--- language: en license: mit tags: - cybersecurity - bert - text-classification - security widget: - text: "Files encrypted with ransom demand for Bitcoin payment" example_title: "Ransomware Example" - text: "Website unreachable due to massive spike in incoming requests" example_title: "DDoS Example" - text: "Employee downloading sensitive customer data before resignation" example_title: "Insider Threat Example" --- # Cybersecurity BERT Classifier This model is a fine-tuned `bert-base-uncased` model that classifies cybersecurity alerts into five threat categories. ## Model Details - **Base Model:** `bert-base-uncased` - **Task:** Text Classification - **Labels:** - `0`: Ransomware - `1`: DDoS - `2`: Insider Threat - `3`: Web Attack - `4`: Benign ## Intended Uses & Limitations This model is intended for security operations center (SOC) teams to automatically triage and classify security alert text. It achieves **92.86% accuracy** on a curated test set. ## How to Use You can use this model directly with the Transformers pipeline for text classification: ```python from transformers import pipeline classifier = pipeline("text-classification", model="Aikaksh-Singh-Routela/cybersecurity-bert-model") result = classifier("Files encrypted with ransom demand for Bitcoin payment") print(result) # Expected output: [{'label': 'Ransomware', 'score': 0.9286}]