Elektron tálim resurslarınıń status koefficientin islep shıǵıw metodikasında informaciyalıq texnologiyalardıń ornı hám áhmiyeti

Avtorlar

  • A.A Baymurzaeva

    Nukus State Pedagogical Institute named after Ajiniyaz image/svg+xml

Gilt sózler: electronic educational resources, weighting coefficient, information technology, methodology, analysis

Annotaciya

The article analyzes the role and importance of information technology in the methodology for developing the weighting coefficient of electronic educational resources. The weighting coefficient is considered as an indicator developed to assess the quality, influence and position of electronic educational resources among users. The methods for calculating the weighting coefficient based on information technology are considered, including data analysis, machine learning and processing user feedback.

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