Excel and AI Tools for Financial Data Analysis

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Excel and AI Tools for Financial Data Analysis
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G2605

Cairo (Egypt)

14 Dec 2025 -18 Dec 2025

3850

Overview

Introduction:

Excel and AI tools form a combined framework for advanced financial data analysis, enabling institutions to manage, process, and interpret complex financial datasets. Excel provides structured functions, models, and visualization methods, while AI introduces predictive algorithms, automation capabilities, and data driven insights. Together, they support accuracy in financial reporting, enhance forecasting reliability, and optimize decision making processes. This training program presents structured models, analytical methods, and digital frameworks that integrate Excel’s functionalities with AI driven techniques to establish a modern foundation for financial data analysis.

Program Objectives:

By the end of this program, participants will be able to:

  • Analyze the structural role of Excel in organizing and manipulating financial datasets.

  • Evaluate AI driven methods for predictive financial modeling and risk assessment.

  • Classify frameworks for converting, cleaning, and preparing financial data.

  • Use integrated techniques for forecasting, sensitivity analysis, and scenario planning.

  • Assess advanced visualization and reporting systems to support financial decision making.

Targeted Audience:

  • Finance professionals in corporate or institutional settings.

  • Data analysts focusing on financial systems.

  • Business analysts engaged in quantitative assessments.

  • Financial reporting and audit specialists.

  • Employees in finance departments seeking advanced digital analysis frameworks.

Program Outline:

Unit 1:

Excel Foundations for Financial Analysis:

  • Core Excel functions, formulas, and modeling structures.

  • How to use pivot tables, sorting, and filtering in financial datasets.

  • Charting methods for financial trend identification.

  • Frameworks for error checking and data validation.

  • Structural role of Excel in financial data governance.

Unit 2:

AI Applications in Financial Analysis:

  • AI frameworks and their institutional role in finance.

  • Machine learning concepts relevant to financial modeling.

  • Frameworks of regression, classification, and clustering in financial analysis contexts.

  • Preprocessing and normalization techniques for financial data.

  • Role of feature engineering in enhancing AI driven predictions.

Unit 3:

Data Conversion and Preparation Structures:

  • Methods of managing large scale financial datasets.

  • Data cleaning frameworks for accuracy and reliability.

  • Excel and AI techniques for transformation and structuring.

  • Systems for converting raw inputs into analyzable formats.

  • Institutional challenges in ensuring data quality and integrity.

Unit 4:

Financial Modeling and Analytical Techniques:

  • Ratio, trend, and variance analysis frameworks.

  • How to integrate financial theory with quantitative data structures.

  • Forecasting structures and scenario modeling using Excel and AI.

  • Sensitivity analysis and stress testing structures.

  • Interpretation process of model outcomes for strategic decisions.

Unit 5:

Advanced Visualization and Reporting Systems:

  • Dashboards and interactive reporting frameworks.

  • Data visualization methods tailored for financial datasets.

  • Key steps for communicating insights with clarity and institutional alignment.

  • Frameworks for integrating Excel outputs with AI driven visualization tools.

  • Structures for presenting results to executive and regulatory stakeholders.