English

Using AntiPatterns to avoid MLOps Mistakes

Machine Learning 2021-07-02 v1

Abstract

We describe lessons learned from developing and deploying machine learning models at scale across the enterprise in a range of financial analytics applications. These lessons are presented in the form of antipatterns. Just as design patterns codify best software engineering practices, antipatterns provide a vocabulary to describe defective practices and methodologies. Here we catalog and document numerous antipatterns in financial ML operations (MLOps). Some antipatterns are due to technical errors, while others are due to not having sufficient knowledge of the surrounding context in which ML results are used. By providing a common vocabulary to discuss these situations, our intent is that antipatterns will support better documentation of issues, rapid communication between stakeholders, and faster resolution of problems. In addition to cataloging antipatterns, we describe solutions, best practices, and future directions toward MLOps maturity.

Keywords

Cite

@article{arxiv.2107.00079,
  title  = {Using AntiPatterns to avoid MLOps Mistakes},
  author = {Nikhil Muralidhar and Sathappah Muthiah and Patrick Butler and Manish Jain and Yu Yu and Katy Burne and Weipeng Li and David Jones and Prakash Arunachalam and Hays 'Skip' McCormick and Naren Ramakrishnan},
  journal= {arXiv preprint arXiv:2107.00079},
  year   = {2021}
}
R2 v1 2026-06-24T03:46:58.186Z