Making security improvements in systems often requires sacrificing utility, as evidenced by a case where log-probabilities were hidden to enhance security in machine learning. Unlike fields such as system security, where previous attacks have led to fundamental redesigns, machine learning has historically seen little motivation to compromise system functionality in response to potential threats. The rare instance of an acknowledged attack compelling enough for a system designer to prioritize security over utility highlights the evolving nature of machine learning's approach to security challenges.

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