
at J.P. Morgan
Bulge Bracket Investment BanksPosted 11 days ago
No clicks
**Fraud AI/ML Platform Product Director**: Lead future fraud prevention through advanced ML/AI in New York. Drive next-gen real-time fraud intelligence platform, owning vision and multi-year roadmap. Oversee product lifecycle, stakeholder management, and deliver measured fraud loss reduction. Requires 8+ years' product experience, 5+ years ML product ownership, and deep fraud knowledge. Expertise in transformer-based ML, graph intelligence, continuous learning, and modern MLOps is crucial. Leverage partnerships with cross-functional teams to continuously improve fraud prevention, while preserving excellent customer experience.
- Compensation
- Not specified USD
- City
- New York City
- Country
- United States
Currency: $ (USD)
Full Job Description
Location: New York, NY, United States
- Oversees the product roadmap, vision, development, execution, risk management, and business growth targets
- Leads the entire product life cycle through planning, execution, and future development by continuously adapting, developing new products and methodologies, managing risks, and achieving business targets like cost, features, reusability, and reliability to support growth
- Coaches and mentors the product team on best practices, such as solution generation, market research, storyboarding, mind-mapping, prototyping methods, product adoption strategies, and product delivery, enabling them to effectively deliver on objectives
- Owns product performance and is accountable for investing in enhancements to achieve business objectives
Monitors market trends, conducts competitive analysis, and identifies opportunities for product differentiation
- Own the multi-year platform strategy and roadmap for fraud models, dynamic feature infrastructure (incl. streaming + feature store), graph intelligence, and MLOps across CCB payment and banking products.
- Lead experimentation and delivery with clear success criteria/lift metrics, converting validated POCs into production capabilities that reduce fraud loss and improve customer experience.
- Productize graph intelligence for fraud rings (entity schema, graph features/embeddings, freshness/latency SLAs, and explainability requirements).
- Establish end-to-end model lifecycle standards (model CI/CD, evaluation gates, monitoring, drift detection, automated retraining, and rollback) to ensure safe, reliable deployment.
- Embed governance by design including explainability, bias/fairness checks, and Model Risk documentation to meet regulatory expectations.
- Build strong partnerships and team capability by developing a high-performing product org, collaborating cross-functionally (Product, Engineering, Data Science, Fraud Ops, MRM), staying ahead of industry trends, and translating technical topics for executives.
- 8+ years of experience or equivalent expertise delivering products, projects, or technology applications
- Extensive knowledge of the product development life cycle, technical design, and data analytics
- Proven ability to influence the adoption of key product life cycle activities including discovery, ideation, strategic development, requirements definition, and value management
- Experience driving change within organizations and managing stakeholders across multiple functions
- Bachelor's degree
- 5+ years building or owning ML-enabled products such as feature platforms, model platforms, or fraud decisioning systems in production environments.
- Deep expertise in fraud, payments risk, trust and safety, cybersecurity, or similarly adversarial domains where models face adaptive threats.
- Strong technical fluency across applied machine learning, data systems, and production constraints including latency, reliability, monitoring, and scale.
- Proven track record of leading cross-functional execution with Product, Engineering, Data Science, Operations, and Model Risk Management teams.
- Exceptional communication and executive presence; comfortable translating technical capabilities into business value for senior leadership.
- Strong analytical skills and ability to define success metrics, evaluate experimentation results, and make data-driven platform decisions.
- Recognized thought leader within a related field
- Advanced degree in Computer Science, Machine Learning, Statistics, or related quantitative field
- Hands-on experience building and scaling transformer-based or other large-scale sequence models in production, using high-volume event data (e.g., fraud, security, behavioral analytics, risk).
- Experience productizing graph features/embeddings or graph ML for fraud ring detection, network analysis, or risk assessment.
- Proven RL system design in live environments (optimization/control/fraud decisioning), including reward design, online/offline evaluation, and safe deployment in adversarial settings.
- Experience designing feature stores and maintaining online/offline parity at scale for real-time decisioning systems.
- Strong representation learning/embeddings and long-horizon temporal modeling skills, familiarity with financial services model governance, and demonstrated thought leadership (papers, patents, talks, or open source).




