Leafengines Agricultural Intelligence
@QWarranto
Leafengines Agricultural Intelligence について
LeafEngines is an agricultural intelligence MCP server that provides comprehensive tools for soil analysis, crop recommendations, weather forecasts, and environmental impact assessment. It integrates USDA data with local sources for international coverage. The server supports fre
基本情報
設定
以下の設定を使って、このサーバーを MCP 対応クライアントに追加してください。
{
"mcpServers": {
"github": {
"command": "docker",
"args": [
"run",
"-i",
"--rm",
"-e",
"GITHUB_PERSONAL_ACCESS_TOKEN",
"mcp/github"
],
"env": {
"GITHUB_PERSONAL_ACCESS_TOKEN": "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"
}
}
}
}ツール
ツールは検出されませんでした
ツールは README から自動的に抽出されます。メンテナーは ## Tools という見出しの下に記載することで、このタブに反映できます。
概要
What is Leafengines Agricultural Intelligence?
Leafengines Agricultural Intelligence is a patent-protected agricultural AI platform that provides soil analysis, crop recommendations, weather forecasts, and environmental impact assessment for sustainable agriculture. It integrates with Claude Desktop, OpenClaw agents, Claude.ai, Composio, and via direct API.
How to use Leafengines Agricultural Intelligence?
Install the MCP server globally (npm install -g @ancientwhispers54/leafengines-mcp-server) and run leafengines-mcp-server. For Claude Desktop, add the server to mcp.json with your API key. A free test API key (leaf-test-370df0a2e62e) is available for immediate soil analysis of any US county. The turbo_quant_capabilities, get_soil_data and county_lookup tools require no API key.
Key features of Leafengines Agricultural Intelligence
- Enterprise-grade governance: audit logging, operations dashboard, PII protection, compliance, session correlation
- TurboQuant optimization: 6x memory reduction, 8x faster inference
- Soil analysis using USDA data, satellite intelligence, and environmental factors
- Crop recommendations, weather forecasts, and environmental impact assessment
- Pest detection, irrigation scheduling, yield prediction, market prices, sustainability score
- Free tier available; paid per-request and monthly subscription plans
Use cases of Leafengines Agricultural Intelligence
- Determine soil type and composition for any US county
- Select optimal crops based on soil and climate data
- Plan irrigation schedules using agricultural weather forecasts
- Assess carbon footprint, water usage, and sustainability impact
- Check current agricultural commodity market prices
FAQ from Leafengines Agricultural Intelligence
What is free to use without an API key?
The turbo_quant_capabilities, get_soil_data, and county_lookup tools are completely free and require no API key or payment.
Do I need an API key for all features?
Most paid tools require an API key. A free test key (leaf-test-370df0a2e62e) is provided for immediate soil analysis. The three tools above work without any key.
What are the pricing plans?
Per-request pricing ranges from $0.001 (commoditized) to $0.02 (exclusive). Monthly plans start at $149/month (Starter) with founder pricing of $49/month until June 1, 2026; Pro at $499/month; Enterprise at $1,999/month.
Where does the agricultural data come from?
Data sources include USDA soil data, satellite intelligence, weather models, and environmental factors.
What integrations are supported?
Leafengines Agricultural Intelligence integrates via MCP Server (Claude Desktop), OpenClaw Skill, Claude Skill for Claude.ai, Composio for enterprise AI agents, and a direct REST API.
「AI とエージェント」の他のコンテンツ
Hass-MCP
voskaControl and query Home Assistant from Claude and other LLMs — a Model Context Protocol (MCP) server.
1Panel
1Panel-dev🔥 1Panel is a modern, open-source VPS control panel — and the only one with native AI agent support. Run Ollama models, deploy OpenClaw agents, and manage your entire server stack from one clean web interface.
Gemini MCP Server
aliargunMCP server implementation for Google's Gemini API
MCP Claude Code
SDGLBLMCP implementation of Claude Code capabilities and more
Mcp Agent
lastmile-aiBuild effective agents using Model Context Protocol and simple workflow patterns
コメント