Data Analytics MCP Toolkit
An MCP server that provides data visualization and machine learning tools, featuring automated intent-based pipeline routing for data cleaning and model training. It enables LLMs to process CSV or JSON data to generate visual charts, perform regressions, or execute clustering analysis.
README
Data Analytics MCP Toolkit
An MCP (Model Context Protocol) server that exposes data visualization and simple machine learning tools. When an external LLM calls the toolkit, it can use the high-level run_analytics tool to describe intent and data; the server selects and runs the appropriate pipeline (visualization or ML) and returns charts or metrics.
Features
- Data:
load_data(CSV/JSON string or URL),clean_data(drop NA, optional normalize) - Visualization:
plot_bar,plot_line,plot_scatter,plot_histogram,plot_box,plot_heatmap(return base64 PNG) - ML:
train_test_split,train_linear_regression,train_logistic_regression,train_kmeans, plusevaluate_regression,evaluate_classification,evaluate_clustering - Pipeline:
run_analytics(intent, data_source)— intent-based routing to the right pipeline
Install
cd /path/to/trying_IBM_MCP
pip install -e .
# or
pip install -r requirements.txt
From the project root, ensure src is on PYTHONPATH when running the server (or install in editable mode).
Run the MCP server
stdio (for Cursor / IDE):
# From project root, with src on path
PYTHONPATH=src python -m data_analytics_mcp.server
Or with uv:
uv run --project . python -m data_analytics_mcp.server
(If using a pyproject.toml that sets packages under src, install first with pip install -e . then run python -m data_analytics_mcp.server from the repo root.)
Cursor MCP configuration
Add the server to Cursor (e.g. in Cursor Settings → MCP, or project .cursor/mcp.json):
{
"mcpServers": {
"data-analytics": {
"command": "python",
"args": ["-m", "data_analytics_mcp.server"],
"cwd": "/path/to/trying_IBM_MCP",
"env": { "PYTHONPATH": "src" }
}
}
}
Use the full path for cwd. If you installed the package (pip install -e .), you can use:
{
"mcpServers": {
"data-analytics": {
"command": "python",
"args": ["-m", "data_analytics_mcp.server"],
"cwd": "/Users/jerrychen/projects/trying_IBM_MCP"
}
}
}
Usage
- One-shot: Call
run_analyticswith a natural-language intent (e.g. "show distribution of sales", "predict price from square_feet", "cluster into 4 groups") and the data as CSV/JSON string or URL. The server returns either a chart (base64 image) or ML metrics and a short model summary. - Step-by-step: Use
load_data→ getdata_id→ then callclean_data,plot_*, ortrain_test_split→train_*→evaluate_*as needed. Use resourcesanalytics://pipelinesandanalytics://pipelines/visualization(etc.) to see pipeline descriptions.
Project layout
src/data_analytics_mcp/
server.py # MCP app, tools, resources
pipeline.py # Intent → pipeline; execute_pipeline
data.py # load_data, clean_data
viz.py # Plot functions → base64 PNG
ml.py # Train/evaluate regression, classification, clustering
store.py # In-memory session store
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