Exposure Data Analyst

Undisclosed
London
5 days ago
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Job Description

Job Title: Exposure Data Analyst

Location: London – 3 to 4 days on site

Contract Length: 6 months

Rate: £250 per day via Umbrella – Inside IR35


Job Summary

We are seeking a detail-oriented Exposure Data Analyst to join our team. In this role, you will play a key part in ensuring the accuracy and integrity of exposure data across multiple risk categories. You will work closely with technical teams to validate, reconcile, and remediate data issues, while implementing controls to prevent future discrepancies.


Key Responsibilities

  • Check and remediate data accuracy in PV reports within Spatial Key, ensuring correct flow from RiskLink files.
  • Review maximum accumulation zones for terrorism risk, verifying exposures from source to output for top hotspot cities.
  • Identify and correct issues, summarising findings to enable robust control implementation.
  • Analyse terrorism aggregates to detect and resolve double-counting of Malicious Assailant (MA) risks; recode MA exposures under a separate peril code for independent reporting.
  • Reconcile and validate War on Land exposure data, ensuring compliance with tolerances.
  • Provide assistance to Technical Assistants as required.


R...

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