IFRS 9 Expected Credit Losses Building Models for Central Banks

Understanding IFRS 9 Basics: From Credit Risk Models to Expected Credit Losses in Central Bank Compliance

Introduction

The International Financial Reporting Standard 9 (IFRS 9) is a crucial accounting standard that addresses financial instruments' classification, measurement, and impairment. For central banks, understanding IFRS 9's expected credit loss (ECL) model is vital to assess and manage potential credit risks accurately. The aim to equip central bank professionals with the necessary knowledge and practical skills to build IFRS 9 ECL models from scratch using real-world data.

The primary objective of this course is to provide central bank staff with a comprehensive understanding of IFRS 9 and its ECL model. Participants will learn to build robust ECL models using practical data to support effective credit risk management in central banks' operations.

Course Objectives

Course Outlines

Day 1: Introduction to IFRS 9 and Expected Credit Losses

Day 2: Data Preparation and Quality Assessment

Day 3: ECL Modelling Techniques and Approaches

Day 4: Model Calibration and Validation

Day 5: Implementing IFRS 9 ECL Models in Central Banks

Filter

  • All
  • Nov 2024
  • Dec 2024
  • Jan 2025
  • Feb 2025
  • Mar 2025
  • Apr 2025
  • May 2025
  • Jun 2025
  • Jul 2025
  • Aug 2025
  • Sep 2025
  • Oct 2025
  • London (UK)
  • Paris (France)
  • Amsterdam (Netherlands)
  • Barcelona (Spain)
  • Madrid (Spain)
  • Vienna (Austria)
  • Berlin (Germany)
  • Düsseldorf (Germany)
  • Munich (Germany)
  • Geneva (Switzerland)
  • Rome (Italy)
  • Prague (Czech)
  • Brussels (Belgium)
  • Toronto (Canada)
  • Lisbon (Portugal)
  • Istanbul (Turkey)
  • Manama (Bahrain)
  • Dubai (UAE)
  • Cairo (Egypt)
  • Sharm El-Sheikh (Egypt)
  • Tunis (Tunisia)
  • Kuala Lumpur (Malaysia)
  • Los Angeles (USA)
  • Malaga (Spain)
  • Baku (Azerbaijan)
  • Orlando, Florida (USA)
  • Online
  • Maldives (Maldives)
  • Cape Town (South Africa)
  • Accra (Ghana)
  • Boston,Massachusetts (USA)
  • Washington (USA)
  • Bali (Indonesia)