

Chelsea Finn on Meta Learning & Model Based Reinforcement Learning
Oct 14, 2021
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 • 3min
How to Start a PhD in Robotics
03:06 • 2min
The Evolution of Deep Learning
04:44 • 2min
The Journey to a PhD in Robotics
06:45 • 4min
The Impact of Meta-Learning on Networking
10:26 • 2min
The Rise of Meta-Learning After Mammal
12:02 • 4min
The Pros and Cons of Visual Model Based Learning for Generalist Robots
15:40 • 4min
The Future of Predictive Models
19:44 • 2min
RoboNet: A Dataset for Large Scale, Multi-Robot Learning
21:50 • 3min
How to Collect Higher Quality Data From Robots
24:53 • 2min
How to Scale Up Data Collection
27:14 • 2min
How to Build Predictive Models of a Future From Video
29:01 • 2min
Greedi Hierarchical Variational Other Encoders for Large Scale Video
30:38 • 2min
How to Fit a Model in Memory
32:48 • 2min
Roblinet and the Future of Video Prediction Video Modeling
34:30 • 2min
How to Scale Model-Based Learning to Solve Complex Tasks
36:48 • 4min
The Robot's Ability to Automate Primitive Skills
40:31 • 2min
How to Overcome Catastrophes Involving Robots
42:09 • 3min
How to Pre-Train a Robot
44:54 • 3min
How Painful Robotics Research Can Be
47:38 • 2min