MLOps FMEA: A Proactive & Structured Approach to Mitigate Failures and Ensure Success for Machine Learning Operations

Abhishek Paul, Roderick Y. Son, Shiv A. Balodi, K. Crooks
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Abstract

Machine learning applications have seen an exponential rise in prevalence across many different industries including healthcare, banking, manufacturing, and defense. While there is a lot of potential for machine learning applications, successful development and productionization is not assured. To prevent failures and ensure success, a Machine Learning Operations (MLOps) Failure Modes and Effects Analysis (FMEA) is proposed as a proactive structured approach for risk identification and mitigation.
MLOps FMEA:减轻故障并确保机器学习运营成功的积极主动的结构化方法
机器学习应用在医疗保健、银行、制造和国防等多个行业的普及率呈指数级增长。虽然机器学习应用潜力巨大,但并不能确保成功开发和生产。为了防止失败并确保成功,我们提出了机器学习操作(MLOps)故障模式和影响分析(FMEA),作为一种积极主动的结构化风险识别和缓解方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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