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1.0.0
1.0.0
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  • From Your (Terminal Only/SSH) VM
  • From a Linux Desktop
  1. Data
  2. Types of Storage
  3. Managing Data in Gradient

Managing Persistent Storage with VMs

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Last updated 5 years ago

This feature is only available in the hosted gradient Gradient version. to learn more.

If you are using both a Paperspace Linux VM and Gradient you can share files between them through Persistent Storage. Learn more about Persistent Storage .

Once you have set up either a Gradient Jupyter Notebook or a Job you will have access to Persistent Storage in /storage. Persistent Storage is kept in two regions based on your machine type:

  1. East Coast (NY2)

  2. GCP West

From Your (Terminal Only/SSH) VM

To access the same folder in your Paperspace VM simply log on and type ls / into the terminal and you will see the storage folder. Typing ls /storage will show you what folders you have in storage. If you have Notebooks or Jobs set up in only one region then you will only see one folder. If you have it set up in two different regions, you will see two folders. Typing ls /storage/storagefoldername will show you the contents of that folder.

From a Linux Desktop

Click on storage and you will see your folders containing all your files.

For users that are using a desktop environment such as our , you will be able to see Persistent Storage in your /storage folder. Simply click on the "Home" Folder on your desktop. Then click on "Computer" near the bottom in the left pane:

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