Senior Data Engineer

Harnham
Greater London
1 month ago
Applications closed

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Job Description

SENIOR DATA ENGINEER

LONDON

UP TO £80,000


THE COMPANY

This InsurTech innovator has spent the last decade transforming the travel insurance industry, leveraging technology to provide the best tailored coverage. Experiencing rapid growth, they’re focused on scaling their data platform to support future AI integration and drive even greater efficiency. As a Senior Data Engineer, you’ll play a pivotal role in shaping their data infrastructure and helping them stay ahead in a fast-moving market.


THE ROLE

As a Senior Data Engineer, you’ll take ownership of their platform, ensuring smooth day-to-day operations while driving long-term improvements. You’ll mentor team members, refine workflows, and collaborate closely with other teams to turn data into actionable insights. This role is about solving problems, bringing fresh ideas, and implementing them quickly.

Specifically, you can expect to be involved in the following:

  • Technical tasks: Utilising warehousing tools to improve platform, improving data quality, and preparing it for future AI integration...

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