Beckybams / Soil-Quality-ClassificationLinks
Soil Quality Classification is a data-driven approach that analyzes soil properties such as pH, moisture, texture, and nutrient content to categorize soil types. It supports informed decisions in agriculture, land management, and environmental planning by identifying soil suitability.
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