Review Article Open Access December 27, 2023

MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms

1
Sr Data Engineer, USA
Page(s): 84-101
Received
September 21, 2023
Revised
October 31, 2023
Accepted
December 21, 2023
Published
December 27, 2023
Creative Commons

This is an Open Access article, distributed under the terms of the Creative Commons Attribution 4.0 International License (http://creativecommons.org/licenses/by/4.0/), which permits unrestricted use, distribution and reproduction in any medium or format, provided the original work is properly cited.
Copyright: Copyright © The Author(s), 2023. Published by Scientific Publications
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APA Style
Bandi, V. D. V. K. (2023). MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms. Open Journal of Agricultural Research, 3(1), 84-101. https://doi.org/10.31586/jaibd.2023.1368
ACS Style
Bandi, V. D. V. K. MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms. Open Journal of Agricultural Research 2023 3(1), 84-101. https://doi.org/10.31586/jaibd.2023.1368
Chicago/Turabian Style
Bandi, Velangani Divya Vardhan Kumar. 2023. "MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms". Open Journal of Agricultural Research 3, no. 1: 84-101. https://doi.org/10.31586/jaibd.2023.1368
AMA Style
Bandi VDVK. MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms. Open Journal of Agricultural Research. 2023; 3(1):84-101. https://doi.org/10.31586/jaibd.2023.1368
@Article{ojar1368,
AUTHOR = {Bandi, Velangani Divya Vardhan Kumar},
TITLE = {MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms},
JOURNAL = {Open Journal of Agricultural Research},
VOLUME = {3},
YEAR = {2023},
NUMBER = {1},
PAGES = {84-101},
URL = {https://www.scipublications.com/journal/index.php/JAIBD/article/view/1368},
ISSN = {2769-8874},
DOI = {10.31586/jaibd.2023.1368},
ABSTRACT = {Machine learning operations (MLOps) comprises the practices, methods, and tooling that facilitate the deployment of reliable ML models in production environments. While many aspects of cloud data platforms are designed to enable reliability, only some managed ML services support the MLOps goals of continuous integration, continuous delivery, data lineage tracking, associated reproducibility, governance, and security. Furthermore, reliability encompasses not only the fulfillment of service-level objectives, but also systematic monitoring, alerting, and incident response automation. Architectural patterns are proposed to enable reliable deployment in cloud data platforms, focusing on the implementation of continuous integration and testing pipelines for ML models and the formulation of continuous delivery and rollout strategies. Continuous integration pipelines reduce the risk of regressions and ensure sufficient model performance at the time of deployment, while continuous delivery pipelines enable rapid updates to production models within acceptable risk profiles. The landscape of publicly available MLOps frameworks, tools, and services is also examined, emphasizing the pros and cons of established and rising solutions in containerization, orchestration, model serving, and inference. Containerization and orchestration contributes to the building of reliable deployment pipelines in cloud data platforms, whether general-purpose tools (e.g. Docker and Kubernetes) or solutions tailored for ML workloads. Containerized serving frameworks designed for high-throughput, low-latency inference can benefit a wide range of business applications, while auto-scaling and model versioning capabilities enhance the ease of use of cloud-native ML services.},
}
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%A Bandi, Velangani Divya Vardhan Kumar
%D 2023
%J Open Journal of Agricultural Research

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%T MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms
%M doi:10.31586/jaibd.2023.1368
%U https://www.scipublications.com/journal/index.php/JAIBD/article/view/1368
TY  - JOUR
AU  - Bandi, Velangani Divya Vardhan Kumar
TI  - MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms
T2  - Open Journal of Agricultural Research
PY  - 2023
VL  - 3
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SN  - 2769-8874
SP  - 84
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UR  - https://www.scipublications.com/journal/index.php/JAIBD/article/view/1368
AB  - Machine learning operations (MLOps) comprises the practices, methods, and tooling that facilitate the deployment of reliable ML models in production environments. While many aspects of cloud data platforms are designed to enable reliability, only some managed ML services support the MLOps goals of continuous integration, continuous delivery, data lineage tracking, associated reproducibility, governance, and security. Furthermore, reliability encompasses not only the fulfillment of service-level objectives, but also systematic monitoring, alerting, and incident response automation. Architectural patterns are proposed to enable reliable deployment in cloud data platforms, focusing on the implementation of continuous integration and testing pipelines for ML models and the formulation of continuous delivery and rollout strategies. Continuous integration pipelines reduce the risk of regressions and ensure sufficient model performance at the time of deployment, while continuous delivery pipelines enable rapid updates to production models within acceptable risk profiles. The landscape of publicly available MLOps frameworks, tools, and services is also examined, emphasizing the pros and cons of established and rising solutions in containerization, orchestration, model serving, and inference. Containerization and orchestration contributes to the building of reliable deployment pipelines in cloud data platforms, whether general-purpose tools (e.g. Docker and Kubernetes) or solutions tailored for ML workloads. Containerized serving frameworks designed for high-throughput, low-latency inference can benefit a wide range of business applications, while auto-scaling and model versioning capabilities enhance the ease of use of cloud-native ML services.
DO  - MLOps Frameworks for Reliable Model Deployment in Cloud Data Platforms
TI  - 10.31586/jaibd.2023.1368
ER  -