Indurex Emerges From Stealth to Close Security Gap in Cyber-Physical Systems

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What happened

Indurex, a Netherlands-based cybersecurity startup focused on industrial environments, publicly launched after operating in stealth, unveiling a platform that uses AI and correlated OT/IT data to strengthen defenses for cyber-physical systems.

Who is affected

Operators of critical infrastructure, manufacturing, utilities, energy, and data centers that rely on interconnected cyber-physical and operational technology systems are the primary audience for this emerging security capability. 

Why CISOs should care

Cyber-physical systems (CPS) combine IT and OT environments, creating complex attack surfaces where traditional tools often generate fragmented data and high alert noise. Indurex’s unified, AI-driven platform aims to correlate alarms, risk contexts, and safety metrics, potentially improving visibility, reducing noise, and enabling more effective prioritization of threats.

3 practical actions

  1. Evaluate CPS visibility gaps: Conduct an assessment of current OT and cyber-physical monitoring tools to identify blind spots and high-noise alert sources.
  2. Integrate IT/OT data streams: Prioritize projects that bring together data from IT and OT systems to enable more comprehensive risk intelligence and contextual analysis.
  3. Pilot adaptive risk scoring: Test adaptive or AI-driven risk scoring methodologies in controlled industrial environments to improve prioritization of actionable events over noise.