Langfuse Trace Fetcher

Langfuse Trace Fetcher

Fetches Langfuse observability traces directly into a VS Code coding agent's context, enabling querying and viewing trace data through natural language.

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README

Langfuse Trace Fetcher — MCP Server for VS Code

Version 0.1.0 · Fetch Langfuse observability traces directly into your coding agent's context.

What It Does

This is a Model Context Protocol (MCP) server that connects your VS Code coding agent (Gemini Code Assist) to a Langfuse instance. It exposes three tools:

Tool Description
fetch_langfuse_traces Fetch a filtered, paginated list of traces
get_langfuse_trace_detail Fetch full detail for a single trace (including observations, scores)
list_langfuse_trace_filters Show available filter fields and usage examples

Installation

From PyPI (Recommended)

pip install langfuse-traces-mcp

From Source

# Clone the repository
git clone https://github.com/yourusername/langfuse-traces-mcp.git
cd langfuse-traces-mcp

# Install in development mode (includes test dependencies)
pip install -e ".[dev]"

Prerequisites

  • Python 3.10+
  • VS Code with Gemini Code Assist extension (Agent Mode enabled)
  • Langfuse instance — cloud (cloud.langfuse.com) or self-hosted

VS Code Setup

  1. Install the package: pip install langfuse-traces-mcp

  2. Add the MCP server configuration to your VS Code settings. Open VS Code settings (Ctrl/Cmd + ,) and search for "Gemini Code Assist". In the settings JSON, add:

{
  "mcpServers": {
    "langfuse-traces": {
      "command": "langfuse-traces-mcp"
    }
  }
}
  1. Reload VS Code after configuration.
  2. Open Gemini Code Assist chat and toggle Agent Mode ON.
  3. The langfuse-traces tools should now be available.

Usage

Once configured, you can ask your coding agent questions like:

  • "Show me traces from production in the last hour"
  • "Get details for trace ID abc-123-xyz"
  • "List traces with errors tagged as 'critical'"
  • "Show me traces from user 'john.doe' in the staging environment"

The agent will fetch and display formatted trace data directly in the conversation.

Available Filters

Parameter Type Default Description
name string Filter by trace name
user_id string Filter by user ID
session_id string Filter by session ID
tags list Filter by tags
version string Filter by app version
release string Filter by release
environment string Filter by environment
from_timestamp string ISO 8601 start time
to_timestamp string ISO 8601 end time
limit int 20 Max traces (1–100)
page int 1 Page number

Example Chat Usage

In VS Code Gemini Code Assist chat (with Agent Mode on):

Fetch the last 5 production traces from my Langfuse instance:
- Public key: pk-lf-abc123
- Secret key: sk-lf-xyz789
- Host: https://cloud.langfuse.com
- Environment: production
- Limit: 5

The agent will call fetch_langfuse_traces with those parameters and return formatted trace data.

Running Tests

# Install dev dependencies (if not already)
pip install -e ".[dev]"

# Run all tests
pytest tests/ -v

# Run a specific test file
pytest tests/test_models.py -v
pytest tests/test_client.py -v
pytest tests/test_server.py -v

Project Structure

├── pyproject.toml                  # Project metadata & dependencies (v0.1.0)
├── README.md                       # This file
├── .gemini/
│   └── settings.json               # MCP server registration for VS Code
├── src/
│   └── langfuse_traces_mcp/
│       ├── __init__.py              # Version export
│       ├── server.py                # FastMCP server + 3 tool definitions
│       ├── client.py                # Async HTTP client for Langfuse API
│       └── models.py                # Pydantic models (filters, credentials)
└── tests/
    ├── conftest.py                  # Shared test fixtures & mock data
    ├── test_models.py               # Filter & credential validation tests
    ├── test_client.py               # REST client tests (mocked HTTP)
    └── test_server.py               # MCP tool integration tests

Versioning

This project follows Semantic Versioning 2.0:

  • PATCH (0.1.x) — Bug fixes
  • MINOR (0.x.0) — New filters, tools, or features
  • MAJOR (x.0.0) — Breaking changes

License

MIT

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