How AI-Powered IOAs and Behavioral ML Detect Advanced Threats at Runtime

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On Demand

Caught in the Act: How AI-Powered IOAs and Behavioral ML Detect Advanced Threats at Runtime

Many organizations today use machine learning (ML) for malware classification and static file analysis. While this can be useful for detecting and responding to file-based threats pre-execution, adversaries continue to evolve their methods. Today’s attacks more often use malware-free or fileless attacks, which have rapidly grown to represent over 70% of all attacks.

Join CrowdStrike’s Joel Spurlock, Sr. Director, Malware Research and Joe Faulhaber, Principal Engineer for a webinar where you will:

  • Hear how behavioral ML and AI-powered indicators of attacks help cybersecurity teams stay ahead of today’s adversaries
  • Discover how behavioral ML at runtime enables you to analyze adversary intent and movement, regardless of malware or tools used
  • See a demo of CrowdStrike’s ML and AI-power detection and investigation processes

Check out Part I of this "Artificial Intelligence" CrowdCast series -- What’s AI Got to Do with Me? How AI Helps You Stop Modern Attacks