dropout (q&a) | lecture 3 (part 4) | applied deep learning (supplementary)
Published 2 years ago • 526 plays • Length 7:45Download video MP4
Download video MP3
Similar videos
-
4:55
googlenet (q&a) | lecture 4 (part 3) | applied deep learning (supplementary)
-
32:45
dropout | lecture 3 (part 1) | applied deep learning
-
2:37
amoebanet-a (q&a) | lecture 14 (part 3) | applied deep learning (supplementary)
-
10:05
wide & deep learning | lecture 81 (part 3) | applied deep learning (supplementary)
-
7:24
fixmatch | lecture 76 (part 3) | applied deep learning (supplementary)
-
9:15
spanbert | lecture 56 (part 3) | applied deep learning (supplementary)
-
11:15
autoaugment | lecture 16 (part 4) | applied deep learning (supplementary)
-
29:25
cap6412 21spring-intriguing properties of neural networks
-
22:28
kaggle exercise intro to deep learning - dropout and batch normalization
-
1:15:53
yarin gal -. bayesian deep learning
-
3:18
pyramid scene parsing network (q&a) | lecture 27 (part 4) | applied deep learning (supplementary)
-
18:52
word2vec (q&a - continued) | lecture 43 (part 2) | applied deep learning (supplementary)
-
8:21
network in network (continued) | lecture 4 (part 1) | applied deep learning
-
8:41
robust optimization (q&a) | lecture 19 (part 3) | applied deep learning (supplementary)
-
4:04
network in network (q&a) | lecture 4 (part 1) | applied deep learning (supplementary)
-
10:05
subword regularization | lecture 50 (part 3) | applied deep learning (supplementary)
-
6:07
autorec | lecture 81 (part 2) | applied deep learning (supplementary)
-
10:54
black-box attacks | lecture 18 (part 2) | applied deep learning (supplementary)
-
2:06
lime (q&a) | lecture 21 (part 3) | applied deep learning (supplementary)
-
5:38
adversarial examples (continued) | lecture 22 (part 1) | applied deep learning
-
7:18
adaptive gradient clipping | lecture 11 (part 3) | applied deep learning (supplementary)