Stats Compass turns Claude and other MCP clients into data analysts by exposing 50+ pandas-powered tools through the Model Context Protocol. You get the full workflow: load CSV and Excel files (local or via browser upload in server mode), clean with deduplication and outlier handling, transform with filters and pivots, run hypothesis tests and correlations, generate matplotlib visualizations, and train classification or regression models. It shines when you need to explore messy datasets without writing code. The prompting pattern matters here: prefix requests with "Use stats compass to..." so your LLM routes to these tools instead of trying to write Python. Works best with Claude Desktop, supports remote deployment with Docker for team access, and can export results as downloadable files.
pip install stats-compass-mcp
stats-compass-mcp install --client claude
stats-compass-mcp install --client vscode
claude mcp add stats-compass -- uvx stats-compass-mcp run
Note: The first connection may fail while
uvxdownloads the package. If this happens, disable and re-enable Stats Compass in your MCP settings — subsequent connections will be instant.
Restart your client and start asking questions about your data.
| Category | Examples |
|---|---|
| Data Loading | Load CSV/Excel, sample datasets, list DataFrames |
| Cleaning | Drop nulls, impute, dedupe, handle outliers |
| Transforms | Filter, groupby, pivot, encode, add columns |
| EDA | Describe, correlations, hypothesis tests, data quality |
| Visualization | Histograms, scatter, bar, ROC curves, confusion matrix |
| ML Workflows | Classification, regression, time series forecasting |
Run stats-compass-mcp list-tools to see all available tools.
Start your message with "Use stats compass to..." — this tells the AI to use the Stats Compass tools instead of trying to write code or use other methods.
Use stats compass to load ~/Downloads/sales.csv and run EDA on it
Use stats compass to find my CSV files in Downloads
Use stats compass to clean the dataset and handle missing values
Use stats compass to create a histogram of the price column
Use stats compass to test if there's a significant difference in scores between group A and B
Use stats compass to train a classification model to predict churn
Tip: Without this prefix, some AI clients may try to write Python code or use shell commands instead of the Stats Compass tools — especially for tasks like finding files on your machine.
Local mode: Start with "Use stats compass to load..." and provide the file path or folder.
Use stats compass to load the CSV at ~/Downloads/sales.csv
Use stats compass to find my data files in ~/Documents
Remote/HTTP mode: Use the upload feature (see below).
For Docker deployments or multi-client setups:
stats-compass-mcp serve --port 8000
When running remotely, users can upload files via browser:
You: I want to upload a file
AI: Open this link to upload: http://localhost:8000/upload?session_id=abc123
[Upload in browser]
You: I uploaded sales.csv
AI: ✅ Loaded sales.csv (1,000 rows × 8 columns)
Export DataFrames, plots, and trained models:
You: Save the cleaned data as a CSV
AI: ✅ Saved. Download: http://localhost:8000/exports/.../cleaned_data.csv
VS Code (native HTTP support):
{
"servers": {
"stats-compass": { "url": "http://localhost:8000/mcp" }
}
}
Claude Desktop (via mcp-proxy):
{
"mcpServers": {
"stats-compass": {
"command": "uvx",
"args": ["mcp-proxy", "--transport", "streamablehttp", "http://localhost:8000/mcp"]
}
}
}
docker run -p 8000:8000 -e STATS_COMPASS_SERVER_URL=https://your-domain.com stats-compass-mcp
| Client | Status |
|---|---|
| Claude Desktop | ✅ Recommended |
| VS Code Copilot | ✅ Supported |
| Claude Code CLI | ✅ Supported |
| Cursor | ✅ Supported |
| GPT / Gemini | ⚠️ Partial |
| Variable | Default | Description |
|---|---|---|
STATS_COMPASS_PORT | 8000 | Server port |
STATS_COMPASS_SERVER_URL | http://localhost:8000 | Base URL for upload/download links |
STATS_COMPASS_MAX_UPLOAD_MB | 50 | Max upload size |
See CONTRIBUTING.md for development setup.
Landing page template by ArtleSa (u/ArtleSa)
MIT
com.mcparmory/google-sheets
domdomegg/google-sheets-mcp
henilcalagiya/google-sheets-mcp
cct15/war-dashboard-data
moooonad/mcp-google-sheets-full
io.github.br0ski777/csv-to-json