Denoising and Variational Autoencoders
A video about autoencoders, a very powerful generative model. The video includes:
Intro: (0:25)
Dimensionality reduction (3:35)
Denoising autoencoders (10:50)
Variational autoencoders (18:15)
Training autoencoders (23:36)
Github repo: www.github.com/luisguiserrano/autoencoders
Recommended videos:
Generative adversarial networks: https://www.youtube.com/watch?v=8L11aMN5KY8
Restricted Boltzmann machines: https://www.youtube.com/watch?v=Fkw0_aAtwIw
Matrix factorization: https://www.youtube.com/watch?v=ZspR5PZemcs
Singular value decomposition: https://www.youtube.com/watch?v=DG7YTlGnCEo
Neural networks: https://www.youtube.com/watch?v=BR9h47Jtqyw
Convolutional neural networks: https://www.youtube.com/watch?v=2-Ol7ZB0MmU
Recurrent neural networks: https://www.youtube.com/watch?v=2-Ol7ZB0MmU
Logistic regression: https://www.youtube.com/watch?v=jbluHIgBmBo
Shannon entropy: https://www.youtube.com/watch?v=9r7FIXEAGvs
Book by Luis Serrano! Grokking Machine Learning. bit.ly/grokkingML
40% discount code: serranoyt
0:00 Introduction
0:13 Generative models
3:03 Variational autoencoders
3:45 Dataset of images
10:16 Denoising autoencoders
10:27 Linear methods
10:53 A friendly introduction to deep learning and neural networks
11:58 Mapping the real numbers to the interval (0,1)
12:23 Sigmoid function
12:41 Perceptron
15:02 Correct noise
18:20 Autoencoders as generators
20:16 Latent space
23:41 Training a neural network - loss function
25:18 Training an autoencoder
25:32 Training autoencoders
25:46 Reconstruction loss (Mean squared error)
26:31 Reconstruction loss (log-loss)
27:11 Training a variational auto encoder
Correction: At 30:05, the number in the middle of the red graph should be 0.4, not 0.3.
Видео Denoising and Variational Autoencoders канала Serrano.Academy
Intro: (0:25)
Dimensionality reduction (3:35)
Denoising autoencoders (10:50)
Variational autoencoders (18:15)
Training autoencoders (23:36)
Github repo: www.github.com/luisguiserrano/autoencoders
Recommended videos:
Generative adversarial networks: https://www.youtube.com/watch?v=8L11aMN5KY8
Restricted Boltzmann machines: https://www.youtube.com/watch?v=Fkw0_aAtwIw
Matrix factorization: https://www.youtube.com/watch?v=ZspR5PZemcs
Singular value decomposition: https://www.youtube.com/watch?v=DG7YTlGnCEo
Neural networks: https://www.youtube.com/watch?v=BR9h47Jtqyw
Convolutional neural networks: https://www.youtube.com/watch?v=2-Ol7ZB0MmU
Recurrent neural networks: https://www.youtube.com/watch?v=2-Ol7ZB0MmU
Logistic regression: https://www.youtube.com/watch?v=jbluHIgBmBo
Shannon entropy: https://www.youtube.com/watch?v=9r7FIXEAGvs
Book by Luis Serrano! Grokking Machine Learning. bit.ly/grokkingML
40% discount code: serranoyt
0:00 Introduction
0:13 Generative models
3:03 Variational autoencoders
3:45 Dataset of images
10:16 Denoising autoencoders
10:27 Linear methods
10:53 A friendly introduction to deep learning and neural networks
11:58 Mapping the real numbers to the interval (0,1)
12:23 Sigmoid function
12:41 Perceptron
15:02 Correct noise
18:20 Autoencoders as generators
20:16 Latent space
23:41 Training a neural network - loss function
25:18 Training an autoencoder
25:32 Training autoencoders
25:46 Reconstruction loss (Mean squared error)
26:31 Reconstruction loss (log-loss)
27:11 Training a variational auto encoder
Correction: At 30:05, the number in the middle of the red graph should be 0.4, not 0.3.
Видео Denoising and Variational Autoencoders канала Serrano.Academy
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
How Large Language Models are Shaping the FutureWhat are Transformer Models and how do they work?The math behind Attention: Keys, Queries, and Values matricesThe Attention Mechanism in Large Language ModelsThe Binomial and Poisson DistributionsEuler's number, derivatives, and the bank at the end of the universeDecision trees - A friendly introductionThank you for 100K subscribers! I’m planning tons of new content coming soon, so excited!How do you minimize a function when you can't take derivatives? CMA-ES and PSOWhat is Quantum Machine Learning?Eigenvectors and Generalized EigenspacesThompson sampling, one armed bandits, and the Beta distributionThe Beta distribution in 12 minutes!A friendly introduction to deep reinforcement learning, Q-networks and policy gradientsThe Gini Impurity Index explained in 8 minutes!The covariance matrixGaussian Mixture ModelsSingular Value Decomposition (SVD) and Image CompressionROC (Receiver Operating Characteristic) Curve in 10 minutes!Restricted Boltzmann Machines (RBM) - A friendly introduction