AWS Data Engineer

Corecom Consulting
Leeds
6 months ago
Applications closed

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AWS Data Engineer – Leeds / Hybrid - Upto £65K


We’re looking for a Data Engineer to join a growing data team and play a key role in designing, building, and maintaining cloud-native data platforms. The role is based in Leeds (2 days per week on-site) with flexibility for hybrid working.


The role:

  • Design and implement scalable data architectures in the cloud, ensuring secure and reliable data pipelines.
  • Work across the full data lifecycle, supporting data scientists, analysts, and engineering teams.
  • Lead development projects, data modelling, and cloud data platform deployments.
  • Mentor data engineers and contribute to best practices across the team.


Key skills:

  • Strong experience with AWS data services (S3, Redshift, Glue, Lambda, Lake Formation, CloudFormation).
  • Proficiency in SQL, Python (Pandas), Spark or Iceberg.
  • Experience with data warehouse design, ETL/ELT, and CI/CD pipelines (GitHub, CodeBuild).
  • Knowledge of infrastructure as code, performance tuning, and data migration.
  • Exposure to DBT, Docker, or Microsoft BI stack is a plus.


What’s on offer:

  • Opportunity to work on large-scale, high-impact data projects.
  • A collaborative, supportive environment with scope to grow and influence data practices.
  • Competitive package and benefits + bonus

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