This repository contains a labs to help you get started with Creating and deploying Azure machine learning module.
Follow these steps to open this sample in a container using the VS Code Remote - Containers extension:
-
If this is your first time using a development container, please ensure your system meets the pre-reqs (i.e. have Docker installed) in the getting started steps.
-
To use this repository, you can either open the repository in an isolated Docker volume:
- Press F1 and select the Remote-Containers: Try a Sample... command.
- Choose the "Python" sample, wait for the container to start, and try things out!
Note: Under the hood, this will use the Remote-Containers: Clone Repository in Container Volume... command to clone the source code in a Docker volume instead of the local filesystem. Volumes are the preferred mechanism for persisting container data.
Or open a locally cloned copy of the code:
- Clone this repository to your local filesystem.
- Press F1 and select the Remote-Containers: Open Folder in Container... command.
- Select the cloned copy of this folder, wait for the container to start, and try things out!
-
Rebuild or update your container
You may want to make changes to your container, such as installing a different version of a software or forwarding a new port. You'll rebuild your container for your changes to take effect.
Open browser automatically: As an example change, let's update the
portsAttributes
in the.devcontainer/devcontainer.json
file to open a browser when our port is automatically forwarded.- Open the
.devcontainer/devcontainer.json
file. - Modify the
"onAutoForward"
attribute in yourportsAttributes
from"notify"
to"openBrowser"
. - Press F1 and select the Remote-Containers: Rebuild Container or Codespaces: Rebuild Container command so the modifications are picked up.
- Open the
After you've completed the setup steps above, you can use your Visual Studio Online environment to complete the labs.
Note: Labs that involve running code include all of the code you'll need - you'll just need to copy and paste a few values and run the code that is provided, so don't worry if you're not a programmer! We've used Python code in the labs, because that can be runs interactively in the notebooks themselves.
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