In today’s data-driven world, Artificial Intelligence (AI) and Data Analysis are revolutionizing how organizations operate, innovate, and make decisions. While data analysis helps uncover insights from massive datasets, AI enhances these capabilities by identifying hidden patterns, predicting outcomes, and automating processes. The integration of both disciplines empowers businesses to evolve from descriptive analytics into predictive and prescriptive intelligence.
This 5-day professional training course, developed by Global Horizon Training Center, provides a practical foundation in AI-integrated data analysis. Participants will explore essential data workflows, apply machine learning models, and integrate AI APIs and tools to extract business value from data. The program blends conceptual knowledge with hands-on experience using tools like Python, Power BI, and AI services such as Azure or OpenAI APIs.
Real-world exercises and projects will guide participants through designing intelligent dashboards, automating insights generation, and building scalable models that support advanced business decisions.
This program is designed for:
Data analysts and BI professionals integrating AI into analytical processes
Software and IT professionals transitioning to data science roles
Business managers aiming to enhance decisions with predictive analytics
Executives and team leads interested in AI-driven innovation
Professionals with a foundational knowledge of data analysis seeking to expand into AI applications
By the end of this training, participants will be able to:
Understand the principles of AI and its synergy with data analysis
Preprocess and prepare data for AI modeling and decision-making
Apply machine learning algorithms using Python and Scikit-learn
Automate data pipelines and integrate AI tools/APIs into analytics platforms
Build dashboards that provide real-time predictions and intelligent insights
Communicate technical results and strategic findings effectively through reports
Topics:
Introduction to AI, ML, and data analytics
AI vs traditional analytics: Key distinctions
Understanding structured and unstructured data
Overview of tools: Python, Power BI, cloud AI platforms
Introduction to AI data pipelines
Hands-on Activity:
Set up Python and Power BI environment
Basic data exploration and visualization
Topics:
Data preprocessing and feature selection
Handling missing data and anomalies
Encoding categorical variables
Splitting data into training and test sets
Hands-on Activity:
Clean and transform sample datasets using pandas and NumPy
Create datasets ready for modeling
Topics:
Supervised vs. unsupervised learning
Common algorithms: Logistic regression, decision trees, clustering
Model training and validation
Evaluation metrics: Accuracy, precision, recall, F1-score
Hands-on Activity:
Build ML models with scikit-learn
Predict business outcomes based on historical data
Topics:
Scripting automated analytics workflows
Using AI APIs (Azure Cognitive Services, OpenAI, etc.)
Embedding models into dashboards
Building predictive dashboards in Power BI
Hands-on Activity:
Automate a data pipeline with Python
Integrate AI into a live dashboard
Topics:
Visual storytelling with AI insights
Communicating findings to non-technical stakeholders
Final group project: Solving a business case using AI analytics
Bias and ethics in AI
Hands-on Activity:
Present a group project integrating AI and analytics
Create a final report and stakeholder presentation