Associate Actuarial Data Scientist

Liberty IT
Belfast
1 week ago
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Overview

Applications processed via employer's online application form


We are Liberty IT: industry leaders in digital innovation.Liberty IT is part of Libe...


Reach beyond with Liberty IT; for this is where you’ll find the super challenges, where you’ll be given the scope and the support to go further, dig deeper and fly higher.


We won’t stand over your shoulder. We won’t get in your way. We certainly won’t hold you back. You’ll bring the expertise . We’ll provide the platform to succeed.


Ready?


It’stime to do your thing.


What you’ll be doing

  • Supported by senior team members, seek opportunities to share and celebrate whatyou’velearned through internal tech talks, blogging and external events.
  • Be part of a global team of Actuarial Analysts and Data Scientists who are working to solve complex business problems by delivering high-quality solutions, working across the full data science model lifecycle, in various insurance domains.
  • Write high quality code, using best in industry practices.
  • With support from more senior team members, own, scope and deliver well-defined tasks. Communicate and update your progress regularly at stand-ups or similar agile events.
  • Collaborate closely and cooperatively with your technical and non-technical teams to work towards the best solution that maximises value to the customer.
  • Contribute to a culture of high performance by learning and applying industry leading practices and processes across the full model lifecycle, including in EDA, model tuning and testing, and model deployment.
  • Grow your insurance, actuarial and modelling knowledge.
  • Supported by senior team members, seek opportunities to share and celebrate what you’ve learned through internal tech talks, blogging and external events.

Experience and skills we need

Hold a recent degree in Actuarial Science or a related discipline.


Exposure to model creation, evidenced through previous solutions created through research or industry engagement.


What’s on offer

  • Feel safe and secure whatever life brings, with health insurance (including access to a digital doctor), life assurance and income protection.
  • Enjoy both today and tomorrow with employee discount schemes, annualbonusesand a competitive pension.
  • Protect your wellbeing with flexible working and a real work-life balance. Specifically, we have adopted a hybrid working culture, meaning you have ultimate flexibility in your work environment.
  • Grow yourself, your career and reputation through continuous learning, promotion opportunities and our generous recognition programme.

Applications processed via employer's online application form


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