🚀 Senior Machine Learning / Data Engineering / Data Science Engineer – Credit Risk
Build Next-Generation AI-Powered Credit Decisioning Systems on AWS
We’re seeking a highly experienced engineer (5+ years) with deep expertise in credit risk modelling , lending workflows , and end-to-end credit decisioning systems . You will design and deploy production-grade models, data pipelines, APIs, and governance frameworks that power modern lending products.
🔍 Key Responsibilities 1. Credit Risk Modelling & Decisioning
- Develop and validate credit scoring , PD / LGD / EAD , and behavioural / collections models .
- Build rule-based + ML hybrid underwriting engines and challenger models.
- Design and implement feature stores , scorecards, segmentation logic, and reason-code / XAI frameworks .
2. Data Engineering & Architecture (AWS)
Build large-scale ETL / ELT pipelines using AWS and open-source stacks (Airflow, Spark, Trino, EKS, S3, EC2).Implement robust data quality , lineage tracking, anomaly detection, and incremental loading.Optimize compute and storage for performance, reliability, and cost (including Graviton).3. MLOps & Governance
Deploy models using MLflow , Flask, or FastAPI.Implement model monitoring , drift detection, CI / CD, and automated retraining workflows.Ensure compliance with Basel III, SR 11-7, GDPR, PDPA using explainability and governance tools.Build dashboards for model performance, data quality, and underwriting analytics.4. APIs & Integration
Build and deploy APIs using API Gateway, Lambda, ECS / Fargate, or EKS .Integrate ML scoring pipelines with LOS / LMS , credit bureaus, and partner systems.5. Product Solutioning & Pre-Sales (Good to Have)
Conduct demos, PoCs, and technical workshops with clients.Translate business problems into credit product workflows , decision rules, and risk logic.🎯 Required Skills & Experience
5+ years in Machine Learning, Data Engineering, or Data Science .Hands-on experience building credit risk, fraud, or behavioural ML models .Strong expertise in Python, PySpark, SQL , and ML frameworks (scikit-learn, XGBoost, TensorFlow, PyTorch).Experience with Spark, Hadoop, Kafka, Trino / Presto .Strong understanding of credit underwriting workflows , lending KPIs, and risk decisioning.Experience building and deploying ML scoring APIs .Familiarity with MLOps best practices and production ML systems.Strong grasp of data governance , regulatory compliance, and model documentation.⭐ Preferred Qualifications
AWS experience with VPC, ECS / EKS, S3, IAM, Athena, Lambda .Background in banks, NBFCs, fintechs, or credit bureaus .Pre-sales or client-facing solutioning experience.Exposure to alternative data modelling .Degree in Computer Science, Data Science, Statistics, Engineering , or related fields.