On Continuous Integration / Continuous Delivery for Automated Deployment of Machine Learning Models using MLOps
February 07, 2022 Β· Declared Dead Β· π International Conference on Artificial Intelligence and Knowledge Engineering
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Authors
Satvik Garg, Pradyumn Pundir, Geetanjali Rathee, P. K. Gupta, Somya Garg, Saransh Ahlawat
arXiv ID
2202.03541
Category
cs.SE: Software Engineering
Cross-listed
cs.LG
Citations
72
Venue
International Conference on Artificial Intelligence and Knowledge Engineering
Last Checked
3 months ago
Abstract
Model deployment in machine learning has emerged as an intriguing field of research in recent years. It is comparable to the procedure defined for conventional software development. Continuous Integration and Continuous Delivery (CI/CD) have been shown to smooth down software advancement and speed up businesses when used in conjunction with development and operations (DevOps). Using CI/CD pipelines in an application that includes Machine Learning Operations (MLOps) components, on the other hand, has difficult difficulties, and pioneers in the area solve them by using unique tools, which is typically provided by cloud providers. This research provides a more in-depth look at the machine learning lifecycle and the key distinctions between DevOps and MLOps. In the MLOps approach, we discuss tools and approaches for executing the CI/CD pipeline of machine learning frameworks. Following that, we take a deep look into push and pull-based deployments in Github Operations (GitOps). Open exploration issues are also identified and added, which may guide future study.
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