loading…
Search for a command to run...
loading…
SoilWise is an AI + IoT-powered agricultural system that helps farmers make data-driven decisions for better yield, sustainability, and profitability. Using soi
SoilWise is an AI + IoT-powered agricultural system that helps farmers make data-driven decisions for better yield, sustainability, and profitability. Using soil sensors, satellite imagery, and market data, the platform evaluates soil health, predicts rainfall trends, and recommends optimal crop and fertilizer plans — while also scoring farm-level financial and sustainability performance. It combines six smart modules: 🧠 Soil Analysis: Automated detection of soil type, pH, and nutrient balance. 🌾 AgriShield: Disease recognition and treatment recommendation using computer vision. 💧 IrrigAIte: Smart irrigation planning based on moisture data and local weather. 📈 Yield Predictor: ML-powered yield forecasting and credit scoring for farmers. 🤖 AgriChat: Conversational assistant for personalized advice. 📚 Research Checker: Validates agricultural research claims using AI evidence synthesis. 🧩 MCP Architecture Flow INPUTS ↓ [MCP Logic Layer] ↓ OUTPUTS Input Layer: 1.Soil sensor data (pH, moisture, nutrients) 2.Satellite imagery and weather forecasts 3.Farmer financial & field data (size, crop history) 4.Market data from open agri APIs MCP Logic Layer: 1.Data preprocessing & cleaning 2.AI models (soil classification, disease detection, rainfall prediction) 3.Predictive analytics for yield and credit scoring 4.Generative AI for chatbot and recommendations Output Layer: 1.Personalized crop and fertilizer plans 2.Financial risk and creditworthiness insights 3.Rainfall and yield forecasts (3-month horizon) 4.Interactive chatbot responses and visual dashboards ⚙️ What the MCP Does The MCP acts as the intelligent orchestration layer that links soil data, AI models, and farmer interfaces. It performs: 1.Real-time soil and satellite data processing 2.Cross-model inference for health and yield prediction 3.Dynamic decision generation (recommendations, warnings, or irrigation plans) 4.Data logging for continuous model improvement 🔗 How It Connects to the Client Frontend: Streamlit dashboard and SMS interface (via Africa’s Talking) MCP Server: Python backend (FastAPI + Streamlit) hosted on Azure Cloud MCP Node Data Pipelines: Pulls from satellite APIs (Google Earth Engine), local sensor input, and OpenAI for natural language reasoning Client Access: Farmers, agronomists, and cooperatives can log in or subscribe via mobile or web for real-time guidance 💡 Why It’s Useful or Creative 1.Transforms soil and environmental data into instant, actionable insights — no labs or delays. 2.Integrates AI, IoT, and financial scoring, giving farmers a holistic view of soil health + profitability. 3.Localized intelligence: Tailored to microclimates and soil types in Sub-Saharan Africa and North Africa (Tunisia pilot). 4.Scalable Design: Modular MCP architecture supports easy deployment across regions and languages. 📊 Financial & Credit Scoring Module a.Uses soil productivity metrics and yield forecasts to estimate farmer creditworthiness. b.Generates a SoilWise Credit Score to help farmers access loans or subsidies. Predictive metrics include: 1.Historical yield potential 2.Input efficiency 3.Sustainability index 4.Financial resilience model 🚀 Deployment a.Prototype Deployed: https://soilwise-prototype.streamlit.app/soilwise b.Backend Host: Azure Cloud with integrated MCP server c.Regions Tested: Western & Central Kenya (pilot), expanding to Tunisia for semi-arid adaptation d.Data Sources: Open Data Africa, Google Earth Engine, FAO Soil Database 📁 Repository 🔗 GitHub: https://github.com/antonie-riziki/SoilWise 🏷️ Tags / Categories #AI #Agritech #IoT #MCP #SoilHealth #ClimateResilience #SustainableFarming #CreditScoring
Smithery CLI connects your agents to thousands of skills and MCP servers directly from the command line. To get started, simply run npx skills add smithery/cli.
npm install -g smithery@latest
Requires Node.js 20+.
smithery mcp search [term] # Search the Smithery registry
smithery mcp add <url> # Add an MCP server connection
smithery mcp list # List your connections
smithery mcp remove <ids...> # Remove connections
Interact with tools from MCP servers connected via smithery mcp.
smithery tool list [connection] # List tools from your connected MCP servers
smithery tool find [query] # Search tools by name or intent
smithery tool get <connection> <tool> # Show full details for one tool
smithery tool call <connection> <tool> [args] # Call a tool
Browse skills on the Smithery Skills Registry and install them with the upstream installer:
npx skills add <skill> # e.g. npx skills add smithery-ai/cli
smithery auth login # Login with Smithery (OAuth)
smithery auth logout # Log out
smithery auth whoami # Check current user
smithery auth token # Mint a service token
smithery auth token --policy '<json>' # Mint a restricted token
smithery namespace list # List your namespaces
smithery namespace use <name> # Set current namespace
smithery mcp publish <url> -n <org/server> # Publish an MCP server URL
smithery mcp publish <bundle.mcpb> -n <org/server> # Publish an MCP bundle
# Search and connect to an MCP server
smithery mcp search "github"
smithery mcp add github --id github
# Find and call tools from your connected MCP servers
smithery tool find "create issue"
smithery tool call github create_issue '{"title":"Bug fix","body":"..."}'
# Browse and install skills
smithery skill search "frontend" --json --page 2
smithery skill add anthropics/frontend-design --agent claude-code
# Publish your MCP server URL
smithery mcp publish https://my-mcp-server.com -n myorg/my-server
# Publish a built MCP bundle
smithery mcp publish ./server.mcpb -n myorg/my-server
git clone https://github.com/smithery-ai/cli
cd cli && pnpm install && pnpm run build
npx . --help
Contributions welcome! Please submit a Pull Request.
Выполни в терминале:
claude mcp add soil-wise254 -- npx -y @smithery/cli run Gill-tech/soil-wise254Query your database in natural language
автор: AnthropicA universal database MCP server supporting simultaneous connections to multiple databases. It provides tools for database operations, health analysis, SQL optim
автор: wenb1n-devRead-only database access with schema inspection.
автор: modelcontextprotocolInteract with Redis key-value stores.
автор: modelcontextprotocolНе уверен что выбрать?
Найди свой стек за 60 секунд
Автор?
Embed-бейдж для README
Похожее
Все в категории data