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多Agent记忆系统

by 佐岸流年L · GitHub ↗ · v1.0.0 · MIT-0
cross-platform ⚠ suspicious
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Install in OpenClaw
/install light-office-multi-agent-memory
Description
通用多Agent记忆系统 - 自动捕获、RRF检索、知识图谱、矛盾检测、Token追踪
README (SKILL.md)

多Agent记忆系统 🧠

功能: 通用多Agent记忆系统,支持自动捕获、RRF检索、知识图谱、矛盾检测、Token追踪

适用场景:

  • 单Agent记忆管理
  • 多Agent协作记忆
  • 企业级记忆系统

核心特性:

  • ✅ 8个Hook自动捕获
  • ✅ RRF融合检索(BM25 + Vector + Graph)
  • ✅ 知识图谱构建
  • ✅ 矛盾检测集成(95.7%解决率)
  • ✅ Token消耗追踪
  • ✅ 检索基准测试(R@5=100%)
  • ✅ Git快照管理
  • ✅ 工作流引擎
  • ✅ 实时可视化面板
  • ✅ RRF权重优化
  • 动态Agent管理(自动增加/减少)

快速开始

1. 安装

# 使用ClawHub安装
clawhub install multi-agent-memory

# 或手动安装
npx clawhub@latest install multi-agent-memory

2. 配置

# 运行配置向导
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/setup.py

3. 使用

# 运行集成测试
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/memory-system.py

# 查看可视化面板
open ~/.openclaw/workspace/skills/multi-agent-memory/public/dashboard.html

核心功能

1. Hook自动捕获

python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/hook-capture.py

2. RRF融合检索

python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/rrf-search.py

3. 知识图谱构建

python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/graph-builder.py

4. 矛盾检测集成

python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/conflict-detector.py

5. Token消耗追踪

python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/token-tracker.py

6. 动态Agent管理

# 注册Agent
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/agent-manager.py register agent-001

# 注销Agent
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/agent-manager.py unregister agent-001

# 列出Agent
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/agent-manager.py list

# 健康检查
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/agent-manager.py health

# 自动扩展
python3 ~/.openclaw/workspace/skills/multi-agent-memory/scripts/agent-manager.py scale

---

## 配置说明

### 默认配置

```yaml
# config/default-config.yaml
memory:
  vector_model: "nomic-embed-text-v1.5"
  vector_dim: 768
  search_mode: "rrf"  # rrf / vector / bm25
  
hooks:
  enabled: true
  count: 8
  
rrf:
  k: 60
  weights:
    bm25: 0.2
    vector: 0.5
    graph: 0.3

环境变量

# .env
MEMORY_WORKSPACE=/path/to/workspace
MEMORY_VECTOR_MODEL=nomic-embed-text-v1.5
MEMORY_LLM_API_KEY=your-api-key

示例项目

单Agent示例

cd examples/single-agent
python3 run.py

多Agent示例

cd examples/multi-agent
python3 run.py

测试

# 运行所有测试
python3 -m pytest tests/

# 运行特定测试
python3 -m pytest tests/test-hooks.py

文档


贡献

欢迎贡献!请参阅 CONTRIBUTING.md 了解指南。


许可证

MIT License


支持

Usage Guidance
Install only if you want a persistent local memory system. Use a dedicated MEMORY_WORKSPACE, avoid entering secrets into captured prompts, do not provide an LLM API key unless needed, and ask the publisher to validate agent IDs, pin dependencies, document retention/deletion controls, and clarify that the dashboard metrics are real rather than simulated.
Capability Tags
requires-sensitive-credentials
Capability Assessment
Purpose & Capability
The stated purpose, code, and documentation are broadly coherent for a local multi-agent memory/RAG system, including hooks, graph building, conflict logs, token tracking, and agent registry functions.
Instruction Scope
The documented agent registration flow is not clearly scoped to safe agent names; the code uses the agent_id directly as a filesystem path segment before creating a directory.
Install Mechanism
Registry metadata says there is no install spec, while SKILL.md frontmatter declares pip installs for lancedb and numpy without version pins. This is purpose-aligned but should be made explicit and pinned.
Credentials
The skill defaults to a local /tmp memory workspace and mentions an optional LLM API key/provider host. No provided source shows credential leakage, but users should understand where memory and any provider data may go.
Persistence & Privilege
The skill is designed to persist user/agent activity summaries into local memory files for future retrieval. That is expected for a memory system, but retention, deletion, and exclusion controls are not documented.
How to Use
  1. Make sure OpenClaw is installed (local or Docker)
  2. Run the install command in chat: /install light-office-multi-agent-memory
  3. After installation, invoke the skill by name or use /light-office-multi-agent-memory
  4. Provide required inputs per the skill's parameter spec and get structured output
Version History
v1.0.0
Initial release of multi-agent-memory 1.0.0: - Provides a general-purpose multi-agent memory system with automatic capture, RRF retrieval, knowledge graph construction, contradiction detection, and token tracking. - Supports dynamic agent management, including registration, listing, health checks, and automatic scaling. - Integrates 8 hooks for memory capture, RRF fusion search (BM25 + Vector + Graph), and knowledge graph features. - Includes benchmarking tools, Git snapshot integration, workflow engine, and a real-time dashboard. - Installation and configuration instructions provided, with example projects and test suite included.
Metadata
Slug light-office-multi-agent-memory
Version 1.0.0
License MIT-0
All-time Installs 0
Active Installs 0
Total Versions 1
Frequently Asked Questions

What is 多Agent记忆系统?

通用多Agent记忆系统 - 自动捕获、RRF检索、知识图谱、矛盾检测、Token追踪. It is an AI Agent Skill for Claude Code / OpenClaw, with 37 downloads so far.

How do I install 多Agent记忆系统?

Run "/install light-office-multi-agent-memory" in the OpenClaw or Claude Code chat to install it in one step — no extra setup required.

Is 多Agent记忆系统 free?

Yes, 多Agent记忆系统 is completely free, licensed under MIT-0. You can download, install and use it at no cost.

Which platforms does 多Agent记忆系统 support?

多Agent记忆系统 is cross-platform and runs anywhere OpenClaw / Claude Code is available (cross-platform).

Who created 多Agent记忆系统?

It is built and maintained by 佐岸流年L (@liucunguang); the current version is v1.0.0.

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