Sustainable MLOps: Trends and Challenges

D. Tamburri
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引用次数: 48

Abstract

Even simply through a GoogleTrends search it becomes clear that Machine-Learning Operations-or MLOps, for short-are climbing in interest from both a scientific and practical perspective. On the one hand, software components and middleware are proliferating to support all manners of MLOps, from AutoML (i.e., software which enables developers with limited machine-learning expertise to train high-quality models specific to their domain or data) to feature-specific ML engineering, e.g., Explainability and Interpretability. On the other hand, the more these platforms penetrate the day-to-day activities of software operations, the more the risk for AI Software becoming unsustainable from a social, technical, or organisational perspective. This paper offers a concise definition of MLOps and AI Software Sustainability and outlines key challenges in its pursuit.
可持续MLOps:趋势与挑战
即使只是简单地通过谷歌趋势搜索,从科学和实践的角度来看,机器学习操作(简称MLOps)的兴趣都在上升。一方面,软件组件和中间件正在激增,以支持所有形式的mlop,从AutoML(即,使具有有限机器学习专业知识的开发人员能够训练特定于其领域或数据的高质量模型的软件)到特定于功能的ML工程,例如,可解释性和可解释性。另一方面,这些平台越多地渗透到软件运营的日常活动中,从社会、技术或组织的角度来看,人工智能软件变得不可持续的风险就越大。本文提供了MLOps和人工智能软件可持续性的简明定义,并概述了其追求的关键挑战。
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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