Certification Program in Business Analytics with Gen & Agentic AI from Grad Certify

Learn from global industry-leading experts

Master AI for business Analytics success

Placement support for top roles

Course Series


1

6-Month Comprehensive Program Business Analytics with Gen & Agentic AI from Grad Certify

6-Month Comprehensive Program on AI in Product Management – Master AI-driven strategies for smarter decision-making and innovation.

6 Month      Program Fee - $3,499.00

Skills you'll gain

& More

Programme Faculty

Kesha Williams

Kesha Williams

Trainer

Numan Mehraj

Numan Mehraj

Trainer

Raven Ballard

Raven Ballard

Trainer

Grad Certify Certificate

Programme Certificate

Upon successful completion of the programme, participants will receive a prestigious certificate from Grad Certify Executive Education, validating their product management expertise.

The Grad Certify certificate is globally recognized and can significantly enhance your professional credentials and career prospects.

Course Outline

Module 1a: Foundations of Business Analytics & Data Science?
Business problem framing, KPIs, Excel modelling, basic statistics,MySQL, distributions, hypothesis testing, A/B testing.
Module 1b: Data Visualization & Case Studies?
Visualization Best Practices & Perception, Choosing the Right Chart, Introduction to Tableau and Power BI, Building Interactive Dashboards, Data Storytelling Frameworks, Advanced Visualization Techniques.
Module 2: Data Warehouse for AI
Data is the foundation for Artificial Intelligence models. Generative AI models rely on large amounts of high-quality data to learn patterns, relationships, and structures. Understanding various data stores helps students appreciate how data is stored, managed, and retrieved. This data is usually stored in a variety of data stores viz. relational databases, NoSQL databases, data lakes. Knowledge of these data stores will enable students process various data formats
Module 3: Python Crash Course for GenAI
Learn basic Python required for GenAI- Data Types, Flow Structures, Data Structures, Functions, Libraries, Python in Data Science.
Module 4: Machine Learning Basics
Supervised and unsupervised learning, time series analysis, churn prediction, forecasting. Examples include sentiment analysis for customer reviews.
Module 05 – Neural Networks & Deep Learning
Understand the transition from traditional machine learning to neural networks and deep learning and their common applications.
Module 6: Introduction to LLM & Prompt Engineering
You can use LLM for content creation, computer programming, problem solving, dataset generation, and learning. In this model, you will learn how to effectively leverage LLM to improve your productivity. You will learning basic prompting strategies such as setting the context, role prompting, and tuning model settings. You will also learn advanced prompting methods such as chain-of-thought (COT) prompting.
Module 7: Building your own AI agents
Supervised and unsupervised learning, time series analysis.

Ready to Transform Education with AI?

Join thousands of educational institutions already using Grad Certify's AI solutions.