Japan Sakura & Koyo MCP

Created By
haomingkoo2 months ago
Real-time cherry blossom & autumn leaves forecast for Japan. 1,700+ viewing spots with live bloom percentages, forecast dates, and GPS coordinates. Powered by Japan Meteorological Corporation data, updated daily. Includes sakura (1,012 spots), Kawazu cherry (early-bloom Jan-Feb), autumn leaves (687 spots), and 3-day weather forecasts. Find the perfect time to visit any spot in Japan.
Overview

Japan Sakura & Koyo MCP

Tools

Sakura

  • get_sakura_forecast
    Bloom forecast for 48 major cities, including status, dates, and historical averages

  • get_sakura_spots
    1,012 viewing spots by prefecture with bloom percentage and GPS coordinates

  • get_sakura_best_dates
    Find the best cities based on your travel dates

  • get_kawazu_cherry
    Early-blooming deep pink variety (Jan–Feb, Izu Peninsula)

Autumn (Koyo)

  • get_koyo_forecast
    Maple and ginkgo color change dates for 50+ cities

  • get_koyo_spots
    687 autumn foliage spots with peak viewing windows and popularity

Weather

  • get_weather_forecast
    3-day weather forecast for 51 Japanese cities

Quick Start

Run locally

npx japan-sakura-koyo-mcp

Hosted endpoint

https://sakura.kooexperience.com/mcp

Data Sources

Live data from Japan Meteorological Corporation, the same provider behind Japan’s leading cherry blossom applications.

  • Updated daily
  • No hardcoded data

Notes

  • Requires Node.js with npx available
  • No local installation required when using npx
  • Hosted endpoint works with MCP-compatible clients

Server Config

{
  "mcpServers": {
    "japan-sakura-koyo": {
      "command": "npx",
      "args": [
        "japan-sakura-koyo-mcp"
      ]
    }
  }
}
Project Info
Created At
2 months ago
Updated At
2 months ago
Author Name
haomingkoo
Star
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Language
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License
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Category

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