A Digital Engineering Approach to Testing Modern AI and Complex Systems
Modern AI (i.e., Deep Learning and its variants) is here to stay. However, its enigmatic black box nature presents a fundamental challenge to the traditional methods of test and validation (T&E). Or does it? In this paper we introduce a Digital Engineering (DE) approach to T&E (DE-T&E),...
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Sprache: | eng |
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Zusammenfassung: | Modern AI (i.e., Deep Learning and its variants) is here to stay. However,
its enigmatic black box nature presents a fundamental challenge to the
traditional methods of test and validation (T&E). Or does it? In this paper we
introduce a Digital Engineering (DE) approach to T&E (DE-T&E), combined with
generative AI, that can achieve requisite mil spec statistical validation as
well as uncover potential deleterious Black Swan events that might otherwise
not be uncovered until it is too late. An illustration of these concepts is
presented for an advanced modern radar example employing deep learning AI. |
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DOI: | 10.48550/arxiv.2411.17479 |