D365 Data Architect

HCLTech
Luton
9 months ago
Applications closed

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D365 CE Data Architect

Job Title: Data Architect
Location: Denmark/UK
Level: Senior

Role Overview
As a Data Architect, you will play a pivotal role in designing, implementing, and optimizing enterprise-grade data solutions using

Microsoft Fabric

technologies in support of

Dynamics 365 Customer Engagement (CE)

projects. You'll collaborate closely with business stakeholders, technical leads, and delivery teams to ensure scalable, secure, and insight-driven platforms.
Key Responsibilities
Architect and implement data integration solutions between D365 CE and Microsoft Fabric components.
Translate business and CRM functional requirements into scalable data models and pipelines.
Develop patterns for real-time and batch data ingestion from D365 CE (including Dataverse) into Fabric ecosystems.
Design data governance, quality, and security frameworks aligned with enterprise standards.
Support analytics and reporting use cases with clean, well-modeled datasets optimized for Power BI.
Drive innovation with Fabric tools such as OneLake, Synapse, Event Stream, and Data Activator for CE-related data flows.
Required Skills & Experience
Proven hands-on experience delivering projects with

Microsoft Fabric

and

D365 CE/Power Platform .
Expertise in D365 CE data architecture (Dataverse, Common Data Model, API integration).
Proficiency with Azure Data Factory, Synapse Pipelines, Lakehouse architecture, and Power BI.
Solid understanding of CRM business processes: Sales, Marketing, Customer Service.
Familiarity with CI/CD for data platforms, DevOps practices, and environment management.
Strong communication skills for liaising with CRM, data engineering, and business teams.
Desirable
Experience with Microsoft Purview for data governance in regulated industries.
Knowledge of customer insights, personalization, and segmentation solutions powered by CE data.
Certification in Microsoft Azure/Data engineering or Dynamics 365.

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