--- viewer: true configs: - config_name: default default: true data_files: - split: test path: - test.parquet license: mit --- # PrimeVul Original Test Dataset ## Overview This dataset contains the original test split from the PrimeVul dataset, provided for reproducibility purposes. The data is sourced from the paper "PrimeVul: Vulnerability Detection with Code Language Models: How Far Are We?" and includes both the default (single functions) and paired (vulnerable/non-vulnerable pairs) configurations. ## Citation If you use this dataset, please cite the original PrimeVul paper: ```bibtex @article{primevul2024, title={PrimeVul: Vulnerability Detection with Code Language Models: How Far Are We?}, author={[Authors from the original paper]}, journal={arXiv preprint arXiv:2403.18624}, year={2024}, url={https://arxiv.org/abs/2403.18624} } ``` ## Dataset Configurations - **Description**: Single function vulnerability detection dataset - **Size**: 25,911 test samples - **Format**: Each sample contains a single code function with binary vulnerability label - **Fields**: - `project`: Source project name - `commit_id`: Git commit hash - `target`: Binary label (0=non-vulnerable, 1=vulnerable) - `func`: Source code function - `cwe`: Common Weakness Enumeration categories - `idx`: Unique sample identifier - `hash`: Function hash - Additional metadata fields ## Data Source The original JSONL files are available from the PrimeVul authors at: - **Google Drive**: https://drive.google.com/drive/folders/19iLaNDS0z99N8kB_jBRTmDLehwZBolMY - **GitHub Repository**: https://github.com/DLVulDet/PrimeVul ## Data Format This dataset provides the test splits in Parquet format for easy loading with HuggingFace datasets. The original data was in JSONL format and has been converted while preserving all original fields and values. ## Usage ```python from datasets import load_dataset # Login using e.g. `huggingface-cli login` to access this dataset ds = load_dataset("Code-TREAT/PrimeVul_original") ``` ## Purpose This dataset is provided by the Code-TREAT project to ensure reproducibility and consistency in vulnerability detection research. By providing the exact test splits used in evaluations, researchers can: 1. **Reproduce results** from papers using this dataset 2. **Compare methods** fairly using identical test data 3. **Validate new approaches** against established benchmarks ## License Please refer to the original PrimeVul repository for licensing information: https://github.com/DLVulDet/PrimeVul ## Acknowledgments We thank the authors of PrimeVul for making their dataset publicly available and for their contributions to vulnerability detection research. ## Contact For questions about this dataset distribution, please refer to the original PrimeVul repository or the Code-TREAT project.