• Corpus ID: 245385871

SOLIS - The MLOps journey from data acquisition to actionable insights

@article{Ciobanu2021SOLIST,
  title={SOLIS - The MLOps journey from data acquisition to actionable insights},
  author={Răzvan Alin Ciobanu and Alexandru Purdila and Laurentiu Piciu and Andrei Ionut Damian},
  journal={ArXiv},
  year={2021},
  volume={abs/2112.11925}
}
Machine Learning operations is unarguably a very important and also one of the hottest topics in Artificial Intelligence lately. Being able to define very clear hypotheses for real-life problems that can be addressed by machine learning models, collecting and curating large amounts of data for model training and validation followed by model architecture search and optimization, then finally presenting the results fits very well the scenario of Data Science experiments. However, this approach… 

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