Article contents
AI-Augmented Cloud Data Engineering: Transforming Analytics in Regulated Industries
Abstract
This article examines the convergence of two transformative concepts reshaping data engineering in regulated industries: metadata-as-code pipeline architecture and AI-augmented engineering workflows. As organizations navigate increasingly complex cloud ecosystems and regulatory landscapes, traditional approaches struggle with scalability, adaptability, and compliance challenges. The metadata-as-code paradigm elevates metadata from passive documentation to an executable specification that actively governs the data lifecycle, creating a programmable interface that enables version control, modular reusability, centralized governance, and simplified compliance. Complementing this architectural shift, AI-augmented engineering introduces intelligent assistants that collaborate with human engineers, providing capabilities like intent-based pipeline generation, semantic validation, compliance enforcement, and self-optimization. When these approaches converge, they create intelligence-first data platforms characterized by cloud agnosticism, low-code accessibility, dynamic adaptation, and policy awareness. The article explores implementation challenges across organizational readiness and technical requirements, offering a phased strategy for organizations embarking on this transformation journey. Through real-world examples from finance, healthcare, and telecommunications, the article demonstrates how these innovations enable organizations to simultaneously increase agility and strengthen governance.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (6)
Pages
113-122
Published
Copyright
Open access

This work is licensed under a Creative Commons Attribution 4.0 International License.