io.github.composable-delivery/snowfakery-mcp
编码与调试by composable-delivery
MCP server for authoring, analyzing, debugging, and running Snowfakery recipes
什么是 io.github.composable-delivery/snowfakery-mcp?
MCP server for authoring, analyzing, debugging, and running Snowfakery recipes
README
Snowfakery MCP Server
Power up your AI workflows with Snowfakery data generation — Use Claude, ChatGPT, and other AI assistants to author, debug, and run data recipes through the Model Context Protocol.
MCP Registry
mcp-name: io.github.composable-delivery/snowfakery-mcp
What is this?
Snowfakery is a YAML-based tool for programmatically generating test data. This MCP server connects Snowfakery to AI assistants, letting you:
- Draft recipes with AI assistance backed by real Snowfakery docs and examples
- Validate recipes before running them with detailed error feedback
- Execute recipes and iterate on results interactively
- Debug issues with static analysis and recipe inspection
- Generate Salesforce mappings for CumulusCI workflows
Perfect for teams that need realistic test data—from Salesforce admins to developers building data pipelines.
Quick Start
Install uv
We recommend using uv for installs and for running from source.
-
Install
uv(macOS/Linux):bashcurl -LsSf https://astral.sh/uv/install.sh | sh -
Install
uv(Windows PowerShell):powershellpowershell -ExecutionPolicy ByPass -c "irm https://astral.sh/uv/install.ps1 | iex"
See the official uv install docs: https://docs.astral.sh/uv/getting-started/installation/
Claude Desktop (recommended)
For Claude Desktop, prefer using the .mcpb bundle from Releases:
- Download the latest
.mcpbfrom https://github.com/composable-delivery/snowfakery-mcp/releases - Add the bundle in Claude Desktop as an MCP server bundle
This bundle includes the pinned runtime metadata (uv.lock, manifest.json) and is the easiest way to get a reproducible setup.
Install & Run (CLI)
# Recommended: isolated install
uv tool install snowfakery-mcp
# Then run the server
snowfakery-mcp
Or from source:
git clone https://github.com/composable-delivery/snowfakery-mcp.git
cd snowfakery-mcp
uv sync
uv run snowfakery-mcp
Connect to Claude (Desktop)
Add to your Claude Desktop claude_desktop_config.json:
{
"mcpServers": {
"snowfakery-mcp": {
"command": "snowfakery-mcp"
}
}
}
Then ask Claude:
"Show me an example Snowfakery recipe" or "Help me write a recipe to generate 100 Salesforce accounts"
Features
Resources — Access docs, examples, and schemas:
- Snowfakery documentation and recipe examples
- JSON schema for recipe validation
- Run outputs and artifacts
Tools — Interact with recipes:
- Validate & analyze recipes (catch errors early)
- Run recipes and capture output
- List & retrieve example recipes
- Generate CumulusCI mapping files
Learn More
- MCP_SERVER_SPEC.md — detailed design and tool catalog
- Snowfakery docs — recipe language reference
- Contributing — how to contribute
Community
We want this to be welcoming at any level. Questions, ideas, and contributions are always welcome!
- Questions & ideas? Open a GitHub Discussion
- Found a bug? Open an Issue with a minimal recipe
- Want to contribute? See CONTRIBUTING.md
- Security concern? See SECURITY.md
Development
# Install dev dependencies
uv sync --all-groups
# Run tests
uv run pytest
# Type check
uv run mypy snowfakery_mcp
# Lint & format
uv run ruff check snowfakery_mcp tests scripts evals
uv run ruff format snowfakery_mcp tests scripts evals
Evals (Agentic Testing)
This repo includes inspect-ai tasks for testing the MCP server with AI models:
# Install eval dependencies
uv sync --group evals
# Run evaluation
uv run inspect eval evals/inspect_tasks.py@snowfakery_mcp_agentic --model openai/gpt-4o-mini
See evals/ for more examples and troubleshooting.
Notes
- The repo includes the upstream Snowfakery repo as a git submodule (
Snowfakery/) for development - When running from source, use
uv run ...to ensure the pinned environment - PyPI installs use bundled docs/examples (no submodule required)
Releases
See GitHub Releases for sdist, wheel, and .mcpb bundles (recommended for Claude Desktop).
常见问题
io.github.composable-delivery/snowfakery-mcp 是什么?
MCP server for authoring, analyzing, debugging, and running Snowfakery recipes
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