Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18
Introduction
00:00 • 3min
Artificial Intelligence - What Is It?
02:33 • 2min
The Three Three Laws of Robert
04:09 • 2min
What Do You Build In?
06:05 • 2min
Applied Physics
07:45 • 5min
Is Quantum Computing to Help Your Deep Learning?
12:41 • 2min
The Lifelong Learning Problem in Indi Sorry, Sir.
15:02 • 3min
Tenser Flow
18:02 • 2min
Tenser Flow and Pytorch Are Getting Closer and Closer Together
20:06 • 2min
The Relationship Between Optimization and Regularization
21:47 • 5min
Do We Need to Regularize?
26:20 • 3min
Deep Learning Is Just All, Right?
28:52 • 5min
The Learning Trajectories Matter
33:35 • 3min
Deep Learning
36:48 • 4min
Is There a Learning Trajectory That Changes the Landscape?
40:42 • 5min
Is Drop Connect a Good Model for Deep Learning?
45:57 • 4min
Is Regularization Important in the Learning Algorithm?
50:02 • 3min
Do We Need Laws in Deep Learning?
53:22 • 6min