Scaling Self-Evolving Agents via Parametric Memory 事件

PRODUCT_LAUNCH2026-06-04影响: MEDIUM

Scaling Self-Evolving Agents via Parametric Memory arXiv:2606.04536v1 Announce Type: new Abstract: Existing memory-augmented LLM agents store past experience exclusively in prompt space, as textual summaries or retrieved passages, while keeping model parameters frozen throughout a rollout. Such agents can \emph{look up} what they have seen but cannot \emph{learn from} it: their policy is unchanged by experience, and any information dropped from the context is permanently lost. We introduce \tex