Introduction
  • Introduction about Tutor
Introduction to CRISP - ML(Q)
  • Agenda & stages of Analytics
  • What is Diagnostic Analytics ?
  • What is Prescriptive Analytics?
  • What is Predictive Analytics ?
  • What is CRISP-ML(Q) ?
Business Understanding Phase
  • Business Understanding - Define Scope Of Application
  • Business Understanding - Define Success Criteria
  • Business Understanding - Use Cases
Data Understanding Phase - Data Types
  • Agenda Data Understanding
  • Introduction to Data Understanding ?
  • Data Types - Continuous Vs Discrete
  • Categorical Data Vs Count Data
  • Pratical Data Understanding using Realtime Examples
  • Scale of Measurement
  • Quantitave Vs Qualitative
  • Structure Vs Unstructured Data
Data Understanding Phase - Data Collection
  • What is Data Collection?
  • Understanding Primary Data Sources
  • Understanding Secondary Data Sources
  • Understanding Data Collection Using Survey
  • Understanding Data Collection Using DoE
  • Understanding possible errors in Data Collection Stage
  • Understanding Bias and Fairness
Understanding Basic Statistics
  • Introduction to CRISP-ML(Q) Data preparation & Agenda
  • What is Probability?
  • What is Random Variable?
  • Understanding Probability and its Application,Probabiity Discussion
Data Preparation Phase - Exploratory Data Analysis (EDA)
  • Understanding Box Plot(Diff B-w Percentile and Quantile and Quartile)
Unsupervised Learning - Data Mining - Clustering / Segmentation using Python
  • Hierarchical Clustering Process
Hypothesis testing
  • About Hypothesis Testing
  • Use Case for Hypothesis Testing
  • T-Sample test
  • ANOVA Test
  • Confidence Interval