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MLOps for Scarce Image Data: A Use Case in Microscopic Image Analysis (2309.15521v2)

Published 27 Sep 2023 in cs.LG, cs.CV, and eess.IV

Abstract: Nowadays, Machine Learning (ML) is experiencing tremendous popularity that has never been seen before. The operationalization of ML models is governed by a set of concepts and methods referred to as Machine Learning Operations (MLOps). Nevertheless, researchers, as well as professionals, often focus more on the automation aspect and neglect the continuous deployment and monitoring aspects of MLOps. As a result, there is a lack of continuous learning through the flow of feedback from production to development, causing unexpected model deterioration over time due to concept drifts, particularly when dealing with scarce data. This work explores the complete application of MLOps in the context of scarce data analysis. The paper proposes a new holistic approach to enhance biomedical image analysis. Our method includes: a fingerprinting process that enables selecting the best models, datasets, and model development strategy relative to the image analysis task at hand; an automated model development stage; and a continuous deployment and monitoring process to ensure continuous learning. For preliminary results, we perform a proof of concept for fingerprinting in microscopic image datasets.

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Authors (6)
  1. Angelo Yamachui Sitcheu (2 papers)
  2. Nils Friederich (7 papers)
  3. Simon Baeuerle (6 papers)
  4. Oliver Neumann (12 papers)
  5. Markus Reischl (16 papers)
  6. Ralf Mikut (55 papers)
Citations (1)

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