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.