Vibe Preprocessing and Analysis MCP Server for CSV files
@mudit14224
About Vibe Preprocessing and Analysis MCP Server for CSV files
A powerful MCP (Model Control Protocol) server for preprocessing and analyzing CSV files. This server provides a suite of tools for data manipulation, visualization, and analysis.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"Vibe-Data-Analysis": {
"command": "uv",
"args": [
"run",
"mcp"
]
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Vibe Preprocessing and Analysis MCP Server for CSV files?
Vibe Preprocessing and Analysis MCP Server for CSV files is an MCP (Model Control Protocol) server that provides tools for loading, cleaning, analyzing, and visualizing CSV data. It integrates with Claude Desktop and other MCP hosts, and is built on Python with pandas, matplotlib, seaborn, and numpy. It is intended for users who need to preprocess tabular data and generate plots directly through an MCP interface.
How to use Vibe Preprocessing and Analysis MCP Server for CSV files?
Install dependencies with uv add "mcp[cli]" pandas matplotlib seaborn numpy (or pip), then run mcp install server.py to register the server in Claude Desktop. Use mcp dev server.py to test with the MCP Inspector. Set the working directory via the set_work_dir tool or the WORK_DIR environment variable. Use the provided tools in natural language or through the inspector to load, preprocess, analyze, and visualize CSV files.
Key features of Vibe Preprocessing and Analysis MCP Server for CSV files
- Load CSV files and manage working directories
- Handle null values with multiple strategies (remove, fill, forward/backward fill)
- Drop and rename columns, run custom DataFrame editing code
- Generate statistical summaries and correlation matrices with visualizations
- Create nine types of plots (line, bar, scatter, histogram, box, violin, pie, count, KDE)
- Save processed DataFrames and visualizations to the working directory
Use cases of Vibe Preprocessing and Analysis MCP Server for CSV files
- Clean and prepare messy CSV datasets by handling mixed data types and null values
- Explore data structure and generate summary statistics and correlation heatmaps
- Create publication-ready visualizations for exploratory data analysis
- Automate custom data transformation and plotting logic through code execution
- Integrate CSV data tasks into an MCP-enabled assistant workflow (e.g., Claude Desktop)
FAQ from Vibe Preprocessing and Analysis MCP Server for CSV files
What are the required dependencies?
Python 3.x, pandas, matplotlib, seaborn, numpy, and the mcp[cli] package. The recommended package manager is uv, but pip also works.
How do I set the working directory for file operations?
Use the set_work_dir(new_work_dir) tool or set the WORK_DIR environment variable before starting the server.
Which plot types are supported?
The plot_graph tool supports: line, bar, scatter, hist (histogram with KDE), box, violin, pie, count, and kde.
How can I handle null values in my dataset?
Use the handle_null_values(strategy, columns) tool. Supported strategies: remove rows, fill with mean, median, or mode, forward fill, backward fill, or fill with a constant value.
Can I run my own code for data manipulation or graphing?
Yes. Use run_custom_df_edit_code(code) to modify the DataFrame and run_custom_graph_code(code) to generate custom plots. Errors in custom code are caught and reported.
More Data & Analytics MCP servers
MCP Deep Web Research Server (v0.3.0)
qpd-vEnhanced MCP server for deep web research
Bright Data MCP
brightdata-comA powerful Model Context Protocol (MCP) server that provides an all-in-one solution for public web access.
MCP.science: Open Source MCP Servers for Scientific Research 🔍📚
pathintegral-instituteOpen Source MCP Servers for Scientific Research
PubMed Analysis MCP Server
DarkroasterA PubMed MCP server.
Web3 Research MCP
aaronjmarsDeep Research for crypto - free & fully local
Comments