MEDIA EKOTIZIMASIDA MA'LUMOTLAR MUHANDISLIGIGA ASOSLANGAN AQLLI TAVSIYA TIZIMINI LOYIHALASH VA OPTIMALLASHTIRISH
Kalit so‘zlar:
media ekotizimi, aqlli tavsiya tizimi, ma'lumotlar muhandisligi, ma'lumotlar quvuri, hamkorlikdagi filtrlash, chuqur o'rganish.Abstrak
Ushbu maqolada media ekotizimida ma'lumotlar muhandisligiga asoslangan aqlli tavsiya tizimlarini yaratish va optimallashtirishning zamonaviy usullari tahlil qilinadi. Media kontentini iste'mol qilish hajmining ortishi, foydalanuvchi xatti-harakatlari ma'lumotlarining o'sishi va real vaqt rejimida tavsiyalarga bo'lgan talab tavsiya tizimlari uchun kuchli, barqaror va samarali ma'lumotlar muhandisligi infratuzilmasini yaratishni talab qiladi. Maqolada media ma'lumotlar oqimini boshqarish, tavsiya modeli arxitekturasi, ma'lumotlarni qayta ishlash texnologiyalari, gibrid tavsiya yondashuvlari va tizim ish faoliyatini ilmiy asosda optimallashtirish usullari yoritilgan.
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