ISSN 2992-9148 Open Access · Peer Reviewed
DOI

Keywords

Sun’iy intellekt, kiberxavfsizlik, mashinali o‘rganish, chuqur o‘rganish, kiberhujumlarni aniqlash tizimlari (IDS), anomaliyalarni aniqlash, neyron tarmoqlar, Zero-day hujumlari, katta ma’lumotlar (Big Data), kiber-mudofaa, algoritmlar, axborot xavfsizligi, avtomatlashtirish, kiber-tahdidlar.

How to Cite

SUN’IY INTELLEKT ASOSIDA KIBERHUJUMLARNI ANIQLASH TIZIMLARI. (2026). TECHNICAL SCIENCE RESEARCH IN UZBEKISTAN, 4(5), 96-105. https://www.universalpublishings.com/index.php/tsru/article/view/18784

Abstract

Ushbu ilmiy maqolada zamonaviy axborot xavfsizligi tizimlarida sun’iy intellekt (SI) va mashinali o‘rganish (MO) texnologiyalarining o‘rni, kiberhujumlarni aniqlash va ularga qarshi kurashishning innovatsion usullari tahlil qilinadi. Tadqiqotning dolzarbligi kiber tahdidlarning murakkablashishi va an’anaviy signaturalarga asoslangan tizimlarning (IDS/IPS) samaradorligi pasayishi bilan bog‘liq.

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References

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