The Economics of Applications of Artificial Intelligence and Machine Learning in Agriculture

@article{Nayak2019TheEO,
  title={The Economics of Applications of Artificial Intelligence and Machine Learning in Agriculture},
  author={Akshata Nayak},
  journal={International Journal of Pure \& Applied Bioscience},
  year={2019},
  volume={7},
  pages={296-305}
}
  • Akshata Nayak
  • Published 2019
  • Computer Science
  • International Journal of Pure & Applied Bioscience
The global population is expected to reach more than nine billion by 2050, requiring a growing in agricultural production by 70 % in order to suit the demand. Only about 10 % of this growth may come from availability of unused lands, with the result that the rest of 90% will need to come from intensification of current production 3 . The agriculture sector needs a huge upgradation in order to survive the changing conditions of Indian economy. The few techniques like artificial neural networks… Expand
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  • J. Pure App. Biosci
  • 2019
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