2022
DOI: 10.48550/arxiv.2203.08638
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Building Domain-Specific Machine Learning Workflows: A Conceptual Framework for the State-of-the-Practice

Abstract: Domain experts are increasingly employing machine learning to solve their domain-specific problems. This article presents six key challenges that a domain expert faces in transforming their problem into a computational workflow, and then into an executable implementation. These challenges arise out of our conceptual framework which presents the "route" of options that a domain expert may choose to take while developing their solution.To ground our conceptual framework in the stateof-the-practice, this article … Show more

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“…Professional ML specialists usually have formal training in computer science (CS) or applied math. However, in recent years a growing number of non-ML specialists such as scientists [3,4], web developers [5], UX designers [6], hobbyists, artists, and other creative practitioners [7] are informally learning ML to apply it to their respective domains. As ML solutions are being sought in areas ranging from medicine to journalism, the population of informal learners of ML will continue to grow [8].…”
Section: Introductionmentioning
confidence: 99%
“…Professional ML specialists usually have formal training in computer science (CS) or applied math. However, in recent years a growing number of non-ML specialists such as scientists [3,4], web developers [5], UX designers [6], hobbyists, artists, and other creative practitioners [7] are informally learning ML to apply it to their respective domains. As ML solutions are being sought in areas ranging from medicine to journalism, the population of informal learners of ML will continue to grow [8].…”
Section: Introductionmentioning
confidence: 99%