Machine Learning using R and Python
Machine Learning using R Programming and Python Programming
Course Description
This course has been prepared for professionals aspiring to learn the basics of R and Python and develop applications involving machine learning techniques such as recommendation, classification, regression and clustering.
Through this course, you will learn to solve data-driven problems and implement your solutions using the powerful yet simple programming language like R and Python and its packages.
After completing this course, you will gain a broad picture of the machine learning environment and the best practices for machine learning techniques.
Who this course is for:
- All graduates or pursuing students
Goals
What will you learn in this course:
- This course has been prepared for professionals aspiring to learn the basics of R and Python to develop applications involving machine learning techniques such as recommendation, classification, and clustering. Through this course, you will learn to solve
Prerequisites
What are the prerequisites for this course?
- Before you start proceeding with this course, we assume that you have a prior exposure to R packages and Python, Numpy, pandas, scipy, matplotlib, Windows and any of the Linux operating system flavors. If you are new to any of these concepts, here you can

Curriculum
Check out the detailed breakdown of what’s inside the course
Machine Learning using R and Python
83 Lectures
-
Introduction to Machine Learning 26:30 26:30
-
Introduction to R Programming 42:57 42:57
-
R Installation & Setting R Environment 50:16 50:16
-
Variables, Operators & Data types 53:10 53:10
-
Structures 47:08 47:08
-
Vectors 01:04:04 01:04:04
-
Vector Manipulation & Sub-Setting 01:06:03 01:06:03
-
Constants 41:38 41:38
-
RStudio Installation & Lists Part 1 01:02:20 01:02:20
-
Lists Part 2 47:44 47:44
-
List Manipulation, Sub-Setting & Merging 45:01 45:01
-
List to Vector & Matrix Part 1 49:52 49:52
-
Matrix Part 2 44:02 44:02
-
Matrix Accessing 48:26 48:26
-
Matrix Manipulation, rep fn & Data Frame 56:08 56:08
-
Data Frame Accessing 54:01 54:01
-
Column Bind & Row Bind 50:32 50:32
-
Merging Data Frames Part 1 50:04 50:04
-
Merging Data Frames Part 2 54:26 54:26
-
Melting & Casting 52:55 52:55
-
Arrays 43:50 43:50
-
Factors 50:53 50:53
-
Functions & Control Flow Statements 40:27 40:27
-
Strings & String Manipulation with Base Package 53:22 53:22
-
String Manipulation with Stringi Package Part 1 58:33 58:33
-
String Manipulation with String Package Part 2 & Date and Time Part 1 48:13 48:13
-
Date and Time Part 2 53:19 53:19
-
Data Extraction from CSV File 42:02 42:02
-
Data Extraction from EXCEL File 50:40 50:40
-
Data Extraction from CLIPBOARD, URL, XML & JSON Files 50:04 50:04
-
Introduction to DBMS 50:22 50:22
-
Structured Query Language 41:35 41:35
-
Data Definition Language Commands 01:02:24 01:02:24
-
Data Manipulation Language Commands 47:29 47:29
-
Sub Queries & Constraints 16:07 16:07
-
Aggregate Functions, Clauses & Views 07:21 07:21
-
Data Extraction from Databases Part 1 52:31 52:31
-
Data Extraction from Databases Part 2 & DPlyr Package Part 1 52:39 52:39
-
DPlyr Package Part 2 51:36 51:36
-
DPlyr Functions on Air Quality Data Set 57:01 57:01
-
Plyr Package for Data Analysis 46:51 46:51
-
Tidyr Package with Functions 50:48 50:48
-
Factor Analysis 57:11 57:11
-
Prob.Table & CrossTable 50:22 50:22
-
Statistical Observations Part 1 51:48 51:48
-
Statistical Observations Part 2 40:35 40:35
-
Statistical Analysis on Credit Data set 01:00:29 01:00:29
-
Data Visualization, Pie Charts, 3D Pie Charts & Bar Charts 59:20 59:20
-
Box Plots 54:38 54:38
-
Histograms & Line Graphs 45:26 45:26
-
Scatter Plots & Scatter plot Matrices 01:03:47 01:03:47
-
Low Level Plotting 56:01 56:01
-
Bar Plot & Density Plot 46:31 46:31
-
Combining Plots 35:37 35:37
-
Analysis with ScatterPlot, BoxPlot, Histograms, Pie Charts & Basic Plot 51:07 51:07
-
MatPlot, ECDF & BoxPlot with IRIS Data set 01:02:55 01:02:55
-
Additional Box Plot Style Parameters 01:01:41 01:01:41
-
Set.Seed Function & Preparing Data for Plotting 01:09:42 01:09:42
-
QPlot, ViolinPlot, Statistical Methods & Correlation Analysis 59:26 59:26
-
ChiSquared Test, T Test, ANOVA 54:42 54:42
-
Data Exploration and Visualization 51:00 51:00
-
Machine Learning, Types of ML with Algorithms 01:04:53 01:04:53
-
How Machine Solve Real Time Problems 43:33 43:33
-
K-Nearest Neighbor(KNN) Classification 01:07:45 01:07:45
-
KNN Classification with Cancer Data set Part 1 01:03:15 01:03:15
-
KNN Classification with Cancer Data set Part 2 43:12 43:12
-
Navie Bayes Classification 43:53 43:53
-
Navie Bayes Classification with SMS Spam Data set & Text Mining 58:43 58:43
-
WordCloud & Document Term Matrix 56:39 56:39
-
Train & Evaluate a Model using Navie Bayes 01:11:40 01:11:40
-
MarkDown using Knitr Package 01:02:15 01:02:15
-
Decision Trees 57:16 57:16
-
Decision Trees with Credit Data set Part 1 47:03 47:03
-
Decision Trees with Credit Data set Part 2 45:11 45:11
-
Support Vector Machine, Neural Networks & Random Forest 46:50 46:50
-
Regression & Linear Regression 44:04 44:04
-
Multiple Regression 48:24 48:24
-
Generalized Linear Regression, Non Linear Regression & Logistic Regression 35:37 35:37
-
Clustering 29:04 29:04
-
K-Means Clustering with SNS Data Analysis 01:06:18 01:06:18
-
Association Rules (Market Basket Analysis) 39:33 39:33
-
Market Basket Analysis using Association Rules with Groceries Dataset 56:19 56:19
-
Python Libraries for Data Science 22:32 22:32
Instructor Details

DATAhill Solutions Srinivas Reddy
Data ScientistMr. Srinivas Reddy is Founder & MD of DATAhill Solutions
He is Research Scholar (Ph.D) on Artificial Intelligence & Machine Learning
He Received Masters of Technology in Computer Science & Engineering from JNTU, MICROSOFT Certified Professional, IBM Certified Professional & Certified from IIT Kanpur & IIT Ropar.
Having 10+ Years of Experience in Software & Training.
His Experience includes Managing, Data Processing, Data Cleaning, Predicting and Analyzing of Large volume of Business Data.
Expertise in Data Science, Data Analytics, Machine Learning, Deep Learning, Artificial Intelligence, Python, R, Weka, Data Management & BI Technologies.
Having Patents and Publications in Various Fields such as Artificial Intelligence, Machine Learning and Data Science Technologies.
Professionally, He is Data Science Management Consultant with over 7+ years of Experience in Finance, Retail, Transport and other Industries.
Course Certificate
User your certification to make a career change or to advance in your current career. Salaries are among the highest in the world.

Our students work
with the Best


































Feedbacks
Related Video Courses
View MoreAnnual Membership
Become a valued member of Tutorials Point and enjoy unlimited access to our vast library of top-rated Video Courses
Subscribe now
Online Certifications
Master prominent technologies at full length and become a valued certified professional.
Explore Now