Search, compare, and calculate structured supplement facts through an MCP server.
Copy the install command and let the AI configure it · recommended for beginners
No copy-paste install info for "Suparch" yet — see the docs or source repo.
Compare the structured Supplement Facts of these two supplements and list shared ingredients, differing ingredients, and per-serving amount differences.
A comparison result showing matching items, differing items, and dosage differences.
Search for supplements containing Vitamin D3 and organize their structured supplement facts.
A list of matching supplements with their structured supplement facts.
Based on the Supplement Facts of these supplements, calculate my total daily intake of magnesium and zinc.
A summed intake calculation for the target nutrients, broken down by source.
Researchers or students can use it to search structured supplement facts and quickly find target products or ingredients.
When comparing multiple supplement formulas, it helps organize and contrast structured ingredient data, reducing manual comparison work.
When analyzing combined intake across supplements, it can calculate values from structured Supplement Facts to support data review.
Suparch is an open-source MCP server for searching, comparing, and calculating structured supplement facts.
Based on the provided description, it supports three core tasks: searching supplement facts, comparing structured facts across products, and calculating ingredient values.
The provided material does not include installation steps, runtime requirements, or key information. Please see the source repository.
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