Learning Path: R: Complete Machine Learning & Deep Learning. With the help of this course you can Unleash the true potential of R to unlock the hidden layers of data.
This course was created by Packt Publishing. It was rated 4.9 out of 5 by approx 12078 ratings. There are approx 81377 users enrolled with this course, so don’t wait to download yours now. This course also includes 17.5 hours on-demand video, 1 Supplemental Resource, Full lifetime access, Access on mobile and TV & Certificate of Completion.
What Will You Learn?
Develop R packages and extend the functionality of your model
Perform pre-model building steps
Understand the working behind core machine learning algorithms
Build recommendation engines using multiple algorithms
Incorporate R and Hadoop to solve machine learning problems on Big Data
Understand advanced strategies that help speed up your R code
Learn the basics of deep learning and artificial neural networks
Learn the intermediate and advanced concepts of artificial and recurrent neural networks
Are you looking to gain in-depth knowledge of machine learning and deep learning? If yes, then this Learning Path just right for you.
Packt’s Video Learning Paths are a series of individual video products put together in a logical and stepwise manner such that each video builds on the skills learned in the video before it.
R is one of the leading technologies in the field of data science. Starting out at a basic level, this Learning Path will teach you how to develop and implement machine learning and deep learning algorithms using R in real-world scenarios.
The Learning Path begins with covering some basic concepts of R to refresh your knowledge of R before we deep-dive into the advanced techniques. You will start with setting up the environment and then perform data ETL in R. You will then learn important machine learning topics, including data classification, regression, clustering, association rule mining, and dimensionality reduction. Next, you will understand the basics of deep learning and artificial neural networks and then move on to exploring topics such as ANNs, RNNs, and CNNs. Finally, you will learn about the applications of deep learning in various fields and understand the practical implementations of scalability, HPC, and feature engineering.
By the end of the Learning Path, you will have a solid knowledge of all these algorithms and techniques and be able to implement them efficiently in your data science projects.