export model

This commit is contained in:
游雁 2023-02-07 15:19:18 +08:00
parent 59eac0cc05
commit 59f184a622
18 changed files with 1224 additions and 0 deletions

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from typing import Union, Dict
from pathlib import Path
from typeguard import check_argument_types
import os
import logging
import torch
from funasr.bin.asr_inference_paraformer import Speech2Text
from funasr.export.models import get_model
class ASRModelExportParaformer:
def __init__(self, cache_dir: Union[Path, str] = None, onnx: bool = True):
assert check_argument_types()
if cache_dir is None:
cache_dir = Path.home() / "cache" / "export"
self.cache_dir = Path(cache_dir)
self.export_config = dict(
feats_dim=560,
onnx=onnx,
)
logging.info("output dir: {}".format(self.cache_dir))
self.onnx = onnx
def export(
self,
model: Speech2Text,
tag_name: str = None,
verbose: bool = False,
):
export_dir = self.cache_dir / tag_name.replace(' ', '-')
os.makedirs(export_dir, exist_ok=True)
# export encoder1
self.export_config["model_name"] = "model"
model = get_model(
model,
self.export_config,
)
if self.onnx:
self._export_onnx(model, verbose, export_dir)
logging.info("output dir: {}".format(export_dir))
def export_from_modelscope(
self,
tag_name: str = 'damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch',
):
from funasr.tasks.asr import ASRTaskParaformer as ASRTask
from modelscope.hub.snapshot_download import snapshot_download
model_dir = snapshot_download(tag_name, cache_dir=self.cache_dir)
asr_train_config = os.path.join(model_dir, 'config.yaml')
asr_model_file = os.path.join(model_dir, 'model.pb')
cmvn_file = os.path.join(model_dir, 'am.mvn')
model, asr_train_args = ASRTask.build_model_from_file(
asr_train_config, asr_model_file, cmvn_file, 'cpu'
)
self.export(model, tag_name)
def _export_onnx(self, model, verbose, path, enc_size=None):
if enc_size:
dummy_input = model.get_dummy_inputs(enc_size)
else:
dummy_input = model.get_dummy_inputs()
# model_script = torch.jit.script(model)
model_script = model #torch.jit.trace(model)
torch.onnx.export(
model_script,
dummy_input,
os.path.join(path, f'{model.model_name}.onnx'),
verbose=verbose,
opset_version=12,
input_names=model.get_input_names(),
output_names=model.get_output_names(),
dynamic_axes=model.get_dynamic_axes()
)
if __name__ == '__main__':
export_model = ASRModelExportParaformer()
export_model.export_from_modelscope('damo/speech_paraformer-large_asr_nat-zh-cn-16k-common-vocab8404-pytorch')

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# from .ctc import CTC
# from .joint_network import JointNetwork
#
# # encoder
# from espnet2.asr.encoder.rnn_encoder import RNNEncoder as espnetRNNEncoder
# from espnet2.asr.encoder.vgg_rnn_encoder import VGGRNNEncoder as espnetVGGRNNEncoder
# from espnet2.asr.encoder.contextual_block_transformer_encoder import ContextualBlockTransformerEncoder as espnetContextualTransformer
# from espnet2.asr.encoder.contextual_block_conformer_encoder import ContextualBlockConformerEncoder as espnetContextualConformer
# from espnet2.asr.encoder.transformer_encoder import TransformerEncoder as espnetTransformerEncoder
# from espnet2.asr.encoder.conformer_encoder import ConformerEncoder as espnetConformerEncoder
# from funasr.export.models.encoder.rnn import RNNEncoder
# from funasr.export.models.encoders import TransformerEncoder
# from funasr.export.models.encoders import ConformerEncoder
# from funasr.export.models.encoder.contextual_block_xformer import ContextualBlockXformerEncoder
#
# # decoder
# from espnet2.asr.decoder.rnn_decoder import RNNDecoder as espnetRNNDecoder
# from espnet2.asr.transducer.transducer_decoder import TransducerDecoder as espnetTransducerDecoder
# from funasr.export.models.decoder.rnn import (
# RNNDecoder
# )
# from funasr.export.models.decoders import XformerDecoder
# from funasr.export.models.decoders import TransducerDecoder
#
# # lm
# from espnet2.lm.seq_rnn_lm import SequentialRNNLM as espnetSequentialRNNLM
# from espnet2.lm.transformer_lm import TransformerLM as espnetTransformerLM
# from .language_models.seq_rnn import SequentialRNNLM
# from .language_models.transformer import TransformerLM
#
# # frontend
# from espnet2.asr.frontend.s3prl import S3prlFrontend as espnetS3PRLModel
# from .frontends.s3prl import S3PRLModel
#
# from espnet2.asr.encoder.sanm_encoder import SANMEncoder_tf, SANMEncoderChunkOpt_tf
# from espnet_onnx.export.asr.models.encoders.transformer_sanm import TransformerEncoderSANM_tf
# from espnet2.asr.decoder.transformer_decoder import FsmnDecoderSCAMAOpt_tf
# from funasr.export.models.decoders import XformerDecoderSANM
from funasr.models.e2e_asr_paraformer import Paraformer
from funasr.export.models.e2e_asr_paraformer import Paraformer as Paraformer_export
def get_model(model, export_config=None):
if isinstance(model, Paraformer):
return Paraformer_export(model, **export_config)
else:
raise "The model is not exist!"
# def get_encoder(model, frontend, preencoder, predictor=None, export_config=None):
# if isinstance(model, espnetRNNEncoder) or isinstance(model, espnetVGGRNNEncoder):
# return RNNEncoder(model, frontend, preencoder, **export_config)
# elif isinstance(model, espnetContextualTransformer) or isinstance(model, espnetContextualConformer):
# return ContextualBlockXformerEncoder(model, **export_config)
# elif isinstance(model, espnetTransformerEncoder):
# return TransformerEncoder(model, frontend, preencoder, **export_config)
# elif isinstance(model, espnetConformerEncoder):
# return ConformerEncoder(model, frontend, preencoder, **export_config)
# elif isinstance(model, SANMEncoder_tf) or isinstance(model, SANMEncoderChunkOpt_tf):
# return TransformerEncoderSANM_tf(model, frontend, preencoder, predictor, **export_config)
# else:
# raise "The model is not exist!"
#
# def get_decoder(model, export_config):
# if isinstance(model, espnetRNNDecoder):
# return RNNDecoder(model, **export_config)
# elif isinstance(model, espnetTransducerDecoder):
# return TransducerDecoder(model, **export_config)
# elif isinstance(model, FsmnDecoderSCAMAOpt_tf):
# return XformerDecoderSANM(model, **export_config)
# else:
# return XformerDecoder(model, **export_config)
#
#
# def get_lm(model, export_config):
# if isinstance(model, espnetSequentialRNNLM):
# return SequentialRNNLM(model, **export_config)
# elif isinstance(model, espnetTransformerLM):
# return TransformerLM(model, **export_config)
#
#
# def get_frontend_models(model, export_config):
# if isinstance(model, espnetS3PRLModel):
# return S3PRLModel(model, **export_config)
# else:
# return None
#

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import os
import torch
import torch.nn as nn
# from espnet.nets.pytorch_backend.transformer.mask import subsequent_mask
from funasr.export.utils.torch_function import MakePadMask
from funasr.modules.attention import MultiHeadedAttentionSANMDecoder
from funasr.export.models.modules.multihead_att import MultiHeadedAttentionSANMDecoder as MultiHeadedAttentionSANMDecoder_export
from funasr.modules.attention import MultiHeadedAttentionCrossAtt
from funasr.export.models.modules.multihead_att import MultiHeadedAttentionCrossAtt as MultiHeadedAttentionCrossAtt_export
from funasr.modules.positionwise_feed_forward import PositionwiseFeedForwardDecoderSANM
from funasr.export.models.modules.feedforward import PositionwiseFeedForwardDecoderSANM as PositionwiseFeedForwardDecoderSANM_export
from funasr.export.models.modules.decoder_layer import DecoderLayerSANM as DecoderLayerSANM_export
class ParaformerSANMDecoder(nn.Module):
def __init__(self, model,
max_seq_len=512,
model_name='decoder'):
super().__init__()
# self.embed = model.embed #Embedding(model.embed, max_seq_len)
self.model = model
self.make_pad_mask = MakePadMask(max_seq_len, flip=False)
for i, d in enumerate(self.model.decoders):
if isinstance(d.feed_forward, PositionwiseFeedForwardDecoderSANM):
d.feed_forward = PositionwiseFeedForwardDecoderSANM_export(d.feed_forward)
if isinstance(d.self_attn, MultiHeadedAttentionSANMDecoder):
d.self_attn = MultiHeadedAttentionSANMDecoder_export(d.self_attn)
if isinstance(d.src_attn, MultiHeadedAttentionCrossAtt):
d.src_attn = MultiHeadedAttentionCrossAtt_export(d.src_attn)
self.model.decoders[i] = DecoderLayerSANM_export(d)
if self.model.decoders2 is not None:
for i, d in enumerate(self.model.decoders2):
if isinstance(d.feed_forward, PositionwiseFeedForwardDecoderSANM):
d.feed_forward = PositionwiseFeedForwardDecoderSANM_export(d.feed_forward)
if isinstance(d.self_attn, MultiHeadedAttentionSANMDecoder):
d.self_attn = MultiHeadedAttentionSANMDecoder_export(d.self_attn)
self.model.decoders2[i] = DecoderLayerSANM_export(d)
for i, d in enumerate(self.model.decoders3):
if isinstance(d.feed_forward, PositionwiseFeedForwardDecoderSANM):
d.feed_forward = PositionwiseFeedForwardDecoderSANM_export(d.feed_forward)
self.model.decoders3[i] = DecoderLayerSANM_export(d)
self.output_layer = model.output_layer
self.after_norm = model.after_norm
self.model_name = model_name
def prepare_mask(self, mask):
mask_3d_btd = mask[:, :, None]
if len(mask.shape) == 2:
mask_4d_bhlt = 1 - mask[:, None, None, :]
elif len(mask.shape) == 3:
mask_4d_bhlt = 1 - mask[:, None, :]
mask_4d_bhlt = mask_4d_bhlt * -10000.0
return mask_3d_btd, mask_4d_bhlt
def forward(
self,
hs_pad: torch.Tensor,
hlens: torch.Tensor,
ys_in_pad: torch.Tensor,
ys_in_lens: torch.Tensor,
):
tgt = ys_in_pad
tgt_mask = self.make_pad_mask(ys_in_lens)
tgt_mask, _ = self.prepare_mask(tgt_mask)
# tgt_mask = myutils.sequence_mask(ys_in_lens, device=tgt.device)[:, :, None]
memory = hs_pad
memory_mask = self.make_pad_mask(hlens)
_, memory_mask = self.prepare_mask(memory_mask)
# memory_mask = myutils.sequence_mask(hlens, device=memory.device)[:, None, :]
x = tgt
x, tgt_mask, memory, memory_mask, _ = self.model.decoders(
x, tgt_mask, memory, memory_mask
)
if self.model.decoders2 is not None:
x, tgt_mask, memory, memory_mask, _ = self.model.decoders2(
x, tgt_mask, memory, memory_mask
)
x, tgt_mask, memory, memory_mask, _ = self.model.decoders3(
x, tgt_mask, memory, memory_mask
)
x = self.after_norm(x)
x = self.output_layer(x)
return x, ys_in_lens
def get_dummy_inputs(self, enc_size):
tgt = torch.LongTensor([0]).unsqueeze(0)
memory = torch.randn(1, 100, enc_size)
pre_acoustic_embeds = torch.randn(1, 1, enc_size)
cache_num = len(self.model.decoders) + len(self.model.decoders2)
cache = [
torch.zeros((1, self.model.decoders[0].size, self.model.decoders[0].self_attn.kernel_size))
for _ in range(cache_num)
]
return (tgt, memory, pre_acoustic_embeds, cache)
def is_optimizable(self):
return True
def get_input_names(self):
cache_num = len(self.model.decoders) + len(self.model.decoders2)
return ['tgt', 'memory', 'pre_acoustic_embeds'] \
+ ['cache_%d' % i for i in range(cache_num)]
def get_output_names(self):
cache_num = len(self.model.decoders) + len(self.model.decoders2)
return ['y'] \
+ ['out_cache_%d' % i for i in range(cache_num)]
def get_dynamic_axes(self):
ret = {
'tgt': {
0: 'tgt_batch',
1: 'tgt_length'
},
'memory': {
0: 'memory_batch',
1: 'memory_length'
},
'pre_acoustic_embeds': {
0: 'acoustic_embeds_batch',
1: 'acoustic_embeds_length',
}
}
cache_num = len(self.model.decoders) + len(self.model.decoders2)
ret.update({
'cache_%d' % d: {
0: 'cache_%d_batch' % d,
2: 'cache_%d_length' % d
}
for d in range(cache_num)
})
return ret
def get_model_config(self, path):
return {
"dec_type": "XformerDecoder",
"model_path": os.path.join(path, f'{self.model_name}.onnx'),
"n_layers": len(self.model.decoders) + len(self.model.decoders2),
"odim": self.model.decoders[0].size
}

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import logging
import torch
import torch.nn as nn
from funasr.export.utils.torch_function import MakePadMask
from funasr.train.abs_espnet_model import AbsESPnetModel
from funasr.models.encoder.sanm_encoder import SANMEncoder
from funasr.export.models.encoder.sanm_encoder import SANMEncoder as SANMEncoder_export
from funasr.models.predictor.cif import CifPredictorV2
from funasr.export.models.predictor.cif import CifPredictorV2 as CifPredictorV2_export
from funasr.models.decoder.sanm_decoder import ParaformerSANMDecoder
from funasr.export.models.decoder.sanm_decoder import ParaformerSANMDecoder as ParaformerSANMDecoder_export
class Paraformer(nn.Module):
"""
Author: Speech Lab, Alibaba Group, China
Paraformer: Fast and Accurate Parallel Transformer for Non-autoregressive End-to-End Speech Recognition
https://arxiv.org/abs/2206.08317
"""
def __init__(
self,
model,
max_seq_len=512,
feats_dim=560,
model_name='model',
**kwargs,
):
super().__init__()
if isinstance(model.encoder, SANMEncoder):
self.encoder = SANMEncoder_export(model.encoder)
if isinstance(model.predictor, CifPredictorV2):
self.predictor = CifPredictorV2_export(model.predictor)
if isinstance(model.decoder, ParaformerSANMDecoder):
self.decoder = ParaformerSANMDecoder_export(model.decoder)
self.make_pad_mask = MakePadMask(max_seq_len, flip=False)
self.feats_dim = feats_dim
self.model_name = model_name
self.onnx = False
if "onnx" in kwargs:
self.onnx = kwargs["onnx"]
def forward(
self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
):
# a. To device
batch = {"speech": speech, "speech_lengths": speech_lengths}
# batch = to_device(batch, device=self.device)
enc, enc_len = self.encoder(**batch)
mask = self.make_pad_mask(enc_len)[:, None, :]
pre_acoustic_embeds, pre_token_length, alphas, pre_peak_index = self.predictor(enc, mask)
pre_token_length = pre_token_length.round().long()
decoder_out, _ = self.decoder(enc, enc_len, pre_acoustic_embeds, pre_token_length)
decoder_out = torch.log_softmax(decoder_out, dim=-1)
return decoder_out, pre_token_length
# def get_output_size(self):
# return self.model.encoders[0].size
def get_dummy_inputs(self):
speech = torch.randn(2, 30, self.feats_dim)
speech_lengths = torch.tensor([6, 30]).long()
return (speech, speech_lengths)
def get_input_names(self):
return ['speech', 'speech_lengths']
def get_output_names(self):
return ['logits', 'token_num']
def get_dynamic_axes(self):
return {
'speech': {
0: 'batch_size',
1: 'feats_length'
},
'speech_lengths': {
0: 'batch_size',
},
'logits': {
0: 'batch_size',
1: 'logits_length'
},
}

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import torch
import torch.nn as nn
from funasr.export.utils.torch_function import MakePadMask
from funasr.modules.attention import MultiHeadedAttentionSANM
from funasr.export.models.modules.multihead_att import MultiHeadedAttentionSANM as MultiHeadedAttentionSANM_export
from funasr.export.models.modules.encoder_layer import EncoderLayerSANM as EncoderLayerSANM_export
from funasr.modules.positionwise_feed_forward import PositionwiseFeedForward
from funasr.export.models.modules.feedforward import PositionwiseFeedForward as PositionwiseFeedForward_export
class SANMEncoder(nn.Module):
def __init__(
self,
model,
max_seq_len=512,
feats_dim=560,
model_name='encoder',
):
super().__init__()
self.embed = model.embed
self.model = model
self.make_pad_mask = MakePadMask(max_seq_len, flip=False)
self.feats_dim = feats_dim
if hasattr(model, 'encoders0'):
for i, d in enumerate(self.model.encoders0):
if isinstance(d.self_attn, MultiHeadedAttentionSANM):
d.self_attn = MultiHeadedAttentionSANM_export(d.self_attn)
if isinstance(d.feed_forward, PositionwiseFeedForward):
d.feed_forward = PositionwiseFeedForward_export(d.feed_forward)
self.model.encoders0[i] = EncoderLayerSANM_export(d)
for i, d in enumerate(self.model.encoders):
if isinstance(d.self_attn, MultiHeadedAttentionSANM):
d.self_attn = MultiHeadedAttentionSANM_export(d.self_attn)
if isinstance(d.feed_forward, PositionwiseFeedForward):
d.feed_forward = PositionwiseFeedForward_export(d.feed_forward)
self.model.encoders[i] = EncoderLayerSANM_export(d)
self.model_name = model_name
self.num_heads = model.encoders[0].self_attn.h
self.hidden_size = model.encoders[0].self_attn.linear_out.out_features
def prepare_mask(self, mask):
mask_3d_btd = mask[:, :, None]
if len(mask.shape) == 2:
mask_4d_bhlt = 1 - mask[:, None, None, :]
elif len(mask.shape) == 3:
mask_4d_bhlt = 1 - mask[:, None, :]
mask_4d_bhlt = mask_4d_bhlt * -10000.0
return mask_3d_btd, mask_4d_bhlt
def forward(self,
speech: torch.Tensor,
speech_lengths: torch.Tensor,
):
mask = self.make_pad_mask(speech_lengths)
mask = self.prepare_mask(mask)
if self.embed is None:
xs_pad = speech
else:
xs_pad = self.embed(speech)
encoder_outs = self.model.encoders0(xs_pad, mask)
xs_pad, masks = encoder_outs[0], encoder_outs[1]
encoder_outs = self.model.encoders(xs_pad, mask)
xs_pad, masks = encoder_outs[0], encoder_outs[1]
xs_pad = self.model.after_norm(xs_pad)
return xs_pad, speech_lengths
def get_output_size(self):
return self.model.encoders[0].size
def get_dummy_inputs(self):
feats = torch.randn(1, 100, self.feats_dim)
return (feats)
def get_input_names(self):
return ['feats']
def get_output_names(self):
return ['encoder_out', 'encoder_out_lens', 'predictor_weight']
def get_dynamic_axes(self):
return {
'feats': {
1: 'feats_length'
},
'encoder_out': {
1: 'enc_out_length'
},
'predictor_weight':{
1: 'pre_out_length'
}
}

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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import torch
from torch import nn
class DecoderLayerSANM(nn.Module):
def __init__(
self,
model
):
super().__init__()
self.self_attn = model.self_attn
self.src_attn = model.src_attn
self.feed_forward = model.feed_forward
self.norm1 = model.norm1
self.norm2 = model.norm2 if hasattr(model, 'norm2') else None
self.norm3 = model.norm3 if hasattr(model, 'norm3') else None
self.size = model.size
def forward(self, tgt, tgt_mask, memory, memory_mask=None, cache=None):
residual = tgt
tgt = self.norm1(tgt)
tgt = self.feed_forward(tgt)
x = tgt
if self.self_attn is not None:
tgt = self.norm2(tgt)
x, cache = self.self_attn(tgt, tgt_mask, cache=cache)
x = residual + x
if self.src_attn is not None:
residual = x
x = self.norm3(x)
x = residual + self.src_attn(x, memory, memory_mask)
return x, tgt_mask, memory, memory_mask, cache

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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import torch
from torch import nn
class EncoderLayerSANM(nn.Module):
def __init__(
self,
model,
):
"""Construct an EncoderLayer object."""
super().__init__()
self.self_attn = model.self_attn
self.feed_forward = model.feed_forward
self.norm1 = model.norm1
self.norm2 = model.norm2
self.size = model.size
def forward(self, x, mask):
residual = x
x = self.norm1(x)
x = self.self_attn(x, mask)
if x.size(2) == residual.size(2):
x = x + residual
residual = x
x = self.norm2(x)
x = self.feed_forward(x)
if x.size(2) == residual.size(2):
x = x + residual
return x, mask

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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import torch
import torch.nn as nn
class PositionwiseFeedForward(nn.Module):
def __init__(self, model):
super().__init__()
self.w_1 = model.w_1
self.w_2 = model.w_2
self.activation = model.activation
def forward(self, x):
x = self.activation(self.w_1(x))
x = self.w_2(x)
return x
class PositionwiseFeedForwardDecoderSANM(nn.Module):
def __init__(self, model):
super().__init__()
self.w_1 = model.w_1
self.w_2 = model.w_2
self.activation = model.activation
self.norm = model.norm
def forward(self, x):
x = self.activation(self.w_1(x))
x = self.w_2(self.norm(x))
return x

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import os
import math
import torch
import torch.nn as nn
class MultiHeadedAttentionSANM(nn.Module):
def __init__(self, model):
super().__init__()
self.d_k = model.d_k
self.h = model.h
self.linear_out = model.linear_out
self.linear_q_k_v = model.linear_q_k_v
self.fsmn_block = model.fsmn_block
self.pad_fn = model.pad_fn
self.attn = None
self.all_head_size = self.h * self.d_k
def forward(self, x, mask):
mask_3d_btd, mask_4d_bhlt = mask
q_h, k_h, v_h, v = self.forward_qkv(x)
fsmn_memory = self.forward_fsmn(v, mask_3d_btd)
q_h = q_h * self.d_k**(-0.5)
scores = torch.matmul(q_h, k_h.transpose(-2, -1))
att_outs = self.forward_attention(v_h, scores, mask_4d_bhlt)
return att_outs + fsmn_memory
def transpose_for_scores(self, x: torch.Tensor) -> torch.Tensor:
new_x_shape = x.size()[:-1] + (self.h, self.d_k)
x = x.view(new_x_shape)
return x.permute(0, 2, 1, 3)
def forward_qkv(self, x):
q_k_v = self.linear_q_k_v(x)
q, k, v = torch.split(q_k_v, int(self.h * self.d_k), dim=-1)
q_h = self.transpose_for_scores(q)
k_h = self.transpose_for_scores(k)
v_h = self.transpose_for_scores(v)
return q_h, k_h, v_h, v
def forward_fsmn(self, inputs, mask):
# b, t, d = inputs.size()
# mask = torch.reshape(mask, (b, -1, 1))
inputs = inputs * mask
x = inputs.transpose(1, 2)
x = self.pad_fn(x)
x = self.fsmn_block(x)
x = x.transpose(1, 2)
x = x + inputs
x = x * mask
return x
def forward_attention(self, value, scores, mask):
scores = scores + mask
self.attn = torch.softmax(scores, dim=-1)
context_layer = torch.matmul(self.attn, value) # (batch, head, time1, d_k)
context_layer = context_layer.permute(0, 2, 1, 3).contiguous()
new_context_layer_shape = context_layer.size()[:-2] + (self.all_head_size,)
context_layer = context_layer.view(new_context_layer_shape)
return self.linear_out(context_layer) # (batch, time1, d_model)
class MultiHeadedAttentionSANMDecoder(nn.Module):
def __init__(self, model):
super().__init__()
self.fsmn_block = model.fsmn_block
self.pad_fn = model.pad_fn
self.kernel_size = model.kernel_size
self.attn = None
def forward(self, inputs, mask, cache=None):
# b, t, d = inputs.size()
# mask = torch.reshape(mask, (b, -1, 1))
inputs = inputs * mask
x = inputs.transpose(1, 2)
if cache is None:
x = self.pad_fn(x)
else:
x = torch.cat((cache[:, :, 1:], x), dim=2)
cache = x
x = self.fsmn_block(x)
x = x.transpose(1, 2)
x = x + inputs
x = x * mask
return x, cache
class MultiHeadedAttentionCrossAtt(nn.Module):
def __init__(self, model):
super().__init__()
self.d_k = model.d_k
self.h = model.h
self.linear_q = model.linear_q
self.linear_k_v = model.linear_k_v
self.linear_out = model.linear_out
self.attn = None
self.all_head_size = self.h * self.d_k
def forward(self, x, memory, memory_mask):
q, k, v = self.forward_qkv(x, memory)
scores = torch.matmul(q, k.transpose(-2, -1)) / math.sqrt(self.d_k)
return self.forward_attention(v, scores, memory_mask)
def transpose_for_scores(self, x: torch.Tensor) -> torch.Tensor:
new_x_shape = x.size()[:-1] + (self.h, self.d_k)
x = x.view(new_x_shape)
return x.permute(0, 2, 1, 3)
def forward_qkv(self, x, memory):
q = self.linear_q(x)
k_v = self.linear_k_v(memory)
k, v = torch.split(k_v, int(self.h * self.d_k), dim=-1)
q = self.transpose_for_scores(q)
k = self.transpose_for_scores(k)
v = self.transpose_for_scores(v)
return q, k, v
def forward_attention(self, value, scores, mask):
scores = scores + mask
self.attn = torch.softmax(scores, dim=-1)
context_layer = torch.matmul(self.attn, value) # (batch, head, time1, d_k)
context_layer = context_layer.permute(0, 2, 1, 3).contiguous()
new_context_layer_shape = context_layer.size()[:-2] + (self.all_head_size,)
context_layer = context_layer.view(new_context_layer_shape)
return self.linear_out(context_layer) # (batch, time1, d_model)

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#!/usr/bin/env python3
# -*- coding: utf-8 -*-
import torch
from torch import nn
import logging
import numpy as np
def sequence_mask(lengths, maxlen=None, dtype=torch.float32, device=None):
if maxlen is None:
maxlen = lengths.max()
row_vector = torch.arange(0, maxlen, 1).to(lengths.device)
matrix = torch.unsqueeze(lengths, dim=-1)
mask = row_vector < matrix
mask = mask.detach()
return mask.type(dtype).to(device) if device is not None else mask.type(dtype)
class CifPredictorV2(nn.Module):
def __init__(self, model):
super().__init__()
self.pad = model.pad
self.cif_conv1d = model.cif_conv1d
self.cif_output = model.cif_output
self.threshold = model.threshold
self.smooth_factor = model.smooth_factor
self.noise_threshold = model.noise_threshold
self.tail_threshold = model.tail_threshold
def forward(self, hidden: torch.Tensor,
mask: torch.Tensor,
):
h = hidden
context = h.transpose(1, 2)
queries = self.pad(context)
output = torch.relu(self.cif_conv1d(queries))
output = output.transpose(1, 2)
output = self.cif_output(output)
alphas = torch.sigmoid(output)
alphas = torch.nn.functional.relu(alphas * self.smooth_factor - self.noise_threshold)
mask = mask.transpose(-1, -2).float()
alphas = alphas * mask
alphas = alphas.squeeze(-1)
token_num = alphas.sum(-1)
acoustic_embeds, cif_peak = cif(hidden, alphas, self.threshold)
return acoustic_embeds, token_num, alphas, cif_peak
def tail_process_fn(self, hidden, alphas, token_num=None, mask=None):
b, t, d = hidden.size()
tail_threshold = self.tail_threshold
zeros_t = torch.zeros((b, 1), dtype=torch.float32, device=alphas.device)
ones_t = torch.ones_like(zeros_t)
mask_1 = torch.cat([mask, zeros_t], dim=1)
mask_2 = torch.cat([ones_t, mask], dim=1)
mask = mask_2 - mask_1
tail_threshold = mask * tail_threshold
alphas = torch.cat([alphas, tail_threshold], dim=1)
zeros = torch.zeros((b, 1, d), dtype=hidden.dtype).to(hidden.device)
hidden = torch.cat([hidden, zeros], dim=1)
token_num = alphas.sum(dim=-1)
token_num_floor = torch.floor(token_num)
return hidden, alphas, token_num_floor
@torch.jit.script
def cif(hidden, alphas, threshold: float):
batch_size, len_time, hidden_size = hidden.size()
threshold = torch.tensor([threshold], dtype=alphas.dtype).to(alphas.device)
# loop varss
integrate = torch.zeros([batch_size], device=hidden.device)
frame = torch.zeros([batch_size, hidden_size], device=hidden.device)
# intermediate vars along time
list_fires = []
list_frames = []
for t in range(len_time):
alpha = alphas[:, t]
distribution_completion = torch.ones([batch_size], device=hidden.device) - integrate
integrate += alpha
list_fires.append(integrate)
fire_place = integrate >= threshold
integrate = torch.where(fire_place,
integrate - torch.ones([batch_size], device=hidden.device),
integrate)
cur = torch.where(fire_place,
distribution_completion,
alpha)
remainds = alpha - cur
frame += cur[:, None] * hidden[:, t, :]
list_frames.append(frame)
frame = torch.where(fire_place[:, None].repeat(1, hidden_size),
remainds[:, None] * hidden[:, t, :],
frame)
fires = torch.stack(list_fires, 1)
frames = torch.stack(list_frames, 1)
list_ls = []
len_labels = torch.round(alphas.sum(-1)).int()
max_label_len = len_labels.max()
for b in range(batch_size):
fire = fires[b, :]
l = torch.index_select(frames[b, :, :], 0, torch.nonzero(fire >= threshold).squeeze())
pad_l = torch.zeros([int(max_label_len - l.size(0)), int(hidden_size)], device=hidden.device)
list_ls.append(torch.cat([l, pad_l], 0))
return torch.stack(list_ls, 0), fires
def CifPredictorV2_test():
x = torch.rand([2, 21, 2])
x_len = torch.IntTensor([6, 21])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
predictor_scripts = torch.jit.script(CifPredictorV2(2, 1, 1))
# cif_output, cif_length, alphas, cif_peak = predictor_scripts(x, mask=mask[:, None, :])
predictor_scripts.save('test.pt')
loaded = torch.jit.load('test.pt')
cif_output, cif_length, alphas, cif_peak = loaded(x, mask=mask[:, None, :])
# print(cif_output)
print(predictor_scripts.code)
# predictor = CifPredictorV2(2, 1, 1)
# cif_output, cif_length, alphas, cif_peak = predictor(x, mask=mask[:, None, :])
print(cif_output)
def CifPredictorV2_export_test():
x = torch.rand([2, 21, 2])
x_len = torch.IntTensor([6, 21])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
# predictor_scripts = torch.jit.script(CifPredictorV2(2, 1, 1))
# cif_output, cif_length, alphas, cif_peak = predictor_scripts(x, mask=mask[:, None, :])
predictor = CifPredictorV2(2, 1, 1)
predictor_trace = torch.jit.trace(predictor, (x, mask[:, None, :]))
predictor_trace.save('test_trace.pt')
loaded = torch.jit.load('test_trace.pt')
x = torch.rand([3, 30, 2])
x_len = torch.IntTensor([6, 20, 30])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
cif_output, cif_length, alphas, cif_peak = loaded(x, mask=mask[:, None, :])
print(cif_output)
# print(predictor_trace.code)
# predictor = CifPredictorV2(2, 1, 1)
# cif_output, cif_length, alphas, cif_peak = predictor(x, mask=mask[:, None, :])
# print(cif_output)
if __name__ == '__main__':
# CifPredictorV2_test()
CifPredictorV2_export_test()

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import torch
from torch import nn
import logging
import numpy as np
def sequence_mask(lengths, maxlen=None, dtype=torch.float32, device=None):
if maxlen is None:
maxlen = lengths.max()
row_vector = torch.arange(0, maxlen, 1).to(lengths.device)
matrix = torch.unsqueeze(lengths, dim=-1)
mask = row_vector < matrix
mask = mask.detach()
return mask.type(dtype).to(device) if device is not None else mask.type(dtype)
def make_pad_mask(lengths, xs=None, length_dim=-1, maxlen=None):
if length_dim == 0:
raise ValueError("length_dim cannot be 0: {}".format(length_dim))
if not isinstance(lengths, list):
lengths = lengths.tolist()
bs = int(len(lengths))
if maxlen is None:
if xs is None:
maxlen = int(max(lengths))
else:
maxlen = xs.size(length_dim)
else:
assert xs is None
assert maxlen >= int(max(lengths))
seq_range = torch.arange(0, maxlen, dtype=torch.int64)
seq_range_expand = seq_range.unsqueeze(0).expand(bs, maxlen)
seq_length_expand = seq_range_expand.new(lengths).unsqueeze(-1)
mask = seq_range_expand >= seq_length_expand
if xs is not None:
assert xs.size(0) == bs, (xs.size(0), bs)
if length_dim < 0:
length_dim = xs.dim() + length_dim
# ind = (:, None, ..., None, :, , None, ..., None)
ind = tuple(
slice(None) if i in (0, length_dim) else None for i in range(xs.dim())
)
mask = mask[ind].expand_as(xs).to(xs.device)
return mask
class CifPredictorV2(nn.Module):
def __init__(self,
idim: int,
l_order: int,
r_order: int,
threshold: float = 1.0,
dropout: float = 0.1,
smooth_factor: float = 1.0,
noise_threshold: float = 0,
tail_threshold: float = 0.0,
):
super(CifPredictorV2, self).__init__()
self.pad = nn.ConstantPad1d((l_order, r_order), 0.0)
self.cif_conv1d = nn.Conv1d(idim, idim, l_order + r_order + 1)
self.cif_output = nn.Linear(idim, 1)
self.dropout = torch.nn.Dropout(p=dropout)
self.threshold = threshold
self.smooth_factor = smooth_factor
self.noise_threshold = noise_threshold
self.tail_threshold = tail_threshold
def forward(self, hidden: torch.Tensor,
mask: torch.Tensor,
):
h = hidden
context = h.transpose(1, 2)
queries = self.pad(context)
output = torch.relu(self.cif_conv1d(queries))
output = output.transpose(1, 2)
output = self.cif_output(output)
alphas = torch.sigmoid(output)
alphas = torch.nn.functional.relu(alphas * self.smooth_factor - self.noise_threshold)
mask = mask.transpose(-1, -2).float()
alphas = alphas * mask
alphas = alphas.squeeze(-1)
token_num = alphas.sum(-1)
acoustic_embeds, cif_peak = cif(hidden, alphas, self.threshold)
return acoustic_embeds, token_num, alphas, cif_peak
def tail_process_fn(self, hidden, alphas, token_num=None, mask=None):
b, t, d = hidden.size()
tail_threshold = self.tail_threshold
zeros_t = torch.zeros((b, 1), dtype=torch.float32, device=alphas.device)
ones_t = torch.ones_like(zeros_t)
mask_1 = torch.cat([mask, zeros_t], dim=1)
mask_2 = torch.cat([ones_t, mask], dim=1)
mask = mask_2 - mask_1
tail_threshold = mask * tail_threshold
alphas = torch.cat([alphas, tail_threshold], dim=1)
zeros = torch.zeros((b, 1, d), dtype=hidden.dtype).to(hidden.device)
hidden = torch.cat([hidden, zeros], dim=1)
token_num = alphas.sum(dim=-1)
token_num_floor = torch.floor(token_num)
return hidden, alphas, token_num_floor
@torch.jit.script
def cif(hidden, alphas, threshold: float):
batch_size, len_time, hidden_size = hidden.size()
threshold = torch.tensor([threshold], dtype=alphas.dtype).to(alphas.device)
# loop varss
integrate = torch.zeros([batch_size], device=hidden.device)
frame = torch.zeros([batch_size, hidden_size], device=hidden.device)
# intermediate vars along time
list_fires = []
list_frames = []
for t in range(len_time):
alpha = alphas[:, t]
distribution_completion = torch.ones([batch_size], device=hidden.device) - integrate
integrate += alpha
list_fires.append(integrate)
fire_place = integrate >= threshold
integrate = torch.where(fire_place,
integrate - torch.ones([batch_size], device=hidden.device),
integrate)
cur = torch.where(fire_place,
distribution_completion,
alpha)
remainds = alpha - cur
frame += cur[:, None] * hidden[:, t, :]
list_frames.append(frame)
frame = torch.where(fire_place[:, None].repeat(1, hidden_size),
remainds[:, None] * hidden[:, t, :],
frame)
fires = torch.stack(list_fires, 1)
frames = torch.stack(list_frames, 1)
list_ls = []
len_labels = torch.round(alphas.sum(-1)).int()
max_label_len = len_labels.max()
for b in range(batch_size):
fire = fires[b, :]
l = torch.index_select(frames[b, :, :], 0, torch.nonzero(fire >= threshold).squeeze())
pad_l = torch.zeros([int(max_label_len - l.size(0)), int(hidden_size)], device=hidden.device)
list_ls.append(torch.cat([l, pad_l], 0))
return torch.stack(list_ls, 0), fires
def CifPredictorV2_test():
x = torch.rand([2, 21, 2])
x_len = torch.IntTensor([6, 21])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
predictor_scripts = torch.jit.script(CifPredictorV2(2, 1, 1))
# cif_output, cif_length, alphas, cif_peak = predictor_scripts(x, mask=mask[:, None, :])
predictor_scripts.save('test.pt')
loaded = torch.jit.load('test.pt')
cif_output, cif_length, alphas, cif_peak = loaded(x, mask=mask[:, None, :])
# print(cif_output)
print(predictor_scripts.code)
# predictor = CifPredictorV2(2, 1, 1)
# cif_output, cif_length, alphas, cif_peak = predictor(x, mask=mask[:, None, :])
print(cif_output)
def CifPredictorV2_export_test():
x = torch.rand([2, 21, 2])
x_len = torch.IntTensor([6, 21])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
# predictor_scripts = torch.jit.script(CifPredictorV2(2, 1, 1))
# cif_output, cif_length, alphas, cif_peak = predictor_scripts(x, mask=mask[:, None, :])
predictor = CifPredictorV2(2, 1, 1)
predictor_trace = torch.jit.trace(predictor, (x, mask[:, None, :]))
predictor_trace.save('test_trace.pt')
loaded = torch.jit.load('test_trace.pt')
x = torch.rand([3, 30, 2])
x_len = torch.IntTensor([6, 20, 30])
mask = sequence_mask(x_len, maxlen=x.size(1), dtype=x.dtype)
x = x * mask[:, :, None]
cif_output, cif_length, alphas, cif_peak = loaded(x, mask=mask[:, None, :])
print(cif_output)
# print(predictor_trace.code)
# predictor = CifPredictorV2(2, 1, 1)
# cif_output, cif_length, alphas, cif_peak = predictor(x, mask=mask[:, None, :])
# print(cif_output)
if __name__ == '__main__':
# CifPredictorV2_test()
CifPredictorV2_export_test()

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from typing import Optional
import torch
import torch.nn as nn
import numpy as np
class MakePadMask(nn.Module):
def __init__(self, max_seq_len=512, flip=True):
super().__init__()
if flip:
self.mask_pad = torch.Tensor(1 - np.tri(max_seq_len)).type(torch.bool)
else:
self.mask_pad = torch.Tensor(np.tri(max_seq_len)).type(torch.bool)
def forward(self, lengths, xs=None, length_dim=-1, maxlen=None):
"""Make mask tensor containing indices of padded part.
This implementation creates the same mask tensor with original make_pad_mask,
which can be converted into onnx format.
Dimension length of xs should be 2 or 3.
"""
if length_dim == 0:
raise ValueError("length_dim cannot be 0: {}".format(length_dim))
if xs is not None and len(xs.shape) == 3:
if length_dim == 1:
lengths = lengths.unsqueeze(1).expand(
*xs.transpose(1, 2).shape[:2])
else:
lengths = lengths.unsqueeze(1).expand(*xs.shape[:2])
if maxlen is not None:
m = maxlen
elif xs is not None:
m = xs.shape[-1]
else:
m = torch.max(lengths)
mask = self.mask_pad[lengths - 1][..., :m].type(torch.float32)
if length_dim == 1:
return mask.transpose(1, 2)
else:
return mask
def normalize(input: torch.Tensor, p: float = 2.0, dim: int = 1, out: Optional[torch.Tensor] = None) -> torch.Tensor:
if out is None:
denom = input.norm(p, dim, keepdim=True).expand_as(input)
return input / denom
else:
denom = input.norm(p, dim, keepdim=True).expand_as(input)
return torch.div(input, denom, out=out)
def subsequent_mask(size: torch.Tensor):
return torch.ones(size, size).tril()
def MakePadMask_test():
feats_length = torch.tensor([10]).type(torch.long)
mask_fn = MakePadMask()
mask = mask_fn(feats_length)
print(mask)
if __name__ == '__main__':
MakePadMask_test()