Tech Lead/Lead Data Engineer - Outside IR35 - SC + NPPV3 Cleared

SR2 - Socially Responsible Recruitment
London
1 day ago
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Tech Lead/Lead Data Engineer (AWS Data Platform)
Rate: £500 - £550 p/d outside IR35
Length: 1st April to end of November (initially)
Location: London (hybrid - typically 1 day per week on-site, remaining remote)
Security Clearance: SC Clearance essential + NPPV3

Overview
We're looking for a hands-on Tech Lead to lead a small team delivering secure, scalable data solutions within a highly regulated environment. You'll take technical ownership across an AWS-based data platform using S3, Glue, and Redshift, working closely with delivery leadership, architecture stakeholders, and product teams to deliver incremental value.

This role suits someone who can balance technical leadership, hands-on engineering, and stakeholder-facing communication, while maintaining strong standards around security, quality, and operational resilience.

Key Responsibilities

  • Lead and mentor a small engineering team across data engineering, analytics engineering, and DevOps.
  • Own the technical design of data ingestion, transformation, storage, and access patterns.
  • Drive eng...

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