Startup Ecosystem Intelligence
@apifyforge
关于 Startup Ecosystem Intelligence
Startup ecosystem intelligence for VC deal sourcing gives your AI assistant instant access to 8 public data sources — patents, GitHub activity, job postings, ArXiv research, tech stacks, corporate registries, and SaaS competitive data — all fused into a single structured deal mem
基本信息
配置
使用下面的配置,将此服务器添加到你的 MCP 客户端。
{
"mcpServers": {
"startup-ecosystem-intelligence-mcp": {
"url": "https://ryanclinton--startup-ecosystem-intelligence-mcp.apify.actor/mcp"
}
}
}工具
未检测到工具
工具是从 README 中自动提取的。维护者可以在 ## Tools 标题下列出工具,即可填充这部分内容。
概览
What is Startup Ecosystem Intelligence?
Startup Ecosystem Intelligence is an MCP server that gives AI assistants instant access to 8 public data sources — patents, GitHub activity, job postings, ArXiv research, tech stacks, corporate registries, and SaaS competitive data — fused into a single structured deal memo. It is built for venture capitalists, corporate development teams, and accelerator managers who need quantified, behavior-based signals rather than self-reported pitch deck data.
How to use Startup Ecosystem Intelligence?
Add the MCP endpoint https://startup-ecosystem-intelligence-mcp.apify.actor/mcp to your MCP client (Claude Desktop, Cursor, Windsurf, or Cline) with your Apify API token as the Bearer token. Then ask your AI assistant to run a deal memo (e.g., "Generate a deal memo for Cohere") or a targeted analysis. The server queries up to 8 data sources in parallel and returns structured JSON with scores, signals, and red flags in 60‑90 seconds.
Key features of Startup Ecosystem Intelligence
- Eight specialized MCP tools for targeted or full‑memo analysis
- Parallel data collection using
Promise.allSettled()— no single source blocks results - Innovation Velocity Score (0–100) with five velocity levels
- Hiring Signal Decoder infers strategic direction from job postings
- Competitive Moat Analyzer scores tech stack, patents, and market density
- Corporate Health Check scores entity status, jurisdiction, and complexity
- Composite deal rating engine (PASS / WATCH / DILIGENCE / STRONG_BUY)
- Automatic red flag detection and investment thesis generation
Use cases of Startup Ecosystem Intelligence
- VC deal sourcing: triage 40–80 inbound decks per week with a 90‑second automated screen
- Corporate development: map IP landscapes and acquisition targets weekly
- Accelerator portfolio benchmarking: compare portfolio companies against cohort signals
- Technology trend scouting: quantify momentum in a technology area for thesis building
- Pre‑investment due diligence: verify corporate structure across 140+ registries before legal review
FAQ from Startup Ecosystem Intelligence
What data sources does it use?
It uses 8 public data sources: OpenCorporates (140+ jurisdictions), USPTO and EPO patent searches, GitHub repo search, Website Tech Stack Detector, Job Market Intelligence, ArXiv preprint search, and SaaS Competitive Intelligence.
How long does a full deal memo take?
A full deal memo takes about 60–90 seconds because up to 8 Apify actors fire in parallel; a single failing data source does not block the entire analysis.
What scoring models are applied?
Four scoring algorithms are applied: Innovation Velocity Score (0–100), Hiring Signal Decoder, Competitive Moat Analyzer, and Corporate Health Check, which are combined into a composite deal rating.
Does it require a Crunchbase subscription?
No. It uses only public data sources and Apify actors — no Crunchbase subscription or self‑reported founder data is needed.
How do I connect it to my MCP client?
Add the endpoint URL and your Apify API token as a Bearer header to your MCP client configuration. Examples for Claude Desktop, Cursor, Windsurf, and direct HTTP calls are provided in the README.
数据与分析 分类下的更多 MCP 服务器
Google Analytics MCP Server
surendranbGoogle Analytics 4 data to AI agents, agentic workflows, and MCP clients. Give agents analysis-ready access to website traffic, user behavior, and performance data with schema discovery, server-side aggregation, and safe defaults that reduce data wrangling.
🎓 Semantic Scholar MCP Server
JackKuo666🔍 This project implements a Model Context Protocol (MCP) server for interacting with the Semantic Scholar API. It provides tools for searching papers, retrieving paper and author details, and fetching citations and references.
Data Visualization MCP Server
isaacwassermandbt MCP Server
dbt-labsA MCP (Model Context Protocol) server for interacting with dbt.
评论