from functools import singledispatch from typing import List, Optional import pandas as pd from .artifact import verbosed_fetch_artifact from .metric_utils import get_remote_metrics_endpoint, get_remote_metrics_names from .operator import SequentialOperator from .stream import MultiStream @singledispatch def evaluate( dataset, metric_names: List[str], compute_conf_intervals: Optional[bool] = False ): """Placeholder for overloading the function, supporting both dataframe input and list input.""" pass @evaluate.register def _( dataset: list, metric_names: List[str], compute_conf_intervals: Optional[bool] = False, ): global_scores = {} remote_metrics = get_remote_metrics_names() for metric_name in metric_names: if metric_name in remote_metrics: metric = verbosed_fetch_artifact(metric_name) metric_step = as_remote_metric(metric) else: # The SequentialOperator below will handle the load of the metric from its name metric_step = metric_name metrics_operator = SequentialOperator(steps=[metric_step]) if not compute_conf_intervals: first_step = metrics_operator.steps[0] first_step.disable_confidence_interval_calculation() multi_stream = MultiStream.from_iterables({"test": dataset}, copying=True) instances = list(metrics_operator(multi_stream)["test"]) for entry, instance in zip(dataset, instances): entry[metric_name] = instance["score"]["instance"]["score"] if len(instances) > 0: global_scores[metric_name] = instances[0]["score"].get("global", {}) return dataset, global_scores @evaluate.register def _( dataset: pd.DataFrame, metric_names: List[str], compute_conf_intervals: Optional[bool] = False, ): results, global_scores = evaluate( dataset.to_dict("records"), metric_names=metric_names, compute_conf_intervals=compute_conf_intervals, ) return pd.DataFrame(results), pd.DataFrame(global_scores) def as_remote_metric(metric): """Wrap a metric with a RemoteMetric. Currently supported is wrapping the inner metric within a MetricPipeline. """ from .metrics import MetricPipeline, RemoteMetric remote_metrics_endpoint = get_remote_metrics_endpoint() if isinstance(metric, MetricPipeline): metric = RemoteMetric.wrap_inner_metric_pipeline_metric( metric_pipeline=metric, remote_metrics_endpoint=remote_metrics_endpoint, ) else: raise ValueError( f"Unexpected remote metric type {type(metric)} for the metric named '{metric.__id__}'. " f"Remotely executed metrics should be MetricPipeline objects." ) return metric