Data Engineer, Data Engineer Data Analyst ETL Developer BI Developer Big Data Engineer Analytics Engineer Data Platform Engineer Cloud Data Engineer Azure Data Engineer Data Integration Specialist DataOps Engineer Data Pipeline Engineer

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Surrey
6 months ago
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Data Engineer

Fabric Data Engineer - Outside IR35 - Hybrid

Data Engineer | Outside IR35 | £400 - £500 | 6 months | Hybrid Nottingham

Snowflake Data Engineer

Data Analyst

Senior Data Engineer

Design and build a cutting-edge Azure data platform from the ground up. Collaborate across teams to deliver insights that drive key decisions .

About Our Client

Data Engineer - Surrey - Hybrid Our client is a well-established organisation undergoing a significant digital and data transformation. With a focus on innovation and technology, they are investing in building modern, cloud-based data capabilities to drive smarter decision-making, improve customer experience, and support future growth. This is an exciting time to join a business that is placing data at the heart of its strategy and creating opportunities for impactful work across the organisation

Job Description

Data Engineer - Surrey - Hybrid As the Data Engineer you will help design, build, and scale a modern Azure-based data platform. This is your chance to play a key role in shaping how data is used to drive smarter decisions and real business impact.

Develop, maintain, and optimise data pipelines and workflows. Collaborate with stakeholders to gather and analyse data requirements. Ensure data accuracy, security, and compliance with industry standards. Integrate data from multiple sources to create unified datasets. Implement and manage data storage solutions. Monitor and troubleshoot data systems to ensure smooth operations. Provide technical guidance on data engineering best practices. Contribute to the development of data strategies and architectures.

The Successful Applicant

Data Engineer - Surrey - Hybrid A successful Data Engineer should have:

Experience with Azure Data Factory, Azure Synapse, Azure SQL, or Azure Data Lake. Hands-on knowledge of the ETL process and working with large datasets. Understanding of dimensional modelling and data warehousing principles. Familiarity with CI/CD pipelines or monitoring tools for data processes. Solid skills in SQL and basic knowledge of Python scripting. Exposure to Microsoft Fabric (a plus, but not essential)

What's on Offer

Data Engineer - Surrey - Hybrid Discover a dynamic role where you'll work with cutting-edge Azure technology, collaborate across teams, and enjoy real opportunities for growth and impact.

Competitive salary in the range of £55,000 - £70,000 per annum. Standard benefits package, including pension contributions and health coverage. Generous holiday leave to support work-life balance. Opportunities to work on impactful projects. A professional and collaborative company culture.

If you're ready to take on the next step in your career as a Data Engineer we encourage you to apply today!

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