Unified Memory V5
统一记忆系统 - AI Agent 专用记忆系统,支持 Context Tree、智能摘要、知识图谱、工作流引擎。零依赖,完整对标 QMD/MetaGPT
Fast semantic search for AI agent memory files using TF-IDF and SQLite. Enables instant context retrieval from MEMORY.md or any markdown documentation. Use when the agent needs to (1) Find relevant context before starting a task, (2) Search through large memory files efficiently, (3) Retrieve specific rules or decisions without reading entire files, (4) Enable semantic similarity search instead of keyword matching. Lightweight alternative to heavy embedding models - zero external dependencies, <10ms search time.
This listing is from the official public ClawHub registry. Review SKILL.md and referenced scripts before running.
Install skill "Vector Memory Hack" with this command: npx skills add mig6671/vector-memory-hack
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统一记忆系统 - AI Agent 专用记忆系统,支持 Context Tree、智能摘要、知识图谱、工作流引擎。零依赖,完整对标 QMD/MetaGPT
193 个即插即用的 AI 专家角色库 - 覆盖工程、设计、营销、产品、游戏、安全、金融等 18 个部门。支持多智能体协作工作流。
生产级 Agent 记忆系统 — 6维坐标编码 + 语义检索 + 智能压缩
Four-tier persistent memory architecture for OpenClaw agents. Implements LCM-backed durability, hierarchical .md file organization, agentic signal routing, a...