Credit Risk Modeling in Python
top-rated
Blend credit risk modeling skills with Python programming: Learn how to estimate a bank’s loan portfolio's expected loss
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What you get:
- 8 hours of content
- 80 Interactive exercises
- 119 Downloadable resources
- World-class instructor
- Closed captions
- Q&A support
- Future course updates
- Course exam
- Certificate of achievement
Credit Risk Modeling in Python
top-rated
Start for Free
What you get:
- 8 hours of content
- 80 Interactive exercises
- 119 Downloadable resources
- World-class instructor
- Closed captions
- Q&A support
- Future course updates
- Course exam
- Certificate of achievement
Start for Free
What you get:
- 8 hours of content
- 80 Interactive exercises
- 119 Downloadable resources
- World-class instructor
- Closed captions
- Q&A support
- Future course updates
- Course exam
- Certificate of achievement
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.
Top Choice of Leading Companies Worldwide
Industry leaders and professionals globally rely on this top-rated course to enhance their skills.
Course Description
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1.1 What does the course cover
5 min

1.2 What is credit risk and why is it important?
5 min

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

1.4 Capital adequacy, regulations, and the Basel II accord
5 min

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

1.6 Different facility types (asset classes) and credit risk modeling approaches
9 min
Curriculum
Topics
Course Requirements
- You need to complete an introduction to Python before taking this course
- Basic skills in statistics, probability, and linear algebra are required
- It is highly recommended to take the Machine Learning in Python course first
- You will need to install the Anaconda package, which includes Jupyter Notebook
Who Should Take This Course?
Level of difficulty: Advanced
- Aspiring data scientists
- Current data scientists who are passionate about acquiring domain-specific knowledge in credit risk modeling
Exams and Certification
A 365 Data Science Course Certificate is an excellent addition to your LinkedIn profile—demonstrating your expertise and willingness to go the extra mile to accomplish your goals.

Meet Your Instructor

Nikolay is a Director of Data Science and Automation at KBC Group. He has a solid background in marketing analytics, risk modeling, and research. A Master’s degree in Science and a Ph.D. in Economics and Business Administration have given Nikolay vast experience in the academic world. He spent over six years in the field of research at HEC Paris, BI Norwegian Business School, and the University of Texas at Austin, U.S. In addition, Nikolay has worked on numerous projects for Coca-Cola Hellenic and Shawbrook Bank (UK) that involved building highly accurate quantitative models and solutions for customer portfolio management, credit risk, social media marketing research, and psychological targeting.
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