Enterprise Model Governance & Risk Management - Printable Version +- Softwarez.Info - Software's World! (https://softwarez.info) +-- Forum: Library Zone (https://softwarez.info/Forum-Library-Zone) +--- Forum: Video Tutorials (https://softwarez.info/Forum-Video-Tutorials) +--- Thread: Enterprise Model Governance & Risk Management (/Thread-Enterprise-Model-Governance-Risk-Management) |
Enterprise Model Governance & Risk Management - nieriorefasow63 - 06-22-2023 Enterprise Model Governance & Risk Management Published 6/2023 MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz Language: English | Size: 318.60 MB | Duration: 0h 55m Implement an enterprise solution for Model (incl. Machine Learning and AI models) Governance and Risk Management What you'll learn Understand Enterprise & Regulatory risk management need for Statistical, Machine Learning and Artificial Intelligence models Understand the principles for Model Governance and Risk Management Understand SS1/23 Model Risk Management regulation for Banks in United Kingdom How to implement an Enterprise Model Governance & Risk Management solution Requirements No programming experience or skill is required A basic understanding of Model Development lifecycle is recommended A basic of understanding of risk w.r.t IT systems is recommended Description Model Governance and Risk Management is an integral part of Model Development Lifecycle. Due to predictive nature of models, there is an inherent risk associated with them. If the model predictions deviate significantly from real world scenarios, it could have catastrophic results for both an organization and its customers. In such a scenario, it becomes extremely important to have well defined, preventive and detective guardrails around model development and use. Organizations have done model risk management in one form or the other, but the overarching principles and framework has started shaping in the last decade. In April 2011, the US Board of Governors of the Federal Reserve System published the Supervisory Guidance on Model Risk Management (SR 11-7). With the recent advances in Machine Learning & Artificial Intelligence and the introduction of generative AI like GPT-4 and DALLĀ·E, government and regulatory bodies around the world are showing tremendous interest in strengthening existing regulations or introducing new ones. On 17th May 2023, the Prudential Regulatory Authority of Bank of England published SS 1/23 Model Risk Management principles for banks in UK covering traditional banking models as well as Machine Learning and AI models.This course gives an overview of Model Governance and Risk Management principles and can serve as a high level guide to implement or harden model governance and risk management processes for your organization or clients. We have taken the regulation SS1/23 Model Risk Management principles for Banks in UK as an example. Though we are using this regulatory example, the implementation framework discussed in this course is industry and geography agnostic.What is covered in this course?Enterprise & Regulatory need for Model Governance and Risk ManagementModel Governance & Risk Management: Key PrinciplesGovernanceModel Identification and Model Risk ClassificationModel Development, Implementation and UseIndependent Model ValidationModel Risk MitigationImplementationTeam StructureKey functional requirementsLogical architecture for Enterprise Solution Tool Selection for Enterprise SolutionEnroll now to develop a deeper understanding of Enterprise Model Governance and Risk Management! Overview Section 1: Introduction & Need for Model Governance and Risk Management Lecture 1 Introduction Lecture 2 Enterprise & Regulatory need for Model Governance and Risk Management Section 2: Model Governance & Risk Management: Key Principles Lecture 3 Principles Overview Lecture 4 Governance principle Lecture 5 Model Identification and Model Risk Classification principle Lecture 6 Model Development, Implementation and Use principle Lecture 7 Independent Model Validation principle Lecture 8 Model Risk Mitigation principle Section 3: Implementation Lecture 9 Team Structure Lecture 10 Key Functional Requirements Lecture 11 Logical Architecture Lecture 12 Tool Selection Data Scientists and Machine Learning Engineers who want to understand Model Risk Management principles and processes,Model Validators and Model Risk professionals who want to implement/harden Model Risk Management solution,Product Owners & Managers (who are working on Machine Learning & AI products),Anyone who wants a deeper understanding of Enterprise Model Governance and Risk Management HOMEPAGE DOWNLOAD |