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from typing import Dict, Iterable, List |
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import evaluate |
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from datasets import Features, Value |
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from .artifact import __file__ as _ |
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from .blocks import __file__ as _ |
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from .card import __file__ as _ |
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from .catalog import __file__ as _ |
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from .collections import __file__ as _ |
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from .dataclass import __file__ as _ |
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from .dict_utils import __file__ as _ |
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from .file_utils import __file__ as _ |
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from .formats import __file__ as _ |
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from .fusion import __file__ as _ |
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from .generator_utils import __file__ as _ |
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from .hf_utils import __file__ as _ |
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from .instructions import __file__ as _ |
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from .load import __file__ as _ |
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from .loaders import __file__ as _ |
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from .logging_utils import __file__ as _ |
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from .metrics import __file__ as _ |
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from .normalizers import __file__ as _ |
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from .operator import (MultiStreamOperator, SequentialOperator, |
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SequentialOperatorInitilizer, StreamInitializerOperator) |
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from .operator import __file__ as _ |
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from .operators import (Apply, ApplyMetric, ApplyOperatorsField, |
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ApplyStreamOperatorsField, FlattenInstances, |
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MergeStreams, SplitByValue) |
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from .operators import __file__ as _ |
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from .processors import __file__ as _ |
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from .random_utils import __file__ as _ |
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from .recipe import __file__ as _ |
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from .register import __file__ as _ |
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from .register import _reset_env_local_catalogs, register_all_artifacts |
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from .schema import UNITXT_DATASET_SCHEMA |
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from .schema import __file__ as _ |
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from .split_utils import __file__ as _ |
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from .splitters import __file__ as _ |
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from .standard import __file__ as _ |
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from .stream import MultiStream, Stream |
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from .stream import __file__ as _ |
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from .task import __file__ as _ |
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from .templates import __file__ as _ |
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from .text_utils import __file__ as _ |
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from .type_utils import __file__ as _ |
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from .utils import __file__ as _ |
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from .validate import __file__ as _ |
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from .version import __file__ as _ |
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class MultiStreamScoreMean(MultiStreamOperator): |
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def aggegate_results(self, multi_stream: MultiStream): |
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scores = [] |
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for stream in multi_stream.values(): |
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instance = stream.peek() |
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scores.append(instance["score"]["global"]["score"]) |
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from statistics import mean |
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return mean(scores) |
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def spread_results(self, stream: Stream, score: float): |
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for instance in stream: |
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instance["score"]["global"]["groups_mean_score"] = score |
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yield instance |
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def spread_results_one_stream(self, stream: Stream): |
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for instance in stream: |
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instance["score"]["global"]["groups_mean_score"] = instance["score"][ |
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"global" |
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]["score"] |
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yield instance |
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def process(self, multi_stream: MultiStream) -> MultiStream: |
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result = {} |
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if len(multi_stream) == 1: |
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for stream_name, stream in multi_stream.items(): |
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result[stream_name] = Stream( |
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self.spread_results_one_stream, gen_kwargs={"stream": stream} |
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) |
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return MultiStream(result) |
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mean_score = self.aggegate_results(multi_stream) |
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result = {} |
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for stream_name, stream in multi_stream.items(): |
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result[stream_name] = Stream( |
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self.spread_results, gen_kwargs={"stream": stream, "score": mean_score} |
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) |
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return MultiStream(result) |
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class FromPredictionsAndOriginalData(StreamInitializerOperator): |
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def zip(self, predictions, references): |
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for prediction, original in zip(predictions, references): |
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yield {**original, "prediction": prediction} |
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def process( |
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self, predictions: List[str], references: Iterable, split_name: str = "all" |
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) -> MultiStream: |
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return MultiStream( |
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{ |
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split_name: Stream( |
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self.zip, |
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gen_kwargs={"predictions": predictions, "references": references}, |
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) |
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} |
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) |
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def _from_key_value_pairs(key_value_list: Dict[str, list]) -> Dict[str, str]: |
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return dict(zip(key_value_list["key"], key_value_list["value"])) |
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class MetricRecipe(SequentialOperatorInitilizer): |
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calc_confidence_intervals: bool = True |
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def prepare(self): |
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register_all_artifacts() |
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self.steps = [ |
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FromPredictionsAndOriginalData(), |
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Apply( |
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"additional_inputs", |
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function=_from_key_value_pairs, |
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to_field="additional_inputs", |
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), |
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ApplyOperatorsField( |
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inputs_fields=["prediction", "references"], |
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fields_to_treat_as_list=["references"], |
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operators_field="postprocessors", |
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default_operators=["processors.to_string_stripped"], |
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), |
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SplitByValue(["group"]), |
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ApplyMetric( |
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"metrics", |
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calc_confidence_intervals=self.calc_confidence_intervals, |
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), |
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MultiStreamScoreMean(), |
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MergeStreams(), |
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] |
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UNITXT_METRIC_SCHEMA = Features( |
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{"predictions": Value("string"), "references": dict(UNITXT_DATASET_SCHEMA)} |
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) |
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def _compute( |
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predictions: List[str], |
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references: Iterable, |
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flatten: bool = False, |
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split_name: str = "all", |
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calc_confidence_intervals: bool = True, |
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): |
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_reset_env_local_catalogs() |
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register_all_artifacts() |
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recipe = MetricRecipe(calc_confidence_intervals=calc_confidence_intervals) |
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multi_stream = recipe( |
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predictions=predictions, references=references, split_name=split_name |
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) |
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if flatten: |
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operator = FlattenInstances() |
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multi_stream = operator(multi_stream) |
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stream = multi_stream[split_name] |
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return list(stream) |
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class Metric(evaluate.Metric): |
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calc_confidence_intervals: bool = True |
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def _info(self): |
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return evaluate.MetricInfo( |
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description="_DESCRIPTION", |
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citation="_CITATION", |
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features=UNITXT_METRIC_SCHEMA, |
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codebase_urls=["https://"], |
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reference_urls=[ |
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"https://", |
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"https://", |
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], |
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) |
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def _compute( |
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self, |
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predictions: List[str], |
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references: Iterable, |
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flatten: bool = False, |
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split_name: str = "all", |
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): |
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try: |
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from unitxt.dataset import \ |
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get_dataset_artifact as get_dataset_artifact_installed |
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unitxt_installed = True |
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except ImportError: |
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unitxt_installed = False |
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if unitxt_installed: |
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from unitxt.metric import _compute as _compute_installed |
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return _compute_installed( |
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predictions=predictions, |
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references=references, |
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flatten=flatten, |
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split_name=split_name, |
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calc_confidence_intervals=self.calc_confidence_intervals, |
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) |
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return _compute( |
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predictions=predictions, |
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references=references, |
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flatten=flatten, |
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split_name=split_name, |
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calc_confidence_intervals=self.calc_confidence_intervals, |
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) |
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