Data Engineer SC Cleared

Sanderson Recruitment
Croydon
2 months ago
Applications closed

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Data Engineer (SC)

Croydon - 2-4 days per month on site

£500/day outside IR-35

Contract until the end of the financial year

We are seeking an experienced AWS Data Engineer to support a major government programme delivering secure, scalable data solutions.


Key Responsibilities

  • Design and implement data pipelines on AWS using services such as Glue, Lambda, S3, and Redshift.
  • Develop ETL processes and optimise data workflows for performance and security.
  • Collaborate with analysts and architects to ensure compliance with government security standards.
  • Troubleshoot and resolve issues in complex cloud environments.

Essential Skills

  • Strong experience with AWS services (Glue, Lambda, S3, Redshift, IAM).
  • Proficiency in Python and SQL for data engineering tasks.
  • Knowledge of data modelling, ETL frameworks, and best practices.
  • Familiarity with security and compliance in government or regulated environments.
  • Excellent communication and problem-solving skills.
  • Active SC clearance (mandatory).

Desirable

  • Experience with Terraform or CloudFormation.
  • Exposure to CI/CD pipelines and DevOps practices.

Reasonable Adjustments:

Respect and equality are c...

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