Course Outline
Module 1
Introduction to Data Science & Applications in Marketing
- Analytics Overview: Type of analytics- Predictive, Prescriptive, Inferential
 - Analytics Practice in Marketing
 - Use of Big Data and Different Technologies - Introduction
 
Module 2
Marketing in a Digital World
- Introduction to Digital Marketing
 - Online Advertising - Introduction
 - Search Engine Optimization (SEO) – Google Case Study
 - Social Media Marketing: Tips and Secret – Example of Facebook, Twitter
 
Module 3
Exploratory Data Analysis & Statistical Modeling
- Data Presentation and Visualization – Understanding the Business data using Histogram, Pie-chart, Bar Chart, Scatter Diagram – Fast inference – Using Python
 - Basic Statistical Modeling – Trend, Seasonality, Clustering, Classifications (Only basics, different Algorithm and usage, not any detail) – Ready code in Python
 - Market Basket Analysis (MBA) – Case Study using Association rules, Support, Confidence, Lift
 
Module 4
Marketing Analytics I
- Introduction to Marketing Process – Case Study
 - Utilizing Data to Improve Marketing Strategy
 - Measuring Brand Assets, Snapple and Brand Value – Brand Positioning
 - Text Mining for Marketing – Basics of Text mining – Case Study for Social Media Marketing
 
Module 5
Marketing Analytics II
- Customer Lifetime Value (CLV) with Calculation – Case Study of CLV for business decisions
 - Measuring Case and Effect through Experiments – Case Study
 - Calculating Projected Lift
 - Data Science in Online Advertising – Click-rate Conversion, Website Analytics
 
Module 6
Regression Basics
- What Regression Reveals and basic Statistics (not much details of Mathematics)
 - Interpreting Regression Results – With Case Study using Python
 - Understanding Log-Log Models – With Case study using Python
 - Marketing Mix Models – Case study using Python
 
Module 7
Classification and Clustering
- Basics of Classification and Clustering – Usage; Mention of Algorithms
 - Interpreting the Results – Python Programs with Outputs
 - Customer Targeting using Classification and Clustering – Case Study
 - Business Strategy Improvement – Example of Email Marketing, Promotions
 - Need of Big Data Technologies in Classification and Clustering
 
Module 8
Time Series Analysis
- Trend and Seasonality – Using Python driven Case Study - Visualizations
 - Different Time Series Techniques – AR and MA
 - Time Series Models – ARMA, ARIMA, ARIMAX (Usage and Examples with Python) – Case Study
 - Time Series Prediction for Marketing Campaign
 
Module 9
Recommendation Engine
- Personalization and Business Strategy
 - Different Types of Personalized Recommendations – Collaborative, Content based
 - Different Algorithms for Recommendation Engine – User driven, Item Driven, Hybrid, Matrix Factorization (Only mention and usage of the algorithms without Mathematical details)
 - Recommendation Metrics for Incremental Revenue – Detailed Case Study
 
Module 10
Maximizing Sales using Data Science
- Basics of Optimization Technique and its Uses
 - Inventory Optimization – Case Study
 - Increasing ROI using Data Science
 - Lean Analytics – Startup Accelerator
 
Module 11
Data Science in Pricing & Promotion I
- Pricing – The Science of Profitable Growth
 - Demand Forecasting Techniques - Model and estimate the structure of price-response demand curves
 - Pricing Decision – How to Optimize Pricing Decision – Case Study Using Python
 - Promotion Analytics – Baseline Calculation and Trade Promotion Model
 - Using Promotion for Better Strategy - Sales Model Specification – Multiplicative Model
 
Module 12
Data Science in Pricing and Promotion II
- Revenue Management - How to manage perishable resources with multiple market segments
 - Product Bundling – Fast and Slow Moving Products – Case Study with Python
 - Pricing of Perishable Goods and Services - Airline & Hotel Pricing – Mention of Stochastic Models
 - Promotion Metrics – Traditional and Social
 
Requirements
There are no specific requirements needed to attend this course.
Testimonials (5)
Understanding big data beter
Shaune Dennis - Vodacom
Course - Big Data Business Intelligence for Telecom and Communication Service Providers
Trainer was accommodative. And actually quite encouraging for me to take up the course.
Grace Goh - DBS Bank Ltd
Course - Python in Data Science
Subject presentation knowledge timing
Aly Saleh - FAB banak Egypt
Course - Introduction to Data Science and AI (using Python)
It is great to have the course custom made to the key areas that I have highlighted in the pre-course questionnaire. This really helps to address the questions that I have with the subject matter and to align with my learning goals.
Winnie Chan - Statistics Canada
Course - Jupyter for Data Science Teams
It is showing many methods with pre prepared scripts- very nicely prepared materials & easy to traceback