AI in Financial Analysis with Business Analytics and Report Generating

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AI in Financial Analysis with Business Analytics and Report Generating
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G3475

Paris (France)

15 Dec 2025 -17 Dec 2025

5150

Overview

Introduction:

AI in financial analysis, business analytics, and report generating refers to the structured use of artificial intelligence models to enhance the accuracy, speed, and strategic value of financial and business insights. This integration transforms how organizations interpret data, forecast trends, and communicate performance, enabling real time decision making across institutional levels. By embedding AI into financial and analytical functions, institutions improve transparency, reduce human error, and optimize reporting processes. This training program presents structured frameworks, analytical models, and reporting systems that leverage AI to strengthen financial strategy and organizational governance.

Program Objectives:

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

  • Analyze institutional financial data structures and their readiness for AI integration.

  • Classify AI frameworks and their role in financial and business analytics.

  • Evaluate AI techniques used in forecasting, performance analysis, and financial modeling.

  • Explore AI enabled reporting systems and visualization methods.

  • Use strategic reporting frameworks that integrate AI into decision making cycles.

Target Audience:

  • Financial Analysts and Business Analysts.

  • Finance and Accounting Managers.

  • Data Scientists and AI Specialists.

  • Strategy and Planning Professionals.

  • Executives overseeing digital transformation in finance.

Program Outline:

Unit 1:

Institutional Financial Data Structures and AI Readiness:

  • Core financial data components and analytical requirements.

  • Data governance structures supporting AI integration.

  • Institutional data quality, accessibility, and structuring for AI use.

  • How to link financial data flows with analytical systems.

  • Strategic importance of preparing financial data for AI applications.

Unit 2:

AI Frameworks for Financial and Business Analytics:

  • Classification of AI tools relevant to financial analysis and business analytics.

  • Machine learning models for pattern detection, segmentation, and trend identification.

  • Natural language processing applications in business intelligence.

  • Institutional frameworks for embedding AI in analytical workflows.

  • Advantages of AI enhanced analytics for decision support.

Unit 3:

AI Techniques for Forecasting and Performance Analysis:

  • Predictive models for revenue, cost, and performance forecasting.

  • AI methods for anomaly detection and risk identification.

  • Scenario planning structures using machine learning outputs.

  • Key steps for integrating AI techniques into traditional financial modeling structures.

  • Institutional approaches to validating and monitoring AI analytical outputs.

Unit 4:

AI Enabled Reporting and Visualization Systems:

  • Oversight on AI applications in automated reporting and real time dashboards.

  • Structures for natural language report generation and executive summaries.

  • Data visualization models enhanced through AI insights.

  • Institutional reporting hierarchies integrating AI outputs.

  • Governance mechanisms for ensuring accuracy and consistency in AI-driven reports.

Unit 5:

Strategic Integration of AI in Reporting and Decision Cycles:

  • Institutional frameworks for embedding AI into reporting processes.

  • Strategic communication principles of AI derived insights to decision makers.

  • Linking AI analytics with corporate performance review cycles.

  • Regulatory, ethical, and governance considerations for AI in financial reporting.

  • Continuous improvement models for AI driven financial and business intelligence systems.