AI/Machine Learning Engineer with Credit risk and Anti Money Laundering modeling Exp- Lincolnshire, IL (Hybrid)

Overview

Hybrid
Depends on Experience
Accepts corp to corp applications
Contract - Independent
Contract - W2
Contract - 12 Month(s)
No Travel Required

Skills

Python
Ai
Machine Learning
Risk
Governance
Financial
AML
Credit
revenue
R Programming

Job Details

Position: AI/Machine Learning Engineer Exp with Credit risk and AML modeling required

Duration: 12 Months

Location: Lincolnshire, IL

  • Manages independent model validations and effective challenge of financial and account management models such as balance sheet/ALM, revenue, expense, credit loss, economic capital, regulatory capital, treasury, interest rate, acquisition scorecards, ML/AI models, AML models, and operational risk models.
  • Interprets model validation test results and establish required action plans with model owners/developers and provide value-added recommendations to model owners/developers.
  • Maintains current/develop new analytical reports and presentations for senior management, executive committees and regulatory exams.
  • Actively participates in the production, maintenance and compliance with model validation policies, standards and procedures.
  • Proactively identifies emerging model risk issues impacting the Company and communicates to model developers, senior management and the DFS Model Governance Committee.
  • Maintains standardized model validation documentation, and keeps up to date with regulations, regulatory exam requirements and regulatory guidance.
  • Interacts with external regulators and internal auditors to demonstrate the operational soundness and effectiveness of the model validation process.

Best Regards,

Chetna

-D

-Fax

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