# DeepURLBench **DeepURLBench** is a large-scale benchmark dataset for real-world URL classification, developed by Deep Instinct's research team. ## Dataset Overview The dataset includes two subsets in Parquet format: ### 🟢 `urls_with_dns` Contains additional DNS resolution data: - `url`: The URL being analyzed. - `first_seen`: The timestamp when the URL was first observed. - `TTL` (Time to Live): DNS TTL value. - `label`: The classification label (`malware`, `phishing`, or `benign`). - `ip_address`: List of resolved IP addresses. ### 🔵 `urls_without_dns` Contains only the core metadata: - `url`: The URL being analyzed. - `first_seen`: The timestamp when the URL was first observed. - `label`: The classification label (`malware`, `phishing`, or `benign`). ## How to Load You can load the dataset using the Hugging Face `datasets` library: ```python from datasets import load_dataset # Load the subset with DNS data ds_dns = load_dataset("DeepInstinct/DeepURLBench", "with_dns") # Load the subset without DNS data ds_no_dns = load_dataset("DeepInstinct/DeepURLBench", "without_dns") ## License This dataset is available under the CC BY-NC 4.0 License. ## Citation @misc{deepurlbench2025, author = {Deep Instinct Research Team}, title = {DeepURLBench: A large-scale benchmark for URL classification}, year = {2025}, howpublished = {\\url{https://huggingface.co/datasets/DeepInstinct/DeepURLBench}} }