Enterprise Data Architect - Oracle Fusion

Tria Recruitment
London
2 months ago
Applications closed

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Enterprise Data Architect - Oracle Fusion
London - 2 days day/week onsite
18 month FTC
£140 - £170k DOE


We are looking for an experienced Enterprise Data Architect to lead the design, governance, and optimisation of data across their new Oracle Fusion Cloud environment.

You will be joining an established organisation who are embarking on a digital transformation.

This is a senior, hands-on role working closely with business stakeholders, functional consultants, and technical teams to shape data strategy and support both transformation and BAU operations.

Key Responsibilities:

Own the end-to-end data architecture for Oracle Fusion Cloud applications
Design and govern data models, data flows, and integration patterns across Fusion modules
Define and enforce data standards, quality rules, and master data management principles
Lead data migration activities including data mapping, cleansing, validation, and reconciliation
Provide architectural oversight for integrations using OIC, REST/SOAP APIs, and third-party systems
Support reporting and analytics using OTBI, BI Publisher, and downstream data platforms
Act as a subject-matter expert for Oracle Fusion data structures and release impacts
Collaborate wit...

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