Low-Code Machine Learning Platforms: A Fastlane to Digitalization

IF 3.4 Q2 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS Informatics Pub Date : 2023-06-12 DOI:10.3390/informatics10020050
K. Raghavendran, Ahmed Elragal
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Abstract

In the context of developing machine learning models, until and unless we have the required data engineering and machine learning development competencies as well as the time to train and test different machine learning models and tune their hyperparameters, it is worth trying out the automatic machine learning features provided by several cloud-based and cloud-agnostic platforms. This paper explores the possibility of generating automatic machine learning models with low-code experience. We developed criteria to compare different machine learning platforms for generating automatic machine learning models and presenting their results. Thereafter, lessons learned by developing automatic machine learning models from a sample dataset across four different machine learning platforms were elucidated. We also interviewed machine learning experts to conceptualize their domain-specific problems that automatic machine learning platforms can address. Results showed that automatic machine learning platforms can provide a fast track for organizations seeking the digitalization of their businesses. Automatic machine learning platforms help produce results, especially for time-constrained projects where resources are lacking. The contribution of this paper is in the form of a lab experiment in which we demonstrate how low-code platforms can provide a viable option to many business cases and, henceforth, provide a lane that is faster than the usual hiring and training of already scarce data scientists and to analytics projects that suffer from overruns.
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低代码机器学习平台:数字化的快车道
在开发机器学习模型的背景下,除非我们具备所需的数据工程和机器学习开发能力,以及训练和测试不同的机器学习模型并调整其超参数的时间,否则值得尝试几个基于云和与云无关的平台提供的自动机器学习功能。本文探讨了用低代码经验生成自动机器学习模型的可能性。我们制定了标准来比较不同的机器学习平台,以生成自动机器学习模型并展示其结果。此后,通过在四个不同的机器学习平台上从样本数据集开发自动机器学习模型,总结了经验教训。我们还采访了机器学习专家,以概念化他们的领域特定问题,自动机器学习平台可以解决这些问题。结果表明,自动机器学习平台可以为寻求业务数字化的组织提供快速通道。自动机器学习平台有助于产生结果,尤其是对于时间有限、资源匮乏的项目。这篇论文的贡献是以实验室实验的形式出现的,我们在实验中展示了低代码平台如何为许多商业案例提供可行的选择,并从此为已经稀缺的数据科学家和面临超支的分析项目提供了一条比通常招聘和培训更快的途径。
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来源期刊
Informatics
Informatics Social Sciences-Communication
CiteScore
6.60
自引率
6.50%
发文量
88
审稿时长
6 weeks
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