Google PageRank for AI agents. 25,000+ tools indexed.

foehn MCP Server

kayhendriksen/foehn

Score: 56.3 Rank #1582 MCP Server
Are you the maintainer of kayhendriksen/foehn? Claim this listing →

Download MeteoSwiss Open Government Data — weather stations, radar, hail, forecasts and climate series — via Python API, CLI, or MCP server, as DataFrames or Parquet files

Add AgentRank to Claude Code Discover and compare tools like kayhendriksen/foehn — your AI finds the right one automatically
Get API Access →
claude mcp add agentrank -- npx -y agentrank-mcp-server

Overview

kayhendriksen/foehn is a Python MCP server licensed under MIT. Download MeteoSwiss Open Government Data — weather stations, radar, hail, forecasts and climate series — via Python API, CLI, or MCP server, as DataFrames or Parquet files Topics: climate, databricks, meteoswiss, open-data, polars, python, weather.

Ranked #1582 out of 29331 indexed tools.

In the top 6% of all indexed tools.

Actively maintained with commits in the last week.

Ecosystem

Python MIT 1,177 pypi/wk
climatedatabricksmeteoswissopen-datapolarspythonweather

Score Breakdown

StarsFreshnessIssue HealthContributorsDependents
Stars 15% 33

33 stars → early stage

Freshness 25% 1d ago

Last commit 1d ago → actively maintained

Issue Health 25% 0%

0/1 issues closed → many open issues

Contributors 10% 1

1 contributor → solo project

Dependents 25% 0

No dependents → no downstream usage

npm Downloads N/A
PyPI Downloads 13% 1,177/wk

1,177 weekly installs → gaining traction

Forks 0
Description Detailed
License MIT

Weights: Freshness 25% · Issue Health 25% · Dependents 25% · Stars 15% · Contributors 10% · How we score →

How to Improve

Issue Health high impact

You have 1 open vs 0 closed issues — triaging stale issues improves health

Contributors medium impact

Single-contributor projects carry bus-factor risk — welcoming contributors boosts confidence

Dependents medium impact

No downstream dependents detected yet — adoption by other projects is the strongest trust signal

Badge all embed codes →

AgentRank score for kayhendriksen/foehn
[![AgentRank](https://agentrank-ai.com/api/badge/tool/kayhendriksen--foehn)](https://agentrank-ai.com/tool/kayhendriksen--foehn/?utm_source=badge&utm_medium=readme&utm_campaign=agentrank_badge)
<a href="https://agentrank-ai.com/tool/kayhendriksen--foehn/?utm_source=badge&utm_medium=readme&utm_campaign=agentrank_badge"><img src="https://agentrank-ai.com/api/badge/tool/kayhendriksen--foehn" alt="AgentRank"></a>

Embed Widget docs →

Embed a rich score widget on your site or blog.

<script src="https://agentrank-ai.com/embed.js" data-tool="kayhendriksen/foehn"></script>

Matched Queries

"mcp server""mcp-server"

From the README

<h1 align="center">
  
</h1>

<p align="center">
  <strong>MeteoSwiss Open Data → Python API, CLI, MCP server, Parquet & Delta tables</strong>
</p>

<p align="center">
  <a href="https://pypi.org/project/foehn/">
    
  </a>
  <a href="https://pypi.org/project/foehn/">
    
  </a>
  <a href="https://github.com/kayhendriksen/foehn/blob/main/LICENSE">
    
  </a>
  <a href="https://pypi.org/project/foehn/">
    
  </a>
</p>

---

foehn downloads every [MeteoSwiss OGD](https://github.com/MeteoSwiss/opendata) collection via the STAC API, converts CSV/TXT to Parquet with [Polars](https://pola.rs), and optionally ingests everything into [Databricks](https://www.databricks.com) Unity Catalog Delta tables on a daily schedule. It also ships an [MCP server](https://modelcontextprotocol.io) so LLMs can query Swiss weather data directly.

## Why foehn?

- **20+ collections in one command** — weather stations, radar, hail maps, forecasts, climate scenarios, and more
- **MCP server for LLMs** — give
Read full README on GitHub →

Get the weekly AgentRank digest

Top movers, new tools, ecosystem insights — straight to your inbox.