Reinforcement Learning - ChatGPT, Playing Games, and More
This video is also available in the GOTO Play video app! Download it to enjoy offline access to our conference videos while on the move.
Reinforcement Learning (RL) trains an agent to maximize a cumulative reward in an environment. It rocketed to fame as the tool to achieve expert level performance in Atari games and the game of Go. It is also used for robotics, autonomous vehicles, process automation, and more recently, making ChatGPT more effective.
I will begin with why RL is important and how it supports the applications listed above, including "Reinforcement Learning with Human Feedback", an essential tool used to develop ChatGPT. Then I will discuss how RL requires a variety of computational patterns: data management and processing, large-scale simulations and model training, and even model serving.
Finally, I will show how Ray RLlib seamlessly and efficiently supports RL, providing an ideal platform for building Python-based, RL applications with an intuitive, flexible API.
-
It's a Noisy World Out ThereLinda RisingMonday May 22 @ 5:10 PM
-
One Rule to Rule Them AllDave ThomasTuesday May 23 @ 9:30 AM
-
The Psychology of UXFabio Nudge PereiraTuesday May 23 @ 1:50 PM
-
The Universe, Unfolded: NASA Webb Space TelescopeKenneth Harris IIMonday May 22 @ 1:50 PM
-
Practical Magic: The Resilience Potion and Security Chaos EngineeringKelly ShortridgeWednesday May 24 @ 9:30 AM
-
What We Talk About When We Talk About ResilienceCourtney NashWednesday May 24 @ 1:50 PM
-
Large Language Models: Friend, Foe, or OtherwiseAlex CastrounisMonday May 22 @ 9:30 AM
-
Sailing Solo: One Man's Journey Through the World's Loneliest RaceIan Herbert-JonesTuesday May 23 @ 5:10 PM