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agentscope-ai/ReMe

ReMe: Memory Management Kit for Agents - Remember Me, Refine Me.

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What it does

ReMe is an open-source toolkit that gives AI assistants a structured 'memory system,' allowing them to remember user preferences, learn from past tasks, and carry context across long conversations without getting overwhelmed. Think of it like giving an AI agent a well-organized notebook it can read from and write to, rather than forgetting everything each time it starts a new conversation.

Why it matters

As AI agents move from novelty to core product features, memory is one of the biggest gaps between a frustrating demo and a genuinely useful product—users expect AI to remember them, and this toolkit lets teams build that capability faster. For founders and PMs, this lowers the cost of building personalized, context-aware AI experiences, which is increasingly a competitive differentiator in any product that uses AI assistants or automation.

3Active

On the radar — signal detected

Stars
3.1k
Forks
263
Contributors
17
Language
Python

Score updated Feb 19, 2026

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