Sieve — Startup Due Diligence
@lmwharton
About Sieve — Startup Due Diligence
AI-powered startup due diligence. Screen any company across 7 IMPACT-X dimensions (Team, Market, Product, Advantage, Commerce, Traction, X-Factor) and get a quantified Sieve Score (0-140) with a Take Meeting / Pass / Need More Info recommendation. From company name to investment
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"sieve": {
"command": "uvx",
"args": [
"sieve-mcp"
],
"env": {
"SIEVE_API_KEY": "your-api-key-here"
}
}
}
}Tools
No tools detected
We auto-extract tools from the README. The maintainer can list them under a ## Tools heading to populate this section.
Overview
What is Sieve — Startup Due Diligence?
Sieve — Startup Due Diligence is an AI-powered tool that screens any company across seven IMPACT-X dimensions (Team, Market, Product, Advantage, Commerce, Traction, X-Factor). It returns a quantified Sieve Score from 0 to 140 along with a Take Meeting, Pass, or Need More Info recommendation, enabling investors to go from company name to an investment decision in minutes.
How to use Sieve — Startup Due Diligence?
Provide the name of a startup company. The server processes the input and delivers a due diligence report containing a combined Sieve Score and a clear recommendation.
Key features of Sieve — Startup Due Diligence
- AI-powered startup due diligence
- Screens across 7 IMPACT-X dimensions
- Quantified Sieve Score (0–140)
- Three recommendation outcomes: Take Meeting, Pass, Need More Info
- Fast: from company name to decision in minutes
Use cases of Sieve — Startup Due Diligence
- Quick screening of early-stage startups for investment
- Comparing multiple companies across standardized dimensions
- Preliminary due diligence before deeper analysis
- Portfolio monitoring and re-evaluation
FAQ from Sieve — Startup Due Diligence
What does the Sieve Score mean?
The Sieve Score is a quantified rating from 0 to 140 based on the analysis across all seven IMPACT-X dimensions.
What are the IMPACT-X dimensions?
The seven dimensions are Team, Market, Product, Advantage, Commerce, Traction, and X-Factor.
What recommendations does the server provide?
The server outputs one of three recommendations: Take Meeting, Pass, or Need More Info.
How does the server process a company name?
It uses AI to analyze the input company name and returns a due diligence assessment with a score and recommendation.
More Other MCP servers
Nginx UI
0xJackyYet another WebUI for Nginx
Reactive Resume
amruthpillaiA one-of-a-kind resume builder that keeps your privacy in mind. Completely secure, customizable, portable, open-source and free forever. Try it out today!
MCP Go 🚀
mark3labsA Go implementation of the Model Context Protocol (MCP), enabling seamless integration between LLM applications and external data sources and tools.
Codelf
unbugA search tool helps dev to solve the naming things problem.
Production-ready MCP integrations for AI applications
Klavis-AIKlavis AI: MCP integration platforms that let AI agents use tools reliably at any scale
Comments