Artificial Intelligence Adoption, Risk, and Data Governance in Retail and Enterprise Contexts: Integrative Frameworks for Secure, Cost-Effective, and Ethical Deployment
Keywords:
Artificial intelligence, data governance, retail, data breach costAbstract
Background: The rapid acceleration of artificial intelligence (AI) adoption across retail, consumer packaged goods (CPG), and enterprise sectors has created profound opportunities for operational transformation, customer personalization, and competitive advantage, while simultaneously amplifying risks related to data breaches, governance failures, and ethical concerns (NVIDIA, 2025; McKinsey, 2025). This article synthesizes empirical and practitioner findings with academic perspectives to formulate an integrative framework that reconciles innovation-driven adoption with rigorous data governance, cost management, and operational resilience.
Objective: The objective is to develop a comprehensive, theoretically grounded, and practice-oriented research article that explicates mechanisms through which organizations can maximize value from AI initiatives while minimizing security, financial, and governance risks. We synthesize industry surveys, cost-of-breach studies, AI adoption statistics, and scholarly analyses to identify levers for governance, architectures for responsible AI deployment, and metrics for robust evaluation.
Methods: We undertake a structured, text-based meta-synthesis of the provided references, combining industry reports, practitioner surveys, and peer-reviewed literature. Our method emphasizes comparative analysis, theoretical integration, and normative design. We explicate methodological choices, describe how inferences are drawn from heterogeneous sources, and provide a reproducible chain of reasoning linking empirical facts to prescriptive recommendations (Aldoseri et al., 2023; Aladakatti & Senthil Kumar, 2023).
Results: Our synthesis identifies five core themes: (1) near-universal experimentation and pilot programs in retail and CPG (NVIDIA, 2025; Hopsworks, 2025); (2) the economic imperative to manage AI-related costs against the backdrop of rising data-breach costs (IBM, 2024; Statista, 2024; UpGuard, 2024); (3) the centrality of data governance and semantic integration for unlocking AI value safely (Malviya, 2025; Aldoseri et al., 2023; Aladakatti & Senthil Kumar, 2023); (4) the need for human-centered workflows that augment workers rather than replace them (McKinsey, 2025; Al-Surmi et al., 2022); and (5) empirically grounded tool-selection considerations for insurance and regulated industries (Malviya, 2025).
Conclusion: We propose an integrative governance framework that overlays technical architecture with people-focused change management and economic controls. The framework prescribes layered security controls, semantic-first data strategies, transparent model-validation processes, and continuous cost-optimization practices. Adoption of the framework is expected to reduce breach exposure, improve ROI from AI investments, and enhance regulatory compliance readiness. We close with a detailed research agenda and practical roadmap for phased implementation.
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References
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Hopsworks. (2025). "How AI Will Redefine Retail in 2025." Hopsworks. https://www.hopsworks.ai/post/how-ai-will-redefine-retail-in-2025
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Aladakatti, S. S., & Senthil Kumar, S. (2023). Exploring natural language processing techniques to extract semantics from unstructured dataset which will aid in effective semantic interlinking. International Journal of Modeling, Simulation, and Scientific Computing, 14(01), 2243004. https://doi.org/10.1142/S1793962322430048
Aldoseri, A., Al-Khalifa, K. N., & Hamouda, A. M. (2023). Re-thinking data strategy and integration for artificial intelligence: concepts, opportunities, and challenges. Applied Sciences, 13(12), 7082. https://doi.org/10.3390/app13127082
Al-Surmi, A., Bashiri, M., & Koliousis, I. (2022). AI based decision making: combining strategies to improve operational performance. International Journal of Production Research, 60(14), 4464-4486.
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Copyright (c) 2025 Shreya Patel, Ph.D. (Author)

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