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		<Title>Agricultural Crop Recommendations Based On Productivity And Season</Title>
		<Author>B. AMARNATH REDDY1 , P. MADHU KARTHIKEYA TEJA REDDY2</Author>
		<Volume>03</Volume>
		<Issue>06</Issue>
		<Abstract>Agriculture is one of the most important sectors contributing to the economy and food security of many countries Farmers often face challenges in selecting suitable crops due to changing climatic conditions soil fertility variations and lack of accurate agricultural guidance Incorrect crop selection can result in low productivity financial losses and inefficient utilization of resources This project proposes a Machine LearningBased Agricultural Crop Recommendation System that recommends suitable crops based on productivity soil characteristics and seasonal conditions The system analyzes parameters such as soil type temperature humidity rainfall pH level and historical crop productivity using machine learning algorithms like Decision Tree Random Forest and Support Vector Machine SVM Based on the analysis the system predicts the most appropriate crop for cultivation in a particular season and location The proposed approach improves agricultural productivity supports datadriven farming decisions and promotes sustainable agricultural practices</Abstract>
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<copyright-statement>Copyright (c) Journal of Science Engineering Technology and Management Science. All rights reserved</copyright-statement>
<copyright-year>2026</copyright-year>
</permissions>
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