Credit Risk Modeling in Python

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About Course

Learn how banks use data science modeling in Python to improve their performance and comply with regulatory requirements. This free course is perfect for beginners interested in a data science career.

Taught by a proven expert with a PhD from the Norwegian Business School and experience teaching at world-renowned universities, this course covers everything you need to know about credit risk modeling in Python, from theory and data pre-processing to building a complete model.

Key features of this free course:

  • Covers all aspects of the expected loss equation (PD, LGD, and EAD)
  • Shows how to create models that comply with Basel II and Basel III regulations
  • Uses a real-world dataset
  • Provides valuable resources like lectures, notebooks, homework, quizzes, slides, downloads, and Q&A support.

This free course covers:

  • Weight of evidence
  • Information value
  • Fine classing
  • Coarse classing
  • Linear regression
  • Logistic regression
  • Area Under the Curve
  • Receiver Operating Characteristic Curve
  • Gini Coefficient
  • Kolmogorov-Smirnov
  • Assessing Population Stability
  • Maintaining a model

Start your journey towards a career in data science today! Enroll in this free course on Theetay.

This course is completely free and available on Theetay, a website that offers free access to top-rated online courses from platforms like Udemy, Udacity, Coursera, MasterClass, NearPeer, and more.

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What Will You Learn?

  • Improve your Python modeling skills
  • Differentiate your data science portfolio with a hot topic
  • Fill up your resume with in demand data science skills
  • Build a complete credit risk model in Python
  • Impress interviewers by showing practical knowledge
  • How to preprocess real data in Python
  • Learn credit risk modeling theory
  • Apply state of the art data science techniques
  • Solve a real-life data science task
  • Be able to evaluate the effectiveness of your model
  • Perform linear and logistic regressions in Python

Course Content

Introduction

  • A Message from the Professor
  • What does the course cover
    05:46
  • What is credit risk and why is it important
    04:43
  • Expected loss (EL) and its components PD LGD and EAD
    04:12
  • Capital adequacy regulations and the Basel II accord
    04:32
  • Basel II approaches SA F-IRB and A-IRB
    09:32
  • Different facility types (asset classes) and credit risk modeling approaches
    09:21

Setting up the working environment

Dataset description

General preprocessing

PD Model Data Preparation

PD model estimation

PD model validation

Applying the PD Model for decision making

PD model monitoring

LGD and EAD Models Preparing the data

LGD model

EAD model

Calculating expected loss

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