Efforts to make machine learning more widely accessible have led to a rapid increase in Auto-ML tools that aim to automate the process of training and deploying machine learning. To understand how Auto-ML tools are used in practice today, we performed a qualitative study with participants ranging from novice hobbyists to industry researchers who use Auto-ML tools. We present insights into the benefits and deficiencies of existing tools, as well as the respective roles of the human and automation in ML workflows. Finally, we discuss design implications for the future of Auto-ML tool development. We argue that instead of full automation being the ultimate goal of Auto-ML, designers of these tools should focus on supporting a partnership between the user and the Auto-ML tool. This means that a range of Auto-ML tools will need to be developed to support varying user goals such as simplicity, reproducibility, and reliability.
翻译:使机器学习更加普及的努力导致旨在培训和部署机器学习过程自动化的自动解运工具的迅速增加。为了了解今天如何实际使用自动解运工具,我们进行了一项质量研究,参加者包括新爱好者和使用自动解运工具的行业研究人员。我们深入了解现有工具的优点和缺点,以及人力和自动化在ML工作流程中的各自作用。最后,我们讨论了自动解运工具开发的未来对设计的影响。我们主张,这些工具的设计者不应把完全自动化作为自动解运工具的最终目标,而应侧重于支持用户与自动解运工具之间的伙伴关系。这意味着需要开发一系列自动解运工具,以支持简单、可复制和可靠性等不同的用户目标。