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AWS Data Engineer - 6 Months Ext - £400day Outside IR35

Involved Solutions
London
4 days ago
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AWS Data EngineerRate: Up to £400 per day (Outside IR35)Contract Length: 6 Months (with strong potential for extension)Location: Hybrid - 1 day per week onsite in Central London

A leading organisation is seeking an experienced AWS Data Engineer to join their data and analytics team, contributing to the design, development and optimisation of large-scale data solutions within a modern cloud environment. This contract offers the opportunity to work on high-impact projects, delivering data platforms and pipelines that drive real-time insights and strategic business decisions.

Responsibilities for the AWS Data Engineer:

  • Design, build and maintain scalable data pipelines and architectures within the AWS ecosystem
  • Leverage services such as AWS Glue, Lambda, Redshift, EMR and S3 to support data ingestion, transformation and storage
  • Work closely with data analysts, architects and business stakeholders to translate requirements into robust technical solutions
  • Implement and optimise ETL/ELT processes, ensuring data integrity, consistency and quality across multiple sources
  • Apply best practices in data modelling, version control, and CI/CD to deliver maintainable and reusable code
  • Monitor data performance and reliability, ...

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