AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments

Abstract
This study explores the role of artificial intelligence in strengthening cybersecurity threat detection frameworks for next-generation network environments. The rapid expansion of cloud computing, Internet of Things ecosystems, and distributed digital infrastructures has significantly increased cybersecurity risks and operational vulnerabilities. Traditional cybersecurity systems often struggle to detect sophisticated and evolving threats due to their dependence on static detection mechanisms. Using a qualitative research approach and content analysis method, this study examines recent developments in artificial intelligence, machine learning algorithms, and intelligent cybersecurity frameworks. The findings indicate that AI-driven cybersecurity systems improve real-time threat detection, anomaly identification, automated monitoring, and predictive security analysis. Machine learning technologies such as Random Forest, Support Vector Machine, and deep learning models demonstrate strong potential for enhancing intrusion detection accuracy and reducing false positive rates. The study also identifies critical challenges related to ethical governance, privacy protection, computational complexity, and adversarial attacks in AI-based cybersecurity systems
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How to Cite

Saidala, et al. (2026). AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments. TechComp Innovations: Journal of Computer Science and Technology, 3(1). https://doi.org/10.70063/techcompinnovations.v3i1.184

Saidala , Ravi Kumar; Pashayev, Amirkhan; Hasanov, Tofig, "AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments," TechComp Innovations: Journal of Computer Science and Technology, vol. 3, no. 1, 2026.

Saidala , Ravi Kumar; Pashayev, Amirkhan; Hasanov, Tofig. "AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments." TechComp Innovations: Journal of Computer Science and Technology, vol. 3, no. 1, 2026.

Saidala , Ravi Kumar; Pashayev, Amirkhan; Hasanov, Tofig. "AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments." TechComp Innovations: Journal of Computer Science and Technology 3, no. 1 (2026).

Saidala, et al. (2026) 'AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments', TechComp Innovations: Journal of Computer Science and Technology, 3(1). doi: 10.70063/techcompinnovations.v3i1.184.

Saidala , Ravi Kumar; Pashayev, Amirkhan; Hasanov, Tofig. AI-Driven Cybersecurity Threat Detection Framework for Next-Generation Network Environments. TechComp Innovations: Journal of Computer Science and Technology. 2026;3(1).

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