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Vice President - Data Science/Applied AI ML

JPMorganChase
1 day ago
Full-time
On-site
Bengaluru, Karnataka, India
Description

Job Responsibilities:

  • Lead the CCOR Financial Crime Data Science team to design, deploy, and operate production-grade ML solutions across AML transaction monitoring use cases, with a strong focus on measurable risk mitigation and regulatory alignment.
  • Drive research and applied innovation in supervised/unsupervised/semi‑supervised learning, graph/network analytics, anomaly detection, and weak supervision to improve true-positive rates, reduce false positives, and enhance investigator productivity.
  • Own end-to-end model lifecycle: problem framing, data sourcing/controls, feature engineering (customer/behavioral/temporal/graph features), model development, validation, calibration/thresholding, bias/fairness checks, monitoring, and retraining.
  • Maintain rigorous model risk management practices across Model lifecycle, partnering with Model Risk and Internal Audit.
  • Build and maintain robust MLOps pipelines (CI/CD for ML), model registries, automated monitoring (data drift, concept drift, performance), and governance artifacts to ensure reliable, scalable production operations.
  • Partner with Financial Crime Compliance (FCC), Investigations, Operations, and Technology to translate typologies, red flags, and regulatory expectations into defensible ML controls and measurable control effectiveness.
  • Enhance investigator decisioning through interpretable ML: deploy explainability techniques (e.g., SHAP, LIME, counterfactuals), stable reason codes, and human-in-the-loop feedback loops to continuously improve model precision and usability.
  • Mentor, hire, and develop a high-performing team of data scientists/ML engineers/analysts; promote a culture of scientific rigor, ethical AI, and continuous learning.
  • Maintain a pragmatic view of GenAI/LLMs as complementary tools (e.g., narrative generation for cases, unstructured doc parsing) while prioritizing classical/statistical/graph ML methods for core detection efficacy.

    Required Qualifications and Skills:

  • Master’s or PhD in a quantitative discipline (Computer Science, Statistics, Mathematics, Economics, Operations Research, or related).
  • 10+ years of hands-on ML experience, with at least 5+ years in Financial Crime Compliance, AML, sanctions, fraud, or related risk domains; deep knowledge of regulatory expectations (e.g., AML program requirements, sanctions controls, model governance).
  • Proven leadership delivering production ML for financial crime, including transaction monitoring models, risk scoring, anomaly detection, network/graph analytics, and/or investigator triage/prioritization at enterprise scale.
  • Advanced Python skills; strong experience with ML frameworks.
  • Expertise in supervised learning, anomaly detection, semi‑supervised learning, clustering, feature stores, and calibration/threshold optimization; familiarity with imbalanced learning and cost-sensitive evaluation.
  • Demonstrated experience in model risk management: documentation, validation, benchmarking/challenger models, backtesting, stability and drift analysis, champion/challenger governance, and explainability suitable for regulatory review.
  • Excellent communication skills to translate and explain complex models with clear reason codes, and influence cross-functional stakeholders and senior leadership.
  • People leadership: recruiting, coaching, performance management, and fostering an inclusive, high-accountability culture.