论机器学习实验管理工具的有效性

S. Idowu, O. Osman, D. Strüber, T. Berger
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引用次数: 2

摘要

机器学习实验管理工具支持开发人员和数据科学家在构建智能软件系统时规划、跟踪和检索机器学习实验和资产。其中,它们允许追溯系统行为以进行实验运行,例如,当模型性能偏离时。不幸的是,尽管这些工具激增,但它们并没有很好地与传统的软件工程工具集成,并且没有关于它们对用户的有效性和价值的可靠经验数据。本文对统一有效的软件工程和实验管理软件提出了一个简短的研究议程和初步成果。
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On the Effectiveness of Machine Learning Experiment Management Tools
Machine learning experiment management tools support developers and data scientists on planning, tracking, and retrieving machine-learning experiments and assets when building intelligent software systems. Among others, they allow tracing back system behavior to experiment runs, for instance, when model performance drifts. Unfortunately, despite a surge of these tools, they are not well integrated with traditional software engineering tooling, and no hard empirical data exists on their effectiveness and value for users. We present a short research agenda and early results towards unified and effective software engineering and experiment management software.
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