

Machine Learning Using R Training in Velachery, Chennai
If you want to make a career in predictive analysis or work with big data then you have to understand machine learning and R is the most popular platform for applied machine learning. This open source programming language is among the most widely used languages for statistics and data mining, gives quick results and is supported by a worldwide community of users and developers.
Besant Technologies comprehensive Machine Learning using R Training in Velachery, Chennai course is a must for those who see themselves as future analysts. The aim of this coaching is to familiarise you with statistical models for supervised and unsupervised learning using R programming language and how the R language environment supports predictive modelling with machine learning. This Machine Learning using R Training in Velachery, Chennai dives into the basics of R and Machine Learning. Enrol now for a complete hands-on familiarity with Machine Learning in R and get the Machine learning certification using R that increases your chances of getting hired.
Machine Learning Using R Training in Velachery, Chennai course at Besant Technologies will provide a broad introduction to machine learning, data-mining, and statistical pattern recognition. Our team of experienced faculties will teach you the end-to-end process of investigating data by implementing machine learning.
Machine Learning Using R Training Syllabus in Chennai
Total Duration : 42:00:00 hrs
Module 1- Introduction to Data Analytics
Duration : 04:00:00 hrs
Objectives:
- This module introduces you to some of the important keywords in R like Business Intelligence, Business Analytics, Data and Information.
- You can also learn how R can play an important role in solving complex analytical problems.
- This module tells you what is R and how it is used by the giants like Google, Facebook, etc.
- Also, you will learn use of 'R' in the industry, this module also helps you compare R with other software in analytics, install R and its packages.
- Business Analytics, Data, Information
- Understanding Business Analytics and R
- Compare R with other software in analytics
- Install R
- Perform basic operations in R using command line
- Learn the use of IDE R Studio
- Use the ‘R help’ feature in R
Module 2- Introduction to R programming
Duration : 03:00:00 hrs
Objectives:
- This module starts from the basics of R programming like datatypes and functions.
- In this module, we present a scenario and let you think about the options to resolve it, such as which datatype should one to store the variable or which R function that can help you in this scenario.
- You will also learn how to apply the 'join' function in SQL.
- Variables in R
- Scalars
- Vectors
- Matrices
- List
- Data frames
- Using c, Cbind, Rbind, attach and detach functions in R
- Factors
Module 3- Data Manipulation in R
Duration : 04:00:00 hrs
Objectives:
- In this module, we start with a sample of a dirty data set and perform Data Cleaning on it, resulting in a data set, which is ready for any analysis.
- Thus using and exploring the popular functions required to clean data in R.
- Data sorting
- Find and remove duplicates record
- Cleaning data
- Recoding data
- Merging data
- Slicing of Data
- Merging Data
- Apply functions
Module 4- Data Import techniques in R
Duration : 04:00:00 hrs
Objectives:
- This module tells you about the versatility and robustness of R which can take-up data in a variety of formats, be it from a csv file to the data scraped from a website.
- This module teaches you various data importing techniques in R.
- Reading Data
- Writing Data
- Basic SQL queries in R
- Web Scraping
Module 5- Exploratory data Analysis
Duration : 05:00:00 hrs
Objectives:
- In this module, you will learn that exploratory data analysis is an important step in the analysis.
- EDA is for seeing what the data can tell us beyond the formal modeling or hypothesis. You will also learn about the various tasks involved in a typical EDA process.
- Box plot
- Histogram
- Pareto charts
- Pie graph
- Line chart
- Scatterplot
- Developing Graphs
Module 6- Basics of Statistics & Linear & Logistic Regression
Duration : 05:00:00 hrs
Objectives:
- This module touches the base of Descriptive and Inferential Statistics and Probabilities & 'Regression Techniques’.
- Linear and logistic regression is explained from the basics with the examples and it is implemented in R using two case studies dedicated to each type of Regression discussed.
- Basics of Statistics
- Inferencial statistics
- Probability
- Hypothesis
- Standard deviation
- Outliers
- Correlation
- Linear & Logistic Regression
Module 7- Data Mining: Clustering techniques, Regression & Classification
Duration : 04:00:00 hrs
Objectives:
- Linear and logistic regression is explained from the basics with the examples and it is implemented in R using two case studies dedicated to each type of Regression discussed.
- The two Machine Learning types are Supervised Learning and Unsupervised Learning and the difference between the two types.
- We will also discuss the process involved in 'K-means Clustering', the various statistical measures you need to know to implement it in this module.
- Introduction to Data Mining
- Understanding Machine Learning
- Supervised and Unsupervised Machine Learning Algorithms
- K- means clustering
Module 8- Anova & Sentiment Analysis
Duration : 02:00:00 hrs
Objectives:
- This module tells you about the Analysis of Variance (Anova) Technique.
- The algorithm and various aspects of Anova have been discussed in this module
- Additionally, this module also deals with Sentiment Analysis and how we can fetch, extract and mine live data from Twitter to find out the sentiment of the tweets.
- Anova
- Sentiment Analysis
Module 9- Data Mining: Decision Trees and Random Forest
Duration : 03:00:00 hrs
Objectives:
- This module covers the concepts of Decision Trees and Random Forest.
- The algorithm of Random Forests is discussed in a step-wise approach and explained with real-life examples.
- Decision Tree
- Concepts of Random Forest
- Working of Random Forest
- Features of Random Forest
Module 10- Project work
Duration : 10:00:00 hrs
- 2 Real-time projects
Machine Learning Using R trainer Profile & Placement
Our Machine Learning Using R Trainers
- More than 10 Years of experience in Machine Learning Using R Technologies
- Has worked on multiple realtime Machine Learning Using R projects
- Working in a top MNC company in Chennai
- Trained 2000+ Students so far
- Strong Theoretical & Practical Knowledge
- certified Professionals
Machine Learning Using R Placement Training in Velachery, Chennai
- More than 2000+ students Trained
- 97% percent Placement Record
- 980+ Interviews Organized
Machine Learning Using R training batch size in Chennai
Regular Batch ( Morning, Day time & Evening)
- Seats Available : 8 (maximum)
Weekend Training Batch( Saturday, Sunday & Holidays)
- Seats Available : 8 (maximum)
Fast Track batch
- Seats Available : 5 (maximum)