randaugment | lecture 17 (part 1) | applied deep learning (supplementary)
Published 2 years ago • 307 plays • Length 10:32Download video MP4
Download video MP3
Similar videos
-
18:11
aleatoric vs epistemic uncertainty | lecture 28 (part 1) | applied deep learning (supplementary)
-
12:43
least-likely class method | lecture 17 (part 4) | applied deep learning (supplementary)
-
13:09
monocular depth estimation | lecture 34 (part 1) | applied deep learning (supplementary)
-
35:18
neural differential equations
-
5:24
l17.1 variational autoencoder overview
-
14:26
neural odes | lecture 9 (part 1) | applied deep learning (supplementary)
-
11:15
autoaugment | lecture 16 (part 4) | applied deep learning (supplementary)
-
15:28
one shot learning | lecture 72 (part 1) | applied deep learning (supplementary)
-
14:37
roberta | lecture 54 (part 1) | applied deep learning (supplementary)
-
16:28
codeepneat | lecture 15 (part 1) | applied deep learning (supplementary)
-
18:58
unit (continued) | lecture 68 (part 1) | applied deep learning (supplementary)
-
10:04
cornernet | lecture 37 (part 2) | applied deep learning (supplementary)
-
24:30
deep q-learning | lecture 77 (part 1) | applied deep learning
-
13:47
crfs as rnns (continued) | lecture 27 (part 1) | applied deep learning (supplementary)
-
17:01
vaes for collaborative filtering | lecture 83 (part 1) | applied deep learning (supplementary)
-
13:17
deeppose | lecture 31 (part 1) | applied deep learning (supplementary)
-
3:58
finite sample expressivity (continued) | lecture 28 (part 1) | applied deep learning