_    ___ ___      _                               
/ \ |_ _/ _ \ ___| |_ _ __ ___ __ _ _ __ ___ ___
/ _ \ | | | | / __| __| '__/ _ \/ _` | '_ ` _ \/ __|
/ ___ \ | | |_| \__ \ |_| | | __/ (_| | | | | | \__ \
/_/ \_\___\___/|___/\__|_| \___|\__,_|_| |_| |_|___/
Twitch
Invidious (YT)

Invidious > Channel > Artificial Intelligence - All in One

Trending
Artificial Intelligence - All in One 167000 subscribers    RSS
View channel on YouTube
Videos
Playlists

YT 13 minutes 15 seconds
Artificial Intelligence - All in One
Lecture 1.1 — Why do we need machine learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 31 seconds
Artificial Intelligence - All in One
Lecture 1.2 — What are neural networks — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 24 seconds
Artificial Intelligence - All in One
Lecture 1.3 — Some simple models of neurons — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 5 minutes 39 seconds
Artificial Intelligence - All in One
Lecture 1.4 — A simple example of learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 38 seconds
Artificial Intelligence - All in One
Lecture 1.5 — Three types of learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 29 seconds
Artificial Intelligence - All in One
Lecture 2.1 — Types of neural network architectures — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 17 seconds
Artificial Intelligence - All in One
Lecture 2.2 — Perceptrons first generation neural networks — [ Deep Learning | Hinton | UofT ]
YT 6 minutes 25 seconds
Artificial Intelligence - All in One
Lecture 2.3 — A geometrical view of perceptrons — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 5 minutes 10 seconds
Artificial Intelligence - All in One
Lecture 2.4 — Why the learning works — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 14 minutes 35 seconds
Artificial Intelligence - All in One
Lecture 2.5 — What perceptrons cant do — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 11 minutes 56 seconds
Artificial Intelligence - All in One
Lecture 3.1 — Learning the weights of a linear neuron — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 5 minutes 4 seconds
Artificial Intelligence - All in One
Lecture 3.2 — The error surface for a linear neuron — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 3 minutes 57 seconds
Artificial Intelligence - All in One
Lecture 3.3 — Learning weights of logistic output neuron — [ Deep Learning | Hinton | UofT ]
YT 11 minutes 52 seconds
Artificial Intelligence - All in One
Lecture 3.4 — The backpropagation algorithm — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 50 seconds
Artificial Intelligence - All in One
Lecture 3.5 — Using the derivatives from backpropagation — [ Deep Learning | Hinton | UofT ]
YT 12 minutes 34 seconds
Artificial Intelligence - All in One
Lecture 4.1 — Learning to predict the next word — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 4 minutes 27 seconds
Artificial Intelligence - All in One
Lecture 4.2 — A brief diversion into cognitive science — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 21 seconds
Artificial Intelligence - All in One
Lecture 4.3 — The softmax output function — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 53 seconds
Artificial Intelligence - All in One
Lecture 4.4 — Neuro probabilistic language models — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 12 minutes 17 seconds
Artificial Intelligence - All in One
Lecture 4.5 — Dealing with many possible outputs — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 4 minutes 41 seconds
Artificial Intelligence - All in One
Lecture 5.1 — Why object recognition is difficult — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 5 minutes 59 seconds
Artificial Intelligence - All in One
Lecture 5.2 — Achieving viewpoint invariance — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 16 minutes 2 seconds
Artificial Intelligence - All in One
Lecture 5.3 — Convolutional nets for digit recognition — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 17 minutes 45 seconds
Artificial Intelligence - All in One
Lecture 5.4 — Convolutional nets for object recognition — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 23 seconds
Artificial Intelligence - All in One
Lecture 6.1 — Overview of mini batch gradient descent — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 13 minutes 16 seconds
Artificial Intelligence - All in One
Lecture 6.2 — A bag of tricks for mini batch gradient descent — [ Deep Learning | Hinton | UofT ]
YT 8 minutes 43 seconds
Artificial Intelligence - All in One
Lecture 6.3 — The momentum method Neural — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 5 minutes 45 seconds
Artificial Intelligence - All in One
Lecture 6.4 — Adaptive learning rates for each connection — [ Deep Learning | Hinton | UofT ]
YT 11 minutes 39 seconds
Artificial Intelligence - All in One
Lecture 6 5 — Rmsprop normalize the gradient — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 17 minutes 24 seconds
Artificial Intelligence - All in One
Lecture 7.1 — Modeling sequences a brief overview — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 6 minutes 24 seconds
Artificial Intelligence - All in One
Lecture 7.2 — Training RNNs with back propagation — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 6 minutes 15 seconds
Artificial Intelligence - All in One
Lecture 7.3 — A toy example of training an RNN — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 44 seconds
Artificial Intelligence - All in One
Lecture 7.4 — Why it is difficult to train an RNN — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 16 seconds
Artificial Intelligence - All in One
Lecture 7.5 — Long term Short term memory — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 14 minutes 25 seconds
Artificial Intelligence - All in One
Lecture 8.1 — A brief overview of Hessian free optimization — [ Deep Learning | Hinton | UofT ]
YT 14 minutes 36 seconds
Artificial Intelligence - All in One
Lecture 8.2 — Modeling character strings — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 12 minutes 25 seconds
Artificial Intelligence - All in One
Lecture 8.3 — Predicting the next character using HF — [ Deep Learning | Hinton | UofT ]
YT 9 minutes 38 seconds
Artificial Intelligence - All in One
Lecture 8.4 — Echo State Networks — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 11 minutes 45 seconds
Artificial Intelligence - All in One
Lecture 9.1 — Overview of ways to improve generalization — [ Deep Learning | Hinton | UofT ]
YT 6 minutes 23 seconds
Artificial Intelligence - All in One
Lecture 9.2 — Limiting the size of the weights — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 32 seconds
Artificial Intelligence - All in One
Lecture 9.3 — Using noise as a regularizer — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 10 minutes 50 seconds
Artificial Intelligence - All in One
Lecture 9.4 — Introduction to the full Bayesian approach — [ Deep Learning | Hinton | UofT ]
YT 10 minutes 53 seconds
Artificial Intelligence - All in One
Lecture 9.5 — The Bayesian interpretation of weight decay — [ Deep Learning | Hinton | UofT ]
YT 3 minutes 32 seconds
Artificial Intelligence - All in One
Lecture 9.6 — MacKay s quick and dirty method — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 13 minutes 11 seconds
Artificial Intelligence - All in One
Lecture 10.1 — Why it helps to combine models — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 13 minutes 16 seconds
Artificial Intelligence - All in One
Lecture 10.2 — Mixtures of Experts — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 28 seconds
Artificial Intelligence - All in One
Lecture 10.3 — The idea of full Bayesian learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 6 minutes 45 seconds
Artificial Intelligence - All in One
Lecture 10.4 — Making full Bayesian learning practical — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 36 seconds
Artificial Intelligence - All in One
Lecture 10.5 — Dropout — [ Deep Learning | Geoffrey Hinton | Toronto ]
YT 13 minutes 2 seconds
Artificial Intelligence - All in One
Lecture 11.1 — Hopfield Nets — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 11 minutes 3 seconds
Artificial Intelligence - All in One
Lecture 11.2 — Dealing with spurious minima — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 40 seconds
Artificial Intelligence - All in One
Lecture 11.3 — Hopfield nets with hidden units— [ Deep Learning | Geoffrey Hinton | UofT ]
YT 10 minutes 25 seconds
Artificial Intelligence - All in One
Lecture 11.4 — Using stochastic units to improve search — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 11 minutes 45 seconds
Artificial Intelligence - All in One
Lecture 11.5 — How a Boltzmann machine models data — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 12 minutes 16 seconds
Artificial Intelligence - All in One
Lecture 12.1 — Boltzmann machine learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 14 minutes 49 seconds
Artificial Intelligence - All in One
Lecture 12.2 — More efficient ways to get the statistics — [ Deep Learning | Hinton | UofT ]
YT 10 minutes 55 seconds
Artificial Intelligence - All in One
Lecture 12.3 — Restricted Boltzmann Machines — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 15 seconds
Artificial Intelligence - All in One
Lecture 12.4 — An example of RBM learning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 17 seconds
Artificial Intelligence - All in One
Lecture 12.5 — RBMs for collaborative filtering — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 54 seconds
Artificial Intelligence - All in One
Lecture 13.1 — The ups and downs of backpropagation — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 12 minutes 36 seconds
Artificial Intelligence - All in One
Lecture 13.2 — Belief Nets — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 11 minutes 26 seconds
Artificial Intelligence - All in One
Lecture 13.3 — Learning sigmoid belief nets — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 13 minutes 15 seconds
Artificial Intelligence - All in One
Lecture 13.4 — The wake sleep algorithm — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 17 minutes 35 seconds
Artificial Intelligence - All in One
Lecture 14.1 — Learning layers of features by stacking RBMs — [ Deep Learning | Hinton | UofT ]
YT 9 minutes 41 seconds
Artificial Intelligence - All in One
Lecture 14.2 — Discriminative learning for DBNs — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 40 seconds
Artificial Intelligence - All in One
Lecture 14.3 — Discriminative fine tuning — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 57 seconds
Artificial Intelligence - All in One
Lecture 14.4 — Modeling real valued data with an RBM — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 17 minutes 12 seconds
Artificial Intelligence - All in One
Lecture 14.5 — RBMs are infinite sigmoid belief nets — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 7 minutes 58 seconds
Artificial Intelligence - All in One
Lecture 15.1 — From PCA to autoencoders — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 4 minutes 11 seconds
Artificial Intelligence - All in One
Lecture 15.2 — Deep autoencoders — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 20 seconds
Artificial Intelligence - All in One
Lecture 15.3 — Deep autoencoders for document retrieval — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 8 minutes 51 seconds
Artificial Intelligence - All in One
Lecture 15.4 — Semantic Hashing — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 38 seconds
Artificial Intelligence - All in One
Lecture 15.5 — Learning binary codes for image retrieval — [ Deep Learning | Hinton | UofT ]
YT 7 minutes 3 seconds
Artificial Intelligence - All in One
Lecture 15.6 — Shallow autoencoders for pre training — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 9 minutes 5 seconds
Artificial Intelligence - All in One
Lecture 16.1 — Learning a joint model of images and captions — [ Deep Learning | Hinton | UofT ]
YT 9 minutes 41 seconds
Artificial Intelligence - All in One
Lecture 16.2 — Hierarchical Coordinate Frames — [ Deep Learning | Geoffrey Hinton | UofT ]
YT 13 minutes 30 seconds
Artificial Intelligence - All in One
Lecture 16.3 — Bayesian optimization of hyper parameters — [ Deep Learning | Hinton | UofT ]
YT 2 minutes 25 seconds
Artificial Intelligence - All in One
Lecture 16.4 — The fog of progress — [ Deep Learning | Geoffrey Hinton | UofT ]