AI RESEARCH
Unified Context Evolution for LLM Agents
arXiv CS.CL
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ArXi:2606.02304v1 Announce Type: new LLM-based agents can solve multi-step interactive tasks by combining reasoning with environment feedback, yet each episode starts from the same fixed context and any useful strategy discovered along the way is lost once the task ends. Existing approaches either limit learning to the current task or pool all experience into a single untyped, without distinguishing knowledge types, tracking quality through use, or balancing what the library still lacks. We.