CyberIntel ⬡ News
★ Saved ◆ Cyber Reads
← Back ◇ Industry News & Leadership Mar 24, 2026

AiStrike cuts alert noise with Continuous Detection Engineering

Help Net Security Archived Mar 24, 2026 ✓ Full text saved

AiStrike has launched Continuous Detection Engineering, a capability that transforms how security operations teams manage detections, shifting from reactive alert triage to proactive, intelligence-driven optimization. The detection quality gap Security teams today are overwhelmed by alerts, but the root cause is not volume, it’s detection quality. AiStrike’s analysis across enterprise environments revealed that: More than 80% of alerts lead to dead ends Fewer than 20% of detection rules ever tri

Full text archived locally
✦ AI Summary · Claude Sonnet


    Industry News March 24, 2026 Share AiStrike cuts alert noise with Continuous Detection Engineering AiStrike has launched Continuous Detection Engineering, a capability that transforms how security operations teams manage detections, shifting from reactive alert triage to proactive, intelligence-driven optimization. The detection quality gap Security teams today are overwhelmed by alerts, but the root cause is not volume, it’s detection quality. AiStrike’s analysis across enterprise environments revealed that: More than 80% of alerts lead to dead ends Fewer than 20% of detection rules ever trigger alerts Under 5% of rules generate most of the alert noise Over 70% of detection gaps can be addressed using existing data in SIEM More than 50% of SIEM data is never used for detection These inefficiencies lead to alert fatigue, detection blind spots, higher SOC costs, and underused SIEM investments. AiStrike addresses this challenge by introducing a continuous, closed-loop model for detection engineering. A New model for security operations AiStrike’s Continuous Detection Engineering replaces static detection management with a continuously improving system aligned to real-world threats. Inspired by software engineering practices, AiStrike brings detections-as-code, automated validation, and feedback-driven optimization into a closed-loop detection model. Key capabilities include: Detection coverage & gap analysis: Maps detection coverage against frameworks like MITRE ATT&CK and real-world threat intelligence to identify coverage gaps and auto-generate detections to close them Intelligent noise reduction: Continuously optimizes high-volume, low-value detections to reduce false positives without sacrificing visibility Detection validation & readiness: Ensures every detection is functional, relevant, and actionable, eliminating inactive or misconfigured rules before incidents occur Data & SIEM efficiency optimization: Identifies high-impact telemetry to improve coverage while reducing ingestion and storage costs By integrating feedback from real investigations and incident outcomes, AiStrike ensures detection logic continuously evolves alongside each organization’s environment and threat landscape. From reactive SOC to continuous improvement “Security teams don’t have an alert problem – they have a detection engineering problem,” said Nitin Agale, CEO of AiStrike. “Most organizations are operating with noisy, misaligned, or incomplete detections. We built AiStrike to continuously improve detection quality, reduce noise, and align security operations to real threats – without requiring teams to rip and replace their existing stack.” “AiStrike reduced our alert noise by over 90%, but more importantly, it gave us clear visibility into which detections are actually effective,” said Robert Vaile, CISO, SUBSCRIBE. “Instead of chasing alerts, we’re now continuously improving our coverage against real threats.” Built for the security stack Many organizations struggle to stand up a dedicated detection engineering team or modernize workflows around Git, CI/CD, and data engineering. AiStrike delivers these best practices as a product capability, enabling customers to achieve mature detection engineering outcomes without restructuring their SecOps organization. AiStrike integrates with existing SIEM, XDR, and cloud security platforms, enabling organizations to improve outcomes without replacing existing tools. CISOs gain greater confidence that their SIEM and XDR investments are tuned to their actual risk, while SOC leaders see improved time-to-detect and time-to-contain without adding headcount. The result: Up to 90% reduction in alert noise Improved detection coverage aligned to real threats Lower SOC and SIEM costs Faster, more effective investigation cycles More about AiStrike RSAC 2026 Share
    💬 Team Notes
    Article Info
    Source
    Help Net Security
    Category
    ◇ Industry News & Leadership
    Published
    Mar 24, 2026
    Archived
    Mar 24, 2026
    Full Text
    ✓ Saved locally
    Open Original ↗