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44. Jakob Foerster - Multi-agent reinforcement learning and the future of AI

44. Jakob Foerster - Multi-agent reinforcement learning and the future of AI

FromTowards Data Science


44. Jakob Foerster - Multi-agent reinforcement learning and the future of AI

FromTowards Data Science

ratings:
Length:
53 minutes
Released:
Jul 29, 2020
Format:
Podcast episode

Description

Reinforcement learning has gotten a lot of attention recently, thanks in large part to systems like AlphaGo and AlphaZero, which have highlighted its immense potential in dramatic ways. And while the RL systems we’ve developed have accomplished some impressive feats, they’ve done so in a fairly naive way. Specifically, they haven’t tended to confront multi-agent problems, which require collaboration and competition. But even when multi-agent problems have been tackled, they’ve been addressed using agents that just assume other agents are an uncontrollable part of the environment, rather than entities with rich internal structures that can be reasoned and communicated with.
That’s all finally changing, with new research into the field of multi-agent RL, led in part by OpenAI, Oxford and Google alum, and current FAIR research scientist Jakob Foerster. Jakob’s research is aimed specifically at understanding how reinforcement learning agents can learn to collaborate better and navigate complex environments that include other agents, whose behavior they try to model. In essence, Jakob is working on giving RL agents a theory of mind.
Released:
Jul 29, 2020
Format:
Podcast episode

Titles in the series (100)

Researchers and business leaders at the forefront of the field unpack the most pressing questions around data science and AI.