Data Engineer

Morgan Mckinley (Crawley)
London
3 weeks ago
Applications closed

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Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Data Engineer

Job Title: Data Engineer

Location: London, Hybrid

As a Data Engineer, you will design, build, and maintain a modern cloud-based data platform. You will develop robust, secure, and scalable data pipelines, ensure high-quality and compliant data, and collaborate with analytics and architecture teams to support business insights.

Key Responsibilities:

Build and maintain industrial-grade ELT pipelines to ingest, transform, and harmonise data from multiple sources.
Deploy and industrialise cloud-based data platforms across build and run phases.
Implement layered data architectures to structure, govern, and optimise data flows.
Ensure data quality, lineage, and compliance with relevant regulations.
Monitor and optimise platform performance, scalability, and security.
Collaborate with data analysts and architects to deliver reliable datasets.
Document processes and contribute to knowledge transfer for long-term operational autonomy.Skills & Experience

5+ years as a Data Engineer or similar role.
Strong SQL and data modeling skills.
Hands-on experience with cloud data warehouses (Snowflake, BigQuery, Databricks).
Proficiency with ELT tools (dbt, Fivetran, Matillion) and orchestration frameworks (Airflow, Prefect)

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