Crop Recommendation System Using Machine Learning Algorithms Article Swipe
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· 2025
· Open Access
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· DOI: https://doi.org/10.55041/ijsrem47354
· OA: W4410240284
In the face of a growing global population and increasingly erratic climate patterns, optimizing agricultural practices has become paramount. One promising avenue lies in precision agriculture, a data- driven approach that leverages technology to make informed decisions at the individual field level. This project delves into the exciting realm of machine learning to develop a crop recommendation system, empowering farmers with data-driven insights to make strategic choices about what to grow. Imagine a system that analyzes a farmer's unique land characteristics, including soil properties, historical yield data, and real- time climate variables. By harnessing the power of machine learning algorithms, this system can discern complex relationships between these factors and the suitability of different crops. This newfound knowledge translates into personalized recommendations, guiding farmers towards the crops with the highest potential for yield and profitability under their specific conditions. Keywords Precision Agriculture, Machine Learning, Crop Recommendation System, Random Forest, Sustainable Farming, Data-Driven Insights