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Course Outline

Module 1

Introduction to Data Science and Its Applications in Marketing

  • Overview of Analytics: Types of analytics - Predictive, Prescriptive, and Inferential
  • Practical Application of Analytics in Marketing
  • Introduction to Big Data and Various Technologies

Module 2

Marketing in the Digital Era

  • Introduction to Digital Marketing
  • Overview of Online Advertising
  • Search Engine Optimization (SEO) - Case Study on Google
  • Social Media Marketing: Tips and Strategies - Examples from Facebook and Twitter

Module 3

Exploratory Data Analysis and Statistical Modeling

  • Data Presentation and Visualization - Understanding business data using Histograms, Pie Charts, Bar Charts, and Scatter Diagrams for rapid insights - Utilizing Python
  • Fundamentals of Statistical Modeling - Trends, Seasonality, Clustering, and Classifications (Basic concepts, different algorithms, and usage without deep detail) - Ready-to-use Python code
  • Market Basket Analysis (MBA) - Case Study using Association Rules, Support, Confidence, and Lift

Module 4

Marketing Analytics I

  • Introduction to the Marketing Process - Case Study
  • Leveraging Data to Enhance Marketing Strategy
  • Measuring Brand Assets - Snapple and Brand Value - Brand Positioning
  • Text Mining for Marketing - Basics of Text Mining - Case Study on Social Media Marketing

Module 5

Marketing Analytics II

  • Customer Lifetime Value (CLV) Calculation - Case Study on CLV for business decisions
  • Measuring Cause and Effect through Experiments - Case Study
  • Calculating Projected Lift
  • Data Science in Online Advertising - Click-through Rates, Conversion, and Website Analytics

Module 6

Fundamentals of Regression

  • Insights from Regression and Basic Statistics (Minimal mathematical detail)
  • Interpreting Regression Results - With a Case Study using Python
  • Understanding Log-Log Models - With a 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 Results - Python Programs with Outputs
  • Customer Targeting using Classification and Clustering - Case Study
  • Improving Business Strategy - Examples in Email Marketing and Promotions
  • The Need for Big Data Technologies in Classification and Clustering

Module 8

Time Series Analysis

  • Trends and Seasonality - Using Python-driven Case Studies and Visualizations
  • Various Time Series Techniques - AR and MA
  • Time Series Models - ARMA, ARIMA, ARIMAX (Usage and Examples with Python) - Case Study
  • Time Series Prediction for Marketing Campaigns

Module 9

Recommendation Engines

  • Personalization and Business Strategy
  • Different Types of Personalized Recommendations - Collaborative and Content-based
  • Algorithms for Recommendation Engines - User-driven, Item-driven, Hybrid, Matrix Factorization (Mention and usage of algorithms without mathematical details)
  • Recommendation Metrics for Incremental Revenue - Detailed Case Study

Module 10

Maximizing Sales through Data Science

  • Basics of Optimization Techniques and Their Uses
  • Inventory Optimization - Case Study
  • Increasing ROI using Data Science
  • Lean Analytics - Startup Accelerator

Module 11

Data Science in Pricing and Promotion I

  • Pricing - The Science of Profitable Growth
  • Demand Forecasting Techniques - Modeling and estimating the structure of price-response demand curves
  • Pricing Decisions - How to Optimize Pricing Decisions - Case Study Using Python
  • Promotion Analytics - Baseline Calculation and Trade Promotion Model
  • Using Promotions for Better Strategy - Sales Model Specification - Multiplicative Model

Module 12

Data Science in Pricing and Promotion II

  • Revenue Management - Managing perishable resources across multiple market segments
  • Product Bundling - Fast and Slow-Moving Products - Case Study with Python
  • Pricing of Perishable Goods and Services - Airline and Hotel Pricing - Mention of Stochastic Models
  • Promotion Metrics - Traditional and Social

Requirements

There are no specific prerequisites for attending this course.

 21 Hours

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