Actuary to Train in Data Science

  • Region: Rest of Ireland

  • Location: Dublin

  • Sector: Information Technology, Insurance

  • Contract: Permanent

  • Salary: DOE

  • Reference: AM6813_1583927046

About this job

Actuary to Train in Data Science

  • Flexible & Remote Options
  • Redefine Pricing & Analytics
  • Alternative Data & Cutting-Edge Technology

An opportunity has arisen for an actuary or an experienced actuarial analyst to join a Dublin – based company that is revolutionizing pricing and analytics within the insurance industry. This global analytics leader is based centrally within Dublin on the Luas and DART lines but there are also great options for those living further afield with work from home a popular choice within this company.

This well – funded analytics center handles vast amounts of data on a daily basis. Millions of data points coming both from traditional and alternative data are analyzed to provide broker with actionable insights. You will collaborate with data scientists who are leaders in their fields as you develop your skills within this area.

This is an excellent opportunity for an actuary to future – proof their career by broadening their technical skillset into the booming area of data science. – upskilling in this area is sure to keep you ahead when it comes to career growth. It is best suited for a technically focused actuary with strong modeling skills who can draw from their experience and act as the actuarial science expert within this team.


  • 4+ years in Actuarial Science
  • Technically focused with strong aptitude to learn new technologies
  • Strong modeling skills

Excellent Benefits Package Including:

  • Work from home
  • Performance based bonus
  • Pension – up to 9%
  • Annual leave starting at 25 days with option to buy additional leave

If you are interested in discussing this position in complete confidence, contact Aoife McGrath or apply below

Apply now

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