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Unsupervised Machine Learning Projects With R

Unsupervised Machine Learning Projects With R


Unsupervised Machine Learning Projects with R will help you build your knowledge and skills by guiding you in building machine learning projects with a practical approach and using the latest technologies provided by the R language such as Rmarkdown, R-shiny, and more.

Overview

Description
This course will give you the required knowledge and skills to build real-world machine learning projects with R.

Unsupervised Machine Learning Projects with R will help you build your knowledge and skills by guiding you in building machine learning projects with a practical approach and using the latest technologies provided by the R language such as Rmarkdown, R-shiny, and more. The areas this course addresses include effectively exploring and preparing data in R and RStudio and training, evaluating, and improving a model's performance (if needed). You will feel comfortable and confident after learning unsupervised and supervised Machine Learning algorithms. In the first of the four sections comprising this course, we start by introducing you to concepts in Machine Learning, before then moving on to discuss projects in unsupervised Machine Learning. Next, we focus on two machine learning paradigms—K-Means Clustering and Principal Component Analysis—to grasp how they work and apply them to business Customer Segmentation (Market Segmentation Analysis). We finish the section by looking at the specific design aspects of Horizon 7 and how to approach a project, before finally looking at some example scenarios that will help you plan your own environment.All the work delivered into the R code script during the videos is available through nice html reports created by Rmarkdown. By the end of the course, you will be able to train and improve real-world projects and models using unsupervised Machine Learning techniques

The code bundle for this video course is available at: https://github.com/PacktPublishing/Unsupervised-Machine-Learning-Projects-with-R

About The Author

Antoine Pissoort is a statistician and Machine Learning enthusiast with a lot of experience in that field through various projects. He loves to play with algorithms and write code in R to develop Machine Learning models in different areas. He is always looking for the newest technologies.

Course Information

Machine Learning, Machine Learning with R

Learn the benefits of deploying Machine Learning algorithms in R
Explore K-means clustering techniques
Prepare data for imputation and model diagnostics
Train, evaluate, and improve your models
Visualize the Principal Component Analysis model in 2D
Learn pattern mining for transactional data
Learn what mocking is and how to use mocking frameworks
Understand the selection of design patterns

This course is for R Programmers keen to learn how to implement Machine Learning algorithms in R.

• Lifetime Access to Each Course
• Certificate on Completion of Course
• No Extra Charges Or Admin Fees
• Easy Access to Courses
• High Priority Support After Sales.
• Big Discounts on Individual Courses

Course Specifications

IT and Computing courses are available to study on our learning platform. 

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Adult education is the non-credential activity of gaining skills and improved education. 

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Online education is electronically supported learning that relies on the Internet for teacher/student interaction. 

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A short course is a learning programme that gives you combined content or specific skills training in a short period of time. Short courses often lean towards the more practical side of things and have less theory than a university course – this gives you a more hands-on experience within your field of interest.

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Course duration is 24 hours.

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