Online Course top-rated
Credit Risk Modeling in Python

Blend credit risk modeling skills with Python programming: Learn how to estimate a bank’s loan portfolio's expected loss

4.9

808 reviews on
9992 students already have enrolled
  • Institute of Analytics
  • The Association of Data Scientists
  • E-Learning Quality Network
  • European Agency for Higher Education and Accreditation
  • Global Association of Online Trainers and Examiners

Skill level:

Advanced

Duration:

8 hours
  • Lessons (7 hours)
  • Practice exams (1.75 hours)

CPE credits:

12
CPE stands for Continuing Professional Education and represents the mandatory credits a wide range of professionals must earn to maintain their licenses and stay current with regulations and best practices. One CPE credit typically equals 50 minutes of learning. For more details, visit NASBA's official website: www.nasbaregistry.org

Accredited:

certificate

What You Learn

  • Master retail banking value drivers and credit risk modeling fundamentals.
  • Understand credit risk modeling concepts like PD, LGD, EAD, and Basel II.
  • Apply logistic regression in Python for accurate credit risk prediction.
  • Boost your data cleaning and processing skills with real-world loan data.
  • Acquire specialized credit risk modeling skills to enhance your resume.
  • Become invaluable for data scientist roles in the retail banking sector.

Topics & tools

theorypythondata analysisprogrammingcredit risklogistic regressiondata preprocessingfinance skillsindustry specialization

Your instructor

Course OVERVIEW

Description

CPE Credits: 12 Field of Study: Information Technology
Delivery Method: QAS Self Study
Credit risk modeling is the place where data science and fintech meet. It is one of the most important activities conducted in a bank, with the most attention since the recession. At present, it is the only comprehensive credit risk modeling course in Python available online – taking you from preprocessing, through probability of default (PD), loss given default (LGD) and exposure at default (EAD) modeling, all the way to calculating expected loss (EL).

Prerequisites

  • Python (version 3.8 or later), pandas library, and a code editor or IDE (e.g., Jupyter Notebook, Spyder, or VS Code)
  • Basic familiarity with Python programming is required.
  • Familiarity with NumPy is helpful but not mandatory.

Advanced preparation

Curriculum

68 lessons 80 exercises 5 exams

Free preview

What does the course cover

1.1 What does the course cover

5 min

What is credit risk and why is it important?

1.2 What is credit risk and why is it important?

5 min

Expected loss (EL) and its components: PD, LGD and EAD

1.3 Expected loss (EL) and its components: PD, LGD and EAD

4 min

Capital adequacy, regulations, and the Basel II accord

1.4 Capital adequacy, regulations, and the Basel II accord

5 min

Basel II approaches: SA, F-IRB, and A-IRB

1.5 Basel II approaches: SA, F-IRB, and A-IRB

10 min

Different facility types (asset classes) and credit risk modeling approaches

1.6 Different facility types (asset classes) and credit risk modeling approaches

9 min

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successfully change

or advance their careers.

96%

of our students recommend

365 Data Science.

$29,000

average salary increase

after moving to an AI and data science career

ACCREDITED certificates

Craft a resume and LinkedIn profile you’re proud of—featuring certificates recognized by leading global institutions.

Earn CPE-accredited credentials that showcase your dedication, growth, and essential skills—the qualities employers value most.

  • Institute of Analytics
  • The Association of Data Scientists
  • E-Learning Quality Network
  • European Agency for Higher Education and Accreditation
  • Global Association of Online Trainers and Examiners

Certificates are included with the Self-Study learning plan.

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How it WORKS

  • Lessons
  • Exercises
  • Projects
  • Practice Exams
  • AI Mock Interviews

Lessons

Learn through short, simple lessons—no prior experience in AI or data science needed.

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Exercises

Reinforce your learning with mini recaps, hands-on coding, flashcards, fill-in-the-blank activities, and other engaging exercises.

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Projects

Tackle real-world AI and data science projects—just like those faced by industry professionals every day.

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Practice Exams

Track your progress and solidify your knowledge with regular practice exams.

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AI Mock Interviews

Prep for interviews with real-world tasks, popular questions, and real-time feedback.

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Student REVIEWS

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