Machine Learning Street Talk (MLST) cover image

Machine Learning Street Talk (MLST)

MULTI AGENT LEARNING - LANCELOT DA COSTA

Nov 5, 2023
Lance Da Costa, a PhD candidate at Imperial College London, dives into the fascinating intersection of cognitive systems and AI. He discusses his work on the free energy principle, arguing that all intelligent agents minimize free energy for perception and decision-making. The conversation covers the advantages of active inference over traditional AI methods, highlighting its potential for safety and explainability. Lance also examines the challenges of structured learning and the role of Bayesian model reduction in adapting agents to changing environments.
49:56

Episode guests

Podcast summary created with Snipd AI

Quick takeaways

  • The free energy principle provides a unified understanding of the brain and intelligence and has the potential to lead to principled and explainable AI in the future.
  • Incorporating core knowledge and addressing challenges in structure learning can enhance the learning efficiency and explainability of intelligent agents, leading to more principled and scalable algorithms in the future.

Deep dives

The Importance of the Free Energy Principle

The podcast episode discusses the speaker's journey in exploring the free energy principle and its potential impact on artificial intelligence. The speaker explains that the free energy principle provides a unified understanding of the brain and intelligence. They highlight the need for rock-solid mathematical foundations to support the principle and clarify its validity. The speaker expresses excitement about upcoming papers that aim to provide the necessary mathematical groundwork. They believe that the free energy principle can lead to principled and explainable AI in the future.

Remember Everything You Learn from Podcasts

Save insights instantly, chat with episodes, and build lasting knowledge - all powered by AI.
App store bannerPlay store banner