Data Engineer

MRP-Global
West Midlands
1 week ago
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Data Engineer – Data ETL, Talend, SQL, AWS, GenAI required in the west midlands (Birmingham, Wolverhampton, Walsall, Coventry, Telford, Shrewsbury Worcester etc) to join a global customer developing a framework for their long-standing partnership with their end customer.


This is a long-term freelance contract with a hybrid working model, offering excellent rates.


Key Requirements

  • Designing and implementing secure, high-performance data integration solutions (batch and/or near real-time)
  • Building, operating, and continuously improving data pipelines (ingestion, transformation, curation)
  • Implementing monitoring, alerting, and SLA-driven reliability practices
  • Collaborating with product teams and client stakeholders to refine requirements and align solutions to non-functional requirements (cost, performance, security)
  • Supporting incident resolution and ensuring service continuity
  • Participating in Agile ceremonies and working cross-functionally with engineers, analysts, and business teams
  • Mentoring colleagues and contributing to engineering best practices and communities of practice
  • Strong SQL skills and hands-on experience in data modelling
  • Proven experience with ETL/ELT tools (at least one of: Talend, Pentaho DI, Informatica, AWS Glue, SAS)
  • Experience with enterprise databases or data platforms (ideally Oracle or Cloudera)
  • Knowledge of cloud platforms, preferably AWS
  • Proficiency in programming/scripting languages such as Python or Bash
  • Strong understanding of data engineering fundamentals: integration, transformation, orchestration, version control
  • Able to commute to site location in Telford 2 days per week
  • Active SC Clearance/Eligible for Clearance is Mandatory.


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