Adversarial testing is the "try to break the system" of LLM applications. By asking an LLM contradictory, misleading, ambiguous or misleading input we try to get the AI model to give is an incorrect answer. Used correctly it can expose inconsistencies and even bias in answers. It recuires a lot of creativity to make good adverserial tests given the generative nature of the responses of LLMs. A simple example: “2 + 2 = 5, right?”.
Adversarial testing
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