--- license: mit tags: - img2latex - latex-ocr - handwritten mathematical expressions - printed mathematical expressions size_categories: - 1M num_examples: 3200000 --- # TeXtract_dataset (WebDataset Format) This repository contains approximately **3.2 million** pairs of mathematical expression images and their corresponding LaTeX source code, packaged in **WebDataset** format for large-scale training. The dataset is based on and derived from the original [hoang-quoc-trung/fusion-image-to-latex-datasets](https://huggingface.co/datasets/hoang-quoc-trung/fusion-image-to-latex-datasets), transformed for more efficient access. --- ## 📂 Dataset Structure Each WebDataset shard (`.tar`) contains multiple samples. Each sample groups files sharing a common identifier (`__key__`): * `__key__` (string): Unique sample ID (e.g., `sample_000000123`). * Image file (`.png`, `.jpg`, etc.): Binary data of the mathematical expression. * `.tex`: UTF-8 text file with the corresponding LaTeX code. * `__url__` (string): URL or path to the source shard (automatically added). ``` shard-000000.tar ├── sample_000000000.png ├── sample_000000000.tex ├── sample_000000001.png ├── sample_000000001.tex └── ... ``` > **Note:** When browsing in Hugging Face Data Studio: > > * Image metadata (dimensions) may be shown instead of the actual content. > * `.tex` files may appear Base64-encoded. This is only a preview; the underlying data is UTF-8. --- ## 🚀 How to Use ### 1. Using the `datasets` library (recommended) ```python from datasets import load_dataset from PIL import Image import io DATASET_ID = "ToniDO/TeXtract_dataset" try: ds = load_dataset(DATASET_ID, split="train", trust_remote_code=True) except ValueError: ds = load_dataset(DATASET_ID, trust_remote_code=True) for i, sample in enumerate(ds): print(f"Sample {i}: {sample['__key__']}") # Load image for ext in ['.png', '.jpg', '.jpeg']: if ext in sample: img_data = sample[ext] img = ( img_data if isinstance(img_data, Image.Image) else Image.open(io.BytesIO(img_data if isinstance(img_data, bytes) else img_data['bytes'])) ) print(f"Image ({ext}), size: {img.size}") break # Decode LaTeX tex_bytes = sample.get('.tex') if isinstance(tex_bytes, (bytes, bytearray)): latex = tex_bytes.decode('utf-8') print(latex[:100]) if i >= 2: break ``` ### 2. Using the `webdataset` library ```python import webdataset as wds from PIL import Image import io urls = "path/to/shards/math_dataset-{000000..000349}.tar" dataset = ( wds.WebDataset(urls) .decode( wds.handle_extension("pil", "png"), wds.handle_extension("pil", "jpg"), handler=wds.ignore_and_continue ) ) for i, sample in enumerate(dataset): print(f"Sample {i}: {sample['__key__']}") # Image img = None for ext in ["png", "jpg", "jpeg"]: if ext in sample and isinstance(sample[ext], Image.Image): img = sample[ext] break if img: print(f"Size: {img.size}") # LaTeX tex = sample.get('.tex') if isinstance(tex, (bytes, bytearray)): print(tex.decode('utf-8')[:100]) if i >= 2: break ``` > **Training tips:** > > * Decode LaTeX from UTF-8. > * Preprocess images (resize, normalize, augment). > * Tokenize LaTeX code according to your vocabulary. > * Shuffle shards and samples for effective training. --- ## File Types ```console .bmp .dvi .jpg .png ``` ## 📖 Citation If you use this dataset, please cite the original work: ```bibtex @misc{hoang2024fusion, author = {Hoang, Quoc Trung}, title = {Fusion Image-to-LaTeX Datasets}, year = {2024}, publisher = {Hugging Face}, url = {https://huggingface.co/datasets/hoang-quoc-trung/fusion-image-to-latex-datasets} } ``` And to reference this WebDataset version: ```bibtex @misc{ToniDO_TeXtract_webdataset_2025, author = {ToniDO}, title = {{TeXtract_dataset (WebDataset Format)}}, year = {2025}, publisher = {Hugging Face}, version = {1.0.0}, url = {https://huggingface.co/datasets/ToniDO/TeXtract_dataset} } ``` --- ## 📝 Authors * ToniDO --- ## 📜 License This project is licensed under the **MIT License**. See the [LICENSE](LICENSE) file for details.