Senior Data Engineer

WRK DIGITAL LTD
London
2 months ago
Applications closed

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Senior Data Engineer
?? Location: Leeds, West Yorkshire (Hybrid

2 days per week)
?? Employment Type: Permanent
?? Status: Actively Hiring
?? Salary: £55,000-£65,000 + Excellent Benefits
WRK digital is excited to be partnering exclusively with a high-profile, UK-leading organisation, currently shortlisting for a Senior Data Engineer on a permanent basis.
This role sits at the heart of a cloud-first data strategy, helping to build scalable, secure, and high-quality data platforms that support critical, real-world decision-making.
As a Senior Data Engineer, youll design and deliver robust data pipelines using Azure, Databricks, Python, SQL, and Spark, working closely with data scientists, analysts, and stakeholders in an agile environment. Youll also play a key role in mentoring others, shaping best practice, and contributing to the evolution of modern data architecture.
Key Experience
Extensive experience with Azure services including Azure Databricks, Azure Data Lake Storage, and Azure Data Factory.
Advanced proficiency in SQL, Python, and Spark (PySpark), with a strong focus on performance optimization and distributed processing.
Proven experience in CI/CD practices using industry-standard tools (e.g., GitHub Actions, Azure DevOps).
Strong understanding of data architecture principles and cloud-native design patterns.
Were currently shortlisting this month, with interviews planned for early January.
Unfortunately this role does not offer sponsorship at this time
Senior Data Engineer

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