About Us:
Responsibilities
- Data analysis and modeling: Explore large-scale transactional and behavioral datasets to uncover patterns associated with fraud.
- Model development and validation: Build and validate classification models using ML techniques tailored to imbalanced problems (fraud vs. non-fraud).
- Feature engineering: Create derived variables that enhance model performance and generalization while avoiding overfitting.
- Cross-functional collaboration: Work with engineering, product, and operations teams to ensure seamless integration of models into decision flows.
- Monitoring and iteration: Track model performance in production and iterate based on behavioral changes, fraud trends, or strategy shifts.
- Research and innovation: Stay up to date on cutting-edge ML techniques for fraud detection in digital transactional environments.
Requirements:
- Degree in Data Science, Statistics, Mathematics, Computer Science or a related field with strong programming skills [MUST]
- 1-2 years of experience in Data Science, Data/Business Analytics (with ML knowledge) [MUST]
- 2+ years of Python and SQL experience [MUST]
- Knowledge of fraud detection, anomaly detection, or modeling with imbalanced datasets [MUST]
- Industry background in fintech, insurance, or banking is valued but not required [DESIRABLE]
- AWS Services knowledge is a Plus [DESIRABLE]
- Strong analytical skills and a problem-solving mindset, with the ability to extract actionable insights from data [MUST]
- Understanding of consumer behavior, alternative data sources, and digital lending platforms [DESIRABLE]
