vicreg | lecture 80 (part 3) | applied deep learning (supplementary)
Published 2 years ago • 1.8K plays • Length 7:02Download video MP4
Download video MP3
Similar videos
-
10:05
wide & deep learning | lecture 81 (part 3) | applied deep learning (supplementary)
-
9:27
simsiam | lecture 80 (part 1) | applied deep learning (supplementary)
-
11:49
pretext-invariant representations | lecture 78 (part 3) | applied deep learning (supplementary)
-
7:24
fixmatch | lecture 76 (part 3) | applied deep learning (supplementary)
-
10:55
mixmatch (continued) | lecture 76 (part 1) | applied deep learning (supplementary)
-
1:54:44
08l – self-supervised learning and variational inference
-
19:08
wav2vec 2.0 | lecture 76 (part 3) | applied deep learning
-
8:40
gumbel-softmax | lecture 63 (part 3) | applied deep learning (supplementary)
-
6:07
autorec | lecture 81 (part 2) | applied deep learning (supplementary)
-
17:01
vaes for collaborative filtering | lecture 83 (part 1) | applied deep learning (supplementary)
-
10:05
subword regularization | lecture 50 (part 3) | applied deep learning (supplementary)
-
18:58
unit (continued) | lecture 68 (part 1) | applied deep learning (supplementary)
-
7:18
adaptive gradient clipping | lecture 11 (part 3) | applied deep learning (supplementary)
-
7:00
beit | lecture 80 (part 2) | applied deep learning (supplementary)
-
9:15
spanbert | lecture 56 (part 3) | applied deep learning (supplementary)
-
8:44
centered kernel alignment | lecture 24 (part 3) | applied deep learning (supplementary)
-
4:47
stacked hourglass networks | lecture 31 (part 3) | applied deep learning (supplementary)
-
11:15
autoaugment | lecture 16 (part 4) | applied deep learning (supplementary)
-
10:28
vision transformers (continued) | lecture 11 (part 1) | applied deep learning (supplementary)
-
14:58
video depth estimation | lecture 34 (part 3) | applied deep learning (supplementary)
-
14:58
model-agnostic meta-learning (continued) | lecture 83 (part 1) | applied deep learning