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<title>Выпуск 2024, №3 (148)</title>
<link>http://repository.enu.kz/handle/enu/24205</link>
<description/>
<pubDate>Sat, 04 Apr 2026 06:09:59 GMT</pubDate>
<dc:date>2026-04-04T06:09:59Z</dc:date>
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<title>КАЗАХСКАЯ МАТЕМАТИЧЕСКАЯ СПРАВЕДЛИВОСТЬ В ШКОЛЬНОМ ОБРАЗОВАНИИ – ЭТО РАВНЫЕ ДЛЯ ВСЕХ УСЛОВИЯ В ОБУЧАЮЩИХ УЧЕБНИКАХ И УЧИТЕЛЯХ</title>
<link>http://repository.enu.kz/handle/enu/24207</link>
<description>КАЗАХСКАЯ МАТЕМАТИЧЕСКАЯ СПРАВЕДЛИВОСТЬ В ШКОЛЬНОМ ОБРАЗОВАНИИ – ЭТО РАВНЫЕ ДЛЯ ВСЕХ УСЛОВИЯ В ОБУЧАЮЩИХ УЧЕБНИКАХ И УЧИТЕЛЯХ
Темиргалиев, Н.; Нуртазина, К.Б.; Таугынбаева, Г.Е.; Жубанышева, А.Ж.
</description>
<pubDate>Mon, 01 Jan 2024 00:00:00 GMT</pubDate>
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<dc:date>2024-01-01T00:00:00Z</dc:date>
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<title>MACHINE LEARNING ALGORITHMS IN SIEM SYSTEMS FOR ENHANCED DETECTION AND MANAGEMENT OF SECURITY EVENTS</title>
<link>http://repository.enu.kz/handle/enu/24206</link>
<description>MACHINE LEARNING ALGORITHMS IN SIEM SYSTEMS FOR ENHANCED DETECTION AND MANAGEMENT OF SECURITY EVENTS
Nurusheva, A.; Abdiraman, A.; Satybaldina, D.; Goranin, N.
As cyber threats become increasingly sophisticated, traditional Security Information&#13;
and Event Management (SIEM) systems face challenges in effectively identifying and responding to&#13;
these dangers. This research presents the development of a SIEM system integrated with machine&#13;
learning (ML) to enhance threat detection, anomaly identification, and automated incident response.&#13;
The integration of ML allows the SIEM system to go beyond conventional rule-based approaches,&#13;
enabling the detection of previously unknown threats by learning from historical data. The system&#13;
employs advanced algorithms to analyze large-scale log data and network traffic, providing real-time&#13;
insights and reducing false positives. Key features of this SIEM include anomaly detection, predictive&#13;
analytics, and adaptive thresholds, which allow it to adjust dynamically based on contextual data.&#13;
By adapting to new and evolving cyber threats, the system provides a more resilient and proactive&#13;
defense against potential attacks. The results indicate that integrating machine learning into SIEM&#13;
systems can offer organizations a more effective, scalable, and adaptive security solution, ensuring&#13;
the protection of critical infrastructure and data in a rapidly changing digital landscape.
</description>
<pubDate>Mon, 01 Jan 2024 00:00:00 GMT</pubDate>
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<dc:date>2024-01-01T00:00:00Z</dc:date>
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