We are seeking an exceptional Staff Machine Learning Engineer to lead the design and development of the next generation of our AI-driven fraud detection platform .
You will architect large-scale ML systems that detect and prevent fraud in real time combining deep machine learning expertise with scalable engineering and domain knowledge in financial systems.
This is a hands-on technical leadership role, shaping our fraud prevention roadmap and ensuring the platform evolves to meet emerging threat patterns through automation, data intelligence, and generative AI–enhanced detection models.
Responsibilities
- Architect and build scalable ML systems for fraud detection, anomaly detection, and behavioral analysis.
- Develop and maintain end-to-end ML pipelines : data ingestion, feature engineering, model training, deployment, and monitoring.
- Leverage modern AI techniques , including generative AI, to improve fraud pattern discovery and model robustness.
- Design and implement real-time decision systems , integrating with transaction or behavioral data streams.
- Collaborate closely with engineering, security, and risk teams to define data strategy and labeling frameworks.
- Lead experimentation on model explainability, drift detection, and adversarial robustness for fraud prevention use cases.
- Promote engineering excellence — automation, CI / CD, reproducibility, observability, and model governance.
- Mentor and guide ML and software engineers, fostering best practices and innovation.
- 5+ years of experience building ML or AI systems in production; at least 2+ in fraud, risk, or anomaly detection domains.
- Proven track record designing and maintaining ML pipelines at scale.
- Expertise in Python , ML frameworks (e.g., PyTorch, TensorFlow, scikit-learn), and CI / CD (GitHub Actions, Jenkins, or similar).
- Strong understanding of supervised / unsupervised learning , anomaly detection, and statistical modeling.
- Experience with big data and distributed systems (e.g., Spark, Kafka, Flink, or similar).
- Familiarity with cloud platforms (AWS, GCP, or Azure) and containerized deployments (Docker, Kubernetes).
- Strong collaboration, communication, and cross-team leadership skills.
Preferred Qualifications
Prior experience with fraud or financial crime detection , identity verification , or risk scoring systems .Domain expertise in banking , payments , or transaction monitoringExperience fine-tuning or adapting generative AI / large language models for pattern generation or synthetic data augmentation.Familiarity with streaming analytics , graph ML , or time-series anomaly detection .Knowledge of model governance , bias mitigation , and regulatory compliance in fraud contexts.Contributions to fraud detection research, open-source, or AI publications.