Data Engineer

Bupa
London
3 days ago
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Overview

We're looking for someone passionate about data who will shape and grow our Data Engineering practice and how we use Data and Analytics at Bupa. As a Senior Data Engineer, you will report to the Lead Data Engineer and play a key role in driving our data strategy and delivering major initiatives. You will lead and inspire the data engineering team, manage our existing ecosystem, and be central to the delivery of our data platform migration, building a modern platform that supports colleagues, patients, and partners.

Responsibilities
  • Collaborate and Relationships – Work with the Bupa Dental Care Tech and Data teams to build a seamless, well‑integrated data ecosystem that meets business needs and quality standards. Communicate openly and professionally, proactively drive strategic discussions, and build strong relationships across Data, Tech, and the wider business. Deliver results through effective teamwork and stakeholder connections, while managing data engineers building and supporting modern healthcare data solutions.
  • Leadership – Combine your technical expertise with strong leadership. Take ownership of decisions and stakeholder engagement, coach and develop the Data Engineering team, champion Agile practices, and foster continuous improvement. Prioritise your own development and that of your team, helping create future leaders.
  • Data Strategy – Shape how our data engineering practice supports Bupa Dental Care’s strategic priorities over the next 3‑5 years. Support the Lead Data Engineer in evolving our platform, processes, and roadmap, while driving data usage in decision‑making and promoting a data‑driven culture.
  • Technical Assurance – Ensure technical solutions are fit for purpose and support business and data strategy. Continuously improve platform performance, encourage best practices, maintain Azure‑based infrastructure, implement robust data transformations, automate workflows, and uphold security‑first practices to protect sensitive patient information. Drive architectural planning to strengthen data capabilities and overall infrastructure.
Qualifications
  • Strong experience as a Data Engineer, ideally with Snowflake, driving value from customer/patient data in a health, retail, or customer‑focused business.
  • Hands‑on experience with cloud computing and developing end‑to‑end data pipelines, including ingestion, cleaning, transformation, monitoring, and data quality profiling.
  • Experience with large‑scale batch processing and near‑real‑time stream processing.
  • Familiarity with Azure Data Factory, Azure Service Bus, Azure SQL databases, Azure Analysis Services, Power BI, SQL, Python, Databricks; GA experience desirable.
  • Skilled stakeholder manager, able to influence and engage on the use of data.
  • Experience managing remote teams.
Benefits
  • Discounts in over 7,000 retailers, discounted gym membership and discounted dental insurance.
  • Health Trust – our bespoke employee private healthcare plan, providing healthcare cover with no medical underwriting for colleagues and their families.
  • Access to remote GP and nurse services, physiotherapy, and mental health support.
  • MyHealthcare Allowance, an annual allowance which is redeemable against a menu of Bupa healthcare products.
  • Early access to your earned wages through Wagestream.
  • Cycle to work scheme.

Bupa Dental Care is an equal opportunities employer.


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