Who Needs MLOps: What Data Scientists Seek to Accomplish and How Can MLOps Help?
Sasu M\"akinen, Henrik Skogstr\"om, Eero Laaksonen, Tommi, Mikkonen

TL;DR
This study surveys data scientists to understand their activities and highlights how MLOps practices become essential when managing multiple models, data, and frequent retraining in production environments.
Contribution
It provides empirical insights into data scientists' workflows and identifies the organizational stages where MLOps offers significant benefits.
Findings
Up to 40% work with models and infrastructure
Majority focus on relational and time series data
MLOps benefits are most evident in managing multiple models and retraining
Abstract
Following continuous software engineering practices, there has been an increasing interest in rapid deployment of machine learning (ML) features, called MLOps. In this paper, we study the importance of MLOps in the context of data scientists' daily activities, based on a survey where we collected responses from 331 professionals from 63 different countries in ML domain, indicating on what they were working on in the last three months. Based on the results, up to 40% respondents say that they work with both models and infrastructure; the majority of the work revolves around relational and time series data; and the largest categories of problems to be solved are predictive analysis, time series data, and computer vision. The biggest perceived problems revolve around data, although there is some awareness of problems related to deploying models to production and related procedures. To…
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