International Journal of Advanced Multidisciplinary Research and Studies
Volume 3, Issue 5, 2023
Governance Models for Scalable Self-Service Analytics: Balancing Flexibility and Data Integrity in Large Enterprises
Author(s): Oyetunji Oladimeji, Damilola Christiana Ayodeji, Eseoghene Daniel Erigha, Bukky Okojie Eboseremen, Muritala Omeiza Umar, Ehimah Obuse, Joshua Oluwagbenga Ajayi, Ayorinde Olayiwola Akindemowo
DOI: https://doi.org/10.62225/2583049X.2023.3.5.4815
Abstract:
As large enterprises increasingly prioritize data-driven decision-making, self-service analytics has emerged as a strategic imperative to democratize insights across functions. However, scaling self-service capabilities without compromising data integrity, security, and regulatory compliance presents a complex governance challenge. This explores governance models that enable scalable, enterprise-wide self-service analytics while maintaining rigorous standards for data quality and control. This begins by contextualizing the business case for self-service analytics, identifying key drivers such as agility, reduced dependence on centralized data teams, and operational efficiency. It then examines the inherent risks of ungoverned self-service environments—including metric inconsistency, data sprawl, compliance lapses, and infrastructure cost overruns—particularly within complex organizational structures. Drawing on frameworks such as federated governance, data mesh, and metadata-driven controls, this outlines how enterprises can design governance models that embed both flexibility and oversight into analytics workflows. Role-based and attribute-based access control systems are analyzed for their effectiveness in enabling fine-grained permissions. Technology enablers such as data catalogs, semantic layers, lineage tracking, and monitoring tools are reviewed as foundational components for operationalizing governance at scale. This also presents case studies from large organizations that have successfully implemented hybrid governance strategies to balance empowerment and control. Emphasis is placed on guardrails (e.g., certified datasets, sandbox environments) over gatekeeping, and the role of organizational enablers such as training, embedded analysts, and cross-functional governance councils. This argues that scalable self-service analytics is contingent on governance models that are proactive, dynamic, and aligned with enterprise culture. A call to action is issued for organizations to view governance not as a constraint but as a critical enabler for trusted, agile, and resilient data ecosystems that support sustained innovation and decision intelligence.
Keywords: Governance Models, Scalable Self-Service, Analytics, Flexibility, Data Integrity, Large Enterprises
Pages: 1582-1592
Download Full Article: Click Here