Learn about the customer life cycle and how predictive analytics can improve the customer journey. Explore using predictive analytics to identify, attract, and retain customers.
Overview
Syllabus
Introduction
- The Power of Predictive Analytics
- Expectations and course organization
- How to use the exercise files
- The importance of customer analytics
- The customer lifecycle
- Apply analytics to the customer lifecycle
- Sources of customer data
- The customer analytics process
- Use case: Online computer store
- The customer acquisition process
- Find high propensity prospects
- Recommend best channel for contact
- Offer chat based on visitor propensity
- Use case: Determine customer propensity
- Upselling and cross-selling
- Find items bought together
- Create customer group preferences
- User-item affinity and recommendations
- Use case: Recommend items
- Generate customer loyalty
- Create customer value classes
- Discover response patterns
- Predict customer lifetime value
- Use case: Predict CLV
- Improve customer satisfaction
- Predict intent of contact
- Find unsatisfied customers
- Group problem types
- Use case: Group problem types
- Prevent customer attrition
- Predict customers who might leave
- Find incentives
- Discover customer attrition patterns
- Use case: Customer patterns
- Devise customer analytics processes
- Choose the right data
- Design data processing pipelines
- Implement continuous improvement
- Next steps and additional resources
Taught by
Kumaran Ponnambalam