SAS / Data Engineer

Whitehall Resources
Telford
2 days ago
Create job alert
Overview

Whitehall Resources are currently looking for a SAS / Data Engineer. This role is based in Telford and requires 2 days onsite per week.

This role requires someone who is SC eligible.

This role requires the use of an FCSA umbrella company.

Responsibilities
  • Define and maintain software architecture standards and best practices.
  • Lead the design of end-to-end software solutions, ensuring alignment with enterprise architecture.
  • Collaborate with product owners, developers, and business analysts to translate requirements into technical designs.
  • Conduct architecture reviews and provide guidance on system design and integration.
  • Ensure non-functional requirements (e.g., performance, scalability, security) are addressed.
  • Support bid and proposal efforts with architectural input and solution shaping.
  • Mentor development teams and promote architectural thinking across projects.
  • Stay current with emerging technologies and evaluate their applicability to business needs.
Qualifications
  • Proven experience in software architecture roles across complex, large-scale systems.
  • Strong knowledge of architectural patterns, microservices, APIs, and cloud-native design.
  • Proficiency in modern development stacks (e.g., Java, .NET, Node.js) and cloud platforms (e.g., AWS, Azure, GCP).
  • Familiarity with DevSecOps practices and CI/CD pipelines.
  • Experience with modelling tools and frameworks (e.g., UML, ArchiMate, TOGAF).
  • Excellent communication and stakeholder engagement skills.
  • Ability to balance strategic vision with practical implementation.


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