Data Engineer - Azure Data Factory - Outside IR35 - Healthcare/Insurance

Korn Ferry
Bristol
3 days ago
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Overview

We are seeking an Interim Data Engineer on behalf of a healthcare/insurance client to support a growing Data & Analytics function during a period of increased delivery demand. This role will provide hands-on data engineering support as the team scales, helping meet immediate modelling and pipeline requirements while contributing to the evolution of a modern data platform. Youll work closely with the Data Engineering team, reporting into senior leadership, and partner with analytics, BI, and business stakeholders to deliver reliable, high-quality data products across the organisation.


Responsibilities

  • Design, build, and maintain robust data pipelines within an Azure-based data platform.
  • Deliver data modelling and transformation work to support analytics, reporting, and operational use cases.
  • Support increased demand from the business for new datasets, models, and enhancements.
  • Work with SQL-based data warehouses and contribute to orchestration using Azure Data Factory.
  • Ensure data quality, reliability, security, and observability across pipelines.
  • Collaborate with BI, data science, and governance teams to enable trusted, well-defined datasets.
  • Proactively identify opportunities to improve performance, scalability, documentation, and ways of working.
  • Support the team during a period of transition, including cover for senior capacity where required.

Qualifications

  • Strong hands-on experience as a Data Engineer in a cloud-based environment.
  • Proven experience with Azure Data Factory and SQL-based data platforms (hard requirements).
  • Advanced SQL skills and experience building analytical data models.
  • Experience supporting BI.
  • Familiarity with data quality, monitoring, lineage, and security best practices.
  • Experience working in fast-paced, delivery-focused environments.
  • Exposure to healthcare, customer-centric, or insurance organisations is beneficial but not essential.
  • Experience with or interest in modern data platforms (eg, Snowflake) is a plus.


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