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How I Study AI - Learn AI Papers & Lectures the Easy Way

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All SourcesarXiv
#multi-agent reinforcement learning

Multi-agent cooperation through in-context co-player inference

Intermediate
Marissa A. Weis, Maciej Woล‚czyk et al.Feb 18arXiv

The paper shows that AI agents can learn to cooperate simply by playing lots of different kinds of opponents and figuring them out on the fly, without hardcoding how those opponents learn.

#multi-agent reinforcement learning#in-context learning#co-player inference

WideSeek-R1: Exploring Width Scaling for Broad Information Seeking via Multi-Agent Reinforcement Learning

Intermediate
Zelai Xu, Zhexuan Xu et al.Feb 4arXiv

WideSeek-R1 teaches a small 4B-parameter language model to act like a well-run team: one leader plans, many helpers work in parallel, and everyone learns together with reinforcement learning.

#width scaling#multi-agent reinforcement learning#orchestration

LatentMem: Customizing Latent Memory for Multi-Agent Systems

Intermediate
Muxin Fu, Guibin Zhang et al.Feb 3arXiv

LatentMem is a new memory system that helps teams of AI agents remember the right things for their specific jobs without overloading them with text.

#multi-agent systems#latent memory#role-aware memory