Assistant Quantitative Developer

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London
3 days ago
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Job Description:

Description

Purpose
The purpose of this role is to assist Lancashire’s Advanced Analytics team in data management and providing insights into the Group’s modelled risk portfolio. The role requires solid front-end development skills, experience within the insurance market, and a high level of competence in data manipulation using SQL Server.

Specific Responsibilities

  1. Assist Analytics in streamlining existing processes by migrating local scripts to a controlled front end for team use, and prototype new business workflows.
  2. Collaborate with Analytics, MI, and IT teams to improve platform efficiencies and address gaps in Analytics data.
  3. Prepare reports for Ratings Agency and Regulatory submissions.
  4. Extract, import, and update submissions and risk modelling data using SQL Server.
  5. Perform reconciliations to identify data anomalies.
  6. Support the Analytics team on additional projects, research tasks, and platform improvements outside major renewal periods.
  7. Assist the Actuarial team with technical pricing in Python.
  8. Perform other duties as required.

Minimum Requirements:

  • Experience in the London Insurance Market.
  • Adept in data extraction and manipulation using T-SQL.
  • Some understanding of implementing APIs via RESTful Web Services.
  • Experience working with catastrophe models (helpful).
  • Experience with Python (highly desirable).
  • Strong knowledge of Microsoft Excel; experience with Access and VBA is an advantage.
  • Excellent organizational and communication skills, with ability to work independently and in a team.

The Lancashire Way

At Lancashire, our culture sets us apart. We value honesty, integrity, and a positive approach in all we do. We encourage open communication, teamwork, responsibility, and professionalism. Lancashire operates in Bermuda, London, the U.S., and Australia, focusing on short-tail, specialty (re)insurance risks across Property and Casualty, Aviation, Energy and Marine, and Specialty segments.


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