PBIXRay MCP Server

Created By
jonaoldena year ago
Analyse PowerBI models and reports (.pbix) using AI through this MCP-server implementation of PBIXRay.
Overview

what is PBIXRay MCP Server?

PBIXRay MCP Server is a Model Context Protocol (MCP) server that allows language models to analyze Power BI (.pbix) files by exposing PBIXRay's functionality as MCP tools.

how to use PBIXRay MCP Server?

To use the server, set up a virtual environment, install dependencies, and run the server using the provided command line options. You can also test it with sample PBIX files or use the interactive demo.

key features of PBIXRay MCP Server?

  • Load and analyze PBIX files
  • List tables and retrieve model metadata
  • Access DAX expressions, relationships, and other valuable information
  • Support for command line options to customize server behavior

use cases of PBIXRay MCP Server?

  1. Analyzing Power BI models for insights
  2. Extracting metadata and DAX expressions for reporting
  3. Integrating with language models for automated analysis

FAQ from PBIXRay MCP Server?

  • Can I analyze any Power BI file?

Yes, as long as the file is in the .pbix format.

  • Is there a way to disable certain tools for security?

Yes, you can disable specific tools using command line options.

  • How do I test the server with sample files?

You can run the provided test script with a sample PBIX file to see how it works.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
jonaolden
Star
5
Language
Python
License
MIT license

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