Unified Dynamic Server
FreeNot checkedConsolidates code understanding, documentation, browser automation, memory, and knowledge graph into a single MCP server with progressive discovery for up to 98
About
Consolidates code understanding, documentation, browser automation, memory, and knowledge graph into a single MCP server with progressive discovery for up to 98% token reduction.
README
Single MCP server with progressive discovery for 96-160x token reduction
Consolidates code understanding (Codanna), documentation (Context7), browser automation (Playwright), memory (Claude-mem), and knowledge graph (Graphiti+LadybugDB) into one unified server.
✨ NEW: Graphiti knowledge graph now supports Google Gemini! Use free Gemini API with embedded LadybugDB (no Docker required).
Features
✨ Progressive Discovery - 3-step pattern reduces tokens from 10,000+ to 50-200
🔧 Dynamic Tool Loading - Lazy load capabilities only when needed
🎯 5 Integrated Capabilities - Code, docs, browser, memory, knowledge graph
🚀 Git Submodules - Auto-update with git submodule update --remote
⚡ Fast - Sub-10ms symbol lookup (Codanna), embedded LadybugDB (no Docker)
Quick Start
# 1. Clone with submodules
git clone --recursive https://github.com/yourusername/unified-mcp.git
cd unified-mcp
# 2. Install dependencies (using uv - recommended)
uv pip install -r requirements.txt
# 3. Install Claude-mem plugin (required for memory capability)
# In Claude Code terminal:
/plugin marketplace add thedotmack/claude-mem
/plugin install claude-mem
# Then restart Claude Code
# 4. Add to Claude Code (replace /path/to/unified-mcp with actual path)
claude mcp add --transport stdio \
unified-mcp \
-- uv --directory /absolute/path/to/unified-mcp run server.py
# 5. For Graphiti + Google Gemini support (optional)
claude mcp add --transport stdio unified-mcp \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=google_ai \
-e GRAPHITI_EMBEDDER_PROVIDER=google_ai \
-e GOOGLE_API_KEY=your-gemini-api-key-here \
-e GRAPHITI_LLM_MODEL=gemini-1.5-pro \
-e GRAPHITI_EMBEDDER_MODEL=text-embedding-004 \
-- uv --directory /absolute/path/to/unified-mcp run server.py
# 6. Restart Claude Code and verify
# Ask Claude: "What tools do you have available?"
Manual Testing (optional):
# Run tests
pytest tests/ -v
# Start server directly
uv run server.py
Progressive Discovery Pattern
Traditional approach: Load all 20 tools upfront = 10,000 tokens
Our approach:
- Search (
search_tools) → Find relevant tools → ~50 tokens - Describe (
describe_tools) → Get full schemas → ~200 tokens/tool - Execute (
execute_tool) → Run the tool → Variable
Result: 98% token reduction 🎉
Architecture
Unified MCP Server
├── Progressive Discovery Engine
├── Dynamic Tool Registry
├── 5 Capability Modules
│ ├── Codanna (code understanding)
│ ├── Context7 (documentation)
│ ├── Playwright (browser automation)
│ ├── Claude-mem (memory)
│ └── Graphiti+LadybugDB (knowledge graph)
Installation
Requirements
- Python 3.12+ (for LadybugDB)
- Rust/Cargo (for Codanna) - Install Rust
- Node.js 18+ (for Context7/Playwright) - Install Node
- Claude Code (for Claude-mem plugin) - Install Claude Code
Claude-Mem Setup (Memory Capability)
Important: Claude-mem is a separate MCP server that runs as a Claude Code plugin. It must be installed before the unified-mcp memory capability will work.
Installation Steps:
Install via Claude Code Plugin Marketplace:
# In Claude Code terminal /plugin marketplace add thedotmack/claude-mem /plugin install claude-memRestart Claude Code - The plugin auto-starts the HTTP API on
http://localhost:37777Verify Installation:
# Check the service is running curl http://localhost:37777 # Or visit the web UI open http://localhost:37777Troubleshooting:
# Use the built-in troubleshooting skill /claude-mem:troubleshoot
What Gets Installed:
- HTTP API service on port 37777 (auto-managed by Bun)
- SQLite database at
~/.claude-mem/claude-mem.db - Web UI for browsing stored memories
- 5 lifecycle hooks for automatic memory capture
- Vector search via Chroma for semantic queries
Architecture:
- The unified-mcp server connects to claude-mem's HTTP API
- No direct npm installation needed - plugin handles all dependencies
- Auto-starts when Claude Code is running
- Stores observations across sessions with semantic search
For more details, see the claude-mem documentation.
Install Dependencies
# Python dependencies
pip install -r requirements.txt
# Codanna (code understanding)
cargo install codanna --all-features
# Git submodules (for Context7 and Playwright only - claude-mem is a plugin)
git submodule update --init --recursive
cd capabilities/context7 && npm install
cd ../playwright-mcp && npm install
# Note: claude-mem is installed as a Claude Code plugin (see above), not via npm
Codanna Auto-Indexing:
The server automatically creates and manages Codanna indexes:
- ✅ Automatic indexing on first run (indexes
src,lib,handlers,coredirectories) - ✅ No manual setup required - just install Codanna and start the server
- 🔄 Optional file watching - enable
watch_changes: trueinconfig/catalog.yamlto auto-reindex on file changes
To customize auto-indexing, edit config/catalog.yaml:
code_understanding:
auto_index: true # Auto-create index if missing
watch_changes: false # Watch files and re-index (requires watchdog)
index_dirs: # Directories to index
- src
- lib
- your-custom-dir
Usage
Start Server
python server.py
Server runs on stdio (MCP protocol).
Configure with Claude Code
Option 1: Using claude mcp add (Recommended)
Replace /absolute/path/to/unified-mcp with your actual installation path.
Basic Configuration (No Graphiti):
claude mcp add --transport stdio \
unified-mcp \
-- uv --directory /absolute/path/to/unified-mcp run server.py
With Graphiti + Google Gemini:
claude mcp add --transport stdio unified-mcp \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=google_ai \
-e GRAPHITI_EMBEDDER_PROVIDER=google_ai \
-e GOOGLE_API_KEY=your-gemini-api-key-here \
-e GRAPHITI_LLM_MODEL=gemini-1.5-pro \
-e GRAPHITI_EMBEDDER_MODEL=text-embedding-004 \
-- uv --directory /absolute/path/to/unified-mcp run server.py
With Graphiti + OpenAI:
claude mcp add --transport stdio unified-mcp \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=openai \
-e GRAPHITI_EMBEDDER_PROVIDER=openai \
-e OPENAI_API_KEY=sk-your-openai-key-here \
-e GRAPHITI_LLM_MODEL=gpt-4o \
-e GRAPHITI_EMBEDDER_MODEL=text-embedding-3-small \
-- uv --directory /absolute/path/to/unified-mcp run server.py
With Graphiti + Anthropic Claude + Voyage Embeddings:
claude mcp add --transport stdio unified-mcp \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=anthropic \
-e GRAPHITI_EMBEDDER_PROVIDER=voyage_ai \
-e ANTHROPIC_API_KEY=sk-ant-your-key-here \
-e VOYAGE_API_KEY=pa-your-voyage-key-here \
-e GRAPHITI_LLM_MODEL=claude-3-5-sonnet-20241022 \
-e GRAPHITI_EMBEDDER_MODEL=voyage-3 \
-- uv --directory /absolute/path/to/unified-mcp run server.py
With Graphiti + Local Ollama (Free):
claude mcp add --transport stdio unified-mcp \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=ollama \
-e GRAPHITI_EMBEDDER_PROVIDER=ollama \
-e OLLAMA_BASE_URL=http://localhost:11434 \
-e GRAPHITI_LLM_MODEL=llama3.1 \
-e GRAPHITI_EMBEDDER_MODEL=nomic-embed-text \
-- uv --directory /absolute/path/to/unified-mcp run server.py
Full Configuration Example (All Options):
claude mcp add --transport stdio unified-mcp \
-e CODANNA_INDEX_DIR=.codanna \
-e CLAUDE_MEM_API_URL=http://localhost:37777 \
-e GRAPHITI_ENABLED=true \
-e GRAPHITI_LLM_PROVIDER=google_ai \
-e GRAPHITI_EMBEDDER_PROVIDER=google_ai \
-e GOOGLE_API_KEY=your-gemini-api-key-here \
-e GRAPHITI_LLM_MODEL=gemini-1.5-pro \
-e GRAPHITI_EMBEDDER_MODEL=text-embedding-004 \
-e GRAPHITI_DB_PATH=.graphiti/ladybug.db \
-- uv --directory /absolute/path/to/unified-mcp run server.py
Option 2: Manual Configuration
Add to your MCP settings file (~/.config/claude/mcp_settings.json):
{
"mcpServers": {
"unified-mcp": {
"command": "uv",
"args": [
"--directory",
"/absolute/path/to/unified-mcp",
"run",
"server.py"
],
"env": {
"CODANNA_INDEX_DIR": "${workspaceFolder}/.codanna",
"CLAUDE_MEM_API_URL": "http://localhost:37777",
"GRAPHITI_ENABLED": "true",
"GOOGLE_API_KEY": "your-gemini-api-key-here"
}
}
}
}
With Graphiti + Google Gemini (Full Configuration):
{
"mcpServers": {
"unified-mcp": {
"command": "uv",
"args": [
"--directory",
"/absolute/path/to/unified-mcp",
"run",
"server.py"
],
"env": {
"CODANNA_INDEX_DIR": "${workspaceFolder}/.codanna",
"CLAUDE_MEM_API_URL": "http://localhost:37777",
"GRAPHITI_ENABLED": "true",
"GRAPHITI_LLM_PROVIDER": "google_ai",
"GRAPHITI_EMBEDDER_PROVIDER": "google_ai",
"GOOGLE_API_KEY": "your-gemini-api-key-here",
"GRAPHITI_LLM_MODEL": "gemini-1.5-pro",
"GRAPHITI_EMBEDDER_MODEL": "text-embedding-004"
}
}
}
}
Environment Variables:
| Variable | Required | Default | Description |
|---|---|---|---|
CODANNA_INDEX_DIR |
No | .codanna |
Codanna index directory |
CLAUDE_MEM_API_URL |
No | http://localhost:37777 |
Claude-mem API endpoint |
GRAPHITI_ENABLED |
No | false |
Enable Graphiti knowledge graph |
GRAPHITI_LLM_PROVIDER |
No | openai |
LLM provider: openai, anthropic, azure_openai, ollama, google_ai |
GRAPHITI_EMBEDDER_PROVIDER |
No | openai |
Embedder: openai, voyage_ai, azure_openai, ollama, google_ai |
GRAPHITI_LLM_MODEL |
No | (varies) | Model name (e.g., gemini-2.5-flash, gpt-4o, claude-3-5-sonnet-20241022) |
GRAPHITI_EMBEDDER_MODEL |
No | (varies) | Embedder model (e.g., text-embedding-004, text-embedding-3-small) |
GRAPHITI_RERANKER_MODEL |
No | gemini-2.5-flash-lite |
Reranker model (Gemini only) |
GOOGLE_API_KEY |
If using Gemini | - | Google AI API key for Gemini |
OPENAI_API_KEY |
If using OpenAI | - | OpenAI API key |
ANTHROPIC_API_KEY |
If using Claude | - | Anthropic API key |
Playwright Browser Configuration:
Browser automation runs with headless=false by default (shows browser window). Configure in config/catalog.yaml:
browser_automation:
headless: false # Set to true to run browser in background
Restart Claude Code to load the server.
Verify it's working:
- Ask Claude: "What tools do you have available?"
- You should see tools like
search_tools,describe_tools,execute_tool, etc.
Configuration
Edit config/catalog.yaml:
capabilities:
code_understanding:
enabled: true # Toggle capabilities
tools: [search_code, get_call_graph, ...]
Tools Available
Progressive Discovery (Meta-tools):
search_tools(query)- Find relevant toolsdescribe_tools([names])- Get full schemasexecute_tool(name, args)- Run a tool
Capability Management:
list_capabilities()- See all capabilitiesenable_capability(name)- Enable at runtimedisable_capability(name)- Disable at runtime
Code Understanding (Codanna - Phase 2):
search_code- Semantic code searchget_call_graph- Function relationshipsfind_symbol- Symbol lookup (sub-10ms)find_implementations- Find implementations
Documentation (Context7 - Phase 3):
resolve_library_id- Resolve library nameget_library_docs- Fetch documentation
Browser Automation (Playwright - Phase 3):
playwright_navigate- Navigate to URLplaywright_screenshot- Take screenshotplaywright_click- Click elementplaywright_fill- Fill form fieldplaywright_evaluate- Execute JavaScript
Memory (Claude-mem - Phase 4):
mem_search- Search observationsmem_get_observation- Get by IDmem_recent_context- Recent sessionsmem_timeline- Timeline view
Knowledge Graph (Graphiti - Phase 4):
store_insight- Store knowledgesearch_insights- Search insightsquery_graph- Cypher queriesadd_episode- Add episode
Development
Run Tests
# All tests
pytest tests/ -v
# Unit tests only
pytest tests/unit/ -v
# With coverage
pytest tests/ --cov=. --cov-report=term-missing
# Skip slow tests
pytest tests/ -m "not slow"
Project Structure
unified-mcp/
├── server.py # Main MCP server
├── config/
│ └── catalog.yaml # Capability configuration
├── core/
│ ├── dynamic_registry.py
│ ├── progressive_discovery.py
│ └── capability_loader.py
├── handlers/ # Capability handlers
├── capabilities/ # Git submodules
├── tests/ # Comprehensive test suite
└── docs/ # Documentation
Implementation Status
- ✅ Phase 1: Foundation (Dynamic registry, progressive discovery)
- ✅ Phase 2: Codanna integration (4 code understanding tools)
- ✅ Phase 3: Context7 + Playwright (7 tools: docs + browser automation)
- ✅ Phase 4: Claude-mem + Graphiti (8 tools: memory + knowledge graph)
- ✅ Phase 5: Comprehensive testing (Unit + Integration + E2E, 80%+ coverage, CI/CD)
- ✅ Phase 6: Documentation (Complete)
License
Apache 2.0
References
Installing Unified Dynamic Server
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/sasajib/unified-mcpFAQ
Is Unified Dynamic Server MCP free?
Yes, Unified Dynamic Server MCP is free — one-click install via Unyly at no cost.
Does Unified Dynamic Server need an API key?
No, Unified Dynamic Server runs without API keys or environment variables.
Is Unified Dynamic Server hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Unified Dynamic Server in Claude Desktop, Claude Code or Cursor?
Open Unified Dynamic Server on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
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