--- license: cc-by-4.0 task_categories: - text-classification language: - en tags: - security - web-attacks - http - waf - payloads pretty_name: HTTP Attack Requests (multi-class) --- # HTTP Attack Requests — multi-class Real HTTP requests labelled with the web-attack class carried in the request, for training and evaluating request/payload classifiers (WAF / DAST style). ## Classes (7) `normal`, `sqli`, `xss`, `ssrf`, `ssti`, `lfi`, `traversal` (IDOR is intentionally excluded — it's an access-control flaw with no payload signature.) ## How it was built (and why it's shortcut-resistant) Every example is a full HTTP request built on the **same real envelopes** (CSIC 2010 normal requests). For attack classes, **one query-param value is replaced** with a real attack payload; `normal` keeps its real benign value. The **`Host`/domain is randomised** on every request. So neither request structure nor domain can be used as a shortcut — the only signal is the injected value. This is a deliberate guard against [shortcut learning](https://www.nature.com/articles/s42256-020-00257-z). ## Provenance | Class | Source | |-------|--------| | envelopes + `normal` values | CSIC 2010 (`bridge4/CSIC2010_dataset_classification`) — real | | `sqli`, `xss`, `lfi`, `traversal` | PayloadsAllTheThings — real payload lists | | `ssrf`, `ssti` | templated (no clean public payload file) | ## Splits | split | rows | |-------|------| | train | 4900 | | validation | 700 | | test | 1400 | Balanced: 1000 per class across all splits combined. ## Usage ```python from datasets import load_dataset ds = load_dataset("SecureAI-SE/http-attack-requests") print(ds["train"][0]) # {'request': 'GET /...', 'label': 2} ds["train"].features["label"].names # ['normal','sqli','xss','ssrf','ssti','lfi','traversal'] ``` ## Intended use & ethics For **authorised** security research, WAF/IDS training, and education. It contains real attack payloads; do not use them against systems you do not own or have permission to test. Built for the *Fine-Tuning LLMs for Security Engineers* course (Secure AI).