This paper argues that as AI systems become dramatically more capable than human experts, as foreshadowed by AlphaGo, AlphaGo Zero, and AlphaZero era “alien” strategies, we may face a crisis of understanding. Institutions increasingly accept AI outputs because they validate well, while the cost of verifying and internalizing the underlying reasons grows beyond practical human limits. We define what “understanding” should mean operationally, explain why interpretability often lags capability by default, and propose practical design directions such as verifiable artifacts, audit trails, modularity, and structured scientific machine learning to keep AI enabled science and engineering transparent enough to remain more than deference to an oracle. Figures and tables summarize the capability to interpretability gap and the resulting workflow risks.
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Vedant Bali
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Vedant Bali (Wed,) studied this question.
www.synapsesocial.com/papers/698828100fc35cd7a88473af — DOI: https://doi.org/10.5281/zenodo.18511536