ClawKit Logo
ClawKitReliability Toolkit
Back to Registry
Official Verified

knowledge-vault

Long-term RAG memory storage for your agent, powered by TiDB Vector.

skill-install — Terminal

Install via CLI (Recommended)

clawhub install openclaw/skills/skills/lilyjazz/knowledge-vault
Or

Knowledge Vault (Powered by TiDB Zero)

Overview

Knowledge Vault is a Long-Term Memory module for AI Agents, powered by TiDB Vector Search (RAG).

Traditional agent memory (context window) is ephemeral and limited. Knowledge Vault allows agents to:

  1. Store: Ingest documents, notes, and facts as vector embeddings.
  2. Retrieve: Semantically search for relevant information based on user queries ("RAG").
  3. Remember: Access unlimited historical context without overflowing the LLM prompt.

Why use this?

  • Infinite Recall: Store millions of documents without confusing the agent.
  • Contextual Relevance: Find exact paragraphs related to a question, not just keywords.
  • Privacy: Keep your knowledge base private in your own TiDB Cloud instance.

Prerequisites

  • TiDB Cloud (Serverless): With Vector Search enabled.
  • Embedding Model: Requires GEMINI_API_KEY (or compatible).

🔐 Security & Provisioning

This skill operates in two modes:

  1. Bring Your Own Database (Recommended): Set TIDB_HOST, TIDB_USER, TIDB_PASSWORD environment variables. The skill will use your existing database.
  2. Auto-Provisioning (Fallback): If no credentials are found, the skill calls the TiDB Zero API to create a temporary, ephemeral database for you. It caches the connection string locally (~/.openclaw_knowledge_vault_dsn) to persist memory across runs.

Installation

1. Add to TOOLS.md

- **knowledge-vault**: Store and retrieve knowledge using vector search.
  - **Location:** `{baseDir}/skills/knowledge_vault/SKILL.md`
  - **Command:** `python {baseDir}/skills/knowledge_vault/run.py --action search --query "<QUESTION>"`

2. Add to AGENTS.md (Protocol)

Copy PROTOCOL.md.

Usage

  • Add Knowledge:
    python {baseDir}/run.py --action add --content "The user prefers spicy food but is allergic to peanuts."
    
  • Search (RAG):
    python {baseDir}/run.py --action search --query "What are the user's dietary restrictions?"
    

Metadata

Author@lilyjazz
Stars1656
Views0
Updated2026-02-28
View Author Profile
AI Skill Finder

Not sure this is the right skill?

Describe what you want to build — we'll match you to the best skill from 16,000+ options.

Find the right skill
Add to Configuration

Paste this into your clawhub.json to enable this plugin.

{
  "plugins": {
    "official-lilyjazz-knowledge-vault": {
      "enabled": true,
      "auto_update": true
    }
  }
}
Safety NoteClawKit audits metadata but not runtime behavior. Use with caution.