Fraud Ai/ml Platform Product Director

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Consumer & Community Banking

Product Director for a next-generation, real-time fraud intelligence platform using advanced ML and AI. The role involves defining product vision and roadmap, building capabilities for fraud detection (rings, coordinated attacks, multi-step schemes), driving innovation in feature engineering, graph-based risk detection, and sequence modeling. Key responsibilities include productizing graph intelligence, establishing model lifecycle standards, embedding governance, and partnering cross-functionally. Requires experience in ML-enabled products, adversarial domains, and technical fluency in applied ML and data systems.

What you'd actually do

  1. 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.
  2. Lead experimentation and delivery with clear success criteria/lift metrics, converting validated POCs into production capabilities that reduce fraud loss and improve customer experience.
  3. Productize graph intelligence for fraud rings (entity schema, graph features/embeddings, freshness/latency SLAs, and explainability requirements).
  4. Establish end-to-end model lifecycle standards (model CI/CD, evaluation gates, monitoring, drift detection, automated retraining, and rollback) to ensure safe, reliable deployment.
  5. Embed governance by design including explainability, bias/fairness checks, and Model Risk documentation to meet regulatory expectations.

Skills

Required

  • 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.

Nice to have

  • 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).

What the JD emphasized

  • real-time fraud intelligence platform
  • transformer-based ML
  • graph intelligence
  • continuous learning
  • MLOps
  • dynamic feature engineering
  • graph-based risk detection
  • sequence modeling
  • governed fraud models
  • ML-enabled products
  • fraud decisioning systems
  • production environments
  • adaptive threats
  • latency
  • reliability
  • monitoring
  • scale

Other signals

  • AI/ML platform for fraud detection
  • Real-time intelligence platform
  • Transformer-based ML, graph intelligence, continuous learning, MLOps
  • Dynamic feature engineering, graph-based risk detection, sequence modeling
  • Productize graph intelligence, end-to-end model lifecycle standards
  • Governance by design, explainability, bias/fairness checks
  • ML-enabled products in production environments
  • Adaptive threats in adversarial domains
  • Latency, reliability, monitoring, and scale