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Senior Associate - Data Science/Applied AI ML

ExperiencedNo visa sponsorship
J.P. Morgan logo

at J.P. Morgan

Bulge Bracket Investment Banks

Posted 3 days ago

No clicks

**Senior Associate - Data Science/Applied AI ML** Design, develop, and maintain ML solutions for Trade Surveillance and/or Financial Crime, focusing on alert generation, risk scoring, and control effectiveness. Apply supervised and unsupervised/semi-supervised methods like classification, anomaly detection, and clustering; employ imbalanced learning, threshold optimization, and model governance. Collaborate with FCC, MLOps, and Ops teams to build interpretable, reliable models. Seek candidates with a Master's in a quantitative field, 3+ years of ML experience (Financial Crime/Trade Surveillance exposure preferred), strong Python skills, and proficiency in ML tooling.

Compensation
Not specified

Currency: Not specified

City
Mumbai
Country
India

Full Job Description

Location: Mumbai, Maharashtra, India

Job Responsibilities:

  • Design, develop, and support production ML solutions for Trade Surveillance and/or Financial Crime use cases (e.g., alert generation, prioritization/triage, risk scoring), with focus on measurable risk mitigation and control effectiveness.
  • Apply supervised and unsupervised/semi-supervised methods (classification, anomaly detection, clustering; basic weak-supervision/heuristics where needed) to improve true-positive rates and reduce false positives.
  • Execute the model lifecycle under guidance: problem framing, data sourcing and quality checks, feature engineering (behavioral/temporal and basic entity-relationship/graph features), model training, validation, calibration/thresholding, bias/fairness checks, monitoring, and refresh/retraining support.
  • Contribute to model governance and risk management deliverables: documentation, test results, backtesting, stability/drift analysis, and support for reviews with Model Risk / Audit / Controls partners (as applicable).
  • Partner with Technology/MLOps to support CI/CD processes, model versioning/registries, and automated monitoring (data drift, performance) for reliable operation in production.
  • Work with FCC / Surveillance SMEs, investigators/reviewers, and Operations to translate typologies/red flags into defensible ML controls; incorporate human-in-the-loop feedback to improve model usability and precision.
  • Deliver interpretable outputs for end users: reason codes and explainability (e.g., SHAP/LIME-style drivers; simple counterfactual insights where appropriate) to support consistent alert dispositioning.
  • Develop solution using GenAI/LLMs  (e.g., summarizing narratives, extracting signals from unstructured text) as a complement to core statistical/graph ML detection methods.

 

Required Qualifications, Capabilities, and Skills:

  • Masters in a quantitative discipline (Computer Science, Statistics, Mathematics, Economics, Operations Research, or related).
  • Minimum 3 years of hands-on applied ML / data science experience; exposure to Financial Crime (AML/sanctions/fraud) and/or Trade Surveillance is preferred.
  • Strong Python and ML tooling (e.g., pandas, scikit-learn; Spark/PySpark a plus).
  • Working knowledge of imbalanced learning and operational evaluation (precision/recall, PR-AUC, alert yield) and threshold optimization/calibration.
  • Experience supporting model governance expectations: clear documentation, validation testing, benchmarking/baselines, back testing concepts, drift/stability monitoring, and explainability suitable for review.
  • Strong communication skills to explain models and trade-offs, produce clear reason codes, and collaborate effectively with Compliance/Surveillance, Ops, and Technology stakeholders.
Design, build, and support production machine learning, LLM and analytics solutions that strengthen Financial Crime and/or Trade Surveillance.

Senior Associate - Data Science/Applied AI ML

Compensation

Not specified

City: Mumbai

Country: India

J.P. Morgan logo
Bulge Bracket Investment Banks

3 days ago

No clicks

at J.P. Morgan

ExperiencedNo visa sponsorship

**Senior Associate - Data Science/Applied AI ML** Design, develop, and maintain ML solutions for Trade Surveillance and/or Financial Crime, focusing on alert generation, risk scoring, and control effectiveness. Apply supervised and unsupervised/semi-supervised methods like classification, anomaly detection, and clustering; employ imbalanced learning, threshold optimization, and model governance. Collaborate with FCC, MLOps, and Ops teams to build interpretable, reliable models. Seek candidates with a Master's in a quantitative field, 3+ years of ML experience (Financial Crime/Trade Surveillance exposure preferred), strong Python skills, and proficiency in ML tooling.

Full Job Description

Location: Mumbai, Maharashtra, India

Job Responsibilities:

  • Design, develop, and support production ML solutions for Trade Surveillance and/or Financial Crime use cases (e.g., alert generation, prioritization/triage, risk scoring), with focus on measurable risk mitigation and control effectiveness.
  • Apply supervised and unsupervised/semi-supervised methods (classification, anomaly detection, clustering; basic weak-supervision/heuristics where needed) to improve true-positive rates and reduce false positives.
  • Execute the model lifecycle under guidance: problem framing, data sourcing and quality checks, feature engineering (behavioral/temporal and basic entity-relationship/graph features), model training, validation, calibration/thresholding, bias/fairness checks, monitoring, and refresh/retraining support.
  • Contribute to model governance and risk management deliverables: documentation, test results, backtesting, stability/drift analysis, and support for reviews with Model Risk / Audit / Controls partners (as applicable).
  • Partner with Technology/MLOps to support CI/CD processes, model versioning/registries, and automated monitoring (data drift, performance) for reliable operation in production.
  • Work with FCC / Surveillance SMEs, investigators/reviewers, and Operations to translate typologies/red flags into defensible ML controls; incorporate human-in-the-loop feedback to improve model usability and precision.
  • Deliver interpretable outputs for end users: reason codes and explainability (e.g., SHAP/LIME-style drivers; simple counterfactual insights where appropriate) to support consistent alert dispositioning.
  • Develop solution using GenAI/LLMs  (e.g., summarizing narratives, extracting signals from unstructured text) as a complement to core statistical/graph ML detection methods.

 

Required Qualifications, Capabilities, and Skills:

  • Masters in a quantitative discipline (Computer Science, Statistics, Mathematics, Economics, Operations Research, or related).
  • Minimum 3 years of hands-on applied ML / data science experience; exposure to Financial Crime (AML/sanctions/fraud) and/or Trade Surveillance is preferred.
  • Strong Python and ML tooling (e.g., pandas, scikit-learn; Spark/PySpark a plus).
  • Working knowledge of imbalanced learning and operational evaluation (precision/recall, PR-AUC, alert yield) and threshold optimization/calibration.
  • Experience supporting model governance expectations: clear documentation, validation testing, benchmarking/baselines, back testing concepts, drift/stability monitoring, and explainability suitable for review.
  • Strong communication skills to explain models and trade-offs, produce clear reason codes, and collaborate effectively with Compliance/Surveillance, Ops, and Technology stakeholders.
Design, build, and support production machine learning, LLM and analytics solutions that strengthen Financial Crime and/or Trade Surveillance.