Senior Insurance Data Analyst – Cyber

Clerkenwell
1 year ago
Applications closed

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Senior Insurance Data Analyst – Cyber!

Are you an experienced Data Analyst eager to make a significant impact in the insurance industry? Our client, a leading provider of an AI-driven insurance analytics platform, is in search of a Senior Insurance Data Analyst to enhance their cutting-edge solutions. This is an exciting opportunity to work with a diverse range of insurance providers across the UK and US, primarily in the Property and Casualty (P&C) sector.

Our client offer an innovative environment where you’ll work with industry leaders and a top-tier analytics platform. You’ll be contributing to impactful work, playing a pivotal role in refining methodologies for data retrieval and analysis.

Key Responsibilities:

  1. Lead methodology refinement for retrieving cyber fraud and claims data from significant providers, including The Office of National Statistics.

  2. Extract and analyse large-scale data sets to derive meaningful insights.

  3. Present findings and recommendations to key stakeholders in client organizations to support informed decision-making.

    Key Experience Requirements:

  4. Proven consultancy experience within the insurance data sector.

  5. Strong educational background in Mathematics or a related field from a leading university.

  6. Expertise in data analysis techniques, particularly in cyber fraud within the insurance industry.

  7. Proficiency in data visualization tools and presentation skills to communicate complex insights effectively.

  8. Ability to work collaboratively with diverse teams and manage multiple projects under tight deadlines.

  9. Bachelor's degree in Mathematics, Statistics, Data Science, or a related discipline.

  10. Strong analytical problem-solving skills and attention to detail.

    Ready to Elevate Your Career?

    If you are a driven professional looking to leverage your skills in a fast-paced, innovative environment, we want to hear from you! Apply now to join a dynamic team at the forefront of insurance analytics.

    Keywords: Senior Insurance Data Analyst, Cyber Fraud, Data Analysis, AI-driven Analytics, Property and Casualty, Consultancy Experience, Data Retrieval, Insights Presentation, Mathematics Degree, Insurance Analytics

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