SAS Data Engineers

Amber Resourcing Ltd
Worthing
18 hours ago
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SAS Data Engineers

2 days per week onsite in Worthing
£50,000 - £70,000 base salary
SC Clearance eligibility required


We're looking for experienced SAS Consultants/Data Engineers to join a well-established, long-term public sector programme delivering high-impact data solutions at scale.


This is a key role within a mature Data Portfolio, helping our client maximise revenue, reduce avoidance and evasion, and modernise critical systems through advanced analytics and data engineering.


You'll work in a collaborative Agile environment alongside Product Owners, Architects, Scrum Masters and fellow Engineers, with regular exposure to senior stakeholders and clients.


What you'll be doing:

  • Designing and delivering secure, performant SAS-based data and analytics solutions
  • Building and enhancing data pipelines (ingestion, transformation, reporting, fraud detection and analytics) with monitoring, alerting and SLAs
  • Working closely with product teams and client stakeholders to refine requirements and align solutions with non-functional requirements (performance, security, cost)
  • Supporting incident resolution and ensuring service continuity
  • Contributing to engineering communities of practice, mentoring colleagues and sharing knowledge
  • Actively participating in Agile ceremonies and cross-functional delivery teams

What we're looking for:

  • Proven experience as a Data Engineer delivering large-scale, complex data solutions
  • Strong expertise in SAS 9.x and SAS Viya 3.x/4, ideally including tools such as:
    SAS Studio, Visual Analytics, Visual Investigator, VDMML, Intelligent Decisioning, Environment Manager
  • Solid understanding of data modelling and ETL
  • Experience with batch scheduling and job orchestration (Airflow and/or native SAS schedulers)
  • Knowledge of SAS performance optimisation, including database connectivity
  • Experience collaborating with Architects to design robust, scalable solutions
  • Ability to embed CI/CD best practices into development workflows
  • Excellent client-facing and consultancy skills

Why join?

Work on mission-critical public sector systems with real national impact


Long-term, stable programme with modern data and analytics tooling


Hybrid working with flexibility


Competitive salary aligned to senior capability (£50-70k)


Opportunity to influence solution design, mentor others, and grow within a recognised engineering community


RSG Plc is acting as an Employment Agency in relation to this vacancy.


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