HACK3D: Evaluating Cybersecurity of Additive Manufacturing by Crowdsourcing

05/09/2020
by   Michael Linares, et al.
0

Additive manufacturing cyber-physical system is vulnerable to both cyber and physical attacks. Statistical methods can estimate the probability of breaching security but hackathons have revealed that skilled humans can launch very innovative attacks not anticipated before. Here, we summarize lessons learned from the past two offerings of HACK3D hackathon.

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