2022-05-17 14:13:56 +08:00

271 lines
9.2 KiB
Python

# Copyright 2021 Xiaomi Corp. (authors: Fangjun Kuang, Wei Kang)
#
# See ../../../../LICENSE for clarification regarding multiple authors
#
# 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.
import k2
import torch
from torch import Tensor
import torch.nn as nn
from encoder_interface import EncoderInterface
from scaling import ScaledLinear
from diagonalize import get_diag_covar_in, apply_transformation_in, get_transformation, apply_transformation_in, apply_transformation_out
from icefall.utils import add_sos
class Transducer(nn.Module):
"""It implements https://arxiv.org/pdf/1211.3711.pdf
"Sequence Transduction with Recurrent Neural Networks"
"""
def __init__(
self,
encoder: EncoderInterface,
decoder: nn.Module,
joiner: nn.Module,
encoder_dim: int,
decoder_dim: int,
joiner_dim: int,
vocab_size: int,
):
"""
Args:
encoder:
It is the transcription network in the paper. Its accepts
two inputs: `x` of (N, T, encoder_dim) and `x_lens` of shape (N,).
It returns two tensors: `logits` of shape (N, T, encoder_dm) and
`logit_lens` of shape (N,).
decoder:
It is the prediction network in the paper. Its input shape
is (N, U) and its output shape is (N, U, decoder_dim).
It should contain one attribute: `blank_id`.
joiner:
It has two inputs with shapes: (N, T, encoder_dim) and (N, U, decoder_dim).
Its output shape is (N, T, U, vocab_size). Note that its output contains
unnormalized probs, i.e., not processed by log-softmax.
"""
super().__init__()
assert isinstance(encoder, EncoderInterface), type(encoder)
assert hasattr(decoder, "blank_id")
self.encoder = encoder
self.decoder = decoder
self.joiner = joiner
self.simple_am_proj = ScaledLinear(
encoder_dim, vocab_size, initial_speed=0.5
)
self.simple_lm_proj = ScaledLinear(decoder_dim, vocab_size)
def forward(
self,
x: torch.Tensor,
x_lens: torch.Tensor,
y: k2.RaggedTensor,
prune_range: int = 5,
am_scale: float = 0.0,
lm_scale: float = 0.0,
warmup: float = 1.0,
) -> torch.Tensor:
"""
Args:
x:
A 3-D tensor of shape (N, T, C).
x_lens:
A 1-D tensor of shape (N,). It contains the number of frames in `x`
before padding.
y:
A ragged tensor with 2 axes [utt][label]. It contains labels of each
utterance.
prune_range:
The prune range for rnnt loss, it means how many symbols(context)
we are considering for each frame to compute the loss.
am_scale:
The scale to smooth the loss with am (output of encoder network)
part
lm_scale:
The scale to smooth the loss with lm (output of predictor network)
part
warmup:
A value warmup >= 0 that determines which modules are active, values
warmup > 1 "are fully warmed up" and all modules will be active.
Returns:
Return the transducer loss.
Note:
Regarding am_scale & lm_scale, it will make the loss-function one of
the form:
lm_scale * lm_probs + am_scale * am_probs +
(1-lm_scale-am_scale) * combined_probs
"""
assert x.ndim == 3, x.shape
assert x_lens.ndim == 1, x_lens.shape
assert y.num_axes == 2, y.num_axes
assert x.size(0) == x_lens.size(0) == y.dim0
encoder_out, x_lens = self.encoder(x, x_lens, warmup=warmup)
assert torch.all(x_lens > 0)
# Now for the decoder, i.e., the prediction network
row_splits = y.shape.row_splits(1)
y_lens = row_splits[1:] - row_splits[:-1]
blank_id = self.decoder.blank_id
sos_y = add_sos(y, sos_id=blank_id)
# sos_y_padded: [B, S + 1], start with SOS.
sos_y_padded = sos_y.pad(mode="constant", padding_value=blank_id)
# decoder_out: [B, S + 1, decoder_dim]
decoder_out = self.decoder(sos_y_padded)
# Note: y does not start with SOS
# y_padded : [B, S]
y_padded = y.pad(mode="constant", padding_value=0)
y_padded = y_padded.to(torch.int64)
boundary = torch.zeros(
(x.size(0), 4), dtype=torch.int64, device=x.device
)
boundary[:, 2] = y_lens
boundary[:, 3] = x_lens
lm = self.simple_lm_proj(decoder_out)
am = self.simple_am_proj(encoder_out)
with torch.cuda.amp.autocast(enabled=False):
simple_loss, (px_grad, py_grad) = k2.rnnt_loss_smoothed(
lm=lm.float(),
am=am.float(),
symbols=y_padded,
termination_symbol=blank_id,
lm_only_scale=lm_scale,
am_only_scale=am_scale,
boundary=boundary,
reduction="sum",
return_grad=True,
)
# ranges : [B, T, prune_range]
ranges = k2.get_rnnt_prune_ranges(
px_grad=px_grad,
py_grad=py_grad,
boundary=boundary,
s_range=prune_range,
)
# am_pruned : [B, T, prune_range, encoder_dim]
# lm_pruned : [B, T, prune_range, decoder_dim]
am_pruned, lm_pruned = k2.do_rnnt_pruning(
am=self.joiner.encoder_proj(encoder_out),
lm=self.joiner.decoder_proj(decoder_out),
ranges=ranges,
)
# logits : [B, T, prune_range, vocab_size]
# project_input=False since we applied the decoder's input projections
# prior to do_rnnt_pruning (this is an optimization for speed).
logits = self.joiner(am_pruned, lm_pruned, project_input=False)
with torch.cuda.amp.autocast(enabled=False):
pruned_loss = k2.rnnt_loss_pruned(
logits=logits.float(),
symbols=y_padded,
ranges=ranges,
termination_symbol=blank_id,
boundary=boundary,
reduction="sum",
)
return (simple_loss, pruned_loss)
def diagonalize(self) -> None:
cur_transform = None
for l in self.encoder.encoder.layers:
if cur_transform is not None:
l.apply_transformation_in(cur_transform)
cur_transform = l.get_transformation_out()
l.apply_transformation_out(cur_transform)
self.encoder.diagonalize() # diagonalizes self_attn layers, this is
# purely internal to the self_attn layers.
apply_transformation_in(self.simple_am_proj, cur_transform)
apply_transformation_in(self.joiner.encoder_proj, cur_transform)
def _test_model():
import logging
logging.getLogger().setLevel(logging.INFO)
from conformer import Conformer
from joiner import Joiner
from decoder import Decoder
feature_dim = 40
attention_dim = 256
encoder_dim = 512
decoder_dim = 513
joiner_dim = 514
vocab_size = 1000
encoder = Conformer(num_features=40,
subsampling_factor=4,
d_model=encoder_dim,
nhead=4,
dim_feedforward=512,
num_encoder_layers=4)
decoder = Decoder(
vocab_size=600,
decoder_dim=decoder_dim,
blank_id=0,
context_size=2)
joiner = Joiner(
encoder_dim=encoder_dim,
decoder_dim=decoder_dim,
joiner_dim=joiner_dim,
vocab_size=vocab_size)
model = Transducer(encoder=encoder,
decoder=decoder,
joiner=joiner,
encoder_dim=encoder_dim,
decoder_dim=decoder_dim,
joiner_dim=joiner_dim,
vocab_size=vocab_size)
batch_size = 5
seq_len = 50
feats = torch.randn(batch_size, seq_len, feature_dim)
x_lens = torch.full((batch_size,), seq_len, dtype=torch.int64)
y = k2.ragged.create_ragged_tensor(torch.arange(5, dtype=torch.int32).reshape(1,5).expand(batch_size,5))
model.eval() # eval mode so it's not random.
(simple_loss1, pruned_loss1) = model(feats, x_lens, y)
model.diagonalize()
(simple_loss2, pruned_loss2) = model(feats, x_lens, y)
print(f"simple_loss1 = {simple_loss1.mean().item()}, simple_loss2 = {simple_loss2.mean().item()}")
print(f"pruned_loss1 = {pruned_loss1.mean().item()}, pruned_loss2 = {pruned_loss2.mean().item()}")
model.diagonalize()
if __name__ == '__main__':
_test_model()