# Copyright The Lightning team. # # Licensed under the Apache License, Version 2.0 (the "License"); # you may not use this file except in compliance with the License. # You may obtain a copy of the License at # # http://www.apache.org/licenses/LICENSE-2.0 # # Unless required by applicable law or agreed to in writing, software # distributed under the License is distributed on an "AS IS" BASIS, # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. # See the License for the specific language governing permissions and # limitations under the License. from collections.abc import Sequence from typing import Any, Callable, List, Optional, Tuple, Union, cast import torch from torch import Tensor from torch.nn import Module from torchmetrics.functional.text.bert import ( _postprocess_multiple_references, _preprocess_multiple_references, bert_score, ) from torchmetrics.functional.text.helper_embedding_metric import _preprocess_text from torchmetrics.metric import Metric from torchmetrics.utilities import rank_zero_warn from torchmetrics.utilities.checks import _SKIP_SLOW_DOCTEST, _try_proceed_with_timeout from torchmetrics.utilities.data import dim_zero_cat from torchmetrics.utilities.imports import _MATPLOTLIB_AVAILABLE, _TRANSFORMERS_GREATER_EQUAL_4_4 from torchmetrics.utilities.plot import _AX_TYPE, _PLOT_OUT_TYPE if not _MATPLOTLIB_AVAILABLE: __doctest_skip__ = ["BERTScore.plot"] # Default model recommended in the original implementation. _DEFAULT_MODEL: str = "roberta-large" if _SKIP_SLOW_DOCTEST and _TRANSFORMERS_GREATER_EQUAL_4_4: from transformers import AutoModel, AutoTokenizer def _download_model_for_bert_score() -> None: """Download intensive operations.""" AutoTokenizer.from_pretrained(_DEFAULT_MODEL, resume_download=True) AutoModel.from_pretrained(_DEFAULT_MODEL, resume_download=True) if not _try_proceed_with_timeout(_download_model_for_bert_score): __doctest_skip__ = ["BERTScore", "BERTScore.plot"] else: __doctest_skip__ = ["BERTScore", "BERTScore.plot"] def _get_input_dict(input_ids: List[Tensor], attention_mask: List[Tensor]) -> dict[str, Tensor]: """Create an input dictionary of ``input_ids`` and ``attention_mask`` for BERTScore calculation.""" return {"input_ids": torch.cat(input_ids), "attention_mask": torch.cat(attention_mask)} class BERTScore(Metric): """`Bert_score Evaluating Text Generation`_ for measuring text similarity. BERT leverages the pre-trained contextual embeddings from BERT and matches words in candidate and reference sentences by cosine similarity. It has been shown to correlate with human judgment on sentence-level and system-level evaluation. Moreover, BERTScore computes precision, recall, and F1 measure, which can be useful for evaluating different language generation tasks. This implementation follows the original implementation from `BERT_score`_. As input to ``forward`` and ``update`` the metric accepts the following input: - ``preds``: Predicted sentence(s). Can be one of: * A single predicted sentence as a string (``str``) * A sequence of predicted sentences (``Sequence[str]``) - ``target``: Target/reference sentence(s). Can be one of: * A single reference sentence as a string (``str``) * A sequence of reference sentences (``Sequence[str]``) * A sequence of sequences of reference sentences for multi-reference evaluation (``Sequence[Sequence[str]]``) As output of ``forward`` and ``compute`` the metric returns the following output: - ``score`` (:class:`~Dict`): A dictionary containing the keys ``precision``, ``recall`` and ``f1`` with corresponding values Args: preds (Union[str, Sequence[str]]): A single predicted sentence or a sequence of predicted sentences. target (Union[str, Sequence[str], Sequence[Sequence[str]]]): A single target sentence, a sequence of target sentences, or a sequence of sequences of target sentences for multiple references per prediction. model_type: A name or a model path used to load ``transformers`` pretrained model. num_layers: A layer of representation to use. all_layers: An indication of whether the representation from all model's layers should be used. If ``all_layers=True``, the argument ``num_layers`` is ignored. model: A user's own model. Must be of `torch.nn.Module` instance. user_tokenizer: A user's own tokenizer used with the own model. This must be an instance with the ``__call__`` method. This method must take an iterable of sentences (`List[str]`) and must return a python dictionary containing `"input_ids"` and `"attention_mask"` represented by :class:`~torch.Tensor`. It is up to the user's model of whether `"input_ids"` is a :class:`~torch.Tensor` of input ids or embedding vectors. This tokenizer must prepend an equivalent of ``[CLS]`` token and append an equivalent of ``[SEP]`` token as ``transformers`` tokenizer does. user_forward_fn: A user's own forward function used in a combination with ``user_model``. This function must take ``user_model`` and a python dictionary of containing ``"input_ids"`` and ``"attention_mask"`` represented by :class:`~torch.Tensor` as an input and return the model's output represented by the single :class:`~torch.Tensor`. verbose: An indication of whether a progress bar to be displayed during the embeddings' calculation. idf: An indication whether normalization using inverse document frequencies should be used. device: A device to be used for calculation. max_length: A maximum length of input sequences. Sequences longer than ``max_length`` are to be trimmed. batch_size: A batch size used for model processing. num_threads: A number of threads to use for a dataloader. return_hash: An indication of whether the correspodning ``hash_code`` should be returned. lang: A language of input sentences. rescale_with_baseline: An indication of whether bertscore should be rescaled with a pre-computed baseline. When a pretrained model from ``transformers`` model is used, the corresponding baseline is downloaded from the original ``bert-score`` package from `BERT_score`_ if available. In other cases, please specify a path to the baseline csv/tsv file, which must follow the formatting of the files from `BERT_score`_. baseline_path: A path to the user's own local csv/tsv file with the baseline scale. baseline_url: A url path to the user's own csv/tsv file with the baseline scale. truncation: An indication of whether the input sequences should be truncated to the ``max_length``. kwargs: Additional keyword arguments, see :ref:`Metric kwargs` for more info. Example: >>> from pprint import pprint >>> from torchmetrics.text.bert import BERTScore >>> preds = ["hello there", "general kenobi"] >>> target = ["hello there", "master kenobi"] >>> bertscore = BERTScore() >>> pprint(bertscore(preds, target)) {'f1': tensor([1.0000, 0.9961]), 'precision': tensor([1.0000, 0.9961]), 'recall': tensor([1.0000, 0.9961])} Example: >>> from pprint import pprint >>> from torchmetrics.text.bert import BERTScore >>> preds = ["hello there", "general kenobi"] >>> target = [["hello there", "master kenobi"], ["hello there", "master kenobi"]] >>> bertscore = BERTScore() >>> pprint(bertscore(preds, target)) {'f1': tensor([1.0000, 0.9961]), 'precision': tensor([1.0000, 0.9961]), 'recall': tensor([1.0000, 0.9961])} """ is_differentiable: bool = False higher_is_better: bool = True full_state_update: bool = False plot_lower_bound: float = 0.0 plot_upper_bound: float = 1.0 preds_input_ids: List[Tensor] preds_attention_mask: List[Tensor] target_input_ids: List[Tensor] target_attention_mask: List[Tensor] def __init__( self, model_name_or_path: Optional[str] = None, num_layers: Optional[int] = None, all_layers: bool = False, model: Optional[Module] = None, user_tokenizer: Optional[Any] = None, user_forward_fn: Optional[Callable[[Module, dict[str, Tensor]], Tensor]] = None, verbose: bool = False, idf: bool = False, device: Optional[Union[str, torch.device]] = None, max_length: int = 512, batch_size: int = 64, num_threads: int = 0, return_hash: bool = False, lang: str = "en", rescale_with_baseline: bool = False, baseline_path: Optional[str] = None, baseline_url: Optional[str] = None, truncation: bool = False, **kwargs: Any, ) -> None: super().__init__(**kwargs) self.model_name_or_path = model_name_or_path or _DEFAULT_MODEL self.num_layers = num_layers self.all_layers = all_layers self.model = model self.user_forward_fn = user_forward_fn self.verbose = verbose self.idf = idf self.embedding_device = device self.max_length = max_length self.batch_size = batch_size self.num_threads = num_threads self.return_hash = return_hash self.lang = lang self.rescale_with_baseline = rescale_with_baseline self.baseline_path = baseline_path self.baseline_url = baseline_url self.truncation = truncation self.ref_group_boundaries: Optional[List[Tuple[int, int]]] = None if user_tokenizer: self.tokenizer = user_tokenizer self.user_tokenizer = True else: if not _TRANSFORMERS_GREATER_EQUAL_4_4: raise ModuleNotFoundError( "`BERTScore` metric with default tokenizers requires `transformers` package be installed." " Either install with `pip install transformers>=4.4` or `pip install torchmetrics[text]`." ) from transformers import AutoTokenizer if model_name_or_path is None: rank_zero_warn( "The argument `model_name_or_path` was not specified while it is required when the default" " `transformers` model is used." f" It will use the default recommended model - {_DEFAULT_MODEL!r}." ) self.tokenizer = AutoTokenizer.from_pretrained(self.model_name_or_path) self.user_tokenizer = False self.add_state("preds_input_ids", [], dist_reduce_fx="cat") self.add_state("preds_attention_mask", [], dist_reduce_fx="cat") self.add_state("target_input_ids", [], dist_reduce_fx="cat") self.add_state("target_attention_mask", [], dist_reduce_fx="cat") def update( self, preds: Union[str, Sequence[str]], target: Union[str, Sequence[str], Sequence[Sequence[str]]] ) -> None: """Store predictions/references for computing BERT scores. It is necessary to store sentences in a tokenized form to ensure the DDP mode working. """ if isinstance(preds, str): preds = [preds] if isinstance(target, str): target = [target] if not isinstance(preds, list): preds = list(preds) if not isinstance(target, list): target = list(target) if len(preds) != len(target): raise ValueError( "Expected number of predicted and reference sentences to be the same, but got" f"{len(preds)} and {len(target)}" ) if isinstance(preds, list) and len(preds) > 0 and isinstance(target, list) and len(target) > 0: preds, target, self.ref_group_boundaries = _preprocess_multiple_references(preds, target) preds_dict, _ = _preprocess_text( preds, self.tokenizer, self.max_length, truncation=self.truncation, sort_according_length=False, own_tokenizer=self.user_tokenizer, ) target_dict, _ = _preprocess_text( cast(List[str], target), self.tokenizer, self.max_length, truncation=self.truncation, sort_according_length=False, own_tokenizer=self.user_tokenizer, ) self.preds_input_ids.append(preds_dict["input_ids"]) self.preds_attention_mask.append(preds_dict["attention_mask"]) self.target_input_ids.append(target_dict["input_ids"]) self.target_attention_mask.append(target_dict["attention_mask"]) def compute(self) -> dict[str, Union[Tensor, List[float], str]]: """Calculate BERT scores.""" preds = { "input_ids": dim_zero_cat(self.preds_input_ids), "attention_mask": dim_zero_cat(self.preds_attention_mask), } target = { "input_ids": dim_zero_cat(self.target_input_ids), "attention_mask": dim_zero_cat(self.target_attention_mask), } output_dict = bert_score( preds=preds, target=target, model_name_or_path=self.model_name_or_path, num_layers=self.num_layers, all_layers=self.all_layers, model=self.model, user_tokenizer=self.tokenizer if self.user_tokenizer else None, user_forward_fn=self.user_forward_fn, verbose=self.verbose, idf=self.idf, device=self.embedding_device, max_length=self.max_length, batch_size=self.batch_size, num_threads=self.num_threads, return_hash=self.return_hash, lang=self.lang, rescale_with_baseline=self.rescale_with_baseline, baseline_path=self.baseline_path, baseline_url=self.baseline_url, ) if ( self.ref_group_boundaries is not None and isinstance(output_dict["precision"], Tensor) and isinstance(output_dict["recall"], Tensor) and isinstance(output_dict["f1"], Tensor) ): output_dict["precision"], output_dict["recall"], output_dict["f1"] = _postprocess_multiple_references( output_dict["precision"], output_dict["recall"], output_dict["f1"], self.ref_group_boundaries ) return output_dict def plot( self, val: Optional[Union[Tensor, Sequence[Tensor]]] = None, ax: Optional[_AX_TYPE] = None ) -> _PLOT_OUT_TYPE: """Plot a single or multiple values from the metric. Args: val: Either a single result from calling `metric.forward` or `metric.compute` or a list of these results. If no value is provided, will automatically call `metric.compute` and plot that result. ax: An matplotlib axis object. If provided will add plot to that axis Returns: Figure and Axes object Raises: ModuleNotFoundError: If `matplotlib` is not installed .. plot:: :scale: 75 >>> # Example plotting a single value >>> from torchmetrics.text.bert import BERTScore >>> preds = ["hello there", "general kenobi"] >>> target = ["hello there", "master kenobi"] >>> metric = BERTScore() >>> metric.update(preds, target) >>> fig_, ax_ = metric.plot() .. plot:: :scale: 75 >>> # Example plotting multiple values >>> from torch import tensor >>> from torchmetrics.text.bert import BERTScore >>> preds = ["hello there", "general kenobi"] >>> target = ["hello there", "master kenobi"] >>> metric = BERTScore() >>> values = [] >>> for _ in range(10): ... val = metric(preds, target) ... val = {k: tensor(v).mean() for k,v in val.items()} # convert into single value per key ... values.append(val) >>> fig_, ax_ = metric.plot(values) """ if val is None: # default average score across sentences val = self.compute() # type: ignore val = {k: torch.tensor(v).mean() for k, v in val.items()} # type: ignore return self._plot(val, ax)