A Machine Learning Approach for Tomato Crop Yield and Price Prediction

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Varsha Manohar Pujari
Vishwanath Y

Abstract

Agricultural product costs play a significant part in the horticultural market. In India, vegetables, for example, tomatoes have the biggest supply and price variances among farming items. As tomatoes are grown around the year, outdoor and indoor, their yields change because of various factors, it is hard to settle tomatoes' inventory and costs. Although the Government puts numerous efforts to balance out the supply and costs of vegetables, continuous meteorological changes have prompted unstable supply and price fluctuations of vegetables. Accordingly, the right anticipating of vegetable costs is a significant issue. To oblige these, in this paper, an attempt has been made to dissect the costs and yield of tomatoes in India by utilizing a Machine Learning approach. This will unquestionably help the farmers and the Government if the anticipated costs are getting higher in the forthcoming months, then appropriate strategies can be made to diminish the costs of tomatoes.

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How to Cite
Varsha Manohar Pujari, & Vishwanath Y. (2023). A Machine Learning Approach for Tomato Crop Yield and Price Prediction. Journal of Advanced Zoology, 44(S6), 517–523. https://doi.org/10.17762/jaz.v44iS6.2250
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