TweetBinder by Audiense MCP Server

Created By
AudienseCoa year ago
TweetBinder MCP Server is a server based on the Model Context Protocol (MCP) that allows Claude and other MCP-compatible clients to interact with your TweetBinder by Audiense account
Overview

What is TweetBinder by Audiense MCP Server?

TweetBinder MCP Server is a server based on the Model Context Protocol (MCP) that allows Claude and other MCP-compatible clients to interact with your TweetBinder by Audiense account, providing access to Twitter analytics data.

How to use TweetBinder?

To use TweetBinder, install it via Smithery or manually configure it with your Claude Desktop App and TweetBinder API credentials. You can create reports, analyze Twitter data, and retrieve detailed statistics.

Key features of TweetBinder?

  • Access TweetBinder analytics directly from Claude
  • Analyze hashtags, users, and conversations on Twitter/X
  • Get engagement metrics, sentiment analysis, and more
  • Create Twitter reports with custom search queries
  • Check report generation status and retrieve detailed report statistics
  • Manage your TweetBinder reports and account balance

Use cases of TweetBinder?

  1. Analyzing social media campaigns and their effectiveness.
  2. Monitoring brand mentions and sentiment on Twitter.
  3. Generating detailed reports for marketing strategies.

FAQ from TweetBinder?

  • Can I use TweetBinder without a TweetBinder account?

No, you need a valid TweetBinder account with API credentials to use this service.

  • Is there a limit to the number of reports I can create?

Yes, your account has a quota that limits the number of reports you can generate.

  • How do I troubleshoot issues with the server?

Check the Claude Desktop logs and ensure your environment variables are set correctly.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
AudienseCo
Star
1
Language
TypeScript
License
Apache-2.0 license

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