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Data Engineer

Innova Recruitment
Newcastle upon Tyne
3 days ago
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Data Engineer

100% Fully Remote - UK Wide

£50,000 to £60,000 per annum + Private Healthcare


We are supporting a client with the hire of a Data Engineer. The business is expanding its data and AI capability and is looking for someone to build and maintain the data foundations that support the platform.


This role is fully remote, and you can be based anywhere in the UK.


The role


You will design, build and maintain modern data pipelines and data infrastructure. The work involves creating reliable, secure and scalable data flows that support analytics and AI teams. You’ll collaborate with Data Engineering, AI and MLOps teams to ensure data is structured, standardised and ready for downstream use.


What you’ll work on


  • Designing and managing ETL/ELT pipelines.
  • Building and maintaining data architectures (data lakes, warehouses, streaming).
  • Automating data workflows to improve reliability and performance.
  • Building transformation frameworks for data preparation.
  • Implementing validation, monitoring and observability for data quality.
  • Supporting privacy, security and compliance standards.
  • Working with AI/MLOps teams to support model training and reproducible data pipelines.
  • Applying DataOps practices including CI/CD for data workflows.


Required experience


  • Experience as a Data Engineer in production environments.
  • Strong Python and modern data processing frameworks.
  • ETL/ELT design, data modelling and performance optimisation.
  • SQL and experience with data lakes or warehouses.
  • Hands-on experience with Azure.
  • Understanding of data governance, lineage and compliance.
  • Experience with Docker or Kubernetes.
  • Ability to build validation, monitoring and quality control systems.
  • Experience designing scalable data solutions for large datasets.


Preferred experience


  • Working with regulated or sensitive datasets.
  • Integrating data workflows with MLOps pipelines.
  • Knowledge of anonymisation, pseudonymisation, or synthetic data.
  • Experience with automated alerting and drift detection.
  • Experience mentoring or contributing to engineering standards.


Benefits


  • Fully remote working with team collaboration days
  • Comprehensive private health insurance
  • Incentive scheme
  • Flexible working practices


If you’d like the full details or want to be considered, please get in touch.

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