Data Engineer

LA International
Birmingham
3 weeks ago
Applications closed

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Data Engineer

Overview

Role Title: Data Engineer


Location: Birmingham


Duration: 31/12/2026


Work setup: 2 days onsite/week


Rate £358 Inside IR35


MUST BE THROUGH UMBRELLA


Role Description

  • Design and implement scalable data pipelines across Bronze, Silver, and Gold layers using AWS services (S3, Redshift, Lambda, Glue).
  • Develop and optimize ETL/ELT workflows leveraging dbt, SQL, and orchestration tools like Airflow for efficient data processing.
  • Ensure data quality, security, and compliance through robust validation, monitoring, and governance practices.
  • Collaborate with architects and analysts to deliver high-performance solutions supporting analytics and regulatory needs.
  • Lead migration initiatives from on-prem to AWS cloud, utilizing tools like AWS SCT and best practices for performance tuning.


  • Skills: SQL, Python, AWS ecosystem (S3, Redshift, Lambda, Glue), dbt, Airflow, data modeling, performance optimization, and leadership in data engineering teams.

Please send your latest CV


Additional Information

LA International is a HMG approved ICT Recruitment and Project Solutions Consultancy, operating globally from the largest single site in the UK as an IT Consultancy or as an Employment Business & Agency depending upon the precise nature of the work. LA International welcomes applications from all sections of the community and from people with diverse experience and backgrounds.


Award Winning LA International, winner of the Recruiter Awards for Excellence, Best IT Recruitment Company, Best Public Sector Recruitment Company and overall Gold Award winner, has now secured The Queen's Award for Enterprise: International Trade, for the second consecutive period.


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