Applaria_RVC / app.py
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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) # <- yeah so like this handles rvc
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 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"]
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)
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 🕊️
"""
)
demo.queue(api_open=False).launch(show_api=False) # idk ilaria if you want or dont want to