Memory Bridge
Skill Verified ActiveBridge Claude Code auto-memory into AgentDB with ONNX embeddings, deduplicate, and enable unified cross-project search
To make Claude Code's auto-generated memories searchable across projects and sessions by storing them with embeddings in AgentDB.
Features
- Bridge Claude Code auto-memory to AgentDB
- Generate ONNX embeddings for memory entries
- Deduplicate memory entries using cosine similarity
- Enable unified cross-project semantic search
- Automatic import via SessionStart hook
Use Cases
- Searching across all your past Claude Code sessions and projects
- Recalling specific information learned or generated in previous interactions
- Leveraging historical context for new tasks without manual import
- Enabling advanced RAG patterns across auto-generated memories
Non-Goals
- Managing external AgentDB instances
- Providing general-purpose text search unrelated to Claude Code memories
- Replacing Claude Code's core functionality
Practices
- Memory management
- Data indexing
- Semantic search
Prerequisites
- Claude Code environment with auto-memory enabled
- AgentDB accessible with HNSW indexing
- Node.js runtime for helper scripts
Installation
First, add the marketplace
/plugin marketplace add ruvnet/ruflo/plugin install ruflo-rag-memory@rufloQuality Score
VerifiedTrust Signals
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