TencentDB Agent Memory is a local long-term memory system for AI agents. It uses symbolic short-term memory and layered long-term memory instead of storing everything as flat vector fragments. For active tasks, it offloads heavy logs into external files and keeps a compact Mermaid canvas in the agent context. For personalization, it organizes memory from raw conversations into atoms, scenarios, and persona-level knowledge. The design keeps high-level memory inspectable while preserving a drill-down path back to raw evidence. It is built for OpenClaw and Hermes-style agent workflows that need lower token usage, better continuity, and no external API dependency.

Features

  • Local-first agent memory system
  • Symbolic Mermaid task canvases
  • Four-layer long-term memory pyramid
  • SQLite and sqlite-vec default backend
  • Traceable drill-down memory recovery
  • OpenClaw and Hermes integration support

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Categories

AI Agents

License

MIT License

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Additional Project Details

Programming Language

TypeScript

Related Categories

TypeScript AI Agents

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2 days ago