LangSmith MCP Server
Enables read-only querying of LangSmith traces including runs, children, and URLs without extra instrumentation.
README
LangSmith MCP Server
FastMCP-based MCP server exposing LangSmith read-only tools for querying existing traces (runs, children, URLs) without extra instrumentation.
Tools
ls_list_runs(project_name, is_root=True, limit=50, select?)— List recent runs with filteringls_read_run(run_id, hydrate_children=False, child_limit=100)— Read single run with optional childrenls_get_run_url(run_id)— Generate shareable LangSmith URLsls_list_children(parent_run_id, limit=100)— List child spans for parent run
Requirements
- Python 3.10+
LANGSMITH_API_KEYin your environment- Optional:
LANGSMITH_ENDPOINTfor on-prem deployments
Quick Start
# Clone and setup
git clone <repo-url>
cd langsmith-mcp-server
# Install dependencies (uv manages environment automatically)
uv sync
export LANGSMITH_API_KEY="lsv2_pt_..."
# Run smoke test
uv run python tests/smoke_test.py
# Run unit tests
uv run pytest tests/test_server.py -v
Run as MCP Server
Local Development
Recommended (using fastmcp.json for configuration):
# FastMCP auto-detects fastmcp.json in current directory
fastmcp run
# Or via uv
uv run fastmcp run fastmcp.json
Alternative (direct Python):
uv run python src/server.py
FastMCP Cloud Deployment
Deploy to FastMCP Cloud for free hosting:
- Push to GitHub:
don-aie-cohort8/langsmith-mcp-server - Sign in to https://fastmcp.cloud
- Create new project:
- Repository:
don-aie-cohort8/langsmith-mcp-server - Branch:
main - Entrypoint:
src/server.py:app
- Repository:
- Add environment variable:
LANGSMITH_API_KEY - Deploy!
Auto-deploys on every push to main.
MCP Client Configuration
Local Development
Add to your MCP client config (Claude Desktop, Claude Code, etc.):
{
"mcpServers": {
"langsmith-local": {
"command": "uv",
"args": [
"run",
"--with", "fastmcp",
"fastmcp",
"run",
"/absolute/path/to/langsmith-mcp-server/src/server.py:app"
]
}
}
}
Note: Replace /absolute/path/to/langsmith-mcp-server with your actual project path.
Why this pattern?
- Uses
uv run --with fastmcpper official FastMCP recommendations - Creates isolated environment with clean dependency management
- Avoids dependency on global
fastmcpinstallation - Runtime dependencies pulled from
pyproject.tomlvia editable install - No need to list all dependencies in MCP config
FastMCP Cloud
For cloud deployment:
{
"mcpServers": {
"langsmith-cloud": {
"url": "https://langsmith-mcp-server.fastmcp.app/mcp"
}
}
}
Project Structure
Following FastMCP and Python best practices:
langsmith-mcp-server/
├── src/
│ └── server.py # MCP server implementation (~190 lines)
├── tests/
│ ├── smoke_test.py # Startup validation
│ ├── test_server.py # Unit tests
│ ├── test_integration.py # Integration tests
│ └── README.md # Testing documentation
├── scripts/
│ ├── integration_demo.py # Demo script for testing tools
│ └── claude-agent-sdk-testing/ # Claude Agent SDK integration
├── docs/
│ ├── PRODUCTION_READINESS.md # Production deployment guide
│ ├── MCP_FIX_REPORT.md # Historical fix documentation
│ ├── SERIALIZATION_FIX.md # Pydantic compatibility fixes
│ └── TESTING_REPORT.md # Testing results
├── notebooks/ # Jupyter notebooks for exploration
├── fastmcp.json # Deployment configuration
├── pyproject.toml # Package metadata and dependencies
└── README.md # This file
Dependency Management
This project uses a dual-file approach for dependencies:
- pyproject.toml: Defines all Python dependencies (runtime + dev)
- fastmcp.json: Deployment configuration that references pyproject.toml via
"editable": ["."]
When you run uv sync, dependencies are installed from pyproject.toml. FastMCP automatically loads them via the editable install.
Usage Tips
- Use
select=["id","name","error","extra"]for minimal payloads - LangGraph auto-instrumented config appears under
run.extra(e.g.,graph_id,thread_id,research_model) - All tools are read-only by design (no create/update/delete operations)
References
Client:
Server:
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