About Course
Course overview:
- Introduction to Data Analytics in Sales and Targeted Marketing
- Descriptive Analytics
- Normal Distributions
- Confidence Intervals for Decision Making Process
- Inferential Statistics through Hypothesis Tests
- Data Analytics and Reporting with Power BI
- General workflow in Microsoft Power BI
- Merging and Appending Datasets
- Importing other Visualization Tools
- Types of Reporting and Building Consistent Dashboards (Sales, KPI, Marketing, Targeted Channels)
- Managing Relationship
- SQL Joins Proceedings
- Basic DAX Formulas
- Sharing Reports on Web and Power BI Service
- Converting Data to Money with Analyzing Modeling
- Introduction to Modeling
- Automated Modeling for a Flag Target
- Automated Modeling for a Continuous Target
- Automated Data Preparation (ADP)
- Preparing Data for Analysis (Data Audit)
- Modeling Customer Response (Decision List)
- Classifying Customers (Logistic Regression)
- Churn (Binomial Logistic Regression)
- Retail Sales Promotion (Neural Net/C&RT)
- Analyze Ship Damage Rates (Linear Models)
- Forecasting Catalog Sales (Time Series)
- Making Offers to Customers (Self-Learning)
- Predicting Loan Defaulters (Bayesian Network)
- Market Basket Analysis (Rule Induction/C5.0)
- Assessing New Vehicle Offerings (KNN)
- Car Insurance Claims (Generalized Linear Models)
- Condition Monitoring (Neural Net/C5.0)
- Journey from Data to Value with R and SQL
- Introduction to R
- Getting Data into R
- R Visualitzation (ggplot2)
- Types of Predictive Modeling with R
- R HR Analytics and Churn Model
- R Time Series and Forecast
- Introduction to SQL and Basics of SQL Types
- Aggregate Functions
- Joins and Set Operations
- Understanding Select Statement
- Sorting Data Using Order By Clause
- Count, Sum, Min, Max, Avg, and Group
- Cross Joins, Inner Join, Outer Join, Self Join