Streamlining machine learning workflows: A comprehensive analysis of ML Flow for ML Ops Implementation

Kaithe, Bhanu Kiran (2025) Streamlining machine learning workflows: A comprehensive analysis of ML Flow for ML Ops Implementation. World Journal of Advanced Engineering Technology and Sciences, 15 (2). pp. 519-529. ISSN 2582-8266

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Abstract

This article presents a comprehensive examination of ML Flow within the context of Machine Learning Operations (ML Ops), investigating its effectiveness in streamlining AI/ML workflows across diverse organizational environments. Through a mixed-methods approach combining quantitative performance metrics with qualitative organizational analysis, the article explores how ML Flow's modular architecture, comprising Tracking, Projects, Models, and Registry components—addresses critical challenges in machine learning lifecycle management. Our research illuminates distinct adoption patterns, integration strategies with existing CI/CD pipelines, enterprise scaling considerations, and governance implementations that influence successful outcomes. The article demonstrates significant improvements in development cycle times, reproducibility, deployment efficiency, and cross-team collaboration following ML Flow implementation. The article identifies critical success factors for effective adoption and compare ML Flow with alternative ML Ops solutions, highlighting its strengths in flexibility and framework compatibility while acknowledging limitations in enterprise governance capabilities. This article contributes to both theoretical understanding of ML Ops as a sociotechnical discipline and practical guidance for organizations seeking to operationalize machine learning, while also examining future directions as emerging AI technologies introduce new requirements for ML Ops platforms. The article ultimately provides evidence-based insights into how standardized ML Ops practices can accelerate the translation of algorithmic innovation into sustainable business value.

Item Type: Article
Official URL: https://doi.org/10.30574/wjaets.2025.15.2.0624
Uncontrolled Keywords: ML Flow Architecture; ML Ops Implementation Strategies; Model Reproducibility; Deployment Efficiency; Cross-Team Collaboration
Depositing User: Editor Engineering Section
Date Deposited: 04 Aug 2025 16:26
Related URLs:
URI: https://eprint.scholarsrepository.com/id/eprint/3497