The ML OWASP Top 10

OWASP ML Security Top 10 maps the attack surface of machine learning systems. Here is what each risk means for red teamers and defenders.

Malware as images

Explores the Malimg (Malware) dataset, binary-to-image conversion, and why class imbalance is an adversarial attack surface.

Malware classification

Train a CNN to classify malware families from grayscale binary images using the Malimg dataset, and learn why byte-level texture is both signal and weakness.

Training and evaluation

The latest entry in the AI red teaming series trains a random forest on NSL-KDD and shows how evaluation metrics map the exact weaknesses an attacker exploits.

Network anomaly detection

Train a random forest on the NSL-KDD dataset for network anomaly detection, with every data loading step examined through an adversarial red teaming lens.