Actuarial Data Analytics Graduate

Hastings Direct
Leicester
3 weeks ago
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A growing digital insurance provider in Leicester is seeking candidates for an actuarial pathway. This two-year program offers placements in Underwriting, Retail Pricing, and Claims Analytics, providing the opportunity to develop key analytical skills. Candidates should possess coding abilities in Python or R and strong communication skills. This role promises to cultivate future analytics roles within a dynamic and flexible work environment, offering competitive benefits to support professional growth.
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