The future of Automated Machine Learning (Auto ML) in enterprise predictive systems

Maddala, Suresh Kumar (2025) The future of Automated Machine Learning (Auto ML) in enterprise predictive systems. Global Journal of Engineering and Technology Advances, 23 (1). pp. 117-126. ISSN 2582-5003

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Abstract

This comprehensive article analyzes the evolving role of Automated Machine Learning (Auto ML) in enterprise predictive systems, exploring its transformative impact on organizational analytics capabilities. The article investigates prominent Auto ML frameworks—including Auto-WEKA, IBM's Auto AI, and Microsoft's Neural Network Intelligence—evaluating their distinctive architectures, capabilities, and enterprise applications. By synthesizing implementation experiences across diverse industry contexts, we identify key benefits of enterprise Auto ML adoption, including substantial efficiency gains, democratization of advanced analytics, and measurable return on investment. However, successful implementation requires addressing significant challenges related to model interpretability, data quality dependencies, domain-specific customization requirements, and organizational change management. Looking forward, the convergence of Auto ML with complementary technologies such as explainable AI, edge computing, and federated learning promises to reshape enterprise predictive capabilities, while emerging regulatory frameworks necessitate thoughtful governance approaches. The article concludes with strategic recommendations for organizations seeking to leverage Auto ML as a cornerstone of their data-driven decision-making infrastructure, emphasizing the importance of balanced implementation approaches that combine technological innovation with appropriate human oversight and domain expertise.

Item Type: Article
Official URL: https://doi.org/10.30574/gjeta.2025.23.1.0097
Uncontrolled Keywords: Automated Machine Learning (Auto ML); Enterprise Predictive Systems; Explainable AI Integration; Model Democratization; Federated Learning
Depositing User: Editor Engineering Section
Date Deposited: 22 Aug 2025 09:04
Related URLs:
URI: https://eprint.scholarsrepository.com/id/eprint/5451