Data poisoning attacks introduce malicious data into machine learning training sets — causing models to learn incorrect patterns, misclassify specific inputs, or contain backdoors that attackers can trigger. Security testing for ML pipelines covers: training data integrity verification, data provenance tracking, anomaly detection in training datasets, model behaviour testing against adversarial inputs, and securing the data collection and labelling pipeline from manipulation.
AI Security
AI Training Data Poisoning: Protecting Machine Learning Models from Corrupted Data para empresas lusófonas
Data poisoning attacks corrupt ML training data to manipulate model behaviour. Security testing for AI/ML training pipelines. Guidance for PT market.