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Applications of Artificial Intelligence and Machine Learning in Enhancing Agricultural Productivity and Sustainability

Vinayak Arun Naik, Sameeksha Uday Naik

Abstract


Artificial Intelligence and Machine learning are increasingly applied in agriculture in order to address global food challenges, minimize resource clauses, and provide sustainability. Here the application of AI/ML in agriculture is described with their application in prediction of the yield of crops, identification of disease as well as pest, The application of precision, agriculture, as well as sustainable use of resources.


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References


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