AWS Data Engineer (Hybrid From Belfast)

RED Global
Belfast
2 months ago
Applications closed

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12 Month Initial Contract

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We are seeking an experienced Data Engineer to join our client on a long-term assignment in Belfast. This role requires a skilled engineer with strong Python and AWS expertise who can build, optimise, and maintain high-quality data pipelines in a complex environment.


Key Responsibilities

  • Design, develop, and maintain robust data pipelines and ETL processes.
  • Build and optimise data workflows using Python.
  • Manage workflow orchestration with Apache Airflow (MWAA).
  • Perform data testing, validation, and produce data quality reports.
  • Conduct data exploration and analysis to understand data structures prior to ETL development.
  • Collaborate with system owners and stakeholders to gather requirements and deliver solutions.
  • Monitor, troubleshoot, and ensure reliability and performance of data pipelines.
  • Maintain clear documentation of data workflows, processes, and configurations.


Experience & Competencies

  • 4+ years’ experience as a Data Engineer.
  • Strong SQL/PLSQL skills across MS SQL and Oracle.
  • Extensive hands-on experience coding in Python.
  • Solid understanding of ETL concepts and data pipeline architecture.
  • Knowledge of data lakes and associated architectures.
  • Experience with Apache Airflow (MWAA).
  • Familiarity with AWS Athena / PySpark (Glue).


If you would like immediate consideration, please send me an updated CV/contact details to so we can discuss further or reach out to me through LinkedIn.

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