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Cyber Data & Catastrophe Analyst

Langbourn
9 months ago
Applications closed

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We are seeking a skilled Cyber Data & Catastrophe Analyst to join our client's dynamic team. Our client is a leading London market insurance company.
The successful candidate will play a vital role in enhancing their cyber risk management strategies and supporting the development of robust cyber underwriting practices. This role is ideal for someone with a strong background in catastrophe modeling, cyber security, and data analysis who is passionate about staying at the forefront of the cyber risk landscape.
Key Responsibilities:

  • Cyber Accumulation Control: Assist in the enhancement and maintenance of the cyber accumulation control framework for both affirmative and non-affirmative exposures. Use cyber models and scenarios to quantify risks.
  • Data Sourcing & Scenario Development: Collaborate with cyber actuaries to identify key data sources, build relationships, and refine existing processes to improve scenario development and usage.
  • Risk Communication: Clearly communicate the organization’s Cyber View of Risk to stakeholders, addressing any model uncertainties while maintaining credibility and confidence.
  • Portfolio Risk Management: Calculate Probable Maximum Loss (PML) figures for portfolios and contribute to steering the overall risk appetite.
  • Advanced Data Techniques: Support the development of data collection methods using techniques like textual analysis and machine learning to gather actionable cyber security intelligence.
  • Modeling & Innovation: Work autonomously and collaboratively to develop mathematical models for loss simulation and integrate new concepts into practical tools.
  • Third-Party Model Validation: Assist in validating third-party models and navigate the vendor model ecosystem effectively.
  • Market Intelligence: Contribute to the Market Intelligence function by enhancing content and improving layout/design.
    Qualifications & Skills:
  • Experience: Proven experience in catastrophe modeling or exposure management, with a strong track record in scenario building and loss calculation.
  • Education: Master’s degree or higher in Cyber Security, Cyber Insurance, or a related field.
  • Technical Proficiency:
    • Advanced skills in MS Excel.
    • Proficient in R or Python.
    • Strong grasp of statistics and probability theory.
  • Cyber Security Expertise: Formal training or substantial experience in cyber security, with deep knowledge of current and emerging trends
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