With most technical fields, there exists a delay between fundamental academic research and practical industrial uptake. Whilst some sciences have robust and well-established processes for commercialisation, such as the pharmaceutical practice of regimented drug trials, other fields face transitory periods in which fundamental academic advancements diffuse gradually into the space of commerce and industry. For the still relatively young field of Automated/Autonomous Machine Learning (AutoML/AutonoML), that transitory period is under way, spurred on by a burgeoning interest from broader society. Yet, to date, little research has been undertaken to assess the current state of this dissemination and its uptake. Thus, this review makes two primary contributions to knowledge around this topic. Firstly, it provides the most up-to-date and comprehensive survey of existing AutoML tools, both open-source and commercial. Secondly, it motivates and outlines a framework for assessing whether an AutoML solution designed for real-world application is 'performant'; this framework extends beyond the limitations of typical academic criteria, considering a variety of stakeholder needs and the human-computer interactions required to service them. Thus, additionally supported by an extensive assessment and comparison of academic and commercial case-studies, this review evaluates mainstream engagement with AutoML in the early 2020s, identifying obstacles and opportunities for accelerating future uptake.
翻译:在大多数技术领域,基础学术研究和实际工业吸收之间出现延误。虽然一些科学有健全和完善的商业化过程,例如集成药物试验的制药实践,但其他领域面临过渡阶段,基本学术进步逐渐扩散到商业和工业领域;对于仍然相对年轻的自动化/自主机器学习领域(自动ML/自动ML/自动ML)而言,过渡阶段正在进行中,受到广大社会日益浓厚的兴趣的刺激;然而,迄今为止,对于评估这种传播及其吸收现状的研究很少,因此,这一审查对围绕这个主题的知识作出了两个主要贡献;首先,它对现有自动MLM工具,包括开放来源和商业领域,进行了最最新和全面的调查;第二,它激励和概述了一个框架,用以评估为现实世界应用设计的自动ML解决方案是否“完善”;这一框架超越了典型学术标准的局限性,考虑到各种利益攸关方的需求和为它们提供服务所需的人计算机互动;因此,这一审查提供了两项主要贡献:首先,它对现有自动MLML工具,包括开放和商业工具的现有工具进行最新和全面的调查;第二,它激励和概述了一个框架,用以评估2020年加速进行主流和商业案例审查,并查明各种机会。