2022
DOI: 10.48550/arxiv.2203.02958
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Towards a Responsible AI Development Lifecycle: Lessons From Information Security

Erick Galinkin

Abstract: Legislation and public sentiment throughout the world have promoted fairness metrics, explainability, and interpretability as prescriptions for the responsible development of ethical artificial intelligence systems. Despite the importance of these three pillars in the foundation of the field, they can be challenging to operationalize and attempts to solve the problems in production environments often feel Sisyphean. This difficulty stems from a number of factors: fairness metrics are computationally difficult … Show more

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