Management of Machine Learning Lifecycle Artifacts

Marius Schlegel, K. Sattler
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引用次数: 9

Abstract

The explorative and iterative nature of developing and operating ML applications leads to a variety of artifacts, such as datasets, features, models, hyperparameters, metrics, software, configurations, and logs. In order to enable comparability, reproducibility, and traceability of these artifacts across the ML lifecycle steps and iterations, systems and tools have been developed to support their collection, storage, and management. It is often not obvious what precise functional scope such systems offer so that the comparison and the estimation of synergy effects between candidates are quite challenging. In this paper, we aim to give an overview of systems and platforms which support the management of ML lifecycle artifacts. Based on a systematic literature review, we derive assessment criteria and apply them to a representative selection of more than 60 systems and platforms.
机器学习生命周期工件的管理
开发和操作ML应用程序的探索性和迭代性导致了各种各样的工件,例如数据集、特征、模型、超参数、度量、软件、配置和日志。为了在ML生命周期步骤和迭代中实现这些工件的可比性、再现性和可追溯性,已经开发了系统和工具来支持它们的收集、存储和管理。这些系统提供的精确功能范围通常并不明显,因此比较和估计候选系统之间的协同效应相当具有挑战性。在本文中,我们旨在概述支持机器学习生命周期工件管理的系统和平台。基于系统的文献回顾,我们得出评估标准,并将其应用于60多个系统和平台的代表性选择。
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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