SD@xnallent.com, Contact@xnallent.com
Mon-Sat, 8.00 - 18.00 IST

Data Science With Lean Six Sigma Black Belt

Overview

Course Outline

Introduction

Python for Data Science
Introduction to Python

Python installation & configuration

Python Features

Basic Python Syntax with implementation

Statements, Indentation, and Comments

Data Analytics using R 
Introduction to R

RStudio installation & configuration

Basic Python Syntax

Basic visualization and data analysis

Statistics and Mathematics for Machine Learning
Statistical Inference

Descriptive Statistics

Introduction to Probability, Conditional probability, Bayes theorem

Probability Distribution

Introduction to inferential statistics

Normality, Normal Distribution

Measures of Central Tendencies

Hypothesis Testing

Data visualization using python

Machine Learning in Python
Machine Learning introduction

Machine Learning applications & use-cases

Machine Learning Flow

Machine Learning categories

Exploratory data analysis

Data cleaning and Imputation Techniques

Linear regression

Gradient descent

Model evaluation

Supervised Learning 
What is Supervised Learning?

Logistic Regression in Python

Classification & implementations

Decision Tree

Different algorithms for Decision Tree Induction

How to create a Perfect Decision Tree

Confusion Matrix

Random Forest

Tree based Ensemble

Hyper-parameter tuning

Evaluating model output

Naive Bayes Classifier

Support Vector Machine

Unsupervised Learning
What is Unsupervised Learning

Clustering

K-means Clustering

Hierarchical Clustering

Data Mining
Association Rules
Recommendation Engines
   Mature Learning Process
   Six Sigma Overview
   Project Definition
   Project Scoping Tools
   Minitab Intro
   Basic Statistics
   Rolled Throughput Yield
   Process Mapping
   Intro to Lean & Value Stream Mapping
   Process C&E
   Capability Analysis
   Process FMEA
   Graphical Data Analysis
   Correlation and Regression
   Central Limit Theorem
   Confidence Intervals
   Hypothesis Testing
   Sample Size Selection
   One-way ANOVA
   Project Planning & Deliverable
   ntroduction to DOE
   Full Factorial
   2K Factorials
   DOE Sample Size Selection
   Fractional Factorials
   Catapult Exercise
   Lean Tools for Improvement
   DOE Review
   Multiple Regression
   Logistic Regression
   Survey Design & Analysis
   Intro to Control Methods
   Intro to SPC
   Process Control Plans
   Project Planning & Deliverables

For more Details Please Contact us