LGHCJan 7, 2021

How Much Automation Does a Data Scientist Want?

arXiv:2101.03970v158 citations
Originality Incremental advance
AI Analysis

This study addresses the question of how much automation data scientists desire, which is important for developers of AutoML systems to ensure user adoption and satisfaction.

This paper investigates data scientists' preferences for automation in the DS/ML lifecycle. It found that desired levels of automation and types of explanation vary significantly based on the DS/ML stage and user persona, suggesting no user-driven rationale for complete end-to-end automation.

Data science and machine learning (DS/ML) are at the heart of the recent advancements of many Artificial Intelligence (AI) applications. There is an active research thread in AI, \autoai, that aims to develop systems for automating end-to-end the DS/ML Lifecycle. However, do DS and ML workers really want to automate their DS/ML workflow? To answer this question, we first synthesize a human-centered AutoML framework with 6 User Role/Personas, 10 Stages and 43 Sub-Tasks, 5 Levels of Automation, and 5 Types of Explanation, through reviewing research literature and marketing reports. Secondly, we use the framework to guide the design of an online survey study with 217 DS/ML workers who had varying degrees of experience, and different user roles "matching" to our 6 roles/personas. We found that different user personas participated in distinct stages of the lifecycle -- but not all stages. Their desired levels of automation and types of explanation for AutoML also varied significantly depending on the DS/ML stage and the user persona. Based on the survey results, we argue there is no rationale from user needs for complete automation of the end-to-end DS/ML lifecycle. We propose new next steps for user-controlled DS/ML automation.

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