Nitin Karwasra and Kanishk Verma*
Department of Renewable and Bio-energy Engineering, COAE&T, CCSHAU, Hisar- 125004
Received-16.06.2024, Revised-08.07.2024, Accepted-27.07.2024
Abstract: Agriculture has been the foundation of human civilization, and this is particularly true for India, where it continues to play a crucial role in the country’s economy and society. India’s agricultural heritage forms the cornerstone of its economy and social structure, with its significance extending far beyond economic metrics. As the world’s second-largest agricultural producer, India’s farming sector, along with related industries such as forestry and fisheries, continues to be a major contributor to the nation’s GDP. The study offers a thorough examination of machine learning’s role in agriculture.
Keywords: Agriculture, Crop, Machine, Production
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