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Oracle Fusion Lead Enterprise Data Architect

Focus on SAP
Northamptonshire
5 days ago
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Position: Oracle Fusion Lead Enterprise Data Architect
Employment Type: Permanent
Start: ASAP (October/November/December 2025)
Location: East Midlands, UK - Hybrid
Language(s): English
Salary: Up to £100,000 p/a + bonus and benefits

Focus on SAP is a specialist SAP and ERP Recruitment organisation offering both permanent and contract staffing solutions on a global scale. 
 
Client – Partnered with a global leader in digital transformation and IT services, working with some of the world’s biggest brands. Their mission is not only to deliver cutting-edge technology but also to empower organisations to create meaningful impact for the people and communities they serve. For you, this means working on challenging projects that demand innovation, collaboration, and thought leadership.
 
Role – We are looking for a highly experienced Oracle Fusion Lead Enterprise Data Architect to define and govern the enterprise-wide architecture for a major Oracle Cloud transformation programme. This strategic role focuses on aligning IT strategies with business goals, ensuring seamless integration of Oracle SaaS, PaaS, and OCI components within a scalable, secure, and future-ready architecture.

You will lead cross-functional architecture teams and work closely with business, functional, and technical stakeholders to design and deliver an integrated digital ecosystem that drives enterprise-wide value.


Key Responsibilities:

  • Define and own the enterprise architecture vision, strategy, and roadmap aligned with business and IT objectives.
  • Lead the design of the target state architecture across Oracle Fusion Cloud modules (ERP, SCM, EPM, OTM, CX).
  • Act as the architecture authority, ensuring all solutions adhere to enterprise principles and governance.
  • Collaborate across teams to define future-state processes and technology landscapes.
  • Drive solution governance, architecture reviews, risk assessments, and design validation.
  • Recommend cloud migration and modernisation strategies for existing systems.
  • Ensure seamless integration between Oracle SaaS, legacy, and third-party systems.
  • Define and oversee reference architectures, design patterns, data models, and API strategies.
  • Provide leadership to solution, data, and integration architects, ensuring consistency across workstreams.
  • Maintain compliance with security, data privacy, regulatory, and performance standards.


Key Skills:

  • Proven experience delivering Oracle Fusion Cloud implementations (ERP, SCM, EPM, OTM, CX)
  • Strong background in enterprise and data architecture frameworks (TOGAF, Zachman, etc.)
  • Deep expertise in enterprise integrations, data architecture, and cloud-native technologies.
  • Experience in large-scale digital transformation or ERP modernisation initiatives.
  • Excellent analytical, communication, and stakeholder management skills.

If you are interested or would like to know more, please email with your CV and availability to speak.

Applicants must be a UK resident and holds a valid right to work status.

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