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Create a folder in Onedrive

amudhanamudhan
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2/3/2026
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Companion workflow for Onedrive node docs

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Create a Folder in OneDrive

This n8n workflow demonstrates how to create a new folder within Microsoft OneDrive. It serves as a basic example of interacting with OneDrive to manage files and folders programmatically.

What it does

  1. Starts the workflow: The workflow is manually triggered to initiate the process.
  2. Creates a folder in Microsoft OneDrive: It connects to your Microsoft OneDrive account and creates a new folder.

Prerequisites/Requirements

  • n8n Account: An active n8n instance (cloud or self-hosted).
  • Microsoft OneDrive Account: An account with sufficient permissions to create folders.

Setup/Usage

  1. Import the workflow:
    • Download the provided JSON file.
    • In your n8n instance, go to "Workflows" and click "New".
    • Click the "Import from JSON" button and paste the workflow JSON or upload the file.
  2. Configure Credentials:
    • Locate the "Microsoft OneDrive" node.
    • Click on the "Credential" field and select an existing Microsoft account credential or create a new one. Follow the prompts to authenticate with your Microsoft account.
  3. Configure the OneDrive Node:
    • In the "Microsoft OneDrive" node, ensure the "Operation" is set to "Create Folder".
    • Specify the Folder Name you wish to create.
    • (Optional) Specify a Parent Folder ID if you want to create the folder within a specific existing folder. If left blank, it will create the folder in the root directory.
  4. Activate the workflow:
    • Click the "Save" button in the top right corner.
    • Toggle the "Active" switch to enable the workflow.
  5. Execute the workflow:
    • Click "Execute Workflow" to run it manually and create the specified folder in your OneDrive.

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