These vignettes are end-to-end tutorials for using Azure Machine Learning with the R SDK.
Before running a vignette in RStudio, set the working directory to the folder that contains the vignette file (.Rmd file) in RStudio using setwd(dirname)
or Session -> Set Working Directory -> To Source File Location. Each vignette assumes that the data and scripts are relative to vignette file location.
The following vignettes are included: 1. installation: Install the Azure ML SDK for R. 2. configuration: Set up an Azure ML workspace. 3. train-and-deploy-first-model: Train a caret model and deploy as a web service to Azure Container Instances (ACI). 4. train-with-tensorflow: Train a deep learning TensorFlow model with Azure ML. 5. hyperparameter-tune-with-keras: Hyperparameter tune a Keras model using HyperDrive, Azure ML's hyperparameter tuning functionality. 6. deploy-to-aks: Production deploy a model as a web service to Azure Kubernetes Service (AKS).
If you are running these examples on an Azure Machine Learning compute instance, skip the installation and configuration vignettes (#1 and #2), as the compute instance has the Azure ML SDK pre-installed and your workspace details pre-configured.
For additional examples on using the R SDK, see the samples folder.
In addition to the end-to-end vignettes, we also provide more detailed documentation for the following: Deploying models: Where and how to deploy models on Azure ML. Troubleshooting: Known issues and troubleshooting for using R in Azure ML.
Any scripts or data that you put into this service are public.
Add the following code to your website.
For more information on customizing the embed code, read Embedding Snippets.