Corpus ID: 83459629

On Challenges in Machine Learning Model Management

@article{Schelter2018OnCI,
  title={On Challenges in Machine Learning Model Management},
  author={Sebastian Schelter and Felix Bie{\ss}mann and Tim Januschowski and David Salinas and Stephan Seufert and Gyuri Szarvas},
  journal={IEEE Data Eng. Bull.},
  year={2018},
  volume={41},
  pages={5-15}
}
  • Sebastian Schelter, Felix Bießmann, +3 authors Gyuri Szarvas
  • Published in IEEE Data Eng. Bull. 2018
  • Computer Science
  • The training, maintenance, deployment, monitoring, organization and documentation of machine learning (ML) models – in short model management – is a critical task in virtually all production ML use cases. Wrong model management decisions can lead to poor performance of a ML system and can result in high maintenance cost. As both research on infrastructure as well as on algorithms is quickly evolving, there is a lack of understanding of challenges and best practices for ML model management… CONTINUE READING

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