Experimentation, deployment and monitoring Machine Learning models: Approaches for applying MLOps
It addresses the challenge of applying MLOps for industry professionals seeking to enhance decision-making with data science, but it appears incremental as it focuses on summarizing existing techniques.
This paper tackles the problem of automating the machine learning lifecycle from experimentation to monitoring in production environments, and finds that MLOps is an evolving discipline with solutions for integration, deployment, and monitoring.
In recent years, Data Science has become increasingly relevant as a support tool for industry, significantly enhancing decision-making in a way never seen before. In this context, the MLOps discipline emerges as a solution to automate the life cycle of Machine Learning models, ranging from experimentation to monitoring in productive environments. Research results shows MLOps is a constantly evolving discipline, with challenges and solutions for integrating development and production environments, publishing models in production environments, and monitoring models throughout the end to end development lifecycle. This paper contributes to the understanding of MLOps techniques and their most diverse applications.