●実現したいこと
aws sagemakerにて、学習済みの音響モデルをデプロイしたいと考えています。
以下の、比較的近い事例を参考に構築をすすめています。
https://dev.classmethod.jp/articles/realtime-inference-on-sagemaker-using-by-pose-estimation-model-pytorch-own-algorhythm/
●困っていること
pythonの知識が乏しく、以下のソースコードをどのようにsagemaker指定の関数(input_fn,model_fn,predict_fn,output_fn)に落とし込む方法がわかりません・・・。
python,awsに詳しい方がいましたらご教授いただけますと幸いです。
●該当のソースコード
TTS_inference.sh
model_tag="kan-bayashi/jsut_tacotron2_accent_with_pause"
train_config=""
model_file=""
vocoder_tag="parallel_wavegan/jsut_hifigan.v1"
vocoder_config=""
vocoder_file=""
prosodic="false"
fs=""
. ../utils/parse_options.sh
COMMAND="python tts_inference_with_accent.py "
pwg=`pip list | grep parallel`
if [ "$pwg" == "" ];
then
pip install -U parallel_wavegan
fi
ip=`pip list | grep ipython`
if [ "$pwg" == "" ];
then
pip install -U IPython
fi
if [ "$train_config" == "" ] && [ "$model_file" == "" ]
then
COMMAND="${COMMAND}--model_tag \"${model_tag}\" "
else
COMMAND="${COMMAND}--train_config \"${train_config}\" "
COMMAND="${COMMAND}--model_file \"${model_file}\" "
fi
if [ "$vocoder_config" == "" ] && [ "$vocoder_file" == "" ]
then
COMMAND="${COMMAND}--vocoder_tag \"${vocoder_tag}\" "
else
COMMAND="${COMMAND}--vocoder_config \"${vocoder_config}\" "
COMMAND="${COMMAND}--vocoder_file \"${vocoder_file}\" "
fi
if [ ! "$fs" == "" ]; then COMMAND="${COMMAND}--fs ${fs} "; fi
if [ "$prosodic" == "true" ]; then COMMAND="${COMMAND}-p"; fi
echo "${COMMAND}"
echo ""
echo ""
eval $COMMAND
tts_inference_with_accent.py
import os
import time
import torch
import pyopenjtalk
from espnet2.bin.tts_inference import Text2Speech
import matplotlib.pyplot as plt
from espnet2.tasks.tts import TTSTask
from espnet2.text.token_id_converter import TokenIDConverter
import numpy as np
import argparse
import text_processing as texp
prosodic=False
parser = argparse.ArgumentParser()
parser.add_argument("--model_tag")
parser.add_argument("--train_config")
parser.add_argument("--model_file")
parser.add_argument("--vocoder_tag")
parser.add_argument("--vocoder_config")
parser.add_argument("--vocoder_file")
parser.add_argument("-p", "--prosodic",help="Prosodic text input mode", action="store_true")
parser.add_argument("--fs",type=int,default=24000)
args = parser.parse_args()
print(args)
os.chdir('../')
# Case 2: Load the local model and the pretrained vocoder
print("download model = ",args.model_tag,"\n")
print("download vocoder = ",args.vocoder_tag,"\n")
print("モデルを読み込んでいます...\n")
if args.model_tag is not None :
text2speech = Text2Speech.from_pretrained(
model_tag=args.model_tag,
vocoder_tag=args.vocoder_tag,
device="cuda",
)
elif args.vocoder_tag is not None :
text2speech = Text2Speech.from_pretrained(
train_config=args.train_config,
model_file=args.model_file,
vocoder_tag=args.vocoder_tag,
device="cuda",
)
else :
text2speech = Text2Speech.from_pretrained(
train_config=args.train_config,
model_file=args.model_file,
vocoder_config=args.vocoder_config,
vocoder_file=args.vocoder_file,
device="cuda",
)
guide="セリフを入力してください"
if args.prosodic :
guide="アクセント句がスペースで区切られた韻律記号(^)付きのセリフをすべてひらがなで入力してください。(スペースや記号もすべて全角で)\n"
x=""
while(1):
# decide the input sentence by yourself
print(guide)
x = "デモ原稿"
if x == "exit" :
break
#model, train_args = TTSTask.build_model_from_file(
# args.train_config, args.model_file, "cuda"
# )
token_id_converter = TokenIDConverter(
token_list=text2speech.train_args.token_list,
unk_symbol="<unk>",
)
text = x
if args.prosodic :
tokens = texp.a2p(x)
text_ints = token_id_converter.tokens2ids(tokens)
text = np.array(text_ints)
else :
print("\npyopenjtalk_accent_with_pauseによる解析結果:")
print(texp.text2yomi(x),"\n")
# synthesis
with torch.no_grad():
start = time.time()
data = text2speech(text)
wav = data["wav"]
#print(text2speech.preprocess_fn("<dummy>",dict(text=x))["text"])
rtf = (time.time() - start) / (len(wav) / text2speech.fs)
print(f"RTF = {rtf:5f}")
if not os.path.isdir("generated_wav"):
os.makedirs("generated_wav")
if args.model_tag is not None :
if "tacotron" in args.model_tag :
mel = data['feat_gen_denorm'].cpu()
plt.imshow(torch.t(mel).numpy(),
aspect='auto',
origin='bottom',
interpolation='none',
cmap='viridis'
)
plt.savefig('generated_wav/'+x+'.png')
else :
if "tacotron" in args.model_file :
mel = data['feat_gen_denorm'].cpu()
plt.imshow(torch.t(mel).numpy(),
aspect='auto',
origin='bottom',
interpolation='none',
cmap='viridis'
)
plt.savefig('generated_wav/'+x+'.png')
# let us listen to generated samples
from IPython.display import display, Audio
import numpy as np
#display(Audio(wav.view(-1).cpu().numpy(), rate=text2speech.fs))
#Audio(wav.view(-1).cpu().numpy(), rate=text2speech.fs)
np_wav=wav.view(-1).cpu().numpy()
print("サンプリングレート",args.fs,"で出力します。")
from scipy.io.wavfile import write
samplerate = args.fs
t = np.linspace(0., 1., samplerate)
amplitude = np.iinfo(np.int16).max
data = amplitude * np_wav/np.max(np.abs(np_wav))
write("generated_wav/"+x+".wav", samplerate, data.astype(np.int16))
print("\n\n\n")