Chapters
Transcript
Episode notes
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
Introduction
00:00 • 4min
Retort Learning Environments
04:14 • 2min
How to Generate Worlds and Games?
06:38 • 2min
Is There a Parallel With Machine Learning?
08:36 • 4min
Experimentation With Success Recognition
12:16 • 2min
Co-Operation in Multi-Agent Environments
14:04 • 2min
The Cooperative Dynamics Are the Easiest to Learn
15:47 • 2min
What Do You See From Agents?
17:33 • 2min
Measurement of Generalization in a Diverse Environment?
19:08 • 3min
Is It a Goodhart's Law Problem?
22:08 • 2min
The Significance of an Open Ended Learning Process
23:39 • 2min
Is There Something About Machine Learning That May Be Fundamental?
25:23 • 2min
Is There a Single Loss Function?
26:55 • 2min
Game Theory and the Prisoner's Dilemma
28:38 • 2min
Is There a Principle of Logic in Game Theory?
30:25 • 2min
Is Symbolic Logic a Bug or a Feature?
32:52 • 3min
Generalized Learning
36:06 • 2min
Do You Have a Hunch About What the Next Challenge Is?
38:13 • 2min
Is There an Opportunity to Do This With Predictive Models?
39:55 • 3min
Is This a G I Target?
43:06 • 2min