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    IFRS 9 Expected Credit Loss Modelling MasterClass

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    Website https://glceurope.com/ifrs-9-expected-credit-loss-modelling-masterclass-6-details/?utm_source=wikicf | Want to Edit it Edit Freely

    Category finance

    Deadline: September 23, 2020 | Date: September 24, 2020-September 25, 2020

    Venue/Country: Novotel Budapest Danube, Hungary

    Updated: 2020-05-05 16:50:34 (GMT+9)

    Call For Papers - CFP

    The ECL MasterClass was designed to improve the level of knowledge in the field of modelling requirements from IFRS 9, the EBA Stresstest-Methodology, the EBA IRB-Guidelines and the upcoming Basel IV standards. The MasterClass approach is vastly practical. It will help you to understand fundamental concepts and principles underlying the many new regulations and equip participants with the knowledge to handle the practical implementation challenges and to sort out the complex differences.

    One of the reasons why GLC MasterClasses stand out from others is that our participants gain not only the knowledge from highly experienced and specialized professionals, but also learn how to apply the gained insights in real life.

    The ECL MasterClass is essential for professionals in the field of accounting, auditing and finance, who are aiming for career development. The MasterClass will cover new regulatory topics, especially the Credit Risk Stress test.


    Keywords: Accepted papers list. Acceptance Rate. EI Compendex. Engineering Index. ISTP index. ISI index. Impact Factor.
    Disclaimer: ourGlocal is an open academical resource system, which anyone can edit or update. Usually, journal information updated by us, journal managers or others. So the information is old or wrong now. Specially, impact factor is changing every year. Even it was correct when updated, it may have been changed now. So please go to Thomson Reuters to confirm latest value about Journal impact factor.