TD

Data Scientist III – Financial Crime Risk Modeling

TD

full-time

Posted on:

Location Type: Hybrid

Location: Mount LaurelNew JerseyNew YorkUnited States

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Salary

💰 $96,130 - $155,950 per year

Tech Stack

About the role

  • Provides technical leadership across the overall Analytics function which may have an enterprise mandate
  • Provides deep technical knowledge and expertise in client interactions to explain complex data analysis related material
  • Responsible for developing, maintaining, and enhancing the Enterprise Anti-Money Laundering / Counter-Terrorism Financing (AML/CTF) models/AI solutions
  • Addresses emerging risks and adheres to best industry practices
  • Works independently on activities related to analysis, design and support of technical data management solutions on various projects

Requirements

  • Undergraduate degree or advanced technical degree preferred (e.g., math, physics, engineering, finance or computer science)
  • Graduate's degree preferred with either progressive project work experience or 5+ year of relevant experience; higher degree education and research tenure can be counted
  • Strong foundation in regression, classification, and machine learning models and anomaly detection techniques
  • Proficiency with Python and SQL is a must
  • Experience in Financial Crimes / Compliance Risk Analytics is a plus
  • Hands-on experience with GenAI applications is a strong plus, including but not limited to fine-tuning or prompting LLMs, ability to build analytical solutions using LLM APIs, and use GenAI applications to develop data labeling solutions
Benefits
  • Health insurance
  • Retirement plans
  • Paid time off (including Vacation PTO, Flex PTO, and Holiday PTO)
  • Banking benefits and discounts
  • Career development opportunities
  • Reward and recognition programs
Applicant Tracking System Keywords

Tip: use these terms in your resume and cover letter to boost ATS matches.

Hard Skills & Tools
PythonSQLregression modelsclassification modelsmachine learninganomaly detectiondata management solutionsGenAI applicationsLLM APIsdata labeling solutions
Soft Skills
technical leadershipclient interactionsindependent workcomplex data analysis explanation