Agritech Predictive Analytics Blockchain Platform -- 2

Заказчик: AI | Опубликовано: 20.02.2026

I want to launch a cloud-based agriculture technology services platform whose first release is dedicated to deep, actionable data analysis and insights. The heart of the build is a predictive-modeling engine that ingests weather, soil, and crop-yield datasets and turns them into easy-to-digest recommendations farmers 1) Soil health management services Soil Health Management ​Soil data is often the hardest to find at high resolution. You’ll want to combine "Digital Soil Mapping" with satellite-derived proxies. ​ISRIC World Soil Information: The SoilGrids system provides global 250m resolution maps of soil properties (pH, organic carbon, nitrogen, etc. 2) Crop Health Management ​This relies heavily on Remote Sensing and Computer Vision. ​Sentinel-2 (via ESA Copernicus): The "gold standard" for free satellite data. It provides multispectral bands (including Near-Infrared) used to calculate NDVI (health), NDWI (water stress), and LAI (Leaf Area Index). ​3.)Pest and Disease Management ​Deep-tech solutions here require high-quality, labeled image datasets for training CNNs (Convolutional Neural Networks). ​IP102: A large-scale benchmark dataset for insect pest recognition, containing over 75,000 images across 102 species. 4) Fertilizer and Nutrient Management ​Managing fertilizers requires "rate-response" data—knowing how a specific crop reacts to specific nutrient levels. ​NPKGRIDS: A global georeferenced dataset (available on Google Earth Engine) providing application rates for Nitrogen, Phosphorus, and Potassium across 173 crops. 5) Climate Forecasting (India-Specific) ​Standard global models often struggle with the nuances of the Indian Monsoon. You should prioritize models calibrated for the subcontinent. ​a)IMD Agromet (Gramin Krishi Mausam Seva): The India Meteorological Department (IMD) provides Agromet Advisories at the district and block levels.