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AI-ready questions test whether you can reason about LLMs and AI systems as engineering material — limits, costs, evaluation, failure modes — not just hype.

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AI-ready · Governance Risk

A fairness audit shows your AI underwriting model is using a variable that correlates strongly with a protected class, even though the variable itself seems neutral, like credit-based insurance score or zip code. How do you decide whether it stays in the model?

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I don’t treat “the variable itself seems neutral” as the end of the analysis — proxy discrimination is exactly the case where a facially neutral variable produces a disparate outco

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