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Quality Assurance for Machine Learning – an approach to function and system safeguarding | IEEE Conference Publication | IEEE Xplore

Quality Assurance for Machine Learning – an approach to function and system safeguarding


Abstract:

In an industrial context, high software quality is mandatory in order to avoid costly patching. We present a state of the art analysis of approaches to ensure that a spec...Show More

Abstract:

In an industrial context, high software quality is mandatory in order to avoid costly patching. We present a state of the art analysis of approaches to ensure that a specific Artificial Intelligence (AI) model is ready for release. We analyze the requirements a Machine Learning (ML) system has to fulfill in order to comply with the needs of an automotive OEM. The main implication for projects relying on ML is a holistic assessment of possible quality risks. These risks may stem from implemented ML models and spread into the delivery. We present a methodological quality assurance (QA) approach and its evaluation.
Date of Conference: 11-14 December 2020
Date Added to IEEE Xplore: 11 December 2020
ISBN Information:
Conference Location: Macau, China

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