AI-Driven Predictive Marketing
Course Objectives
- Understand the role of AI and predictive analytics in modern marketing.
- Apply machine learning techniques to forecast consumer behavior.
- Design AI-driven marketing strategies for personalization and engagement.
- Analyze ethical and privacy issues related to AI in marketing.
- Utilize AI tools for data analysis and decision-making.

Course Outcomes (CO)
CO No. | Course Outcome | PO Mapping |
---|---|---|
CO1 | Explain the fundamentals of AI in marketing and its business applications. | PO1, PO2 |
CO2 | Apply predictive analytics to model consumer behavior. | PO2, PO4 |
CO3 | Design and evaluate AI-driven customer engagement strategies. | PO1, PO5 |
CO4 | Assess ethical implications and regulatory considerations of AI use in marketing. | PO4, PO6 |
CO5 | Use AI-based analytical tools to support marketing decision-making. | PO2, PO7 |
AI-Driven Predictive Marketing Syllabus T30
Session No. | Topics |
---|---|
1 | Introduction to AI in Marketing |
2 | Fundamentals of Predictive Analytics in Marketing |
3 | Customer Data Collection and Segmentation Using AI |
4 | Machine Learning Models for Consumer Behavior Prediction |
5 | AI Applications in Market Research and Consumer Insights |
6 | Personalized Marketing Using AI-Driven Recommendations |
7 | Customer Lifetime Value (CLV) Prediction Models |
8 | Sentiment Analysis and Social Listening Tools |
9 | Predictive Lead Scoring for Sales Optimization |
10 | AI in Dynamic Pricing and Demand Forecasting |
11 | Automating Customer Journey Mapping with AI |
12 | Using AI for Customer Churn Prediction |
13 | Real-Time Data Analytics in Marketing Campaigns |
14 | AI-Driven Content Creation and Optimization |
15 | Ethical Considerations and Data Privacy in AI Marketing |
16 | Implementing AI Chatbots for Customer Engagement |
17 | AI-Powered Marketing Dashboards and KPI Monitoring |
18 | Case Studies of AI in Indian Marketing Strategies |
19 | Future of AI in Consumer Decision-Making |
20 | Integrating AI with Traditional Marketing Approaches |
References:
- “AI for Marketing and Product Innovation” – A.K. Pradeep, Andrew Appel, & Stan Sthanunathan
- “Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die” – Eric Siegel
- “Marketing Analytics: Strategic Models and Metrics” – Stephan Sorger