In this Data Science with Microsoft Azure and R training course, expert author Stephen Elston will teach you how to develop and deploy effective machine learning models in the Microsoft Azure Machine Learning (ML) environment. This course is designed for users that are familiar with R.
You will start with an overview of Azure ML, then move into an introduction to R in Azure ML. From there, Stephen will teach you about data munging and …
Data Science with Microsoft Azure and R
Video description
In this Data Science with Microsoft Azure and R training course, expert author Stephen Elston will teach you how to develop and deploy effective machine learning models in the Microsoft Azure Machine Learning (ML) environment. This course is designed for users that are familiar with R.
You will start with an overview of Azure ML, then move into an introduction to R in Azure ML. From there, Stephen will teach you about data munging and SQL in Azure ML, as well as how to use the dplyr package, install R packages in Azure ML, and reshape data with tidyr. This video tutorial also covers feature selection and dimensionality reduction, functional programming with R, and R object communications. Finally, you will learn about Azure ML web services, including how to create and update an Azure ML web service.
Once you have completed this computer based training course, you will be fully capable of developing and deploying your own ML models in the Microsoft Azure ML environment.
Projection Methods for Dimensionality Reduction
00:12:21
Functional Programming With R
Introduction To Functional Programming With R
00:08:45
Functional Programming Example
00:05:25
Regression Example
Introduction To Regression Example
00:05:20
Data Preparation Example
00:08:52
Examining Correlations
00:06:12
Time Series Plots
00:06:11
Understanding Features With Box Plots
00:07:01
Other Exploratory Plots
00:05:45
Feature Selection - Regression
00:05:02
Model Evaluation With Time Series Plots
00:10:14
Model Evaluation Of Residuals - Part 1
00:04:30
Model Evaluation Of Residuals - Part 2
00:05:03
Regression Example - Improving the Model
Introduction To Improving the Model
00:01:08
Using An R Model
00:05:59
Creating A New Azure ML Model
00:03:36
Trimming Outliers
00:10:53
Optimizing Model Parameters
00:07:44
Further Improvements And Summary
00:03:43
R Object Communications In Azure ML
Introduction To R Object Serialization
00:04:22
R Object Serialization Example
00:05:18
Classification Example
Introduction To Classification Example
00:04:37
Data Preparation - Part 1
00:03:01
Data Preparation - Part 2
00:07:42
Exploring The Data
00:08:01
Balance Cases
00:03:26
Feature Selection
00:06:03
Building Initial Models
00:05:45
Model Evaluation
00:09:12
First R Model
00:05:01
Improving the R Model
00:06:31
Summary
00:03:38
Azure ML Web Services
Overview Of Publishing Azure ML Models As Web Services
00:03:48
Creating An Azure ML Web Service
00:10:27
Updating An Azure ML Web Service
00:02:49
R Model Publishing
00:08:36
Summary
00:04:09
Conclusion
Wrap-Up
00:02:48
Start your Free Trial Self paced Go to the Course We have partnered with providers to bring you collection of courses, When you buy through links on our site, we may earn an affiliate commission from provider.
This site uses cookies. By continuing to use this website, you agree to their use.I Accept