Course Information
Course Overview
Harness The Power Of Machine Learning For Unsupervised & Supervised Learning In R -- With Practical Examples
HERE IS WHY YOU SHOULD TAKE THIS COURSE:
This course your complete guide to both supervised & unsupervised learning using R...
That means, this course covers all the main aspects of practical data science and if you take this course, you can do away with taking other courses or buying books on R based data science.
In this age of big data, companies across the globe use R to sift through the avalanche of information at their disposal. By becoming proficient in unsupervised & supervised learning in R, you can give your company a competitive edge and boost your career to the next level.
LEARN FROM AN EXPERT DATA SCIENTIST WITH +5 YEARS OF EXPERIENCE:
My name is Minerva Singh and I am an Oxford University MPhil (Geography and Environment) graduate. I recently finished a PhD at Cambridge University.
I have +5 years of experience in analyzing real life data from different sources using data science related techniques and producing publications for international peer reviewed journals.
Over the course of my research I realized almost all the R data science courses and books out there do not account for the multidimensional nature of the topic...
This course will give you a robust grounding in the main aspects of machine learning- clustering & classification.
Unlike other R instructors, I dig deep into the machine learning features of R and gives you a one-of-a-kind grounding in Data Science!
You will go all the way from carrying out data reading & cleaning to machine learning to finally implementing powerful machine learning algorithms and evaluating their performance using R.
THIS COURSE HAS 8 SECTIONS COVERING EVERY ASPECT OF R MACHINE LEARNING:
• A full introduction to the R Framework for data science
• Data Structures and Reading in R, including CSV, Excel and HTML data
• How to Pre-Process and “Clean” data by removing NAs/No data,visualization
• Machine Learning, Supervised Learning, Unsupervised Learning in R
• Model building and selection...& MUCH MORE!
By the end of the course, you’ll have the keys to the entire R Machine Learning Kingdom!
NO PRIOR R OR STATISTICS/MACHINE LEARNING KNOWLEDGE REQUIRED:
You’ll start by absorbing the most valuable R Data Science basics and techniques. I use easy-to-understand, hands-on methods to simplify and address even the most difficult concepts in R.
My course will help you implement the methods using real data obtained from different sources. Many courses use made-up data that does not empower students to implement R based data science in real life.
After taking this course, you’ll easily use data science packages like caret to work with real data in R...
You’ll even understand concepts like unsupervised learning, dimension reduction and supervised learning. Again, we'll work with real data and you will have access to all the code and data used in the course.
JOIN MY COURSE NOW!
Course Content
- 10 section(s)
- 71 lecture(s)
- Section 1 Introduction to the Course
- Section 2 Read in Data From Different Sources in R
- Section 3 Data Pre-processing and Visualization
- Section 4 Machine Learning for Data Science
- Section 5 Unsupervised Learning in R
- Section 6 Feature/Dimension Reduction
- Section 7 Feature Selection to Select the Most Relevant Predictors
- Section 8 Supervised Learning Theory
- Section 9 Supervised Learning: Classification
- Section 10 Additional Lectures
What You’ll Learn
- Be Able To Harness The Power Of R For Practical Data Science
- Read In Data Into The R Environment From Different Sources
- Carry Out Basic Data Pre-processing & Wrangling In R Studio
- Implement Unsupervised/Clustering Techniques Such As k-means Clustering
- Implement Dimensional Reduction Techniques (PCA) & Feature Selection
- Implement Supervised Learning Techniques/Classification Such As Random Forests
- Evaluate Model Performance & Learn The Best Practices For Evaluating Machine Learning Model Accuracy
Skills covered in this course
Reviews
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JJavier A Ceja Navarro
Clear instructions and a good pace
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MMarkos A. Ktistakis
Very sloppily done. No editing or corrections or cutting the wasted time. No updates. Requires someone familiar with R and statistics to follow and really understand in 'depth'. Still quite relevant, the topics are interesting and the majority of code works fine.
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AAnonymized User
The course contains comprehensive information about the importance and power of machine learning in R with reference to clustering and classification.
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AAmit Narang
The course on machine learning in R is very useful and relevant for my work. The instructor has impressive knowledge of the subject and her delivery is engaging.