Machine Learning-Based Precision Agriculture
Authors- Muthukumaraguru. A, Associate Professor Dr. C. Meenakshi
Abstract-Machine learning-based precision agriculture leverages advanced algorithms to optimize farming practices, improve crop yield, and enhance sustainability. By analyzing diverse datasets such as soil health, weather patterns, crop conditions, and pest presence, machine learning models provide actionable insights for farmers. Techniques like image processing, regression, and classification help in disease detection, irrigation management, and yield prediction. The system delivers real-time recommendations intuitively, empowering farmers to make data-driven decisions, reduce resource consumption, and minimize environmental impact. This approach represents a transformative shift toward more efficient, sustainable, and technology-driven agriculture.