Nomoddiy aktivlar auditida sun’iy intellektdan foydalanish imkoniyatlari
DOI:
https://doi.org/10.5281/zenodo.15573630Ключевые слова:
nomoddiy aktivlar, audit, sun’iy intellekt, raqamli transformatsiya, intellektual mulk, moliyaviy hisobotlar sifati, audit innovatsiyalari, AI texnologiyalari, raqamli audit vositalari, avtomatlashtirilgan audit jarayonlari.Аннотация
Ushbu maqolada zamonaviy iqtisodiyotda nomoddiy aktivlarning ahamiyati va ularni audit
qilish jarayonining murakkab jihatlari tahlil qilinadi. Xususan, sun’iy intellekt texnologiyalari asosida audit
jarayonlarini avtomatlashtirish va takomillashtirish imkoniyatlari o‘rganiladi. Maqolada xalqaro tajriba
misollariga tayangan holda, sun’iy intellekt vositalarining nomoddiy aktivlar qiymatini aniqlash, ularning
haqiqatga mosligini tekshirish hamda xatoliklarni aniqlashdagi roli yoritiladi. Tadqiqotda analitik va komparativ
metodlar qo‘llanilib, AI texnologiyalarini O‘zbekiston sharoitida qo‘llash istiqbollari va cheklovlari tahlil qilinadi.
Yakunda, mazkur yo‘nalishni rivojlantirish bo‘yicha ilmiy va amaliy takliflar beriladi.
Библиографические ссылки
O‘zbekiston Respublikasi Prezidentining 2020-yil 5-oktyabrdagi “Raqamli O‘zbekiston – 2030”
strategiyasini tasdiqlash va uni samarali amalga oshirish chora-tadbirlari to‘g‘risidagi PF–6079-
son Farmoni https://lex.uz/ru/docs/-5030957
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