rethinking machine learning in the 21st century: from optimization to equilibration
Published 8 years ago • 416 plays • Length 55:51Download video MP4
Download video MP3
Similar videos
-
6:09
microsoft research ai: machine learning & optimization
-
1:00:54
directions in ml: taking advantage of randomness in expensive optimization problems
-
26:10
research in focus: transforming machine learning and optimization through quantum computing
-
6:09
direct nash optimization: teaching language models to self-improve with general preferences
-
3:13:33
practice question and answers | ai-900 microsoft azure ai fundamentals
-
22:02
what is an ai anyway? | mustafa suleyman | ted
-
3:40:37
pass ai-900 azure ai fundamentals with crash course | 160 practice exam questions ai-900
-
0:48
how important is math for machine learning?
-
25:42
machine learning work shop - why submodularity is important to machine learning
-
0:51
do you actually need math for machine learning?
-
14:09
automatic data labeling using microsoft florence-2 vision multimodal
-
0:36
how much does an ai engineer make?
-
0:53
reality behind data science, machine learning jobs
-
27:24
delve into the world’s largest ai language model | int178a
-
26:02
machine learning work shop - recovery of simultaneously structured models by convex optimization
-
26:06
machine learning in the big data era
-
1:27:07
transforming machine learning and optimization through quantum computing
-
53:04
exploiting structure information in machine learning
-
2:11
microsoft research and gurobi optimization
-
0:41
#88 what is gradient descent | data science | machine learning interview question
-
1:00:00
new perspectives on machine learning and science