Data Engineer

Tenth Revolution Group
Bristol
4 days ago
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Data Engineer

Bristol - £65,000

About the Role

I am seeking a Data Engineer to support the design, development and optimisation of modern Azure-based data solutions within a leading organisation in the finance sector. Sitting within a growing data function this role is central to delivering scalable, secure and high-quality data capabilities that underpin critical business operations and analytical insights.

This role is ideal for someone with strong hands-on experience across the Azure data ecosystem. You will be comfortable building robust pipelines, optimising cloud data platforms and working closely with stakeholders to translate complex requirements into effective engineering solutions. You will play a key role in developing high-quality data flows, ensuring strong governance and contributing to an evolving enterprise-wide data framework.

Responsibilities

  • Design, build and maintain scalable data pipelines using Azure Data Factory
  • Develop and optimise cloud data platforms using Azure Synapse
  • Manage and enhance structured and unstructured datasets stored in Azure Data Lake Storage
  • Write efficient, production-ready Python code to support automation, data ingestion and transformation
  • Ensure high standards of data quality, governance and security across all engineering solutions
  • Support ongo...

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