XALQARO SAVDODA AI-ASOSLI ANALITIK TIZIMLARDAN FOYDALANISHSAMARADORLIGI
Kalit so‘zlar:
sun’iy intellekt, xalqaro savdo, analitik tizimlarAbstrak
Mazkur ilmiy maqolada xalqaro savdo jarayonlarida sun’iy intellekt asosidagi
analitik tizimlardan foydalanish samaradorligi chuqur ilmiy-nazariy va amaliy yondashuv asosida tahlil
qilinadi. Raqamli iqtisodiyot sharoitida savdo operatsiyalarining murakkablashuvi, global ta’minot
zanjirlarining kengayishi va real vaqt rejimidagi ma’lumot oqimining ortishi analitik qaror qabul qilish
vositalarini takomillashtirishni talab etmoqda. Tadqiqotda AI-analitika vositalarining prognozlash
aniqligi, risklarni baholash, logistika optimallashtirish, bozor kon’yunkturasini aniqlash va savdo
strategiyalarini shakllantirishdagi o‘rni ochib beriladi. Metodologik jihatdan tizimli tahlil, taqqoslash,
empirik natijalarni umumlashtirish va ilmiy manbalar sharhi usullaridan foydalanilgan. Natijalar shuni
ko‘rsatadiki, AI asosli analitik tizimlar savdo samaradorligini oshirish, xarajatlarni kamaytirish va
strategik barqarorlikni ta’minlashda muhim vosita sifatida namoyon bo‘lmoqda
Havolalar
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