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MCP server for exploratory data analysis

Project description

eda-mcp

An MCP server for exploratory data analysis. Point it at a dataset and let your AI assistant do the analysis — summary statistics, diagnostic plots, correlation analysis, and full markdown reports, all from a single conversation.

Built by MLMecham.


Quickstart

Run instantly with no install step:

uvx eda-mcp

Or install permanently:

pip install eda-mcp

Connecting to Claude Desktop

Add this to your claude_desktop_config.json:

Mac: ~/Library/Application Support/Claude/claude_desktop_config.json Windows: %APPDATA%\Claude\claude_desktop_config.json

{
  "mcpServers": {
    "eda-mcp": {
      "command": "uvx",
      "args": ["eda-mcp"]
    }
  }
}

Restart Claude Desktop. The tools will appear automatically.

Tip: Add --refresh to always pull the latest version from PyPI on startup:

"args": ["--refresh", "eda-mcp"]

Troubleshooting

Tools not appearing after install or update

uvx caches the installed version and won't update automatically. Force a refresh:

uvx --refresh eda-mcp --help

Then fully quit and reopen Claude Desktop (not just close the window).

Check server logs

If the tools still don't appear, check the MCP server logs:

  • Windows: %APPDATA%\Claude\logs\mcp-server-eda-mcp.log
  • Mac: ~/Library/Logs/Claude/mcp-server-eda-mcp.log

Tools

Tool Description
load_dataset Load a file and get column names, types, classifications, and missing value counts. Start here.
query_dataset Run a DuckDB SQL query and return the same overview as load_dataset. Supports local files, remote sources (S3, GCS, HTTP), SQLite, and cross-file joins. Result is saved to Parquet for use with other tools.
get_column_summary Full statistics for a single column — five-number summary, skewness, kurtosis, outlier count, normality test. Accepts an optional classification override.
get_all_summaries Summary statistics for every column at once, keyed by column name.
get_diagnostic_plot Generate a diagnostic plot for a single column. Plot type is auto-selected by classification.
get_correlations Pearson and Spearman correlation matrices, a heatmap, and scatter plots for strongly correlated pairs.
generate_report Full EDA report — dataset overview, data quality flags, per-column summaries with plots, and correlation analysis. Saved as markdown.

Supported File Formats

Format Extension
CSV .csv
Parquet .parquet
Excel .xlsx, .xls
JSON .json
Newline-delimited JSON .ndjson
Avro .avro
SQLite .db, .sqlite
DuckDB .duckdb

String columns are automatically coerced to better types on load (integers, floats, dates) where unambiguous.

For SQLite and DuckDB files with multiple tables, pass the table parameter to specify which one. If the database has exactly one table it is loaded automatically.

Querying with SQL

Use query_dataset for SQL-based loading, remote sources, or cross-file joins:

-- Filter before analysis
SELECT * FROM 's3://bucket/sales.parquet' WHERE year = 2024

-- Cross-file join
SELECT t.*, p.bst FROM 'trainers.csv' t JOIN 'pokemon.parquet' p ON t.pokemon = p.name

-- Query a DuckDB database
SELECT * FROM my_table  -- with db_path pointing to your .duckdb file

Column Classifications

Every column is automatically classified before analysis:

Classification Description
continuous Floats, or integers with more than 20 unique values
discrete Integers with 20 or fewer unique values
categorical Strings with low cardinality (< 5% unique ratio or ≤ 10 unique values)
binary Booleans, or any column with exactly 2 unique non-null values
temporal Date, Datetime, or Duration columns
high_cardinality Likely identifiers, UUIDs, or free text — statistical summary skipped

Using as a Python Library

The core functions are also importable directly:

from eda_mcp import load_file, classify_column, get_summary, generate_markdown_report

df = load_file("data/sales.parquet")
summary = get_summary(df["revenue"])
generate_markdown_report(df, "data/sales.parquet", "output/")

Example Prompts

Once connected to Claude:

Analyze this dataset: /path/to/data.csv
What columns in sales.parquet have missing values?
Is age correlated with income in this file?
Generate a full EDA report for customers.xlsx

Requirements

  • Python 3.11+
  • Dependencies are installed automatically via uvx or pip

License

MIT

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