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import zipfile, glob, subprocess, torch, os, traceback, sys, warnings, shutil, numpy as np
from mega import Mega
os.environ["no_proxy"] = "localhost, 127.0.0.1, ::1"
import threading
from time import sleep
from subprocess import Popen
import faiss
from random import shuffle
import json, datetime, requests
from gtts import gTTS
now_dir = os.getcwd()
sys.path.append(now_dir)
tmp = os.path.join(now_dir, "TEMP")
shutil.rmtree(tmp, ignore_errors=True)
shutil.rmtree("%s/runtime/Lib/site-packages/infer_pack" % (now_dir), ignore_errors=True)
shutil.rmtree("%s/runtime/Lib/site-packages/uvr5_pack" % (now_dir), ignore_errors=True)
os.makedirs(tmp, exist_ok=True)
os.makedirs(os.path.join(now_dir, "logs"), exist_ok=True)
os.makedirs(os.path.join(now_dir, "weights"), exist_ok=True)
os.environ["TEMP"] = tmp
warnings.filterwarnings("ignore")
torch.manual_seed(114514)
from i18n import I18nAuto
import ffmpeg
#from MDXNet import MDXNetDereverb
i18n = I18nAuto()
#i18n.print()
# 判断是否有能用来训练和加速推理的N卡
ngpu = torch.cuda.device_count()
gpu_infos = []
mem = []
if (not torch.cuda.is_available()) or ngpu == 0:
if_gpu_ok = False
else:
if_gpu_ok = False
for i in range(ngpu):
gpu_name = torch.cuda.get_device_name(i)
if (
"10" in gpu_name
or "16" in gpu_name
or "20" in gpu_name
or "30" in gpu_name
or "40" in gpu_name
or "A2" in gpu_name.upper()
or "A3" in gpu_name.upper()
or "A4" in gpu_name.upper()
or "P4" in gpu_name.upper()
or "A50" in gpu_name.upper()
or "A60" in gpu_name.upper()
or "70" in gpu_name
or "80" in gpu_name
or "90" in gpu_name
or "M4" in gpu_name.upper()
or "T4" in gpu_name.upper()
or "TITAN" in gpu_name.upper()
): # A10#A100#V100#A40#P40#M40#K80#A4500
if_gpu_ok = True # 至少有一张能用的N卡
gpu_infos.append("%s\t%s" % (i, gpu_name))
mem.append(
int(
torch.cuda.get_device_properties(i).total_memory
/ 1024
/ 1024
/ 1024
+ 0.4
)
)
if if_gpu_ok == True and len(gpu_infos) > 0:
gpu_info = "\n".join(gpu_infos)
default_batch_size = min(mem) // 2
else:
gpu_info = i18n("很遗憾您这没有能用的显卡来支持您训练")
default_batch_size = 1
gpus = "-".join([i[0] for i in gpu_infos])
from infer_pack.models import (SynthesizerTrnMs256NSFsid,SynthesizerTrnMs256NSFsid_nono,SynthesizerTrnMs768NSFsid,SynthesizerTrnMs768NSFsid_nono)
import soundfile as sf
from fairseq import checkpoint_utils
import gradio as gr
import logging
from vc_infer_pipeline import VC
from config import Config
from infer_uvr5 import _audio_pre_, _audio_pre_new
from my_utils import load_audio
from train.process_ckpt import show_info, change_info, merge, extract_small_model
config = Config()
# from trainset_preprocess_pipeline import PreProcess
logging.getLogger("numba").setLevel(logging.WARNING)
hubert_model = None
def load_hubert():
global hubert_model
models, _, _ = checkpoint_utils.load_model_ensemble_and_task(
["hubert_base.pt"],
suffix="",
)
hubert_model = models[0]
hubert_model = hubert_model.to(config.device)
if config.is_half:
hubert_model = hubert_model.half()
else:
hubert_model = hubert_model.float()
hubert_model.eval()
weight_root = "weights"
weight_uvr5_root = "uvr5_weights"
index_root = "logs"
names = []
for name in os.listdir(weight_root):
if name.endswith(".pth"):
names.append(name)
index_paths = []
for root, dirs, files in os.walk(index_root, topdown=False):
for name in files:
if name.endswith(".index") and "trained" not in name:
index_paths.append("%s/%s" % (root, name))
uvr5_names = []
for name in os.listdir(weight_uvr5_root):
if name.endswith(".pth") or "onnx" in name:
uvr5_names.append(name.replace(".pth", ""))
def vc_single(
sid,
input_audio_path,
f0_up_key,
f0_file,
f0_method,
file_index,
#file_index2,
# file_big_npy,
index_rate,
filter_radius,
resample_sr,
rms_mix_rate,
protect,
crepe_hop_length,
root_location='./audios'
): # spk_item, input_audio0, vc_transform0,f0_file,f0method0
global tgt_sr, net_g, vc, hubert_model, version
if input_audio_path is None:
gr.Warning("You need to provide the path to an audio file")
return "You need to provide the path to an audio file", None
full_audio_path = root_location + '/' + input_audio_path
if not os.path.exists(full_audio_path):
gr.Warning(f"Could not find that file in audios/{input_audio_path}")
return f"Could not find that file in audios/{input_audio_path}", None
f0_up_key = int(f0_up_key)
try:
audio = load_audio(full_audio_path, 16000)
audio_max = np.abs(audio).max() / 0.95
if audio_max > 1:
audio /= audio_max
times = [0, 0, 0]
if hubert_model == None:
load_hubert()
if_f0 = cpt.get("f0", 1)
file_index = (
(
file_index.strip(" ")
.strip('"')
.strip("\n")
.strip('"')
.strip(" ")
.replace("trained", "added")
)
) # 防止小白写错,自动帮他替换掉
# file_big_npy = (
# file_big_npy.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
# )
audio_opt = vc.pipeline(
hubert_model,
net_g,
sid,
audio,
input_audio_path,
times,
f0_up_key,
f0_method,
file_index,
# file_big_npy,
index_rate,
if_f0,
filter_radius,
tgt_sr,
resample_sr,
rms_mix_rate,
version,
protect,
crepe_hop_length,
f0_file=f0_file,
)
if resample_sr >= 16000 and tgt_sr != resample_sr:
tgt_sr = resample_sr
index_info = (
"Using index:%s." % file_index
if os.path.exists(file_index)
else "Index not used."
)
gr.Info('Success.')
return "Success.\n %s\nTime:\n npy:%ss, f0:%ss, infer:%ss" % (
index_info,
times[0],
times[1],
times[2],
), (tgt_sr, audio_opt)
except:
info = traceback.format_exc()
print(info)
return info, (None, None)
def vc_multi(
sid,
dir_path,
opt_root,
paths,
f0_up_key,
f0_method,
file_index,
file_index2,
# file_big_npy,
index_rate,
filter_radius,
resample_sr,
rms_mix_rate,
protect,
format1,
crepe_hop_length,
):
try:
dir_path = (
dir_path.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
) # 防止小白拷路径头尾带了空格和"和回车
opt_root = opt_root.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
os.makedirs(opt_root, exist_ok=True)
try:
if dir_path != "":
paths = [os.path.join(dir_path, name) for name in os.listdir(dir_path)]
else:
paths = [path.name for path in paths]
except:
traceback.print_exc()
paths = [path.name for path in paths]
infos = []
for path in paths:
info, opt = vc_single(
sid,
path,
f0_up_key,
None,
f0_method,
file_index,
file_index2,
# file_big_npy,
index_rate,
filter_radius,
resample_sr,
rms_mix_rate,
protect,
crepe_hop_length
)
if "Success" in info:
try:
tgt_sr, audio_opt = opt
if format1 in ["wav", "flac"]:
sf.write(
"%s/%s.%s" % (opt_root, os.path.basename(path), format1),
audio_opt,
tgt_sr,
)
else:
path = "%s/%s.wav" % (opt_root, os.path.basename(path))
sf.write(
path,
audio_opt,
tgt_sr,
)
if os.path.exists(path):
os.system(
"ffmpeg -i %s -vn %s -q:a 2 -y"
% (path, path[:-4] + ".%s" % format1)
)
except:
info += traceback.format_exc()
infos.append("%s->%s" % (os.path.basename(path), info))
yield "\n".join(infos)
yield "\n".join(infos)
except:
yield traceback.format_exc()
def uvr(model_name, inp_root, save_root_vocal, paths, save_root_ins, agg, format0):
infos = []
try:
inp_root = inp_root.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
save_root_vocal = (
save_root_vocal.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
)
save_root_ins = (
save_root_ins.strip(" ").strip('"').strip("\n").strip('"').strip(" ")
)
if model_name == "onnx_dereverb_By_FoxJoy":
pre_fun = MDXNetDereverb(15)
else:
func = _audio_pre_ if "DeEcho" not in model_name else _audio_pre_new
pre_fun = func(
agg=int(agg),
model_path=os.path.join(weight_uvr5_root, model_name + ".pth"),
device=config.device,
is_half=config.is_half,
)
if inp_root != "":
paths = [os.path.join(inp_root, name) for name in os.listdir(inp_root)]
else:
paths = [path.name for path in paths]
for path in paths:
inp_path = os.path.join(inp_root, path)
need_reformat = 1
done = 0
try:
info = ffmpeg.probe(inp_path, cmd="ffprobe")
if (
info["streams"][0]["channels"] == 2
and info["streams"][0]["sample_rate"] == "44100"
):
need_reformat = 0
pre_fun._path_audio_(
inp_path, save_root_ins, save_root_vocal, format0
)
done = 1
except:
need_reformat = 1
traceback.print_exc()
if need_reformat == 1:
tmp_path = "%s/%s.reformatted.wav" % (tmp, os.path.basename(inp_path))
os.system(
"ffmpeg -i %s -vn -acodec pcm_s16le -ac 2 -ar 44100 %s -y"
% (inp_path, tmp_path)
)
inp_path = tmp_path
try:
if done == 0:
pre_fun._path_audio_(
inp_path, save_root_ins, save_root_vocal, format0
)
infos.append("%s->Success" % (os.path.basename(inp_path)))
yield "\n".join(infos)
except:
infos.append(
"%s->%s" % (os.path.basename(inp_path), traceback.format_exc())
)
yield "\n".join(infos)
except:
infos.append(traceback.format_exc())
yield "\n".join(infos)
finally:
try:
if model_name == "onnx_dereverb_By_FoxJoy":
del pre_fun.pred.model
del pre_fun.pred.model_
else:
del pre_fun.model
del pre_fun
except:
traceback.print_exc()
print("clean_empty_cache")
if torch.cuda.is_available():
torch.cuda.empty_cache()
yield "\n".join(infos)
# 一个选项卡全局只能有一个音色
def get_vc(sid):
global n_spk, tgt_sr, net_g, vc, cpt, version
if sid == "" or sid == []:
global hubert_model
if hubert_model != None: # 考虑到轮询, 需要加个判断看是否 sid 是由有模型切换到无模型的
print("clean_empty_cache")
del net_g, n_spk, vc, hubert_model, tgt_sr # ,cpt
hubert_model = net_g = n_spk = vc = hubert_model = tgt_sr = None
if torch.cuda.is_available():
torch.cuda.empty_cache()
###楼下不这么折腾清理不干净
if_f0 = cpt.get("f0", 1)
version = cpt.get("version", "v1")
if version == "v1":
if if_f0 == 1:
net_g = SynthesizerTrnMs256NSFsid(
*cpt["config"], is_half=config.is_half
)
else:
net_g = SynthesizerTrnMs256NSFsid_nono(*cpt["config"])
elif version == "v2":
if if_f0 == 1:
net_g = SynthesizerTrnMs768NSFsid(
*cpt["config"], is_half=config.is_half
)
else:
net_g = SynthesizerTrnMs768NSFsid_nono(*cpt["config"])
del net_g, cpt
if torch.cuda.is_available():
torch.cuda.empty_cache()
cpt = None
return {"visible": False, "__type__": "update"}
person = "%s/%s" % (weight_root, sid)
print("loading %s" % person)
cpt = torch.load(person, map_location="cpu")
tgt_sr = cpt["config"][-1]
cpt["config"][-3] = cpt["weight"]["emb_g.weight"].shape[0] # n_spk
if_f0 = cpt.get("f0", 1)
version = cpt.get("version", "v1")
if version == "v1":
if if_f0 == 1:
net_g = SynthesizerTrnMs256NSFsid(*cpt["config"], is_half=config.is_half)
else:
net_g = SynthesizerTrnMs256NSFsid_nono(*cpt["config"])
elif version == "v2":
if if_f0 == 1:
net_g = SynthesizerTrnMs768NSFsid(*cpt["config"], is_half=config.is_half)
else:
net_g = SynthesizerTrnMs768NSFsid_nono(*cpt["config"])
del net_g.enc_q
print(net_g.load_state_dict(cpt["weight"], strict=False))
net_g.eval().to(config.device)
if config.is_half:
net_g = net_g.half()
else:
net_g = net_g.float()
vc = VC(tgt_sr, config)
n_spk = cpt["config"][-3]
return {"visible": False, "maximum": n_spk, "__type__": "update"}
def change_choices():
names = []
for name in os.listdir(weight_root):
if name.endswith(".pth"):
names.append(name)
index_paths = []
for root, dirs, files in os.walk(index_root, topdown=False):
for name in files:
if name.endswith(".index") and "trained" not in name:
index_paths.append("%s/%s" % (root, name))
return {"choices": sorted(names), "__type__": "update"}, {
"choices": sorted(index_paths),
"__type__": "update",
}
def clean():
return {"value": "", "__type__": "update"}
sr_dict = {
"32k": 32000,
"40k": 40000,
"48k": 48000,
}
def if_done(done, p):
while 1:
if p.poll() == None:
sleep(0.5)
else:
break
done[0] = True
def if_done_multi(done, ps):
while 1:
# poll==None代表进程未结束
# 只要有一个进程未结束都不停
flag = 1
for p in ps:
if p.poll() == None:
flag = 0
sleep(0.5)
break
if flag == 1:
break
done[0] = True
def preprocess_dataset(trainset_dir, exp_dir, sr, n_p):
sr = sr_dict[sr]
os.makedirs("%s/logs/%s" % (now_dir, exp_dir), exist_ok=True)
f = open("%s/logs/%s/preprocess.log" % (now_dir, exp_dir), "w")
f.close()
cmd = (
config.python_cmd
+ " trainset_preprocess_pipeline_print.py %s %s %s %s/logs/%s "
% (trainset_dir, sr, n_p, now_dir, exp_dir)
+ str(config.noparallel)
)
print(cmd)
p = Popen(cmd, shell=True) # , stdin=PIPE, stdout=PIPE,stderr=PIPE,cwd=now_dir
###煞笔gr, popen read都非得全跑完了再一次性读取, 不用gr就正常读一句输出一句;只能额外弄出一个文本流定时读
done = [False]
threading.Thread(
target=if_done,
args=(
done,
p,
),
).start()
while 1:
with open("%s/logs/%s/preprocess.log" % (now_dir, exp_dir), "r") as f:
yield (f.read())
sleep(1)
if done[0] == True:
break
with open("%s/logs/%s/preprocess.log" % (now_dir, exp_dir), "r") as f:
log = f.read()
print(log)
gr.Info("End Preprocess means you're done with this step. Go to step 2.")
yield log
# but2.click(extract_f0,[gpus6,np7,f0method8,if_f0_3,trainset_dir4],[info2])
def extract_f0_feature(gpus, n_p, f0method, if_f0, exp_dir, version19, echl):
gpus = gpus.split("-")
os.makedirs("%s/logs/%s" % (now_dir, exp_dir), exist_ok=True)
f = open("%s/logs/%s/extract_f0_feature.log" % (now_dir, exp_dir), "w")
f.close()
if if_f0:
cmd = config.python_cmd + " extract_f0_print.py %s/logs/%s %s %s %s" % (
now_dir,
exp_dir,
n_p,
f0method,
echl,
)
print(cmd)
p = Popen(cmd, shell=True, cwd=now_dir) # , stdin=PIPE, stdout=PIPE,stderr=PIPE
###煞笔gr, popen read都非得全跑完了再一次性读取, 不用gr就正常读一句输出一句;只能额外弄出一个文本流定时读
done = [False]
threading.Thread(
target=if_done,
args=(
done,
p,
),
).start()
while 1:
with open(
"%s/logs/%s/extract_f0_feature.log" % (now_dir, exp_dir), "r"
) as f:
yield (f.read())
sleep(1)
if done[0] == True:
break
with open("%s/logs/%s/extract_f0_feature.log" % (now_dir, exp_dir), "r") as f:
log = f.read()
print(log)
gr.Info('Wait to see "all feature done" in the status box to know it finished.')
yield log
####对不同part分别开多进程
"""
n_part=int(sys.argv[1])
i_part=int(sys.argv[2])
i_gpu=sys.argv[3]
exp_dir=sys.argv[4]
os.environ["CUDA_VISIBLE_DEVICES"]=str(i_gpu)
"""
leng = len(gpus)
ps = []
for idx, n_g in enumerate(gpus):
cmd = (
config.python_cmd
+ " extract_feature_print.py %s %s %s %s %s/logs/%s %s"
% (
config.device,
leng,
idx,
n_g,
now_dir,
exp_dir,
version19,
)
)
print(cmd)
p = Popen(
cmd, shell=True, cwd=now_dir
) # , shell=True, stdin=PIPE, stdout=PIPE, stderr=PIPE, cwd=now_dir
ps.append(p)
###煞笔gr, popen read都非得全跑完了再一次性读取, 不用gr就正常读一句输出一句;只能额外弄出一个文本流定时读
done = [False]
threading.Thread(
target=if_done_multi,
args=(
done,
ps,
),
).start()
while 1:
with open("%s/logs/%s/extract_f0_feature.log" % (now_dir, exp_dir), "r") as f:
yield (f.read())
sleep(1)
if done[0] == True:
break
with open("%s/logs/%s/extract_f0_feature.log" % (now_dir, exp_dir), "r") as f:
log = f.read()
print(log)
yield log
def change_sr2(sr2, if_f0_3, version19):
path_str = "" if version19 == "v1" else "_v2"
f0_str = "f0" if if_f0_3 else ""
if_pretrained_generator_exist = os.access("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2), os.F_OK)
if_pretrained_discriminator_exist = os.access("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2), os.F_OK)
if (if_pretrained_generator_exist == False):
print("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2), "not exist, will not use pretrained model")
if (if_pretrained_discriminator_exist == False):
print("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2), "not exist, will not use pretrained model")
return (
("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2)) if if_pretrained_generator_exist else "",
("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2)) if if_pretrained_discriminator_exist else "",
{"visible": True, "__type__": "update"}
)
def change_version19(sr2, if_f0_3, version19):
path_str = "" if version19 == "v1" else "_v2"
f0_str = "f0" if if_f0_3 else ""
if_pretrained_generator_exist = os.access("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2), os.F_OK)
if_pretrained_discriminator_exist = os.access("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2), os.F_OK)
if (if_pretrained_generator_exist == False):
print("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2), "not exist, will not use pretrained model")
if (if_pretrained_discriminator_exist == False):
print("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2), "not exist, will not use pretrained model")
return (
("pretrained%s/%sG%s.pth" % (path_str, f0_str, sr2)) if if_pretrained_generator_exist else "",
("pretrained%s/%sD%s.pth" % (path_str, f0_str, sr2)) if if_pretrained_discriminator_exist else "",
)
def change_f0(if_f0_3, sr2, version19): # f0method8,pretrained_G14,pretrained_D15
path_str = "" if version19 == "v1" else "_v2"
if_pretrained_generator_exist = os.access("pretrained%s/f0G%s.pth" % (path_str, sr2), os.F_OK)
if_pretrained_discriminator_exist = os.access("pretrained%s/f0D%s.pth" % (path_str, sr2), os.F_OK)
if (if_pretrained_generator_exist == False):
print("pretrained%s/f0G%s.pth" % (path_str, sr2), "not exist, will not use pretrained model")
if (if_pretrained_discriminator_exist == False):
print("pretrained%s/f0D%s.pth" % (path_str, sr2), "not exist, will not use pretrained model")
if if_f0_3:
return (
{"visible": True, "__type__": "update"},
"pretrained%s/f0G%s.pth" % (path_str, sr2) if if_pretrained_generator_exist else "",
"pretrained%s/f0D%s.pth" % (path_str, sr2) if if_pretrained_discriminator_exist else "",
)
return (
{"visible": False, "__type__": "update"},
("pretrained%s/G%s.pth" % (path_str, sr2)) if if_pretrained_generator_exist else "",
("pretrained%s/D%s.pth" % (path_str, sr2)) if if_pretrained_discriminator_exist else "",
)
# but3.click(click_train,[exp_dir1,sr2,if_f0_3,save_epoch10,total_epoch11,batch_size12,if_save_latest13,pretrained_G14,pretrained_D15,gpus16])
def click_train(
exp_dir1,
sr2,
if_f0_3,
spk_id5,
save_epoch10,
total_epoch11,
batch_size12,
if_save_latest13,
pretrained_G14,
pretrained_D15,
gpus16,
if_cache_gpu17,
if_save_every_weights18,
version19,
):
# 生成filelist
exp_dir = "%s/logs/%s" % (now_dir, exp_dir1)
os.makedirs(exp_dir, exist_ok=True)
gt_wavs_dir = "%s/0_gt_wavs" % (exp_dir)
feature_dir = (
"%s/3_feature256" % (exp_dir)
if version19 == "v1"
else "%s/3_feature768" % (exp_dir)
)
if if_f0_3:
f0_dir = "%s/2a_f0" % (exp_dir)
f0nsf_dir = "%s/2b-f0nsf" % (exp_dir)
names = (
set([name.split(".")[0] for name in os.listdir(gt_wavs_dir)])
& set([name.split(".")[0] for name in os.listdir(feature_dir)])
& set([name.split(".")[0] for name in os.listdir(f0_dir)])
& set([name.split(".")[0] for name in os.listdir(f0nsf_dir)])
)
else:
names = set([name.split(".")[0] for name in os.listdir(gt_wavs_dir)]) & set(
[name.split(".")[0] for name in os.listdir(feature_dir)]
)
opt = []
for name in names:
if if_f0_3:
opt.append(
"%s/%s.wav|%s/%s.npy|%s/%s.wav.npy|%s/%s.wav.npy|%s"
% (
gt_wavs_dir.replace("\\", "\\\\"),
name,
feature_dir.replace("\\", "\\\\"),
name,
f0_dir.replace("\\", "\\\\"),
name,
f0nsf_dir.replace("\\", "\\\\"),
name,
spk_id5,
)
)
else:
opt.append(
"%s/%s.wav|%s/%s.npy|%s"
% (
gt_wavs_dir.replace("\\", "\\\\"),
name,
feature_dir.replace("\\", "\\\\"),
name,
spk_id5,
)
)
fea_dim = 256 if version19 == "v1" else 768
if if_f0_3:
for _ in range(2):
opt.append(
"%s/logs/mute/0_gt_wavs/mute%s.wav|%s/logs/mute/3_feature%s/mute.npy|%s/logs/mute/2a_f0/mute.wav.npy|%s/logs/mute/2b-f0nsf/mute.wav.npy|%s"
% (now_dir, sr2, now_dir, fea_dim, now_dir, now_dir, spk_id5)
)
else:
for _ in range(2):
opt.append(
"%s/logs/mute/0_gt_wavs/mute%s.wav|%s/logs/mute/3_feature%s/mute.npy|%s"
% (now_dir, sr2, now_dir, fea_dim, spk_id5)
)
shuffle(opt)
with open("%s/filelist.txt" % exp_dir, "w") as f:
f.write("\n".join(opt))
print("write filelist done")
# 生成config#无需生成config
# cmd = python_cmd + " train_nsf_sim_cache_sid_load_pretrain.py -e mi-test -sr 40k -f0 1 -bs 4 -g 0 -te 10 -se 5 -pg pretrained/f0G40k.pth -pd pretrained/f0D40k.pth -l 1 -c 0"
print("use gpus:", gpus16)
if pretrained_G14 == "":
print("no pretrained Generator")
if pretrained_D15 == "":
print("no pretrained Discriminator")
if gpus16:
cmd = (
config.python_cmd
+ " train_nsf_sim_cache_sid_load_pretrain.py -e %s -sr %s -f0 %s -bs %s -g %s -te %s -se %s %s %s -l %s -c %s -sw %s -v %s"
% (
exp_dir1,
sr2,
1 if if_f0_3 else 0,
batch_size12,
gpus16,
total_epoch11,
save_epoch10,
("-pg %s" % pretrained_G14) if pretrained_G14 != "" else "",
("-pd %s" % pretrained_D15) if pretrained_D15 != "" else "",
1 if if_save_latest13 == i18n("是") else 0,
1 if if_cache_gpu17 == i18n("是") else 0,
1 if if_save_every_weights18 == i18n("是") else 0,
version19,
)
)
else:
cmd = (
config.python_cmd
+ " train_nsf_sim_cache_sid_load_pretrain.py -e %s -sr %s -f0 %s -bs %s -te %s -se %s %s %s -l %s -c %s -sw %s -v %s"
% (
exp_dir1,
sr2,
1 if if_f0_3 else 0,
batch_size12,
total_epoch11,
save_epoch10,
("-pg %s" % pretrained_G14) if pretrained_G14 != "" else "\b",
("-pd %s" % pretrained_D15) if pretrained_D15 != "" else "\b",
1 if if_save_latest13 == i18n("是") else 0,
1 if if_cache_gpu17 == i18n("是") else 0,
1 if if_save_every_weights18 == i18n("是") else 0,
version19,
)
)
print(cmd)
p = Popen(cmd, shell=True, cwd=now_dir)
p.wait()
gr.Warning('Done! Check your console in Colab to see if it trained successfully.')
return 'Done! Check your console in Colab to see if it trained successfully.'
# but4.click(train_index, [exp_dir1], info3)
def train_index(exp_dir1, version19):
exp_dir = "%s/logs/%s" % (now_dir, exp_dir1)
os.makedirs(exp_dir, exist_ok=True)
feature_dir = (
"%s/3_feature256" % (exp_dir)
if version19 == "v1"
else "%s/3_feature768" % (exp_dir)
)
if os.path.exists(feature_dir) == False:
return "请先进行特征提取!"
listdir_res = list(os.listdir(feature_dir))
if len(listdir_res) == 0:
return "请先进行特征提取!"
npys = []
for name in sorted(listdir_res):
phone = np.load("%s/%s" % (feature_dir, name))
npys.append(phone)
big_npy = np.concatenate(npys, 0)
big_npy_idx = np.arange(big_npy.shape[0])
np.random.shuffle(big_npy_idx)
big_npy = big_npy[big_npy_idx]
np.save("%s/total_fea.npy" % exp_dir, big_npy)
# n_ivf = big_npy.shape[0] // 39
n_ivf = min(int(16 * np.sqrt(big_npy.shape[0])), big_npy.shape[0] // 39)
infos = []
infos.append("%s,%s" % (big_npy.shape, n_ivf))
yield "\n".join(infos)
index = faiss.index_factory(256 if version19 == "v1" else 768, "IVF%s,Flat" % n_ivf)
# index = faiss.index_factory(256if version19=="v1"else 768, "IVF%s,PQ128x4fs,RFlat"%n_ivf)
infos.append("training")
yield "\n".join(infos)
index_ivf = faiss.extract_index_ivf(index) #
index_ivf.nprobe = 1
index.train(big_npy)
faiss.write_index(
index,
"%s/trained_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (exp_dir, n_ivf, index_ivf.nprobe, exp_dir1, version19),
)
# faiss.write_index(index, '%s/trained_IVF%s_Flat_FastScan_%s.index'%(exp_dir,n_ivf,version19))
infos.append("adding")
yield "\n".join(infos)
batch_size_add = 8192
for i in range(0, big_npy.shape[0], batch_size_add):
index.add(big_npy[i : i + batch_size_add])
faiss.write_index(
index,
"%s/added_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (exp_dir, n_ivf, index_ivf.nprobe, exp_dir1, version19),
)
infos.append(
"成功构建索引,added_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (n_ivf, index_ivf.nprobe, exp_dir1, version19)
)
# faiss.write_index(index, '%s/added_IVF%s_Flat_FastScan_%s.index'%(exp_dir,n_ivf,version19))
# infos.append("成功构建索引,added_IVF%s_Flat_FastScan_%s.index"%(n_ivf,version19))
gr.Info('Successfully trained the index file!')
yield "\n".join(infos)
# but5.click(train1key, [exp_dir1, sr2, if_f0_3, trainset_dir4, spk_id5, gpus6, np7, f0method8, save_epoch10, total_epoch11, batch_size12, if_save_latest13, pretrained_G14, pretrained_D15, gpus16, if_cache_gpu17], info3)
def train1key(
exp_dir1,
sr2,
if_f0_3,
trainset_dir4,
spk_id5,
np7,
f0method8,
save_epoch10,
total_epoch11,
batch_size12,
if_save_latest13,
pretrained_G14,
pretrained_D15,
gpus16,
if_cache_gpu17,
if_save_every_weights18,
version19,
echl
):
infos = []
def get_info_str(strr):
infos.append(strr)
return "\n".join(infos)
model_log_dir = "%s/logs/%s" % (now_dir, exp_dir1)
preprocess_log_path = "%s/preprocess.log" % model_log_dir
extract_f0_feature_log_path = "%s/extract_f0_feature.log" % model_log_dir
gt_wavs_dir = "%s/0_gt_wavs" % model_log_dir
feature_dir = (
"%s/3_feature256" % model_log_dir
if version19 == "v1"
else "%s/3_feature768" % model_log_dir
)
os.makedirs(model_log_dir, exist_ok=True)
#########step1:处理数据
open(preprocess_log_path, "w").close()
cmd = (
config.python_cmd
+ " trainset_preprocess_pipeline_print.py %s %s %s %s "
% (trainset_dir4, sr_dict[sr2], np7, model_log_dir)
+ str(config.noparallel)
)
yield get_info_str(i18n("step1:正在处理数据"))
yield get_info_str(cmd)
p = Popen(cmd, shell=True)
p.wait()
with open(preprocess_log_path, "r") as f:
print(f.read())
#########step2a:提取音高
open(extract_f0_feature_log_path, "w")
if if_f0_3:
yield get_info_str("step2a:正在提取音高")
cmd = config.python_cmd + " extract_f0_print.py %s %s %s %s" % (
model_log_dir,
np7,
f0method8,
echl
)
yield get_info_str(cmd)
p = Popen(cmd, shell=True, cwd=now_dir)
p.wait()
with open(extract_f0_feature_log_path, "r") as f:
print(f.read())
else:
yield get_info_str(i18n("step2a:无需提取音高"))
#######step2b:提取特征
yield get_info_str(i18n("step2b:正在提取特征"))
gpus = gpus16.split("-")
leng = len(gpus)
ps = []
for idx, n_g in enumerate(gpus):
cmd = config.python_cmd + " extract_feature_print.py %s %s %s %s %s %s" % (
config.device,
leng,
idx,
n_g,
model_log_dir,
version19,
)
yield get_info_str(cmd)
p = Popen(
cmd, shell=True, cwd=now_dir
) # , shell=True, stdin=PIPE, stdout=PIPE, stderr=PIPE, cwd=now_dir
ps.append(p)
for p in ps:
p.wait()
with open(extract_f0_feature_log_path, "r") as f:
print(f.read())
#######step3a:训练模型
yield get_info_str(i18n("step3a:正在训练模型"))
# 生成filelist
if if_f0_3:
f0_dir = "%s/2a_f0" % model_log_dir
f0nsf_dir = "%s/2b-f0nsf" % model_log_dir
names = (
set([name.split(".")[0] for name in os.listdir(gt_wavs_dir)])
& set([name.split(".")[0] for name in os.listdir(feature_dir)])
& set([name.split(".")[0] for name in os.listdir(f0_dir)])
& set([name.split(".")[0] for name in os.listdir(f0nsf_dir)])
)
else:
names = set([name.split(".")[0] for name in os.listdir(gt_wavs_dir)]) & set(
[name.split(".")[0] for name in os.listdir(feature_dir)]
)
opt = []
for name in names:
if if_f0_3:
opt.append(
"%s/%s.wav|%s/%s.npy|%s/%s.wav.npy|%s/%s.wav.npy|%s"
% (
gt_wavs_dir.replace("\\", "\\\\"),
name,
feature_dir.replace("\\", "\\\\"),
name,
f0_dir.replace("\\", "\\\\"),
name,
f0nsf_dir.replace("\\", "\\\\"),
name,
spk_id5,
)
)
else:
opt.append(
"%s/%s.wav|%s/%s.npy|%s"
% (
gt_wavs_dir.replace("\\", "\\\\"),
name,
feature_dir.replace("\\", "\\\\"),
name,
spk_id5,
)
)
fea_dim = 256 if version19 == "v1" else 768
if if_f0_3:
for _ in range(2):
opt.append(
"%s/logs/mute/0_gt_wavs/mute%s.wav|%s/logs/mute/3_feature%s/mute.npy|%s/logs/mute/2a_f0/mute.wav.npy|%s/logs/mute/2b-f0nsf/mute.wav.npy|%s"
% (now_dir, sr2, now_dir, fea_dim, now_dir, now_dir, spk_id5)
)
else:
for _ in range(2):
opt.append(
"%s/logs/mute/0_gt_wavs/mute%s.wav|%s/logs/mute/3_feature%s/mute.npy|%s"
% (now_dir, sr2, now_dir, fea_dim, spk_id5)
)
shuffle(opt)
with open("%s/filelist.txt" % model_log_dir, "w") as f:
f.write("\n".join(opt))
yield get_info_str("write filelist done")
if gpus16:
cmd = (
config.python_cmd
+" train_nsf_sim_cache_sid_load_pretrain.py -e %s -sr %s -f0 %s -bs %s -g %s -te %s -se %s %s %s -l %s -c %s -sw %s -v %s"
% (
exp_dir1,
sr2,
1 if if_f0_3 else 0,
batch_size12,
gpus16,
total_epoch11,
save_epoch10,
("-pg %s" % pretrained_G14) if pretrained_G14 != "" else "",
("-pd %s" % pretrained_D15) if pretrained_D15 != "" else "",
1 if if_save_latest13 == i18n("是") else 0,
1 if if_cache_gpu17 == i18n("是") else 0,
1 if if_save_every_weights18 == i18n("是") else 0,
version19,
)
)
else:
cmd = (
config.python_cmd
+ " train_nsf_sim_cache_sid_load_pretrain.py -e %s -sr %s -f0 %s -bs %s -te %s -se %s %s %s -l %s -c %s -sw %s -v %s"
% (
exp_dir1,
sr2,
1 if if_f0_3 else 0,
batch_size12,
total_epoch11,
save_epoch10,
("-pg %s" % pretrained_G14) if pretrained_G14 != "" else "",
("-pd %s" % pretrained_D15) if pretrained_D15 != "" else "",
1 if if_save_latest13 == i18n("是") else 0,
1 if if_cache_gpu17 == i18n("是") else 0,
1 if if_save_every_weights18 == i18n("是") else 0,
version19,
)
)
yield get_info_str(cmd)
p = Popen(cmd, shell=True, cwd=now_dir)
p.wait()
yield get_info_str(i18n("训练结束, 您可查看控制台训练日志或实验文件夹下的train.log"))
#######step3b:训练索引
npys = []
listdir_res = list(os.listdir(feature_dir))
for name in sorted(listdir_res):
phone = np.load("%s/%s" % (feature_dir, name))
npys.append(phone)
big_npy = np.concatenate(npys, 0)
big_npy_idx = np.arange(big_npy.shape[0])
np.random.shuffle(big_npy_idx)
big_npy = big_npy[big_npy_idx]
np.save("%s/total_fea.npy" % model_log_dir, big_npy)
# n_ivf = big_npy.shape[0] // 39
n_ivf = min(int(16 * np.sqrt(big_npy.shape[0])), big_npy.shape[0] // 39)
yield get_info_str("%s,%s" % (big_npy.shape, n_ivf))
index = faiss.index_factory(256 if version19 == "v1" else 768, "IVF%s,Flat" % n_ivf)
yield get_info_str("training index")
index_ivf = faiss.extract_index_ivf(index) #
index_ivf.nprobe = 1
index.train(big_npy)
faiss.write_index(
index,
"%s/trained_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (model_log_dir, n_ivf, index_ivf.nprobe, exp_dir1, version19),
)
yield get_info_str("adding index")
batch_size_add = 8192
for i in range(0, big_npy.shape[0], batch_size_add):
index.add(big_npy[i : i + batch_size_add])
faiss.write_index(
index,
"%s/added_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (model_log_dir, n_ivf, index_ivf.nprobe, exp_dir1, version19),
)
yield get_info_str(
"成功构建索引, added_IVF%s_Flat_nprobe_%s_%s_%s.index"
% (n_ivf, index_ivf.nprobe, exp_dir1, version19)
)
yield get_info_str(i18n("全流程结束!"))
# ckpt_path2.change(change_info_,[ckpt_path2],[sr__,if_f0__])
def change_info_(ckpt_path):
if (
os.path.exists(ckpt_path.replace(os.path.basename(ckpt_path), "train.log"))
== False
):
return {"__type__": "update"}, {"__type__": "update"}, {"__type__": "update"}
try:
with open(
ckpt_path.replace(os.path.basename(ckpt_path), "train.log"), "r"
) as f:
info = eval(f.read().strip("\n").split("\n")[0].split("\t")[-1])
sr, f0 = info["sample_rate"], info["if_f0"]
version = "v2" if ("version" in info and info["version"] == "v2") else "v1"
return sr, str(f0), version
except:
traceback.print_exc()
return {"__type__": "update"}, {"__type__": "update"}, {"__type__": "update"}
from infer_pack.models_onnx import SynthesizerTrnMsNSFsidM
def export_onnx(ModelPath, ExportedPath, MoeVS=True):
cpt = torch.load(ModelPath, map_location="cpu")
cpt["config"][-3] = cpt["weight"]["emb_g.weight"].shape[0] # n_spk
hidden_channels = 256 if cpt.get("version","v1")=="v1"else 768#cpt["config"][-2] # hidden_channels,为768Vec做准备
test_phone = torch.rand(1, 200, hidden_channels) # hidden unit
test_phone_lengths = torch.tensor([200]).long() # hidden unit 长度(貌似没啥用)
test_pitch = torch.randint(size=(1, 200), low=5, high=255) # 基频(单位赫兹)
test_pitchf = torch.rand(1, 200) # nsf基频
test_ds = torch.LongTensor([0]) # 说话人ID
test_rnd = torch.rand(1, 192, 200) # 噪声(加入随机因子)
device = "cpu" # 导出时设备(不影响使用模型)
net_g = SynthesizerTrnMsNSFsidM(
*cpt["config"], is_half=False,version=cpt.get("version","v1")
) # fp32导出(C++要支持fp16必须手动将内存重新排列所以暂时不用fp16)
net_g.load_state_dict(cpt["weight"], strict=False)
input_names = ["phone", "phone_lengths", "pitch", "pitchf", "ds", "rnd"]
output_names = [
"audio",
]
# net_g.construct_spkmixmap(n_speaker) 多角色混合轨道导出
torch.onnx.export(
net_g,
(
test_phone.to(device),
test_phone_lengths.to(device),
test_pitch.to(device),
test_pitchf.to(device),
test_ds.to(device),
test_rnd.to(device),
),
ExportedPath,
dynamic_axes={
"phone": [1],
"pitch": [1],
"pitchf": [1],
"rnd": [2],
},
do_constant_folding=False,
opset_version=16,
verbose=False,
input_names=input_names,
output_names=output_names,
)
return "Finished"
#region Mangio-RVC-Fork CLI App
import re as regex
import scipy.io.wavfile as wavfile
cli_current_page = "HOME"
def cli_split_command(com):
exp = r'(?:(?<=\s)|^)"(.*?)"(?=\s|$)|(\S+)'
split_array = regex.findall(exp, com)
split_array = [group[0] if group[0] else group[1] for group in split_array]
return split_array
def execute_generator_function(genObject):
for _ in genObject: pass
def cli_infer(com):
# get VC first
com = cli_split_command(com)
model_name = com[0]
source_audio_path = com[1]
output_file_name = com[2]
feature_index_path = com[3]
f0_file = None # Not Implemented Yet
# Get parameters for inference
speaker_id = int(com[4])
transposition = float(com[5])
f0_method = com[6]
crepe_hop_length = int(com[7])
harvest_median_filter = int(com[8])
resample = int(com[9])
mix = float(com[10])
feature_ratio = float(com[11])
protection_amnt = float(com[12])
print("Mangio-RVC-Fork Infer-CLI: Starting the inference...")
vc_data = get_vc(model_name)
print(vc_data)
print("Mangio-RVC-Fork Infer-CLI: Performing inference...")
conversion_data = vc_single(
speaker_id,
source_audio_path,
transposition,
f0_file,
f0_method,
feature_index_path,
#feature_index_path,
feature_ratio,
harvest_median_filter,
resample,
mix,
protection_amnt,
crepe_hop_length,
)
if "Success." in conversion_data[0]:
print("Mangio-RVC-Fork Infer-CLI: Inference succeeded. Writing to %s/%s..." % ('audio-outputs', output_file_name))
wavfile.write('%s/%s' % ('audio-outputs', output_file_name), conversion_data[1][0], conversion_data[1][1])
print("Mangio-RVC-Fork Infer-CLI: Finished! Saved output to %s/%s" % ('audio-outputs', output_file_name))
else:
print("Mangio-RVC-Fork Infer-CLI: Inference failed. Here's the traceback: ")
print(conversion_data[0])
def cli_pre_process(com):
com = cli_split_command(com)
model_name = com[0]
trainset_directory = com[1]
sample_rate = com[2]
num_processes = int(com[3])
print("Mangio-RVC-Fork Pre-process: Starting...")
generator = preprocess_dataset(
trainset_directory,
model_name,
sample_rate,
num_processes
)
execute_generator_function(generator)
print("Mangio-RVC-Fork Pre-process: Finished")
def cli_extract_feature(com):
com = cli_split_command(com)
model_name = com[0]
gpus = com[1]
num_processes = int(com[2])
has_pitch_guidance = True if (int(com[3]) == 1) else False
f0_method = com[4]
crepe_hop_length = int(com[5])
version = com[6] # v1 or v2
print("Mangio-RVC-CLI: Extract Feature Has Pitch: " + str(has_pitch_guidance))
print("Mangio-RVC-CLI: Extract Feature Version: " + str(version))
print("Mangio-RVC-Fork Feature Extraction: Starting...")
generator = extract_f0_feature(
gpus,
num_processes,
f0_method,
has_pitch_guidance,
model_name,
version,
crepe_hop_length
)
execute_generator_function(generator)
print("Mangio-RVC-Fork Feature Extraction: Finished")
def cli_train(com):
com = cli_split_command(com)
model_name = com[0]
sample_rate = com[1]
has_pitch_guidance = True if (int(com[2]) == 1) else False
speaker_id = int(com[3])
save_epoch_iteration = int(com[4])
total_epoch = int(com[5]) # 10000
batch_size = int(com[6])
gpu_card_slot_numbers = com[7]
if_save_latest = i18n("是") if (int(com[8]) == 1) else i18n("否")
if_cache_gpu = i18n("是") if (int(com[9]) == 1) else i18n("否")
if_save_every_weight = i18n("是") if (int(com[10]) == 1) else i18n("否")
version = com[11]
pretrained_base = "pretrained/" if version == "v1" else "pretrained_v2/"
g_pretrained_path = "%sf0G%s.pth" % (pretrained_base, sample_rate)
d_pretrained_path = "%sf0D%s.pth" % (pretrained_base, sample_rate)
print("Mangio-RVC-Fork Train-CLI: Training...")
click_train(
model_name,
sample_rate,
has_pitch_guidance,
speaker_id,
save_epoch_iteration,
total_epoch,
batch_size,
if_save_latest,
g_pretrained_path,
d_pretrained_path,
gpu_card_slot_numbers,
if_cache_gpu,
if_save_every_weight,
version
)
def cli_train_feature(com):
com = cli_split_command(com)
model_name = com[0]
version = com[1]
print("Mangio-RVC-Fork Train Feature Index-CLI: Training... Please wait")
generator = train_index(
model_name,
version
)
execute_generator_function(generator)
print("Mangio-RVC-Fork Train Feature Index-CLI: Done!")
def cli_extract_model(com):
com = cli_split_command(com)
model_path = com[0]
save_name = com[1]
sample_rate = com[2]
has_pitch_guidance = com[3]
info = com[4]
version = com[5]
extract_small_model_process = extract_small_model(
model_path,
save_name,
sample_rate,
has_pitch_guidance,
info,
version
)
if extract_small_model_process == "Success.":
print("Mangio-RVC-Fork Extract Small Model: Success!")
else:
print(str(extract_small_model_process))
print("Mangio-RVC-Fork Extract Small Model: Failed!")
def print_page_details():
if cli_current_page == "HOME":
print(" go home : Takes you back to home with a navigation list.")
print(" go infer : Takes you to inference command execution.\n")
print(" go pre-process : Takes you to training step.1) pre-process command execution.")
print(" go extract-feature : Takes you to training step.2) extract-feature command execution.")
print(" go train : Takes you to training step.3) being or continue training command execution.")
print(" go train-feature : Takes you to the train feature index command execution.\n")
print(" go extract-model : Takes you to the extract small model command execution.")
elif cli_current_page == "INFER":
print(" arg 1) model name with .pth in ./weights: mi-test.pth")
print(" arg 2) source audio path: myFolder\\MySource.wav")
print(" arg 3) output file name to be placed in './audio-outputs': MyTest.wav")
print(" arg 4) feature index file path: logs/mi-test/added_IVF3042_Flat_nprobe_1.index")
print(" arg 5) speaker id: 0")
print(" arg 6) transposition: 0")
print(" arg 7) f0 method: harvest (pm, harvest, crepe, crepe-tiny, hybrid[x,x,x,x], mangio-crepe, mangio-crepe-tiny)")
print(" arg 8) crepe hop length: 160")
print(" arg 9) harvest median filter radius: 3 (0-7)")
print(" arg 10) post resample rate: 0")
print(" arg 11) mix volume envelope: 1")
print(" arg 12) feature index ratio: 0.78 (0-1)")
print(" arg 13) Voiceless Consonant Protection (Less Artifact): 0.33 (Smaller number = more protection. 0.50 means Dont Use.) \n")
print("Example: mi-test.pth saudio/Sidney.wav myTest.wav logs/mi-test/added_index.index 0 -2 harvest 160 3 0 1 0.95 0.33")
elif cli_current_page == "PRE-PROCESS":
print(" arg 1) Model folder name in ./logs: mi-test")
print(" arg 2) Trainset directory: mydataset (or) E:\\my-data-set")
print(" arg 3) Sample rate: 40k (32k, 40k, 48k)")
print(" arg 4) Number of CPU threads to use: 8 \n")
print("Example: mi-test mydataset 40k 24")
elif cli_current_page == "EXTRACT-FEATURE":
print(" arg 1) Model folder name in ./logs: mi-test")
print(" arg 2) Gpu card slot: 0 (0-1-2 if using 3 GPUs)")
print(" arg 3) Number of CPU threads to use: 8")
print(" arg 4) Has Pitch Guidance?: 1 (0 for no, 1 for yes)")
print(" arg 5) f0 Method: harvest (pm, harvest, dio, crepe)")
print(" arg 6) Crepe hop length: 128")
print(" arg 7) Version for pre-trained models: v2 (use either v1 or v2)\n")
print("Example: mi-test 0 24 1 harvest 128 v2")
elif cli_current_page == "TRAIN":
print(" arg 1) Model folder name in ./logs: mi-test")
print(" arg 2) Sample rate: 40k (32k, 40k, 48k)")
print(" arg 3) Has Pitch Guidance?: 1 (0 for no, 1 for yes)")
print(" arg 4) speaker id: 0")
print(" arg 5) Save epoch iteration: 50")
print(" arg 6) Total epochs: 10000")
print(" arg 7) Batch size: 8")
print(" arg 8) Gpu card slot: 0 (0-1-2 if using 3 GPUs)")
print(" arg 9) Save only the latest checkpoint: 0 (0 for no, 1 for yes)")
print(" arg 10) Whether to cache training set to vram: 0 (0 for no, 1 for yes)")
print(" arg 11) Save extracted small model every generation?: 0 (0 for no, 1 for yes)")
print(" arg 12) Model architecture version: v2 (use either v1 or v2)\n")
print("Example: mi-test 40k 1 0 50 10000 8 0 0 0 0 v2")
elif cli_current_page == "TRAIN-FEATURE":
print(" arg 1) Model folder name in ./logs: mi-test")
print(" arg 2) Model architecture version: v2 (use either v1 or v2)\n")
print("Example: mi-test v2")
elif cli_current_page == "EXTRACT-MODEL":
print(" arg 1) Model Path: logs/mi-test/G_168000.pth")
print(" arg 2) Model save name: MyModel")
print(" arg 3) Sample rate: 40k (32k, 40k, 48k)")
print(" arg 4) Has Pitch Guidance?: 1 (0 for no, 1 for yes)")
print(' arg 5) Model information: "My Model"')
print(" arg 6) Model architecture version: v2 (use either v1 or v2)\n")
print('Example: logs/mi-test/G_168000.pth MyModel 40k 1 "Created by Cole Mangio" v2')
print("")
def change_page(page):
global cli_current_page
cli_current_page = page
return 0
def execute_command(com):
if com == "go home":
return change_page("HOME")
elif com == "go infer":
return change_page("INFER")
elif com == "go pre-process":
return change_page("PRE-PROCESS")
elif com == "go extract-feature":
return change_page("EXTRACT-FEATURE")
elif com == "go train":
return change_page("TRAIN")
elif com == "go train-feature":
return change_page("TRAIN-FEATURE")
elif com == "go extract-model":
return change_page("EXTRACT-MODEL")
else:
if com[:3] == "go ":
print("page '%s' does not exist!" % com[3:])
return 0
if cli_current_page == "INFER":
cli_infer(com)
elif cli_current_page == "PRE-PROCESS":
cli_pre_process(com)
elif cli_current_page == "EXTRACT-FEATURE":
cli_extract_feature(com)
elif cli_current_page == "TRAIN":
cli_train(com)
elif cli_current_page == "TRAIN-FEATURE":
cli_train_feature(com)
elif cli_current_page == "EXTRACT-MODEL":
cli_extract_model(com)
def cli_navigation_loop():
while True:
print("You are currently in '%s':" % cli_current_page)
print_page_details()
command = input("%s: " % cli_current_page)
try:
execute_command(command)
except:
print(traceback.format_exc())
if(config.is_cli):
print("\n\nMangio-RVC-Fork v2 CLI App!\n")
print("Welcome to the CLI version of RVC. Please read the documentation on https://github.com/Mangio621/Mangio-RVC-Fork (README.MD) to understand how to use this app.\n")
cli_navigation_loop()
#endregion
#region RVC WebUI App
def get_presets():
data = None
with open('../inference-presets.json', 'r') as file:
data = json.load(file)
preset_names = []
for preset in data['presets']:
preset_names.append(preset['name'])
return preset_names
def change_choices2():
audio_files=[]
for filename in os.listdir("./audios"):
if filename.endswith(('.wav','.mp3','.ogg')):
audio_files.append(filename)
return {"choices": sorted(audio_files), "__type__": "update"}, {"__type__": "update"}
audio_files=[]
if not os.path.exists('audios'):
os.mkdir('audios')
for filename in os.listdir("./audios"):
if filename.endswith(('.wav','.mp3','.ogg')):
audio_files.append(filename)
def get_index():
if check_for_name() != '':
chosen_model=sorted(names)[0].split(".")[0]
logs_path="./logs/"+chosen_model
if os.path.exists(logs_path):
for file in os.listdir(logs_path):
if file.endswith(".index"):
return os.path.join(logs_path, file)
return ''
else:
return ''
def get_indexes():
indexes_list=[]
for dirpath, dirnames, filenames in os.walk("./logs/"):
for filename in filenames:
if filename.endswith(".index"):
indexes_list.append(os.path.join(dirpath,filename))
if len(indexes_list) > 0:
return indexes_list
else:
return ''
def get_name():
if len(audio_files) > 0:
return sorted(audio_files)[0]
else:
return ''
def save_to_wav(record_button):
if record_button is None:
pass
else:
path_to_file=record_button
new_name = datetime.datetime.now().strftime("%Y-%m-%d_%H-%M-%S")+'.wav'
new_path='./audios/'+new_name
shutil.move(path_to_file,new_path)
return os.path.basename(new_path)
def save_to_wav2(dropbox):
file_path=dropbox.name
shutil.move(file_path,'./audios')
return os.path.basename(file_path)
def match_index(sid0):
folder=sid0.split(".")[0]
parent_dir="./logs/"+folder
if os.path.exists(parent_dir):
for filename in os.listdir(parent_dir):
if filename.endswith(".index"):
index_path=os.path.join(parent_dir,filename)
return index_path
else:
return ''
def check_for_name():
if len(names) > 0:
return sorted(names)[0]
else:
return ''
def download_from_url(url, model):
if url == '':
return "URL cannot be left empty."
if model =='':
return "You need to name your model. For example: My-Model"
url = url.strip()
zip_dirs = ["zips", "unzips"]
for directory in zip_dirs:
if os.path.exists(directory):
shutil.rmtree(directory)
os.makedirs("zips", exist_ok=True)
os.makedirs("unzips", exist_ok=True)
zipfile = model + '.zip'
zipfile_path = './zips/' + zipfile
try:
if "drive.google.com" in url:
subprocess.run(["gdown", url, "--fuzzy", "-O", zipfile_path])
elif "mega.nz" in url:
m = Mega()
m.download_url(url, './zips')
else:
subprocess.run(["wget", url, "-O", zipfile_path])
for filename in os.listdir("./zips"):
if filename.endswith(".zip"):
zipfile_path = os.path.join("./zips/",filename)
shutil.unpack_archive(zipfile_path, "./unzips", 'zip')
else:
return "No zipfile found."
for root, dirs, files in os.walk('./unzips'):
for file in files:
file_path = os.path.join(root, file)
if file.endswith(".index"):
os.mkdir(f'./logs/{model}')
shutil.copy2(file_path,f'./logs/{model}')
elif "G_" not in file and "D_" not in file and file.endswith(".pth"):
shutil.copy(file_path,f'./weights/{model}.pth')
shutil.rmtree("zips")
shutil.rmtree("unzips")
return "Success."
except:
return "There's been an error."
def success_message(face):
return f'{face.name} has been uploaded.', 'None'
def mouth(size, face, voice, faces):
if size == 'Half':
size = 2
else:
size = 1
if faces == 'None':
character = face.name
else:
if faces == 'Ben Shapiro':
character = '/content/wav2lip-HD/inputs/ben-shapiro-10.mp4'
elif faces == 'Andrew Tate':
character = '/content/wav2lip-HD/inputs/tate-7.mp4'
command = "python inference.py " \
"--checkpoint_path checkpoints/wav2lip.pth " \
f"--face {character} " \
f"--audio {voice} " \
"--pads 0 20 0 0 " \
"--outfile /content/wav2lip-HD/outputs/result.mp4 " \
"--fps 24 " \
f"--resize_factor {size}"
process = subprocess.Popen(command, shell=True, cwd='/content/wav2lip-HD/Wav2Lip-master')
stdout, stderr = process.communicate()
return '/content/wav2lip-HD/outputs/result.mp4', 'Animation completed.'
eleven_voices = ['Adam','Antoni','Josh','Arnold','Sam','Bella','Rachel','Domi','Elli']
eleven_voices_ids=['pNInz6obpgDQGcFmaJgB','ErXwobaYiN019PkySvjV','TxGEqnHWrfWFTfGW9XjX','VR6AewLTigWG4xSOukaG','yoZ06aMxZJJ28mfd3POQ','EXAVITQu4vr4xnSDxMaL','21m00Tcm4TlvDq8ikWAM','AZnzlk1XvdvUeBnXmlld','MF3mGyEYCl7XYWbV9V6O']
chosen_voice = dict(zip(eleven_voices, eleven_voices_ids))
def elevenTTS(xiapi, text, id, lang):
if xiapi!= '' and id !='':
choice = chosen_voice[id]
CHUNK_SIZE = 1024
url = f"https://api.elevenlabs.io/v1/text-to-speech/{choice}"
headers = {
"Accept": "audio/mpeg",
"Content-Type": "application/json",
"xi-api-key": xiapi
}
if lang == 'en':
data = {
"text": text,
"model_id": "eleven_monolingual_v1",
"voice_settings": {
"stability": 0.5,
"similarity_boost": 0.5
}
}
else:
data = {
"text": text,
"model_id": "eleven_multilingual_v1",
"voice_settings": {
"stability": 0.5,
"similarity_boost": 0.5
}
}
response = requests.post(url, json=data, headers=headers)
with open('./temp_eleven.mp3', 'wb') as f:
for chunk in response.iter_content(chunk_size=CHUNK_SIZE):
if chunk:
f.write(chunk)
aud_path = save_to_wav('./temp_eleven.mp3')
return aud_path, aud_path
else:
tts = gTTS(text, lang=lang)
tts.save('./temp_gTTS.mp3')
aud_path = save_to_wav('./temp_gTTS.mp3')
return aud_path, aud_path
def upload_to_dataset(files, dir):
gr.Warning('Wait until your data is uploaded...')
if dir == '':
dir = './dataset'
if not os.path.exists(dir):
os.makedirs(dir)
count = 0
for file in files:
path=file.name
shutil.copy2(path,dir)
count += 1
gr.Info(f'Done! {count} files were uploaded. Now click "1.Process The Dataset."')
return f' {count} files uploaded to {dir}.'
def zip_downloader(model):
if not os.path.exists(f'./weights/{model}.pth'):
return {"__type__": "update"}, f'Make sure the Voice Name is correct. I could not find {model}.pth'
index_found = False
for file in os.listdir(f'./logs/{model}'):
if file.endswith('.index') and 'added' in file:
log_file = file
index_found = True
if index_found:
return [f'./weights/{model}.pth', f'./logs/{model}/{log_file}'], "Done"
else:
return f'./weights/{model}.pth', "Could not find Index file."
def fast(filepath, spk_item, vc_transform0,f0method0,file_index1,index_rate1,filter_radius0, resample_sr0,rms_mix_rate0, protect0, hop):
source_audio_path = filepath
output_file_name = os.path.basename(filepath)
conversion_data = vc_single(
spk_item,
source_audio_path,
vc_transform0,
f0_file,
f0method0,
file_index1,
index_rate1,
filter_radius0,
resample_sr0,
rms_mix_rate0,
protect0,
hop,
""
)
if "Success." in conversion_data[0]:
wavfile.write(f'audio-outputs/{output_file_name}', conversion_data[1][0], conversion_data[1][1])
return f"audio-outputs/{output_file_name}", None, conversion_data[0]
else:
return gr.update(visible=True), None, conversion_data[0]
with gr.Blocks(theme=gr.themes.Base()) as app:
with gr.Tabs():
with gr.TabItem("Работа с моделью"):
gr.HTML("<h1> RVC V2 by https://www.youtube.com/@ba1yya 💻 </h1>")
# Inference Preset Row
# with gr.Row():
# mangio_preset = gr.Dropdown(label="Inference Preset", choices=sorted(get_presets()))
# mangio_preset_name_save = gr.Textbox(
# label="Your preset name"
# )
# mangio_preset_save_btn = gr.Button('Save Preset', variant="primary")
# Other RVC stuff
with gr.Row():
sid0 = gr.Dropdown(label="1.Выберете модель.", choices=sorted(names), value=check_for_name())
refresh_button = gr.Button("Обновить", variant="primary")
if check_for_name() != '':
get_vc(sorted(names)[0])
vc_transform0 = gr.Number(label="Необязательно: здесь вы можете изменить высоту тона или оставить значение 0.", value=0)
#clean_button = gr.Button(i18n("卸载音色省显存"), variant="primary")
spk_item = gr.Slider(
minimum=0,
maximum=2333,
step=1,
label=i18n("请选择说话人id"),
value=0,
visible=False,
interactive=True,
)
#clean_button.click(fn=clean, inputs=[], outputs=[sid0])
sid0.change(
fn=get_vc,
inputs=[sid0],
outputs=[spk_item],
)
but0 = gr.Button("Обработка", variant="primary")
with gr.Row():
with gr.Column():
with gr.Row():
dropbox = gr.File(label="Перетащите сюда свой аудиофайл и нажмите кнопку «Обновить».")
with gr.Row():
record_button=gr.Audio(source="microphone", label="ИЛИ Запись звука.", type="filepath")
with gr.Row():
input_audio0 = gr.Dropdown(
label="2.Выберите аудио.",
value="someguy.mp3",
choices=audio_files
)
dropbox.upload(fn=save_to_wav2, inputs=[dropbox], outputs=[input_audio0])
dropbox.upload(fn=change_choices2, inputs=[], outputs=[input_audio0])
refresh_button2 = gr.Button("Обновить", variant="primary", size='sm')
record_button.change(fn=save_to_wav, inputs=[record_button], outputs=[input_audio0])
record_button.change(fn=change_choices2, inputs=[], outputs=[input_audio0])
with gr.Row():
with gr.Accordion('Текст в речь', open=False):
with gr.Column():
lang = gr.Radio(label='Китайский и японский языки в настоящее время не работают с ElevenLabs.',choices=['en','es','fr','pt','zh-CN','de','hi','ja'], value='en')
api_box = gr.Textbox(label="Введите свой ключ API для ElevenLabs или оставьте пустым, чтобы использовать GoogleTTS", value='')
elevenid=gr.Dropdown(label="Голос:", choices=eleven_voices)
with gr.Column():
tfs = gr.Textbox(label="Введите свой текст", interactive=True, value="This is a test.")
tts_button = gr.Button(value="Говорить")
tts_button.click(fn=elevenTTS, inputs=[api_box,tfs, elevenid, lang], outputs=[record_button, input_audio0])
with gr.Row():
with gr.Accordion('Wav2Lip', open=False):
with gr.Row():
size = gr.Radio(label='Разрешение:',choices=['Half','Full'])
face = gr.UploadButton("Загрузите персонажа",type='file')
faces = gr.Dropdown(label="ИЛИ Выберите один:", choices=['None','Ben Shapiro','Andrew Tate'])
with gr.Row():
preview = gr.Textbox(label="Статус:",interactive=False)
face.upload(fn=success_message,inputs=[face], outputs=[preview, faces])
with gr.Row():
animation = gr.Video(type='filepath')
refresh_button2.click(fn=change_choices2, inputs=[], outputs=[input_audio0, animation])
with gr.Row():
animate_button = gr.Button('Animate')
with gr.Column():
with gr.Accordion("Настройки индекса", open=False):
file_index1 = gr.Dropdown(
label="3. Путь к файлу add.index (если он не был найден автоматически)",
choices=get_indexes(),
value=get_index(),
interactive=True,
)
sid0.change(fn=match_index, inputs=[sid0],outputs=[file_index1])
refresh_button.click(
fn=change_choices, inputs=[], outputs=[sid0, file_index1]
)
# file_big_npy1 = gr.Textbox(
# label=i18n("特征文件路径"),
# value="E:\\codes\py39\\vits_vc_gpu_train\\logs\\mi-test-1key\\total_fea.npy",
# interactive=True,
# )
index_rate1 = gr.Slider(
minimum=0,
maximum=1,
label=i18n("检索特征占比"),
value=0.66,
interactive=True,
)
vc_output2 = gr.Audio(label="Вывод аудио (нажмите три точки в правом углу, чтобы загрузить)",type='filepath')
animate_button.click(fn=mouth, inputs=[size, face, vc_output2, faces], outputs=[animation, preview])
with gr.Accordion("Расширенные настройки", open=False):
f0method0 = gr.Radio(
label="Необязательно: измените алгоритм извлечения высоты звука.",
choices=["pm", "rmvpe", "dio", "mangio-crepe-tiny", "crepe-tiny", "crepe", "mangio-crepe", "harvest"], # Fork Feature. Add Crepe-Tiny
value="rmvpe",
interactive=True,
)
crepe_hop_length = gr.Slider(
minimum=1,
maximum=512,
step=1,
label="Mangio-Crepe Hop Length. Более высокие числа уменьшат вероятность резких изменений шага, но меньшие числа повысят точность.",
value=120,
interactive=True
)
filter_radius0 = gr.Slider(
minimum=0,
maximum=7,
label=i18n(">=3则使用对harvest音高识别的结果使用中值滤波,数值为滤波半径,使用可以削弱哑音"),
value=3,
step=1,
interactive=True,
)
resample_sr0 = gr.Slider(
minimum=0,
maximum=48000,
label=i18n("后处理重采样至最终采样率,0为不进行重采样"),
value=0,
step=1,
interactive=True,
visible=False
)
rms_mix_rate0 = gr.Slider(
minimum=0,
maximum=1,
label=i18n("输入源音量包络替换输出音量包络融合比例,越靠近1越使用输出包络"),
value=0.21,
interactive=True,
)
protect0 = gr.Slider(
minimum=0,
maximum=0.5,
label=i18n("保护清辅音和呼吸声,防止电音撕裂等artifact,拉满0.5不开启,调低加大保护力度但可能降低索引效果"),
value=0.33,
step=0.01,
interactive=True,
)
with gr.Accordion("Fast-Mode (TESTING)", open=False):
fast_audio = gr.Audio(label="As soon as you stop recording, inference will start.",type="filepath", source="microphone", autoplay=False)
fast_result = gr.Audio(label="Result",type="filepath", autoplay=True)
with gr.Row():
vc_output1 = gr.Textbox(label="Output Information:")
f0_file = gr.File(label=i18n("F0曲线文件, 可选, 一行一个音高, 代替默认F0及升降调"), visible=False)
fast_audio.stop_recording(
fn=fast,
inputs=[
fast_audio,
spk_item,
vc_transform0,
f0method0,
file_index1,
index_rate1,
filter_radius0,
resample_sr0,
rms_mix_rate0,
protect0,
crepe_hop_length
],
outputs=[
fast_result,
fast_audio,
vc_output1
]
)
but0.click(
vc_single,
[
spk_item,
input_audio0,
vc_transform0,
f0_file,
f0method0,
file_index1,
# file_index2,
# file_big_npy1,
index_rate1,
filter_radius0,
resample_sr0,
rms_mix_rate0,
protect0,
crepe_hop_length
],
[vc_output1, vc_output2],
)
with gr.TabItem("Загрузка готовой модели"):
with gr.Row():
url=gr.Textbox(label="Введите URL-адрес модели:")
with gr.Row():
model = gr.Textbox(label="Назовите свою модель:")
download_button=gr.Button("Загрузить")
with gr.Row():
status_bar=gr.Textbox(label="")
download_button.click(fn=download_from_url, inputs=[url, model], outputs=[status_bar])
with gr.Row():
gr.Markdown(
"""
Original RVC:https://github.com/RVC-Project/Retrieval-based-Voice-Conversion-WebUI
❤️ Если вам нравится моя версия RVC, помогите мне сохранить ее.❤️
https://boosty.to/ba1yya
"""
)
with gr.TabItem("Тренировка", visible=False):
with gr.Row():
with gr.Column():
exp_dir1 = gr.Textbox(label="Голосовое имя:", value="Voice_1")
sr2 = gr.Radio(
label=i18n("目标采样率"),
choices=["40k", "48k"],
value="40k",
interactive=True,
visible=False
)
if_f0_3 = gr.Radio(
label=i18n("模型是否带音高指导(唱歌一定要, 语音可以不要)"),
choices=[True, False],
value=True,
interactive=True,
visible=False
)
version19 = gr.Radio(
label="RVC version",
choices=["v1", "v2"],
value="v2",
interactive=True,
visible=False,
)
np7 = gr.Slider(
minimum=0,
maximum=config.n_cpu,
step=1,
label="# of CPUs for data processing (Leave as it is)",
value=config.n_cpu,
interactive=True,
visible=True
)
trainset_dir4 = gr.Textbox(label="Путь к вашему набору данных (аудиофайлы, а не zip):", value="./dataset")
easy_uploader = gr.Files(label='ИЛИ Перетащите сюда свои аудиозаписи. Они будут загружены по указанному выше пути к набору данных.',file_types=['audio'])
but1 = gr.Button("1.Обработать набор данных", variant="primary")
info1 = gr.Textbox(label="Статус:", value="")
easy_uploader.upload(fn=upload_to_dataset, inputs=[easy_uploader, trainset_dir4], outputs=[info1])
but1.click(
preprocess_dataset, [trainset_dir4, exp_dir1, sr2, np7], [info1]
)
with gr.Column():
spk_id5 = gr.Slider(
minimum=0,
maximum=4,
step=1,
label=i18n("请指定说话人id"),
value=0,
interactive=True,
visible=False
)
with gr.Accordion('GPU Settings', open=False, visible=False):
gpus6 = gr.Textbox(
label=i18n("以-分隔输入使用的卡号, 例如 0-1-2 使用卡0和卡1和卡2"),
value=gpus,
interactive=True,
visible=False
)
gpu_info9 = gr.Textbox(label=i18n("显卡信息"), value=gpu_info)
f0method8 = gr.Radio(
label=i18n(
"选择音高提取算法:输入歌声可用pm提速,高质量语音但CPU差可用dio提速,harvest质量更好但慢"
),
choices=["harvest","crepe", "mangio-crepe"], # Fork feature: Crepe on f0 extraction for training.
value="mangio-crepe",
interactive=True,
)
extraction_crepe_hop_length = gr.Slider(
minimum=1,
maximum=512,
step=1,
label=i18n("crepe_hop_length"),
value=128,
interactive=True
)
but2 = gr.Button("2.Извлечение высоты тона", variant="primary")
info2 = gr.Textbox(label="Статус:", value="", max_lines=8)
but2.click(
extract_f0_feature,
[gpus6, np7, f0method8, if_f0_3, exp_dir1, version19, extraction_crepe_hop_length],
[info2],
)
with gr.Row():
with gr.Column():
total_epoch11 = gr.Slider(
minimum=0,
maximum=10000,
step=10,
label="Общее количество эпох обучения (много не вводите, возможна перетренировка):",
value=250,
interactive=True,
)
but3 = gr.Button("3.Тренировать модель", variant="primary")
but4 = gr.Button("4.Тренировать индекс", variant="primary")
info3 = gr.Textbox(label="Статус:", value="", max_lines=10)
with gr.Accordion("Настройки обучения (вы можете оставить их как есть)", open=False):
#gr.Markdown(value=i18n("step3: 填写训练设置, 开始训练模型和索引"))
with gr.Column():
save_epoch10 = gr.Slider(
minimum=0,
maximum=100,
step=5,
label="Резервное копирование каждые # эпох:",
value=25,
interactive=True,
)
batch_size12 = gr.Slider(
minimum=1,
maximum=40,
step=1,
label="Размер пакета (Оставьте его, если вы не знаете, что это!):",
value=default_batch_size,
interactive=True,
)
if_save_latest13 = gr.Radio(
label=i18n("是否仅保存最新的ckpt文件以节省硬盘空间"),
choices=[i18n("是"), i18n("否")],
value=i18n("是"),
interactive=True,
)
if_cache_gpu17 = gr.Radio(
label=i18n(
"是否缓存所有训练集至显存. 10min以下小数据可缓存以加速训练, 大数据缓存会炸显存也加不了多少速"
),
choices=[i18n("是"), i18n("否")],
value=i18n("否"),
interactive=True,
)
if_save_every_weights18 = gr.Radio(
label=i18n("是否在每次保存时间点将最终小模型保存至weights文件夹"),
choices=[i18n("是"), i18n("否")],
value=i18n("是"),
interactive=True,
)
zip_model = gr.Button('5.Скачать модель')
zipped_model = gr.Files(label='Файл вашей модели и индекса можно скачать здесь:')
zip_model.click(fn=zip_downloader, inputs=[exp_dir1], outputs=[zipped_model, info3])
with gr.Group():
with gr.Accordion("Расположение базовой модели:", open=False, visible=False):
pretrained_G14 = gr.Textbox(
label=i18n("加载预训练底模G路径"),
value="pretrained_v2/f0G40k.pth",
interactive=True,
)
pretrained_D15 = gr.Textbox(
label=i18n("加载预训练底模D路径"),
value="pretrained_v2/f0D40k.pth",
interactive=True,
)
gpus16 = gr.Textbox(
label=i18n("以-分隔输入使用的卡号, 例如 0-1-2 使用卡0和卡1和卡2"),
value=gpus,
interactive=True,
)
sr2.change(
change_sr2,
[sr2, if_f0_3, version19],
[pretrained_G14, pretrained_D15, version19],
)
version19.change(
change_version19,
[sr2, if_f0_3, version19],
[pretrained_G14, pretrained_D15],
)
if_f0_3.change(
change_f0,
[if_f0_3, sr2, version19],
[f0method8, pretrained_G14, pretrained_D15],
)
but5 = gr.Button(i18n("一键训练"), variant="primary", visible=False)
but3.click(
click_train,
[
exp_dir1,
sr2,
if_f0_3,
spk_id5,
save_epoch10,
total_epoch11,
batch_size12,
if_save_latest13,
pretrained_G14,
pretrained_D15,
gpus16,
if_cache_gpu17,
if_save_every_weights18,
version19,
],
info3,
)
but4.click(train_index, [exp_dir1, version19], info3)
but5.click(
train1key,
[
exp_dir1,
sr2,
if_f0_3,
trainset_dir4,
spk_id5,
np7,
f0method8,
save_epoch10,
total_epoch11,
batch_size12,
if_save_latest13,
pretrained_G14,
pretrained_D15,
gpus16,
if_cache_gpu17,
if_save_every_weights18,
version19,
extraction_crepe_hop_length
],
info3,
)
try:
if tab_faq == "常见问题解答":
with open("docs/faq.md", "r", encoding="utf8") as f:
info = f.read()
else:
with open("docs/faq_en.md", "r", encoding="utf8") as f:
info = f.read()
gr.Markdown(value=info)
except:
gr.Markdown("")
#region Mangio Preset Handler Region
def save_preset(preset_name,sid0,vc_transform,input_audio,f0method,crepe_hop_length,filter_radius,file_index1,file_index2,index_rate,resample_sr,rms_mix_rate,protect,f0_file):
data = None
with open('../inference-presets.json', 'r') as file:
data = json.load(file)
preset_json = {
'name': preset_name,
'model': sid0,
'transpose': vc_transform,
'audio_file': input_audio,
'f0_method': f0method,
'crepe_hop_length': crepe_hop_length,
'median_filtering': filter_radius,
'feature_path': file_index1,
'auto_feature_path': file_index2,
'search_feature_ratio': index_rate,
'resample': resample_sr,
'volume_envelope': rms_mix_rate,
'protect_voiceless': protect,
'f0_file_path': f0_file
}
data['presets'].append(preset_json)
with open('../inference-presets.json', 'w') as file:
json.dump(data, file)
file.flush()
print("Saved Preset %s into inference-presets.json!" % preset_name)
if config.iscolab or config.paperspace: # Share gradio link for colab and paperspace (FORK FEATURE)
app.queue(concurrency_count=511, max_size=1022).launch(share=True, quiet=True)
else:
app.queue(concurrency_count=511, max_size=1022).launch(
server_name="0.0.0.0",
inbrowser=not config.noautoopen,
server_port=config.listen_port,
quiet=True,
)