Octagon: MCP for Market Data

Created By
mikeysrecipesa year ago
Overview

what is Octagon?

Octagon is a specialized MCP server that provides AI-powered financial research and analysis by integrating with the Octagon Market Intelligence API, allowing users to analyze and extract insights from public filings, earnings call transcripts, financial metrics, and stock market data.

how to use Octagon?

To use Octagon MCP, sign up for a free account, generate an API key, and configure it in your preferred MCP client like Claude Desktop or Cursor. Follow the installation instructions for your operating system to set it up.

key features of Octagon?

  • AI agents for public market data analysis (SEC filings, earnings calls, financial metrics)
  • Access to extensive private market data (private company research, funding rounds, M&A transactions)
  • Web scraping capabilities for deep research

use cases of Octagon?

  1. Analyzing SEC filings for investment decisions.
  2. Researching private companies and their funding history.
  3. Extracting financial metrics for comparative analysis.

FAQ from Octagon?

  • Can Octagon analyze all public companies?

Yes! Octagon can analyze data from over 8000 public companies.

  • Is there a cost to use Octagon?

Octagon offers a free account for users to get started.

  • What kind of data can I extract?

You can extract data from SEC filings, earnings calls, and private market transactions.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
mikeysrecipes
Star
0
Language
JavaScript
License
MIT license

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