2022
DOI: 10.1109/access.2022.3206366
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Serverless on Machine Learning: A Systematic Mapping Study

Abstract: Machine Learning Operations (MLOps) is an approach to managing the entire lifecycle of a machine learning model. It has evolved over the last years and has started attracting many people in research and businesses in the industry. It supports the development of machine learning (ML) pipelines typical in the phases of data collection, data pre-processing, building datasets, model training, hyperparameters refinement, testing, and deployment to production. This complex pipeline workflow is a tedious process of i… Show more

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Cited by 21 publications
(8 citation statements)
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“…The research adheres to the established guidelines for conducting an SMS, which follows a systematic approach to provide an overview of the research area [58], which has also been used in similar studies [59]. The tasks involved in this research were organized into three main stages: planning, conducting, and reporting.…”
Section: Methodsmentioning
confidence: 99%
“…The research adheres to the established guidelines for conducting an SMS, which follows a systematic approach to provide an overview of the research area [58], which has also been used in similar studies [59]. The tasks involved in this research were organized into three main stages: planning, conducting, and reporting.…”
Section: Methodsmentioning
confidence: 99%
“…Generally speaking, ML applications require of CPU, memory and storage resources for both the training and inference phases while also requiring GPU resources during the training phase in order to accelerate the learning process. Additionally, from an application structure perspective, ML applications can be split broadly into four different sub-applications [9]. First, a storage sub-application that stores the historical data and data inputs for the training of the ML as well as the real-time data for the inference of the model, which require large storage spaces.…”
Section: Disaggregated Compute Sites For ML Application Deploymentmentioning
confidence: 99%
“…It outlines the architecture or process that combines these models, providing a structured overview for understanding their collaborative role in enhancing cloud infrastructure. Table 6.Integration framework of tcns and ensemble policies in cloud management [14] Communication Step…”
Section: Integration Of Tcns and Ensemble Policies In Cloud Infrastru...mentioning
confidence: 99%
“…The proposed Ensemble Policy Architecture is designed to provide a robust and adaptive framework for start challenges and optimizing resource allocation in serverless cloud environments. It comprises a hierarchical structure that incorporates multiple policy layers, each responsible for that combines these models, providing a structured overview for understanding their collaborative role n framework of tcns and ensemble policies in cloud management [14] Development of the Experimental Framework and Validation developed to evaluate the performance and efficacy of the integrated world cloud environments. A series of controlled experiments and simulations were conducted to assess the predictive accuracy, resource utilization efficiency, and overall system performance under varying workload conditions.…”
Section: Development Of the Experimental Framework And Validationmentioning
confidence: 99%