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data / metrics.py
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import uuid
from abc import ABC, abstractmethod
from dataclasses import dataclass, field
from typing import Any, Dict, Generator, List, Optional
import evaluate
import nltk
import numpy
from .operator import (
MultiStreamOperator,
SequntialOperator,
SingleStreamOperator,
StreamingOperator,
StreamInstanceOperator,
)
from .operators import CopyFields
from .stream import MultiStream, Stream
nltk.download("punkt")
def absrtact_factory():
return {}
def abstract_field():
return field(default_factory=absrtact_factory)
class UpdateStream(StreamInstanceOperator):
update: dict
def process(self, instance: Dict[str, Any], stream_name: str = None) -> Dict[str, Any]:
instance.update(self.update)
return instance
# TODO: currently we have two classes with this name. metric.Metric and matrics.Metric...
class Metric(ABC):
@property
@abstractmethod
def main_score(self):
pass
class GlobalMetric(SingleStreamOperator, Metric):
def process(self, stream: Stream, stream_name: str = None) -> Generator:
references = []
predictions = []
global_score = {}
instances = []
for instance in stream:
if "score" not in instance:
instance["score"] = {"global": global_score, "instance": {}}
else:
global_score = instance["score"]["global"]
refs, pred = instance["references"], instance["prediction"]
instance_score = self._compute([refs], [pred])
instance["score"]["instance"].update(instance_score)
references.append(refs)
predictions.append(pred)
instances.append(instance)
result = self._compute(references, predictions)
global_score.update(result)
for instance in instances:
instance["score"]["global"] = global_score
yield instance
def _compute(self, references: List[List[str]], predictions: List[str]) -> dict:
result = self.compute(references, predictions)
result["score"] = result[self.main_score]
return result
@abstractmethod
def compute(self, references: List[List[str]], predictions: List[str]) -> dict:
pass
class InstanceMetric(SingleStreamOperator, Metric):
implemented_reductions: List[str] = field(default_factory=lambda: ["mean"])
@property
@abstractmethod
def reduction_map(self) -> dict:
pass
def process(self, stream: Stream, stream_name: str = None) -> Generator:
global_score = {}
instances = []
for instance in stream:
refs, pred = instance["references"], instance["prediction"]
instance_score = self._compute(refs, pred)
if "score" not in instance:
instance["score"] = {"global": global_score, "instance": {}}
else:
global_score = instance["score"]["global"]
instance["score"]["instance"].update(instance_score)
instances.append(instance)
for reduction, fields in self.reduction_map.items():
assert (
reduction in self.implemented_reductions
), f"Reduction {reduction} is not implemented, use one of {self.implemented_reductions}"
if reduction == "mean":
from statistics import mean
for field in fields:
global_score[field] = mean([instance["score"]["instance"][field] for instance in instances])
if field == self.main_score:
global_score["score"] = global_score[field]
for instance in instances:
yield instance
def _compute(self, references: List[List[str]], predictions: List[str]) -> dict:
result = self.compute(references=references, predictions=predictions)
result["score"] = result[self.main_score]
return result
@abstractmethod
def compute(self, references: List[str], prediction: str) -> dict:
pass
class Squad(GlobalMetric):
_metric = None
reduction_map = {"mean": ["f1"]}
main_score = "f1"
metric = "squad"
def prepare(self):
super(Squad, self).prepare()
self._metric = evaluate.load(self.metric)
def compute(self, references: List[List[str]], predictions: List[str]) -> dict:
ids = [str(uuid.uuid4()).replace("-", "") for _ in range(len(predictions))]
formatted_predictions = [
{"prediction_text": prediction, "id": ids[i]} for i, prediction in enumerate(predictions)
]
formatted_references = [
{"answers": {"answer_start": [-1], "text": reference}, "id": ids[i]}
for i, reference in enumerate(references)
]
return self._metric.compute(predictions=formatted_predictions, references=formatted_references)
class SingleReferenceInstanceMetric(InstanceMetric):
def _compute(self, references: List[str], prediction: str) -> dict:
result = self.compute(references[0], prediction)
result["score"] = result[self.main_score]
return result
@abstractmethod
def compute(self, reference, prediction: str) -> dict:
pass
class Accuracy(SingleReferenceInstanceMetric):
reduction_map = {"mean": ["accuracy"]}
main_score = "accuracy"
def compute(self, reference, prediction: str) -> dict:
return {"accuracy": float(str(reference) == str(prediction))}
class MetricPipeline(MultiStreamOperator, Metric):
main_score: str = None
preprocess_steps: Optional[List[StreamingOperator]] = field(default_factory=list)
postpreprocess_steps: Optional[List[StreamingOperator]] = field(default_factory=list)
metric: Metric = None
def verify(self):
assert self.main_score is not None, "main_score is not set"
def prepare(self):
super().prepare()
self.prepare_score = CopyFields(
field_to_field=[
[f"score/instance/{self.main_score}", "score/instance/score"],
[f"score/global/{self.main_score}", "score/global/score"],
],
use_query=True,
)
def process(self, multi_stream: MultiStream) -> MultiStream:
for step in self.preprocess_steps:
multi_stream = step(multi_stream)
multi_stream = self.metric(multi_stream)
for step in self.postpreprocess_steps:
multi_stream = step(multi_stream)
multi_stream = self.prepare_score(multi_stream)
return multi_stream
class HuggingfaceMetric(GlobalMetric):
metric_name: str = None
main_score: str = None
scale: float = 1.0
def prepare(self):
super().prepare()
self.metric = evaluate.load(self.metric_name)
def compute(self, references: List[List[str]], predictions: List[str]) -> dict:
result = self.metric.compute(predictions=predictions, references=references)
if self.scale != 1.0:
for key in result:
if isinstance(result[key], float):
result[key] /= self.scale
return result
class F1(GlobalMetric):
_metric = None
main_score = "f1_macro"
average = None # Report per class then aggregate by mean
metric = "f1"
def prepare(self):
super(F1, self).prepare()
self._metric = evaluate.load(self.metric)
def get_str_id(self, str):
if str not in self.str_to_id:
id = len(self.str_to_id)
self.str_to_id[str] = id
self.id_to_str[id] = str
return self.str_to_id[str]
def compute(self, references: List[List[str]], predictions: List[str]) -> dict:
assert all(
len(reference) == 1 for reference in references
), "One single reference per predictition are allowed in F1 metric"
self.str_to_id = {}
self.id_to_str = {}
formatted_references = [self.get_str_id(reference[0]) for reference in references]
unique_labels = self.str_to_id.keys()
formatted_predictions = [self.get_str_id(prediction) for prediction in predictions]
labels = list(set(formatted_references))
result = self._metric.compute(
predictions=formatted_predictions, references=formatted_references, labels=labels, average=self.average
)
if isinstance(result["f1"], numpy.ndarray):
from statistics import mean
final_result = {self.main_score: mean(result["f1"])}
for i, label in enumerate(labels):
final_result["f1_" + self.id_to_str[label]] = result["f1"][i]
else:
final_result = {self.main_score: result["f1"]}
return final_result
class F1Micro(F1):
main_score = "f1_micro"
average = "micro"
class F1Macro(F1):
main_score = "f1_macro"
class F1MultiLabel(GlobalMetric):
_metric = None
main_score = "f1_macro"
average = None # Report per class then aggregate by mean
seperator = ","
def prepare(self):
super(F1MultiLabel, self).prepare()
self._metric = evaluate.load("f1", "multilabel")
def add_str_to_id(self, str):
if not str in self.str_to_id:
id = len(self.str_to_id)
self.str_to_id[str] = id
self.id_to_str[id] = str
return
def get_one_hot_vector(self, labels: List[str]):
result = [0] * len(self.str_to_id)
for label in labels:
if label in self.str_to_id:
result[self.str_to_id[label]] = 1
return result
def compute(self, references: List[List[str]], predictions: List[str]) -> dict:
self.str_to_id = {}
self.id_to_str = {}
labels = list(set([label for reference in references for label in reference]))
for label in labels:
assert (
not self.seperator in label
), "Reference label (f{label}) can not contain multi label seperator (f{self.seperator}) "
self.add_str_to_id(label)
formatted_references = [self.get_one_hot_vector(reference) for reference in references]
split_predictions = [
[label.strip() for label in prediction.split(self.seperator)] for prediction in predictions
]
formatted_predictions = [self.get_one_hot_vector(prediction) for prediction in split_predictions]
result = self._metric.compute(
predictions=formatted_predictions, references=formatted_references, average=self.average
)
if isinstance(result["f1"], numpy.ndarray):
from statistics import mean
final_result = {self.main_score: mean(result["f1"])}
for i, label in enumerate(labels):
final_result["f1_" + label] = result["f1"][i]
else:
final_result = {self.main_score: result["f1"]}
return final_result
class F1MicroMultiLabel(F1MultiLabel):
main_score = "f1_micro"
average = "micro"
class F1MacroMultiLabel(F1MultiLabel):
main_score = "f1_macro"
average = None
class Rouge(HuggingfaceMetric):
metric_name = "rouge"
main_score = "rougeL"
scale = 1.0
def compute(self, references, predictions):
predictions = ["\n".join(nltk.sent_tokenize(prediction.strip())) for prediction in predictions]
references = [["\n".join(nltk.sent_tokenize(r.strip())) for r in reference] for reference in references]
return super().compute(references, predictions)
class Bleu(HuggingfaceMetric):
metric_name = "bleu"
main_score = "bleu"
scale = 1.0