Security of the AI lifecycle
Controls are mapped to training, validation, deployment and runtime behaviour.
Poisoning & backdoor defence
Threat models, provenance signals and validation tests for manipulated training data or model behaviour.
Adversarial robustness
Evaluation of perturbation sensitivity, unsafe boundaries and mitigation mechanisms.
Runtime assurance
Monitoring of drift, anomalous inputs and policy violations after deployment.
Privacy leakage assessment
Evidence-oriented analysis of exposure through models, APIs and inference workflows.