Visit This Web URL https://masterytrail.com/product/accredited-expert-level-oracle-operational-risk-analytics-advanced-video-course Lesson 1: Overview of Operational Risk

1.1 Definition and Importance

1.2 Key Concepts and Terminologies

1.3 Evolution of Operational Risk Management

1.4 Regulatory Framework and Compliance

1.5 Role of Technology in Operational Risk

1.6 Case Studies on Operational Risk Failures

1.7 Introduction to Oracle Solutions

1.8 Benefits of Using Oracle for Operational Risk

1.9 Setting Up the Learning Environment

1.10 Course Objectives and Structure


Lesson 2: Fundamentals of Risk Management

2.1 Types of Risks in Organizations

2.2 Risk Identification Techniques

2.3 Risk Assessment Methodologies

2.4 Risk Mitigation Strategies

2.5 Risk Monitoring and Reporting

2.6 Integration with Enterprise Risk Management

2.7 Role of Data in Risk Management

2.8 Introduction to Risk Analytics

2.9 Key Performance Indicators in Risk Management

2.10 Best Practices in Risk Management


Lesson 3: Oracle Operational Risk Management Overview

3.1 Introduction to Oracle ORM

3.2 Key Features and Capabilities

3.3 Architecture and Components

3.4 Installation and Configuration

3.5 User Interface and Navigation

3.6 Customization and Extensions

3.7 Integration with Other Oracle Products

3.8 Security and Access Control

3.9 Data Management and Storage

3.10 Overview of Reporting and Dashboards


Lesson 4: Data Collection and Management

4.1 Data Sources for Operational Risk

4.2 Data Collection Techniques

4.3 Data Quality and Validation

4.4 Data Storage and Management

4.5 Data Integration and ETL Processes

4.6 Data Governance and Compliance

4.7 Data Security and Privacy

4.8 Data Retention and Archiving

4.9 Data Migration and Upgrades

4.10 Best Practices in Data Management


Module 2: Advanced Risk Analytics

Lesson 5: Introduction to Risk Analytics

5.1 Definition and Scope

5.2 Importance of Risk Analytics

5.3 Types of Risk Analytics

5.4 Key Components of Risk Analytics

5.5 Data-Driven Decision Making

5.6 Role of AI and Machine Learning

5.7 Predictive Analytics in Risk Management

5.8 Descriptive vs. Predictive Analytics

5.9 Tools and Technologies for Risk Analytics

5.10 Case Studies on Risk Analytics


Lesson 6: Advanced Data Analysis Techniques

6.1 Statistical Methods for Risk Analysis

6.2 Data Visualization Techniques

6.3 Time Series Analysis

6.4 Regression Analysis

6.5 Cluster Analysis

6.6 Factor Analysis

6.7 Monte Carlo Simulation

6.8 Scenario Analysis

6.9 Sensitivity Analysis

6.10 Advanced Excel and SQL for Risk Analysis


Lesson 7: Machine Learning in Risk Analytics

7.1 Introduction to Machine Learning

7.2 Supervised vs. Unsupervised Learning

7.3 Feature Engineering and Selection

7.4 Model Training and Validation

7.5 Model Evaluation and Optimization

7.6 Common ML Algorithms for Risk Analytics

7.7 Implementing ML Models in Oracle

7.8 Case Studies on ML in Risk Management

7.9 Ethical Considerations in ML

7.10 Future Trends in ML for Risk Analytics


Lesson 8: Predictive Modeling for Operational Risk

8.1 Introduction to Predictive Modeling

8.2 Data Preparation for Predictive Modeling

8.3 Model Selection and Training

8.4 Model Evaluation and Validation

8.5 Implementing Predictive Models in Oracle

8.6 Case Studies on Predictive Modeling

8.7 Challenges in Predictive Modeling

8.8 Best Practices in Predictive Modeling

8.9 Tools and Technologies for Predictive Modeling

8.10 Future Trends in Predictive Modeling


Module 3: Oracle Operational Risk Analytics Tools

Lesson 9: Oracle Risk Analytics Overview

9.1 Introduction to Oracle Risk Analytics

9.2 Key Features and Capabilities

9.3 Architecture and Components

9.4 Installation and Configuration

9.5 User Interface and Navigation

9.6 Customization and Extensions

9.7 Integration with Other Oracle Products

9.8 Security and Access Control

9.9 Data Management and Storage

9.10 Overview of Reporting and Dashboards


Lesson 10: Using Oracle Risk Analytics for Data Analysis

10.1 Data Import and Export

10.2 Data Transformation and Cleaning

10.3 Data Visualization Techniques

10.4 Creating Reports and Dashboards

10.5 Advanced Data Analysis Techniques

10.6 Using SQL for Data Analysis

10.7 Implementing Machine Learning Models

10.8 Case Studies on Data Analysis

10.9 Best Practices in Data Analysis

10.10 Future Trends in Data Analysis


Lesson 11: Advanced Reporting and Dashboards

11.1 Introduction to Reporting and Dashboards

11.2 Creating Custom Reports

11.3 Designing Interactive Dashboards

11.4 Using Visualization Tools

11.5 Advanced Reporting Techniques

11.6 Best Practices in Reporting

11.7 Case Studies on Reporting and Dashboards

11.8 Challenges in Reporting and Dashboards

11.9 Future Trends in Reporting and Dashboards

11.10 Tools and Technologies for Reporting and Dashboards


Lesson 12: Integration with Other Oracle Products

12.1 Introduction to Integration

12.2 Integration with Oracle Database

12.3 Integration with Oracle Fusion Middleware

12.4 Integration with Oracle Business Intelligence

12.5 Integration with Oracle Hyperion

12.6 Integration with Oracle E-Business Suite

12.7 Integration with Oracle PeopleSoft

12.8 Integration with Oracle JD Edwards

12.9 Best Practices in Integration

12.10 Future Trends in Integration


Module 4: Practical Applications and Case Studies

Lesson 13: Case Studies on Operational Risk Management

13.1 Introduction to Case Studies

13.2 Case Study 1: Financial Services

13.3 Case Study 2: Healthcare

13.4 Case Study 3: Manufacturing

13.5 Case Study 4: Retail

13.6 Case Study 5: Technology

13.7 Case Study 6: Energy

13.8 Case Study 7: Telecommunications

13.9 Case Study 8: Government

13.10 Case Study 9: Non-Profit


Lesson 14: Practical Applications of Risk Analytics

14.1 Introduction to Practical Applications

14.2 Application 1: Fraud Detection

14.3 Application 2: Credit Risk Management

14.4 Application 3: Market Risk Management

14.5 Application 4: Operational Risk Management

14.6 Application 5: Compliance Management

14.7 Application 6: Supply Chain Risk Management

14.8 Application 7: Cybersecurity Risk Management

14.9 Application 8: Strategic Risk Management

14.10 Application 9: Reputational Risk Management


Lesson 15: Best Practices in Operational Risk Management

15.1 Introduction to Best Practices

15.2 Best Practice 1: Risk Identification

15.3 Best Practice 2: Risk Assessment

15.4 Best Practice 3: Risk Mitigation

15.5 Best Practice 4: Risk Monitoring

15.6 Best Practice 5: Risk Reporting

15.7 Best Practice 6: Data Management

15.8 Best Practice 7: Compliance Management

15.9 Best Practice 8: Technology Integration

15.10 Best Practice 9: Continuous Improvement


Lesson 16: Future Trends in Operational Risk Management

16.1 Introduction to Future Trends

16.2 Trend 1: Artificial Intelligence

16.3 Trend 2: Machine Learning

16.4 Trend 3: Big Data Analytics

16.5 Trend 4: Blockchain Technology

16.6 Trend 5: Internet of Things

16.7 Trend 6: Cloud Computing

16.8 Trend 7: Cybersecurity

16.9 Trend 8: Regulatory Changes

16.10 Trend 9: Globalization


Module 5: Advanced Topics in Operational Risk Analytics

Lesson 17: Advanced Risk Modeling Techniques

17.1 Introduction to Advanced Risk Modeling

17.2 Technique 1: Value at Risk (VaR)

17.3 Technique 2: Expected Shortfall

17.4 Technique 3: Stress Testing

17.5 Technique 4: Scenario Analysis

17.6 Technique 5: Sensitivity Analysis

17.7 Technique 6: Monte Carlo Simulation

17.8 Technique 7: Bayesian Networks

17.9 Technique 8: Fuzzy Logic

17.10 Technique 9: Neural Networks


Lesson 18: Regulatory Compliance and Reporting

18.1 Introduction to Regulatory Compliance

18.2 Compliance Framework and Standards

18.3 Regulatory Reporting Requirements

18.4 Compliance Monitoring and Auditing

18.5 Data Privacy and Security Compliance

18.6 Risk Management Compliance

18.7 Compliance with International Standards

18.8 Best Practices in Compliance Management

18.9 Case Studies on Compliance Management

18.10 Future Trends in Compliance Management


Lesson 19: Risk Culture and Governance

19.1 Introduction to Risk Culture

19.2 Building a Risk-Aware Culture

19.3 Role of Leadership in Risk Culture

19.4 Risk Governance Framework

19.5 Risk Appetite and Tolerance

19.6 Risk Communication and Training

19.7 Risk Culture Assessment

19.8 Best Practices in Risk Culture

19.9 Case Studies on Risk Culture

19.10 Future Trends in Risk Culture


Lesson 20: Emerging Risks and Challenges

20.1 Introduction to Emerging Risks

20.2 Risk 1: Cybersecurity Threats

20.3 Risk 2: Climate Change

20.4 Risk 3: Geopolitical Risks

20.5 Risk 4: Technological Disruptions

20.6 Risk 5: Pandemics and Health Crises

20.7 Risk 6: Economic Volatility

20.8 Risk 7: Regulatory Changes

20.9 Risk 8: Supply Chain Disruptions

20.10 Risk 9: Reputational Risks


Module 6: Hands-On Labs and Projects

Lesson 21: Hands-On Lab 1: Data Collection and Management

21.1 Lab Overview and Objectives

21.2 Setting Up the Lab Environment

21.3 Data Collection Techniques

21.4 Data Quality and Validation

21.5 Data Storage and Management

21.6 Data Integration and ETL Processes

21.7 Data Governance and Compliance

21.8 Data Security and Privacy

21.9 Data Retention and Archiving

21.10 Lab Review and Q&A


Lesson 22: Hands-On Lab 2: Advanced Data Analysis

22.1 Lab Overview and Objectives

22.2 Setting Up the Lab Environment

22.3 Statistical Methods for Risk Analysis

22.4 Data Visualization Techniques

22.5 Time Series Analysis

22.6 Regression Analysis

22.7 Cluster Analysis

22.8 Factor Analysis

22.9 Monte Carlo Simulation

22.10 Lab Review and Q&A


Lesson 23: Hands-On Lab 3: Machine Learning in Risk Analytics

23.1 Lab Overview and Objectives

23.2 Setting Up the Lab Environment

23.3 Introduction to Machine Learning

23.4 Supervised vs. Unsupervised Learning

23.5 Feature Engineering and Selection

23.6 Model Training and Validation

23.7 Model Evaluation and Optimization

23.8 Common ML Algorithms for Risk Analytics

23.9 Implementing ML Models in Oracle

23.10 Lab Review and Q&A


Lesson 24: Hands-On Lab 4: Predictive Modeling for Operational Risk

24.1 Lab Overview and Objectives

24.2 Setting Up the Lab Environment

24.3 Introduction to Predictive Modeling

24.4 Data Preparation for Predictive Modeling

24.5 Model Selection and Training

24.6 Model Evaluation and Validation

24.7 Implementing Predictive Models in Oracle

24.8 Case Studies on Predictive Modeling

24.9 Challenges in Predictive Modeling

24.10 Lab Review and Q&A


Lesson 25: Hands-On Lab 5: Advanced Reporting and Dashboards

25.1 Lab Overview and Objectives

25.2 Setting Up the Lab Environment

25.3 Introduction to Reporting and Dashboards

25.4 Creating Custom Reports

25.5 Designing Interactive Dashboards

25.6 Using Visualization Tools

25.7 Advanced Reporting Techniques

25.8 Best Practices in Reporting

25.9 Case Studies on Reporting and Dashboards

25.10 Lab Review and Q&A


Lesson 26: Hands-On Lab 6: Integration with Other Oracle Products

26.1 Lab Overview and Objectives

26.2 Setting Up the Lab Environment

26.3 Introduction to Integration

26.4 Integration with Oracle Database

26.5 Integration with Oracle Fusion Middleware

26.6 Integration with Oracle Business Intelligence

26.7 Integration with Oracle Hyperion

26.8 Integration with Oracle E-Business Suite

26.9 Integration with Oracle PeopleSoft

26.10 Lab Review and Q&A


Lesson 27: Hands-On Lab 7: Case Studies on Operational Risk Management

27.1 Lab Overview and Objectives

27.2 Setting Up the Lab Environment

27.3 Introduction to Case Studies

27.4 Case Study 1: Financial Services

27.5 Case Study 2: Healthcare

27.6 Case Study 3: Manufacturing

27.7 Case Study 4: Retail

27.8 Case Study 5: Technology

27.9 Case Study 6: Energy

27.10 Lab Review and Q&A


Lesson 28: Hands-On Lab 8: Practical Applications of Risk Analytics

28.1 Lab Overview and Objectives

28.2 Setting Up the Lab Environment

28.3 Introduction to Practical Applications

28.4 Application 1: Fraud Detection

28.5 Application 2: Credit Risk Management

28.6 Application 3: Market Risk Management

28.7 Application 4: Operational Risk Management

28.8 Application 5: Compliance Management

28.9 Application 6: Supply Chain Risk Management

28.10 Lab Review and Q&A


Lesson 29: Hands-On Lab 9: Best Practices in Operational Risk Management

29.1 Lab Overview and Objectives

29.2 Setting Up the Lab Environment

29.3 Introduction to Best Practices

29.4 Best Practice 1: Risk Identification

29.5 Best Practice 2: Risk Assessment

29.6 Best Practice 3: Risk Mitigation

29.7 Best Practice 4: Risk Monitoring

29.8 Best Practice 5: Risk Reporting

29.9 Best Practice 6: Data Management

29.10 Lab Review and Q&A


Lesson 30: Hands-On Lab 10: Future Trends in Operational Risk Management

30.1 Lab Overview and Objectives

30.2 Setting Up the Lab Environment

30.3 Introduction to Future Trends

30.4 Trend 1: Artificial Intelligence

30.5 Trend 2: Machine Learning

30.6 Trend 3: Big Data Analytics

30.7 Trend 4: Blockchain Technology

30.8 Trend 5: Internet of Things

30.9 Trend 6: Cloud Computing

30.10 Lab Review and Q&A


Module 7: Capstone Project

Lesson 31: Capstone Project Overview

31.1 Project Overview and Objectives

31.2 Project Scope and Deliverables

31.3 Project Timeline and Milestones

31.4 Project Team and Roles

31.5 Project Resources and Tools

31.6 Project Risk Management Plan

31.7 Project Communication Plan

31.8 Project Quality Management Plan

31.9 Project Stakeholder Management Plan

31.10 Project Kickoff and Initial Setup


Lesson 32: Capstone Project - Data Collection and Management

32.1 Data Collection Techniques

32.2 Data Quality and Validation

32.3 Data Storage and Management

32.4 Data Integration and ETL Processes

32.5 Data Governance and Compliance

32.6 Data Security and Privacy

32.7 Data Retention and Archiving

32.8 Data Migration and Upgrades

32.9 Best Practices in Data Management

32.10 Project Review and Q&A


Lesson 33: Capstone Project - Advanced Data Analysis

33.1 Statistical Methods for Risk Analysis

33.2 Data Visualization Techniques

33.3 Time Series Analysis

33.4 Regression Analysis

33.5 Cluster Analysis

33.6 Factor Analysis

33.7 Monte Carlo Simulation

33.8 Scenario Analysis

33.9 Sensitivity Analysis

33.10 Project Review and Q&A


Lesson 34: Capstone Project - Machine Learning in Risk Analytics

34.1 Introduction to Machine Learning

34.2 Supervised vs. Unsupervised Learning

34.3 Feature Engineering and Selection

34.4 Model Training and Validation

34.5 Model Evaluation and Optimization

34.6 Common ML Algorithms for Risk Analytics

34.7 Implementing ML Models in Oracle

34.8 Case Studies on ML in Risk Management

34.9 Ethical Considerations in ML

34.10 Project Review and Q&A


Lesson 35: Capstone Project - Predictive Modeling for Operational Risk

35.1 Introduction to Predictive Modeling

35.2 Data Preparation for Predictive Modeling

35.3 Model Selection and Training

35.4 Model Evaluation and Validation

35.5 Implementing Predictive Models in Oracle

35.6 Case Studies on Predictive Modeling

35.7 Challenges in Predictive Modeling

35.8 Best Practices in Predictive Modeling

35.9 Tools and Technologies for Predictive Modeling

35.10 Project Review and Q&A


Lesson 36: Capstone Project - Advanced Reporting and Dashboards

36.1 Introduction to Reporting and Dashboards

36.2 Creating Custom Reports

36.3 Designing Interactive Dashboards

36.4 Using Visualization Tools

36.5 Advanced Reporting Techniques

36.6 Best Practices in Reporting

36.7 Case Studies on Reporting and Dashboards

36.8 Challenges in Reporting and Dashboards

36.9 Future Trends in Reporting and Dashboards

36.10 Project Review and Q&A


Lesson 37: Capstone Project - Integration with Other Oracle Products

37.1 Introduction to Integration

37.2 Integration with Oracle Database

37.3 Integration with Oracle Fusion Middleware

37.4 Integration with Oracle Business Intelligence

37.5 Integration with Oracle Hyperion

37.6 Integration with Oracle E-Business Suite

37.7 Integration with Oracle PeopleSoft

37.8 Integration with Oracle JD Edwards

37.9 Best Practices in Integration

37.10 Project Review and Q&A


Lesson 38: Capstone Project - Case Studies on Operational Risk Management

38.1 Introduction to Case Studies

38.2 Case Study 1: Financial Services

38.3 Case Study 2: Healthcare

38.4 Case Study 3: Manufacturing

38.5 Case Study 4: Retail

38.6 Case Study 5: Technology

38.7 Case Study 6: Energy

38.8 Case Study 7: Telecommunications

38.9 Case Study 8: Government

38.10 Project Review and Q&A


Lesson 39: Capstone Project - Practical Applications of Risk Analytics

39.1 Introduction to Practical Applications

39.2 Application 1: Fraud Detection

39.3 Application 2: Credit Risk Management

39.4 Application 3: Market Risk Management

39.5 Application 4: Operational Risk Management

39.6 Application 5: Compliance Management

39.7 Application 6: Supply Chain Risk Management

39.8 Application 7: Cybersecurity Risk Management

39.9 Application 8: Strategic Risk Management

39.10 Project Review and Q&A


Lesson 40: Capstone Project - Future Trends in Operational Risk Management

40.1 Introduction to Future Trends

40.2 Trend 1: Artificial Intelligence

40.3 Trend 2: Machine Learning

40.4 Trend 3: Big Data Analytics

40.5 Trend 4: Blockchain Technology

40.6 Trend 5: Internet of Things

40.7 Trend 6: Cloud Computing

40.8 Trend 7: Cybersecurity

40.9 Trend 8: Regulatory Changes

40.10 Project Review and Q&A