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Dataset Creation
Upload To Hub

Upload To Hub

Upload files to a Hugging Face repository

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What is Upload To Hub ?

Upload To Hub is a tool designed to simplify the process of uploading files to a Hugging Face repository. It is categorized under Dataset Creation, making it an essential tool for users who need to manage and share their datasets efficiently.

Features

  • Seamless Integration: Directly upload files to Hugging Face repositories without leaving the platform.
  • Drag-and-Drop Functionality: Easily upload files with an intuitive drag-and-drop interface.
  • Support for Multiple File Types: Upload datasets, models, or other relevant files in various formats.
  • Versioning: Track changes and maintain different versions of your datasets.
  • Sharing: Easily share your repository with collaborators or the public.
  • Organization: Keep your files organized with customizable folder structures.
  • User-Friendly Interface: An intuitive design that makes uploading and managing files straightforward.

How to use Upload To Hub ?

  1. Create a Repository: First, ensure you have a Hugging Face repository set up for your project.
  2. Prepare Your Files: Organize the files you wish to upload into a logical structure on your local machine.
  3. Access Upload To Hub: Navigate to the Upload To Hub interface within your Hugging Face account.
  4. Select Files: Use the drag-and-drop feature or browse your local files to select the data you want to upload.
  5. Choose Upload Location: Select the appropriate repository and folder where you want to upload the files.
  6. Add Description (Optional): Provide a brief description or commit message for clarity.
  7. Review and Upload: Review the selected files and click the upload button to complete the process.

Frequently Asked Questions

What file types are supported by Upload To Hub?
Upload To Hub supports a wide range of file types, including CSV, JSON, TXT, ZIP, and more. For specific file type limitations, refer to the Hugging Face documentation.

Is there a limit to the size or number of files I can upload?
While Upload To Hub itself doesn't impose strict limits, Hugging Face repositories may have upload limits depending on your account type (e.g., free vs. paid plans).

How can I manage or update files after uploading them?
After uploading, you can manage your files directly through the Hugging Face web interface. Update your repository by uploading new versions of your files or removing outdated ones.

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