Academic Commercialization Pipeline
@apifyforge
About Academic Commercialization Pipeline
Academic commercialization intelligence for AI agents via the Model Context Protocol. This MCP server orchestrates 8 academic and patent data sources — OpenAlex, Semantic Scholar, ArXiv, USPTO, EPO, NIH Grants, Grants.gov, and ClinicalTrials.
Basic information
Config
Add this server to your MCP-compatible client using the configuration below.
{
"mcpServers": {
"academic-commercialization-pipeline-mcp": {
"url": "https://ryanclinton--academic-commercialization-pipeline-mcp.apify.actor/mcp"
}
}
}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 Academic Commercialization Pipeline?
Academic Commercialization Pipeline is an MCP server that provides academic commercialization intelligence for AI agents. It orchestrates 8 academic and patent data sources — OpenAlex, Semantic Scholar, ArXiv, USPTO, EPO, NIH Grants, Grants.gov, and ClinicalTrials.gov — to deliver a Commercialization Probability Score (0–100) composed from four independent scoring models: Research Momentum, Patent IP Strength, Funding Validation, and Technology Readiness Level (TRL) assessment. It is built for technology scouts, corporate venture teams, and tech transfer offices to find spinout-ready research before competitors do.
How to use Academic Commercialization Pipeline?
Connect the MCP server by adding the URL https://ryanclinton--academic-commercialization-pipeline-mcp.apify.actor/mcp to your MCP client configuration (Claude Desktop, Cursor, Windsurf). Authenticate by including your Apify API token as a Bearer token in request headers. Choose a tool such as emerging_technology_radar for a full commercialization report or focused tools like technology_breakthrough_scan, and receive structured JSON results with scores, classification tiers, evidence signals, and supporting records.
Key features of Academic Commercialization Pipeline
- 8 parallel data sources queried concurrently with 120-second per-source timeout
- 4 independent scoring models composited into a weighted score
- 5-tier investment verdicts with override rules for late-stage signals
- Author-to-inventor cross-referencing to detect publication-to-patent conversion
- Citation velocity calculation and momentum level classification
- SBIR/STTR detection and clinical trial phase as TRL proxy
Use cases of Academic Commercialization Pipeline
- Corporate venture technology sourcing to identify spinout-ready research before formal announcements
- Tech transfer office pipeline management to benchmark commercialization across departments
- R&D build-vs-buy-vs-license strategy assessment based on TRL and funding trajectory
- Pharmaceutical partnership targeting by tracking academic therapies through trial phases
- Investor due diligence on deep tech startups using citation velocity and grant evidence
FAQ from Academic Commercialization Pipeline
What data sources does this MCP server access?
It accesses OpenAlex (250M+ works), Semantic Scholar (200M+ papers), ArXiv, USPTO, EPO (100M+ patents), NIH Grants, Grants.gov, and ClinicalTrials.gov — all queried in parallel.
How is the Commercialization Probability Score calculated?
The score is a weighted composite of four independent models: Research Momentum (20%), Patent Commercialization Signal (25%), Funding Validation Index (25%), and TRL Assessment (30%). Override rules escalate the verdict if TRL 7+ and COMMERCIAL_READY IP status are met.
What pricing and billing model is used?
Pay-per-event billing: each tool call costs $0.045 (USD) and is charged only on successful calls. Spending limits are enforced per call to prevent runaway costs.
What are the main MCP tools and their parameters?
Tools include emerging_technology_radar (all 8 sources, full report), technology_breakthrough_scan (requires technology parameter), researcher_commercialization_signals (requires researcher), and more. Each returns scores, tiers, evidence signals, and supporting records.
Does the server support stand-by mode?
Yes, the server has MCP Standby mode — it stays alive between requests, eliminating cold-start overhead for repeated queries.
More Data & Analytics MCP servers
Web3 Research MCP
aaronjmarsDeep Research for crypto - free & fully local
PubMed Analysis MCP Server
DarkroasterA PubMed MCP server.
Bright Data MCP
brightdataA powerful Model Context Protocol (MCP) server that provides an all-in-one solution for public web access.
ArXiv MCP Server
blazickjpA Model Context Protocol server for searching and analyzing arXiv papers
arxiv-latex MCP Server
takashiishidaMCP server that uses arxiv-to-prompt to fetch and process arXiv LaTeX sources for precise interpretation of mathematical expressions in scientific papers.
Comments