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Data Scientist, Predictive Analyst – Mid Level
Location
Brazil
Posted
5 days ago
Salary
0
Seniority
Senior
Job Description
Data Scientist, Predictive Analyst – Mid Level
Capgemini Government Solutions
- Help support Auto and Home Actuarial team update Base Rate Offset tool into Python. This role requires strong Python skills as well as self-learning skills. - Contributes to the development and implementation of predictive analytics through the application of adva nced statistical and analytical techniques in order to deliver data driven insights supporting business objectives. - Uses appropriate modeling techniques to address business needs. - Utilizes broad knowledge of advanced modeling techniques and procedures to develop new modeling techniques and skills. Conducts appropriate evaluation of model performance. - Designs and publishes reports to communicate results and track model performance. - Develops various programs including predictor and response variable programs. Reviews programs to ensure they conform to quality standards. - Supports preparation of internal/external, structured/unstructured data sets to build/rebuild/refresh predictive models. - Creates ad-hoc data analyses, as needed Communicates analytics to other modelers as well as to non-technical business partners. - Contributes to the continuous improvement of the modeling process. Contributes to the continuous improvement of the modeling process.
Job Requirements
- English Proficiency**
- Minimum Required: Fluent (We work 100% in English)
- Software / Tool Skills**
- Python - Advanced
- SQL - Intermediate
- Power BI - Intermediate
- Excel - Intermediate****
Benefits
- Competitive salary and performance-based bonuses
- Comprehensive benefits package
- Career development and training opportunities
- Flexible work arrangements (remote)
- Dynamic and inclusive work culture within a globally renowned group
- Private Health and Dental Insurance
- Pension Plan
- Meals tickets
- Life Insurance
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