Operationalizing Machine Learning: An Interview Study

September 16, 2022 Β· Declared Dead Β· πŸ› arXiv.org

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Authors Shreya Shankar, Rolando Garcia, Joseph M. Hellerstein, Aditya G. Parameswaran arXiv ID 2209.09125 Category cs.SE: Software Engineering Cross-listed cs.HC, cs.LG Citations 61 Venue arXiv.org Last Checked 3 months ago
Abstract
Organizations rely on machine learning engineers (MLEs) to operationalize ML, i.e., deploy and maintain ML pipelines in production. The process of operationalizing ML, or MLOps, consists of a continual loop of (i) data collection and labeling, (ii) experimentation to improve ML performance, (iii) evaluation throughout a multi-staged deployment process, and (iv) monitoring of performance drops in production. When considered together, these responsibilities seem staggering -- how does anyone do MLOps, what are the unaddressed challenges, and what are the implications for tool builders? We conducted semi-structured ethnographic interviews with 18 MLEs working across many applications, including chatbots, autonomous vehicles, and finance. Our interviews expose three variables that govern success for a production ML deployment: Velocity, Validation, and Versioning. We summarize common practices for successful ML experimentation, deployment, and sustaining production performance. Finally, we discuss interviewees' pain points and anti-patterns, with implications for tool design.
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