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Data Scientist II, Pricing
Location
United States
Posted
102 days ago
Salary
$116.7K - $145.8K / year
Seniority
Mid Level
Job Description
Data Scientist II, Pricing
Root Insurance Agency
• Support the refinement of pricing models to ensure compliance with regulatory requirements • Contribute to the continuous improvement of our pricing models • Collaborate with Product, Actuarial, and State Product Management teams • Apply your technical skills in R, SQL, and H2O to analyze and optimize pricing models. • Contribute to large-scale data science modeling projects
Job Requirements
- Advanced degree in a quantitative discipline (Master’s or PhD preferred)
- 2+ years of experience applying advanced quantitative techniques, ideally in the insurance or financial services industry.
- Strong proficiency in R (e.g., tidyverse, data.table) and SQL
- Familiarity with pricing models and understanding of insurance regulatory environments is a strong plus.
- Experience with H2O and other advanced modeling techniques is a plus.
- Technical proficiency in version control systems such as Git
- Experience with cloud utilities such as AWS (e.g., EC2, S3) is a plus for scalable data processing and storage.
- Strong business intelligence and data visualization skills
- Strong communication skills.
Benefits
- Work where it works best
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