Data Engineer - SC Cleared - AWS

SR2 - Socially Responsible Recruitment
London
4 days ago
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Data Engineer - SC Cleared - AWS

SR2 is on the lookout for an experienced Data Engineer to join an in-flight transformation programme.

You'll be joining the data engineering function at a moment of transition and growth. The majority of the work will focus on continuous improvement of existing datasets, augmenting, refining, and optimising pipelines and data models to meet evolving programme needs.

This is a customer-facing role in the truest sense. You'll be working directly with operational stakeholders to understand real-world requirements and translate them into schemas, data models, and efficient pipeline runs. Clear communication and the ability to engage credibly with non-technical audiences are as important as technical capability here.

Tech Stack

  • AWS - Lambda, S3, Athena, CloudWatch
  • Tableau - beneficial
  • Terraform IaC - familiarity is advantageous as the programme moves toward infrastructure-as-code

What We're Looking For

  • Solid data engineering experience - pipeline development, schema design, data modelling
  • Strong AWS skills across core services - Lambda, S3, Athena
  • Strong customer-facing and communication skills - this is not a heads-down role
  • Ability to translate complex data requirements into clear, efficient solutions
  • Experience working with operational or government datasets - beneficial
  • Tableau experience - advantageou...

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