Turn any AI assistant into your personal Census data expert. Ask questions in plain English, get accurate demographic data with proper interpretation and context.
Config is the same across clients — only the file and path differ.
{
"mcpServers": {
"open-census-mcp-server": {
"command": "<see-readme>",
"args": []
}
}
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This is an independent, open-source experiment. It is not affiliated with, endorsed by, or sponsored by the U.S. Census Bureau or the Department of Commerce.
No automated test available for this server. Check the GitHub README for setup instructions.
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This is an independent, open-source experiment. It is not affiliated with, endorsed by, or sponsored by the U.S. Census Bureau or the Department of Commerce.
Data retrieved through this project remains subject to the terms of the original data providers (e.g., Census API Terms of Service).
An AI-powered statistical consultant for U.S. Census data. Ask questions in plain English, get accurate demographic data with proper statistical context, methodology guidance, and fitness-for-use caveats.
The insight: Census data has a pragmatics problem, not a search problem. Knowing WHICH data to use and HOW to interpret it matters more than finding it. This system encodes statistical consulting expertise into the AI interaction layer.
🔬 Active Research & Rebuild — v3 architecture in progress. See docs/lessons_learned/ for the v1/v2 journey.
Census data influences billions in policy decisions, but accessing it effectively requires specialized knowledge. This project aims to make America's most valuable public dataset as easy to use as asking a question — with the statistical rigor of a professional consultant.
The opportunity: Every city council member, journalist, nonprofit director, and curious citizen should be able to fact-check claims and understand their communities with the same ease an eighth-grader uses a search engine. The data is public. The expertise to use it properly shouldn't be gatekept by technical complexity.
Pure Python MCP server with pragmatic rules engine. No R dependency.
Details: docs/architecture/ (coming soon)
docs/ # Systems engineering documentation
requirements/ # ConOps, SRS
architecture/ # System architecture
decisions/ # ADRs, trade studies
design/ # Detailed design
verification/ # V&V, evaluation results
lessons_learned/ # Project narrative & lessons
knowledge-base/ # Source docs & pragmatic rules
source-docs/ # Census methodology PDFs (gitignored)
rules/ # Extracted pragmatic rules
methodology/ # Processed methodology content
src/ # MCP server source code
tests/ # Evaluation harness & unit tests
scripts/ # Build & utility scripts
Contributions welcome, especially:
MIT License - see LICENSE file for details.