Octagon: MCP for Market Data

Created By
OctagonAIa year ago
A free MCP server to analyze and extract insights from public filings, earnings transcripts, financial metrics, stock market data, private market transactions, and deep web-based research within Claude Desktop and other popular MCP clients.
Overview

what is Octagon MCP Server?

Octagon MCP Server is a Model Context Protocol (MCP) server implementation that integrates with the Octagon API, designed to provide advanced investment research capabilities for both public and private markets.

how to use Octagon MCP Server?

To use the Octagon MCP Server, you can run it using npx with your Octagon API key or install it manually via npm. Configuration is required for different environments like Cursor and Claude Desktop.

key features of Octagon MCP Server?

  • Specialized AI agents for investment research
  • SEC filings analysis and data extraction
  • Earnings call transcript analysis
  • Financial metrics and ratios analysis
  • Access to stock market data
  • Private company research and web scraping capabilities
  • Comprehensive research tools for funding rounds, M&A, and IPO transactions
  • Streaming support for real-time responses
  • Simple interface with a single prompt parameter for all tools

use cases of Octagon MCP Server?

  1. Analyzing SEC filings for investment insights.
  2. Extracting financial metrics for public companies.
  3. Researching private companies and their funding history.
  4. Performing comprehensive market intelligence and analysis.
  5. Real-time data extraction from public websites.

FAQ from Octagon MCP Server?

  • How do I get an API key for Octagon MCP?

Sign up at Octagon and generate an API key in your account settings.

  • Can I use Octagon MCP for both public and private market research?

Yes! Octagon MCP supports research for both public and private markets.

  • What programming languages does Octagon MCP support?

Octagon MCP is implemented in JavaScript and can be run in Node.js environments.

Project Info
Created At
a year ago
Updated At
a year ago
Author Name
OctagonAI
Star
30
Language
JavaScript
License
MIT license

Recommend Servers

View All
Mnemom

14 hours ago
//beforeyouship — LLM Cost Modeling From Your Editor
@Indiegoing

Query realistic LLM cost models without leaving your editor. beforeyouship models the **true monthly cost** of an LLM app architecture — retries, prompt caching, batch discounts, infra overhead, and 3×/10× growth — across GPT-5.x, Claude, Gemini, DeepSeek, and more. Not a token calculator: a planning tool for the design phase, before you commit to a stack. **No API key needed to try it** — demo mode covers the six free-tier models. A Pro key from [beforeyouship.dev](https://beforeyouship.dev) unlocks the full 18-model catalog. ## What you can ask - "How much will a RAG chatbot cost at 10,000 requests/day?" - "Compare Claude Haiku vs Gemini Flash pricing for my workload" - "What's the cheapest model for a multi-step agent at scale?" - "Show me current per-token prices for Anthropic models" ## Tools ### `estimate_cost` Full cost model for an architecture at a given usage level. Returns Naive / Realistic / Worst Case monthly cost per model, 3×/10× growth scenarios, and an opinionated recommendation with reasoning. ### `get_model_prices` Current per-1M-token pricing — input, output, cached input, batch — with context windows and staleness metadata. ### `list_archetypes` Seven preset architecture patterns (simple chatbot, chatbot with history, RAG pipeline, multi-model router, coding assistant, document processor, multi-step agent) used as starting points for estimates. ## Setup **Claude Code:** ​```bash claude mcp add --transport http beforeyouship https://beforeyouship.dev/api/mcp ​``` **Cursor / other clients** — add a remote server: ​```json { "mcpServers": { "beforeyouship": { "type": "streamable-http", "url": "https://beforeyouship.dev/api/mcp" } } } ​``` Add an `Authorization: Bearer bys_...` header with a Pro key for the full catalog. ## Try it > Estimate the monthly cost of a RAG pipeline at 10,000 requests/day

13 hours ago
Docwand

13 hours ago