Where True Partnerships Exist
Exposure Data Manager
Location
United States
Posted
10 days ago
Salary
0
Seniority
Senior
Job Description
Exposure Data Manager
Accelerant
• Lead analytics and investigations that help the business understand exposure patterns and accumulation risk • Define and enforce data standards, quality controls, and best practices for exposure data across business lines • Own data quality and completeness - you not only collect feedback, but intuit what needs to be fixed from your industry experience, and collaborate with other departments on permanent solutions to reliably produce best in class exposure data • Lead the oversight into ingestion, transformation, and normalization of exposure data from internal and external sources • Validate and QA exposure data: identify anomalies, gaps, duplicates, inconsistencies, and drive improvements • Partner with actuarial, underwriting, catastrophe modeling, and product teams to understand their exposure needs • Develop and maintain exposure data documentation, data dictionaries, and process guidelines • Enable and support analytical use cases (e.g. accumulation risk, portfolio stress testing, scenario analysis) • Build, monitor and track data quality KPIs, build dashboards or alerts to surface issues proactively • Support ad hoc analysis to diagnose exposure trends and concentration risk • Provide guidance on integrating exposure data into downstream tools (e.g. modeling engines, pricing systems, BI)
Job Requirements
- 3–4+ years of experience with exposure / insurance loss / policy data or related domain
- Bachelor’s degree in a quantitative discipline (mathematics, statistics, engineering, computer science, actuarial science)
- Strong proficiency in SQL; complex query and data transformation skills
- Familiarity with exposure modeling or catastrophe modeling workflows
- Experience with cloud data warehouses like Snowflake
- Experience working with ADP data tools or equivalent
- Experience in data cleansing, validation, and QA
- Analytical mindset with strong problem-solving skills
- Excellent communication skills with both technical and non-technical stakeholders
- Self-starter with strong ownership and initiative
- Familiarity with MGA and delegated authority exposure data (preferred)
- Python or R experience for data manipulation and validation (preferred)
- Version control and orchestration tools (Git, dbt, Airflow) (preferred)
- Data governance or metadata management experience (preferred)
Benefits
- Professional development
- Flexible work arrangements
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