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    • Glossary
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Creating an artifact at the workspace level

PreviousAdding Models at the Project LevelNextManaging artifacts at the workspace level

Last updated 2 hours ago

Use this procedure to create an artifact and add multiple files to an artifact.

To create an artifact:

  1. Click the menu icon and select Artifacts & Models. The Artifacts tab is displayed.

  2. Click the plus icon. If the page does not have any artifact, you can view +Create Artifact option in the workspace. The Create Artifact window appears.

  3. Specify the artifact name in the Artifact Name field.

  4. Click BROWSE FILE to browse and upload the file to this artifact folder from your local system. You can view the artifact file added with the file name, file size and file type after adding.

  5. Click CREATE ARTIFACT. The artifact gets created and you can view this on the Artifacts tab

Important: You cannot delete the artifacts that are used in the canvas flow.

  1. If you want to add another file to an existing artifact, click on the artifact. This artifact page is displayed showing the existing files associated with this artifact in the Files section.

  2. Click the plus icon.

This opens the Add files window.

  1. Click BROWSE FILE to browse and upload another file to this artifact.

  2. Click Add Files to add files to the artifact. You can follow the same procedure to upload multiple files to this artifact.

Viewing Files Within an Artifact

To view files within an artifact:

  1. Click the menu icon and select Artifacts & Models. The Artifacts tab will be displayed.

  2. Click on any artifact to view the files it contains. This will display a list of files within the artifact folder along with key file information.

You can review the following details for each file:

  • File: The name of the file. Supported formats include .html, .txt, .md, .csv, .png, and more.

  • Updated On: The date the file was last modified.

  • File Size: The size of the file.

  • File Type: The format or type of the file.

  • Actions: Available actions you can perform on the file:

    • Preview: Opens a preview of the file.

    • Download: Downloads the file to your local system.

    • Delete: Allows you to delete files that were manually uploaded. Files generated as part of a machine learning flow cannot be deleted.

Additional options on the files page include:

  • Add Files: Use the plus (+) button at the top to upload more files to the existing artifact folder.

  • Download All: Use the Actions dropdown to select Download, which downloads all files within the artifact folder as a ZIP file.

Artifacts & Models
Create New Artifact
Create Artifact
New Artifact
Add File to Artifact
Add New Files