MACHINE LEARNING TECHNIQUES FOR NETWORK ANOMALY DETECTION IN ENTERPRISE NETWORKS

Авторы

  • Kushmanova Mahbuba Abdunabievna Senior lecturer, Department of digital technology convergence Muhammad al-Khwarizmi Tashkent University of Information Technologies (TUIT) Автор
  • Xurshidbek G‘ulomjonov Third-year undergraduate student Muhammad al-Khwarizmi Tashkent University of Information Technologies (TUIT) Автор

Ключевые слова:

machine learning, network anomalies, cybersecurity, artificial intelligence, network traffic, attack detection, enterprise networks, data analysis, anomaly detection, network security.

Аннотация

Today, the growing volume of data in enterprise networks and the increasing sophistication of cyberattacks make network security a critical challenge. This article explores the potential of machine learning techniques for detecting anomalies in enterprise networks. The limitations of traditional security solutions are discussed, and the advantages of artificial intelligence technologies in analyzing network traffic and identifying suspicious activities are highlighted. In addition, the paper examines the role of machine learning algorithms in the early detection of cyber threats and their contribution to improving overall network security.

Библиографические ссылки

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Опубликован

2026-06-08

Как цитировать

Kushmanova , M., & G‘ulomjonov , X. (2026). MACHINE LEARNING TECHNIQUES FOR NETWORK ANOMALY DETECTION IN ENTERPRISE NETWORKS. Прикладные науки в современном мире, 5(12), 11-18. https://www.in-academy.uz/index.php/ZDAF/article/view/51561
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