Server data from the Official MCP Registry
Indian-accurate nutrition logging for your AI: IFCT 2017 + USDA, by text or photo.
Indian-accurate nutrition logging for your AI: IFCT 2017 + USDA, by text or photo.
A well-designed nutrition logging MCP server with appropriate security for its purpose. The server uses local SQLite storage by default with proper input validation via Zod schemas, implements credential-free operation, and has no obvious code injection or data exfiltration risks. Minor code quality observations around error handling and HTTP request timeout configuration do not materially affect the security posture given the server's benign scope and local-first architecture. Supply chain analysis found 4 known vulnerabilities in dependencies (0 critical, 4 high severity). Package verification found 1 issue.
7 files analyzed · 9 issues found
Security scores are indicators to help you make informed decisions, not guarantees. Always review permissions before connecting any MCP server.
This plugin requests these system permissions. Most are normal for its category.
Add this to your MCP configuration file:
{
"mcpServers": {
"io-github-krishnabhat-indian-food-nutrition-mcp": {
"args": [
"-y",
"indian-food-nutrition-mcp"
],
"command": "npx"
}
}
}From the project's GitHub README.
Your AI assistant can finally count Indian food calories correctly.
An MCP server that lets you log meals through Claude (and soon ChatGPT) in plain language: "2 rotis and a katori of dal", or just a photo of your plate. Calories and macros come from India's official food composition data (IFCT 2017, National Institute of Nutrition) plus USDA for everything else, not from US-centric databases that think a roti is a tortilla.
Every popular calorie database is built on USDA data. It is inaccurate for home-cooked Indian food: wrong oils, wrong preparations, no katori, no idli. The one app with a great Indian database keeps it locked behind a subscription with no API. Meanwhile the Indian government published the real data. This project wraps it for the AI you already talk to, and gives that AI memory of what you actually ate.
fetch_image).get_history returns your real intake so the model can
coach you ("your protein is low on training days") against data, not vibes.~/.nutrition-mcp/meals.csv. No account, no cloud, no telemetry.npm install -g indian-food-nutrition-mcp
Add to claude_desktop_config.json (Settings → Developer → Edit Config):
{
"mcpServers": {
"nutrition": {
"command": "indian-food-nutrition-mcp"
}
}
}
Restart Claude Desktop, then just talk:
"Log breakfast: 3 idlis and a small bowl of sambar" "How much protein have I had today?" "Here's a photo of my lunch, log it" "Look at my last week and tell me where my diet is failing"
| Tool | What it does |
|---|---|
search_food | Search 8,300+ foods (IFCT + USDA), per-100g cal/protein/carb/fat/fiber |
log_meal | Log items with mandatory qty + household unit; DB-derived macros |
get_day | A day's log + totals |
get_history | Per-day totals over a range, the AI-coaching context block |
edit_entry / delete_entry | Fix mistakes so history stays honest |
fetch_image | Pull a food photo from a URL so the model can see and log it |
Code is AGPL-3.0-or-later. Bundled data: IFCT 2017 + USDA SR Legacy (public
domain). The INDB cooked-dish dataset (dal, dosa, idli as dishes with serving
sizes) is supported by the code but not redistributed until its authors grant
a license; generate it locally for personal use with npm run build:indb.
Full provenance: DATA_SOURCES.md.
This local server works with Claude Desktop today. A hosted version, which works as a ChatGPT connector and syncs across devices, is coming. Open an issue titled "hosted" or watch releases to get in early.
~/.nutrition-mcp/nutrition.db (SQLite, WAL) + ~/.nutrition-mcp/meals.csv
(auto-maintained mirror). Override with NUTRITION_DB_PATH / NUTRITION_CSV_PATH.
@nodef/ifct2017 package, AGPL)Be the first to review this server!
by Modelcontextprotocol · Developer Tools
Web content fetching and conversion for efficient LLM usage
by Toleno · Developer Tools
Toleno Network MCP Server — Manage your Toleno mining account with Claude AI using natural language.
by mcp-marketplace · Developer Tools
Create, build, and publish Python MCP servers to PyPI — conversationally.