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fairseq-a54021305d6b3c4c5959ac9395135f63202db8f1
/examples
/adaptive_span
/adaptive_span_loss.py
# Copyright (c) Facebook, Inc. and its affiliates. | |
# | |
# This source code is licensed under the MIT license found in the | |
# LICENSE file in the root directory of this source tree. | |
import math | |
from dataclasses import dataclass | |
import torch.nn.functional as F | |
from fairseq import metrics, utils | |
from fairseq.criterions import register_criterion | |
from fairseq.criterions.cross_entropy import CrossEntropyCriterion | |
from fairseq.dataclass import FairseqDataclass | |
from omegaconf import II | |
class AdaptiveSpanCriterionConfig(FairseqDataclass): | |
sentence_avg: bool = II("optimization.sentence_avg") | |
class AdaptiveSpanCriterion(CrossEntropyCriterion): | |
def __init__(self, task, sentence_avg): | |
super().__init__(task, sentence_avg) | |
def forward(self, model, sample, reduce=True): | |
"""Compute the loss for the given sample. | |
Returns a tuple with three elements: | |
1) the loss here is summed, different from the adaptive span code | |
2) the sample size, which is used as the denominator for the gradient | |
3) logging outputs to display while training | |
""" | |
net_output = model(**sample["net_input"]) | |
loss, aux_loss, avg_span, max_span = self.compute_loss( | |
model, net_output, sample, reduce=reduce | |
) | |
sample_size = ( | |
sample["target"].size(0) if self.sentence_avg else sample["ntokens"] | |
) | |
loss /= sample_size | |
total_loss = loss + aux_loss | |
sample_size = 1 | |
logging_output = { | |
"loss": loss.data, | |
"ntokens": sample["ntokens"], | |
"nsentences": sample["target"].size(0), | |
"sample_size": sample_size, | |
"total_loss": total_loss.data, | |
"avg_span": avg_span * sample_size, | |
"max_span": max_span * sample_size, | |
} | |
return total_loss, sample_size, logging_output | |
def compute_loss(self, model, net_output, sample, reduce=True): | |
loss, _ = super().compute_loss(model, net_output, sample, reduce) | |
aux_loss = model.get_aux_loss() | |
avg_span = model.get_current_avg_span() | |
max_span = model.get_current_max_span() | |
return loss, aux_loss, avg_span, max_span | |
def reduce_metrics(logging_outputs) -> None: | |
"""Aggregate logging outputs from data parallel training.""" | |
loss_sum = sum(log.get("loss", 0) for log in logging_outputs) | |
ntokens = sum(log.get("ntokens", 0) for log in logging_outputs) | |
sample_size = sum(log.get("sample_size", 0) for log in logging_outputs) | |
total_loss_sum = sum(log.get("total_loss", 0) for log in logging_outputs) | |
avg_span_sum = sum(log.get("avg_span", 0) for log in logging_outputs) | |
max_span_sum = sum(log.get("max_span", 0) for log in logging_outputs) | |
# we divide by log(2) to convert the loss from base e to base 2 | |
metrics.log_scalar( | |
"loss", loss_sum / sample_size / math.log(2), sample_size, round=3 | |
) | |
metrics.log_scalar("avg_span", avg_span_sum / sample_size, sample_size, round=3) | |
metrics.log_scalar("max_span", max_span_sum / sample_size, sample_size, round=3) | |
# total loss contains the L1 norm on adaptive-span | |
metrics.log_scalar( | |
"total_loss", | |
total_loss_sum / sample_size / math.log(2), | |
sample_size, | |
round=3, | |
) | |
if sample_size != ntokens: | |
metrics.log_scalar( | |
"nll_loss", loss_sum / ntokens / math.log(2), ntokens, round=3 | |
) | |
metrics.log_derived( | |
"ppl", lambda meters: utils.get_perplexity(meters["nll_loss"].avg) | |
) | |
else: | |
metrics.log_derived( | |
"ppl", lambda meters: utils.get_perplexity(meters["loss"].avg) | |
) | |
def logging_outputs_can_be_summed() -> bool: | |
""" | |
Whether the logging outputs returned by `forward` can be summed | |
across workers prior to calling `reduce_metrics`. Setting this | |
to True will improves distributed training speed. | |
""" | |
return True | |