| --- |
| viewer: false |
| tags: [uv-script, dataset-creation, pdf-processing, document-processing, tool] |
| task: other |
| language: en |
| --- |
| |
| # Dataset Creation Scripts |
|
|
| Ready-to-run scripts for creating Hugging Face datasets from local files. |
|
|
| ## Available Scripts |
|
|
| ### π pdf-to-dataset.py |
|
|
| Convert directories of PDF files into Hugging Face datasets. |
|
|
| **Features:** |
| - π Uploads PDFs as dataset objects for flexible processing |
| - π·οΈ Automatic labeling from folder structure |
| - π Zero configuration - just point at your PDFs |
| - π€ Direct upload to Hugging Face Hub |
|
|
| **Usage:** |
| ```bash |
| # Basic usage |
| uv run pdf-to-dataset.py /path/to/pdfs username/my-dataset |
| |
| # Create private dataset |
| uv run pdf-to-dataset.py /path/to/pdfs username/my-dataset --private |
| |
| # Organized by categories (folder structure creates labels) |
| # /pdfs/invoice/doc1.pdf β label: "invoice" |
| # /pdfs/receipt/doc2.pdf β label: "receipt" |
| uv run pdf-to-dataset.py /path/to/organized-pdfs username/categorized-docs |
| ``` |
|
|
| **Output Format:** |
| The script creates a dataset where each example contains a `pdf` object that can be processed using the datasets library. Users can then extract text, convert to images, or perform other operations as needed. |
|
|
| ```python |
| from datasets import load_dataset |
| |
| # Load your uploaded dataset |
| dataset = load_dataset("username/my-dataset") |
| |
| # Access PDF objects |
| pdf = dataset["train"][0]["pdf"] |
| ``` |
|
|
| **Requirements:** |
| - Directory containing PDF files |
| - Hugging Face account (for uploading) |
| - No GPU needed - runs on CPU |
|
|
| ## Installation |
|
|
| No installation needed! Just run with `uv`: |
|
|
| ```bash |
| # Run directly from GitHub |
| uv run https://huggingface.co/datasets/uv-scripts/dataset-creation/resolve/main/pdf-to-dataset.py --help |
| |
| # Or clone and run locally |
| git clone https://huggingface.co/datasets/uv-scripts/dataset-creation |
| cd dataset-creation |
| uv run pdf-to-dataset.py /path/to/pdfs my-dataset |
| ``` |
|
|
| ## Authentication |
|
|
| Scripts use Hugging Face authentication: |
| 1. Pass token via `--hf-token` argument |
| 2. Set `HF_TOKEN` environment variable |
| 3. Use cached credentials from `huggingface-cli login` |
|
|
| ## Examples |
|
|
| ### Create a Dataset from Research Papers |
| ```bash |
| uv run pdf-to-dataset.py ~/Documents/papers username/research-papers |
| ``` |
|
|
| ### Organize Documents by Type |
| ```bash |
| # Directory structure: |
| # documents/ |
| # βββ invoices/ |
| # β βββ invoice1.pdf |
| # β βββ invoice2.pdf |
| # βββ receipts/ |
| # βββ receipt1.pdf |
| # βββ receipt2.pdf |
| |
| uv run pdf-to-dataset.py documents/ username/financial-docs |
| # Creates dataset with labels: "invoices" and "receipts" |
| ``` |
|
|
| ## Tips |
|
|
| - **Large PDFs**: The script handles large PDFs efficiently by uploading them as objects |
| - **Organization**: Use subdirectories to automatically create labeled datasets |
| - **Privacy**: Use `--private` flag for sensitive documents |
| - **Processing**: After upload, use the datasets library to extract text, images, or metadata as needed |
|
|
| ## License |
|
|
| MIT |