Jampp MCP Server

Created By
springwqa year ago
Overview

what is Jampp MCP Server?

Jampp MCP Server is a server that provides access to the Jampp Reporting API through the Model Context Protocol, enabling LLMs to fetch campaign performance data.

how to use Jampp MCP Server?

To use the Jampp MCP Server, clone the repository, install the necessary dependencies, set up your environment variables with your Jampp API credentials, and run the server using Python.

key features of Jampp MCP Server?

  • OAuth 2.0 authentication with automatic token refresh
  • GraphQL-based API integration
  • Campaign spend reporting
  • Daily spend tracking
  • Comprehensive performance metrics
  • Asynchronous report generation and retrieval
  • Available metrics and dimensions listing

use cases of Jampp MCP Server?

  1. Fetching campaign spend data for specific date ranges.
  2. Tracking daily spend for marketing campaigns.
  3. Generating comprehensive performance reports for analysis.
  4. Integrating with Claude Desktop for enhanced reporting capabilities.

FAQ from Jampp MCP Server?

  • What are the prerequisites for using Jampp MCP Server?

You need Python 3.10 or higher and Jampp API credentials (Client ID and Client Secret).

  • How do I install the Jampp MCP Server?

Clone the repository, install dependencies using pip, and set up your environment variables.

  • Can I use this server with Claude Desktop?

Yes! You can configure Claude Desktop to use the Jampp MCP Server for reporting.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
springwq
Star
0
Language
Python
License
-

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