Performance

This domain is intended to codify deficiencies such as privacy leakage or lack or robustness.

IDSub-IDNameDescription

P0100

Data issues

Problems arising due to faults in the data pipeline

P0101

Data drift

Input feature distribution has drifted

P0102

Concept drift

Output feature/label distribution has drifted

P0103

Data entanglement

Cases of spurious correlation and proxy features

P0104

Data quality issues

Missing or low-quality features in data

P0105

Feedback loops

Unaccounted for effects of an AI affecting future data collection

P0200

Model issues

Ability for the AI to perform as intended

P0201

Resilience/stability

Ability for outputs to not be affected by small change in inputs

P0202

OOD generalization

Test performance doesn’t deteriorate on unseen data in training

P0203

Scaling

Training and inference can scale to high data volumes

P0204

Accuracy

Model performance accurately reflects realistic expectations

P0300

Privacy

Protect leakage of user information as required by rules and regulations

P0301

Anonymization

Protects through anonymizing user identity

P0302

Randomization

Protects by injecting noise in data, eg. differential privacy

P0303

Encryption

Protects through encrypting data accessed

P0400

Safety

Minimizing maximum downstream harms

P0401

Psychological Safety

Safety from unwanted digital content, e.g. NSFW

P0402

Physical safety

Safety from physical actions driven by a AI system

P0403

Socioeconomic safety

Safety from socioeconomic harms, e.g. harms to job prospects or social status

P0404

Environmental safety

Safety from environmental harms driven by AI systems

Last updated