ZARARLI DASTURLARNI ANIQLASHDA MASHINALI O‘QITISH TEXNOLOGIYALARINING ZAMONAVIY VOSITALARI

Authors

  • Abdumalikov Akmaljon Abduxoliq o‘g‘li Mirzo Ulug‘bek nomidagi O‘zMU Jizzax filiali dotsenti Author
  • Qodirova Laylo Sobir qizi Mirzo Ulug‘bek nomidagi O‘zMU Jizzax filiali magistranti Author
  • Qarshibayeva O‘g‘iloy Abdunabi qizi Mirzo Ulug‘bek nomidagi O‘zMU Jizzax filiali talabasi Author

Keywords:

IoT xavfsizligi, zararli dasturlar, malware aniqlash, XGBoost, genetika algoritmi, gibrid model

Abstract

Ushbu maqola zararli dasturlarni aniqlash mashinali o’qitish texnologiyalari va ularning zamonaviy vositalarining amaliy tadqiqi keltirilgan. Zararli dasturlarning mohiyati, turlari va IoTga ta’sirini tahlil qilib, mavjud aniqlash usullarining cheklovlari aniqlandi. Taklif etilgan model hamda tizimli arxitektura mashinali o’qitishning zamonaviy algoritmlari bilan birlashtirishga asoslanadi va IoT qurilmalarida real vaqt rejimida ishlay olishi uchun engil vaznli komponentlardan iborat. Maqola natijalari IoT tarmoqlarida xavfsizlikni ta’minlashning yangi, samarali yo‘nalishini ochib beradi.

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References

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Published

2026-01-31

How to Cite

Abdumalikov, A., Qodirova , L., & Qarshibayeva , O. (2026). ZARARLI DASTURLARNI ANIQLASHDA MASHINALI O‘QITISH TEXNOLOGIYALARINING ZAMONAVIY VOSITALARI. Scientific Journals "D-PRESS SERVICES", 4(8), 84-88. https://d-pressa.com/index.php/dps/article/view/711