BIZNES TAHLILIDA KATTA MA’LUMOTLAR VA SUN’IY INTELLEKTDAN FOYDALANISHNING IQTISODIY SAMARADORLIGI
DOI:
https://doi.org/10.5281/zenodo.21073061Ключевые слова:
katta ma’lumotlar, sun’iy intellekt, biznes tahlili, iqtisodiy samaradorlik, investitsiya rentabelligi, raqamli transformatsiya, qaror qabul qilishАннотация
Maqolada biznes tahlilida katta ma’lumotlar (Big Data) va sun’iy intellekt (SI) texnologiyalaridan foydalanishning
iqtisodiy samaradorligi nazariy va amaliy jihatdan tahlil qilingan. Mualliflar samaradorlikni baholashning kompleks
ramkasini (investitsiya rentabelligi (ROI), xarajat–naf tahlili, mehnat unumdorligi va qaror sifati ko‘rsatkichlari) asoslab,
biznesning asosiy funksiyalari kesimida iqtisodiy samarani qiyosiy o‘rgangan. Tahlil natijalariga ko‘ra, SI va katta ma’lumotlarni
joriy etish xarajatlarni o‘rtacha 12–21 foizga kamaytirib, daromadni 7–18 foizga oshiradi, tahlil yetukligi yuqori
bo‘lgan tashkilotlarda esa kumulyativ ROI 240 foizgacha yetadi. Maqolada O‘zbekiston biznes muhiti uchun samaradorlikni
ta’minlovchi omillar, asosiy to‘siqlar (ma’lumotlar sifati, malakali kadrlar yetishmasligi, tizimlar integratsiyasi) hamda
ularni bartaraf etish bo‘yicha amaliy tavsiyalar ishlab chiqilgan
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