
•	Introduction to Artificial Intelligence, Machine Learning, and Deep Learning
•	Core Concepts of Business Intelligence: Data Warehousing, ETL, Reporting, Dashboards
•	The Synergy of AI and BI: Enhancing Data Analysis and Insights
•	Introduction to AI tools and platforms for BI
•	Data Preprocessing and Feature Engineering with AI
•	Data Mining Techniques: Clustering, Association Rule Mining
•	Predictive Modeling: Regression, Classification, Time Series Analysis
•	Hands-on Lab: Applying AI algorithms for data analysis using Python/R and relevant libraries
•	Developing AI-powered dashboards and reports
•	Automating data cleaning and transformation with AI
•	Natural Language Processing (NLP) for BI: Text Analytics, Sentiment Analysis
•	Hands-on Lab: Creating an intelligent dashboard with automated insights using a BI platform (e.g., Tableau, Power BI)
•	Deep Learning for BI: Neural Networks and their applications
•	AI for Forecasting and Predictive Analytics
•	Recommendation Systems for Business Intelligence
•	Case Study: Applying AI for business decisions in a specific industry (e.g., finance, healthcare)
•	Ethical considerations in AI-driven BI: Bias, fairness, transparency
•	Best practices for developing and deploying AI-powered BI solutions
•	Future trends in AI and BI: Explainable AI (XAI), Generative AI
•	Hands-on Project: Developing a comprehensive AI-driven BI solution for a real-world problem
