Relyatsion modelni optimallashtirishda suniy intellektdan foydalanishning ahamiyati
Annotatsiya
Ushbu maqolada relyatsion ma'lumotlar bazalarini optimallashtirishda suniy intellekt texnologiyalaridan foydalanishning nazariy asoslari va amaliy natijalari ko'rib chiqiladi. So'rovlarni avtomatik optimallashtirish, indekslash strategiyalari, prediktor modellar va mashinali o'rganish algoritmlarini ma'lumotlar bazalari bilan integratsiya qilish masalalari tahlil etiladi.
Kalit so‘zlar: relyatsion model, suniy intellekt, SQL optimallashtirish, mashinali o'rganish, ma'lumotlar bazasi, indekslash, so'rov rejalashtirish.
##submission.citations##
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