Interconnects cover image

Interviewing Eugene Vinitsky on self-play for self-driving and what else people do with RL

Interconnects

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Navigating Reinforcement Learning in Multi-Agent Environments

This chapter explores the complexities of reinforcement learning (RL) as it evolves from single-agent systems to intricate multi-agent scenarios. It discusses self-play techniques in robotics and self-driving technology, emphasizing the importance of thoughtful reward design for robust behavior in diverse driving situations. Additionally, the chapter highlights the challenges of scaling RL algorithms and their potential applications in scientific fields, particularly in enhancing simulations and autonomous labs.

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