Case-Study-Based Requirements Analysis of Manufacturing Companies for Auto-ML Solutions

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Abstract

Methods of machine learning (ML) are difficult for manufacturing companies to employ productively. Data science is not their core skill, and acquiring talent is expensive. Automated machine learning (Auto-ML) aims to alleviate this, democratizing machine learning by introducing elements such as low-code or no-code functionalities into its model creation process. Due to the dynamic vendor market of Auto-ML, it is difficult for manufacturing companies to successfully implement this technology. Different solutions as well as constantly changing requirements and functional scopes make a correct software selection difficult. This paper aims to alleviate said challenge by providing a longlist of requirements that companies should pay attention to when selecting a solution for their use case. The paper is part of a larger research effort, in which a structured selection process for Auto-ML solutions in manufacturing companies is designed. The longlist itself is the result of six case studies of different manufacturing companies, following the method of case study research by Eisenhardt. A total of 75 distinct requirements were identified, spanning the entire machine learning and modeling pipeline.

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APA

Schuh, G., Stroh, M. F., & Benning, J. (2022). Case-Study-Based Requirements Analysis of Manufacturing Companies for Auto-ML Solutions. In IFIP Advances in Information and Communication Technology (Vol. 663 IFIP, pp. 43–50). Springer Science and Business Media Deutschland GmbH. https://doi.org/10.1007/978-3-031-16407-1_6

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