Reply designs and implements innovative solutions in the areas: Digital Services, Technology and Consulting.
Mid-level Data Scientist
Location
Italy
Posted
2 days ago
Salary
0
Seniority
Senior
Job Description
Mid-level Data Scientist
Reply
• As a Data Scientist, your mission will go far beyond the numbers: you will be challenged to translate complex business needs into predictive models and intelligent solutions. • In a strategic capacity, you will take a leading role in evolving our ecosystem of financial and digital products, creating direct, large-scale impact on our customers' lives.
Job Requirements
- Conduct exploratory analyses of large volumes of transactional and behavioral data to uncover actionable insights and business opportunities.
- Build and deploy machine learning and deep learning models that address real problems such as fraud detection, recommendation systems, credit risk analysis, purchase propensity, churn prediction, and others.
- Validate hypotheses through controlled experiments using A/B testing methodologies and statistical analysis.
- Collaborate with product owners and engineers to translate business problems into robust, scalable analytical solutions.
Benefits
- Flexible Swile card for you to use as you wish (meal and grocery allowances - VA and VR)
- Totalpass or Gympass
- Mental health support – Psicologia Viva
- Bradesco Health Plan
- Bradesco Dental Plan
- Profit-sharing
- Childcare allowance for our moms
- Support for certifications
- Special talks and webinars
- RAF referral bonus program
- Life insurance
- Subsidy for English or Italian courses
- Discount for Open English
- Birthday gift
- Possibility of relocation to another country
- Partnerships with universities
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