ALGORITHMS AND SOFTWARE SYSTEMS FOR EVALUATING DATA ON THE ENVIRONMENTAL CONDITION OF AGRICULTURAL LAND (IN THE CASE OF NUKUS DISTRICT)
Keywords:
Nukus district, algorithm, data analysis, agricultural land, quality assessment, agriculture, monitoring.Abstract
This article will consider algorithms and software packages that help to conduct a comprehensive assessment of the ecological state of agricultural land on the example of the Nukus district. The article presents an overview of existing methods for assessing the environmental condition and consider which algorithms and software packages that can be used for effective data analysis.
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www.lex.uz/ O‘zbekiston Respublikasi Prezidentining 2021-yil 26-fevraldagi PQ-5009-son qarori
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