Data (AML.T0010.002)

Maturity
realized
Reference
atlas.mitre.org/techniques/AML.T0010.002

Description

Data is a key vector of supply chain compromise for adversaries. Every AI project will require some form of data. Many rely on large open source datasets that are publicly available. An adversary could rely on compromising these sources of data. The malicious data could be a result of Poison Training Data or include traditional malware.

An adversary can also target private datasets in the labeling phase. The creation of private datasets will often require the hiring of outside labeling services. An adversary can poison a dataset by modifying the labels being generated by the labeling service.

How GTK Cyber trains on this

GTK Cyber's hands-on AI security courses cover adversarial-AI techniques across the MITRE ATLAS framework, including the relevant tactic this technique falls under. Our practitioner-led training is taught by Charles Givre and other field-tested SMEs and focuses on real adversarial scenarios, not slide decks.

View AI security courses →

Train your team on real adversarial-AI attacks.

GTK Cyber's AI red teaming courses are taught by practitioners who break models for a living.

View AI Security Courses