Data Engineer

Vitality
Bournemouth
4 days ago
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About The RoleTeam – Data Engineering Working Pattern - Hybrid – 2 days per week in the Vitality Bournemouth or London Office. Full time, 37.5 hours per week. We are happy to discuss flexible working!Top 3 skills needed for this role:

  • Designing and maintaining resilient data pipelines 
  • Collaborating with cross-functional stakeholders
  • Building well-structured datasets and automated processes

What this role is all about:Join us as a Data Engineer and help build the data foundations that power machine learning and analytics across Vitality. You’ll work with rich datasets and modern technologies to design and deliver reliable data pipelines and APIs that support a company focused on improving people’s health.Key Actions:

  • Partner with our Data Engineering team to build reliable, high-quality data foundations that power fast-moving data streams and cutting-edge predictive models.
  • Deploy and manage machine learning models as scalable APIs that seamlessly support real-time, production-grade applications.
  • Use a diverse toolkit of languages and technologies to design and maintain resilient data pipelines that connect and orchestrate complex systems.
  • Create well-structured datasets and automated processes that enable advanced modelling, mining and large-scal...

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