Azure Data Engineer

Monument
3 days ago
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Azure Data Engineer - 3–6-month contract

We are looking for a Data Engineer to join a growing digital and data function supporting a modern, cloud-based data platform. This role focuses on building reliable, secure, and scalable data solutions that enable analytics, operational reporting, and data-driven decision making across the organisation.

You will work closely with technical and non-technical stakeholders to deliver well-engineered data pipelines and models, contributing to the continuous improvement of data platforms and engineering standards.

Azure data engineer responsibilities:

Build and support robust ELT data pipelines using Azure-based technologies and SQL
Develop structured data models aligned to modern data platform patterns
Ensure data solutions meet performance, security, quality, and reliability standards
Contribute to agile delivery, code reviews, and continuous improvement of engineering practices
Collaborate with stakeholders and technical teams to translate business needs into data solutions
Azure Data Engineer requirements:

Hands-on experience with Azure Data Factory, Databricks, and SQL-based databases
Strong understanding of data engineering principles, including ELT and data modelling
Experience working with CI/CD pipelines, automation, and testing
Knowledge of data governance, access control, and platform standards
Excellent communication and collaboration skills
Familiarity with modern data architectures such as Medallion patterns and metadata tools
This role will be hyrbid working - required to work 2 to 3 days per week onsite in London.

Apply now to speak with VIQU IT in confidence. Or reach out to Phoebe Thompson via the VIQU IT website.

Do you know someone great? We’ll thank you with up to £1,000 if your referral is successful (terms apply).

For more exciting roles and opportunities like this, please follow us on LinkedIn @VIQU IT Recruitment

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