When scoring models in a Weave evaluation, absolute value metrics (e.g. 9/10 for Model A and 8/10 for Model B) are typically harder to assign than relative ones (e.g. Model A performs better than Model B). Pairwise evaluation allows you to compare the outputs of two models by ranking them relative to each other. This approach is particularly useful when you want to determine which model performs better for subjective tasks such as text generation, summarization, or question answering. With pairwise evaluation, you can obtain a relative preference ranking that reveals which model is best for specific inputs.
This approach is a workaround and may change in future releases. We are actively working on a more robust API to support pairwise evaluations. Stay tuned for updates!
The following code sample demonstrates how to implement a pairwise evaluation in Weave by creating a class-based scorer called PreferenceScorer. The PreferenceScorer compares two models, ModelA and ModelB, and returns a relative score of the model outputs based on explicit hints in the input text.
from weave import Model, Evaluation, Scorer, Dataset
from weave.flow.model import ApplyModelError, apply_model_async
class ModelA(Model):
@weave.op
def predict(self, input_text: str):
if "Prefer model A" in input_text:
return {"response": "This is a great answer from Model A"}
return {"response": "Meh, whatever"}
class ModelB(Model):
@weave.op
def predict(self, input_text: str):
if "Prefer model B" in input_text:
return {"response": "This is a thoughtful answer from Model B"}
return {"response": "I don't know"}
class PreferenceScorer(Scorer):
@weave.op
async def _get_other_model_output(self, example: dict) -> Any:
"""Get output from the other model for comparison.
Args:
example: The input example data to run through the other model
Returns:
The output from the other model
"""
other_model_result = await apply_model_async(
self.other_model,
example,
None,
)
if isinstance(other_model_result, ApplyModelError):
return None
return other_model_result.model_output
@weave.op
async def score(self, output: dict, input_text: str) -> dict:
"""Compare the output of the primary model with the other model.
Args:
output (dict): The output from the primary model.
input_text (str): The input text used to generate the outputs.
Returns:
dict: A flat dictionary containing the comparison result and reason.
"""
other_output = await self._get_other_model_output(
{"input_text": input_text}
)
if other_output is None:
return {"primary_is_better": False, "reason": "Other model failed"}
if "Prefer model A" in input_text:
primary_is_better = True
reason = "Model A gave a great answer"
else:
primary_is_better = False
reason = "Model B is preferred for this type of question"
return {"primary_is_better": primary_is_better, "reason": reason}
dataset = Dataset(
rows=[
{"input_text": "Prefer model A: Question 1"}, # Model A wins
{"input_text": "Prefer model A: Question 2"}, # Model A wins
{"input_text": "Prefer model B: Question 3"}, # Model B wins
{"input_text": "Prefer model B: Question 4"}, # Model B wins
]
)
model_a = ModelA()
model_b = ModelB()
pref_scorer = PreferenceScorer(other_model=model_b)
evaluation = Evaluation(dataset=dataset, scorers=[pref_scorer])
evaluation.evaluate(model_a)
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