APPLICATION OF ARTIFICIAL INTELLIGENCE FOR SOLUTION OF ENGINEERING PROBLEMS. ADVANTAGES AND CHALLENGES

Authors

  • Mala Yuliia
  • Selivorstova Tatyana
  • Guda Anton

DOI:

https://doi.org/10.34185/1991-7848.itmm.2024.01.105

Keywords:

information technology, data processing, data analysis, data mining, education, quality of learning, teacher efficiency, Orange platform, visual programming, Data Mining.

Abstract

The intensive development of information technology leads to an increase in data volumes, which requires the application of effective methods for data processing and analysis for managing organizations and strategic planning. Data mining methods (DM) are widely used in various fields, including education, where they can help improve the quality of learning and the efficiency of teachers. This work demonstrates the use of the Orange platform, a framework for data visualization and analytics, which allows integrating visual programming with Python to solve complex analytical tasks. The application of Data Mining methods and the use of Orange allow for a deep analysis of educational data, contributing to the development of strategies to improve the efficiency of the learning process.

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Published

2024-04-24

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