The hidden phase of industrial cyberattacks and how to spot it early
Digitalization Tech Talks: Episode 62 In the 62nd episode of Digitalization Tech Talks, hosts Jonas Norinder and Don Mack kick off a two‑part series on the evolving state of industrial cybersecurity. They uncover what’s really happening inside OT networks long before a cyber incident hits the plant floor including why over 80% of adversary behavior occurs months before impact, […]
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