- 1.122.0 (latest)
- 1.121.0
- 1.120.0
- 1.119.0
- 1.118.0
- 1.117.0
- 1.95.1
- 1.94.0
- 1.93.1
- 1.92.0
- 1.91.0
- 1.90.0
- 1.89.0
- 1.88.0
- 1.87.0
- 1.86.0
- 1.85.0
- 1.84.0
- 1.83.0
- 1.82.0
- 1.81.0
- 1.80.0
- 1.79.0
- 1.78.0
- 1.77.0
- 1.76.0
- 1.75.0
- 1.74.0
- 1.73.0
- 1.72.0
- 1.71.1
- 1.70.0
- 1.69.0
- 1.68.0
- 1.67.1
- 1.66.0
- 1.65.0
- 1.63.0
- 1.62.0
- 1.60.0
- 1.59.0
PointwiseMetric(
*,
metric: str,
metric_prompt_template: typing.Union[
vertexai.evaluation.metrics.metric_prompt_template.PointwiseMetricPromptTemplate,
str,
]
)A Model-based Pointwise Metric.
A model-based evaluation metric that evaluate a single generative model's response.
For more details on when to use model-based pointwise metrics, see Evaluation methods and metrics.
Usage Examples:
```
candidate_model = GenerativeModel("gemini-1.5-pro")
eval_dataset = pd.DataFrame({
"prompt" : [...],
})
fluency_metric = PointwiseMetric(
metric="fluency",
metric_prompt_template=MetricPromptTemplateExamples.get_prompt_template('fluency'),
)
pointwise_eval_task = EvalTask(
dataset=eval_dataset,
metrics=[
fluency_metric,
MetricPromptTemplateExamples.Pointwise.GROUNDEDNESS,
],
)
pointwise_result = pointwise_eval_task.evaluate(
model=candidate_model,
)
```
Methods
PointwiseMetric
PointwiseMetric(
*,
metric: str,
metric_prompt_template: typing.Union[
vertexai.evaluation.metrics.metric_prompt_template.PointwiseMetricPromptTemplate,
str,
]
)Initializes a pointwise evaluation metric.