Article contents
The Lakehouse Paradigm: Converging Data Lakes and Warehouses for Integrated Enterprise Analytics
Abstract
This investigation examines the emergence of the lakehouse model as a significant architectural evolution in enterprise data management, addressing the longstanding divide between data lakes and data warehouses. The hybrid approach delivers transactional integrity, metadata coherence, and computational efficiency while maintaining the flexibility and scalability of data lake environments. Implementation patterns across unified platforms, automation frameworks, and query engines collectively enable this architectural paradigm. Through evaluation of current technologies and emerging trends, the work identifies how organizations leverage lakehouse architectures to democratize data access, streamline governance, and accelerate analytical workflows. The findings demonstrate that the lakehouse model represents not merely an incremental improvement but a fundamental reconceptualization of how enterprises organize, process, and derive value from diverse data assets in support of both traditional analytics and advanced AI applications.
Article information
Journal
Journal of Computer Science and Technology Studies
Volume (Issue)
7 (4)
Pages
641-648
Published
Copyright
Open access

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