Booking options
£101.99
£101.99
On-Demand course
28 hours 50 minutes
All levels
In this practical, hands-on course, you'll learn how to use R for effective data analysis and visualization and how to make use of that data in a practical manner. You will learn how to install and configure software necessary for a statistical programming environment and describe generic programming language concepts as they are implemented in a high-level statistical language.
The course covers practical issues in statistical computing that include programming in R, reading data into R, accessing R packages, writing R functions, debugging, profiling R code, and organizing and commenting on R code. Blending practical work with solid theoretical training, we take you from the basics of R programming to mastery. We understand that theory is important to build a solid foundation, we also understand that theory alone isn't going to get the job done so that's why this course is packed with practical hands-on examples that you can follow step by step. Even if you already have some coding experience, or want to learn about the advanced features of the R programming language, this course is for you! R coding experience is either required or recommended in job postings for data scientists, machine learning engineers, big data engineers, IT specialists, database developers, and much more. Adding R coding language skills to your resume will help you in any one of these data specializations requiring mastery of statistical techniques. By the end of the course, you'll be a professional data scientist with R and confidently apply for jobs and will feel good knowing that you have the skills and knowledge to back it up. All resources are placed here: https://github.com/PacktPublishing/Data-Science-and-Machine-Learning-with-R-from-A-Z-Course-Updated-for-2021-
Learn data cleaning, processing, wrangling, and manipulation
Learn plotting in R (graphs, charts, plots, histograms, and more)
How to create a resume and land your first job as a data scientist
Learn machine learning and its various practical applications
Learn data and file management in R
Use R to clean, analyze, and visualize data
This course is designed for beginners who want to learn about data science and machine learning. No prior knowledge of R is required.
This course takes you through data analysis in R, data visualization in R, and machine learning with hands-on step-by-step training.
Learn data extraction and web scraping * Learn to build custom data solutions * Learn automating dynamic report generation
https://github.com/PacktPublishing/Data-Science-and-Machine-Learning-with-R-from-A-Z-Course-Updated-for-2021-
Juan E. Galvan has been an entrepreneur since grade school. His background is in the tech space from digital marketing, e-commerce, web development to programming. He believes in continuous education with the best of a university degree without all the downsides of burdensome costs and inefficient methods. He looks forward to helping people expand their skillsets.
1. Data Science and Machine Leaning Course Introduction
1. Data Science and Machine Learning Introduction Section Overview This video explains data science and machine learning. |
2. What is Data Science? This video explains the concept of data science. |
3. Machine Learning Overview This video gives an overview of machine learning. |
4. Data Science + Machine Learning Marketplace This video explains the various trends and job opportunities in data science and machine learning. |
5. Who is this Course For? This video explains the audience for this course. |
6. Data Science and Machine Learning Job Opportunities This video explains the various job opportunities in data science and machine learning. |
7. Data Science Job Roles This video explains the various job roles for data science. |
2. Getting Started with R
1. Getting Started with R This video explains the concept of R. |
2. R Basics This video explains the R basics. |
3. Working with Files This video explains working with files in R. |
4. R Studio This video explains R studio. |
5. Tidyverse Overview This video provides an overview of tidyverse. |
6. Additional Resources This video shares some additional resources that will help you get along with the course. |
3. Data Types and Structures in R
1. Data Types and Structures in R Section Overview This video explains data types and structures in R. |
2. Basic Types This video explains basic types in R. |
3. Vectors - Part One This video introduces you to vectors. |
4. Vectors - Part Two This video explains how to interact with R using vectors. |
5. Vectors: Missing Values This video explains vector missing values. |
6. Vectors: Coercion This video explains coercion. |
7. Vectors: Naming This video explains vector naming. |
8. Vectors: Miscellaneous This video explains miscellaneous yet important concepts in vectors. |
9. Working with Matrices This video explains working with matrices. |
10. Working with Lists This video explains working with lists. |
11. Introduction to Data Frames This video explains introduction to data frames. |
12. Creating Data Frames This video explains creating data frames. |
13. Data Frames: Helper Functions This video explains data frames helper functions. |
14. Data Frames: Tibbles This video explains Tibbles in data frames. |
4. Intermediate R
1. Intermedia R Section Introduction This video introduces you to R section. |
2. Relational Operators This video explains relational operators. |
3. Logical Operators This video explains logical operators, |
4. Conditional Statements This video explains conditional statements. |
5. Working with Loops This video explains working with loops. |
6. Working with Functions This video explains working with functions in R. |
7. Working with Packages This video explains working with packages. |
8. Working with Factors This video explains working with factors in R. |
9. Dates and Times This video explains dates and times in R. |
10. Functional Programming This video explains functional programming. |
11. Data Import/Export This video explains how to import and export data in R. |
12. Working with Databases This video explains working with databases. |
5. Data Manipulation in R
1. Data Manipulation Section Introduction This video introduces you to data manipulation. |
2. Tidy Data This video explains tidy data. |
3. The Pipe Operator This video explains pipe operator. |
4. {dplyr}: The Filter Verb This video explains the filter verb. |
5. {dplyr}: The Select Verb This video explains the select verb |
6. {dplyr}: The Mutate Verb This video explains the mutate verb. |
7. {dplyr}: The Arrange Verb This video explains the purpose of arrange verb. |
8. {dplyr}: The Summarize Verb This video explains the summarize verb. |
9. Data Pivoting: {tidyr} This video explains data pivoting. |
10. String Manipulation: {stringr} This video explains string manipulation. |
11. Web Scraping: {rvest} This video explains web scraping. |
12. JSON Parsing: {jsonlite} This video explains JSON parsing. |
6. Data Visualization in R
1. Data Visualization in R Section Introduction This video explains data visualization in R. |
2. Getting Started with Data Visualization in R This video explains getting started with data visualization in R. |
3. Aesthetics Mappings This vide explains aesthetics mappings. |
4. Single Variable Plots This video focuses on single variable plots. |
5. Two Variable Plots This video explains two variable plots. |
6. Facets, Layering, and Coordinate Systems This video explains facets, layering, and coordinate systems. |
7. Styling and Saving This video explains styling and saving. |
7. Creating Reports with R Markdown
1. Introduction to R Markdown This video is an introduction to R. |
8. Building Webapps with R Shiny
1. Introduction to R Shiny This video is an introduction to R Shiny |
2. Creating a Basic R Shiny App This video helps you to create a basic R shiny app. |
3. Other Examples with R Shiny This video gives various examples with R shiny. |
9. Introduction to Machine Learning
1. Introduction to Machine Learning Part One This video is an introduction to machine learning. |
2. Introduction to Machine Learning Part Two This video explains the different approaches in machine learning. |
10. Data Preprocessing
1. Data Preprocessing Introduction This video introduces you to data preprocessing. |
2. Data Preprocessing This video explains some of the practical ways of data preprocessing. |
11. Linear Regression: A Simple Model
1. Linear Regression: A Simple Model Introduction This video explains a simple linear regression model. |
2. A Simple Model This video demonstrates a practical application of machine learning. |
12. Exploratory Data Analysis
1. Exploratory Data Analysis Introduction This video gives an introduction to exploratory data analysis. |
2. Hands-on Exploratory Data Analysis This video explains hands-on exploratory data analysis. |
13. Linear Regression - a Real Model
1. Linear Regression - Real Model Section Introduction This video explains linear regression - a real model. |
2. Linear Regression in R - Real Model This video explains linear regression in R. |
14. Logistic Regression
1. Introduction to Logistic Regression This video introduces you to logistic regression. |
2. Logistic Regression in R This video explains logistic regression in R. |
15. Starting a Career in Data Science
1. Starting a Data Science Career Section Overview This video explains section overview of data science and career. |
2. Creating a Data Science Resume This video explains creating a data science resume. |
3. Getting Started with Freelancing This vide explains how to get started with freelancing. |
4. Top Freelance Websites This video focuses on top freelancing websites. |
5. Personal Branding This video explains personal branding. |
6. Networking Do's and Don'ts This video explains networking do's and don'ts. |
7. Setting Up a Website This video explains how to set up a website. |