From ae67af61a87d1213d52e0588c56a07036f5234e4 Mon Sep 17 00:00:00 2001
From: udlbook <110402648+udlbook@users.noreply.github.com>
Date: Tue, 14 Nov 2023 08:57:01 +0000
Subject: [PATCH] Update index.html
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index.html | 46 +++++++++++++++++++++++-----------------------
1 file changed, 23 insertions(+), 23 deletions(-)
diff --git a/index.html b/index.html
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Notebook 13.4 - Graph attention: ipynb/colab
- Notebook 15.1 - GAN toy example: (coming soon)
- Notebook 15.2 - Wasserstein distance: (coming soon)
- Notebook 16.1 - 1D normalizing flows: (coming soon)
- Notebook 16.2 - Autoregressive flows: (coming soon)
- Notebook 16.3 - Contraction mappings: (coming soon)
- Notebook 17.1 - Latent variable models: (coming soon)
- Notebook 17.2 - Reparameterization trick: (coming soon)
- Notebook 17.3 - Importance sampling: (coming soon)
- Notebook 18.1 - Diffusion encoder: (coming soon)
- Notebook 18.2 - 1D diffusion model: (coming soon)
- Notebook 18.3 - Reparameterized model: (coming soon)
- Notebook 18.4 - Families of diffusion models: (coming soon)
- Notebook 19.1 - Markov decision processes: (coming soon)
- Notebook 19.2 - Dynamic programming: (coming soon)
- Notebook 19.3 - Monte-Carlo methods: (coming soon)
- Notebook 19.4 - Temporal difference methods: (coming soon)
- Notebook 19.5 - Control variates: (coming soon)
- Notebook 20.1 - Random data: (coming soon)
- Notebook 20.2 - Full-batch gradient descent: (coming soon)
- Notebook 20.3 - Lottery tickets: (coming soon)
- Notebook 20.4 - Adversarial attacks: (coming soon)
- Notebook 21.1 - Bias mitigation: (coming soon)
- Notebook 21.2 - Explainability: (coming soon)
+ Notebook 15.1 - GAN toy example: ipynb/colab a
+ Notebook 15.2 - Wasserstein distance: ipynb/colab a
+ Notebook 16.1 - 1D normalizing flows: ipynb/colab a
+ Notebook 16.2 - Autoregressive flows: ipynb/colab a
+ Notebook 16.3 - Contraction mappings: ipynb/colab a
+ Notebook 17.1 - Latent variable models: ipynb/colab a
+ Notebook 17.2 - Reparameterization trick: ipynb/colab a
+ Notebook 17.3 - Importance sampling: ipynb/colab a
+ Notebook 18.1 - Diffusion encoder: ipynb/colab a/li>
+ Notebook 18.2 - 1D diffusion model: ipynb/colab a
+ Notebook 18.3 - Reparameterized model: ipynb/colab a
+ Notebook 18.4 - Families of diffusion models: ipynb/colab a
+ Notebook 19.1 - Markov decision processes: ipynb/colab a
+ Notebook 19.2 - Dynamic programming: ipynb/colab a
+ Notebook 19.3 - Monte-Carlo methods: ipynb/colab a
+ Notebook 19.4 - Temporal difference methods: ipynb/colab a
+ Notebook 19.5 - Control variates: ipynb/colab a
+ Notebook 20.1 - Random data: ipynb/colab a/li>
+ Notebook 20.2 - Full-batch gradient descent: ipynb/colab a/li>
+ Notebook 20.3 - Lottery tickets: ipynb/colab a/li>
+ Notebook 20.4 - Adversarial attacks: ipynb/colab a
+ Notebook 21.1 - Bias mitigation: ipynb/colab a
+ Notebook 21.2 - Explainability: ipynb/colab a