Channel Avatar

Nando de Freitas @UC0z_jCi0XWqI8awUuQRFnyw@youtube.com

47K subscribers - no pronouns :c

I am a machine learning professor at UBC. I am making my lec


54:40
Deep Learning Lecture 15: Deep Reinforcement Learning - Policy search
56:04
Deep Learning Lecture 16: Reinforcement learning and neuro-dynamic programming
43:18
Deep Learning Lecture 14: Karol Gregor on Variational Autoencoders and Image Generation
53:59
Deep Learning Lecture 13: Alex Graves on Hallucination with RNNs
51:10
Deep Learning Lecture 12: Recurrent Neural Nets and LSTMs
58:50
Deep Learning Lecture 11: Max-margin learning, transfer and memory networks
50:30
Deep Learning Lecture 10: Convolutional Neural Networks
53:47
Deep Learning Lecture 9: Neural networks and modular design in Torch
44:31
Deep learning Lecture 7: Logistic regression, a Torch approach
52:56
Deep Learning Lecture 8: Modular back-propagation, logistic regression and Torch
58:58
Deep Learning Lecture 5: Regularization, model complexity and data complexity (part 2)
58:19
Deep Learning Lecture 6: Optimization
40:27
Deep Learning Lecture 4: Regularization, model complexity and data complexity (part 1)
01:12:59
Deep Learning Lecture 3: Maximum likelihood and information
48:01
Deep Learning Lecture 2: linear models
52:16
Deep Learning Lecture 1: Introduction
39:17
Machine learning - Markov chain Monte Carlo (MCMC) II
01:16:18
Machine learning - Importance sampling and MCMC I
01:12:03
Machine learning - Deep learning II, the Google autoencoders and dropout
01:15:05
Machine learning - Deep learning I
01:04:24
Machine learning - Neural networks
01:13:47
Machine learning - Logistic regression
01:16:19
Machine learning - Unconstrained optimization
51:42
Machine learning - Random forests applications
01:16:55
Machine learning - Random forests
01:06:06
Machine learning - Decision trees
01:20:30
Machine learning - Bayesian optimization and multi-armed bandits
01:17:28
Machine learning - Gaussian processes
01:18:55
Machine learning - Introduction to Gaussian processes
21:10
Machine learning - Bayesian learning part 2
01:17:40
Machine learning - Bayesian learning
58:47
Machine learning - regularization, cross-validation and data size
01:01:15
Machine learning - Regularization and regression
01:14:01
Machine learning - Maximum likelihood and linear regression
01:04:20
Machine learning - linear prediction
59:58
Machine learning - introduction
38:29
undergraduate machine learning 33: Random forests, face detection and Kinect
33:11
undergraduate machine learning 32: Random forests
39:42
undergraduate machine learning 31: Decision trees
50:05
undergraduate machine learning 30: Deep learning
40:14
undergraduate machine learning 29: Neural nets and backpropagation
26:20
undergraduate machine learning 28: Neural networks
51:13
undergraduate machine learning 27: Logistic regression
49:02
undergraduate machine learning 26: Optimization
48:39
undergraduate machine learning 25: Twitter sentiment prediction with Naive Bayes
43:49
undergraduate machine learning 24: Text classification with Naive Bayes
46:40
undergraduate machine learning 23: Dirichlet and categorical distributions
01:11:40
undergraduate machine learning 22: Sparse models and variable selection
20:20
undergraduate machine learning 21: L1 regularization and the lasso
01:30:53
undergraduate machine learning 20: Cross-validation, big data and regularization
51:07
undergraduate machine learning 19: Maximum likelihood for linear prediction
42:59
undergraduate machine learning 18: Least squares and the multivariate Gaussian
51:16
undergraduate machine learning 17: Linear prediction
51:32
undergraduate machine learning 16: Principal Component Analysis - PCA
51:56
undergraduate machine learning 15: Singular Value Decomposition - SVD
52:38
undergraduate machine learning 14: Linear algebra revision for machine learning and web search
53:28
undergraduate machine learning 13: Learning Bayesian networks
53:10
undergraduate machine learning 12: Bayesian learning
32:55
undergraduate machine learning 11: Maximum likelihood
42:21
undergraduate machine learning 10: Expectation, probability and Bernoulli models