By using this site, you agree to the Privacy Policy and Terms of Use.
Accept

Course Drive

Download Top Udemy,Lynda,Packtpub and other courses

  • Home
  • Udemy
  • Lynda
  • Others
    • FrontendMasters
    • MasterClass
    • Udacity
  • Request Course
  • Contact Us
Aa

Course Drive

Download Top Udemy,Lynda,Packtpub and other courses

Aa
Have an existing account? Sign In
Follow US
Course Drive > Udemy > Development > R Programming: Advanced Analytics In R For Data Science
Development

R Programming: Advanced Analytics In R For Data Science

Last updated: 2023/01/24 at 7:33 PM
ADMIN January 24, 2023
Share
4 Min Read
SHARE

R Programming: Advanced Analytics In R For Data Science Download

Take Your R & R Studio Skills To The Next Level. Data Analytics, Data Science, Statistical Analysis in Business, GGPlot2 R Programming: Advanced Analytics In R For Data Science

What you’ll learn

  • Perform Data Preparation in R
  • Identify missing records in dataframes
  • Locate missing data in your dataframes
  • Apply the Median Imputation method to replace missing records
  • Apply the Factual Analysis method to replace missing records
  • Understand how to use the which() function
  • Know how to reset the dataframe index
  • Work with the gsub() and sub() functions for replacing strings
  • Explain why NA is a third type of logical constant
  • Deal with date-times in R
  • Convert date-times into POSIXct time format
  • Create, use, append, modify, rename, access and subset Lists in R
  • Understand when to use [] and when to use [[]] or the $ sign when working with Lists
  • Create a timeseries plot in R
  • Understand how the Apply family of functions works
  • Recreate an apply statement with a for() loop
  • Use apply() when working with matrices
  • Use lapply() and sapply() when working with lists and vectors
  • Add your own functions into apply statements
  • Nest apply(), lapply() and sapply() functions within each other
  • Use the which.max() and which.min() functions

Requirements

  • Basic knowledge of R
  • Knowledge of the GGPlot2 package is recommended
  • Knowledge of dataframes
  • Knowledge of vectors and vectorized operations

Description

Ready to take your R Programming skills to the next level?

Want to truly become proficient at Data Science and Analytics with R?

This course is for you!

Professional R Video training, unique datasets designed with years of industry experience in mind, engaging exercises that are both fun and also give you a taste for Analytics of the REAL WORLD.

In this course, you will learn:

  • How to prepare data for analysis in R

  • How to perform the median imputation method in R

  • How to work with date-times in R

  • What Lists are and how to use them

  • What the Apply family of functions is

  • How to use apply(), lapply() and sapply() instead of loops

  • How to nest your own functions within apply-type functions

  • How to nest apply(), lapply() and sapply() functions within each other

  • And much, much more!

The more you learn, the better you will get. After every module, you will have a robust set of skills to take with you into your Data Science career.

We prepared real-life case studies.

In the first section, you will be working with financial data, cleaning it up, and preparing for analysis. You were asked to create charts showing revenue, expenses, and profit for various industries.

In the second section, you will be helping Coal Terminal understand what machines are underutilized by preparing various data analysis tasks.

In the third section, you are heading to the meteorology bureau. They want to understand better weather patterns and requested your assistance on that.

Who this course is for:

  • Anybody who has basic R knowledge and would like to take their skills to the next level
  • Anybody who has already completed the R Programming A-Z course
  • This course is NOT for complete beginners in R
R Programming: Advanced Analytics In R For Data Science Free Download

Direct Download   

Source: https://www.udemy.com/course/r-analytics/
ADMIN January 24, 2023
Share this Article
Facebook Twitter Whatsapp Whatsapp Reddit Telegram Email Copy Link
Previous Article Arduino Step by Step: Getting Started
Next Article SQL – Introduction to SQL with MySQL
Leave a comment Leave a comment

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

You Might Also Like

Development

Learn Perl 5 By Doing It

January 30, 2023
Development

Learn Multithreading in C++

January 30, 2023
Development

Learn Python Programming From Scratch

January 29, 2023
Development

Modern JavaScript Basics in 1 Hour for beginners

January 29, 2023
Development

JavaScript Fundamentals ES6 for beginners

January 29, 2023
Development

Django with React | An Ecommerce Website

January 27, 2023
Development

Selenium WebDriver 4, Cucumber BDD, Java & More! [NEW: 2022]

January 27, 2023
Development

Understanding HTML and CSS

January 27, 2023
Previous Next

Weekly Popular

Introduction to Financial Modeling for Beginners
Introduction to Financial Modeling for Beginners
Business
The Complete Python Masterclass: Learn Python From Scratch
Development
The Complete WordPress Aliexpress Dropship course
The Complete WordPress Aliexpress Dropship course
Business
The Complete Investment Banking Course 2023
Finance & Accounting
MERN eCommerce From Scratch
Development

Recent Posts

Learn Blockchain Technology & Cryptocurrency in Java
IT & Software
Introduction to Collections, Generics & Reflection in Java
IT & Software
Cryptography and Hashing Fundamentals in Python and Java
IT & Software
Concurrency, Multithreading and Parallel Computing in Java
IT & Software
Complete Guide to Freelancing in 2023: Zero to Mastery
Business
Follow US

Removed from reading list

Undo
Welcome Back!

Sign in to your account

Lost your password?