
Cipher
STDIOMemory-powered AI agent framework with MCP integration for coding assistants
Memory-powered AI agent framework with MCP integration for coding assistants
Byterover Cipher is an opensource memory layer specifically designed for coding agents. Compatible with Cursor, Windsurf, Claude Code, Cline, Claude Desktop, Gemini CLI, AWS's Kiro, VS Code, Roo Code, Trae, Amp Code and Warp through MCP, and coding agents, such as Kimi K2. (see more on examples)
Built by Byterover team
Key Features:
# Install globally npm install -g @byterover/cipher # Or install locally in your project npm install @byterover/cipher
# Clone and setup git clone https://github.com/campfirein/cipher.git cd cipher # Configure environment cp .env.example .env # Edit .env with your API keys # Start with Docker docker-compose up --build -d # Test curl http://localhost:3000/health
💡 Note: Docker builds automatically skip the UI build step to avoid ARM64 compatibility issues with lightningcss. The UI is not included in the Docker image by default.
To include the UI in the Docker build, use:
docker build --build-arg BUILD_UI=true .
pnpm i && pnpm run build && npm link
# Interactive mode cipher # One-shot command cipher "Add this to memory as common causes of 'CORS error' in local dev with Vite + Express." # API server mode cipher --mode api # MCP server mode cipher --mode mcp # Web UI mode cipher --mode ui
⚠️ Note: When running MCP mode in terminal/shell, export all environment variables as Cipher won't read from
.env
file.💡 Tip: CLI mode automatically continues or creates the "default" session. Use
/session new <session-name>
to start a fresh session.
The Cipher Web UI provides an intuitive interface for interacting with memory-powered AI agents, featuring session management, tool integration, and real-time chat capabilities.
Cipher supports multiple configuration options for different deployment scenarios. The main configuration file is located at memAgent/cipher.yml
.
# LLM Configuration llm: provider: openai # openai, anthropic, openrouter, ollama, qwen model: gpt-4-turbo apiKey: $OPENAI_API_KEY # System Prompt systemPrompt: 'You are a helpful AI assistant with memory capabilities.' # MCP Servers (optional) mcpServers: filesystem: type: stdio command: npx args: ['-y', '@modelcontextprotocol/server-filesystem', '.']
📖 See Configuration Guide for complete details.
Create a .env
file in your project root with these essential variables:
# ==================== # API Keys (At least one required) # ==================== OPENAI_API_KEY=sk-your-openai-api-key ANTHROPIC_API_KEY=sk-ant-your-anthropic-key GEMINI_API_KEY=your-gemini-api-key QWEN_API_KEY=your-qwen-api-key # ==================== # Vector Store (Optional - defaults to in-memory) # ==================== VECTOR_STORE_TYPE=qdrant # qdrant, milvus, or in-memory VECTOR_STORE_URL=https://your-cluster.qdrant.io VECTOR_STORE_API_KEY=your-qdrant-api-key # ==================== # Chat History (Optional - defaults to SQLite) # ==================== CIPHER_PG_URL=postgresql://user:pass@localhost:5432/cipher_db # ==================== # Workspace Memory (Optional) # ==================== USE_WORKSPACE_MEMORY=true WORKSPACE_VECTOR_STORE_COLLECTION=workspace_memory # ==================== # AWS Bedrock (Optional) # ==================== AWS_ACCESS_KEY_ID=your-aws-access-key AWS_SECRET_ACCESS_KEY=your-aws-secret-key AWS_DEFAULT_REGION=us-east-1 # ==================== # Advanced Options (Optional) # ==================== # Logging and debugging CIPHER_LOG_LEVEL=info # error, warn, info, debug, silly REDACT_SECRETS=true # Vector store configuration VECTOR_STORE_DIMENSION=1536 VECTOR_STORE_DISTANCE=Cosine # Cosine, Euclidean, Dot, Manhattan VECTOR_STORE_MAX_VECTORS=10000 # Memory search configuration SEARCH_MEMORY_TYPE=knowledge # knowledge, reflection, both (default: knowledge) DISABLE_REFLECTION_MEMORY=true # default: true
💡 Tip: Copy
.env.example
to.env
and fill in your values:cp .env.example .env
Cipher can run as an MCP (Model Context Protocol) server, allowing integration with MCP-compatible clients like Claude Desktop, Cursor, Windsurf, and other AI coding assistants.
To install cipher for Claude Desktop automatically via Smithery:
npx -y @smithery/cli install @campfirein/cipher --client claude
To use Cipher as an MCP server in your MCP client configuration:
{ "mcpServers": { "cipher": { "type": "stdio", "command": "cipher", "args": ["--mode", "mcp"], "env": { "MCP_SERVER_MODE": "aggregator", "OPENAI_API_KEY": "your_openai_api_key", "ANTHROPIC_API_KEY": "your_anthropic_api_key" } } } }
📖 See MCP Integration Guide for complete MCP setup and advanced features.
👉 Built‑in tools overview — expand the dropdown below to scan everything at a glance. For full details, see docs/builtin-tools.md
📘.
cipher_extract_and_operate_memory
: Extracts knowledge and applies ADD/UPDATE/DELETE in one stepcipher_memory_search
: Semantic search over stored knowledgecipher_store_reasoning_memory
: Store high-quality reasoning tracescipher_extract_reasoning_steps
(internal): Extract structured reasoning stepscipher_evaluate_reasoning
(internal): Evaluate reasoning quality and suggest improvementscipher_search_reasoning_patterns
: Search reflection memory for patternscipher_workspace_search
: Search team/project workspace memorycipher_workspace_store
: Background capture of team/project signalscipher_add_node
, cipher_update_node
, cipher_delete_node
, cipher_add_edge
cipher_search_graph
, cipher_enhanced_search
, cipher_get_neighbors
cipher_extract_entities
, cipher_query_graph
, cipher_relationship_manager
cipher_bash
: Execute bash commands (one-off or persistent)Watch our comprehensive tutorial on how to integrate Cipher with Claude Code through MCP for enhanced coding assistance with persistent memory:
Click the image above to watch the tutorial on YouTube.
For detailed configuration instructions, see the CLI Coding Agents guide.
Topic | Description |
---|---|
Configuration | Complete configuration guide including agent setup, embeddings, and vector stores |
LLM Providers | Detailed setup for OpenAI, Anthropic, AWS, Azure, Qwen, Ollama, LM Studio |
Embedding Configuration | Embedding providers, fallback logic, and troubleshooting |
Vector Stores | Qdrant, Milvus, In-Memory vector database configurations |
Chat History | PostgreSQL, SQLite session storage and management |
CLI Reference | Complete command-line interface documentation |
MCP Integration | Advanced MCP server setup, aggregator mode, and IDE integrations |
Workspace Memory | Team-aware memory system for collaborative development |
Examples | Real-world integration examples and use cases |
For detailed documentation, visit:
We welcome contributions! Refer to our Contributing Guide for more details.
cipher is the opensource version of the agentic memory of byterover which is built and maintained by the byterover team.
Thanks to all these amazing people for contributing to cipher!
Elastic License 2.0. See LICENSE for full terms.