Recently, the agriculture industry has demonstrated the use of artificial intelligence (AI). In order to increase yield, the industry must overcome a number of obstacles, such as poor soil treatment, insect and disease infestation, the need for huge data, low output, and a knowledge gap between farmers and technology. The key ideas of AI in agriculture are its cost-effectiveness, precision, high performance, and flexibility. An overview of AI's uses in crop, weed, disease, and soil management is provided in this study. Particular attention is paid to the application's advantages and disadvantages as well as how to use expert systems to increase output and reduce cultivation costs.
Chitalkar et al. (Wed,) studied this question.
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