Ifrs 9 Credit Risk Modelling: Pit Pd, Lifetime Pd & Ecl Sas
Published 8/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.70 GB | Duration: 8h 37m
Published 8/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.70 GB | Duration: 8h 37m
A practical guide to IFRS 9 credit risk modelling — covering PIT PD, Lifetime PD, ECL calculations, and validation COURS
What you'll learn
Build and calibrate Point-in-Time Probability of Default (PIT PD) models using SAS to align with observed default experience.
Apply forward-looking macroeconomic adjustments by integrating GDP, unemployment, interest rates, and other drivers into PD forecasts.
Implement multiple scenario approaches (base, upside, downside) with probability weighting to generate robust IFRS 9 Expected Credit Loss (ECL) estimates.
Develop automated SAS frameworks and macros for PIT PD modelling, calibration, scenario generation, and audit-ready reporting.
Design Lifetime PD models using transition matrices and survival analysis, and link them to ECL calculation engines.
Ensure regulatory compliance with IFRS 9 and Basel guidelines, including staging (SICR), documentation, and model validation best practices.
Requirements
Basic understanding of credit risk or finance concepts is helpful, but not mandatory.
Familiarity with statistics (probabilities, regressions, distributions) will make it easier to follow the modelling sections.
Some exposure to SAS is recommended, but all code will be explained step by step.
Learners should have access to SAS Studio (free trial or academic edition) or other SAS IDE
Most importantly: a willingness to learn, practice, and apply concepts in real-world credit risk modelling.
Description
Master IFRS 9 credit risk modelling with SAS. Learn PIT PD, Lifetime PD, staging, and ECL calculations step by step. Gain practical skills in data prep, feature engineering, calibration, model validation, and automation — build audit-ready, regulator-compliant models that enhance decision-making and career prospects.In today’s rapidly changing financial landscape, organizations are under constant pressure to build resilient credit risk models that not only comply with regulations but also provide meaningful insights for decision-making. This course has been carefully designed to give you the skills, knowledge, and practical tools needed to develop, validate, and implement IFRS 9 Point-in-Time (PIT) and Lifetime Probability of Default (PD) models from start to finish.Across more than nine hours of step-by-step video content, you will learn how to transform raw credit data into regulatory-compliant, business-ready insights. We will start with the foundations of credit risk and IFRS 9 requirements before diving into data preparation, variable binning, Weight of Evidence (WOE) transformation, logistic regression modeling, and calibration techniques. You will also discover how to incorporate macroeconomic scenarios into your models, apply forward-looking adjustments, and overlay staging rules to align with IFRS 9 standards.Practical demonstrations are provided using SAS, ensuring you gain hands-on experience that can be directly applied in your professional role. By the end of the course, you will be able to confidently build and document models that satisfy auditors, regulators, and internal stakeholders.Whether you are a credit risk analyst, data scientist, actuary, or finance professional, this course will equip you with the tools to advance your career and help your organization navigate the challenges of modern risk management.
Overview
Section 1: Introduction
Lecture 1 Introduction to IFRS 9 and PIT PD
Lecture 2 IFRS 9 PIT PD Modelling
Lecture 3 IFRS9 Three Pillar Overview
Lecture 4 Modelling Process
Lecture 5 Data Loading to SAS
Lecture 6 Data Quality Overview
Lecture 7 IFRS 9 PIT PD Model Development and ECL
Lecture 8 Splitting Data
Lecture 9 Feature Engineering
Lecture 10 Logistic Regression
Lecture 11 KS Statistic & AUC
Lecture 12 Model Calibration
Lecture 13 ECL Calculation
Lecture 14 Conclusion
Section 2: Data Preparation & Data Quality
Lecture 15 Introduction to data preparation and data checks
Lecture 16 Data Preparation
Lecture 17 Performance and Observation Windows
Lecture 18 Performance Window Example
Lecture 19 Vintage Analysis
Lecture 20 Wholesale Variables
Lecture 21 Retail Variables
Lecture 22 oversampling
Lecture 23 Data Quality
Lecture 24 Data Quality Procedures in SAS
Lecture 25 Mean Median Imputation
Lecture 26 Missing Data
Lecture 27 Handling Missing Values
Lecture 28 Missing Data Treatment
Lecture 29 Binary Indicator
Lecture 30 Working With Missing Values
Lecture 31 Cluster
Lecture 32 Rule Based
Lecture 33 Using Proc Logistic to handle Missing Data
Lecture 34 Regression
Lecture 35 Hot Deck
Lecture 36 Data Quality Summary
Lecture 37 Module Conclusion
Section 3: Variable Selection and Model Development
Lecture 38 Variable Selection and Model Development
Lecture 39 Exploratory Data analysis
Lecture 40 Exploratoy Data Analysis
Lecture 41 Multicollearity
Lecture 42 PROC VARCLUS
Lecture 43 Feature Engineering
Lecture 44 PROC VARCLUS Demo
Lecture 45 Variable Relavance
Lecture 46 Coarse Classing & Fine Classing
Lecture 47 Coarse and Fine Classing Demo
Lecture 48 Spearman & Hoeffdieng D Statistics
Lecture 49 Spearman & Hoeffding D Demo
Lecture 50 Variable Selection
Lecture 51 Stepwise Backward Forward Selection
Lecture 52 Variable Interactions
Lecture 53 Interactions
Lecture 54 Odds Ratio
Lecture 55 Model Development
Lecture 56 PROC LOGISTIC
Lecture 57 Logistic Regression
Lecture 58 Logistic Regression Demo
Lecture 59 Categorical Variables
Lecture 60 Grouping Categorical Variables Demo
Lecture 61 Greenacre method
Lecture 62 Greenacre Demo
Lecture 63 Testing logit linearity
Lecture 64 Lagged Variables
Lecture 65 Module Conclusion
Section 4: Model Validation & Perfomance Measurement
Lecture 66 Module Introduction
Lecture 67 Overview of Model Validation
Lecture 68 Hosmer & Lemeshow
Lecture 69 Barrier Score
Lecture 70 AUC & ROC
Lecture 71 Gini coefficient & Lift Chat
Lecture 72 AIC BIC & 2 LL
Lecture 73 Decile Ranking
Lecture 74 D Statistic Concordance
Lecture 75 PSI
Lecture 76 Model Evaluation & rerun
Lecture 77 Performance Summary
Lecture 78 Cross Validation
Section 5: PIT PD Calibration & Forward - Looking Adjustments
Lecture 79 PIT PD Calibration
Lecture 80 Forecasting and Scenario Analysis
Lecture 81 Stagging Overlay
Lecture 82 1PIT PD Calibration & Forward-Looking Adjustments
Lecture 83 Scenario Weighting
Lecture 84 Implementation in SAS PIT PD Calibration & Forward-Looking Adjustments
Lecture 85 PIT PD (12M) Calibration in SAS
Section 6: IFRS 9 Stagging & Significant Increase in Credit Risk
Lecture 86 IFRS 9 Staging
Lecture 87 IFRS 9 Staging and Basel Overlay
Lecture 88 Merton Model PD overlay
Lecture 89 Staging Evaluation & Validation Framework
Section 7: lifetime PIT PD Modelling
Lecture 90 Introduction
Lecture 91 survival model
Lecture 92 Cox Proportional Hazards
Lecture 93 Censoring
Lecture 94 Survival Functions
Lecture 95 Cox Regression in SAS
Lecture 96 Cohort Vintage Modelling
Lecture 97 Cohort Analysis
Lecture 98 Transition Matrices
Lecture 99 PROC IML Transition Matrices
Lecture 100 ECL Using Lifetime_PD
Lecture 101 Benefits of Lifetime PD
Lecture 102 PIT vs Lifetime_PD Stage Transitions
Section 8: ECL Calculation
Lecture 103 Introduction
Lecture 104 Regulatory ECL Reporting
Lecture 105 ECL Profit and Loss
Lecture 106 Classification Pillar
Lecture 107 12-Month Expected Credit Loss (ECL)
Lecture 108 Lifetime Expected Credit Loss (ECL) Part 1
Lecture 109 Advanced Portfolio Aggregation & Risk Insights
Lecture 110 Lifetime Expected Credit Loss (ECL) Part 2
Lecture 111 IFRS 9 Regulatory Reporting & Disclosures
Lecture 112 Sensitivity Analysis and Section Conclusion
Section 9: Automation and monitoring Framework
Lecture 113 Introduction
Lecture 114 Model Validation & Monitoring
Lecture 115 Model Deployment and Automation
Lecture 116 Automated IFRS-9 Workflows Architecture and Pipeline Design
Lecture 117 Automated IFRS-9 Workflows Controls Governance and Operations
Lecture 118 Model Performance and Data Quality
Lecture 119 Configure Alert Mechanisms
Lecture 120 End-to-End Automation and Monitoring Pipeline
Lecture 121 Module Wrap up and Overview
Section 10: Bonus Model : End to End IFRS PIT PD Model
Lecture 122 Introduction
Lecture 123 Demo : Bonus End-to-End IFRS9 Credit Risk PD Modelling
Lecture 124 Module Summary and Conclusion
Lecture 125 Closing and Congratulations
Credit Risk Analysts and Risk Modellers who want to build, calibrate, and validate IFRS 9 Probability of Default (PD) and Expected Credit Loss (ECL) models.,Data Scientists and Statisticians seeking practical applications of SAS, Python, and statistical modelling techniques in financial risk management.,Finance and Banking Professionals working in credit risk, loan portfolios, or regulatory reporting who need to understand IFRS 9 requirements.,Actuarial Students and FRM Candidates preparing for professional exams who want real-world modelling examples and case studies.,Beginners in Credit Risk Modelling who may not have prior experience but are motivated to learn step by step, with code walkthroughs and hands-on examples.