NEFTGAZ SOHASIDA PREDIKTIV REJALASHTIRISH: TENDENSIYALAR VA TO‘SIQLAR
##article.subject##:
taminot zanjiri, rejalashtirish, prediktiv rejalashtirish, sun'iy intellekt, Big Data, narsalar interneti, blokcheyn, bulutli hisoblash##article.abstract##
Zamonaviy texnologiyalar ta’minot zanjirini rejalashtirishning yangi konsepsiyasini ishlab chiqishga imkon beradi, bu esa rejalashtirish jarayonini deyarli to‘liq avtomatlashtirishga yordam beradi. Ushbu maqolada ta’minot zanjirini rejalashtirishning eng so‘nggi bosqichi sifatida prediktiv rejalashtirish tushunchasi taklif etilgan. Prediktiv rejalashtirishning asosiy vositalari taklif etilib, ular talab prognozining aniqligini oshirish va bashorat xatoligini kamaytirishda sinergetik ta’sirni ta'minlaydi. Shuningdek, ularning samarali joriy etilishidagi asosiy to‘siqlar ko‘rib chiqilgan.
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