Data Scientist Engineer - Graduate

Bureau Land
Manchester
3 weeks ago
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Protector Insurance is one of the fastest growing insurers in the UK. Headquartered in Norway, they expanded into the UK in 2015 and have grown rapidly over the past seven years.


Based in Central Manchester (Spinningfields), this is an excellent opportunity for a Graduate Data Scientist to work closely with a growing analytics team and help improve data systems, processes and flow. You’ll join a business that prides itself on using data to drive every decision, and where efficient systems and quality data outputs are essential to underwriting success.


Responsibilities Of The Data Scientist

  • Work as part of the UK Data Science team to develop processes and systems.
  • Focus on increasing efficiency, improving data accessibility, and enhancing data flow.
  • Collaborate with analysts in the UK and the IT team in Oslo to tailor systems to local needs.
  • Take ownership and responsibility from an early stage, with support to grow your skills and competence over time.
  • Contribute to building local systems development capability in the UK as part of a long‑term strategy.

What We Are Looking For

  • STEM degree is largely preferred (Science, Tech, Engineering, Maths)
  • Proficiency in SQL is required.
  • Experience with Google Cloud Platform (Big Query, Dataform, Looker, etc.) would be beneficial.
  • Knowledge of programming languages and development pipelines would be beneficial.
  • Competency in statistics and data analysis.
  • Able to work collaboratively within a team, while delivering tasks independently within an agreed structure.

Benefits Of Joining Protector Insurance

  • A competitive salary, bonus, and an extensive benefits package.
  • Join a growing organisation with a strong data‑driven culture.
  • Be part of an ambitious and values‑led team.
  • Opportunity to influence systems development at a local level.
  • Supportive environment with scope to develop and progress.

Protector believes in defining a strong culture and ensuring they recruit people who are aligned to their values. You’ll be expected to learn, understand, and embody the company’s DNA particularly the values of being Credible, Open, Bold and Committed.


This is a great opportunity to play a key role in an organisation that is growing rapidly and constantly striving to improve.


Ready to Launch Your Career?

If you’re excited about this opportunity and ready to kickstart your career in the insurance industry, we’d love to hear from you.


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