Hallucination Guard
The Hallucination Guard is an output guard that analyzes the responses generated by your language model to detect any fabricated or inaccurate information, ensuring all outputs are factually correct and reliable.
info
HallucinationGuard
is only available as an output guard.
Example
from deepeval.guardrails import HallucinationGuard
model_output = "The capital of Australia is Sydney."
hallucination_guard = HallucinationGuard()
guard_result = hallucination_guard.guard(response=model_output)
There are no required arguments when initializing the HallucinationGuard
object. The guard
function accepts a single parameter response
, which is the output of your LLM application.
Interpreting Guard Result
print(guard_result.score)
print(guard_result.score_breakdown)
guard_result.score
is an integer that is 1
if the guard has been breached. The score_breakdown
for HallucinationGuard
is a dictionary containing:
score
: A binary value (1 or 0), where 1 indicates that hallucinated content was detected.reason
: A brief explanation of why the score was assigned.
{
"score": 1,
"reason": "The statement 'The capital of Australia is Sydney' is incorrect; the capital is Canberra."
}