CROP GUIDANCE USING MACHINE LEARNING
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Abstract
Agriculture is the field which plays an important role in improving our country's economy. We can say that agriculture can be the backbone of all business in our country. Selecting every crop is very important in agricultural planning. The selection of crops will depend upon the different parameters such as market price, production rate and the different government policies. Many changes are required in the agriculture field to improve changes in our Indian economy. We can improve agriculture by using machine learning techniques which are applied easily in the farming sector. The concept of this project is to implement the crop selection method so that this method helps in solving many agriculture and farmers problems. This improves our Indian economy by maximizing the yield rate of crop production.
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