VisiData MCP Server
Interact with VisiData, a terminal spreadsheet multitool for discovering and arranging tabular data in various formats like CSV, JSON, and Excel.
VisiData MCP Server
A Model Context Protocol (MCP) server that provides access to VisiData functionality with enhanced data visualization and analysis capabilities.
🚀 Features
📊 Data Visualization
create_correlation_heatmap- Generate correlation matrices with beautiful heatmap visualizationscreate_distribution_plots- Create statistical distribution plots (histogram, box, violin, kde)create_graph- Custom graphs (scatter, line, bar, histogram) with categorical grouping support
🧠 Advanced Skills Analysis
parse_skills_column- Parse comma-separated skills into individual skills with one-hot encodinganalyze_skills_by_location- Comprehensive skills frequency and distribution analysis by locationcreate_skills_location_heatmap- Visual heatmap showing skills distribution across locationsanalyze_salary_by_location_and_skills- Advanced salary statistics by location and skills combination
🔧 Core Data Tools
load_data- Load and inspect data files from various formatsget_data_sample- Get a preview of your data with configurable row countanalyze_data- Perform comprehensive data analysis with column types and statisticsconvert_data- Convert between different data formats (CSV ↔ JSON ↔ Excel, etc.)filter_data- Filter data based on conditions (equals, contains, greater/less than)get_column_stats- Get detailed statistics for specific columnssort_data- Sort data by any column in ascending or descending order
📦 Installation
🚀 Quick Install (Recommended)
npm install -g @moeloubani/visidata-mcp@beta
Prerequisites: Python 3.10+ (the installer will check and guide you if needed)
Alternative: Python Install
pip install visidata-mcp
Development Install
git clone https://github.com/moeloubani/visidata-mcp.git
cd visidata-mcp
pip install -e .
⚙️ Configuration
Claude Desktop
Add to ~/Library/Application Support/Claude/claude_desktop_config.json:
{
"mcpServers": {
"visidata": {
"command": "visidata-mcp"
}
}
}
Cursor AI
Create .cursor/mcp.json in your project:
{
"mcpServers": {
"visidata": {
"command": "visidata-mcp"
}
}
}
Restart your AI application after configuration changes.
🎯 Example Usage
Data Visualization
# Create a correlation heatmap
create_correlation_heatmap("sales_data.csv", "correlation_heatmap.png")
# Generate distribution plots for all numeric columns
create_distribution_plots("sales_data.csv", "distributions.png", plot_type="histogram")
# Create a scatter plot with categorical grouping
create_graph("sales_data.csv", "price", "sales", "scatter_plot.png",
graph_type="scatter", category_column="region")
Skills Analysis
# Parse comma-separated skills into individual columns
parse_skills_column("jobs.csv", "required_skills", "skills_parsed.csv")
# Analyze skills distribution by location
analyze_skills_by_location("jobs.csv", "required_skills", "location", "skills_analysis.json")
# Create skills-location heatmap
create_skills_location_heatmap("jobs.csv", "required_skills", "location", "skills_heatmap.png")
# Comprehensive salary analysis
analyze_salary_by_location_and_skills("jobs.csv", "salary", "location", "required_skills", "salary_analysis.xlsx")
Basic Data Operations
# Load and analyze data
load_data("data.csv")
get_data_sample("data.csv", 10)
analyze_data("data.csv")
# Transform data
convert_data("data.csv", "data.json")
filter_data("data.csv", "revenue", "greater_than", "1000", "high_revenue.csv")
sort_data("data.csv", "date", False, "sorted_data.csv")
📊 Supported Data Formats
- Spreadsheets: CSV, TSV, Excel (XLSX/XLS)
- Structured Data: JSON, JSONL, XML, YAML
- Databases: SQLite
- Scientific: HDF5, Parquet, Arrow
- Archives: ZIP, TAR, GZ, BZ2, XZ
- Web: HTML tables
🔧 Troubleshooting
Common Issues
"No module named 'matplotlib'"
- Make sure you're using the correct MCP server path
- For local development:
/path/to/visidata-mcp/venv/bin/visidata-mcp - Restart your AI application after configuration changes
"0 tools available"
- Verify the MCP server path in your configuration
- Check that Python 3.10+ is installed
- Restart your AI application completely
Verification
Test your installation:
# Check if server starts
visidata-mcp
# Test with Python
python -c "from visidata_mcp.server import main; print('✅ Server ready')"
🎨 Key Features
- ✅ Complete visualization support with matplotlib, seaborn, and scipy
- ✅ Advanced skills analysis for job market and HR data
- ✅ Skills-location correlation analysis and visualization
- ✅ Salary analysis by location and skills combination
- ✅ Enhanced error handling with dependency validation
- ✅ Publication-ready visualizations (300 DPI PNG output)
📈 Use Cases
Job Market Analysis
- Skills demand analysis by geographic location
- Salary benchmarking across locations and skill sets
- Market trend visualization with correlation analysis
Data Science Workflows
- Complete statistical analysis pipeline
- Publication-ready visualizations
- Advanced text processing for categorical data
Business Intelligence
- Location-based performance analysis
- Skills gap identification
- Compensation analysis and benchmarking
🛠 Development
# Install for development
git clone https://github.com/moeloubani/visidata-mcp.git
cd visidata-mcp
pip install -e .
# Build package
python -m build
# Run tests
python -c "from visidata_mcp.server import main; print('✅ Ready')"
📄 License
MIT License - see LICENSE for details.
🔗 Links
相關伺服器
Kone.vc
贊助Monetize your AI agent with contextual product recommendations
Huuh MCP Server
Integrates with the huuh.me platform to enable collaborative AI knowledge bases and personas.
Amazon
Interact with Amazon services for product search, cart management, and viewing order history.
AI MUSIC MCP
The World's First AI Music MCP Beyond images and video, your agent can now generate music.
Jira MCP Server by CData
A read-only MCP server for Jira, enabling LLMs to query live Jira data using the CData JDBC Driver.
PPT-Agent
Create, edit, and manage PowerPoint presentations using large language models.
Carryo
Carryo is a remote MCP server for sharing Claude or ChatGPT-created HTML artifacts as live links.
SuperLocalMemory V2
Universal, local-first persistent memory for AI assistants. SQLite-based knowledge graph with zero cloud dependencies. Works with 17+ tools (Claude, Cursor, Windsurf, VS Code, etc.). 100% free forever.
Sheet-Cello
A specialized Google Sheets integration server that allows the LLM to read, write, and manage spreadsheet data in real-time. This server supports cell-level manipulation, bulk range updates, and full worksheet retrieval, enabling the model to perform data analysis, logging, and automated reporting directly within Google Worksheets.If you have functions which take range value then first read the sheet and decide where user is asking to add data and define range by your own.Provides 46 tools for Gsheet
Excel MCP Server
Read and write data from Microsoft Excel files. Supports text, formulas, sheet creation, and Windows-only live editing.
Great Question
Great Question is an Agentic UX research platform for product builders. Its MCP lets AI agents create studies directly from any AI tool, surface insights, find the right research candidates, and query your entire research repository.