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Financial Modeling With Generative Ai Certification
Published 11/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 10.90 GB | Duration: 18h 6m[/center]

Build a Strong Foundation in Financial Modeling with Generative AI for Enhanced Decision-Making and Analysis

What you'll learn
Fundamentals of financial modeling and its applications in AI-enhanced finance.
Core principles of generative AI and its role in financial strategy.
Integrating generative AI into traditional financial models effectively.
Exploring key AI tools and platforms used in financial modeling.
Setting up and managing a generative AI framework for finance.
Understanding data quality and preparation requirements for AI models.
Building and optimizing data pipelines compatible with AI systems.
Utilizing generative AI for accurate time-series forecasting.
Applying AI to scenario planning and evaluating potential outcomes.
Fundamentals of risk assessment and AI-driven risk scoring techniques.
Enhancing asset valuation with AI-driven dynamic valuation models.
AI applications in financial statement and ratio analysis.
Portfolio management strategies using AI for diversification and risk.
Real-time financial data integration and high-frequency trading models.
Automating financial report generation with generative AI.
Ethical considerations and compliance standards for AI in finance.

Requirements
No Prerequisites.

Description
This course offers an in-depth exploration of the rapidly evolving field of financial modeling, particularly focusing on the integration of generative AI to enhance traditional models and decision-making processes. Students will begin with an introduction to financial modeling and the transformative role generative AI can play within this framework. The curriculum is meticulously designed to provide students with a foundational understanding of financial modeling and AI fundamentals while exploring the broader applications, limitations, and ethical considerations that accompany such advanced technologies. While the course is heavily rooted in theory, this theoretical foundation serves as a springboard for developing a sophisticated understanding of the complexities and nuances of AI-driven financial innovation.As students progress, they will delve into the structure and requirements for implementing a generative AI framework. A significant emphasis is placed on understanding the importance of data within this context, exploring data quality, compatibility, and the automation processes essential for effective AI integration. Through a thorough examination of data pipelines and the critical need for high-quality input, students will develop a nuanced understanding of how data quality directly impacts AI's effectiveness in financial modeling. By the end of this section, students will be able to assess and implement data pipelines that are structured and optimized for AI compatibility, setting a solid foundation for advanced AI applications in finance.The curriculum also addresses how generative AI contributes to forecasting and predictive modeling within financial contexts. This section explores predictive modeling techniques, including time series forecasting and scenario planning. Through a study of scenario generation and accuracy evaluation, students will gain insights into how predictive models can be optimized with AI, thereby offering enhanced foresight in financial predictions. This predictive modeling section provides a deep dive into statistical and probabilistic techniques combined with AI, allowing students to understand and evaluate the robustness of their forecasts. These insights, grounded in theory, encourage students to think critically about the application of AI in different forecasting scenarios and understand the conditions under which such models deliver maximum accuracy.One of the most impactful sections of the course is devoted to risk assessment, where students examine the role of generative AI in identifying and evaluating various financial risks. They will learn to assess risk scenarios using AI and explore different risk assessment frameworks. Theoretical underpinnings guide this exploration, covering aspects such as risk scoring, scenario simulations, and risk-adjusted returns. These topics encourage students to reflect on the traditional principles of financial risk assessment and consider how AI can enhance, support, and sometimes challenge these longstanding models. Students will gain the theoretical skills needed to not only implement these risk assessments but to evaluate the reliability and ethical implications of AI-driven risk analyses.A key component of this course is understanding how AI can support advanced predictive analytics in finance. Students will explore machine learning and generative AI techniques, their differences, and how each contributes to predictive analytics. The course also covers hyperparameter tuning, a process critical to refining predictive models, and various techniques for improving accuracy in financial predictions. This section is theory-heavy, preparing students to deeply understand the technical complexities of these models, which can then be applied to real-world predictive scenarios, demonstrating how AI-driven forecasts can become more precise and resilient in a fluctuating financial landscape.In addition, this course examines regulatory and ethical considerations inherent to using AI in finance. As AI increasingly influences decision-making processes and strategic directions in finance, regulatory frameworks and ethical implications must be carefully considered. This section provides students with a solid theoretical grounding in understanding the landscape of financial regulations, privacy concerns, and ethical challenges specific to AI. Students will discuss compliance, risk mitigation, and security issues that arise when deploying AI in financial contexts. The goal is to equip students with a robust understanding of how to navigate and manage ethical and regulatory risks, fostering a mindset that balances innovation with accountability and integrity.The final sections of the course bring together many of the concepts covered earlier, including real-time data integration, automation, and AI-driven decision-making processes. Students will learn how to integrate AI recommendations into financial decisions, understand board-level AI decision models, and explore future trends in financial AI, including sustainable finance and emerging technologies. These concluding topics synthesize students' accumulated knowledge, enabling them to comprehend the multifaceted role AI will play in the future of financial modeling. The course ultimately aims to build a comprehensive theoretical foundation, preparing students for both current and anticipated challenges and opportunities AI presents in financial modeling.

Overview
Section 1: Course Resources and Downloads

Lecture 1 Course Resources and Downloads

Section 2: Introduction to Financial Modeling with Generative AI

Lecture 2 Section Introduction

Lecture 3 Basics of Financial Modeling

Lecture 4 Case Study: TechNova's AI Integration: Balancing Innovation with Strategy

Lecture 5 Overview of Generative AI

Lecture 6 Case Study: Transforming Financial Modeling

Lecture 7 Integrating AI in Financial Models

Lecture 8 Case Study: Revolutionizing Credit Risk Assessment

Lecture 9 AI-Enhanced Decision-Making

Lecture 10 Case Study: AI-Driven Transformation in Financial Modeling

Lecture 11 Tools and Platforms for Financial AI

Lecture 12 Case Study: Harnessing AI for Financial Innovation

Lecture 13 Section Summary

Section 3: Setting Up a Generative AI Framework

Lecture 14 Section Introduction

Lecture 15 Understanding Data Requirements

Lecture 16 Case Study: Optimizing Data Quality for AI-Driven Financial Modeling Success

Lecture 17 Selecting Appropriate Models

Lecture 18 Case Study: Navigating Financial Model Selection

Lecture 19 Building AI-Compatible Data Pipelines

Lecture 20 Case Study: Optimizing AI-Ready Data Pipelines

Lecture 21 Automating Data Preparation

Lecture 22 Case Study: Enhancing Financial Modeling

Lecture 23 Evaluating Data Quality for AI

Lecture 24 Case Study: GreenBank's Data Quality Revolution

Lecture 25 Section Summary

Section 4: Generative AI in Forecasting and Predictive Modeling

Lecture 26 Section Introduction

Lecture 27 Introduction to Predictive Modeling

Lecture 28 Case Study: Enhancing Financial Predictions with Generative AI

Lecture 29 Using Generative AI for Time Series Forecasting

Lecture 30 Case Study: Harnessing Generative AI for Enhanced Financial Forecasting

Lecture 31 Scenario Planning with AI

Lecture 32 Case Study: AI-Driven Scenario Planning: Transforming Financial Modeling

Lecture 33 Evaluating Forecast Accuracy

Lecture 34 Case Study: Harnessing Generative AI for Accurate Forecasting

Lecture 35 Improving Predictive Models with AI

Lecture 36 Case Study: Enhancing Financial Forecasting at FinBank

Lecture 37 Section Summary

Section 5: Scenario Analysis with Generative AI

Lecture 38 Section Introduction

Lecture 39 Importance of Scenario Analysis

Lecture 40 Case Study: Generative AI in Transforming Scenario Analysis for Strategic Growth

Lecture 41 AI-Driven Scenario Generation

Lecture 42 Case Study: AI-Driven Scenario Generation: Transforming Financial Modeling

Lecture 43 Evaluating AI-Generated Scenarios

Lecture 44 Case Study: Evaluating AI Scenarios in Strategic Decision-Making

Lecture 45 Applications of Scenario Analysis

Lecture 46 Case Study: TechNova's AI-Enhanced Scenario Analysis: Navigating Uncertainty

Lecture 47 Scenario Analysis in Financial Planning

Lecture 48 Case Study: Revolutionizing Scenario Analysis

Lecture 49 Section Summary

Section 6: Risk Assessment with Generative AI

Lecture 50 Section Introduction

Lecture 51 Fundamentals of Risk Assessment

Lecture 52 Case Study: Transforming Risk Assessment

Lecture 53 AI Approaches to Risk Scoring

Lecture 54 Case Study: AI Revolutionizing Risk Assessment

Lecture 55 Predicting Financial Risks with AI

Lecture 56 Case Study: Enhancing Financial Risk Assessment with AI

Lecture 57 Risk Scenario Simulations

Lecture 58 Case Study: Navigating Risks with AI: GlobalTech's Strategic Expansion

Lecture 59 Risk Assessment Frameworks

Lecture 60 Case Study: Integrating Generative AI in Finance: Transforming Risk Assessment

Lecture 61 Section Summary

Section 7: Financial Statement Analysis and AI Insights

Lecture 62 Section Introduction

Lecture 63 Overview of Financial Statements

Lecture 64 Case Study: Transforming Financial Analysis: Leveraging AI at QuantumTech

Lecture 65 AI for Enhanced Financial Analysis

Lecture 66 Case Study: AI-Driven Financial Analysis: Transforming Insights

Lecture 67 Interpreting AI-Generated Financial Insights

Lecture 68 Case Study: FinCorp's AI Integration: Transforming Financial Analysis

Lecture 69 Ratio Analysis with AI Assistance

Lecture 70 Case Study: AI-Enhanced Ratio Analysis: Transforming Financial Insights

Lecture 71 Applying AI to Historical Financial Data

Lecture 72 Case Study: Unlocking AI's Transformative Power in Financial Statement Analysis

Lecture 73 Section Summary

Section 8: Asset Valuation and AI-Driven Insights

Lecture 74 Section Introduction

Lecture 75 Basics of Asset Valuation

Lecture 76 Case Study: Enhancing Asset Valuation with AI

Lecture 77 AI in Real Estate and Stock Valuation

Lecture 78 Case Study: Harnessing AI for Transformative Asset Valuation

Lecture 79 Dynamic Valuation Models with AI

Lecture 80 Case Study: AI-Driven Dynamic Valuation

Lecture 81 Risk-Adjusted Returns Using AI

Lecture 82 Case Study: Optimizing Risk-Adjusted Returns

Lecture 83 AI in Future Valuation Trends

Lecture 84 Case Study: Revolutionizing Asset Valuation

Lecture 85 Section Summary

Section 9: Portfolio Management and Optimization with AI

Lecture 86 Section Introduction

Lecture 87 Introduction to Portfolio Theory

Lecture 88 Case Study: Leveraging Generative AI and Portfolio Theory

Lecture 89 AI for Portfolio Diversification

Lecture 90 Case Study: Enhancing Portfolio Diversification with AI

Lecture 91 Optimizing Asset Allocation with AI

Lecture 92 Case Study: Harnessing AI for Precision Asset Allocation

Lecture 93 Real-Time Portfolio Adjustments

Lecture 94 Case Study: Optimizing Portfolio Management with Generative AI

Lecture 95 Portfolio Risk Management with AI

Lecture 96 Case Study: AI Revolutionizes Portfolio Risk Management

Lecture 97 Section Summary

Section 10: Stress Testing Financial Models with AI

Lecture 98 Section Introduction

Lecture 99 Purpose of Stress Testing

Lecture 100 Case Study: Enhancing Financial Resilience

Lecture 101 AI Approaches to Stress Testing

Lecture 102 Case Study: Harnessing AI for Enhanced Stress Testing

Lecture 103 Applying AI to Financial Shocks

Lecture 104 Case Study: Enhancing Financial Resilience

Lecture 105 Analyzing Stress Test Results

Lecture 106 Case Study: Transforming Stress Testing

Lecture 107 Stress Testing in Market Contexts

Lecture 108 Case Study: Leveraging Generative AI for Robust Financial Stress Testing

Lecture 109 Section Summary

Section 11: Advanced Predictive Analytics in Finance

Lecture 110 Section Introduction

Lecture 111 Machine Learning vs. Generative AI

Lecture 112 Case Study: Harnessing AI: Transforming Financial Modeling with Machine Learning

Lecture 113 Advanced Forecasting Techniques

Lecture 114 Case Study: Integrating Advanced AI for Enhanced Financial Market Forecasting

Lecture 115 Predictive Accuracy Improvement with AI

Lecture 116 Case Study: Unlocking AI's Potential: FinEdge Solutions' Journey

Lecture 117 Hyperparameter Tuning in Financial Models

Lecture 118 Case Study: Optimizing Financial Models with AI

Lecture 119 Refining Predictive Algorithms

Lecture 120 Case Study: Enhancing Financial Predictions with Advanced Algorithmic Strategies

Lecture 121 Section Summary

Section 12: Regulatory and Ethical Considerations

Lecture 122 Section Introduction

Lecture 123 Overview of Financial Regulations

Lecture 124 Case Study: Balancing Innovation and Compliance

Lecture 125 AI Compliance and Risk Mitigation

Lecture 126 Case Study: Navigating AI Compliance and Risk

Lecture 127 Ethical Implications in AI-Driven Finance

Lecture 128 Case Study: Navigating AI Ethics in Finance

Lecture 129 Privacy and Security in Financial AI

Lecture 130 Case Study: Balancing AI Innovation with Privacy and Security

Lecture 131 Addressing Ethical Challenges

Lecture 132 Case Study: Navigating Ethical Challenges in AI-Driven Financial Modeling

Lecture 133 Section Summary

Section 13: Real-Time Financial Data Integration

Lecture 134 Section Introduction

Lecture 135 Connecting Real-Time Data Sources

Lecture 136 Case Study: Harnessing Real-Time Data and AI for Enhanced Financial Modeling

Lecture 137 AI in High-Frequency Trading Models

Lecture 138 Case Study: Harnessing AI for Strategic Advantage in High-Frequency Trading

Lecture 139 AI-Enhanced Real-Time Data Analysis

Lecture 140 Case Study: AI-Enhanced Real-Time Data Analysis

Lecture 141 Applying Generative AI to Market Movements

Lecture 142 Case Study: Leveraging Generative AI for Enhanced Trading Strategies

Lecture 143 Real-Time Model Integration

Lecture 144 Case Study: Revolutionizing Financial Modeling: Real-Time Data Integration

Lecture 145 Section Summary

Section 14: Automating Financial Reports with Generative AI

Lecture 146 Section Introduction

Lecture 147 Automating Report Generation

Lecture 148 Case Study: Transforming Financial Modeling

Lecture 149 Enhancing Report Quality with AI

Lecture 150 Case Study: Transforming Financial Reporting

Lecture 151 Building Interactive Financial Dashboards

Lecture 152 Case Study: AI-Powered Dashboards: Transforming Financial Reporting

Lecture 153 AI-Driven Insights in Reports

Lecture 154 Case Study: AI-Driven Insights Revolutionize Financial Reporting

Lecture 155 Streamlining Reporting Workflows

Lecture 156 Case Study: Revolutionizing Financial Reporting: Harnessing Generative AI

Lecture 157 Section Summary

Section 15: Integrating AI in Decision-Making Processes

Lecture 158 Section Introduction

Lecture 159 Financial Decision-Making with AI

Lecture 160 Case Study: Harnessing AI for Enhanced Financial Decision-Making

Lecture 161 AI and Human Collaboration in Finance

Lecture 162 Case Study: AI-Driven Innovation in Finance

Lecture 163 Interpreting AI Recommendations

Lecture 164 Case Study: Integrating AI for Strategic Financial Decisions

Lecture 165 AI in Board-Level Decision Processes

Lecture 166 Case Study: AI-Driven Transformation: GlobalMart's Strategic Decision-Making

Lecture 167 Decision-Making Models with AI

Lecture 168 Case Study: AI-Driven Financial Modeling: Transforming Market Predictions

Lecture 169 Section Summary

Section 16: Future Trends and Innovations in Financial AI

Lecture 170 Section Introduction

Lecture 171 Future of Generative AI in Finance

Lecture 172 Case Study: Harnessing Generative AI for Sustainable Growth

Lecture 173 Emerging Technologies in Financial Modeling

Lecture 174 Case Study: Transforming Financial Modeling

Lecture 175 Ethical AI Development in Finance

Lecture 176 Case Study: Navigating Ethical AI in Finance

Lecture 177 Preparing for AI Disruptions in Finance

Lecture 178 Case Study: Integrating Generative AI

Lecture 179 AI in Sustainable and Green Finance

Lecture 180 Case Study: AI-Driven Innovations Transforming Sustainable Finance

Lecture 181 Section Summary

Section 17: Course Summary

Lecture 182 Conclusion

Aspiring financial analysts looking to integrate AI into financial modeling.,Finance professionals aiming to enhance decision-making with AI insights.,Students interested in foundational knowledge of AI-driven financial tools.,Data analysts seeking skills in AI-enhanced forecasting and risk assessment.,Business strategists aiming to incorporate generative AI in financial planning.,Professionals curious about AI's role in asset valuation and portfolio management.,Those interested in ethical and regulatory aspects of AI in financial contexts.