Make or buy strategy for Machine Learning Operations - MLOps

Tipo
Artigo
Data de publicação
2025
Periódico
ACTA Paulista de Enfermagem
Citações (Scopus)
0
Autores
Nogare D.
Silveira I.F.
Banzai R.
Alexandre M.C.
Orientador
Título da Revista
ISSN da Revista
Título de Volume
Membros da banca
Programa
Resumo
© 2025 Departamento de Enfermagem/Universidade Federal de Sao Paulo. All rights reserved.This research addresses the make or buy strategy for Machine Learning Operations (MLOps), exploring the decision between developing internally or purchasing computational solutions for Machine Learning projects. Considering factors such as cost, quality, technical expertise and strategic alignment, organizations face the challenge of balancing product complexity, core competencies and risk management. This research highlights the importance of understanding the needs of each project when analyzing existing offers to solve problems and maintain competitiveness in the market, offering a guide for drive and support your decision. Additionally, qualitative and quantitative reviews of MLFlow, Airflow, Kubeflow, Databricks, Dataiku, H2O, Amazon AWS, Microsoft Azure, and Google GCP tools are presented, which facilitate the life-cycle management of machine learning models. This research contributes to the understanding of the challenges and strategies involved in the effective implementation of MLOps projects.
Descrição
Palavras-chave
Assuntos Scopus
Humans , Machine Learning
Citação
DOI (Texto completo)