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

Mualliflar

  • A.A Baymurzaeva

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

Kalit so‘zlar: elektron ta’lim resursları, status koeffitsienti, informatsion texnologiyalar, metodika, analiz

Annotatsiya

Maqolada elektron ta’lim resurslari uchun tortish koeffitsientini ishlab chiqish metodologiyasida axborot texnologiyalarining oʻrni va ahamiyati tahlil qilinadi. Ogʻirlik koeffitsienti elektron ta’lim resurslarining sifati, ta’siri va foydalanuvchilar oʻrtasidagi obroʻsini baholash uchun ishlab chiqilgan koʻrsatkich hisoblanadi. Axborot texnologiyalari, shu jumladan ma’lumotlarni tahlil qilish, mashinani oʻrganish va foydalanuvchilarning fikr-mulohazalarini qayta ishlash asosida tortish koeffitsientini hisoblash usullari koʻrib chiqiladi.

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