AttaQ

AttaQ is a unique dataset containing adversarial examples in the form of questions designed to provoke harmful or inappropriate responses from large language models. The benchmark evaluates safety vulnerabilities by using specialized clustering techniques that analyze both the semantic similarity of input attacks and the harmfulness of model responses, facilitating targeted improvements to model safety mechanisms.

3rows
scoreprimary metric
2026-05-06sampled

Metadata

Metrics

Score, Normalized Score

Latest Results

Rank Subject Score Model Match Provenance Sampled
1 Granite 3.3 8B Base 0.89 Self-reported 2026-05-06
1 Granite 3.3 8B Instruct 0.89 Self-reported 2026-05-06
3 IBM Granite 4.0 Tiny Preview 0.86 Self-reported 2026-05-06