EXPERIMENTAL STUDY OF INTELLIGENT SYSTEMS USING SOFTWARE.

Authors

  • Dilnoz Mukhamedieva
  • Yusuf Yuldoshev
  • Erbol Rustamov
  • Farhad Tagaev

Keywords:

Software implementation,, intelligent system,, production knowledge,, experimental study,, knowledge base,, classification,

Abstract

The article considers the software of an intelligent information system based on the presentation of production knowledge, as well as the results of experimental verification of the developed algorithms. The architecture of a software package supporting the full cycle of data processing is described - from creating an information model to making decisions based on a knowledge base. Methods for using data processing, building production knowledge and its classification are presented. It is shown that the implemented system is robust, interpretable and suitable for use in practical decision support tasks.

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Published

2025-12-18

How to Cite

Mukhamedieva , D., Yuldoshev, Y., Rustamov, E., & Tagaev, F. (2025). EXPERIMENTAL STUDY OF INTELLIGENT SYSTEMS USING SOFTWARE. The Descendants of Al-Fargani, 1(4), 120–126. Retrieved from https://al-fargoniy.uz/index.php/journal/article/view/970

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