Role: Sr. Associate FCU
Industry Type: NBFC
Department: Risk Management & Compliance
Employment Type: Full Time, Permanent
Role Category: Security / Fraud
UG: Any Graduate
Responsibilities for the job
- Analyze end-to-end lending lifecycle data (application, onboarding, bureau, repayment, device) to identify fraud patterns and high-risk segments
- Track key fraud indicators such as First Payment Default (FPD), Early Payment Default (EPD), and abnormal delinquency trends
- Perform deep-dive analyses and root-cause investigations on fraud spikes, portfolio deterioration, and channel-level risks
- Support development, testing, and optimization of fraud rules, score cut-offs, and risk triggers to balance fraud capture and customer experience
- Build and maintain analytical datasets (feature marts) by combining internal and external data sources for fraud detection and monitoring
- Collaborate with Fraud Control Unit (FCU), Risk, Credit, and Business teams to provide data-backed insights and investigation inputs
- Develop and maintain fraud monitoring reports and dashboards using tools such as SQL, Python, and Power BI
- Assist in exploring new data sources (bureau, alternate data, device, telecom, etc.) and contribute to their evaluation for fraud use cases
- Support development of machine learning models and analytical frameworks for anomaly detection, behavioural segmentation, and fraud risk prediction
- Leverage basic Generative AI tools (LLMs, prompt-based workflows) for exploratory analysis, summarisation of fraud cases, and signal identification
- Participate in POCs and pilot programs to evaluate new fraud detection techniques, models, and data capabilities
- Translate identified fraud patterns (e.g., synthetic identities, mule accounts, sourcing fraud) into actionable analytical features and rules
- Present insights, findings, and recommendations to stakeholders in a clear and structured manner.
Eligibility Criteria for the Job
Education
Bachelors degree in Engineering, Statistics, Mathematics, Economics, Computer Science, or related quantitative field
(MBA / PGDM / Masters in Analytics, Data Science, or AI is a plus)
Work Experience
3รป6 years of experience in fraud analytics, risk analytics, or data science within BFSI / NBFC / FinTech lending.
Experience working on consumer lending products and understanding of fraud risks across onboarding, underwriting, and repayment. Exposure to fraud detection techniques is preferred.
Primary Skill
Strong analytical experience in fraud/risk analytics for digital or retail lending portfolios.
Ability to work with large datasets and derive actionable insights for fraud detection and
risk mitigation.