Ilaria_RVC / app.py
nroggendorff's picture
add name checker too also
979e897 verified
raw
history blame
22 kB
import gradio as gr
import requests
import random
import os
import zipfile
import librosa
import time
from infer_rvc_python import BaseLoader
from pydub import AudioSegment
from tts_voice import tts_order_voice
import edge_tts
import tempfile
from audio_separator.separator import Separator
import model_handler
import psutil
import cpuinfo
language_dict = tts_order_voice
async def text_to_speech_edge(text, language_code):
voice = language_dict[language_code]
communicate = edge_tts.Communicate(text, voice)
with tempfile.NamedTemporaryFile(delete=False, suffix=".mp3") as tmp_file:
tmp_path = tmp_file.name
await communicate.save(tmp_path)
return tmp_path
try:
import spaces
spaces_status = True
except ImportError:
spaces_status = False
separator = Separator()
converter = BaseLoader(only_cpu=False, hubert_path=None, rmvpe_path=None)
global pth_file
global index_file
pth_file = "model.pth"
index_file = "model.index"
#CONFIGS
TEMP_DIR = "temp"
MODEL_PREFIX = "model"
PITCH_ALGO_OPT = [
"pm",
"harvest",
"crepe",
"rmvpe",
"rmvpe+",
]
UVR_5_MODELS = [
{"model_name": "BS-Roformer-Viperx-1297", "checkpoint": "model_bs_roformer_ep_317_sdr_12.9755.ckpt"},
{"model_name": "MDX23C-InstVoc HQ 2", "checkpoint": "MDX23C-8KFFT-InstVoc_HQ_2.ckpt"},
{"model_name": "Kim Vocal 2", "checkpoint": "Kim_Vocal_2.onnx"},
{"model_name": "5_HP-Karaoke", "checkpoint": "5_HP-Karaoke-UVR.pth"},
{"model_name": "UVR-DeNoise by FoxJoy", "checkpoint": "UVR-DeNoise.pth"},
{"model_name": "UVR-DeEcho-DeReverb by FoxJoy", "checkpoint": "UVR-DeEcho-DeReverb.pth"},
]
MODELS = [
{"model": "model.pth", "index": "model.index", "model_name": "Test Model"},
]
os.makedirs(TEMP_DIR, exist_ok=True)
def unzip_file(file):
filename = os.path.basename(file).split(".")[0]
with zipfile.ZipFile(file, 'r') as zip_ref:
zip_ref.extractall(os.path.join(TEMP_DIR, filename))
return True
def progress_bar(total, current):
return "[" + "=" * int(current / total * 20) + ">" + " " * (20 - int(current / total * 20)) + "] " + str(int(current / total * 100)) + "%"
def contains_bad_word(text, bad_words):
text_lower = text.lower()
for word in bad_words:
if word.lower() in text_lower:
return True
return False
bad_words = ['puttana', 'whore', 'badword3', 'badword4']
class BadWordError(Exception):
def __init__(self, msg):
super().__init__(msg)
self.word = word
def download_from_url(url, name=None):
if name is None:
raise ValueError("The model name must be provided")
if "/blob/" in url:
url = url.replace("/blob/", "/resolve/")
if "huggingface" not in url:
return ["The URL must be from huggingface", "Failed", "Failed"]
if contains_bad_word(url, bad_words):
return BadWordError("The file url has a bad word.")
if contains_bad_word(name, bad_words):
return BadWordError("The file name has a bad word.")
filename = os.path.join(TEMP_DIR, MODEL_PREFIX + str(random.randint(1, 1000)) + ".zip")
response = requests.get(url)
total = int(response.headers.get('content-length', 0))
if total > 500000000:
return ["The file is too large. You can only download files up to 500 MB in size.", "Failed", "Failed"]
current = 0
with open(filename, "wb") as f:
for data in response.iter_content(chunk_size=4096):
f.write(data)
current += len(data)
print(progress_bar(total, current), end="\r") #
try:
unzip_file(filename)
except Exception as e:
return ["Failed to unzip the file", "Failed", "Failed"]
unzipped_dir = os.path.join(TEMP_DIR, os.path.basename(filename).split(".")[0])
pth_files = []
index_files = []
for root, dirs, files in os.walk(unzipped_dir):
for file in files:
if file.endswith(".pth"):
pth_files.append(os.path.join(root, file))
elif file.endswith(".index"):
index_files.append(os.path.join(root, file))
print(pth_files, index_files)
global pth_file
global index_file
pth_file = pth_files[0]
index_file = index_files[0]
print(pth_file)
print(index_file)
if name == "":
name = pth_file.split(".")[0]
MODELS.append({"model": pth_file, "index": index_file, "model_name": name})
return ["Downloaded as " + name, pth_files[0], index_files[0]]
def inference(audio, model_name):
output_data = inf_handler(audio, model_name)
vocals = output_data[0]
inst = output_data[1]
return vocals, inst
if spaces_status:
@spaces.GPU()
def convert_now(audio_files, random_tag, converter):
return converter(
audio_files,
random_tag,
overwrite=False,
parallel_workers=8
)
else:
def convert_now(audio_files, random_tag, converter):
return converter(
audio_files,
random_tag,
overwrite=False,
parallel_workers=8
)
def calculate_remaining_time(epochs, seconds_per_epoch):
total_seconds = epochs * seconds_per_epoch
hours = total_seconds // 3600
minutes = (total_seconds % 3600) // 60
seconds = total_seconds % 60
if hours == 0:
return f"{int(minutes)} minutes"
elif hours == 1:
return f"{int(hours)} hour and {int(minutes)} minutes"
else:
return f"{int(hours)} hours and {int(minutes)} minutes"
def inf_handler(audio, model_name):
model_found = False
for model_info in UVR_5_MODELS:
if model_info["model_name"] == model_name:
separator.load_model(model_info["checkpoint"])
model_found = True
break
if not model_found:
separator.load_model()
output_files = separator.separate(audio)
vocals = output_files[0]
inst = output_files[1]
return vocals, inst
def run(
model,
audio_files,
pitch_alg,
pitch_lvl,
index_inf,
r_m_f,
e_r,
c_b_p,
):
if not audio_files:
raise ValueError("The audio pls")
if isinstance(audio_files, str):
audio_files = [audio_files]
try:
duration_base = librosa.get_duration(filename=audio_files[0])
print("Duration:", duration_base)
except Exception as e:
print(e)
random_tag = "USER_"+str(random.randint(10000000, 99999999))
file_m = model
print("File model:", file_m)
# get from MODELS
for model in MODELS:
if model["model_name"] == file_m:
print(model)
file_m = model["model"]
file_index = model["index"]
break
if not file_m.endswith(".pth"):
raise ValueError("The model file must be a .pth file")
print("Random tag:", random_tag)
print("File model:", file_m)
print("Pitch algorithm:", pitch_alg)
print("Pitch level:", pitch_lvl)
print("File index:", file_index)
print("Index influence:", index_inf)
print("Respiration median filtering:", r_m_f)
print("Envelope ratio:", e_r)
converter.apply_conf(
tag=random_tag,
file_model=file_m,
pitch_algo=pitch_alg,
pitch_lvl=pitch_lvl,
file_index=file_index,
index_influence=index_inf,
respiration_median_filtering=r_m_f,
envelope_ratio=e_r,
consonant_breath_protection=c_b_p,
resample_sr=44100 if audio_files[0].endswith('.mp3') else 0,
)
time.sleep(0.1)
result = convert_now(audio_files, random_tag, converter)
print("Result:", result)
return result[0]
def upload_model(index_file, pth_file, model_name):
pth_file = pth_file.name
index_file = index_file.name
MODELS.append({"model": pth_file, "index": index_file, "model_name": model_name})
return "Uploaded!"
with gr.Blocks(theme=gr.themes.Default(primary_hue="pink", secondary_hue="rose"), title="Ilaria RVC 💖") as demo:
gr.Markdown("## Ilaria RVC 💖")
with gr.Tab("Inference"):
sound_gui = gr.Audio(value=None,type="filepath",autoplay=False,visible=True,)
def update():
print(MODELS)
return gr.Dropdown(label="Model",choices=[model["model_name"] for model in MODELS],visible=True,interactive=True, value=MODELS[0]["model_name"],)
with gr.Row():
models_dropdown = gr.Dropdown(label="Model",choices=[model["model_name"] for model in MODELS],visible=True,interactive=True, value=MODELS[0]["model_name"],)
refresh_button = gr.Button("Refresh Models")
refresh_button.click(update, outputs=[models_dropdown])
with gr.Accordion("Ilaria TTS", open=False):
text_tts = gr.Textbox(label="Text", placeholder="Hello!", lines=3, interactive=True,)
dropdown_tts = gr.Dropdown(label="Language and Model",choices=list(language_dict.keys()),interactive=True, value=list(language_dict.keys())[0])
button_tts = gr.Button("Speak", variant="primary",)
button_tts.click(text_to_speech_edge, inputs=[text_tts, dropdown_tts], outputs=[sound_gui])
with gr.Accordion("Settings", open=False):
pitch_algo_conf = gr.Dropdown(PITCH_ALGO_OPT,value=PITCH_ALGO_OPT[4],label="Pitch algorithm",visible=True,interactive=True,)
pitch_lvl_conf = gr.Slider(label="Pitch level (lower -> 'male' while higher -> 'female')",minimum=-24,maximum=24,step=1,value=0,visible=True,interactive=True,)
index_inf_conf = gr.Slider(minimum=0,maximum=1,label="Index influence -> How much accent is applied",value=0.75,)
respiration_filter_conf = gr.Slider(minimum=0,maximum=7,label="Respiration median filtering",value=3,step=1,interactive=True,)
envelope_ratio_conf = gr.Slider(minimum=0,maximum=1,label="Envelope ratio",value=0.25,interactive=True,)
consonant_protec_conf = gr.Slider(minimum=0,maximum=0.5,label="Consonant breath protection",value=0.5,interactive=True,)
button_conf = gr.Button("Convert",variant="primary",)
output_conf = gr.Audio(type="filepath",label="Output",)
button_conf.click(lambda :None, None, output_conf)
button_conf.click(
run,
inputs=[
models_dropdown,
sound_gui,
pitch_algo_conf,
pitch_lvl_conf,
index_inf_conf,
respiration_filter_conf,
envelope_ratio_conf,
consonant_protec_conf,
],
outputs=[output_conf],
)
with gr.Tab("Model Loader (Download and Upload)"):
with gr.Accordion("Model Downloader", open=False):
gr.Markdown(
"Download the model from the following URL and upload it here. (Huggingface RVC model)"
)
model = gr.Textbox(lines=1, label="Model URL")
name = gr.Textbox(lines=1, label="Model Name", placeholder="Model Name")
download_button = gr.Button("Download Model")
status = gr.Textbox(lines=1, label="Status", placeholder="Waiting....", interactive=False)
model_pth = gr.Textbox(lines=1, label="Model pth file", placeholder="Waiting....", interactive=False)
index_pth = gr.Textbox(lines=1, label="Index pth file", placeholder="Waiting....", interactive=False)
download_button.click(download_from_url, [model, name], outputs=[status, model_pth, index_pth])
with gr.Accordion("Upload A Model", open=False):
index_file_upload = gr.File(label="Index File (.index)")
pth_file_upload = gr.File(label="Model File (.pth)")
model_name = gr.Textbox(label="Model Name", placeholder="Model Name")
upload_button = gr.Button("Upload Model")
upload_status = gr.Textbox(lines=1, label="Status", placeholder="Waiting....", interactive=False)
upload_button.click(upload_model, [index_file_upload, pth_file_upload, model_name], upload_status)
with gr.Tab("Vocal Separator (UVR)"):
gr.Markdown("Separate vocals and instruments from an audio file using UVR models. - This is only on CPU due to ZeroGPU being ZeroGPU :(")
uvr5_audio_file = gr.Audio(label="Audio File",type="filepath")
with gr.Row():
uvr5_model = gr.Dropdown(label="Model", choices=[model["model_name"] for model in UVR_5_MODELS])
uvr5_button = gr.Button("Separate Vocals", variant="primary",)
uvr5_output_voc = gr.Audio(type="filepath", label="Output 1",)
uvr5_output_inst = gr.Audio(type="filepath", label="Output 2",)
uvr5_button.click(inference, [uvr5_audio_file, uvr5_model], [uvr5_output_voc, uvr5_output_inst])
with gr.Tab("Extra"):
with gr.Accordion("Model Information", open=False):
def json_to_markdown_table(json_data):
table = "| Key | Value |\n| --- | --- |\n"
for key, value in json_data.items():
table += f"| {key} | {value} |\n"
return table
def model_info(name):
for model in MODELS:
if model["model_name"] == name:
print(model["model"])
info = model_handler.model_info(model["model"])
info2 = {
"Model Name": model["model_name"],
"Model Config": info['config'],
"Epochs Trained": info['epochs'],
"Sample Rate": info['sr'],
"Pitch Guidance": info['f0'],
"Model Precision": info['size'],
}
return gr.Markdown(json_to_markdown_table(info2))
return "Model not found"
def update():
print(MODELS)
return gr.Dropdown(label="Model", choices=[model["model_name"] for model in MODELS])
with gr.Row():
model_info_dropdown = gr.Dropdown(label="Model", choices=[model["model_name"] for model in MODELS])
refresh_button = gr.Button("Refresh Models")
refresh_button.click(update, outputs=[model_info_dropdown])
model_info_button = gr.Button("Get Model Information")
model_info_output = gr.Textbox(value="Waiting...",label="Output", interactive=False)
model_info_button.click(model_info, [model_info_dropdown], [model_info_output])
with gr.Accordion("Training Time Calculator", open=False):
with gr.Column():
epochs_input = gr.Number(label="Number of Epochs")
seconds_input = gr.Number(label="Seconds per Epoch")
calculate_button = gr.Button("Calculate Time Remaining")
remaining_time_output = gr.Textbox(label="Remaining Time", interactive=False)
calculate_button.click(calculate_remaining_time,inputs=[epochs_input, seconds_input],outputs=[remaining_time_output])
with gr.Accordion("Model Fusion", open=False):
with gr.Group():
def merge(ckpt_a, ckpt_b, alpha_a, sr_, if_f0_, info__, name_to_save0, version_2):
for model in MODELS:
if model["model_name"] == ckpt_a:
ckpt_a = model["model"]
if model["model_name"] == ckpt_b:
ckpt_b = model["model"]
path = model_handler.merge(ckpt_a, ckpt_b, alpha_a, sr_, if_f0_, info__, name_to_save0, version_2)
if path == "Fail to merge the models. The model architectures are not the same.":
return "Fail to merge the models. The model architectures are not the same."
else:
MODELS.append({"model": path, "index": None, "model_name": name_to_save0})
return "Merged, saved as " + name_to_save0
gr.Markdown(value="Strongly suggested to use only very clean models.")
with gr.Row():
def update():
print(MODELS)
return gr.Dropdown(label="Model A", choices=[model["model_name"] for model in MODELS]), gr.Dropdown(label="Model B", choices=[model["model_name"] for model in MODELS])
refresh_button_fusion = gr.Button("Refresh Models")
ckpt_a = gr.Dropdown(label="Model A", choices=[model["model_name"] for model in MODELS])
ckpt_b = gr.Dropdown(label="Model B", choices=[model["model_name"] for model in MODELS])
refresh_button_fusion.click(update, outputs=[ckpt_a, ckpt_b])
alpha_a = gr.Slider(
minimum=0,
maximum=1,
label="Weight of the first model over the second",
value=0.5,
interactive=True,
)
with gr.Group():
with gr.Row():
sr_ = gr.Radio(
label="Sample rate of both models",
choices=["32k","40k", "48k"],
value="32k",
interactive=True,
)
if_f0_ = gr.Radio(
label="Pitch Guidance",
choices=["Yes", "Nah"],
value="Yes",
interactive=True,
)
info__ = gr.Textbox(
label="Add informations to the model",
value="",
max_lines=8,
interactive=True,
visible=False
)
name_to_save0 = gr.Textbox(
label="Final Model name",
value="",
max_lines=1,
interactive=True,
)
version_2 = gr.Radio(
label="Versions of the models",
choices=["v1", "v2"],
value="v2",
interactive=True,
)
with gr.Group():
with gr.Row():
but6 = gr.Button("Fuse the two models", variant="primary")
info4 = gr.Textbox(label="Output", value="", max_lines=8)
but6.click(
merge,
[ckpt_a,ckpt_b,alpha_a,sr_,if_f0_,info__,name_to_save0,version_2,],info4,api_name="ckpt_merge",)
with gr.Accordion("Model Quantization", open=False):
gr.Markdown("Quantize the model to a lower precision. - soon™ or never™ 😎")
with gr.Accordion("Debug", open=False):
def json_to_markdown_table(json_data):
table = "| Key | Value |\n| --- | --- |\n"
for key, value in json_data.items():
table += f"| {key} | {value} |\n"
return table
gr.Markdown("View the models that are currently loaded in the instance.")
gr.Markdown(json_to_markdown_table({"Models": len(MODELS), "UVR Models": len(UVR_5_MODELS)}))
gr.Markdown("View the current status of the instance.")
status = {
"Status": "Running", # duh lol
"Models": len(MODELS),
"UVR Models": len(UVR_5_MODELS),
"CPU Usage": f"{psutil.cpu_percent()}%",
"RAM Usage": f"{psutil.virtual_memory().percent}%",
"CPU": f"{cpuinfo.get_cpu_info()['brand_raw']}",
"System Uptime": f"{round(time.time() - psutil.boot_time(), 2)} seconds",
"System Load Average": f"{psutil.getloadavg()}",
"====================": "====================",
"CPU Cores": psutil.cpu_count(),
"CPU Threads": psutil.cpu_count(logical=True),
"RAM Total": f"{round(psutil.virtual_memory().total / 1024**3, 2)} GB",
"RAM Used": f"{round(psutil.virtual_memory().used / 1024**3, 2)} GB",
"CPU Frequency": f"{psutil.cpu_freq().current} MHz",
"====================": "====================",
"GPU": "A100 - Do a request (Inference, you won't see it either way)",
}
gr.Markdown(json_to_markdown_table(status))
with gr.Tab("Credits"):
gr.Markdown(
"""
Ilaria RVC made by [Ilaria](https://huggingface.co/TheStinger) suport her on [ko-fi](https://ko-fi.com/ilariaowo)
The Inference code is made by [r3gm](https://huggingface.co/r3gm) (his module helped form this space 💖)
made with ❤️ by [mikus](https://github.com/cappuch) - made the ui!
## In loving memory of JLabDX 🕊️
"""
)
with gr.Tab(("")):
gr.Markdown('''
![ilaria](https://i.ytimg.com/vi/5PWqt2Wg-us/maxresdefault.jpg)
''')
demo.queue(api_open=False).launch(show_api=False)