Data Engineer

Lorien
City of London
6 days ago
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Data Engineer

6 Month Contract

Hybrid - 2 days per week onsite


Please note: Active SC Clearance is required for this role


A leading organisation within the UK financial sector is embarking on a major data transformation programme. They are looking for an experienced Data Engineer to help design and deliver a modern, cloud‑first data platform that will underpin some of the organisation’s most critical functions.


Responsibilities:

  • Design, build and deploy scalable, secure data solutions using Azure Databricks, Data Factory and Data Lake Storage.
  • Develop and optimise advanced data pipelines with Python, SQL, Spark/PySpark and Delta Lake.
  • Champion strong data quality, governance and observability practices.
  • Modernise legacy systems and support large-scale migrations into Azure.
  • Provide technical leadership, set engineering standards and contribute to architectural decisions.
  • Mentor engineers and foster a culture of continuous improvement.
  • Work closely with architecture, analytics and business teams to align engineering solutions with organisational needs.


Minimum Criteria

  • 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.


Essential Criteria

  • Demonstrated ability to lead technical delivery, mentor engineering teams and collaborate with stakeholders to ensure alignment between data solutions and business strategy.
  • Proficiency in Linux/Unix environments and shell scripting.
  • Deep understanding of source control, testing strategies, and agile development practices.
  • Self-motivated with a strategic mindset and a passion for driving innovation in data engineering.


Desirable Criteria

  • Experience delivering data pipelines on Hortonworks/Cloudera on-prem and leading cloud migration initiatives.
  • Familiarity with:

- Apache Airflow

- Data modelling and metadata management

  • Experience influencing enterprise data strategy and contributing to architectural governance.


To apply for this position please submit your CV.

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