xAM9-jlGZC9LhMPeefjY0r0">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1VwIfvjpdfTny6sEfu4ZETwCnw6m8Eg-5/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 10 - Convolutional networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap10PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1-Wb3VzaSvVeRzoUzJbI2JjZE0uwqupM9"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1MtfKBC4Y9hWwGqeP6DVwUNbi1j5ncQCg/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 11 - Residual networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap11PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1Mr58jzEVseUAfNYbGWCQyDtEDwvfHRi1"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1saY8Faz0KTKAAifUrbkQdLA2qkyEjOPI/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 12 - Transformers: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap12PDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=1txzOVNf8-jH4UfJ6SLnrtOfPd1Q3ebzd">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1GVNvYWa0WJA6oKg89qZre-UZEhABfm0l/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 13 - Graph neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap13PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1lQIV6nRp6LVfaMgpGFhuwEXG-lTEaAwe"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1YwF3U82c1mQ74c1WqHVTzLZ0j7GgKaWP/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 14 - Unsupervised learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap14PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1aMbI6iCuUvOywqk5pBOmppJu1L1anqsM"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1A-lBGv3NHl4L32NvfFgy1EKeSwY-0UeB/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PowerPoint Figures</a>
<li> Chapter 15 - Generative adversarial networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap15PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1EErnlZCOlXc3HK7m83T2Jh_0NzIUHvtL"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/10Ernk41ShOTf4IYkMD-l4dJfKATkXH4w/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 16 - Normalizing flows: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap16PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1B9bxtmdugwtg-b7Y4AdQKAIEVWxjx8l3"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1nLLzqb9pdfF_h6i1HUDSyp7kSMIkSUUA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 17 - Variational autoencoders: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap17PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1SNtNIY7khlHQYMtaOH-FosSH3kWwL4b7"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1lQE4Bu7-LgvV2VlJOt_4dQT-kusYl7Vo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Chapter 18 - Diffusion models: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap18PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1A-pIGl4PxjVMYOKAUG3aT4a8wD3G-q_r"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1x_ufIBtVPzWUvRieKMkpw5SdRjXWwdfR/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PowerPoint Figures</a>
<li> Chapter 19 - Deep reinforcement learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap19PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1a5WUoF7jeSgwC_PVdckJi1Gny46fCqh0"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1TnYmVbFNhmMFetbjyfXGmkxp1EHauMqr/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PowerPoint Figures </a>
<li> Chapter 20 - Why does deep learning work?: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap20PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1M2d0DHEgddAQoIedKSDTTt7m1ZdmBLQ3"> SVG Figures</a>
/
<a href="https://docs.google.com/presentation/d/1coxF4IsrCzDTLrNjRagHvqB_FBy10miA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PowerPoint Figures</a>
<li> Chapter 21 - Deep learning and ethics: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap21PDF.zip">PDF Figures</a> / <a
href="https://drive.google.com/uc?export=download&id=1jixmFfwmZkW_UVYzcxmDcMsdFFtnZ0bU"> SVG Figures</a>/
<a
href="https://docs.google.com/presentation/d/1EtfzanZYILvi9_-Idm28zD94I_6OrN9R/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PowerPoint
Figures</a>
<li> Appendices - <a href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLAppendixPDF.zip">PDF
Figures</a> / <a href="https://drive.google.com/uc?export=download&id=1k2j7hMN40ISPSg9skFYWFL3oZT7r8v-l">
SVG
Figures</a> / <a
href="https://docs.google.com/presentation/d/1_2cJHRnsoQQHst0rwZssv-XH4o5SEHks/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">Powerpoint
Figures</a>
</ul>
Instructions for editing figures / equations can be found <a
href="https://drive.google.com/file/d/1T_MXXVR4AfyMnlEFI-UVDh--FXI5deAp/view?usp=sharing">here</a>.
<p> My slides for 20 lecture undergraduate deep learning course:</p>
<ul>
<li><a href="https://drive.google.com/uc?export=download&id=17RHb11BrydOvxSFNbRIomE1QKLVI087m">1. Introduction</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1491zkHULC7gDfqlV6cqUxyVYXZ-de-Ub">2. Supervised Learning</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1XkP1c9EhOBowla1rT1nnsDGMf2rZvrt7">3. Shallow Neural Networks</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1e2ejfZbbfMKLBv0v-tvBWBdI8gO3SSS1">4. Deep Neural Networks</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1fxQ_a1Q3eFPZ4kPqKbak6_emJK-JfnRH">5. Loss Functions</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=17QQ5ZzXBtR_uCNCUU1gPRWWRUeZN9exW">6. Fitting Models</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1hC8JUCOaFWiw3KGn0rm7nW6mEq242QDK">7. Computing Gradients</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1tSjCeAVg0JCeBcPgDJDbi7Gg43Qkh9_d">7b. Initialization</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1RVZW3KjEs0vNSGx3B2fdizddlr6I0wLl">8. Performance</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1LTicIKPRPbZRkkg6qOr1DSuOB72axood">9. Regularization</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1bGVuwAwrofzZdfvj267elIzkYMIvYFj0">10. Convolutional Networks</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=14w31QqWRDix1GdUE-na0_E0kGKBhtKzs">11. Image Generation</a></li>
<li><a href="https://drive.google.com/uc?export=download&id=1af6bTTjAbhDYfrDhboW7Fuv52Gk9ygKr">12. Transformers and LLMs</a></li>
</ul>
<h2>Resources for students</h2>
<p>Answers to selected questions: <a
href="https://github.com/udlbook/udlbook/raw/main/UDL_Answer_Booklet_Students.pdf">PDF</a>
</p>
<p>Python notebooks: (Early ones more thoroughly tested than later ones!)</p>
<ul>
<li> Notebook 1.1 - Background mathematics: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap01/1_1_BackgroundMathematics.ipynb">ipynb/colab</a>
</li>
<li> Notebook 2.1 - Supervised learning: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap02/2_1_Supervised_Learning.ipynb">ipynb/colab</a>
</li>
<li> Notebook 3.1 - Shallow networks I: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_1_Shallow_Networks_I.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.2 - Shallow networks II: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_2_Shallow_Networks_II.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.3 - Shallow network regions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_3_Shallow_Network_Regions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.4 - Activation functions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_4_Activation_Functions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.1 - Composing networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_1_Composing_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.2 - Clipping functions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_2_Clipping_functions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.3 - Deep networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_3_Deep_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.1 - Least squares loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_1_Least_Squares_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.2 - Binary cross-entropy loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_2_Binary_Cross_Entropy_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.3 - Multiclass cross-entropy loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_3_Multiclass_Cross_entropy_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.1 - Line search: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_1_Line_Search.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.2 - Gradient descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_2_Gradient_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.3 - Stochastic gradient descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_3_Stochastic_Gradient_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.4 - Momentum: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_4_Momentum.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.5 - Adam: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_5_Adam.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.1 - Backpropagation in toy model: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_1_Backpropagation_in_Toy_Model.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.2 - Backpropagation: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_2_Backpropagation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.3 - Initialization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_3_Initialization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.1 - MNIST-1D performance: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_1_MNIST_1D_Performance.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.2 - Bias-variance trade-off: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_2_Bias_Variance_Trade_Off.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.3 - Double descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_3_Double_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.4 - High-dimensional spaces: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_4_High_Dimensional_Spaces.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.1 - L2 regularization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_1_L2_Regularization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.2 - Implicit regularization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_2_Implicit_Regularization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.3 - Ensembling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_3_Ensembling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.4 - Bayesian approach: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_4_Bayesian_Approach.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.5 - Augmentation <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_5_Augmentation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.1 - 1D convolution: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_1_1D_Convolution.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.2 - Convolution for MNIST-1D: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_2_Convolution_for_MNIST_1D.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.3 - 2D convolution: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_3_2D_Convolution.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.4 - Downsampling & upsampling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_4_Downsampling_and_Upsampling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.5 - Convolution for MNIST: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_5_Convolution_For_MNIST.ipynb">ipynb/colab </a>
</li>
<li> Notebook 11.1 - Shattered gradients: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_1_Shattered_Gradients.ipynb">ipynb/colab </a>
</li>
<li> Notebook 11.2 - Residual networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_2_Residual_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 11.3 - Batch normalization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_3_Batch_Normalization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.1 - Self-attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_1_Self_Attention.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.2 - Multi-head self-attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_2_Multihead_Self_Attention.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.3 - Tokenization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_3_Tokenization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.4 - Decoding strategies: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_4_Decoding_Strategies.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.1 - Encoding graphs: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_1_Graph_Representation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.2 - Graph classification : <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_2_Graph_Classification.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.3 - Neighborhood sampling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_3_Neighborhood_Sampling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.4 - Graph attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_4_Graph_Attention_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 15.1 - GAN toy example: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_1_GAN_Toy_Example.ipynb">ipynb/colab </a></li>
<li> Notebook 15.2 - Wasserstein distance: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_2_Wasserstein_Distance.ipynb">ipynb/colab </a></li>
<li> Notebook 16.1 - 1D normalizing flows: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_1_1D_Normalizing_Flows.ipynb">ipynb/colab </a></li>
<li> Notebook 16.2 - Autoregressive flows: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_2_Autoregressive_Flows.ipynb">ipynb/colab </a></li>
<li> Notebook 16.3 - Contraction mappings: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_3_Contraction_Mappings.ipynb">ipynb/colab </a></li>
<li> Notebook 17.1 - Latent variable models: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_1_Latent_Variable_Models.ipynb">ipynb/colab </a></li>
<li> Notebook 17.2 - Reparameterization trick: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_2_Reparameterization_Trick.ipynb">ipynb/colab </a></li>
<li> Notebook 17.3 - Importance sampling: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_3_Importance_Sampling.ipynb">ipynb/colab </a></li>
<li> Notebook 18.1 - Diffusion encoder: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_1_Diffusion_Encoder.ipynb">ipynb/colab </a></li>
<li> Notebook 18.2 - 1D diffusion model: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_2_1D_Diffusion_Model.ipynb">ipynb/colab </a></li>
<li> Notebook 18.3 - Reparameterized model: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_3_Reparameterized_Model.ipynb">ipynb/colab </a></li>
<li> Notebook 18.4 - Families of diffusion models: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_4_Families_of_Diffusion_Models.ipynb">ipynb/colab </a></li>
<li> Notebook 19.1 - Markov decision processes: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_1_Markov_Decision_Processes.ipynb">ipynb/colab </a></li>
<li> Notebook 19.2 - Dynamic programming: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_2_Dynamic_Programming.ipynb">ipynb/colab </a></li>
<li> Notebook 19.3 - Monte-Carlo methods: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_3_Monte_Carlo_Methods.ipynb">ipynb/colab </a></li>
<li> Notebook 19.4 - Temporal difference methods: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_4_Temporal_Difference_Methods.ipynb">ipynb/colab </a></li>
<li> Notebook 19.5 - Control variates: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_5_Control_Variates.ipynb">ipynb/colab </a></li>
<li> Notebook 20.1 - Random data: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_1_Random_Data.ipynb">ipynb/colab </a></li>
<li> Notebook 20.2 - Full-batch gradient descent: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_2_Full_Batch_Gradient_Descent.ipynb">ipynb/colab </a></li>
<li> Notebook 20.3 - Lottery tickets: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_3_Lottery_Tickets.ipynb">ipynb/colab </a></li>
<li> Notebook 20.4 - Adversarial attacks: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_4_Adversarial_Attacks.ipynb">ipynb/colab </a></li>
<li> Notebook 21.1 - Bias mitigation: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_1_Bias_Mitigation.ipynb">ipynb/colab </a></li>
<li> Notebook 21.2 - Explainability: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_2_Explainability.ipynb">ipynb/colab </a></li>
</ul>
<br>
<h2>Citation</h2>
<pre><code>
@book{prince2023understanding,
author = "Simon J.D. Prince",
title = "Understanding Deep Learning",
publisher = "MIT Press",
year = 2023,
url = "http://udlbook.com"
}
</code></pre>
</div>
</body>

8
jsconfig.json Normal file
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@@ -0,0 +1,8 @@
{
"compilerOptions": {
"baseUrl": "./",
"paths": {
"@/*": ["src/*"]
}
}
}

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@@ -1,50 +1,36 @@
{
"name": "react-website-smooth-scroll",
"name": "udlbook-website",
"version": "0.1.0",
"private": true,
"homepage": "https://udlbook.github.io/udlbook/",
"dependencies": {
"@fortawesome/fontawesome-svg-core": "^6.5.1",
"@testing-library/jest-dom": "^5.15.1",
"@testing-library/react": "^11.2.7",
"@testing-library/user-event": "^12.8.3",
"react": "^17.0.2",
"react-dom": "^17.0.2",
"react-icons": "^5.0.1",
"react-router-dom": "^6.0.2",
"react-scripts": "4.0.3",
"react-scroll": "^1.8.4",
"styled-components": "^5.3.3",
"url-loader": "^4.1.1",
"web-vitals": "^1.1.2"
},
"homepage": "https://udlbook.github.io/udlbook",
"type": "module",
"scripts": {
"start": "react-scripts --openssl-legacy-provider start",
"build": "react-scripts --openssl-legacy-provider build",
"test": "react-scripts test",
"eject": "react-scripts eject",
"dev": "vite",
"build": "vite build",
"preview": "vite preview",
"lint": "eslint . --ext js,jsx --report-unused-disable-directives --max-warnings 0",
"predeploy": "npm run build",
"deploy": "gh-pages -d build"
"deploy": "gh-pages -d dist",
"clean": "rm -rf node_modules dist",
"format": "prettier --write ."
},
"eslintConfig": {
"extends": [
"react-app",
"react-app/jest"
]
},
"browserslist": {
"production": [
">0.2%",
"not dead",
"not op_mini all"
],
"development": [
"last 1 chrome version",
"last 1 firefox version",
"last 1 safari version"
]
"dependencies": {
"react": "^18.3.1",
"react-dom": "^18.3.1",
"react-icons": "^5.2.1",
"react-router-dom": "^6.23.1",
"react-scroll": "^1.8.4",
"styled-components": "^6.1.11"
},
"devDependencies": {
"gh-pages": "^6.1.1"
"@vitejs/plugin-react-swc": "^3.5.0",
"eslint": "^8.57.0",
"eslint-plugin-react": "^7.34.2",
"eslint-plugin-react-hooks": "^4.6.2",
"eslint-plugin-react-refresh": "^0.4.7",
"gh-pages": "^6.1.1",
"prettier": "^3.3.1",
"prettier-plugin-organize-imports": "^3.2.4",
"vite": "^5.2.12"
}
}

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@@ -1,46 +0,0 @@
<!DOCTYPE html>
<html lang="en">
<head>
<meta charset="utf-8" />
<link rel="icon" href="%PUBLIC_URL%/favicon.ico" />
<meta name="viewport" content="width=device-width, initial-scale=1" />
<meta name="theme-color" content="#000000" />
<meta
name="description"
content="Web site created using create-react-app"
/>
<link rel="apple-touch-icon" href="%PUBLIC_URL%/logo192.png" />
<!--
manifest.json provides metadata used when your web app is installed on a
user's mobile device or desktop. See https://developers.google.com/web/fundamentals/web-app-manifest/
-->
<link rel="manifest" href="%PUBLIC_URL%/manifest.json" />
<!--
Notice the use of %PUBLIC_URL% in the tags above.
It will be replaced with the URL of the `public` folder during the build.
Only files inside the `public` folder can be referenced from the HTML.
Unlike "/favicon.ico" or "favicon.ico", "%PUBLIC_URL%/favicon.ico" will
work correctly both with client-side routing and a non-root public URL.
Learn how to configure a non-root public URL by running `npm run build`.
-->
<link rel="preconnect" href="https://fonts.googleapis.com">
<link rel="preconnect" href="https://fonts.gstatic.com" crossorigin>
<link href="https://fonts.googleapis.com/css2?family=Encode+Sans+Expanded:wght@400;700&display=swap" rel="stylesheet">
<title>React App</title>
</head>
<body>
<noscript>You need to enable JavaScript to run this app.</noscript>
<div id="root"></div>
<!--
This HTML file is a template.
If you open it directly in the browser, you will see an empty page.
You can add webfonts, meta tags, or analytics to this file.
The build step will place the bundled scripts into the <body> tag.
To begin the development, run `npm start` or `yarn start`.
To create a production bundle, use `npm run build` or `yarn build`.
-->
</body>
</html>

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@@ -1,25 +0,0 @@
{
"short_name": "React App",
"name": "Create React App Sample",
"icons": [
{
"src": "favicon.ico",
"sizes": "64x64 32x32 24x24 16x16",
"type": "image/x-icon"
},
{
"src": "logo192.png",
"type": "image/png",
"sizes": "192x192"
},
{
"src": "logo512.png",
"type": "image/png",
"sizes": "512x512"
}
],
"start_url": ".",
"display": "standalone",
"theme_color": "#000000",
"background_color": "#ffffff"
}

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@@ -1,3 +0,0 @@
# https://www.robotstxt.org/robotstxt.html
User-agent: *
Disallow:

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@@ -1,6 +0,0 @@
*{
box-sizing: border-box;
margin: 0;
padding: 0 ;
font-family: 'Encode Sans Expanded', sans-serif;
}

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@@ -1,19 +0,0 @@
import './App.css';
import {BrowserRouter as Router, Routes, Route} from 'react-router-dom'
import Home from './pages';
function App() {
return (
<Router>
<Routes>
<Route exact path="/" element ={<Home/>} />
</Routes>
</Router>
);
}
export default App;

12
src/App.jsx Executable file
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@@ -0,0 +1,12 @@
import Index from "@/pages";
import { BrowserRouter as Router, Route, Routes } from "react-router-dom";
export default function App() {
return (
<Router>
<Routes>
<Route exact path="/udlbook" element={<Index />} />
</Routes>
</Router>
);
}

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@@ -1,23 +0,0 @@
import styled from 'styled-components'
import {Link} from 'react-scroll'
export const Button= styled(Link)`
border-radius: 50px;
background: ${({primary}) => (primary ? '#01BF71' : '#010606')};
white-space: nowrap;
padding: ${({big}) => (big? ' 14px 48px': '12px 30px')};
color: ${({dark}) => (dark ? '#010106': '#fff')};
font-size: $${({fontBig}) => (fontBig ? '20px' : '16px')};
outline: none;
border: none;
cursor: pointer;
display: flex;
justify-content: center;
align-items: center;
transition: all 0.2s ease-in-out;
&:hover {
transition: all 0.2s ease-in-out;
background: ${({primary}) => (primary ? '#fff' : '#01BF71')}
}
`

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@@ -1,9 +1,9 @@
import styled from 'styled-components'
import {Link} from 'react-router-dom'
import { Link } from "react-router-dom";
import styled from "styled-components";
export const FooterContainer = styled.footer`
background-color: #101522;
`
`;
export const FooterWrap = styled.div`
padding: 48x 24px;
@@ -13,23 +13,24 @@ export const FooterWrap = styled.div`
align-items: center;
max-width: 1100px;
margin: 0 auto;
`
`;
export const FooterLinksContainer = styled.div`
display: flex;
justify-content: center;
@media screen and (max-width: 820px){
@media screen and (max-width: 820px) {
padding-top: 32px;
}
`
`;
export const FooterLinksWrapper = styled.div`
display: flex;
@media screen and (max-width: 820px){
@media screen and (max-width: 820px) {
flex-direction: column;
}
`
`;
export const FooterLinkItems = styled.div`
display: flex;
@@ -41,17 +42,17 @@ export const FooterLinkItems = styled.div`
box-sizing: border-box;
color: #fff;
@media screen and (max-width: 420px){
@media screen and (max-width: 420px) {
margin: 0;
padding: 10px;
width: 100%;
}
`
`;
export const FooterLinkTitle = styled.h1`
font-size: 14px;
margin-bottom: 16px ;
`
margin-bottom: 16px;
`;
export const FooterLink = styled(Link)`
color: #ffffff;
@@ -59,28 +60,28 @@ export const FooterLink = styled(Link)`
margin-bottom: 0.5rem;
font-size: 14px;
&:hover{
&:hover {
color: #01bf71;
transition: 0.3s ease-in-out;
}
`
`;
export const SocialMedia = styled.section`
max-width: 1000px;
width: 100%;
`
`;
export const SocialMediaWrap = styled.div`
display: flex;
justify-content: space-between;
align-items: center;
max-width: 1100px;
margin: 20px auto 0 auto ;
margin: 20px auto 0 auto;
@media screen and (max-width: 820px){
@media screen and (max-width: 820px) {
flex-direction: column;
}
`
`;
export const SocialAttrWrap = styled.div`
color: #fff;
@@ -88,12 +89,12 @@ export const SocialAttrWrap = styled.div`
justify-content: center;
align-items: center;
max-width: 1100px;
margin: 10px auto 0 auto ;
margin: 10px auto 0 auto;
@media screen and (max-width: 820px){
@media screen and (max-width: 820px) {
flex-direction: column;
}
`
`;
export const SocialLogo = styled(Link)`
color: #fff;
@@ -105,30 +106,35 @@ export const SocialLogo = styled(Link)`
align-items: center;
margin-bottom: 16px;
font-weight: bold;
`
@media screen and (max-width: 768px) {
font-size: 20px;
}
`;
export const WebsiteRights = styled.small`
color: #fff ;
margin-bottom: 8px ;
`
color: #fff;
margin-bottom: 8px;
`;
export const SocialIcons = styled.div`
display: flex;
justify-content: space-between;
align-items: center;
width: 60px;
margin-bottom: 8px ;
`
margin-bottom: 8px;
`;
export const SocialIconLink = styled.a`
color: #fff;
font-size: 24px;
`
margin-right: 8px;
`;
export const FooterImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
`;
export const FooterImg = styled.img`
width: 100%;

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@@ -1,42 +0,0 @@
import React from 'react'
import { FaLinkedin} from 'react-icons/fa'
import { FooterContainer, FooterWrap, FooterImg } from './FooterElements'
import { SocialMedia, SocialMediaWrap, SocialIcons, SocialIconLink, WebsiteRights, SocialLogo } from './FooterElements'
import { animateScroll as scroll } from 'react-scroll'
import twitterImg from '../../images/square-x-twitter.svg'
const Footer = () => {
const toggleHome = () => {
scroll.scrollToTop();
}
return (
<>
<FooterContainer>
<FooterWrap>
<SocialMedia>
<SocialMediaWrap>
<SocialLogo to='/' onClick={toggleHome}>
Understanding Deep Learning
</SocialLogo>
<WebsiteRights>©{new Date().getFullYear()} Simon J.D. Prince</WebsiteRights>
<WebsiteRights>
Images by StorySet on FreePik: <a href="https://www.freepik.com/free-vector/hand-coding-concept-illustration_21864184.htm#query=coding&position=17&from_view=search&track=sph&uuid=5896d847-38e4-4cb9-8fe1-103041c7c933"> [1] </a> <a href="https://www.freepik.com/free-vector/mathematics-concept-illustration_10733824.htm#query=professor&position=13&from_view=search&track=sph&uuid=5b1a188a-64c5-45af-aae2-8573bc1bed3c">[2]</a> <a href="https://www.freepik.com/free-vector/content-concept-illustration_7171429.htm#query=media&position=3&from_view=search&track=sph&uuid=c7e35cf2-d85d-4bba-91a6-1cd883dcf153"> [3]</a> <a href="https://www.freepik.com/free-vector/library-concept-illustration_9148008.htm#query=library&position=40&from_view=search&track=sph&uuid=abecc792-b6b2-4ec0-b318-5e6cc73ba649"> [4]</a>
</WebsiteRights>
<SocialIcons>
<SocialIconLink href="https://twitter.com/SimonPrinceAI" target="_blank" aria-label="Twitter">
<FooterImg src={twitterImg} alt="twitter"/>
</SocialIconLink>
<SocialIconLink href="https://www.linkedin.com/in/simon-prince-615bb9165/" target="_blank" aria-label="LinkedIn">
<FaLinkedin/>
</SocialIconLink>
</SocialIcons>
</SocialMediaWrap>
</SocialMedia>
</FooterWrap>
</FooterContainer>
</>
)
}
export default Footer

84
src/components/Footer/index.jsx Executable file
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@@ -0,0 +1,84 @@
import {
FooterContainer,
FooterWrap,
SocialIconLink,
SocialIcons,
SocialLogo,
SocialMedia,
SocialMediaWrap,
WebsiteRights,
} from "@/components/Footer/FooterElements";
import { FaGithub, FaLinkedin } from "react-icons/fa";
import { FaSquareXTwitter } from "react-icons/fa6";
import { animateScroll as scroll } from "react-scroll";
const images = [
"https://freepik.com/free-vector/hand-coding-concept-illustration_21864184.htm#query=coding&position=17&from_view=search&track=sph&uuid=5896d847-38e4-4cb9-8fe1-103041c7c933",
"https://freepik.com/free-vector/mathematics-concept-illustration_10733824.htm#query=professor&position=13&from_view=search&track=sph&uuid=5b1a188a-64c5-45af-aae2-8573bc1bed3c",
"https://freepik.com/free-vector/content-concept-illustration_7171429.htm#query=media&position=3&from_view=search&track=sph&uuid=c7e35cf2-d85d-4bba-91a6-1cd883dcf153",
"https://freepik.com/free-vector/library-concept-illustration_9148008.htm#query=library&position=40&from_view=search&track=sph&uuid=abecc792-b6b2-4ec0-b318-5e6cc73ba649",
];
const socials = [
{
href: "https://twitter.com/SimonPrinceAI",
icon: FaSquareXTwitter,
alt: "Twitter",
},
{
href: "https://linkedin.com/in/simon-prince-615bb9165/",
icon: FaLinkedin,
alt: "LinkedIn",
},
{
href: "https://github.com/udlbook/udlbook",
icon: FaGithub,
alt: "GitHub",
},
];
export default function Footer() {
const scrollToHome = () => {
scroll.scrollToTop();
};
return (
<>
<FooterContainer>
<FooterWrap>
<SocialMedia>
<SocialMediaWrap>
<SocialLogo to="/udlbook" onClick={scrollToHome}>
Understanding Deep Learning
</SocialLogo>
<WebsiteRights>
&copy; {new Date().getFullYear()} Simon J.D. Prince
</WebsiteRights>
<WebsiteRights>
Images by StorySet on FreePik:{" "}
{images.map((image, index) => (
<a key={index} href={image}>
[{index + 1}]
</a>
))}
</WebsiteRights>
<SocialIcons>
{socials.map((social, index) => (
<SocialIconLink
key={index}
href={social.href}
target="_blank"
aria-label={social.alt}
alt={social.alt}
>
<social.icon />
</SocialIconLink>
))}
</SocialIcons>
</SocialMediaWrap>
</SocialMedia>
</FooterWrap>
</FooterContainer>
</>
);
}

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@@ -1,242 +0,0 @@
import styled from "styled-components";
export const HeroContainer = styled.div`
background: #57c6d1;
display: flex;
justify-content: center;
align-items: center;
padding: 0 0px;
position: static;
z-index: 1;
}
`
export const HeroContent = styled.div`
z-index: 3;
width: 100% ;
max-width: 1100px;
position: static;
padding: 8px 24px;
margin: 80px 0px;
display: flex;
flex-direction: column;
align-items: center ;
`
export const HeroH1 = styled.h1`
color: #fff;
font-size: 48px;
text-align: center;
@media screen and (max-width: 768px) {
font-size: 40px;
}
@media screen and (max-width: 480px) {
font-size: 32px;
}
`
export const HeroP = styled.p`
margin-top: 24px;
color: #fff;
font-size: 24px ;
text-align: center ;
max-width: 600px ;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const HeroBtnWrapper = styled.div`
margin-top: 32px ;
display: flex;
flex-direction: column ;
align-items: center ;
`
export const HeroRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: 'col1 col2' };
@media screen and (max-width: 768px){
grid-template-areas: 'col2' 'col1';
}
`
export const HeroNewsItem = styled.div`
margin-left: 4px;
color: #000000;
font-size: 16px;
// line-height: 16px;
margin-bottom: 16px;
display: flex;
justify-content: start;
`
export const HeroNewsItemDate = styled.div`
width: 20%;
font-size: 16px ;
margin-right: 20px ;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const HeroNewsItemContent = styled.div`
width: 80%;
color: #000000;
font-size: 16px ;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const HeroColumn1 = styled.div`
margin-bottom: 15px;
margin-left: 12px;
margin-top: 60px;
padding: 10px 15px;
padding: 0 15px;
grid-area: col1;
align-items:left;
display: flex;
flex-direction:column;
justify-content: space-between;
`
export const HeroColumn2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
display: flex;
align-items:center;
flex-direction:column;
`
export const TextWrapper = styled.div`
max-width: 540px ;
padding-top: 0;
padding-bottom: 0;
`
export const HeroImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const HeroDownloadsImg = styled.img`
margin-top: 5px;
margin-right: 0;
margin-left: 0;
padding-right: 0;
margin-bottom: 10px;
`
export const HeroLink = styled.a`
color: #fff;
text-decoration: none;
padding: 0.1rem 0rem;
height: 100%;
cursor: pointer;
&:hover {
filter: brightness(0.85);
}
&.active {
color: #000
border-bottom: 3px solid #01bf71;
}
`;
export const HeroNewsTitle = styled.div`
margin-left: 0px;
color: #000000;
font-size: 16px;
font-weight: bold;
line-height: 16px;
margin-bottom: 36px;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const HeroCitationTitle = styled.div`
margin-left: 0px;
color: #000000;
font-size: 16px;
font-weight: bold;
line-height: 16px;
margin-bottom: 10px;
margin-top:36px;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const HeroNewsBlock = styled.div`
`
export const HeroCitationBlock = styled.div`
font-size: 14px;
margin-bottom: 0px;
margin-top: 0px;
`
export const HeroFollowBlock = styled.div`
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`

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@@ -0,0 +1,294 @@
import styled from "styled-components";
export const HeroContainer = styled.div`
background: #57c6d1;
display: flex;
justify-content: center;
align-items: center;
padding: 0 0px;
position: static;
z-index: 1;
`;
export const HeroContent = styled.div`
z-index: 3;
width: 100%;
max-width: 1100px;
position: static;
padding: 8px 24px;
margin: 80px 0px;
display: flex;
flex-direction: column;
align-items: center;
`;
export const HeroH1 = styled.h1`
color: #fff;
font-size: 48px;
text-align: center;
@media screen and (max-width: 768px) {
font-size: 40px;
}
@media screen and (max-width: 480px) {
font-size: 32px;
}
`;
export const HeroP = styled.p`
margin-top: 24px;
color: #fff;
font-size: 24px;
text-align: center;
max-width: 600px;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`;
export const HeroBtnWrapper = styled.div`
margin-top: 32px;
display: flex;
flex-direction: column;
align-items: center;
`;
export const HeroRow = styled.div`
display: grid;
grid-template-columns: 1fr 1fr;
gap: 20px;
align-items: top;
grid-template-areas: "col1 col2";
@media screen and (max-width: 768px) {
grid-template-columns: 1fr;
grid-template-areas:
"col2"
"col1";
}
`;
export const HeroNewsItem = styled.div`
margin-left: 4px;
color: #000000;
font-size: 16px;
margin-bottom: 16px;
display: flex;
justify-content: start;
`;
export const HeroNewsItemDate = styled.div`
width: 20%;
margin-right: 20px;
@media screen and (max-width: 768px) {
font-size: 12px;
}
@media screen and (max-width: 480px) {
font-size: 12px;
}
`;
export const HeroNewsItemContent = styled.div`
width: 80%;
color: #000000;
@media screen and (max-width: 768px) {
font-size: 12px;
}
@media screen and (max-width: 480px) {
font-size: 12px;
}
`;
export const HeroColumn1 = styled.div`
margin-bottom: 15px;
margin-left: 12px;
margin-top: 60px;
padding: 10px 15px;
grid-area: col1;
display: flex;
flex-direction: column;
justify-content: space-between;
@media screen and (max-width: 768px) {
margin-left: 0;
margin-top: 20px;
padding: 0;
}
`;
export const HeroColumn2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
display: flex;
align-items: center;
flex-direction: column;
@media screen and (max-width: 768px) {
padding: 0;
}
`;
export const TextWrapper = styled.div`
max-width: 540px;
padding-top: 0;
padding-bottom: 0;
`;
export const HeroImgWrap = styled.div`
max-width: 555px;
height: 100%;
`;
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const HeroDownloadsImg = styled.img`
margin-top: 5px;
margin-right: 0;
margin-left: 0;
padding-right: 0;
margin-bottom: 10px;
`;
export const HeroLink = styled.a`
color: #fff;
text-decoration: none;
padding: 0.6rem 0rem 0rem 0rem;
cursor: pointer;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #fff;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;
export const UDLLink = styled.a`
text-decoration: none;
color: #000;
font-weight: 300;
margin: 0 2px;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #000;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;
export const HeroNewsTitle = styled.div`
margin-left: 0px;
color: #000000;
font-size: 16px;
font-weight: bold;
line-height: 16px;
margin-bottom: 36px;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`;
export const HeroCitationTitle = styled.div`
margin-left: 0px;
color: #000000;
font-size: 16px;
font-weight: bold;
line-height: 16px;
margin-bottom: 10px;
margin-top: 36px;
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`;
export const HeroNewsBlock = styled.div``;
export const HeroCitationBlock = styled.div`
font-size: 14px;
margin-bottom: 0px;
margin-top: 0px;
`;
export const HeroFollowBlock = styled.div`
@media screen and (max-width: 768px) {
font-size: 14px;
}
`;
export const HeroNewsMoreButton = styled.button`
background: #fff;
color: #000;
font-size: 16px;
padding: 10px 24px;
border: none;
border-radius: 4px;
cursor: pointer;
margin-top: 20px;
margin-bottom: 20px;
align-self: center;
&:hover {
background: #000;
color: #fff;
}
`;

View File

@@ -1,91 +0,0 @@
import React from 'react'
import { HeroContainer, HeroNewsBlock, HeroCitationBlock, HeroCitationTitle, HeroFollowBlock, HeroDownloadsImg, HeroLink, HeroRow, HeroColumn1, HeroColumn2, HeroContent, Img, HeroImgWrap, HeroNewsTitle, HeroNewsItem, HeroNewsItemDate, HeroNewsItemContent} from './HeroElements'
import img from '../../images/F23.prince.learning.turquoise.jpg'
const HeroSection = () => {
const citation = `
@book{prince2023understanding,
author = "Simon J.D. Prince",
title = "Understanding Deep Learning",
publisher = "The MIT Press",
year = 2023,
url = "http://udlbook.com"}
`
return (
<HeroContainer id="home">
<HeroContent>
<HeroRow>
<HeroColumn1>
<HeroNewsBlock>
<HeroNewsTitle>RECENT NEWS:</HeroNewsTitle>
<HeroNewsItem>
<HeroNewsItemDate>03/12/24</HeroNewsItemDate>
<HeroNewsItemContent> Book now available again.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>02/15/24</HeroNewsItemDate>
<HeroNewsItemContent> First printing of book has sold out in most places. Second printing available mid-March.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>01/29/24</HeroNewsItemDate>
<HeroNewsItemContent> New blog about <a href="https://www.borealisai.com/research-blogs/gradient-flow/"> gradient flow </a> published.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>12/26/23</HeroNewsItemDate>
<HeroNewsItemContent> Machine Learning Street Talk <a href="https://www.youtube.com/watch?v=sJXn4Cl4oww"> podcast </a> discussing book.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>12/19/23</HeroNewsItemDate>
<HeroNewsItemContent>Deeper Insights <a href="https://podcasts.apple.com/us/podcast/understanding-deep-learning-with-simon-prince/id1669436318?i=1000638269385">podcast</a> discussing book.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>12/06/23</HeroNewsItemDate>
<HeroNewsItemContent> I did an <a href="https://www.borealisai.com/news/understanding-deep-learning/">interview</a> discussing the book with Borealis AI.</HeroNewsItemContent>
</HeroNewsItem>
<HeroNewsItem>
<HeroNewsItemDate>12/05/23</HeroNewsItemDate>
<HeroNewsItemContent> Book released by <a href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning/">The MIT Press</a>.</HeroNewsItemContent>
</HeroNewsItem>
</HeroNewsBlock>
<HeroFollowBlock>
Follow me on <a href="https://twitter.com/SimonPrinceAI">Twitter</a> or <a
href="https://www.linkedin.com/in/simon-prince-615bb9165/">LinkedIn</a> for updates.
</HeroFollowBlock>
<HeroCitationTitle>CITATION:</HeroCitationTitle>
<HeroCitationBlock>
<pre>
<code>
<React.Fragment>{citation}</React.Fragment>
</code>
</pre>
</HeroCitationBlock>
</HeroColumn1>
<HeroColumn2>
<HeroImgWrap>
<Img src={img} alt="book cover"/>
</HeroImgWrap>
<HeroLink href="https://github.com/udlbook/udlbook/releases/download/v2.03/UnderstandingDeepLearning_02_26_24_C.pdf">Download full pdf</HeroLink>
<HeroDownloadsImg src="https://img.shields.io/github/downloads/udlbook/udlbook/total" alt="download stats shield"/>
<HeroLink href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning/">Buy the book</HeroLink>
<HeroLink href="https://github.com/udlbook/udlbook/raw/main/UDL_Answer_Booklet_Students.pdf">Answers to selected questions</HeroLink>
<HeroLink href="https://github.com/udlbook/udlbook/raw/main/UDL_Errata.pdf">Find/Report Errata</HeroLink>
</HeroColumn2>
</HeroRow>
</HeroContent>
</HeroContainer>
)
}
export default HeroSection

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@@ -0,0 +1,209 @@
import {
HeroCitationBlock,
HeroCitationTitle,
HeroColumn1,
HeroColumn2,
HeroContainer,
HeroContent,
HeroDownloadsImg,
HeroFollowBlock,
HeroImgWrap,
HeroLink,
HeroNewsBlock,
HeroNewsItem,
HeroNewsItemContent,
HeroNewsItemDate,
HeroNewsMoreButton,
HeroNewsTitle,
HeroRow,
Img,
UDLLink,
} from "@/components/HeroSection/HeroElements";
import img from "@/images/book_cover.jpg";
import { useState } from "react";
const citation = `
@book{prince2023understanding,
author = "Simon J.D. Prince",
title = "Understanding Deep Learning",
publisher = "The MIT Press",
year = 2023,
url = "http://udlbook.com"
}
`;
const news = [
{
date: "05/22/24",
content: (
<HeroNewsItemContent>
New{" "}
<UDLLink href="https://borealisai.com/research-blogs/neural-tangent-kernel-applications/">
blog
</UDLLink>{" "}
about the applications of the neural tangent kernel.
</HeroNewsItemContent>
),
},
{
date: "05/10/24",
content: (
<HeroNewsItemContent>
Positive{" "}
<UDLLink href="https://github.com/udlbook/udlbook/blob/main/public/NMI_Review.pdf">
review
</UDLLink>{" "}
in Nature Machine Intelligence.
</HeroNewsItemContent>
),
},
// {
// date: "03/12/24",
// content: <HeroNewsItemContent>Book now available again.</HeroNewsItemContent>,
// },
{
date: "02/21/24",
content: (
<HeroNewsItemContent>
New blog about the{" "}
<UDLLink href="https://borealisai.com/research-blogs/the-neural-tangent-kernel/">
Neural Tangent Kernel
</UDLLink>
.
</HeroNewsItemContent>
),
},
// {
// date: "02/15/24",
// content: (
// <HeroNewsItemContent>
// First printing of book has sold out in most places. Second printing available
// mid-March.
// </HeroNewsItemContent>
// ),
// },
{
date: "01/29/24",
content: (
<HeroNewsItemContent>
New blog about{" "}
<UDLLink href="https://borealisai.com/research-blogs/gradient-flow/">
gradient flow
</UDLLink>{" "}
published.
</HeroNewsItemContent>
),
},
{
date: "12/26/23",
content: (
<HeroNewsItemContent>
Machine Learning Street Talk{" "}
<UDLLink href="https://youtube.com/watch?v=sJXn4Cl4oww">podcast</UDLLink> discussing
book.
</HeroNewsItemContent>
),
},
{
date: "12/19/23",
content: (
<HeroNewsItemContent>
Deeper Insights{" "}
<UDLLink href="https://podcasts.apple.com/us/podcast/understanding-deep-learning-with-simon-prince/id1669436318?i=1000638269385">
podcast
</UDLLink>{" "}
discussing book.
</HeroNewsItemContent>
),
},
{
date: "12/06/23",
content: (
<HeroNewsItemContent>
<UDLLink href="https://borealisai.com/news/understanding-deep-learning/">
Interview
</UDLLink>{" "}
with Borealis AI.
</HeroNewsItemContent>
),
},
{
date: "12/05/23",
content: (
<HeroNewsItemContent>
Book released by{" "}
<UDLLink href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning/">
The MIT Press
</UDLLink>
.
</HeroNewsItemContent>
),
},
];
export default function HeroSection() {
const [showMoreNews, setShowMoreNews] = useState(false);
const toggleShowMore = () => {
setShowMoreNews((p) => !p);
};
return (
<HeroContainer id="home">
<HeroContent>
<HeroRow>
<HeroColumn1>
<HeroNewsBlock>
<HeroNewsTitle>RECENT NEWS:</HeroNewsTitle>
{(showMoreNews ? news : news.slice(0, 7)).map((item, index) => (
<HeroNewsItem key={index}>
<HeroNewsItemDate>{item.date}</HeroNewsItemDate>
{item.content}
</HeroNewsItem>
))}
<HeroNewsMoreButton onClick={toggleShowMore}>
{showMoreNews ? "Show less" : "Show more"}
</HeroNewsMoreButton>
</HeroNewsBlock>
<HeroCitationTitle>CITATION:</HeroCitationTitle>
<HeroCitationBlock>
<pre>
<code>{citation}</code>
</pre>
</HeroCitationBlock>
<HeroFollowBlock>
Follow me on{" "}
<UDLLink href="https://twitter.com/SimonPrinceAI">Twitter</UDLLink> or{" "}
<UDLLink href="https://linkedin.com/in/simon-prince-615bb9165/">
LinkedIn
</UDLLink>{" "}
for updates.
</HeroFollowBlock>
</HeroColumn1>
<HeroColumn2>
<HeroImgWrap>
<Img src={img} alt="Book Cover" />
</HeroImgWrap>
<HeroLink href="https://github.com/udlbook/udlbook/releases/download/v4.0.1/UnderstandingDeepLearning_05_27_24_C.pdf">
Download full PDF (27 May 2024)
</HeroLink>
<br />
<HeroDownloadsImg
src="https://img.shields.io/github/downloads/udlbook/udlbook/total"
alt="download stats shield"
/>
<HeroLink href="https://mitpress.mit.edu/9780262048644/understanding-deep-learning/">
Buy the book
</HeroLink>
<HeroLink href="https://github.com/udlbook/udlbook/raw/main/UDL_Answer_Booklet_Students.pdf">
Answers to selected questions
</HeroLink>
<HeroLink href="https://github.com/udlbook/udlbook/raw/main/UDL_Errata.pdf">
Errata
</HeroLink>
</HeroColumn2>
</HeroRow>
</HeroContent>
</HeroContainer>
);
}

View File

@@ -1,130 +0,0 @@
import styled from "styled-components";
export const InstructorsContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({lightBg}) => (lightBg ? '#57c6d1': '#010606')};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`
export const InstructorsWrapper = styled.div`
display: grid ;
z-index: 1;
width: 100% ;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`
export const InstructorsRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const InstructorsRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`
export const TextWrapper = styled.div`
max-width: 540px ;
padding-top: 0;
padding-bottom: 0;
`
export const TopLine = styled.p`
color: #773c23;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`
export const Heading= styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({lightText}) => (lightText ? '#f7f8fa' : '#010606')};
@media screen and (max-width: 480px)
{
font-size: 32px;
}
`
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({darkText})=> (darkText ? '#010606' : '#fff')};
`
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const InstructorsContent = styled.div`
z-index: 3;
width: 100% ;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left ;
list-style-position: inside;
`

View File

@@ -0,0 +1,163 @@
import styled from "styled-components";
export const InstructorsContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({ lightBg }) => (lightBg ? "#57c6d1" : "#010606")};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`;
export const InstructorsWrapper = styled.div`
display: grid;
z-index: 1;
width: 100%;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`;
export const InstructorsRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const InstructorsRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`;
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`;
export const TextWrapper = styled.div`
max-width: 540px;
padding-top: 0;
padding-bottom: 0;
`;
export const TopLine = styled.p`
color: #773c23;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`;
export const Heading = styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({ lightText }) => (lightText ? "#f7f8fa" : "#010606")};
@media screen and (max-width: 480px) {
font-size: 32px;
}
`;
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({ darkText }) => (darkText ? "#010606" : "#fff")};
`;
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`;
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`;
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const InstructorsContent = styled.div`
z-index: 3;
width: 100%;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left;
list-style-position: inside;
@media screen and (max-width: 1050px) {
font-size: 12px;
}
@media screen and (max-width: 768px) {
font-size: 10px;
}
`;
export const InstructorsLink = styled.a`
text-decoration: none;
color: #555;
font-weight: 300;
margin: 0 2px;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #555;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;

View File

@@ -1,178 +0,0 @@
import React from 'react'
import { ImgWrap, Img, InstructorsContainer, InstructorsContent, InstructorsRow2, InstructorsWrapper, InstructorsRow, Column1, Column2, TextWrapper, TopLine, Heading, Subtitle} from './InstructorsElements'
// export const homeObjOne = {
// id: 'about',
// lightBg: false,
// lightText: true,
// lightTextDesc: true,
// topLine: 'Premium Bank',
// headline: 'Unlimited transactions with zero fees',
// description:
// 'Get access to our exclusive app that allows you to send unlimited transactions without getting charged any fees',
// buttonLabel: 'Get Started',
// imgStart: false,
// img: require('../../images/svg-1.svg').default,
// alt: 'Car',
// dark: true,
// primary: true,
// darkText: false
// };
import img from '../../images/instructor.svg'
const InstructorsSection = () => {
return (
<>
<InstructorsContainer lightBg={true} id='Instructors'>
<InstructorsWrapper>
<InstructorsRow imgStart={false}>
<Column1>
<TextWrapper>
<TopLine>Instructors</TopLine>
<Heading lightText={false}>Resources for instructors</Heading>
<Subtitle darkText={true}>All the figures in vector and image formats, full slides for first twelve chapters, instructor answer booklet</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt='Car'/>
</ImgWrap>
</Column2>
</InstructorsRow>
<InstructorsRow2>
<Column1>
<TopLine>Register</TopLine>
<a href="https://mitpress.ublish.com/request?cri=15055">Register</a> with MIT Press for answer booklet.
<InstructorsContent>
</InstructorsContent>
<TopLine>Full slides</TopLine>
<InstructorsContent>
Slides for 20 lecture undergraduate deep learning course:
</InstructorsContent>
<InstructorsContent>
<ol>
<li>Introduction <a href="https://drive.google.com/uc?export=download&id=17RHb11BrydOvxSFNbRIomE1QKLVI087m">PPTX</a></li>
<li>Supervised Learning <a href="https://drive.google.com/uc?export=download&id=1491zkHULC7gDfqlV6cqUxyVYXZ-de-Ub">PPTX</a></li>
<li>Shallow Neural Networks <a href="https://drive.google.com/uc?export=download&id=1XkP1c9EhOBowla1rT1nnsDGMf2rZvrt7">PPTX</a></li>
<li>Deep Neural Networks <a href="https://drive.google.com/uc?export=download&id=1e2ejfZbbfMKLBv0v-tvBWBdI8gO3SSS1">PPTX</a></li>
<li>Loss Functions <a href="https://drive.google.com/uc?export=download&id=1fxQ_a1Q3eFPZ4kPqKbak6_emJK-JfnRH">PPTX</a></li>
<li>Fitting Models <a href="https://drive.google.com/uc?export=download&id=17QQ5ZzXBtR_uCNCUU1gPRWWRUeZN9exW">PPTX</a></li>
<li>Computing Gradients <a href="https://drive.google.com/uc?export=download&id=1hC8JUCOaFWiw3KGn0rm7nW6mEq242QDK">PPTX</a></li>
<li>Initialization <a href="https://drive.google.com/uc?export=download&id=1tSjCeAVg0JCeBcPgDJDbi7Gg43Qkh9_d">PPTX</a></li>
<li>Performance <a href="https://drive.google.com/uc?export=download&id=1RVZW3KjEs0vNSGx3B2fdizddlr6I0wLl">PPTX</a></li>
<li>Regularization <a href="https://drive.google.com/uc?export=download&id=1LTicIKPRPbZRkkg6qOr1DSuOB72axood">PPTX</a></li>
<li>Convolutional Networks <a href="https://drive.google.com/uc?export=download&id=1bGVuwAwrofzZdfvj267elIzkYMIvYFj0">PPTX</a></li>
<li>Image Generation <a href="https://drive.google.com/uc?export=download&id=14w31QqWRDix1GdUE-na0_E0kGKBhtKzs">PPTX</a></li>
<li>Transformers and LLMs <a href="https://drive.google.com/uc?export=download&id=1af6bTTjAbhDYfrDhboW7Fuv52Gk9ygKr">PPTX</a></li>
</ol>
</InstructorsContent>
</Column1>
<Column2>
<TopLine>Figures</TopLine>
<InstructorsContent>
<ol>
<li> Introduction: <a href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap1PDF.zip">PDF</a> / <a href="https://drive.google.com/uc?export=download&id=1udnl5pUOAc8DcAQ7HQwyzP9pwL95ynnv"> SVG</a> / <a href="https://docs.google.com/presentation/d/1IjTqIUvWCJc71b5vEJYte-Dwujcp7rvG/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX </a></li>
<li> Supervised learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap2PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1VSxcU5y1qNFlmd3Lb3uOWyzILuOj1Dla"> SVG</a> / <a href="https://docs.google.com/presentation/d/1Br7R01ROtRWPlNhC_KOommeHAWMBpWtz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Shallow neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap3PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=19kZFWlXhzN82Zx02ByMmSZOO4T41fmqI"> SVG</a> / <a href="https://docs.google.com/presentation/d/1e9M3jB5I9qZ4dCBY90Q3Hwft_i068QVQ/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Deep neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap4PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1ojr0ebsOhzvS04ItAflX2cVmYqHQHZUa"> SVG</a>
/
<a href="https://docs.google.com/presentation/d/1LTSsmY4mMrJbqXVvoTOCkQwHrRKoYnJj/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Loss functions: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap5PDF.zip">PDF
</a> / <a href="https://drive.google.com/uc?export=download&id=17MJO7fiMpFZVqKeqXTbQ36AMpmR4GizZ">
SVG
</a> / <a
href="https://docs.google.com/presentation/d/1gcpC_3z9oRp87eMkoco-kdLD-MM54Puk/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Training models: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap6PDF.zip">PDF
</a> / <a href="https://drive.google.com/uc?export=download&id=1VPdhFRnCr9_idTrX0UdHKGAw2shUuwhK">
SVG
</a> / <a
href="https://docs.google.com/presentation/d/1AKoeggAFBl9yLC7X5tushAGzCCxmB7EY/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Gradients and initialization: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap7PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1TTl4gvrTvNbegnml4CoGoKOOd6O8-PGs"> SVG</a> / <a href="https://docs.google.com/presentation/d/11zhB6PI-Dp6Ogmr4IcI6fbvbqNqLyYcz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Measuring performance: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap8PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=19eQOnygd_l0DzgtJxXuYnWa4z7QKJrJx"> SVG</a> / <a href="https://docs.google.com/presentation/d/1SHRmJscDLUuQrG7tmysnScb3ZUAqVMZo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Regularization: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap9PDF.zip">PDF
</a> / <a href="https://drive.google.com/uc?export=download&id=1LprgnUGL7xAM9-jlGZC9LhMPeefjY0r0">
SVG
</a> / <a
href="https://docs.google.com/presentation/d/1VwIfvjpdfTny6sEfu4ZETwCnw6m8Eg-5/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Convolutional networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap10PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1-Wb3VzaSvVeRzoUzJbI2JjZE0uwqupM9"> SVG</a> / <a href="https://docs.google.com/presentation/d/1MtfKBC4Y9hWwGqeP6DVwUNbi1j5ncQCg/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Residual networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap11PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1Mr58jzEVseUAfNYbGWCQyDtEDwvfHRi1"> SVG</a> / <a href="https://docs.google.com/presentation/d/1saY8Faz0KTKAAifUrbkQdLA2qkyEjOPI/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Transformers: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap12PDF.zip">PDF</a> / <a href="https://drive.google.com/uc?export=download&id=1txzOVNf8-jH4UfJ6SLnrtOfPd1Q3ebzd">
SVG</a> / <a
href="https://docs.google.com/presentation/d/1GVNvYWa0WJA6oKg89qZre-UZEhABfm0l/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Graph neural networks: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap13PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1lQIV6nRp6LVfaMgpGFhuwEXG-lTEaAwe"> SVG</a> / <a href="https://docs.google.com/presentation/d/1YwF3U82c1mQ74c1WqHVTzLZ0j7GgKaWP/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Unsupervised learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap14PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1aMbI6iCuUvOywqk5pBOmppJu1L1anqsM"> SVG</a> / <a href="https://docs.google.com/presentation/d/1A-lBGv3NHl4L32NvfFgy1EKeSwY-0UeB/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PPTX</a></li>
<li> GANs: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap15PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1EErnlZCOlXc3HK7m83T2Jh_0NzIUHvtL"> SVG</a> / <a href="https://docs.google.com/presentation/d/10Ernk41ShOTf4IYkMD-l4dJfKATkXH4w/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Normalizing flows: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap16PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1B9bxtmdugwtg-b7Y4AdQKAIEVWxjx8l3"> SVG</a> / <a href="https://docs.google.com/presentation/d/1nLLzqb9pdfF_h6i1HUDSyp7kSMIkSUUA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Variational autoencoders: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap17PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1SNtNIY7khlHQYMtaOH-FosSH3kWwL4b7"> SVG</a> / <a href="https://docs.google.com/presentation/d/1lQE4Bu7-LgvV2VlJOt_4dQT-kusYl7Vo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Diffusion models: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap18PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1A-pIGl4PxjVMYOKAUG3aT4a8wD3G-q_r"> SVG</a> /
<a href="https://docs.google.com/presentation/d/1x_ufIBtVPzWUvRieKMkpw5SdRjXWwdfR/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PPTX</a></li>
<li> Deep reinforcement learning: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap19PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1a5WUoF7jeSgwC_PVdckJi1Gny46fCqh0"> SVG</a> / <a href="https://docs.google.com/presentation/d/1TnYmVbFNhmMFetbjyfXGmkxp1EHauMqr/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PPTX </a></li>
<li> Why does deep learning work?: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap20PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1M2d0DHEgddAQoIedKSDTTt7m1ZdmBLQ3"> SVG</a> / <a href="https://docs.google.com/presentation/d/1coxF4IsrCzDTLrNjRagHvqB_FBy10miA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">
PPTX</a></li>
<li> Deep learning and ethics: <a
href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap21PDF.zip">PDF</a> / <a
href="https://drive.google.com/uc?export=download&id=1jixmFfwmZkW_UVYzcxmDcMsdFFtnZ0bU">SVG</a> / <a
href="https://docs.google.com/presentation/d/1EtfzanZYILvi9_-Idm28zD94I_6OrN9R/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
<li> Appendices - <a href="https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLAppendixPDF.zip">PDF</a> / <a href="https://drive.google.com/uc?export=download&id=1k2j7hMN40ISPSg9skFYWFL3oZT7r8v-l">
SVG</a> / <a
href="https://docs.google.com/presentation/d/1_2cJHRnsoQQHst0rwZssv-XH4o5SEHks/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true">PPTX</a></li>
</ol>
</InstructorsContent>
<a href="https://drive.google.com/file/d/1T_MXXVR4AfyMnlEFI-UVDh--FXI5deAp/view?usp=sharing">Instructions</a> for editing equations in figures.
<InstructorsContent>
</InstructorsContent>
</Column2>
</InstructorsRow2>
</InstructorsWrapper>
</InstructorsContainer>
</>
)
}
export default InstructorsSection

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@@ -0,0 +1,334 @@
import {
Column1,
Column2,
Heading,
Img,
ImgWrap,
InstructorsContainer,
InstructorsContent,
InstructorsLink,
InstructorsRow,
InstructorsRow2,
InstructorsWrapper,
Subtitle,
TextWrapper,
TopLine,
} from "@/components/Instructors/InstructorsElements";
import img from "@/images/instructor.svg";
const fullSlides = [
{
text: "Introduction",
link: "https://drive.google.com/uc?export=download&id=17RHb11BrydOvxSFNbRIomE1QKLVI087m",
},
{
text: "Supervised Learning",
link: "https://drive.google.com/uc?export=download&id=1491zkHULC7gDfqlV6cqUxyVYXZ-de-Ub",
},
{
text: "Shallow Neural Networks",
link: "https://drive.google.com/uc?export=download&id=1XkP1c9EhOBowla1rT1nnsDGMf2rZvrt7",
},
{
text: "Deep Neural Networks",
link: "https://drive.google.com/uc?export=download&id=1e2ejfZbbfMKLBv0v-tvBWBdI8gO3SSS1",
},
{
text: "Loss Functions",
link: "https://drive.google.com/uc?export=download&id=1fxQ_a1Q3eFPZ4kPqKbak6_emJK-JfnRH",
},
{
text: "Fitting Models",
link: "https://drive.google.com/uc?export=download&id=17QQ5ZzXBtR_uCNCUU1gPRWWRUeZN9exW",
},
{
text: "Computing Gradients",
link: "https://drive.google.com/uc?export=download&id=1hC8JUCOaFWiw3KGn0rm7nW6mEq242QDK",
},
{
text: "Initialization",
link: "https://drive.google.com/uc?export=download&id=1tSjCeAVg0JCeBcPgDJDbi7Gg43Qkh9_d",
},
{
text: "Performance",
link: "https://drive.google.com/uc?export=download&id=1RVZW3KjEs0vNSGx3B2fdizddlr6I0wLl",
},
{
text: "Regularization",
link: "https://drive.google.com/uc?export=download&id=1LTicIKPRPbZRkkg6qOr1DSuOB72axood",
},
{
text: "Convolutional Networks",
link: "https://drive.google.com/uc?export=download&id=1bGVuwAwrofzZdfvj267elIzkYMIvYFj0",
},
{
text: "Image Generation",
link: "https://drive.google.com/uc?export=download&id=14w31QqWRDix1GdUE-na0_E0kGKBhtKzs",
},
{
text: "Transformers and LLMs",
link: "https://drive.google.com/uc?export=download&id=1af6bTTjAbhDYfrDhboW7Fuv52Gk9ygKr",
},
];
const figures = [
{
text: "Introduction",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap1PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1udnl5pUOAc8DcAQ7HQwyzP9pwL95ynnv",
pptx: "https://docs.google.com/presentation/d/1IjTqIUvWCJc71b5vEJYte-Dwujcp7rvG/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Supervised learning",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap2PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1VSxcU5y1qNFlmd3Lb3uOWyzILuOj1Dla",
pptx: "https://docs.google.com/presentation/d/1Br7R01ROtRWPlNhC_KOommeHAWMBpWtz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Shallow neural networks",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap3PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=19kZFWlXhzN82Zx02ByMmSZOO4T41fmqI",
pptx: "https://docs.google.com/presentation/d/1e9M3jB5I9qZ4dCBY90Q3Hwft_i068QVQ/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Deep neural networks",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap4PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1ojr0ebsOhzvS04ItAflX2cVmYqHQHZUa",
pptx: "https://docs.google.com/presentation/d/1LTSsmY4mMrJbqXVvoTOCkQwHrRKoYnJj/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Loss functions",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap5PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=17MJO7fiMpFZVqKeqXTbQ36AMpmR4GizZ",
pptx: "https://docs.google.com/presentation/d/1gcpC_3z9oRp87eMkoco-kdLD-MM54Puk/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Training models",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap6PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1VPdhFRnCr9_idTrX0UdHKGAw2shUuwhK",
pptx: "https://docs.google.com/presentation/d/1AKoeggAFBl9yLC7X5tushAGzCCxmB7EY/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Gradients and initialization",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap7PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1TTl4gvrTvNbegnml4CoGoKOOd6O8-PGs",
pptx: "https://docs.google.com/presentation/d/11zhB6PI-Dp6Ogmr4IcI6fbvbqNqLyYcz/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Measuring performance",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap8PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=19eQOnygd_l0DzgtJxXuYnWa4z7QKJrJx",
pptx: "https://docs.google.com/presentation/d/1SHRmJscDLUuQrG7tmysnScb3ZUAqVMZo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Regularization",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap9PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1LprgnUGL7xAM9-jlGZC9LhMPeefjY0r0",
pptx: "https://docs.google.com/presentation/d/1VwIfvjpdfTny6sEfu4ZETwCnw6m8Eg-5/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Convolutional networks",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap10PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1-Wb3VzaSvVeRzoUzJbI2JjZE0uwqupM9",
pptx: "https://docs.google.com/presentation/d/1MtfKBC4Y9hWwGqeP6DVwUNbi1j5ncQCg/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Residual networks",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap11PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1Mr58jzEVseUAfNYbGWCQyDtEDwvfHRi1",
pptx: "https://docs.google.com/presentation/d/1saY8Faz0KTKAAifUrbkQdLA2qkyEjOPI/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Transformers",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap12PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1txzOVNf8-jH4UfJ6SLnrtOfPd1Q3ebzd",
pptx: "https://docs.google.com/presentation/d/1GVNvYWa0WJA6oKg89qZre-UZEhABfm0l/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Graph neural networks",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap13PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1lQIV6nRp6LVfaMgpGFhuwEXG-lTEaAwe",
pptx: "https://docs.google.com/presentation/d/1YwF3U82c1mQ74c1WqHVTzLZ0j7GgKaWP/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Unsupervised learning",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap14PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1aMbI6iCuUvOywqk5pBOmppJu1L1anqsM",
pptx: "https://docs.google.com/presentation/d/1A-lBGv3NHl4L32NvfFgy1EKeSwY-0UeB/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "GANs",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap15PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1EErnlZCOlXc3HK7m83T2Jh_0NzIUHvtL",
pptx: "https://docs.google.com/presentation/d/10Ernk41ShOTf4IYkMD-l4dJfKATkXH4w/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Normalizing flows",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap16PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1SNtNIY7khlHQYMtaOH-FosSH3kWwL4b7",
pptx: "https://docs.google.com/presentation/d/1nLLzqb9pdfF_h6i1HUDSyp7kSMIkSUUA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Variational autoencoders",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap17PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1B9bxtmdugwtg-b7Y4AdQKAIEVWxjx8l3",
pptx: "https://docs.google.com/presentation/d/1lQE4Bu7-LgvV2VlJOt_4dQT-kusYl7Vo/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Diffusion models",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap18PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1A-pIGl4PxjVMYOKAUG3aT4a8wD3G-q_r",
pptx: "https://docs.google.com/presentation/d/1x_ufIBtVPzWUvRieKMkpw5SdRjXWwdfR/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Deep reinforcement learning",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap19PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1a5WUoF7jeSgwC_PVdckJi1Gny46fCqh0",
pptx: "https://docs.google.com/presentation/d/1TnYmVbFNhmMFetbjyfXGmkxp1EHauMqr/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Why does deep learning work?",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap20PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1M2d0DHEgddAQoIedKSDTTt7m1ZdmBLQ3",
pptx: "https://docs.google.com/presentation/d/1coxF4IsrCzDTLrNjRagHvqB_FBy10miA/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Deep learning and ethics",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLChap21PDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1jixmFfwmZkW_UVYzcxmDcMsdFFtnZ0bU",
pptx: "https://docs.google.com/presentation/d/1EtfzanZYILvi9_-Idm28zD94I_6OrN9R/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
{
text: "Appendices",
links: {
pdf: "https://github.com/udlbook/udlbook/raw/main/PDFFigures/UDLAppendixPDF.zip",
svg: "https://drive.google.com/uc?export=download&id=1k2j7hMN40ISPSg9skFYWFL3oZT7r8v-l",
pptx: "https://docs.google.com/presentation/d/1_2cJHRnsoQQHst0rwZssv-XH4o5SEHks/edit?usp=drive_link&ouid=110441678248547154185&rtpof=true&sd=true",
},
},
];
export default function InstructorsSection() {
return (
<>
<InstructorsContainer lightBg={true} id="Instructors">
<InstructorsWrapper>
<InstructorsRow imgStart={false}>
<Column1>
<TextWrapper>
<TopLine>Instructors</TopLine>
<Heading lightText={false}>Resources for instructors</Heading>
<Subtitle darkText={true}>
All the figures in vector and image formats, full slides for
first twelve chapters, instructor answer booklet
</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt="Instructor" />
</ImgWrap>
</Column2>
</InstructorsRow>
<InstructorsRow2>
<Column1>
<TopLine>Register</TopLine>
<InstructorsLink href="https://mitpress.ublish.com/request?cri=15055">
Register
</InstructorsLink>{" "}
with MIT Press for answer booklet.
<InstructorsContent></InstructorsContent>
<TopLine>Full slides</TopLine>
<InstructorsContent>
Slides for 20 lecture undergraduate deep learning course:
</InstructorsContent>
<InstructorsContent>
<ol>
{fullSlides.map((slide, index) => (
<li key={index}>
{slide.text}{" "}
<InstructorsLink href={slide.link}>
PPTX
</InstructorsLink>
</li>
))}
</ol>
</InstructorsContent>
</Column1>
<Column2>
<TopLine>Figures</TopLine>
<InstructorsContent>
<ol>
{figures.map((figure, index) => (
<li key={index}>
{figure.text}:{" "}
<InstructorsLink href={figure.links.pdf}>
PDF
</InstructorsLink>{" "}
/{" "}
<InstructorsLink href={figure.links.svg}>
{" "}
SVG
</InstructorsLink>{" "}
/{" "}
<InstructorsLink href={figure.links.pptx}>
PPTX{" "}
</InstructorsLink>
</li>
))}
</ol>
</InstructorsContent>
<InstructorsLink href="https://drive.google.com/file/d/1T_MXXVR4AfyMnlEFI-UVDh--FXI5deAp/view?usp=sharing">
Instructions
</InstructorsLink>{" "}
for editing equations in figures.
<InstructorsContent></InstructorsContent>
</Column2>
</InstructorsRow2>
</InstructorsWrapper>
</InstructorsContainer>
</>
);
}

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@@ -1,139 +0,0 @@
import styled from "styled-components";
export const MediaContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({lightBg}) => (lightBg ? '#f9f9f9': '#010606')};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`
export const MediaWrapper = styled.div`
display: grid ;
z-index: 1;
width: 100% ;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`
export const MediaRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`
export const TextWrapper = styled.div`
max-width: 540px ;
padding-top: 0;
padding-bottom: 0;
`
export const TopLine = styled.p`
color: #57c6d1;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`
export const Heading= styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({lightText}) => (lightText ? '#f7f8fa' : '#010606')};
@media screen and (max-width: 480px)
{
font-size: 32px;
}
`
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({darkText})=> (darkText ? '#010606' : '#fff')};
`
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const MediaTextBlock = styled.div`
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`
export const MediaContent = styled.div`
z-index: 3;
width: 100% ;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left ;
list-style-position: inside;
`
export const MediaRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`

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@@ -0,0 +1,179 @@
import styled from "styled-components";
export const MediaContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({ lightBg }) => (lightBg ? "#f9f9f9" : "#010606")};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`;
export const MediaWrapper = styled.div`
display: grid;
z-index: 1;
width: 100%;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`;
export const MediaRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`;
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`;
export const TextWrapper = styled.div`
max-width: 540px;
padding-top: 0;
padding-bottom: 0;
`;
export const TopLine = styled.p`
color: #57c6d1;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`;
export const Heading = styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({ lightText }) => (lightText ? "#f7f8fa" : "#010606")};
@media screen and (max-width: 480px) {
font-size: 32px;
}
`;
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({ darkText }) => (darkText ? "#010606" : "#fff")};
`;
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`;
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`;
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const MediaTextBlock = styled.div`
@media screen and (max-width: 768px) {
font-size: 24px;
}
@media screen and (max-width: 480px) {
font-size: 18px;
}
`;
export const MediaContent = styled.div`
z-index: 3;
width: 100%;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left;
list-style-position: inside;
@media screen and (max-width: 768px) {
font-size: 14px;
}
`;
export const MediaRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const VideoFrame = styled.div`
width: 560px;
height: 315px;
@media screen and (max-width: 1050px) {
width: 280px;
height: 157px;
}
`;
export const MediaLink = styled.a`
text-decoration: none;
color: #57c6d1;
font-weight: 300;
margin: 0 2px;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #57c6d1;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;

View File

@@ -1,83 +0,0 @@
import React from 'react'
import { ImgWrap, Img, MediaContainer, MediaContent, MediaWrapper, MediaRow, MediaRow2, Column1, Column2, TextWrapper, TopLine, Heading, Subtitle} from './MediaElements'
// export const homeObjOne = {
// id: 'about',
// lightBg: false,
// lightText: true,
// lightTextDesc: true,
// topLine: 'Premium Bank',
// headline: 'Unlimited transactions with zero fees',
// description:
// 'Get access to our exclusive app that allows you to send unlimited transactions without getting charged any fees',
// buttonLabel: 'Get Started',
// imgStart: false,
// img: require('../../images/svg-1.svg').default,
// alt: 'Car',
// dark: true,
// primary: true,
// darkText: false
// };
import img from '../../images/media.svg'
const MediaSection = () => {
return (
<>
<MediaContainer lightBg={false} id='Media'>
<MediaWrapper>
<MediaRow imgStart={true}>
<Column1>
<TextWrapper>
<TopLine>Media</TopLine>
<Heading lightText={true}> Reviews, videos, podcasts, interviews</Heading>
<Subtitle darkText={false}>Various resources connected to the book</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt='Car'/>
</ImgWrap>
</Column2>
</MediaRow>
<MediaRow>
<Column1>
Machine learning street talk podcast
<iframe width="560" height="315" src="https://www.youtube.com/embed/sJXn4Cl4oww?si=Lm_hQPqj0RXy-75H&amp;controls=0" title="YouTube video player" frameborder="2" allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share" allowfullscreen></iframe>
</Column1>
<Column2>
Deeper insights podcast
<iframe width="560" height="315" src="https://www.youtube.com/embed/nQf4o9TDSHI?si=uMk66zLD7uhuSnQ1&amp;controls=0" title="YouTube video player" frameborder="2" allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share" allowfullscreen></iframe>
</Column2>
</MediaRow>
<MediaRow2>
<Column1>
<TopLine>Reviews</TopLine>
<MediaContent>
<ul>
<li> Amazon <a href="https://www.amazon.com/Understanding-Deep-Learning-Simon-Prince-ebook/product-reviews/B0BXKH8XY6/">reviews</a></li>
<li>Goodreads <a href="https://www.goodreads.com/book/show/123239819-understanding-deep-learning?">reviews </a></li>
<li>Book <a href="https://medium.com/@vishalvignesh/udl-book-review-the-new-deep-learning-textbook-youll-want-to-finish-69e1557b018d">review</a> by Vishal V.</li>
</ul>
</MediaContent>
</Column1>
<Column2>
<TopLine>Interviews</TopLine>
<MediaContent>
<ul>
<li>Borealis AI <a href="https://www.borealisai.com/news/understanding-deep-learning/">interview</a></li>
<li>Shepherd ML book <a href="https://shepherd.com/best-books/machine-learning-and-deep-neural-networks">recommendations</a></li>
</ul>
</MediaContent>
</Column2>
</MediaRow2>
</MediaWrapper>
</MediaContainer>
</>
)
}
export default MediaSection

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@@ -0,0 +1,164 @@
import {
Column1,
Column2,
Heading,
Img,
ImgWrap,
MediaContainer,
MediaContent,
MediaLink,
MediaRow,
MediaRow2,
MediaWrapper,
Subtitle,
TextWrapper,
TopLine,
VideoFrame,
} from "@/components/Media/MediaElements";
import img from "@/images/media.svg";
const interviews = [
{
href: "https://www.borealisai.com/news/understanding-deep-learning/",
text: "Borealis AI",
linkText: "interview",
},
{
href: "https://shepherd.com/best-books/machine-learning-and-deep-neural-networks",
text: "Shepherd ML book",
linkText: "recommendations",
},
];
export default function MediaSection() {
return (
<>
<MediaContainer lightBg={false} id="Media">
<MediaWrapper>
<MediaRow imgStart={true}>
<Column1>
<TextWrapper>
<TopLine>Media</TopLine>
<Heading lightText={true}>
Reviews, videos, podcasts, interviews
</Heading>
<Subtitle darkText={false}>
Various resources connected to the book
</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt="Media" />
</ImgWrap>
</Column2>
</MediaRow>
<MediaRow>
<Column1>
Machine learning street talk podcast
<VideoFrame>
<iframe
width="100%"
height="100%"
src="https://www.youtube.com/embed/sJXn4Cl4oww?si=Lm_hQPqj0RXy-75H&amp;controls=0"
title="YouTube video player"
frameBorder="2"
allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share"
allowfullscreen
></iframe>
</VideoFrame>
</Column1>
<Column2>
Deeper insights podcast
<VideoFrame>
<iframe
width="100%"
height="100%"
src="https://www.youtube.com/embed/nQf4o9TDSHI?si=uMk66zLD7uhuSnQ1&amp;controls=0"
title="YouTube video player"
frameBorder="2"
allow="accelerometer; autoplay; clipboard-write; encrypted-media; gyroscope; picture-in-picture; web-share"
allowfullscreen
></iframe>
</VideoFrame>
</Column2>
</MediaRow>
<MediaRow2>
<Column1>
<TopLine>Reviews</TopLine>
<MediaContent>
{/* TODO: add dynamic rendering for reviews */}
<ul>
<li>
Nature Machine Intelligence{" "}
<MediaLink href="https://github.com/udlbook/udlbook/blob/main/public/NMI_Review.pdf">
{" "}
review{" "}
</MediaLink>{" "}
by{" "}
<MediaLink href="https://wang-axis.github.io/">
Ge Wang
</MediaLink>
</li>
<li>
Amazon{" "}
<MediaLink href="https://www.amazon.com/Understanding-Deep-Learning-Simon-Prince-ebook/product-reviews/B0BXKH8XY6/">
reviews
</MediaLink>
</li>
<li>
Goodreads{" "}
<MediaLink href="https://www.goodreads.com/book/show/123239819-understanding-deep-learning?">
reviews{" "}
</MediaLink>
</li>
<li>
Book{" "}
<MediaLink href="https://medium.com/@vishalvignesh/udl-book-review-the-new-deep-learning-textbook-youll-want-to-finish-69e1557b018d">
review
</MediaLink>{" "}
by Vishal V.
</li>
<li>
Amazon{" "}
<MediaLink href="https://www.amazon.com/Understanding-Deep-Learning-Simon-Prince-ebook/product-reviews/B0BXKH8XY6/">
reviews
</MediaLink>
</li>
<li>
Goodreads{" "}
<MediaLink href="https://www.goodreads.com/book/show/123239819-understanding-deep-learning?">
reviews{" "}
</MediaLink>
</li>
<li>
Book{" "}
<MediaLink href="https://medium.com/@vishalvignesh/udl-book-review-the-new-deep-learning-textbook-youll-want-to-finish-69e1557b018d">
review
</MediaLink>{" "}
by Vishal V.
</li>
</ul>
</MediaContent>
</Column1>
<Column2>
<TopLine>Interviews</TopLine>
<MediaContent>
<ul>
{interviews.map((interview, index) => (
<li key={index}>
{interview.text}{" "}
<MediaLink href={interview.href}>
{interview.linkText}
</MediaLink>
</li>
))}
</ul>
</MediaContent>
</Column2>
</MediaRow2>
</MediaWrapper>
</MediaContainer>
</>
);
}

View File

@@ -1,167 +0,0 @@
import styled from "styled-components";
export const MoreContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({lightBg}) => (lightBg ? '#57c6d1': '#010606')};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`
export const MoreWrapper = styled.div`
display: grid ;
z-index: 1;
// height: 1050px ;
width: 100% ;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`
export const MoreRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const MoreRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`
export const TextWrapper = styled.div`
max-width: 540px ;
padding-top: 0;
padding-bottom: 0;
`
export const TopLine = styled.p`
color: #773c23;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 12px;
margin-top: 16px ;
`
export const Heading= styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({lightText}) => (lightText ? '#f7f8fa' : '#010606')};
@media screen and (max-width: 480px)
{
font-size: 32px;
}
`
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({darkText})=> (darkText ? '#010606' : '#fff')};
`
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const MoreContent = styled.div`
z-index: 3;
width: 100% ;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left ;
list-style-position: inside;
`
export const MoreOuterList = styled.ul`
// list-style:none;
list-style-position: inside;
margin:0;
`
export const MoreInnerList = styled.ul`
list-style-position: inside;
`
export const MoreInnerP = styled.p`
padding-left: 18px;
padding-bottom: 10px ;
padding-top: 3px ;
font-size:14px;
color: #fff
`
export const MoreLink = styled.a`
color: #fff;
text-decoration: none;
padding: 0.1rem 0rem;
height: 100%;
cursor: pointer;
&:hover {
filter: brightness(0.85);
}
&.active {
color: #000
border-bottom: 3px solid #01bf71;
}
`;

View File

@@ -0,0 +1,183 @@
import styled from "styled-components";
export const MoreContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({ lightBg }) => (lightBg ? "#57c6d1" : "#010606")};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`;
export const MoreWrapper = styled.div`
display: grid;
z-index: 1;
/* height: 1050px; */
width: 100%;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`;
export const MoreRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const MoreRow2 = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: top;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`;
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`;
export const TextWrapper = styled.div`
max-width: 540px;
padding-top: 0;
padding-bottom: 0;
`;
export const TopLine = styled.p`
color: #773c23;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 12px;
margin-top: 16px;
`;
export const Heading = styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({ lightText }) => (lightText ? "#f7f8fa" : "#010606")};
@media screen and (max-width: 480px) {
font-size: 32px;
}
`;
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({ darkText }) => (darkText ? "#010606" : "#fff")};
`;
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`;
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`;
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const MoreContent = styled.div`
z-index: 3;
width: 100%;
max-width: 1100px;
position: static;
padding: 8px 0px;
margin: 10px 0px;
display: flex;
flex-direction: column;
align-items: left;
list-style-position: inside;
`;
export const MoreOuterList = styled.ul`
/* list-style:none; */
list-style-position: inside;
margin: 0;
@media screen and (max-width: 768px) {
font-size: 14px;
}
`;
export const MoreInnerList = styled.ul`
list-style-position: inside;
@media screen and (max-width: 768px) {
font-size: 12px;
}
`;
export const MoreInnerP = styled.p`
padding-left: 18px;
padding-bottom: 10px;
padding-top: 3px;
font-size: 14px;
color: #fff;
`;
export const MoreLink = styled.a`
text-decoration: none;
color: #555;
font-weight: 300;
margin: 0 2px;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #555;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;

View File

@@ -1,750 +0,0 @@
import React from 'react'
import { ImgWrap, Img, MoreContainer, MoreRow2, MoreWrapper, MoreRow, Column1, Column2, TextWrapper, TopLine, Heading, Subtitle, MoreOuterList, MoreInnerList, MoreInnerP} from './MoreElements'
import img from '../../images/more.svg'
const MoreSection = () => {
return (
<>
<MoreContainer lightBg={true} id='More'>
<MoreWrapper>
<MoreRow imgStart={false}>
<Column1>
<TextWrapper>
<TopLine>More</TopLine>
<Heading lightText={false}>Further reading</Heading>
<Subtitle darkText={true}>Other articles, blogs, and books that I have written. Most in a similar style and using the same notation as Understanding Deep Learning. </Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt='Car'/>
</ImgWrap>
</Column2>
</MoreRow>
<MoreRow2>
<Column1>
<TopLine>Book</TopLine>
<MoreOuterList>
<li>
<a href="http://computervisionmodels.com" target="_blank" rel="noreferrer">Computer vision: models, learning, and inference</a>
<MoreInnerP>
<MoreInnerList>
<li> 2012 book published with CUP </li>
<li> Focused on probabilistic models </li>
<li> Pre-"deep learning" </li>
<li> Lots of ML content</li>
<li> Individual chapters available below</li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Transformers & LLMs</TopLine>
<MoreOuterList>
<li>
<a href="https://www.borealisai.com/research-blogs/a-high-level-overview-of-large-language-models/" target="_blank" rel="noreferrer">Intro to LLMs</a>
<MoreInnerP>
<MoreInnerList>
<li> What is an LLM?</li>
<li> Pretraining</li>
<li> Instruction fine-tuning</li>
<li> Reinforcement learning from human feedback</li>
<li> Notable LLMs</li>
<li> LLMs without training from scratch</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-14-transformers-i-introduction/" target="_blank" rel="noreferrer">Transformers I</a>
<MoreInnerP>
<MoreInnerList>
<li> Dot-Product self-attention </li>
<li> Scaled dot-product self-attention </li>
<li> Position encoding</li>
<li> Multiple heads </li>
<li> Transformer block </li>
<li> Encoders </li>
<li> Decoders </li>
<li> Encoder-Decoders </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-16-transformers-ii-extensions/" target="_blank" rel="noreferrer">Transformers II</a>
<MoreInnerP>
<MoreInnerList>
<li> Sinusoidal position embeddings </li>
<li> Learned position embeddings </li>
<li> Relatives vs. absolute position embeddings</li>
<li> Extending transformers to longer sequences </li>
<li> Reducing attention matrix size </li>
<li> Making attention matrix sparse </li>
<li> Kernelizing attention computation </li>
<li> Attention as an RNN</li>
<li> Attention as a hypernetwork </li>
<li> Attention as a routing network </li>
<li> Attention and graphs </li>
<li> Attention and convolutions </li>
<li> Attention and gating </li>
<li> Attention and memory retrieval </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-17-transformers-iii-training/" target="_blank" rel="noreferrer">Transformers III</a>
<MoreInnerP>
<MoreInnerList>
<li> Tricks for training transformers </li>
<li> Why are these tricks required? </li>
<li> Removing layer normalization</li>
<li> Balancing residual dependencies </li>
<li> Reducing optimizer variance </li>
<li> How to train deeper transformers on small datasets </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/research-blogs/training-and-fine-tuning-large-language-models/" target="_blank" rel="noreferrer">Training and fine-tuning LLMs</a>
<MoreInnerP>
<MoreInnerList>
<li> Large language models </li>
<li> Pretraining </li>
<li> Supervised fine tuning</li>
<li> Reinforcement learning from human feedback </li>
<li> Direct preference optimization</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/research-blogs/speeding-up-inference-in-transformers/" target="_blank" rel="noreferrer">Speeding up inference in LLMs</a>
<MoreInnerP>
<MoreInnerList>
<li> Problems with transformers</li>
<li> Attention-free transformers </li>
<li> Complexity</li>
<li> RWKV </li>
<li> Linear transformers and performers</li>
<li> Retentive network</li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Math for machine learning</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1j2v2n6STPnblOCZ1_GBcVAZrsYkjPYwR/view?usp=sharing" target="_blank" rel="noreferrer">Linear algebra</a>
<MoreInnerP>
<MoreInnerList>
<li> Vectors and matrices </li>
<li> Determinant and trace </li>
<li> Orthogonal matrices </li>
<li> Null space </li>
<li> Linear transformations </li>
<li> Singular value decomposition </li>
<li> Least squares problems </li>
<li> Principal direction problems </li>
<li> Inversion of block matrices</li>
<li> Schur complement identity</li>
<li> Sherman-Morrison-Woodbury</li>
<li> Matrix determinant lemma</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1cmxXneW122-hcfmMRjEE-n5C9T2YvuQX/view?usp=sharing" target="_blank" rel="noreferrer">Introduction to probability</a>
<MoreInnerP>
<MoreInnerList>
<li> Random variables </li>
<li> Joint probability </li>
<li> Marginal probability </li>
<li> Conditional probability </li>
<li> Bayes' rule </li>
<li> Independence </li>
<li> Expectation </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1GI3eZNB1CjTqYHLyuRhCV215rwqANVOx/view?usp=sharing" target="_blank" rel="noreferrer">Probability distributions</a>
<MoreInnerP>
<MoreInnerList>
<li> Bernouilli distribution </li>
<li> Beta distribution</li>
<li> Categorical distribution </li>
<li> Dirichlet distribution</li>
<li> Univariate normal distribution </li>
<li> Normal inverse-scaled gamma distribution </li>
<li> Multivariate normal distribution </li>
<li> Normal inverse Wishart distribution </li>
<li> Conjugacy </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1DZ4rCmC7AZ8PFc51PiMUIkBO-xqKT_CG/view?usp=sharing" target="_blank" rel="noreferrer">Fitting probability distributions</a>
<MoreInnerP>
<MoreInnerList>
<li> Maximum likelihood </li>
<li> Maximum a posteriori </li>
<li> Bayesian approach </li>
<li> Example: fitting normal </li>
<li> Example: fitting categorical </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1CTfmsN-HJWZBRj8lY0ZhgHEbPCmYXWnA/view?usp=sharing" target="_blank" rel="noreferrer">The normal distribution</a>
<MoreInnerP>
<MoreInnerList>
<li> Types of covariance matrix </li>
<li> Decomposition of covariance </li>
<li> Linear transformations </li>
<li> Marginal distributions </li>
<li> Conditional distributions </li>
<li> Product of two normals </li>
<li> Change of variable formula </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Optimization</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1IoOSfJ0ku89aVyM9qygPl4MVnAhMEbAZ/view?usp=sharing" target="_blank" rel="noreferrer">Gradient-based optimmization</a>
<MoreInnerP>
<MoreInnerList>
<li> Convexity </li>
<li> Steepest descent </li>
<li> Newton's method </li>
<li> Gauss-Newton method </li>
<li> Line search </li>
<li> Reparameterization </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-8-bayesian-optimization/" target="_blank" rel="noreferrer">Bayesian optimization</a>
<MoreInnerP>
<MoreInnerList>
<li> Gaussian processes </li>
<li> Acquisition functions </li>
<li> Incorporating noise</li>
<li> Kernel choice </li>
<li> Learning GP parameters </li>
<li> Tips, tricks, and limitations </li>
<li> Beta-Bernoulli bandit </li>
<li> Random forests for BO </li>
<li> Tree-Parzen estimators </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-9-sat-solvers-i-introduction-and-applications/" target="_blank" rel="noreferrer">SAT Solvers I</a>
<MoreInnerP>
<MoreInnerList>
<li> Boolean logic and satisfiability </li>
<li> Conjunctive normal form </li>
<li> The Tseitin transformation </li>
<li> SAT and related problems </li>
<li> SAT constructions </li>
<li> Graph coloring and scheduling </li>
<li> Fitting binary neural networks</li>
<li> Fitting decision trees</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-10-sat-solvers-ii-algorithms/" target="_blank" rel="noreferrer">SAT Solvers II</a>
<MoreInnerP>
<MoreInnerList>
<li> Conditioning </li>
<li> Resolution </li>
<li> Solving 2-SAT by unit propagation </li>
<li> Directional resolution </li>
<li> SAT as binary search </li>
<li> DPLL </li>
<li> Conflict driven clause learning</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-11-sat-solvers-iii-factor-graphs-and-smt-solvers/" target="_blank" rel="noreferrer">SAT Solvers III</a>
<MoreInnerP>
<MoreInnerList>
<li> Satisfiability vs. problem size </li>
<li> Factor graph representation </li>
<li> Max product / sum product for SAT </li>
<li> Survey propagation </li>
<li> SAT with non-binary variables </li>
<li> SMT solvers </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-11-sat-solvers-iii-factor-graphs-and-smt-solvers/" target="_blank" rel="noreferrer">SAT Solvers III</a>
<MoreInnerP>
<MoreInnerList>
<li> Satisfiability vs. problem size </li>
<li> Factor graph representation </li>
<li> Max product / sum product for SAT </li>
<li> Survey propagation </li>
<li> SAT with non-binary variables </li>
<li> SMT solvers </li>
</MoreInnerList>
</MoreInnerP>
</li>
<TopLine>Computer vision</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1r3V1GC5grhPF2pD91izuE0hTrTUEpQ9I/view?usp=sharing" target="_blank" rel="noreferrer">Image Processing</a>
<MoreInnerP>
<MoreInnerList>
<li> Whitening </li>
<li> Histogram equalization </li>
<li> Filtering </li>
<li> Edges and corners </li>
<li> Dimensionality reduction </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1dbMBE13MWcd84dEGjYeWsC6eXouoC0xn/view?usp=sharing" target="_blank" rel="noreferrer">Pinhole camera</a>
<MoreInnerP>
<MoreInnerList>
<li> Pinhole camera model </li>
<li> Radial distortion </li>
<li> Homogeneous coordinates </li>
<li> Learning extrinsic parameters </li>
<li> Learning intrinsic parameters </li>
<li> Inferring three-dimensional world points </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1UArrb1ovqvZHbv90MufkW372r__ZZACQ/view?usp=sharing" target="_blank" rel="noreferrer">Geometric transformations</a>
<MoreInnerP>
<MoreInnerList>
<li> Euclidean, similarity, affine, projective transformations </li>
<li> Fitting transformation models </li>
<li> Inference in transformation models </li>
<li> Three geometric problems for planes </li>
<li> Transformations between images </li>
<li> Robust learning of transformations </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1RqUoc7kvK8vqZF1NVuw7bIex9v4_QlSx/view?usp=sharing" target="_blank" rel="noreferrer">Multiple cameras</a>
<MoreInnerP>
<MoreInnerList>
<li> Two view geometry </li>
<li> The essential matrix </li>
<li> The fundamental matrix </li>
<li> Two-view reconstruction pipeline </li>
<li> Rectification </li>
<li> Multiview reconstruction </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Reinforcement learning</TopLine>
<MoreOuterList>
<li>
<a href="https://arxiv.org/abs/2307.05979" target="_blank" rel="noreferrer">Transformers in RL</a>
<MoreInnerP>
<MoreInnerList>
<li> Challenges in RL</li>
<li> Advantages of transformers for RL</li>
<li> Representation learning</li>
<li> Transition function learning</li>
<li> Reward learning </li>
<li> Policy learning </li>
<li> Training strategy </li>
<li> Interpretability </li>
<li> Applications </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
</Column1>
{/* ########################################### */}
<Column2>
<TopLine>AI Theory</TopLine>
<MoreOuterList>
<li>
<a href="https://www.borealisai.com/research-blogs/gradient-flow/" target="_blank" rel="noreferrer">Gradient flow</a>
<MoreInnerP>
<MoreInnerList>
<li> Gradient flow </li>
<li> Evolution of residual </li>
<li> Evolution of parameters </li>
<li> Evolution of model predictions </li>
<li> Evolution of prediction covariance </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/research-blogs/the-neural-tangent-kernel/" target="_blank" rel="noreferrer">Neural tangent kernel</a>
<MoreInnerP>
<MoreInnerList>
<li> Infinite width neural networks </li>
<li> Training dynamics </li>
<li> Empirical NTK for shallow network</li>
<li> Analytical NTK for shallow network </li>
<li> Empirical NTK for ddep network </li>
<li> Analtical NTK for deep network</li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Temporal models</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1rrzGNyZDjXQ3_9ZqCGDmRMM3GYtHSBvj/view?usp=sharing" target="_blank" rel="noreferrer">Temporal models</a>
<MoreInnerP>
<MoreInnerList>
<li> Kalman filter </li>
<li> Smoothing </li>
<li> Extended Kalman filter </li>
<li> Unscented Kalman filter </li>
<li> Particle filtering </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine> Unsupervised learning</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1BrPHxAuyz28hhz_FtbO0A1cWYdMs2_h8/view?usp=sharing" target="_blank" rel="noreferrer">Modeling complex data densities</a>
<MoreInnerP>
<MoreInnerList>
<li> Hidden variables </li>
<li> Expectation maximization </li>
<li> Mixture of Gaussians </li>
<li> The t-distribution </li>
<li> Factor analysis </li>
<li> The EM algorithm in detail </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-5-variational-auto-encoders/" target="_blank" rel="noreferrer">Variational autoencoders</a>
<MoreInnerP>
<MoreInnerList>
<li> Non-linear latent variable models </li>
<li> Evidence lower bound (ELBO) </li>
<li> ELBO properties </li>
<li> Variational approximation </li>
<li> The variational autoencoder </li>
<li> Reparameterization trick </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://arxiv.org/abs/1908.09257" target="_blank" rel="noreferrer">Normalizing flows: introduction and review</a>
<MoreInnerP>
<MoreInnerList>
<li> Normalizing flows </li>
<li> Elementwise and linear flows </li>
<li> Planar and radial flows </li>
<li> Coupling and auto-regressive flows </li>
<li> Coupling functions </li>
<li> Residual flows </li>
<li> Infinitesimal (continuous) flows </li>
<li> Datasets and performance </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Graphical Models</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1ghgeRmeZMyzNHcuzVwS4vRP6BXi3npVO/view?usp=sharing" target="_blank" rel="noreferrer">Graphical models</a>
<MoreInnerP>
<MoreInnerList>
<li> Conditional independence </li>
<li> Directed graphical models </li>
<li> Undirected graphical models </li>
<li> Inference in graphical models </li>
<li> Sampling in graphical models </li>
<li> Learning in graphical models </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1WAMc3wtZoPv5wRkdF-D0SShVYF6Net84/view?usp=sharing" target="_blank" rel="noreferrer">Models for chains and trees</a>
<MoreInnerP>
<MoreInnerList>
<li> Hidden Markov models </li>
<li> Viterbi algorithm </li>
<li> Forward-backward algorithm </li>
<li> Belief propagation </li>
<li> Sum product algorithm </li>
<li> Extension to trees </li>
<li> Graphs with loops </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1qqS9OfA1z7t12M45UaBr4CSCj1jwzcwz/view?usp=sharing" target="_blank" rel="noreferrer">Models for grids</a>
<MoreInnerP>
<MoreInnerList>
<li> Markov random fields </li>
<li> MAP inference in binary pairwise MRFs </li>
<li> Graph cuts </li>
<li> Multi-label pairwise MRFs </li>
<li> Alpha-expansion algorithm </li>
<li> Conditional random fields </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Machine learning</TopLine>
<MoreOuterList>
<li>
<a href="https://drive.google.com/file/d/1ArWWi-qbzK2ih6KpOeIF8wX5g3S4J5DY/view?usp=sharing" target="_blank" rel="noreferrer">Learning and inference</a>
<MoreInnerP>
<MoreInnerList>
<li> Discriminative models </li>
<li> Generative models </li>
<li> Example: regression </li>
<li> Example: classification </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1QZX5jm4xN8rhpvdjRsFP5Ybw1EXSNGaL/view?usp=sharing" target="_blank" rel="noreferrer">Regression models</a>
<MoreInnerP>
<MoreInnerList>
<li> Linear regression </li>
<li> Bayesian linear regression </li>
<li> Non-linear regression </li>
<li> Bayesian non-linear regression </li>
<li> The kernel trick </li>
<li> Gaussian process regression </li>
<li> Sparse linear regression </li>
<li> Relevance vector regression </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://drive.google.com/file/d/1-_f4Yfm8iBWcaZ2Gyjw6O0eZiODipmSV/view?usp=sharing" target="_blank" rel="noreferrer">Classification models</a>
<MoreInnerP>
<MoreInnerList>
<li> Logistic regression </li>
<li> Bayesian logistic regression </li>
<li> Non-linear logistic regression </li>
<li> Gaussian process classification </li>
<li> Relevance vector classification </li>
<li> Incremental fitting: boosting and trees </li>
<li> Multi-class logistic regression </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-2-few-shot-learning-and-meta-learning-i/" target="_blank" rel="noreferrer">Few-shot learning and meta-learning I</a>
<MoreInnerP>
<MoreInnerList>
<li> Meta-learning framework </li>
<li> Approaches to meta-learning </li>
<li> Matching networks </li>
<li> Prototypical networks </li>
<li> Relation networks </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-3-few-shot-learning-and-meta-learning-ii/" target="_blank" rel="noreferrer">Few-shot learning and meta-learning II</a>
<MoreInnerP>
<MoreInnerList>
<li> MAML & Reptile </li>
<li> LSTM based meta-learning </li>
<li> Reinforcement learning based approaches</li>
<li> Memory augmented neural networks </li>
<li> SNAIL </li>
<li> Generative models </li>
<li> Data augmentation approaches </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Natural language processing</TopLine>
<MoreOuterList>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-6-neural-natural-language-generation-decoding-algorithms/" target="_blank" rel="noreferrer">Neural natural language generation I</a>
<MoreInnerP>
<MoreInnerList>
<li> Encoder-decoder architecture </li>
<li> Maximum-likelihood training </li>
<li> Greedy search </li>
<li> Beam search </li>
<li> Diverse beam search </li>
<li> Top-k sampling </li>
<li> Nucleus sampling </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-7-neural-natural-language-generation-sequence-level-training/" target="_blank" rel="noreferrer">Neural natural language generation II</a>
<MoreInnerP>
<MoreInnerList>
<li> Fine-tuning with reinforcement learning </li>
<li> Training from scratch with RL </li>
<li> RL vs. structured prediction </li>
<li> Minimum risk training </li>
<li> Scheduled sampling </li>
<li> Beam search optimization </li>
<li> SeaRNN </li>
<li> Reward-augmented maximum likelihood </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-15-parsing-i-context-free-grammars-and-cyk-algorithm/" target="_blank" rel="noreferrer">Parsing I</a>
<MoreInnerP>
<MoreInnerList>
<li> Parse trees </li>
<li> Context-free grammars </li>
<li> Chomsky normal form </li>
<li> CYK recognition algorithm </li>
<li> Worked example </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-18-parsing-ii-wcfgs-inside-algorithm-and-weighted-parsing/" target="_blank" rel="noreferrer">Parsing II</a>
<MoreInnerP>
<MoreInnerList>
<li> Weighted context-free grammars </li>
<li> Semirings </li>
<li> Inside algorithm </li>
<li> Inside weights </li>
<li> Weighted parsing </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-19-parsing-iii-pcfgs-and-inside-outside-algorithm/" target="_blank" rel="noreferrer">Parsing III</a>
<MoreInnerP>
<MoreInnerList>
<li> Probabilistic context-free grammars </li>
<li> Parameter estimation (supervised) </li>
<li> Parameter estimation (unsupervised) </li>
<li> Viterbi training </li>
<li> Expectation maximization </li>
<li> Outside from inside </li>
<li> Interpretation of outside weights </li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/understanding-xlnet/" target="_blank" rel="noreferrer">XLNet</a>
<MoreInnerP>
<MoreInnerList>
<li> Language modeling </li>
<li> XLNet training objective </li>
<li> Permutations </li>
<li> Attention mask </li>
<li> Two stream self-attention </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
<TopLine>Responsible AI</TopLine>
<MoreOuterList>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial1-bias-and-fairness-ai/" target="_blank" rel="noreferrer">Bias and fairness</a>
<MoreInnerP>
<MoreInnerList>
<li> Sources of bias</li>
<li> Demographic Parity </li>
<li> Equality of odds</li>
<li> Equality of opportunity </li>
<li> Individual fairness</li>
<li> Bias mitigation</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/research-blogs/explainability-i-local-post-hoc-explanations/" target="_blank" rel="noreferrer">Explainability I</a>
<MoreInnerP>
<MoreInnerList>
<li> Taxonomy of XAI approaches</li>
<li> Local post-hoc explanations </li>
<li> Individual conditional explanation</li>
<li> Counterfactual explanations</li>
<li> LIME & Anchors</li>
<li> Shapley additive explanations & SHAP</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/research-blogs/explainability-ii-global-explanations-proxy-models-and-interpretable-models/" target="_blank" rel="noreferrer">Explainability II</a>
<MoreInnerP>
<MoreInnerList>
<li> Global feature importance</li>
<li> Partial dependence & ICE plots</li>
<li> Accumulated local effects</li>
<li> Aggregate SHAP values</li>
<li> Prototypes & criticisms</li>
<li> Surrogate / proxy models</li>
<li> Inherently interpretable models</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-12-differential-privacy-i-introduction/" target="_blank" rel="noreferrer">Differential privacy I</a>
<MoreInnerP>
<MoreInnerList>
<li> Early approaches to privacy </li>
<li> Fundamental law of information recovery </li>
<li> Differential privacy</li>
<li> Properties of differential privacy </li>
<li> The Laplace mechanism</li>
<li> Examples</li>
<li> Other mechanisms and definitions</li>
</MoreInnerList>
</MoreInnerP>
</li>
<li>
<a href="https://www.borealisai.com/en/blog/tutorial-13-differential-privacy-ii-machine-learning-and-data-generation/" target="_blank" rel="noreferrer">Differential privacy II</a>
<MoreInnerP>
<MoreInnerList>
<li> Differential privacy and matchine learning</li>
<li> DPSGD</li>
<li> PATE </li>
<li> Differentially private data generation</li>
<li> DPGAN</li>
<li> PateGAN </li>
</MoreInnerList>
</MoreInnerP>
</li>
</MoreOuterList>
</Column2>
</MoreRow2>
</MoreWrapper>
</MoreContainer>
</>
)
}
export default MoreSection

View File

@@ -0,0 +1,933 @@
import {
Column1,
Column2,
Heading,
Img,
ImgWrap,
MoreContainer,
MoreInnerList,
MoreInnerP,
MoreLink,
MoreOuterList,
MoreRow,
MoreRow2,
MoreWrapper,
Subtitle,
TextWrapper,
TopLine,
} from "@/components/More/MoreElements";
import img from "@/images/more.svg";
const book = [
{
text: "Computer vision: models, learning, and inference",
link: "http://computervisionmodels.com",
details: [
"2012 book published with CUP",
"Focused on probabilistic models",
'Pre-"deep learning"',
"Lots of ML content",
"Individual chapters available below",
],
},
];
const transformersAndLLMs = [
{
text: "Intro to LLMs",
link: "https://www.borealisai.com/research-blogs/a-high-level-overview-of-large-language-models/",
details: [
"What is an LLM?",
"Pretraining",
"Instruction fine-tuning",
"Reinforcement learning from human feedback",
"Notable LLMs",
"LLMs without training from scratch",
],
},
{
text: "Transformers I",
link: "https://www.borealisai.com/en/blog/tutorial-14-transformers-i-introduction/",
details: [
"Dot-Product self-attention",
"Scaled dot-product self-attention",
"Position encoding",
"Multiple heads",
"Transformer block",
"Encoders",
"Decoders",
"Encoder-Decoders",
],
},
{
text: "Transformers II",
link: "https://www.borealisai.com/en/blog/tutorial-16-transformers-ii-extensions/",
details: [
"Sinusoidal position embeddings",
"Learned position embeddings",
"Relatives vs. absolute position embeddings",
"Extending transformers to longer sequences",
"Reducing attention matrix size",
"Making attention matrix sparse",
"Kernelizing attention computation",
"Attention as an RNN",
"Attention as a hypernetwork",
"Attention as a routing network",
"Attention and graphs",
"Attention and convolutions",
"Attention and gating",
"Attention and memory retrieval",
],
},
{
text: "Transformers III",
link: "https://www.borealisai.com/en/blog/tutorial-17-transformers-iii-training/",
details: [
"Tricks for training transformers",
"Why are these tricks required?",
"Removing layer normalization",
"Balancing residual dependencies",
"Reducing optimizer variance",
"How to train deeper transformers on small datasets",
],
},
{
text: "Training and fine-tuning LLMs",
link: "https://www.borealisai.com/research-blogs/training-and-fine-tuning-large-language-models/",
details: [
"Large language models",
"Pretraining",
"Supervised fine tuning",
"Reinforcement learning from human feedback",
"Direct preference optimization",
],
},
{
text: "Speeding up inference in LLMs",
link: "https://www.borealisai.com/research-blogs/speeding-up-inference-in-transformers/",
details: [
"Problems with transformers",
"Attention-free transformers",
"Complexity",
"RWKV",
"Linear transformers and performers",
"Retentive network",
],
},
];
const mathForMachineLearning = [
{
text: "Linear algebra",
link: "https://drive.google.com/file/d/1j2v2n6STPnblOCZ1_GBcVAZrsYkjPYwR/view?usp=sharing",
details: [
"Vectors and matrices",
"Determinant and trace",
"Orthogonal matrices",
"Null space",
"Linear transformations",
"Singular value decomposition",
"Least squares problems",
"Principal direction problems",
"Inversion of block matrices",
"Schur complement identity",
"Sherman-Morrison-Woodbury",
"Matrix determinant lemma",
],
},
{
text: "Introduction to probability",
link: "https://drive.google.com/file/d/1cmxXneW122-hcfmMRjEE-n5C9T2YvuQX/view?usp=sharing",
details: [
"Random variables",
"Joint probability",
"Marginal probability",
"Conditional probability",
"Bayes' rule",
"Independence",
"Expectation",
],
},
{
text: "Probability distributions",
link: "https://drive.google.com/file/d/1GI3eZNB1CjTqYHLyuRhCV215rwqANVOx/view?usp=sharing",
details: [
"Bernouilli distribution",
"Beta distribution",
"Categorical distribution",
"Dirichlet distribution",
"Univariate normal distribution",
"Normal inverse-scaled gamma distribution",
"Multivariate normal distribution",
"Normal inverse Wishart distribution",
"Conjugacy",
],
},
{
text: "Fitting probability distributions",
link: "https://drive.google.com/file/d/1DZ4rCmC7AZ8PFc51PiMUIkBO-xqKT_CG/view?usp=sharing",
details: [
"Maximum likelihood",
"Maximum a posteriori",
"Bayesian approach",
"Example: fitting normal",
"Example: fitting categorical",
],
},
{
text: "The normal distribution",
link: "https://drive.google.com/file/d/1CTfmsN-HJWZBRj8lY0ZhgHEbPCmYXWnA/view?usp=sharing",
details: [
"Types of covariance matrix",
"Decomposition of covariance",
"Linear transformations",
"Marginal distributions",
"Conditional distributions",
"Product of two normals",
"Change of variable formula",
],
},
];
const optimization = [
{
text: "Gradient-based optimization",
link: "https://drive.google.com/file/d/1IoOSfJ0ku89aVyM9qygPl4MVnAhMEbAZ/view?usp=sharing",
details: [
"Convexity",
"Steepest descent",
"Newton's method",
"Gauss-Newton method",
"Line search",
"Reparameterization",
],
},
{
text: "Bayesian optimization",
link: "https://www.borealisai.com/en/blog/tutorial-8-bayesian-optimization/",
details: [
"Gaussian processes",
"Acquisition functions",
"Incorporating noise",
"Kernel choice",
"Learning GP parameters",
"Tips, tricks, and limitations",
"Beta-Bernoulli bandit",
"Random forests for BO",
"Tree-Parzen estimators",
],
},
{
text: "SAT Solvers I",
link: "https://www.borealisai.com/en/blog/tutorial-9-sat-solvers-i-introduction-and-applications/",
details: [
"Boolean logic and satisfiability",
"Conjunctive normal form",
"The Tseitin transformation",
"SAT and related problems",
"SAT constructions",
"Graph coloring and scheduling",
"Fitting binary neural networks",
"Fitting decision trees",
],
},
{
text: "SAT Solvers II",
link: "https://www.borealisai.com/en/blog/tutorial-10-sat-solvers-ii-algorithms/",
details: [
"Conditioning",
"Resolution",
"Solving 2-SAT by unit propagation",
"Directional resolution",
"SAT as binary search",
"DPLL",
"Conflict driven clause learning",
],
},
{
text: "SAT Solvers III",
link: "https://www.borealisai.com/en/blog/tutorial-11-sat-solvers-iii-factor-graphs-and-smt-solvers/",
details: [
"Satisfiability vs. problem size",
"Factor graph representation",
"Max product / sum product for SAT",
"Survey propagation",
"SAT with non-binary variables",
"SMT solvers",
],
},
];
const temporalModels = [
{
text: "Temporal models",
link: "https://drive.google.com/file/d/1rrzGNyZDjXQ3_9ZqCGDmRMM3GYtHSBvj/view?usp=sharing",
details: [
"Kalman filter",
"Smoothing",
"Extended Kalman filter",
"Unscented Kalman filter",
"Particle filtering",
],
},
];
const computerVision = [
{
text: "Image Processing",
link: "https://drive.google.com/file/d/1r3V1GC5grhPF2pD91izuE0hTrTUEpQ9I/view?usp=sharing",
details: [
"Whitening",
"Histogram equalization",
"Filtering",
"Edges and corners",
"Dimensionality reduction",
],
},
{
text: "Pinhole camera",
link: "https://drive.google.com/file/d/1dbMBE13MWcd84dEGjYeWsC6eXouoC0xn/view?usp=sharing",
details: [
"Pinhole camera model",
"Radial distortion",
"Homogeneous coordinates",
"Learning extrinsic parameters",
"Learning intrinsic parameters",
"Inferring three-dimensional world points",
],
},
{
text: "Geometric transformations",
link: "https://drive.google.com/file/d/1UArrb1ovqvZHbv90MufkW372r__ZZACQ/view?usp=sharing",
details: [
"Euclidean, similarity, affine, projective transformations",
"Fitting transformation models",
"Inference in transformation models",
"Three geometric problems for planes",
"Transformations between images",
"Robust learning of transformations",
],
},
{
text: "Multiple cameras",
link: "https://drive.google.com/file/d/1RqUoc7kvK8vqZF1NVuw7bIex9v4_QlSx/view?usp=sharing",
details: [
"Two view geometry",
"The essential matrix",
"The fundamental matrix",
"Two-view reconstruction pipeline",
"Rectification",
"Multiview reconstruction",
],
},
];
const reinforcementLearning = [
{
text: "Transformers in RL",
link: "https://arxiv.org/abs/2307.05979",
details: [
"Challenges in RL",
"Advantages of transformers for RL",
"Representation learning",
"Transition function learning",
"Reward learning",
"Policy learning",
"Training strategy",
"Interpretability",
"Applications",
],
},
];
const aiTheory = [
{
text: "Gradient flow",
link: "https://www.borealisai.com/research-blogs/gradient-flow/",
details: [
"Gradient flow",
"Evolution of residual",
"Evolution of parameters",
"Evolution of model predictions",
"Evolution of prediction covariance",
],
},
{
text: "Neural tangent kernel",
link: "https://www.borealisai.com/research-blogs/the-neural-tangent-kernel/",
details: [
"Infinite width neural networks",
"Training dynamics",
"Empirical NTK for shallow network",
"Analytical NTK for shallow network",
"Empirical NTK for deep network",
"Analytical NTK for deep network",
],
},
{
text: "NTK applications",
link: "https://www.borealisai.com/research-blogs/neural-tangent-kernel-applications/",
details: [
"Trainability",
"Convergence bounds",
"Evolution of parameters",
"Evolution of predictions",
"NTK Gaussian processes",
"NTK and generalizability",
],
},
];
const unsupervisedLearning = [
{
text: "Modeling complex data densities",
link: "https://drive.google.com/file/d/1BrPHxAuyz28hhz_FtbO0A1cWYdMs2_h8/view?usp=sharing",
details: [
"Hidden variables",
"Expectation maximization",
"Mixture of Gaussians",
"The t-distribution",
"Factor analysis",
"The EM algorithm in detail",
],
},
{
text: "Variational autoencoders",
link: "https://www.borealisai.com/en/blog/tutorial-5-variational-auto-encoders/",
details: [
"Non-linear latent variable models",
"Evidence lower bound (ELBO)",
"ELBO properties",
"Variational approximation",
"The variational autoencoder",
"Reparameterization trick",
],
},
{
text: "Normalizing flows: introduction and review",
link: "https://arxiv.org/abs/1908.09257",
details: [
"Normalizing flows",
"Elementwise and linear flows",
"Planar and radial flows",
"Coupling and auto-regressive flows",
"Coupling functions",
"Residual flows",
"Infinitesimal (continuous) flows",
"Datasets and performance",
],
},
];
const graphicalModels = [
{
text: "Graphical models",
link: "https://drive.google.com/file/d/1ghgeRmeZMyzNHcuzVwS4vRP6BXi3npVO/view?usp=sharing",
details: [
"Conditional independence",
"Directed graphical models",
"Undirected graphical models",
"Inference in graphical models",
"Sampling in graphical models",
"Learning in graphical models",
],
},
{
text: "Models for chains and trees",
link: "https://drive.google.com/file/d/1WAMc3wtZoPv5wRkdF-D0SShVYF6Net84/view?usp=sharing",
details: [
"Hidden Markov models",
"Viterbi algorithm",
"Forward-backward algorithm",
"Belief propagation",
"Sum product algorithm",
"Extension to trees",
"Graphs with loops",
],
},
{
text: "Models for grids",
link: "https://drive.google.com/file/d/1qqS9OfA1z7t12M45UaBr4CSCj1jwzcwz/view?usp=sharing",
details: [
"Markov random fields",
"MAP inference in binary pairwise MRFs",
"Graph cuts",
"Multi-label pairwise MRFs",
"Alpha-expansion algorithm",
"Conditional random fields",
],
},
];
const machineLearning = [
{
text: "Learning and inference",
link: "https://drive.google.com/file/d/1ArWWi-qbzK2ih6KpOeIF8wX5g3S4J5DY/view?usp=sharing",
details: [
"Discriminative models",
"Generative models",
"Example: regression",
"Example: classification",
],
},
{
text: "Regression models",
link: "https://drive.google.com/file/d/1QZX5jm4xN8rhpvdjRsFP5Ybw1EXSNGaL/view?usp=sharing",
details: [
"Linear regression",
"Bayesian linear regression",
"Non-linear regression",
"Bayesian non-linear regression",
"The kernel trick",
"Gaussian process regression",
"Sparse linear regression",
"Relevance vector regression",
],
},
{
text: "Classification models",
link: "https://drive.google.com/file/d/1-_f4Yfm8iBWcaZ2Gyjw6O0eZiODipmSV/view?usp=sharing",
details: [
"Logistic regression",
"Bayesian logistic regression",
"Non-linear logistic regression",
"Gaussian process classification",
"Relevance vector classification",
"Incremental fitting: boosting and trees",
"Multi-class logistic regression",
],
},
{
text: "Few-shot learning and meta-learning I",
link: "https://www.borealisai.com/en/blog/tutorial-2-few-shot-learning-and-meta-learning-i/",
details: [
"Meta-learning framework",
"Approaches to meta-learning",
"Matching networks",
"Prototypical networks",
"Relation networks",
],
},
{
text: "Few-shot learning and meta-learning II",
link: "https://www.borealisai.com/en/blog/tutorial-3-few-shot-learning-and-meta-learning-ii/",
details: [
"MAML & Reptile",
"LSTM based meta-learning",
"Reinforcement learning based approaches",
"Memory augmented neural networks",
"SNAIL",
"Generative models",
"Data augmentation approaches",
],
},
];
const nlp = [
{
text: "Neural natural language generation I",
link: "https://www.borealisai.com/en/blog/tutorial-6-neural-natural-language-generation-decoding-algorithms/",
details: [
"Encoder-decoder architecture",
"Maximum-likelihood training",
"Greedy search",
"Beam search",
"Diverse beam search",
"Top-k sampling",
"Nucleus sampling",
],
},
{
text: "Neural natural language generation II",
link: "https://www.borealisai.com/en/blog/tutorial-7-neural-natural-language-generation-sequence-level-training/",
details: [
"Fine-tuning with reinforcement learning",
"Training from scratch with RL",
"RL vs. structured prediction",
"Minimum risk training",
"Scheduled sampling",
"Beam search optimization",
"SeaRNN",
"Reward-augmented maximum likelihood",
],
},
{
text: "Parsing I",
link: "https://www.borealisai.com/en/blog/tutorial-15-parsing-i-context-free-grammars-and-cyk-algorithm/",
details: [
"Parse trees",
"Context-free grammars",
"Chomsky normal form",
"CYK recognition algorithm",
"Worked example",
],
},
{
text: "Parsing II",
link: "https://www.borealisai.com/en/blog/tutorial-18-parsing-ii-wcfgs-inside-algorithm-and-weighted-parsing/",
details: [
"Weighted context-free grammars",
"Semirings",
"Inside algorithm",
"Inside weights",
"Weighted parsing",
],
},
{
text: "Parsing III",
link: "https://www.borealisai.com/en/blog/tutorial-19-parsing-iii-pcfgs-and-inside-outside-algorithm/",
details: [
"Probabilistic context-free grammars",
"Parameter estimation (supervised)",
"Parameter estimation (unsupervised)",
"Viterbi training",
"Expectation maximization",
"Outside from inside",
"Interpretation of outside weights",
],
},
{
text: "XLNet",
link: "https://www.borealisai.com/en/blog/understanding-xlnet/",
details: [
"Language modeling",
"XLNet training objective",
"Permutations",
"Attention mask",
"Two stream self-attention",
],
},
];
const responsibleAI = [
{
text: "Bias and fairness",
link: "https://www.borealisai.com/en/blog/tutorial1-bias-and-fairness-ai/",
details: [
"Sources of bias",
"Demographic Parity",
"Equality of odds",
"Equality of opportunity",
"Individual fairness",
"Bias mitigation",
],
},
{
text: "Explainability I",
link: "https://www.borealisai.com/research-blogs/explainability-i-local-post-hoc-explanations/",
details: [
"Taxonomy of XAI approaches",
"Local post-hoc explanations",
"Individual conditional explanation",
"Counterfactual explanations",
"LIME & Anchors",
"Shapley additive explanations & SHAP",
],
},
{
text: "Explainability II",
link: "https://www.borealisai.com/research-blogs/explainability-ii-global-explanations-proxy-models-and-interpretable-models/",
details: [
"Global feature importance",
"Partial dependence & ICE plots",
"Accumulated local effects",
"Aggregate SHAP values",
"Prototypes & criticisms",
"Surrogate / proxy models",
"Inherently interpretable models",
],
},
{
text: "Differential privacy I",
link: "https://www.borealisai.com/en/blog/tutorial-12-differential-privacy-i-introduction/",
details: [
"Early approaches to privacy",
"Fundamental law of information recovery",
"Differential privacy",
"Properties of differential privacy",
"The Laplace mechanism",
"Examples",
"Other mechanisms and definitions",
],
},
{
text: "Differential privacy II",
link: "https://www.borealisai.com/en/blog/tutorial-13-differential-privacy-ii-machine-learning-and-data-generation/",
details: [
"Differential privacy and matchine learning",
"DPSGD",
"PATE",
"Differentially private data generation",
"DPGAN",
"PateGAN",
],
},
];
export default function MoreSection() {
return (
<>
<MoreContainer lightBg={true} id="More">
<MoreWrapper>
<MoreRow imgStart={false}>
<Column1>
<TextWrapper>
<TopLine>More</TopLine>
<Heading lightText={false}>Further reading</Heading>
<Subtitle darkText={true}>
Other articles, blogs, and books that I have written. Most in a
similar style and using the same notation as Understanding Deep
Learning.
</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt="More" />
</ImgWrap>
</Column2>
</MoreRow>
<MoreRow2>
<Column1>
<TopLine>Book</TopLine>
<MoreOuterList>
{book.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Transformers & LLMs</TopLine>
<MoreOuterList>
{transformersAndLLMs.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Math for machine learning</TopLine>
<MoreOuterList>
{mathForMachineLearning.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Optimization</TopLine>
<MoreOuterList>
{optimization.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Temporal models</TopLine>
<MoreOuterList>
{temporalModels.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Computer vision</TopLine>
<MoreOuterList>
{computerVision.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Reinforcement learning</TopLine>
<MoreOuterList>
{reinforcementLearning.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
</Column1>
<Column2>
<TopLine>AI Theory</TopLine>
<MoreOuterList>
{aiTheory.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Unsupervised learning</TopLine>
<MoreOuterList>
{unsupervisedLearning.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Graphical Models</TopLine>
<MoreOuterList>
{graphicalModels.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Machine learning</TopLine>
<MoreOuterList>
{machineLearning.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Natural language processing</TopLine>
<MoreOuterList>
{nlp.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
<TopLine>Responsible AI</TopLine>
<MoreOuterList>
{responsibleAI.map((item, index) => (
<li key={index}>
<MoreLink href={item.link} target="_blank" rel="noreferrer">
{item.text}
</MoreLink>
<MoreInnerP>
<MoreInnerList>
{item.details.map((detail, index) => (
<li key={index}>{detail}</li>
))}
</MoreInnerList>
</MoreInnerP>
</li>
))}
</MoreOuterList>
</Column2>
</MoreRow2>
</MoreWrapper>
</MoreContainer>
</>
);
}

View File

@@ -1,115 +0,0 @@
import { Link as LinkS } from 'react-scroll';
import { Link as LinkR } from 'react-router-dom';
import styled from 'styled-components';
export const Nav = styled.nav`
background: ${({ scrollNav }) => (scrollNav ? '#000' : 'transparent')};
height: 100px;
margin-top: -100px;
display: flex;
justify-content: center;
align-items: center;
font-size: 1rem;
position: sticky;
top: 0;
z-index: 10;
@media screen and (max-width: 960px) {
transition: 0.8s all ease;
}
`;
export const NavbarContainer = styled.div`
display: flex;
justify-content: space-between;
height: 100px;
z-index: 1;
width: 100%;
padding: 0 24px;
max-width: 1100px;
`;
export const NavLogo = styled(LinkR)`
color: #fff;
justify-self: flex-start;
cursor: pointer;
font-size: 1.5rem;
display: flex;
align-items: center;
margin-left: 24px;
font-weight: bold;
text-decoration: none;
`;
export const MobileIcon = styled.div`
display: none;
@media screen and (max-width: 768px) {
display: block;
position: absolute;
top: 0;
right: 0;
transform: translate(-100%, 60%);
font-size: 1.8rem;
cursor: pointer;
}
`;
export const NavMenu = styled.ul`
display: flex;
align-items: center;
list-style: none;
text-align: center;
margin-right: -22px;
@media screen and (max-width: 768px) {
display: none;
}
`;
export const NavItem = styled.li`
height: 80px;
`;
export const NavBtn = styled.nav`
display: flex;
align-items: center;
@media screen and (max-width: 768px) {
display: none;
}
`;
export const NavLinks = styled(LinkS)`
color: #fff;
display: flex;
align-items: center;
text-decoration: none;
padding: 0 1rem;
height: 100%;
cursor: pointer;
&.active {
border-bottom: 3px solid #57c6d1
}
`;
export const NavBtnLink = styled(LinkR)`
border-radius: 50px;
background: #01bf71;
white-space: nowrap;
padding: 10px 22px;
color: #010606;
font-size: 16px;
outline: none;
border: none;
cursor: pointer;
transition: all 0.2s ease-in-out;
text-decoration: none;
&:hover {
transition: all 0.2s ease-in-out;
background: #fff;
color: #010606;
}
`;

View File

@@ -1,59 +0,0 @@
import React, {useState, useEffect} from 'react'
import {FaBars} from 'react-icons/fa'
import {IconContext} from 'react-icons/lib'
import {Nav, NavbarContainer, NavLogo, MobileIcon, NavMenu, NavItem, NavLinks} from './NavbarElements'
import { animateScroll as scroll } from 'react-scroll'
const Navbar = ( {toggle} ) => {
const [scrollNav, setScrollNav] = useState(false)
const changeNav = () =>{
if (window.scrollY >= 80){
setScrollNav(true)
}else{
setScrollNav(false)
}
}
useEffect(() =>{
window.addEventListener('scroll', changeNav)
}, [])
const toggleHome = () => {
scroll.scrollToTop();
}
return (
<>
<IconContext.Provider value={{color: '#fff'}}>
<Nav scrollNav={scrollNav}>
<NavbarContainer>
<NavLogo to="/" onClick={toggleHome}>
<h1> Understanding Deep Learning </h1>
</NavLogo>
<MobileIcon onClick={toggle}>
<FaBars />
</MobileIcon>
<NavMenu>
<NavItem>
<NavLinks to="Notebooks" smooth={true} duration={500} spy={true} exact='true' offset={-80} activeClass='active'>Notebooks</NavLinks>
</NavItem>
<NavItem>
<NavLinks to="Instructors" smooth={true} duration={500} spy={true} exact='true' offset={-80} activeClass='active'>Instructors</NavLinks>
</NavItem>
<NavItem>
<NavLinks to="Media" smooth={true} duration={500} spy={true} exact='true' offset={-80} activeClass='active'>Media</NavLinks>
</NavItem>
<NavItem>
<NavLinks to="More" smooth={true} duration={500} spy={true} exact='true' offset={-80} activeClass='active'>More</NavLinks>
</NavItem>
</NavMenu>
</NavbarContainer>
</Nav>
</IconContext.Provider>
</>
);
}
export default Navbar

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@@ -0,0 +1,119 @@
import { Link as LinkR } from "react-router-dom";
import { Link as LinkS } from "react-scroll";
import styled from "styled-components";
export const Nav = styled.nav`
background: ${({ scrollNav }) => (scrollNav ? "#000" : "transparent")};
height: 100px;
margin-top: -100px;
display: flex;
justify-content: center;
align-items: center;
font-size: 1rem;
position: sticky;
top: 0;
z-index: 10;
@media screen and (max-width: 960px) {
transition: 0.8s all ease;
}
`;
export const NavbarContainer = styled.div`
display: flex;
justify-content: space-between;
height: 100px;
z-index: 1;
width: 100%;
padding: 0 24px;
max-width: 1100px;
`;
export const NavLogo = styled(LinkR)`
color: #fff;
justify-self: flex-start;
cursor: pointer;
font-size: 1.5rem;
display: flex;
align-items: center;
margin-left: 24px;
font-weight: bold;
text-decoration: none;
@media screen and (max-width: 768px) {
font-size: 1rem;
}
`;
export const MobileIcon = styled.div`
display: none;
@media screen and (max-width: 768px) {
display: block;
position: absolute;
top: 0;
right: 0;
transform: translate(-100%, 60%);
font-size: 1.8rem;
cursor: pointer;
}
`;
export const NavMenu = styled.ul`
display: flex;
align-items: center;
list-style: none;
text-align: center;
margin-right: -22px;
@media screen and (max-width: 768px) {
display: none;
}
`;
export const NavItem = styled.li`
height: 80px;
`;
export const NavBtn = styled.nav`
display: flex;
align-items: center;
@media screen and (max-width: 768px) {
display: none;
}
`;
export const NavLinks = styled(LinkS)`
color: #fff;
display: flex;
align-items: center;
text-decoration: none;
padding: 0 1rem;
height: 100%;
cursor: pointer;
&.active {
border-bottom: 3px solid #57c6d1;
}
`;
export const NavBtnLink = styled(LinkR)`
border-radius: 50px;
background: #01bf71;
white-space: nowrap;
padding: 10px 22px;
color: #010606;
font-size: 16px;
outline: none;
border: none;
cursor: pointer;
transition: all 0.2s ease-in-out;
text-decoration: none;
&:hover {
transition: all 0.2s ease-in-out;
background: #fff;
color: #010606;
}
`;

104
src/components/Navbar/index.jsx Executable file
View File

@@ -0,0 +1,104 @@
import {
MobileIcon,
Nav,
NavbarContainer,
NavItem,
NavLinks,
NavLogo,
NavMenu,
} from "@/components/Navbar/NavbarElements";
import { useEffect, useState } from "react";
import { FaBars } from "react-icons/fa";
import { IconContext } from "react-icons/lib";
import { animateScroll as scroll } from "react-scroll";
export default function Navbar({ toggle }) {
const [scrollNav, setScrollNav] = useState(false);
useEffect(() => {
const changeNav = () => {
setScrollNav(window.scrollY >= 80);
};
window.addEventListener("scroll", changeNav);
return () => {
window.removeEventListener("scroll", changeNav);
};
}, []);
const scrollToHome = () => {
scroll.scrollToTop();
};
return (
<>
<IconContext.Provider value={{ color: "#fff" }}>
<Nav scrollNav={scrollNav}>
<NavbarContainer>
<NavLogo to="/udlbook/" onClick={scrollToHome}>
<h1> Understanding Deep Learning </h1>
</NavLogo>
<MobileIcon onClick={toggle}>
<FaBars />
</MobileIcon>
<NavMenu>
<NavItem>
<NavLinks
to="Notebooks"
smooth={true}
duration={500}
spy={true}
exact="true"
offset={-80}
activeClass="active"
>
Notebooks
</NavLinks>
</NavItem>
<NavItem>
<NavLinks
to="Instructors"
smooth={true}
duration={500}
spy={true}
exact="true"
offset={-80}
activeClass="active"
>
Instructors
</NavLinks>
</NavItem>
<NavItem>
<NavLinks
to="Media"
smooth={true}
duration={500}
spy={true}
exact="true"
offset={-80}
activeClass="active"
>
Media
</NavLinks>
</NavItem>
<NavItem>
<NavLinks
to="More"
smooth={true}
duration={500}
spy={true}
exact="true"
offset={-80}
activeClass="active"
>
More
</NavLinks>
</NavItem>
</NavMenu>
</NavbarContainer>
</Nav>
</IconContext.Provider>
</>
);
}

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@@ -1,105 +0,0 @@
import styled from "styled-components";
export const NotebookContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({lightBg}) => (lightBg ? '#f9f9f9': '#010606')};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`
export const NotebookWrapper = styled.div`
display: grid ;
z-index: 1;
// height: 1250px ;
width: 100% ;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`
export const NotebookRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({imgStart}) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px){
grid-template-areas: ${({imgStart}) => (imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`)};
}
`
export const Column1 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
`
export const Column2 = styled.div`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
`
export const TextWrapper = styled.div`
max-width: 540px ;
padding-top: 0;
padding-bottom: 0;
`
export const TopLine = styled.p`
color: #57c6d1;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`
export const Heading= styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({lightText}) => (lightText ? '#f7f8fa' : '#010606')};
@media screen and (max-width: 480px)
{
font-size: 32px;
}
`
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({darkText})=> (darkText ? '#010606' : '#fff')};
`
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;

View File

@@ -0,0 +1,147 @@
import styled from "styled-components";
export const NotebookContainer = styled.div`
color: #fff;
/* background: #f9f9f9; */
background: ${({ lightBg }) => (lightBg ? "#f9f9f9" : "#010606")};
@media screen and (max-width: 768px) {
padding: 100px 0;
}
`;
export const NotebookWrapper = styled.div`
display: grid;
z-index: 1;
/* height: 1250px; */
width: 100%;
max-width: 1100px;
margin-right: auto;
margin-left: auto;
padding: 0 24px;
justify-content: center;
`;
export const NotebookRow = styled.div`
display: grid;
grid-auto-columns: minmax(auto, 1fr);
align-items: center;
grid-template-areas: ${({ imgStart }) => (imgStart ? `'col2 col1'` : `'col1 col2'`)};
@media screen and (max-width: 768px) {
grid-template-areas: ${({ imgStart }) =>
imgStart ? `'col1' 'col2'` : `'col1 col1' 'col2 col2'`};
}
`;
export const Column1 = styled.p`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col1;
@media screen and (max-width: 1050px) {
font-size: 12px;
}
@media screen and (max-width: 768px) {
font-size: 10px;
}
`;
export const Column2 = styled.p`
margin-bottom: 15px;
padding: 0 15px;
grid-area: col2;
@media screen and (max-width: 1050px) {
font-size: 12px;
}
@media screen and (max-width: 768px) {
font-size: 10px;
}
`;
export const TextWrapper = styled.div`
max-width: 540px;
padding-top: 0;
padding-bottom: 0;
`;
export const TopLine = styled.p`
color: #57c6d1;
font-size: 16px;
line-height: 16px;
font-weight: 700;
letter-spacing: 1.4px;
text-transform: uppercase;
margin-bottom: 16px;
`;
export const Heading = styled.h1`
margin-bottom: 24px;
font-size: 48px;
line-height: 1.1;
font-weight: 600;
color: ${({ lightText }) => (lightText ? "#f7f8fa" : "#010606")};
@media screen and (max-width: 480px) {
font-size: 32px;
}
`;
export const Subtitle = styled.p`
max-width: 440px;
margin-bottom: 35px;
font-size: 18px;
line-height: 24px;
color: ${({ darkText }) => (darkText ? "#010606" : "#fff")};
`;
export const BtnWrap = styled.div`
display: flex;
justify-content: flex-start;
`;
export const ImgWrap = styled.div`
max-width: 555px;
height: 100%;
`;
export const Img = styled.img`
width: 100%;
margin-top: 0;
margin-right: 0;
margin-left: 10px;
padding-right: 0;
`;
export const NBLink = styled.a`
text-decoration: none;
color: #57c6d1;
font-weight: 300;
margin: 0 2px;
position: relative;
&:before {
position: absolute;
margin: 0 auto;
top: 100%;
left: 0;
width: 100%;
height: 2px;
background-color: #57c6d1;
content: "";
opacity: 0.3;
-webkit-transform: scaleX(1);
transition-property:
opacity,
-webkit-transform;
transition-duration: 0.3s;
}
&:hover:before {
opacity: 1;
-webkit-transform: scaleX(1.05);
}
`;

View File

@@ -1,220 +0,0 @@
import React from 'react'
import { ImgWrap, Img, NotebookContainer, NotebookWrapper, NotebookRow, Column1, Column2, TextWrapper, TopLine, Heading, Subtitle} from './NotebookElements'
// export const homeObjOne = {
// id: 'about',
// lightBg: false,
// lightText: true,
// lightTextDesc: true,
// topLine: 'Premium Bank',
// headline: 'Unlimited transactions with zero fees',
// description:
// 'Get access to our exclusive app that allows you to send unlimited transactions without getting charged any fees',
// buttonLabel: 'Get Started',
// imgStart: false,
// img: require('../../images/svg-1.svg').default,
// alt: 'Car',
// dark: true,
// primary: true,
// darkText: false
// };
import img from '../../images/coding.svg'
const NotebookSection = () => {
return (
<>
<NotebookContainer lightBg={false} id='Notebooks'>
<NotebookWrapper>
<NotebookRow imgStart={true}>
<Column1>
<TextWrapper>
<TopLine>Coding exercises</TopLine>
<Heading lightText={true}>Python notebooks covering the whole text</Heading>
<Subtitle darkText={false}>Sixty eight python notebook exercises with missing code to fill in based on the text</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt='Car'/>
</ImgWrap>
</Column2>
</NotebookRow>
<NotebookRow>
<Column1>
<ul>
<li> Notebook 1.1 - Background mathematics: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap01/1_1_BackgroundMathematics.ipynb">ipynb/colab</a>
</li>
<li> Notebook 2.1 - Supervised learning: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap02/2_1_Supervised_Learning.ipynb">ipynb/colab</a>
</li>
<li> Notebook 3.1 - Shallow networks I: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_1_Shallow_Networks_I.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.2 - Shallow networks II: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_2_Shallow_Networks_II.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.3 - Shallow network regions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_3_Shallow_Network_Regions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 3.4 - Activation functions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_4_Activation_Functions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.1 - Composing networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_1_Composing_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.2 - Clipping functions: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_2_Clipping_functions.ipynb">ipynb/colab </a>
</li>
<li> Notebook 4.3 - Deep networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_3_Deep_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.1 - Least squares loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_1_Least_Squares_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.2 - Binary cross-entropy loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_2_Binary_Cross_Entropy_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 5.3 - Multiclass cross-entropy loss: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_3_Multiclass_Cross_entropy_Loss.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.1 - Line search: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_1_Line_Search.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.2 - Gradient descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_2_Gradient_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.3 - Stochastic gradient descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_3_Stochastic_Gradient_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.4 - Momentum: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_4_Momentum.ipynb">ipynb/colab </a>
</li>
<li> Notebook 6.5 - Adam: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_5_Adam.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.1 - Backpropagation in toy model: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_1_Backpropagation_in_Toy_Model.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.2 - Backpropagation: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_2_Backpropagation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 7.3 - Initialization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_3_Initialization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.1 - MNIST-1D performance: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_1_MNIST_1D_Performance.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.2 - Bias-variance trade-off: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_2_Bias_Variance_Trade_Off.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.3 - Double descent: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_3_Double_Descent.ipynb">ipynb/colab </a>
</li>
<li> Notebook 8.4 - High-dimensional spaces: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_4_High_Dimensional_Spaces.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.1 - L2 regularization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_1_L2_Regularization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.2 - Implicit regularization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_2_Implicit_Regularization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.3 - Ensembling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_3_Ensembling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.4 - Bayesian approach: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_4_Bayesian_Approach.ipynb">ipynb/colab </a>
</li>
<li> Notebook 9.5 - Augmentation <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_5_Augmentation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.1 - 1D convolution: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_1_1D_Convolution.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.2 - Convolution for MNIST-1D: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_2_Convolution_for_MNIST_1D.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.3 - 2D convolution: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_3_2D_Convolution.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.4 - Downsampling & upsampling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_4_Downsampling_and_Upsampling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 10.5 - Convolution for MNIST: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_5_Convolution_For_MNIST.ipynb">ipynb/colab </a>
</li>
</ul>
</Column1>
<Column2>
<ul>
<li> Notebook 11.1 - Shattered gradients: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_1_Shattered_Gradients.ipynb">ipynb/colab </a>
</li>
<li> Notebook 11.2 - Residual networks: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_2_Residual_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 11.3 - Batch normalization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_3_Batch_Normalization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.1 - Self-attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_1_Self_Attention.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.2 - Multi-head self-attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_2_Multihead_Self_Attention.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.3 - Tokenization: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_3_Tokenization.ipynb">ipynb/colab </a>
</li>
<li> Notebook 12.4 - Decoding strategies: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_4_Decoding_Strategies.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.1 - Encoding graphs: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_1_Graph_Representation.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.2 - Graph classification : <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_2_Graph_Classification.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.3 - Neighborhood sampling: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_3_Neighborhood_Sampling.ipynb">ipynb/colab </a>
</li>
<li> Notebook 13.4 - Graph attention: <a
href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_4_Graph_Attention_Networks.ipynb">ipynb/colab </a>
</li>
<li> Notebook 15.1 - GAN toy example: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_1_GAN_Toy_Example.ipynb">ipynb/colab </a></li>
<li> Notebook 15.2 - Wasserstein distance: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_2_Wasserstein_Distance.ipynb">ipynb/colab </a></li>
<li> Notebook 16.1 - 1D normalizing flows: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_1_1D_Normalizing_Flows.ipynb">ipynb/colab </a></li>
<li> Notebook 16.2 - Autoregressive flows: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_2_Autoregressive_Flows.ipynb">ipynb/colab </a></li>
<li> Notebook 16.3 - Contraction mappings: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_3_Contraction_Mappings.ipynb">ipynb/colab </a></li>
<li> Notebook 17.1 - Latent variable models: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_1_Latent_Variable_Models.ipynb">ipynb/colab </a></li>
<li> Notebook 17.2 - Reparameterization trick: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_2_Reparameterization_Trick.ipynb">ipynb/colab </a></li>
<li> Notebook 17.3 - Importance sampling: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_3_Importance_Sampling.ipynb">ipynb/colab </a></li>
<li> Notebook 18.1 - Diffusion encoder: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_1_Diffusion_Encoder.ipynb">ipynb/colab </a></li>
<li> Notebook 18.2 - 1D diffusion model: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_2_1D_Diffusion_Model.ipynb">ipynb/colab </a></li>
<li> Notebook 18.3 - Reparameterized model: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_3_Reparameterized_Model.ipynb">ipynb/colab </a></li>
<li> Notebook 18.4 - Families of diffusion models: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_4_Families_of_Diffusion_Models.ipynb">ipynb/colab </a></li>
<li> Notebook 19.1 - Markov decision processes: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_1_Markov_Decision_Processes.ipynb">ipynb/colab </a></li>
<li> Notebook 19.2 - Dynamic programming: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_2_Dynamic_Programming.ipynb">ipynb/colab </a></li>
<li> Notebook 19.3 - Monte-Carlo methods: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_3_Monte_Carlo_Methods.ipynb">ipynb/colab </a></li>
<li> Notebook 19.4 - Temporal difference methods: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_4_Temporal_Difference_Methods.ipynb">ipynb/colab </a></li>
<li> Notebook 19.5 - Control variates: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_5_Control_Variates.ipynb">ipynb/colab </a></li>
<li> Notebook 20.1 - Random data: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_1_Random_Data.ipynb">ipynb/colab </a></li>
<li> Notebook 20.2 - Full-batch gradient descent: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_2_Full_Batch_Gradient_Descent.ipynb">ipynb/colab </a></li>
<li> Notebook 20.3 - Lottery tickets: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_3_Lottery_Tickets.ipynb">ipynb/colab </a></li>
<li> Notebook 20.4 - Adversarial attacks: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_4_Adversarial_Attacks.ipynb">ipynb/colab </a></li>
<li> Notebook 21.1 - Bias mitigation: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_1_Bias_Mitigation.ipynb">ipynb/colab </a></li>
<li> Notebook 21.2 - Explainability: <a href="https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_2_Explainability.ipynb">ipynb/colab </a></li>
</ul>
</Column2>
</NotebookRow>
</NotebookWrapper>
</NotebookContainer>
</>
)
}
export default NotebookSection

View File

@@ -0,0 +1,344 @@
import {
Column1,
Column2,
Heading,
Img,
ImgWrap,
NBLink,
NotebookContainer,
NotebookRow,
NotebookWrapper,
Subtitle,
TextWrapper,
TopLine,
} from "@/components/Notebooks/NotebookElements";
import img from "@/images/coding.svg";
const notebooks = [
{
text: "Notebook 1.1 - Background mathematics",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap01/1_1_BackgroundMathematics.ipynb",
},
{
text: "Notebook 2.1 - Supervised learning",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap02/2_1_Supervised_Learning.ipynb",
},
{
text: "Notebook 3.1 - Shallow networks I",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_1_Shallow_Networks_I.ipynb",
},
{
text: "Notebook 3.2 - Shallow networks II",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_2_Shallow_Networks_II.ipynb",
},
{
text: "Notebook 3.3 - Shallow network regions",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_3_Shallow_Network_Regions.ipynb",
},
{
text: "Notebook 3.4 - Activation functions",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap03/3_4_Activation_Functions.ipynb",
},
{
text: "Notebook 4.1 - Composing networks",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_1_Composing_Networks.ipynb",
},
{
text: "Notebook 4.2 - Clipping functions",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_2_Clipping_functions.ipynb",
},
{
text: "Notebook 4.3 - Deep networks",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap04/4_3_Deep_Networks.ipynb",
},
{
text: "Notebook 5.1 - Least squares loss",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_1_Least_Squares_Loss.ipynb",
},
{
text: "Notebook 5.2 - Binary cross-entropy loss",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_2_Binary_Cross_Entropy_Loss.ipynb",
},
{
text: "Notebook 5.3 - Multiclass cross-entropy loss",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap05/5_3_Multiclass_Cross_entropy_Loss.ipynb",
},
{
text: "Notebook 6.1 - Line search",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_1_Line_Search.ipynb",
},
{
text: "Notebook 6.2 - Gradient descent",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_2_Gradient_Descent.ipynb",
},
{
text: "Notebook 6.3 - Stochastic gradient descent",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_3_Stochastic_Gradient_Descent.ipynb",
},
{
text: "Notebook 6.4 - Momentum",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_4_Momentum.ipynb",
},
{
text: "Notebook 6.5 - Adam",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap06/6_5_Adam.ipynb",
},
{
text: "Notebook 7.1 - Backpropagation in toy model",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_1_Backpropagation_in_Toy_Model.ipynb",
},
{
text: "Notebook 7.2 - Backpropagation",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_2_Backpropagation.ipynb",
},
{
text: "Notebook 7.3 - Initialization",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap07/7_3_Initialization.ipynb",
},
{
text: "Notebook 8.1 - MNIST-1D performance",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_1_MNIST_1D_Performance.ipynb",
},
{
text: "Notebook 8.2 - Bias-variance trade-off",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_2_Bias_Variance_Trade_Off.ipynb",
},
{
text: "Notebook 8.3 - Double descent",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_3_Double_Descent.ipynb",
},
{
text: "Notebook 8.4 - High-dimensional spaces",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap08/8_4_High_Dimensional_Spaces.ipynb",
},
{
text: "Notebook 9.1 - L2 regularization",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_1_L2_Regularization.ipynb",
},
{
text: "Notebook 9.2 - Implicit regularization",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_2_Implicit_Regularization.ipynb",
},
{
text: "Notebook 9.3 - Ensembling",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_3_Ensembling.ipynb",
},
{
text: "Notebook 9.4 - Bayesian approach",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_4_Bayesian_Approach.ipynb",
},
{
text: "Notebook 9.5 - Augmentation",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap09/9_5_Augmentation.ipynb",
},
{
text: "Notebook 10.1 - 1D convolution",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_1_1D_Convolution.ipynb",
},
{
text: "Notebook 10.2 - Convolution for MNIST-1D",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_2_Convolution_for_MNIST_1D.ipynb",
},
{
text: "Notebook 10.3 - 2D convolution",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_3_2D_Convolution.ipynb",
},
{
text: "Notebook 10.4 - Downsampling & upsampling",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_4_Downsampling_and_Upsampling.ipynb",
},
{
text: "Notebook 10.5 - Convolution for MNIST",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap10/10_5_Convolution_For_MNIST.ipynb",
},
{
text: "Notebook 11.1 - Shattered gradients",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_1_Shattered_Gradients.ipynb",
},
{
text: "Notebook 11.2 - Residual networks",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_2_Residual_Networks.ipynb",
},
{
text: "Notebook 11.3 - Batch normalization",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap11/11_3_Batch_Normalization.ipynb",
},
{
text: "Notebook 12.1 - Self-attention",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_1_Self_Attention.ipynb",
},
{
text: "Notebook 12.2 - Multi-head self-attention",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_2_Multihead_Self_Attention.ipynb",
},
{
text: "Notebook 12.3 - Tokenization",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_3_Tokenization.ipynb",
},
{
text: "Notebook 12.4 - Decoding strategies",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap12/12_4_Decoding_Strategies.ipynb",
},
{
text: "Notebook 13.1 - Encoding graphs",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_1_Graph_Representation.ipynb",
},
{
text: "Notebook 13.2 - Graph classification",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_2_Graph_Classification.ipynb",
},
{
text: "Notebook 13.3 - Neighborhood sampling",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_3_Neighborhood_Sampling.ipynb",
},
{
text: "Notebook 13.4 - Graph attention",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap13/13_4_Graph_Attention_Networks.ipynb",
},
{
text: "Notebook 15.1 - GAN toy example",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_1_GAN_Toy_Example.ipynb",
},
{
text: "Notebook 15.2 - Wasserstein distance",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap15/15_2_Wasserstein_Distance.ipynb",
},
{
text: "Notebook 16.1 - 1D normalizing flows",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_1_1D_Normalizing_Flows.ipynb",
},
{
text: "Notebook 16.2 - Autoregressive flows",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_2_Autoregressive_Flows.ipynb",
},
{
text: "Notebook 16.3 - Contraction mappings",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap16/16_3_Contraction_Mappings.ipynb",
},
{
text: "Notebook 17.1 - Latent variable models",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_1_Latent_Variable_Models.ipynb",
},
{
text: "Notebook 17.2 - Reparameterization trick",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_2_Reparameterization_Trick.ipynb",
},
{
text: "Notebook 17.3 - Importance sampling",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap17/17_3_Importance_Sampling.ipynb",
},
{
text: "Notebook 18.1 - Diffusion encoder",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_1_Diffusion_Encoder.ipynb",
},
{
text: "Notebook 18.2 - 1D diffusion model",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_2_1D_Diffusion_Model.ipynb",
},
{
text: "Notebook 18.3 - Reparameterized model",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_3_Reparameterized_Model.ipynb",
},
{
text: "Notebook 18.4 - Families of diffusion models",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap18/18_4_Families_of_Diffusion_Models.ipynb",
},
{
text: "Notebook 19.1 - Markov decision processes",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_1_Markov_Decision_Processes.ipynb",
},
{
text: "Notebook 19.2 - Dynamic programming",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_2_Dynamic_Programming.ipynb",
},
{
text: "Notebook 19.3 - Monte-Carlo methods",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_3_Monte_Carlo_Methods.ipynb",
},
{
text: "Notebook 19.4 - Temporal difference methods",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_4_Temporal_Difference_Methods.ipynb",
},
{
text: "Notebook 19.5 - Control variates",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap19/19_5_Control_Variates.ipynb",
},
{
text: "Notebook 20.1 - Random data",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_1_Random_Data.ipynb",
},
{
text: "Notebook 20.2 - Full-batch gradient descent",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_2_Full_Batch_Gradient_Descent.ipynb",
},
{
text: "Notebook 20.3 - Lottery tickets",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_3_Lottery_Tickets.ipynb",
},
{
text: "Notebook 20.4 - Adversarial attacks",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap20/20_4_Adversarial_Attacks.ipynb",
},
{
text: "Notebook 21.1 - Bias mitigation",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_1_Bias_Mitigation.ipynb",
},
{
text: "Notebook 21.2 - Explainability",
link: "https://github.com/udlbook/udlbook/blob/main/Notebooks/Chap21/21_2_Explainability.ipynb",
},
];
export default function NotebookSection() {
return (
<>
<NotebookContainer lightBg={false} id="Notebooks">
<NotebookWrapper>
<NotebookRow imgStart={true}>
<Column1>
<TextWrapper>
<TopLine>Coding exercises</TopLine>
<Heading lightText={true}>
Python notebooks covering the whole text
</Heading>
<Subtitle darkText={false}>
Sixty eight python notebook exercises with missing code to fill
in based on the text
</Subtitle>
</TextWrapper>
</Column1>
<Column2>
<ImgWrap>
<Img src={img} alt="Coding" />
</ImgWrap>
</Column2>
</NotebookRow>
<NotebookRow>
<Column1>
<ul>
{/* render first half of notebooks*/}
{notebooks.slice(0, notebooks.length / 2).map((notebook, index) => (
<li key={index}>
{notebook.text}:{" "}
<NBLink href={notebook.link}>ipynb/colab</NBLink>
</li>
))}
</ul>
</Column1>
<Column2>
<ul>
{/* render second half of notebooks*/}
{notebooks.slice(notebooks.length / 2).map((notebook, index) => (
<li key={index}>
{notebook.text}:{" "}
<NBLink href={notebook.link}>ipynb/colab</NBLink>
</li>
))}
</ul>
</Column2>
</NotebookRow>
</NotebookWrapper>
</NotebookContainer>
</>
);
}

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@@ -1,11 +0,0 @@
import {useEffect} from 'react'
import { useLocation } from 'react-router-dom'
export default function ScrollToTop() {
const {pathname} = useLocation()
useEffect(() => {
window.scrollTo(0,0)
}, [pathname])
return null;
}

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@@ -1,12 +1,10 @@
import styled from 'styled-components'
import {Link as LinkS} from 'react-scroll'
import {Link as LinkR} from 'react-router-dom'
import {FaTimes} from 'react-icons/fa'
import { FaTimes } from "react-icons/fa";
import { Link as LinkR } from "react-router-dom";
import { Link as LinkS } from "react-scroll";
import styled from "styled-components";
export const SidebarContainer = styled.aside`
position:fixed ;
position: fixed;
z-index: 999;
width: 100%;
height: 100%;
@@ -16,18 +14,18 @@ export const SidebarContainer = styled.aside`
top: 0;
left: 0;
transition: 0.3s ease-in-out;
opacity: ${({ isOpen }) => (isOpen ? '100%' : '0')};
top: ${({ isOpen }) => (isOpen ? '0' : '-100%')};
`
opacity: ${({ isOpen }) => (isOpen ? "100%" : "0")};
top: ${({ isOpen }) => (isOpen ? "0" : "-100%")};
`;
export const CloseIcon = styled(FaTimes)`
color: #fff ;
color: #fff;
&:hover {
color: #01bf71;
transition: 0.2s ease-in-out;
}
`
`;
export const Icon = styled.div`
position: absolute;
@@ -37,25 +35,25 @@ export const Icon = styled.div`
font-size: 2rem;
cursor: pointer;
outline: none;
`
`;
export const SidebarWrapper = styled.div`
color: #ffffff;
`
`;
export const SidebarMenu = styled.ul`
display: grid;
grid-template-columns: 1fr;
grid-template-rows: repeat(6,80px);
grid-template-rows: repeat(6, 80px);
text-align: center;
@media screen and (max-width: 480px){
grid-template-rows: repeat(6, 60px) ;
@media screen and (max-width: 480px) {
grid-template-rows: repeat(6, 60px);
}
`
`;
export const SidebarLink = styled(LinkS)`
display: flex ;
display: flex;
align-items: center;
justify-content: center;
font-size: 1.5rem;
@@ -70,12 +68,12 @@ export const SidebarLink = styled(LinkS)`
color: #01bf71;
transition: 0.2s ease-in-out;
}
`
`;
export const SideBtnWrap = styled.div`
display: flex;
justify-content: center;
`
`;
export const SidebarRoute = styled(LinkR)`
border-radius: 50px;
@@ -95,4 +93,4 @@ export const SidebarRoute = styled(LinkR)`
background: #fff;
color: #010606;
}
`
`;

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@@ -1,33 +0,0 @@
import React from 'react'
import { SidebarContainer, Icon, CloseIcon, SidebarWrapper, SidebarMenu, SidebarLink} from './SidebarElements'
const Sidebar = ({isOpen, toggle}) => {
return (
<>
<SidebarContainer isOpen={isOpen} onClick={toggle}>
<Icon onClick={toggle}>
<CloseIcon />
</Icon>
<SidebarWrapper>
<SidebarMenu >
<SidebarLink to="Notebooks" onClick={toggle}>
Notebooks
</SidebarLink>
<SidebarLink to="Instructors" onClick={toggle}>
Instructors
</SidebarLink>
<SidebarLink to="Media" onClick={toggle}>
Media
</SidebarLink>
<SidebarLink to="More" onClick={toggle}>
More
</SidebarLink>
</SidebarMenu>
</SidebarWrapper>
</SidebarContainer>
</>
)
}
export default Sidebar

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@@ -0,0 +1,36 @@
import {
CloseIcon,
Icon,
SidebarContainer,
SidebarLink,
SidebarMenu,
SidebarWrapper,
} from "@/components/Sidebar/SidebarElements";
export default function Sidebar({ isOpen, toggle }) {
return (
<>
<SidebarContainer isOpen={isOpen} onClick={toggle}>
<Icon onClick={toggle}>
<CloseIcon />
</Icon>
<SidebarWrapper>
<SidebarMenu>
<SidebarLink to="Notebooks" onClick={toggle}>
Notebooks
</SidebarLink>
<SidebarLink to="Instructors" onClick={toggle}>
Instructors
</SidebarLink>
<SidebarLink to="Media" onClick={toggle}>
Media
</SidebarLink>
<SidebarLink to="More" onClick={toggle}>
More
</SidebarLink>
</SidebarMenu>
</SidebarWrapper>
</SidebarContainer>
</>
);
}

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After

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@@ -1,39 +0,0 @@
<?xml version="1.0" encoding="UTF-8" standalone="no"?>
<svg
height="10"
width="8.75"
viewBox="0 0 448 512"
version="1.1"
id="svg914"
sodipodi:docname="square-x-twitter.svg"
inkscape:version="1.1.2 (b8e25be8, 2022-02-05)"
xmlns:inkscape="http://www.inkscape.org/namespaces/inkscape"
xmlns:sodipodi="http://sodipodi.sourceforge.net/DTD/sodipodi-0.dtd"
xmlns="http://www.w3.org/2000/svg"
xmlns:svg="http://www.w3.org/2000/svg">
<defs
id="defs918" />
<sodipodi:namedview
id="namedview916"
pagecolor="#ffffff"
bordercolor="#666666"
borderopacity="1.0"
inkscape:pageshadow="2"
inkscape:pageopacity="0.0"
inkscape:pagecheckerboard="0"
showgrid="false"
inkscape:zoom="65.6"
inkscape:cx="3.8948171"
inkscape:cy="4.5426829"
inkscape:window-width="1296"
inkscape:window-height="906"
inkscape:window-x="0"
inkscape:window-y="38"
inkscape:window-maximized="0"
inkscape:current-layer="svg914" />
<!--!Font Awesome Free 6.5.1 by @fontawesome - https://fontawesome.com License - https://fontawesome.com/license/free Copyright 2024 Fonticons, Inc.-->
<path
d="M64 32C28.7 32 0 60.7 0 96V416c0 35.3 28.7 64 64 64H384c35.3 0 64-28.7 64-64V96c0-35.3-28.7-64-64-64H64zm297.1 84L257.3 234.6 379.4 396H283.8L209 298.1 123.3 396H75.8l111-126.9L69.7 116h98l67.7 89.5L313.6 116h47.5zM323.3 367.6L153.4 142.9H125.1L296.9 367.6h26.3z"
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style="fill:#ffffff;fill-opacity:1" />
</svg>

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@@ -1,11 +0,0 @@
import React from 'react';
import ReactDOM from 'react-dom';
import App from './App';
ReactDOM.render(
<React.StrictMode>
<App />
</React.StrictMode>,
document.getElementById('root')
);

10
src/index.jsx Executable file
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@@ -0,0 +1,10 @@
import App from "@/App";
import "@/styles/globals.css";
import React from "react";
import ReactDOM from "react-dom/client";
ReactDOM.createRoot(document.getElementById("root")).render(
<React.StrictMode>
<App />
</React.StrictMode>,
);

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@@ -1,34 +0,0 @@
import React, {useState} from 'react'
import Sidebar from '../components/Sidebar'
import Navbar from '../components/NavBar'
import HeroSection from '../components/HeroSection';
import NotebookSection from '../components/Notebooks'
import InstructorsSection from '../components/Instructors';
import Footer from '../components/Footer';
import MediaSection from '../components/Media';
import MoreSection from '../components/More';
const Home = () => {
const [isOpen, setIsOpen] = useState(false)
const toggle = () => {
setIsOpen(!isOpen)
};
return (
<>
<Sidebar isOpen={isOpen} toggle={toggle}/>
<Navbar toggle={toggle}/>
<HeroSection />
<NotebookSection/>
<InstructorsSection/>
<MediaSection/>
<MoreSection/>
<Footer/>
</>
)
};
export default Home

30
src/pages/index.jsx Executable file
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@@ -0,0 +1,30 @@
import Footer from "@/components/Footer";
import HeroSection from "@/components/HeroSection";
import InstructorsSection from "@/components/Instructors";
import MediaSection from "@/components/Media";
import MoreSection from "@/components/More";
import Navbar from "@/components/Navbar";
import NotebookSection from "@/components/Notebooks";
import Sidebar from "@/components/Sidebar";
import { useState } from "react";
export default function Index() {
const [isOpen, setIsOpen] = useState(false);
const toggle = () => {
setIsOpen((p) => !p);
};
return (
<>
<Sidebar isOpen={isOpen} toggle={toggle} />
<Navbar toggle={toggle} />
<HeroSection />
<NotebookSection />
<InstructorsSection />
<MediaSection />
<MoreSection />
<Footer />
</>
);
}

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@@ -1,14 +0,0 @@
import React from 'react'
import ScrollToTop from '../components/ScrollToTop';
import SignIn from '../components/SignIn';
const SigninPage = () => {
return (
<>
<ScrollToTop />
<SignIn />
</>
)
}
export default SigninPage;

6
src/styles/globals.css Executable file
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@@ -0,0 +1,6 @@
* {
box-sizing: border-box;
margin: 0;
padding: 0;
font-family: "Encode Sans Expanded", sans-serif;
}

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@@ -1,23 +0,0 @@
body {
font-size: 17px;
margin: 2% 10%;
}
#head {
display: flex;
flex-direction: row;
flex-wrap: wrap-reverse;
justify-content: space-between;
width: 100%;
}
#cover {
justify-content: center;
display: flex;
width: 30%;
}
#cover img {
width: 100%;
height: min-content;
}

20
vite.config.js Normal file
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@@ -0,0 +1,20 @@
import react from "@vitejs/plugin-react-swc";
import path from "node:path";
import { defineConfig } from "vite";
// https://vitejs.dev/config/
export default defineConfig({
plugins: [react()],
resolve: {
alias: {
"@": path.resolve(__dirname, "./src"),
},
},
server: {
port: 3000,
},
preview: {
port: 3000,
},
base: "/udlbook",
});