sentence_transformers.losses.CachedMultipleNegativesRankingLoss 源代码

from __future__ import annotations

from contextlib import nullcontext
from functools import partial
from typing import Any, Iterable, Iterator

import torch
import tqdm
from torch import Tensor, nn
from torch.utils.checkpoint import get_device_states, set_device_states

from sentence_transformers import SentenceTransformer, util


class RandContext:
    """
    Random-state context manager class. Reference: https://github.com/luyug/GradCache.

    This class will back up the pytorch's random state during initialization. Then when the context is activated,
    the class will set up the random state with the backed-up one.
    """

    def __init__(self, *tensors) -> None:
        self.fwd_cpu_state = torch.get_rng_state()
        self.fwd_gpu_devices, self.fwd_gpu_states = get_device_states(*tensors)

    def __enter__(self) -> None:
        self._fork = torch.random.fork_rng(devices=self.fwd_gpu_devices, enabled=True)
        self._fork.__enter__()
        torch.set_rng_state(self.fwd_cpu_state)
        set_device_states(self.fwd_gpu_devices, self.fwd_gpu_states)

    def __exit__(self, exc_type, exc_val, exc_tb) -> None:
        self._fork.__exit__(exc_type, exc_val, exc_tb)
        self._fork = None


def _backward_hook(
    grad_output: Tensor,
    sentence_features: Iterable[dict[str, Tensor]],
    loss_obj: CachedMultipleNegativesRankingLoss,
) -> None:
    """A backward hook to backpropagate the cached gradients mini-batch by mini-batch."""
    assert loss_obj.cache is not None
    assert loss_obj.random_states is not None
    with torch.enable_grad():
        for sentence_feature, grad, random_states in zip(sentence_features, loss_obj.cache, loss_obj.random_states):
            for (reps_mb, _), grad_mb in zip(
                loss_obj.embed_minibatch_iter(
                    sentence_feature=sentence_feature,
                    with_grad=True,
                    copy_random_state=False,
                    random_states=random_states,
                ),
                grad,
            ):
                surrogate = torch.dot(reps_mb.flatten(), grad_mb.flatten()) * grad_output
                surrogate.backward()


[文档] class CachedMultipleNegativesRankingLoss(nn.Module): def __init__( self, model: SentenceTransformer, scale: float = 20.0, similarity_fct: callable[[Tensor, Tensor], Tensor] = util.cos_sim, mini_batch_size: int = 32, show_progress_bar: bool = False, ) -> None: """ Boosted version of MultipleNegativesRankingLoss (https://arxiv.org/pdf/1705.00652.pdf) by GradCache (https://arxiv.org/pdf/2101.06983.pdf). Constrastive learning (here our MNRL loss) with in-batch negatives is usually hard to work with large batch sizes due to (GPU) memory limitation. Even with batch-scaling methods like gradient-scaling, it cannot work either. This is because the in-batch negatives make the data points within the same batch non-independent and thus the batch cannot be broke down into mini-batches. GradCache is a smart way to solve this problem. It achieves the goal by dividing the computation into two stages of embedding and loss calculation, which both can be scaled by mini-batches. As a result, memory of constant size (e.g. that works with batch size = 32) can now process much larger batches (e.g. 65536). In detail: (1) It first does a quick embedding step without gradients/computation graphs to get all the embeddings; (2) Calculate the loss, backward up to the embeddings and cache the gradients wrt. to the embeddings; (3) A 2nd embedding step with gradients/computation graphs and connect the cached gradients into the backward chain. Notes: All steps are done with mini-batches. In the original implementation of GradCache, (2) is not done in mini-batches and requires a lot memory when batch size large. One drawback is about the speed. GradCache will sacrifice around 20% computation time according to the paper. Args: model: SentenceTransformer model scale: Output of similarity function is multiplied by scale value similarity_fct: similarity function between sentence embeddings. By default, cos_sim. Can also be set to dot product (and then set scale to 1) mini_batch_size: Mini-batch size for the forward pass, this denotes how much memory is actually used during training and evaluation. The larger the mini-batch size, the more memory efficient the training is, but the slower the training will be. It's recommended to set it as high as your GPU memory allows. The default value is 32. show_progress_bar: If True, a progress bar for the mini-batches is shown during training. The default is False. References: - Efficient Natural Language Response Suggestion for Smart Reply, Section 4.4: https://arxiv.org/pdf/1705.00652.pdf - Scaling Deep Contrastive Learning Batch Size under Memory Limited Setup: https://arxiv.org/pdf/2101.06983.pdf Requirements: 1. (anchor, positive) pairs or (anchor, positive, negative pairs) 2. Should be used with large batch sizes for superior performance, but has slower training time than :class:`MultipleNegativesRankingLoss` Inputs: +---------------------------------------+--------+ | Texts | Labels | +=======================================+========+ | (anchor, positive) pairs | none | +---------------------------------------+--------+ | (anchor, positive, negative) triplets | none | +---------------------------------------+--------+ Recommendations: - Use ``BatchSamplers.NO_DUPLICATES`` (:class:`docs <sentence_transformers.training_args.BatchSamplers>`) to ensure that no in-batch negatives are duplicates of the anchor or positive samples. Relations: - Equivalent to :class:`MultipleNegativesRankingLoss`, but with caching that allows for much higher batch sizes (and thus better performance) without extra memory usage. This loss also trains roughly 2x to 2.4x slower than :class:`MultipleNegativesRankingLoss`. Example: :: from sentence_transformers import SentenceTransformer, SentenceTransformerTrainer, losses from datasets import Dataset model = SentenceTransformer("microsoft/mpnet-base") train_dataset = Dataset.from_dict({ "anchor": ["It's nice weather outside today.", "He drove to work."], "positive": ["It's so sunny.", "He took the car to the office."], }) loss = losses.CachedGISTEmbedLoss(model, mini_batch_size=64) trainer = SentenceTransformerTrainer( model=model, train_dataset=train_dataset, loss=loss, ) trainer.train() """ super().__init__() self.model = model self.scale = scale self.similarity_fct = similarity_fct self.cross_entropy_loss = nn.CrossEntropyLoss() self.mini_batch_size = mini_batch_size self.cache: list[list[Tensor]] | None = None self.random_states: list[list[RandContext]] | None = None self.show_progress_bar = show_progress_bar def embed_minibatch( self, sentence_feature: dict[str, Tensor], begin: int, end: int, with_grad: bool, copy_random_state: bool, random_state: RandContext | None = None, ) -> tuple[Tensor, RandContext | None]: """Do forward pass on a minibatch of the input features and return corresponding embeddings.""" grad_context = nullcontext if with_grad else torch.no_grad random_state_context = nullcontext() if random_state is None else random_state sentence_feature_minibatch = {k: v[begin:end] for k, v in sentence_feature.items()} with random_state_context: with grad_context(): random_state = RandContext(*sentence_feature_minibatch.values()) if copy_random_state else None reps = self.model(sentence_feature_minibatch)["sentence_embedding"] # (mbsz, hdim) return reps, random_state def embed_minibatch_iter( self, sentence_feature: dict[str, Tensor], with_grad: bool, copy_random_state: bool, random_states: list[RandContext] | None = None, ) -> Iterator[tuple[Tensor, RandContext | None]]: """Do forward pass on all the minibatches of the input features and yield corresponding embeddings.""" input_ids: Tensor = sentence_feature["input_ids"] bsz, _ = input_ids.shape for i, b in enumerate( tqdm.trange( 0, bsz, self.mini_batch_size, desc="Embed mini-batches", disable=not self.show_progress_bar, ) ): e = b + self.mini_batch_size reps, random_state = self.embed_minibatch( sentence_feature=sentence_feature, begin=b, end=e, with_grad=with_grad, copy_random_state=copy_random_state, random_state=None if random_states is None else random_states[i], ) yield reps, random_state # reps: (mbsz, hdim) def calculate_loss_and_cache_gradients(self, reps: list[list[Tensor]]) -> Tensor: """Calculate the cross-entropy loss and cache the gradients wrt. the embeddings.""" embeddings_a = torch.cat(reps[0]) # (bsz, hdim) embeddings_b = torch.cat([torch.cat(r) for r in reps[1:]]) # ((1 + nneg) * bsz, hdim) batch_size = len(embeddings_a) labels = torch.tensor( range(batch_size), dtype=torch.long, device=embeddings_a.device ) # (bsz, (1 + nneg) * bsz) Example a[i] should match with b[i] losses: list[torch.Tensor] = [] for b in tqdm.trange( 0, batch_size, self.mini_batch_size, desc="Preparing caches", disable=not self.show_progress_bar, ): e = b + self.mini_batch_size scores: Tensor = self.similarity_fct(embeddings_a[b:e], embeddings_b) * self.scale loss_mbatch: torch.Tensor = self.cross_entropy_loss(scores, labels[b:e]) * len(scores) / batch_size loss_mbatch.backward() losses.append(loss_mbatch.detach()) loss = sum(losses).requires_grad_() self.cache = [[r.grad for r in rs] for rs in reps] # e.g. 3 * bsz/mbsz * (mbsz, hdim) return loss def calculate_loss(self, reps: list[list[Tensor]]) -> Tensor: """Calculate the cross-entropy loss. No need to cache the gradients.""" embeddings_a = torch.cat(reps[0]) # (bsz, hdim) embeddings_b = torch.cat([torch.cat(r) for r in reps[1:]]) # ((1 + nneg) * bsz, hdim) batch_size = len(embeddings_a) labels = torch.tensor( range(batch_size), dtype=torch.long, device=embeddings_a.device ) # (bsz, (1 + nneg) * bsz) Example a[i] should match with b[i] losses: list[torch.Tensor] = [] for b in tqdm.trange( 0, batch_size, self.mini_batch_size, desc="Preparing caches", disable=not self.show_progress_bar, ): e = b + self.mini_batch_size scores: Tensor = self.similarity_fct(embeddings_a[b:e], embeddings_b) * self.scale loss_mbatch: torch.Tensor = self.cross_entropy_loss(scores, labels[b:e]) * len(scores) / batch_size losses.append(loss_mbatch) loss = sum(losses) return loss def forward(self, sentence_features: Iterable[dict[str, Tensor]], labels: Tensor) -> Tensor: # Step (1): A quick embedding step without gradients/computation graphs to get all the embeddings reps = [] self.random_states = [] # Copy random states to guarantee exact reproduction of the embeddings during the second forward pass, i.e. step (3) for sentence_feature in sentence_features: reps_mbs = [] random_state_mbs = [] for reps_mb, random_state in self.embed_minibatch_iter( sentence_feature=sentence_feature, with_grad=False, copy_random_state=True, ): reps_mbs.append(reps_mb.detach().requires_grad_()) random_state_mbs.append(random_state) reps.append(reps_mbs) self.random_states.append(random_state_mbs) if torch.is_grad_enabled(): # Step (2): Calculate the loss, backward up to the embeddings and cache the gradients wrt. to the embeddings loss = self.calculate_loss_and_cache_gradients(reps) # Step (3): A 2nd embedding step with gradients/computation graphs and connect the cached gradients into the backward chain loss.register_hook(partial(_backward_hook, sentence_features=sentence_features, loss_obj=self)) else: # If grad is not enabled (e.g. in evaluation), then we don't have to worry about the gradients or backward hook loss = self.calculate_loss(reps) return loss def get_config_dict(self) -> dict[str, Any]: return {"scale": self.scale, "similarity_fct": self.similarity_fct.__name__} @property def citation(self) -> str: return """ @misc{gao2021scaling, title={Scaling Deep Contrastive Learning Batch Size under Memory Limited Setup}, author={Luyu Gao and Yunyi Zhang and Jiawei Han and Jamie Callan}, year={2021}, eprint={2101.06983}, archivePrefix={arXiv}, primaryClass={cs.LG} } """