DV Cleared Azure Data Engineer

Data Careers
London
1 month ago
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Data Engineer

Inside IR35 Contract

Up to £750 per day

DV Clearance ESSENTIAL

London

We are seeking a highly skilled Data Engineer to join a prestigious defence organisation in London.

This is an exciting opportunity to lead and mentor a junior Data Engineer while contributing to the development of critical data pipelines and products.

Key Responsibilities:

  • Technical Leadership:Lead and guide the technical direction of data engineering projects.
  • Data Pipeline Development:Design, develop, and maintain robust data pipelines using Azure Data Factory (ADF), Azure Synapse Analytics, and SQL Server.
  • Data Integration:Extract, transform, and load data from diverse sources into a new platform.
  • Data Product Development:Collaborate with stakeholders to define and build data products that deliver actionable insights.
  • Team Mentorship:Mentor and develop a junior Data Engineer, fostering their growth and skill development.
  • Collaboration:Work closely with other developers and technical teams to ensure seamless integration and effective communication.

Essential Skills and Experience:

  • Proven experience in data engineering roles, including data pipeline development and data integration.
  • Strong proficiency in Azure Data Factory (ADF), Azure Synapse Analytics, and SQL Server.
  • Solid understanding of Python programming language.
  • Experience working with diverse data sets and data sources.
  • Excellent communication and collaboration skills.
  • DV Clearance: Must already hold MOD DV clearance.

Desired Skills:

  • Experience with Palantir
  • Defence industry experience

If you are a talented Data Engineer with a passion for data and a desire to make a significant impact, we encourage you to apply. Please submit your CV and a brief covering letter outlining your suitability for this role.

Please note that this role is Inside IR35 and requires DV clearance.

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