AI/ML in Financial Services (credit scoring, fraud models)

AI-driven decisioning for stronger credit assessment, fraud detection, and financial risk control

Functions

Data analyticsOperationsRisk
0 Enrolled
1 day

Program Overview

Financial institutions need faster, more precise decisions as credit risk and fraud techniques grow increasingly complex. Traditional rule-based systems struggle to keep up, making AI/ML essential for accurate scoring, real-time detection, and reliable portfolio insights. This program equips professionals to evaluate and apply ML models across lending and fraud workflows, interpret outputs responsibly, and align decisions with regulatory expectations. Through practical use cases and simulation-based exercises, participants learn to use machine learning to enhance accuracy, reduce losses, and support stronger governance.

Features

  • Interpret and apply ML scoring and fraud models to lending and risk decisions
  • Evaluate feature inputs, performance metrics, thresholds, and model reliability
  • Strengthen governance, fairness, and explainability for regulatory trust
  • Use model outputs to refine approval policies, fraud controls, and portfolio strategy

Target audiences

  • Risk, Credit & Lending Teams
  • Fraud, Financial Crime & Operations
  • Data Science & Analytics Professionals
  • Product, Strategy & Digital Banking Teams

Curriculum

  • 4 Sections
  • 19 Lessons
  • 1 Day
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Instructor

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Huksa

Deep-domain, High Precision L&D - delivered directly by Renowned Industry Practitioners
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38 Students
397 Courses

Offered by Huksa, this L&D program is led by elite industry veterans—CXOs and Functional Heads with 25+ years of deep-domain expertise. You have the flexibility to customize the curriculum, select your preferred expert, and align the program to your organization’s specific objectives. Connect with the Huksa team to explore our array of top-tier trainers available for this course!

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