Unifying Customer Intelligence: An Enterprise Architecture for Real-Time Decisioning Using Microsoft Dynamics 365 and Power Platform
DOI:
https://doi.org/10.63282/3050-9246.IJETCSIT-V5I1P122Keywords:
Customer Intelligence, Enterprise Architecture, Microsoft Dynamics 365, Power Platform, Real-Time Decisioning, Event-Driven Architecture, Microsoft Dataverse, AI Builder, Digital TransformationAbstract
The contemporary enterprise landscape is defined by an unprecedented velocity of data generation and an equally intense demand for personalized customer engagement. Traditional Customer Relationship Management (CRM) systems, predicated on batch processing and historical data analysis, are increasingly inadequate for meeting the expectations of the modern consumer. This research proposes a comprehensive enterprise architecture for unifying customer intelligence through the integration of Microsoft Dynamics 365 and the Microsoft Power Platform. By transitioning from reactive data repositories to a "closed-loop" intelligence fabric, organizations can leverage real-time decisioning to influence customer journeys as they occur. The architecture centers on Microsoft Dataverse as a unified data hub, Dynamics 365 Customer Insights for identity resolution, and Power Automate for intelligent workflow orchestration. The study analyzes the technical mechanisms of event-driven architectures, the role of AI-driven inference layers, and the operational outcomes of multi-cloud hybrid deployments. Findings indicate that this unified approach yields significant improvements in operational efficiency, conversion rates, and strategic agility, effectively bridging the "diffusion gap" between technological potential and business value.
Downloads
References
[1] Enterprise Architecture for Real-Time Intelligence in Distributed Environments. ResearchGate. Enterprise AI Convergence Architecture. Deloitte.
[2] Architectural Principles for Real-Time Enterprise Intelligence.
[3] Intelligent Event-Driven Architectures for Real-Time Enterprise Decision-Making. IRE Journals.
[4] Microsoft Dynamics 365 Customer Insights – Data Technical Overview. Prodware Group.
[5] The Total Economic Impact™ of Microsoft Dynamics 365 Customer Insights. Forrester Consulting.
[6] Enterprise Architecture Patterns for Dynamics 365 in Hybrid AWS-Azure Environments. IJFMR.
[7] Context-Aware AI-Driven CRM: Enhancing Customer Journeys. ESP Journal of Engineering & Technology.
[8] Data-Driven Decision-Making Through CRM: A Systematic Literature Review. American Journal of Advanced Technology and Engineering Solutions.
[9] Intelligent Workflow Automation (IWA) in CRM Platforms. World Journal of Advanced Engineering Technology and Sciences.
[10] Integrating IoT Data into CRM via Distributed Web Systems. MDPI.
[11] Event-Driven AI Architectures for Next-Generation CRM Platforms. ResearchGate.
[12] Core Principles of Event-Driven Architecture. IJSAT.
[13] Enterprise Data Engineering Innovations: Unifying Customer and Revenue Platforms. Journal of Information Systems Engineering & Management.
[14] Rybaric, R. (2023). Microsoft Power Platform Enterprise Architecture. Packt Publishing.
[15] Understanding Dynamics 365 for IT: Architecture and Integration. Microsoft.
[16] Building Smart Decision Engines Using Power BI and Dataverse. Clarion Technologies.
[17] Dataverse vs SQL Server: Deployment and Architecture. i3solutions.
[18] Architectural Patterns for Real-Time Data Ingestion in Machine Learning Systems. ResearchGate.
[19] The AI Builder Advantage and the Productivity J-Curve. Cognizant AI Lab.
[20] Kesavareddi, N. K. R. (2025). Real-Time Customer Journey Orchestration in Power Platform CRM. IJCESEN.
[21] Enterprise-Scale Automation of Support Workflows using Power Platform and RPA. ResearchGate.
[22] Talaseela, R. K. (2025). Intelligent Workflow Orchestration for Enterprise Contexts. European Journal of Computer Science and Information Technology.
[23] Dataverse at Build 2025: The Secure Agent Platform. Microsoft.
[24] Veershetty, G. (2023). Risk-adaptive transition and transformation (RATT): A predictive governance framework for SAP cloud migration programs. International Journal of Leading Research Publication, 4(12). https://doi.org/10.70528/IJLRP.v4.i12.2170
