Author
Okonkwo, FavourAdvisor
Dean, RichardMoazzami, Farzad
Affiliation
Department of Electrical and Computer Engineering, Morgan State UniversityIssue Date
2024-10Keywords
Intrusion Detection Systems (IDS)Telemetry Enterprise Networks
Cybersecurity
Artificial Intelligence (AI)
Machine Learning (ML)
Behavioral Analysis
Predictive Analytics
Threat Intelligence
Cyber Threats
Data Analysis
Metadata
Show full item recordCitation
Okonkwo, F. (2024). Advanced Intrusion Detection In Telemetry Enterprise Networks. International Telemetering Conference Proceedings, 59.Additional Links
https://telemetry.org/Abstract
This paper examines advanced intrusion detection systems (IDS) essential for protecting telemetry enterprise networks against sophisticated cyber threats. It highlights the shift from traditional IDS methods to advanced techniques enhanced by artificial intelligence (AI) and machine learning (ML), focusing on the unique challenges posed by the scale and complexity of telemetry data. We analyze the effectiveness of behavioral analysis, predictive analytics, and threat intelligence integration in telemetry environments alongside a comparative review of current technologies and tools. The paper illustrates successful implementations and the benefits of advanced IDS through case studies. Our research indicates that despite existing challenges, integrating AI, ML, and analytics into IDS presents promising avenues for improving cybersecurity in telemetry networks. We conclude with actionable recommendations for cybersecurity practitioners and suggest directions for future research.Type
Proceedingstext
Language
enISSN
0884-51231546-2188