HDW MCP Server

Created By
MCP-Mirrora year ago
Mirror of
Overview

what is HDW MCP Server?

HDW MCP Server is a Model Context Protocol (MCP) server that provides comprehensive access to LinkedIn data and functionalities using the HorizonDataWave API, enabling data retrieval and robust management of user accounts.

how to use HDW MCP Server?

To use HDW MCP Server, clone the repository from GitHub, install the necessary dependencies, obtain your API credentials from HorizonDataWave, and configure your environment with the required access tokens.

key features of HDW MCP Server?

  • LinkedIn Users Search: Filter and search for LinkedIn users by various criteria.
  • Profile Lookup: Retrieve detailed profile information for LinkedIn users.
  • Email Lookup: Find LinkedIn user details by email address.
  • Posts & Reactions: Access a user's posts and associated reactions.
  • Account Management: Manage chat messages, connections, and comments on LinkedIn posts.
  • Company Search & Details: Search for companies and retrieve employee information.

use cases of HDW MCP Server?

  1. Searching for LinkedIn users based on specific criteria.
  2. Retrieving detailed profiles for networking purposes.
  3. Managing LinkedIn connections and interactions programmatically.
  4. Analyzing LinkedIn company data for business insights.

FAQ from HDW MCP Server?

  • Can I use HDW MCP Server for free?

Yes! You can register for an API key and receive 100 free credits.

  • What programming language is HDW MCP Server built with?

HDW MCP Server is built using JavaScript.

  • How do I configure the server?

You need to create a .env file with your API credentials and update your client configuration accordingly.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
MCP-Mirror
Star
0
Language
JavaScript
License
Activity

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