AI RESEARCH
FederatedSkill: Federated Learning for Agentic Skill Evolution
arXiv CS.LG
•
ArXi:2606.03143v1 Announce Type: new Modern LLM agents increasingly rely on skill libraries to handle complex tasks, making skill evolution a primary driver of self-improvement. However, isolated single-user task streams lack the diversity required to build comprehensive skills. While cross-user collaboration can overcome this data bottleneck, current trajectory-sharing approaches compromise user privacy and impose a uniform global library that fails to accommodate client heterogeneity. We