Principal Data Engineer

Leeds
4 months ago
Applications closed

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Your new company

A Principal Data Engineer is required on a permanent basis for a forward-thinking organisation at the heart of Leeds. The Data Services team are on a mission to unlock the value of data by delivering high-quality, secure, and accessible data services. With a focus on modern cloud-based technologies and strong partnerships, they help colleagues navigate the complexities of a data-driven world.

Your new role

As a Principal Data Engineer, you will be instrumental in shaping the organisations strategic cloud data platform. You'll lead the design and implementation of scalable data pipelines, drive innovation in data-centric products, and champion automation and predictive analytics. This is a senior technical leadership role where you'll establish best practices, ensure compliance, and deliver smart, customer-focused solutions.

What you'll need to succeed

You'll bring extensive experience in data engineering within Azure environments, with a strong track record in modernisation and large-scale migration projects. You'll be confident designing metadata-driven frameworks and managing Databricks environments, with hands-on expertise in Python, T-SQL, and PySpark. Your leadership and mentoring skills will be key, alongside your ability to collaborate across teams and drive strategic decisions.

Essential Skills Include:

Proven leadership and mentoring experience in senior data engineering roles
Expertise in Azure Data Factory, Azure Databricks, and lakehouse architecture
Strong programming skills (Python, T-SQL, PySpark) and test-driven development
Deep understanding of data security, compliance, and tools like Microsoft Purview
Excellent communication and stakeholder management skills
Experience with containerisation and orchestration (e.g., Kubernetes, Azure Container Instances) would be desirable
AI/ML integration within data platforms would be advantageous

What you'll get in return

You'll be part of a dynamic and inclusive team, working on cutting-edge data solutions that make a real impact. The organisation offers a competitive salary and excellent benefits including 8% cash payment on top of the salary, bonus scheme, and opportunities for professional development. You'll also enjoy flexible working arrangements, generous annual leave, public sector pension and a supportive environment that values innovation and collaboration.

What you need to do now
If you're interested in this role, click 'apply now' to forward an up-to-date copy of your CV, or call us now.

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