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We are looking for a Lead Catastrophe Risk Analyst who will leverage expertise of catastrophe risk assessment and modeling best practices to propose innovative analytical solutions and lead supporting Tokio Marine Holdings ERM and Tokio Marine Group Companies via Nat Cat Center of Excellence.
Just as Tokio Marine HCC Group of Companies is customer centric we are also employee centric offering our employees
Competitive salary and employee benefit package
Strong learning culture
Growth perspectives
6 401K match
20 days of PTO and 2 Floating Days
Paid parental leave
An opportunity to love what you do
Subject Matter Expert as a super user of commercial catastrophe models and related tools with ability to propose and execute innovative solutions.
Lead established risk analytics functions.
Mentor and train junior staff.
Strong technical skill set for geospatial analytics programming & tool development.
Lead communication with Tokio Marine Group risk analysts exposure management and capital modeling teams.
Provide analyses of property insurance exposure data as expert user of cat models.
Assess data quality of exposure data.
Manipulate and prepare large databases of property insurance data to run catastrophe models (e.g. RMS and AIR)
Analyze loss estimates and present results via reports exhibits and formal presentations.
Expert knowledge and ability to apply related statistics and financial modeling.
Lead preparation of reports and clearly communicate risk analytics to stakeholders.
Lead Exposure Management Event Response and related functions.
Enterprise Exposure Management perform accumulation analytics on exposure data.
Event Response analytics reporting exposure impact and loss estimation.
TMHD standard capital modeling through cat model standardization loss accumulation and model blending.
Analytical support for climate change impact assessment on exposure and internal model validation and enhancement.
Support Tokio Marine Group Company Nat Cat inquiries and risk analytics and training
Maintain inventories of vendor/broker catastrophe models vendor products and data sources.
Support market intelligence efforts in Nat Cat shared groupwide.
Lead analytical research and solution development of practical solutions to quantify catastrophe risk for stakeholder use in TM group.
Bachelors degree in applied science/engineering actuarial economics math or related subjects as a minimum. Masters degree preferred.
5 plus years of professional experience in Catastrophe Modeling and Analytics.
Exemplary analytical and diagnostic skills.
Advanced technical and communication skills including:
Excel
SQL
GIS
Programming skills R/Python preferred.
Progressive experience leading catastrophe risk analytics supporting multiple functional areas of (re)insurance desired (e.g. underwriting support exposure management risk management or R&D.
Project management is not required but preferred and dependent on individual aptitude.
Tokio Marine HCC is the solution to a world that is changing at a pace not seen before. This is not traditional insurance this is deeply technical and analytical business expertise that makes our clients businesses triumph over their competition. We provide support during unpredicted events which means our clients businesses progress at their desired pace. Our entire company structure has been designed to empower our teams and individuals to guide our clients critical decisions without bureaucracy and delay. TMHCCs parent company Japanbased Tokio Marine Group underpins and champions our growth innovation and steadfast commitment to our customers while our flat and decentralized structure means every voice speaking on behalf of the customer is heard. And those voices are the best and brightest talent in the industry working with the most innovative tools for collaboration technology and data. Our clients success is the priority of every employee at TMHCC.
# LIJF1
Required Experience:
IC
Full-Time