MLOps Architecture as a Future of Machine Learning


Muravev M. Brazhenko D. Somenkova A. Golovkov A. Sergunin I.
2025Taylor and Francis Ltd.

Journal of Computer Information Systems
2025

The study aims to develop methods for improving the architecture of Machine Learning Operations to increase the efficiency of automation and management of machine learning models. The study included an analysis of tools and methods that help optimize resources, increase coordination between teams, ensure system stability. The main study results demonstrate that the application of the developed methods can significantly improve the productivity and quality of machine learning processes. The research included a thorough analysis of existing architectural solutions in Machine Learning Operations, which identified their advantages and disadvantages. Among the benefits is the ability to dynamically scale computing resources using cloud computing and effectively coordinate teams using project management systems. However, the disadvantages can be the high cost of cloud computing and the difficulty of integrating different management tools. Thus, existing architectural solutions were analyzed, methods for improving the Machine Learning Operations architecture were developed, examples of their application were provided. The study results confirmed the importance of improving this architecture and its impact on the efficiency and productivity of machine learning processes. The findings confirmed the importance of using different approaches to managing Machine Learning Operations systems to achieve successful results in the field of machine learning.

artificial intelligence , Automation , data analysis , functional operations , model management , process optimization

Text of the article Перейти на текст статьи

Wargaming Group Ltd, Nicosia, Cyprus
Microsoft, Praha, Czech Republic
Sberbank, Almaty, Kazakhstan
UniCredit Bank, Milan, Italy
KEH Armenia, Yerevan, Armenia

Wargaming Group Ltd
Microsoft
Sberbank
UniCredit Bank
KEH Armenia

10 лет помогаем публиковать статьи Международный издатель

Книга Публикация научной статьи Волощук 2026 Book Publication of a scientific article 2026