21th AIAI 2025, 26 - 29 June 2025, Limassol, Cyprus

Agile MLOps: Bridging the Gap Between Agility and Machine Learning Operations

Vouta Papageorgiou Aikaterini, Symeonidis Georgios, Nerantzis Evangelos, Papakostas George

Abstract:

  In today’s dynamic business environment, organizations are increasingly leveraging machine learning (ML) technologies to gain valuable insights and drive innovation. However, the deployment and management of ML models in production environments pose significant challenges, requiring a cohesive and agile approach. This case study explores the convergence of Agile methodologies and Machine Learning Operations (MLOps), highlighting their commonalities, differences, and potential synergies between the two. By examining the application of Agile principles, particularly Scrum, in MLOps maturity, this study aims to demonstrate how organizations can enhance agility, collaboration, and innovation in their machine learning initiatives.  

*** Title, author list and abstract as submitted during Camera-Ready version delivery. Small changes that may have occurred during processing by Springer may not appear in this window.