Shared Selective Persistent Memory for Agentic LLM Systems

arXiv:2607.09493v1 Announce Type: new Abstract: Agentic LLM systems that generate code through multi-turn tool use face a fundamental context problem: each session starts from zero, discarding the configuration choices, domain constraints, data schemas, and tool-use patterns that made previous sessions productive. Naively persisting entire conversation histories is token-inefficient and counterproductive: irrelevant context degrades generation quality. We introduce shared selective persistent me...

arXiv cs.AI ·Sanjana Pedada, Aditya Dhavala, Neelraj Patil ·
compartilhar: