vall-e/vall_e/webui.py

582 lines
29 KiB
Python
Raw Normal View History

import sys
2024-11-06 04:30:49 +00:00
import os
argv = os.environ.get('VALLE_ARGS', None)
if argv:
sys.argv = sys.argv + argv.split(" ")
import re
import math
import argparse
import random
import tempfile
import functools
import torch
import numpy as np
import torchaudio
import gradio as gr
from pathlib import Path
2024-11-06 03:38:02 +00:00
2024-11-06 19:51:28 +00:00
# agony with HF's ZeroGPU spaces
2024-11-06 03:38:02 +00:00
try:
import spaces
2024-11-06 03:38:02 +00:00
USING_SPACES = True
spaces_zerogpu_decorator = spaces.GPU
2024-11-06 04:30:49 +00:00
except Exception as e:
2024-11-06 03:38:02 +00:00
USING_SPACES = False
def spaces_zerogpu_decorator(func):
return func
2024-11-06 19:51:28 +00:00
# more agony, because gradio will not stay launched if directly called from the package, for who knows why
# this allows me to directly copy this file rather than constantly edit it on the HF space repo
if USING_SPACES:
from vall_e.inference import TTS, cfg
from vall_e.train import train
from vall_e.utils import get_devices, setup_logging, timer
from vall_e.utils.io import json_read, json_stringify
from vall_e.emb.qnt import decode_to_wave
from vall_e.data import get_lang_symmap, get_random_prompt
from vall_e.models.arch import AVAILABLE_ATTENTIONS
else:
from .inference import TTS, cfg
from .train import train
from .utils import get_devices, setup_logging, timer
from .utils.io import json_read, json_stringify
from .emb.qnt import decode_to_wave
from .data import get_lang_symmap, get_random_prompt
from .models.arch import AVAILABLE_ATTENTIONS
is_windows = sys.platform.startswith("win")
tts = None
layout = {}
layout["inference_tts"] = {}
layout["inference_stt"] = {}
layout["training"] = {}
layout["dataset"] = {}
layout["settings"] = {}
for k in layout.keys():
layout[k]["inputs"] = { "progress": None }
layout[k]["outputs"] = {}
layout[k]["buttons"] = {}
# there's got to be a better way to go about this
def gradio_wrapper(inputs):
def decorated(fun):
@functools.wraps(fun)
def wrapped_function(*args, **kwargs):
for i, key in enumerate(inputs):
kwargs[key] = args[i]
try:
return fun(**kwargs)
except Exception as e:
raise gr.Error(str(e))
return wrapped_function
return decorated
# returns a list of models, assuming the models are placed under ./training/ or ./models/ or ./data/models/
def get_model_paths( paths=[Path("./training/"), Path("./models/"), Path("./data/models/")] ):
configs = []
for path in paths:
if not path.exists():
continue
for yaml in path.glob("**/*.yaml"):
if "/logs/" in str(yaml):
continue
configs.append( yaml )
for sft in path.glob("**/*.sft"):
if "/logs/" in str(sft):
continue
configs.append( sft )
if is_windows:
configs = [ str(p) for p in configs ]
return configs
def get_dtypes():
return ["float32", "float16", "bfloat16", "float8_e5m2", "float8_e4m3fn", "auto"]
def get_attentions():
return AVAILABLE_ATTENTIONS + ["auto"]
2024-08-04 05:14:49 +00:00
#@gradio_wrapper(inputs=layout["settings"]["inputs"].keys())
def load_model( config, device, dtype, attention ):
gr.Info(f"Loading: {config}")
2024-08-04 05:14:49 +00:00
try:
init_tts( config=Path(config), restart=True, device=device, dtype=dtype, attention=attention )
2024-08-04 05:14:49 +00:00
except Exception as e:
raise gr.Error(e)
gr.Info(f"Loaded model")
def get_speakers():
return cfg.dataset.training
def get_languages():
return get_lang_symmap().keys()
#@gradio_wrapper(inputs=layout["dataset"]["inputs"].keys())
def load_sample( speaker ):
metadata_path = cfg.metadata_dir / f'{speaker}.json'
metadata = json_read( metadata_path )
if not metadata:
raise gr.Error(f"Metadata not found: {metadata_path}")
key = random.choice( list(metadata.keys()) )
path = cfg.data_dir / speaker / f'{key}.enc' # to-do: get proper file extension
data = json_stringify( metadata[key], pretty=True )
wav, sr = None, None
if path.exists():
artifact = np.load(path, allow_pickle=True)[()]
codes = torch.from_numpy(artifact["codes"].astype(int))[0].t().to(dtype=torch.int16, device=cfg.device)
wav, sr = decode_to_wave( codes )
wav = wav.squeeze(0).cpu().numpy()
return data, (sr, wav)
def init_tts(config=None, lora=None, restart=False, device="cuda", dtype="auto", attention=None):
global tts
if tts is not None:
if not restart:
return tts
del tts
tts = None
2024-10-18 18:19:36 +00:00
parser = argparse.ArgumentParser(allow_abbrev=False, add_help=False)
parser.add_argument("--yaml", type=Path, default=os.environ.get('VALLE_YAML', None)) # os environ so it can be specified in a HuggingFace Space too
parser.add_argument("--model", type=Path, default=os.environ.get('VALLE_MODEL', None)) # os environ so it can be specified in a HuggingFace Space too
parser.add_argument("--lora", type=Path, default=os.environ.get('VALLE_LORA', None)) # os environ so it can be specified in a HuggingFace Space too
parser.add_argument("--device", type=str, default=device)
parser.add_argument("--amp", action="store_true")
parser.add_argument("--dtype", type=str, default=dtype)
parser.add_argument("--attention", type=str, default=attention)
args, unknown = parser.parse_known_args()
if config:
if config.suffix == ".yaml" and not args.yaml:
args.yaml = config
elif config.suffix == ".sft" and not args.model:
args.model = config
if lora and not args.lora:
args.lora = lora
if args.yaml:
config = args.yaml
elif args.model:
config = args.model
if args.lora:
lora = args.lora
tts = TTS( config=config, lora=args.lora, device=args.device, dtype=args.dtype if args.dtype != "auto" else None, amp=args.amp, attention=args.attention )
return tts
2024-11-06 03:38:02 +00:00
@spaces_zerogpu_decorator
@gradio_wrapper(inputs=layout["inference_tts"]["inputs"].keys())
def do_inference_tts( progress=gr.Progress(track_tqdm=True), *args, **kwargs ):
if not cfg.models:
raise Exception("No model loaded.")
if kwargs.pop("dynamic-sampling", False):
kwargs['min-ar-temperature'] = 0.01 if kwargs['ar-temperature'] > 0.01 else 0.0
kwargs['min-nar-temperature'] = 0.0 # 0.85 if kwargs['nar-temperature'] > 0.85 else 0.0 # should probably disable it for the NAR
2023-10-13 03:49:25 +00:00
else:
kwargs['min-ar-temperature'] = -1
kwargs['min-nar-temperature'] = -1
2024-10-18 18:19:36 +00:00
parser = argparse.ArgumentParser(allow_abbrev=False, add_help=False)
# I'm very sure I can procedurally generate this list
parser.add_argument("--text", type=str, default=kwargs["text"])
2024-09-06 23:44:25 +00:00
parser.add_argument("--task", type=str, default="tts")
parser.add_argument("--references", type=str, default=kwargs["reference"])
parser.add_argument("--language", type=str, default=kwargs["language"])
parser.add_argument("--input-prompt-length", type=float, default=kwargs["input-prompt-length"])
parser.add_argument("--input-prompt-prefix", action='store_true', default=kwargs["input-prompt-prefix"])
parser.add_argument("--max-duration", type=int, default=int(kwargs["max-duration"]*cfg.dataset.frames_per_second))
parser.add_argument("--max-levels", type=int, default=kwargs["max-levels"])
parser.add_argument("--max-steps", type=int, default=kwargs["max-steps"])
parser.add_argument("--ar-temperature", type=float, default=kwargs["ar-temperature"])
parser.add_argument("--nar-temperature", type=float, default=kwargs["nar-temperature"])
parser.add_argument("--min-ar-temperature", type=float, default=kwargs["min-ar-temperature"])
parser.add_argument("--min-nar-temperature", type=float, default=kwargs["min-nar-temperature"])
parser.add_argument("--prefix-silence", type=float, default=kwargs["prefix-silence"])
parser.add_argument("--top-p", type=float, default=kwargs["top-p"])
parser.add_argument("--top-k", type=int, default=kwargs["top-k"])
parser.add_argument("--min-p", type=float, default=kwargs["min-p"])
parser.add_argument("--repetition-penalty", type=float, default=kwargs["repetition-penalty"])
parser.add_argument("--repetition-penalty-decay", type=float, default=kwargs["repetition-penalty-decay"])
parser.add_argument("--length-penalty", type=float, default=kwargs["length-penalty"])
parser.add_argument("--beam-width", type=int, default=kwargs["beam-width"])
parser.add_argument("--mirostat-tau", type=float, default=kwargs["mirostat-tau"])
parser.add_argument("--mirostat-eta", type=float, default=kwargs["mirostat-eta"])
2024-07-30 00:15:07 +00:00
parser.add_argument("--dry-multiplier", type=float, default=kwargs["dry-multiplier"])
parser.add_argument("--dry-base", type=float, default=kwargs["dry-base"])
parser.add_argument("--dry-allowed-length", type=int, default=kwargs["dry-allowed-length"])
parser.add_argument("--entropix-sampling", action="store_true")
parser.add_argument("--layer-skip", action="store_true")
parser.add_argument("--layer-skip-exit-layer", type=int, default=kwargs["layer-skip-exit-layer"])
parser.add_argument("--layer-skip-entropy-threshold", type=int, default=kwargs["layer-skip-entropy-threshold"])
parser.add_argument("--layer-skip-varentropy-threshold", type=int, default=kwargs["layer-skip-varentropy-threshold"])
parser.add_argument("--refine-on-stop", action="store_true")
parser.add_argument("--denoise-start", type=float, default=0.0)
parser.add_argument("--cfg-strength", type=float, default=kwargs['cfg-strength'])
args, unknown = parser.parse_known_args()
if is_windows:
tmp = tempfile.NamedTemporaryFile(suffix='.wav', delete=False)
else:
tmp = tempfile.NamedTemporaryFile(suffix='.wav')
"""
if not args.references:
raise Exception("No reference audio provided.")
"""
if kwargs.pop("entropix-sampling", False):
args.entropix_sampling = True
if kwargs.pop("layer-skip", False):
args.layer_skip = True
if kwargs.pop("refine-on-stop", False):
args.refine_on_stop = True
tts = init_tts()
gr.Info("Inferencing...")
sampling_kwargs = dict(
max_steps=args.max_steps,
max_levels=args.max_levels,
max_duration=args.max_duration,
ar_temperature=args.ar_temperature, nar_temperature=args.nar_temperature,
min_ar_temperature=args.min_ar_temperature, min_nar_temperature=args.min_nar_temperature,
top_p=args.top_p, top_k=args.top_k, min_p=args.min_p,
repetition_penalty=args.repetition_penalty, repetition_penalty_decay=args.repetition_penalty_decay,
length_penalty=args.length_penalty,
beam_width=args.beam_width,
mirostat_tau=args.mirostat_tau, mirostat_eta=args.mirostat_eta,
dry_multiplier=args.dry_multiplier, dry_base=args.dry_base, dry_allowed_length=args.dry_allowed_length,
entropix_sampling=args.entropix_sampling,
layer_skip=args.layer_skip,
layer_skip_exit_layer=args.layer_skip_exit_layer,
layer_skip_entropy_threshold=args.layer_skip_entropy_threshold,
layer_skip_varentropy_threshold=args.layer_skip_varentropy_threshold,
refine_on_stop=args.refine_on_stop,
denoise_start=args.denoise_start,
prefix_silence=args.prefix_silence,
input_prompt_prefix=args.input_prompt_prefix,
input_prompt_length=args.input_prompt_length,
cfg_strength=args.cfg_strength,
)
with timer("Inferenced in", callback=lambda msg: gr.Info( msg )) as t:
2023-09-10 01:05:03 +00:00
wav, sr = tts.inference(
text=args.text,
language=args.language,
task=args.task,
references=args.references.split(";") if args.references is not None else [],
**sampling_kwargs,
2023-09-10 01:05:03 +00:00
)
wav = wav.squeeze(0).cpu().numpy()
return (sr, wav)
@gradio_wrapper(inputs=layout["inference_stt"]["inputs"].keys())
def do_inference_stt( progress=gr.Progress(track_tqdm=True), *args, **kwargs ):
if not cfg.models:
raise Exception("No model loaded.")
if kwargs.pop("dynamic-sampling", False):
kwargs['min-ar-temperature'] = 0.85 if kwargs['ar-temperature'] > 0.85 else 0.0
else:
kwargs['min-ar-temperature'] = -1
2024-10-18 18:19:36 +00:00
parser = argparse.ArgumentParser(allow_abbrev=False, add_help=False)
# I'm very sure I can procedurally generate this list
parser.add_argument("--task", type=str, default="tts")
parser.add_argument("--references", type=str, default=kwargs["reference"])
2024-11-12 18:49:53 +00:00
parser.add_argument("--max-duration", type=int, default=0)
parser.add_argument("--language", type=str, default=kwargs["language"])
parser.add_argument("--ar-temperature", type=float, default=kwargs["ar-temperature"])
parser.add_argument("--min-ar-temperature", type=float, default=kwargs["min-ar-temperature"])
parser.add_argument("--top-p", type=float, default=kwargs["top-p"])
parser.add_argument("--top-k", type=int, default=kwargs["top-k"])
parser.add_argument("--min-p", type=float, default=kwargs["min-p"])
parser.add_argument("--repetition-penalty", type=float, default=kwargs["repetition-penalty"])
parser.add_argument("--repetition-penalty-decay", type=float, default=kwargs["repetition-penalty-decay"])
parser.add_argument("--length-penalty", type=float, default=kwargs["length-penalty"])
parser.add_argument("--beam-width", type=int, default=kwargs["beam-width"])
parser.add_argument("--mirostat-tau", type=float, default=kwargs["mirostat-tau"])
parser.add_argument("--mirostat-eta", type=float, default=kwargs["mirostat-eta"])
parser.add_argument("--dry-multiplier", type=float, default=kwargs["dry-multiplier"])
parser.add_argument("--dry-base", type=float, default=kwargs["dry-base"])
parser.add_argument("--dry-allowed-length", type=int, default=kwargs["dry-allowed-length"])
args, unknown = parser.parse_known_args()
"""
if not args.references:
raise Exception("No reference audio provided.")
"""
args.references = args.references.split(";") if args.references is not None else []
if args.max_duration == 0:
for i, path in enumerate( args.references ):
metadata = torchaudio.info(path)
duration = metadata.num_frames / metadata.sample_rate
args.max_duration += duration
args.max_duration = math.floor( args.max_duration * 20 ) # assume 20 tokens per second
if kwargs.pop("entropix-sampling", False):
args.entropix_sampling = True
tts = init_tts()
sampling_kwargs = dict(
max_duration=args.max_duration,
2024-11-12 18:49:53 +00:00
ar_temperature=args.ar_temperature,
min_ar_temperature=args.min_ar_temperature,
top_p=args.top_p, top_k=args.top_k, min_p=args.min_p,
repetition_penalty=args.repetition_penalty, repetition_penalty_decay=args.repetition_penalty_decay,
length_penalty=args.length_penalty,
beam_width=args.beam_width,
mirostat_tau=args.mirostat_tau, mirostat_eta=args.mirostat_eta,
dry_multiplier=args.dry_multiplier, dry_base=args.dry_base, dry_allowed_length=args.dry_allowed_length,
)
gr.Info("Inferencing...")
with timer("Inferenced in") as t:
text = tts.inference(
text="",
language=args.language,
task="stt",
references=args.references,
**sampling_kwargs,
)
return text
"""
@gradio_wrapper(inputs=layout["training"]["inputs"].keys())
def do_training( progress=gr.Progress(track_tqdm=True), *args, **kwargs ):
while True:
metrics = next(it)
yield metrics
"""
# setup args
parser = argparse.ArgumentParser(allow_abbrev=False)
parser.add_argument("--yaml", type=Path, default=os.environ.get('VALLE_YAML', None)) # os environ so it can be specified in a HuggingFace Space too
parser.add_argument("--model", type=Path, default=os.environ.get('VALLE_MODEL', None)) # os environ so it can be specified in a HuggingFace Space too
parser.add_argument("--listen", default=None, help="Path for Gradio to listen on")
parser.add_argument("--share", action="store_true")
parser.add_argument("--render_markdown", action="store_true", default="VALLE_YAML" in os.environ)
args, unknown = parser.parse_known_args()
args.listen_host = None
args.listen_port = None
args.listen_path = None
if args.listen:
try:
match = re.findall(r"^(?:(.+?):(\d+))?(\/.*?)?$", args.listen)[0]
args.listen_host = match[0] if match[0] != "" else "127.0.0.1"
args.listen_port = match[1] if match[1] != "" else None
args.listen_path = match[2] if match[2] != "" else "/"
except Exception as e:
pass
if args.listen_port is not None:
args.listen_port = int(args.listen_port)
if args.listen_port == 0:
args.listen_port = None
# setup gradio
ui = gr.Blocks()
with ui:
with gr.Tab("Inference"):
with gr.Tab("Text-to-Speech"):
with gr.Row():
with gr.Column(scale=8):
layout["inference_tts"]["inputs"]["text"] = gr.Textbox(lines=5, value=get_random_prompt, label="Input Prompt")
with gr.Row():
with gr.Column(scale=1):
layout["inference_tts"]["inputs"]["reference"] = gr.Audio(label="Audio Input", sources=["upload"], type="filepath") #, info="Reference audio for TTS")
# layout["inference_tts"]["stop"] = gr.Button(value="Stop")
layout["inference_tts"]["outputs"]["output"] = gr.Audio(label="Output")
layout["inference_tts"]["buttons"]["inference"] = gr.Button(value="Inference")
with gr.Column(scale=7):
with gr.Tab("Basic Settings"):
with gr.Row():
layout["inference_tts"]["inputs"]["max-duration"] = gr.Slider(value=12, minimum=1, maximum=32, step=0.1, label="Maximum Seconds", info="Limits how many steps to perform in the AR pass.")
2024-10-18 14:40:06 +00:00
layout["inference_tts"]["inputs"]["input-prompt-length"] = gr.Slider(value=5.0, minimum=0.0, maximum=12.0, step=0.05, label="Input Prompt Repeat/Trim Length", info="Repeats and trims the input prompt down to X seconds. Set 0 to disable.")
with gr.Row():
layout["inference_tts"]["inputs"]["ar-temperature"] = gr.Slider(value=1.0, minimum=0.0, maximum=1.5, step=0.05, label="Temperature (AR)", info="Modifies the randomness from the samples in the AR. (0 to greedy* sample)")
layout["inference_tts"]["inputs"]["nar-temperature"] = gr.Slider(value=0.0, minimum=0.0, maximum=1.5, step=0.05, label="Temperature (NAR)", info="Modifies the randomness from the samples in the NAR. (0 to greedy sample)")
with gr.Row():
layout["inference_tts"]["inputs"]["cfg-strength"] = gr.Slider(value=0.0, minimum=0.0, maximum=3.0, step=0.05, label="CFG Strength", info="Classifier Free Guidance scale")
layout["inference_tts"]["inputs"]["language"] = gr.Dropdown(choices=get_languages(), label="Language", value="en")
with gr.Tab("Sampler Settings"):
with gr.Row():
layout["inference_tts"]["inputs"]["top-p"] = gr.Slider(value=1.0, minimum=0.0, maximum=1.0, step=0.05, label="Top P", info=r"Limits the samples that are outside the top P% of probabilities.")
layout["inference_tts"]["inputs"]["top-k"] = gr.Slider(value=0, minimum=0, maximum=1024, step=1, label="Top K", info="Limits the samples to the top K of probabilities.")
layout["inference_tts"]["inputs"]["min-p"] = gr.Slider(value=0.0, minimum=0.0, maximum=1.0, step=0.05, label="Min P")
layout["inference_tts"]["inputs"]["beam-width"] = gr.Slider(value=0, minimum=0, maximum=32, step=1, label="Beam Width", info="Number of branches to search through for beam search sampling.")
with gr.Row():
layout["inference_tts"]["inputs"]["repetition-penalty"] = gr.Slider(value=1.0, minimum=-2.0, maximum=2.0, step=0.05, label="Repetition Penalty", info="Incurs a penalty to tokens based on how often they appear in a sequence.")
layout["inference_tts"]["inputs"]["repetition-penalty-decay"] = gr.Slider(value=0.0, minimum=-2.0, maximum=2.0, step=0.05, label="Repetition Penalty Length Decay", info="Modifies the reptition penalty based on how far back in time the token appeared in the sequence.")
layout["inference_tts"]["inputs"]["length-penalty"] = gr.Slider(value=0.0, minimum=-2.0, maximum=2.0, step=0.05, label="Length Penalty", info="(AR only) Modifies the probability of a stop token based on the current length of the sequence.")
with gr.Row():
layout["inference_tts"]["inputs"]["mirostat-tau"] = gr.Slider(value=0.0, minimum=0.0, maximum=8.0, step=0.05, label="Mirostat τ (Tau)", info="The \"surprise\" value when performing mirostat sampling. 0 to disable.")
layout["inference_tts"]["inputs"]["mirostat-eta"] = gr.Slider(value=0.0, minimum=0.0, maximum=2.0, step=0.05, label="Mirostat η (Eta)", info="The \"learning rate\" during mirostat sampling applied to the maximum surprise.")
with gr.Row():
layout["inference_tts"]["inputs"]["dry-multiplier"] = gr.Slider(value=0.0, minimum=0.0, maximum=8.0, step=0.05, label="DRY Multiplier", info="The multiplying factor for the DRY score penalty (0 to disable DRY sampling).")
layout["inference_tts"]["inputs"]["dry-base"] = gr.Slider(value=1.75, minimum=0.0, maximum=8.0, step=0.05, label="DRY Base", info="The base of the exponent in the DRY score penalty")
layout["inference_tts"]["inputs"]["dry-allowed-length"] = gr.Slider(value=2, minimum=0, maximum=75, step=1, label="Allowed Length", info="The maximimum length a token can be to perform DRY penalty with.")
with gr.Tab("Experimental Settings", visible=cfg.experimental):
with gr.Row():
layout["inference_tts"]["inputs"]["max-steps"] = gr.Slider(value=25, minimum=1, maximum=500, step=1, label="Max NAR Steps", info="Limits how many steps to perform in the NAR (demask) pass.")
layout["inference_tts"]["inputs"]["max-levels"] = gr.Slider(value=7, minimum=0, maximum=7, step=1, label="Max NAR Levels", info="Limits how many steps to perform in the NAR pass.")
layout["inference_tts"]["inputs"]["input-prompt-prefix"] = gr.Checkbox(label="Input Prompt as Prefix", info="Treats the input prompt clip as the prefix of the generated sequence.")
with gr.Row():
layout["inference_tts"]["inputs"]["prefix-silence"] = gr.Slider(value=0.0, minimum=0.0, maximum=1.0, step=0.05, label="Silence Prefix Duration", info="Amount of silence to prefix to the output response before beginning inference.")
with gr.Row():
layout["inference_tts"]["inputs"]["dynamic-sampling"] = gr.Checkbox(label="Dynamic Temperature", info="Dynamically adjusts the temperature based on the highest confident predicted token per sampling step.")
layout["inference_tts"]["inputs"]["entropix-sampling"] = gr.Checkbox(label="Entropix Sampling", info="Dynamically samples based on entropy/varentropy values from the logits / attention scores.")
with gr.Row():
layout["inference_tts"]["inputs"]["layer-skip"] = gr.Checkbox(label="Layer Skip", info="Performs self-speculative early exit 'sampling'")
layout["inference_tts"]["inputs"]["refine-on-stop"] = gr.Checkbox(label="Refine on <stop>", info="Uses the last step's logits for the AR sequence instead.")
with gr.Row():
layout["inference_tts"]["inputs"]["layer-skip-exit-layer"] = gr.Slider(value=11, minimum=0, maximum=11, step=1, label="Layer Skip Exit Layer", info="Maximum model layer to exit early from.")
layout["inference_tts"]["inputs"]["layer-skip-entropy-threshold"] = gr.Slider(value=0.1, minimum=0, maximum=1.0, step=0.01, label="Layer Skip Entropy Threshold", info="Entropy threshold for early-exit")
layout["inference_tts"]["inputs"]["layer-skip-varentropy-threshold"] = gr.Slider(value=0.1, minimum=0, maximum=1.0, step=0.01, label="Layer Skip Varentropy Threshold", info="Varentropy threshold for early-exit")
layout["inference_tts"]["buttons"]["inference"].click(
fn=do_inference_tts,
inputs=[ x for x in layout["inference_tts"]["inputs"].values() if x is not None],
outputs=[ x for x in layout["inference_tts"]["outputs"].values() if x is not None]
)
with gr.Tab("Speech to Text"):
with gr.Row():
with gr.Column(scale=8):
layout["inference_stt"]["outputs"]["ouput"] = gr.Textbox(lines=1, label="Output Transcription")
with gr.Row():
with gr.Column(scale=1):
layout["inference_stt"]["inputs"]["reference"] = gr.Audio(label="Audio Input", sources=["upload"], type="filepath") #, info="Reference audio for TTS")
# layout["inference_stt"]["stop"] = gr.Button(value="Stop")
layout["inference_stt"]["buttons"]["inference"] = gr.Button(value="Inference")
with gr.Column(scale=7):
with gr.Tab("Basic Settings"):
with gr.Row():
layout["inference_stt"]["inputs"]["ar-temperature"] = gr.Slider(value=0.0, minimum=0.0, maximum=1.5, step=0.05, label="Temperature (AR)", info="Modifies the randomness from the samples in the AR. (0 to greedy sample)")
with gr.Row():
layout["inference_stt"]["inputs"]["dynamic-sampling"] = gr.Checkbox(label="Dynamic Temperature", info="Dynamically adjusts the temperature based on the highest confident predicted token per sampling step.")
layout["inference_stt"]["inputs"]["language"] = gr.Dropdown(choices=get_languages(), label="Language", value="en")
with gr.Tab("Sampler Settings"):
with gr.Row():
layout["inference_stt"]["inputs"]["top-p"] = gr.Slider(value=1.0, minimum=0.0, maximum=1.0, step=0.05, label="Top P", info=r"Limits the samples that are outside the top P% of probabilities.")
layout["inference_stt"]["inputs"]["top-k"] = gr.Slider(value=0, minimum=0, maximum=1024, step=1, label="Top K", info="Limits the samples to the top K of probabilities.")
layout["inference_stt"]["inputs"]["min-p"] = gr.Slider(value=0.0, minimum=0.0, maximum=1.0, step=0.05, label="Min P")
layout["inference_stt"]["inputs"]["beam-width"] = gr.Slider(value=0, minimum=0, maximum=32, step=1, label="Beam Width", info="Number of branches to search through for beam search sampling.")
with gr.Row():
layout["inference_stt"]["inputs"]["repetition-penalty"] = gr.Slider(value=1.0, minimum=-2.0, maximum=2.0, step=0.05, label="Repetition Penalty", info="Incurs a penalty to tokens based on how often they appear in a sequence.")
layout["inference_stt"]["inputs"]["repetition-penalty-decay"] = gr.Slider(value=0.0, minimum=-2.0, maximum=2.0, step=0.05, label="Repetition Penalty Length Decay", info="Modifies the reptition penalty based on how far back in time the token appeared in the sequence.")
layout["inference_stt"]["inputs"]["length-penalty"] = gr.Slider(value=0.0, minimum=-2.0, maximum=2.0, step=0.05, label="Length Penalty", info="(AR only) Modifies the probability of a stop token based on the current length of the sequence.")
with gr.Row():
layout["inference_stt"]["inputs"]["mirostat-tau"] = gr.Slider(value=0.0, minimum=0.0, maximum=8.0, step=0.05, label="Mirostat τ (Tau)", info="The \"surprise\" value when performing mirostat sampling. 0 to disable.")
layout["inference_stt"]["inputs"]["mirostat-eta"] = gr.Slider(value=0.0, minimum=0.0, maximum=2.0, step=0.05, label="Mirostat η (Eta)", info="The \"learning rate\" during mirostat sampling applied to the maximum surprise.")
with gr.Row():
layout["inference_stt"]["inputs"]["dry-multiplier"] = gr.Slider(value=0.0, minimum=0.0, maximum=8.0, step=0.05, label="DRY Multiplier", info="The multiplying factor for the DRY score penalty (0 to disable DRY sampling).")
layout["inference_stt"]["inputs"]["dry-base"] = gr.Slider(value=1.75, minimum=0.0, maximum=8.0, step=0.05, label="DRY Base", info="The base of the exponent in the DRY score penalty")
layout["inference_stt"]["inputs"]["dry-allowed-length"] = gr.Slider(value=2, minimum=0, maximum=75, step=1, label="Allowed Length", info="The maximimum length a token can be to perform DRY penalty with.")
layout["inference_stt"]["buttons"]["inference"].click(
fn=do_inference_stt,
inputs=[ x for x in layout["inference_stt"]["inputs"].values() if x is not None],
outputs=[ x for x in layout["inference_stt"]["outputs"].values() if x is not None]
)
"""
with gr.Tab("Training"):
with gr.Row():
with gr.Column(scale=1):
layout["training"]["outputs"]["console"] = gr.Textbox(lines=8, label="Console Log")
with gr.Row():
with gr.Column(scale=1):
layout["training"]["buttons"]["train"] = gr.Button(value="Train")
layout["training"]["buttons"]["train"].click(
fn=do_training,
outputs=[ x for x in layout["training"]["outputs"].values() if x is not None],
)
"""
2024-11-06 03:38:02 +00:00
if not USING_SPACES:
with gr.Tab("Dataset"):
with gr.Row():
with gr.Column(scale=7):
layout["dataset"]["outputs"]["transcription"] = gr.Textbox(lines=5, label="Sample Metadata")
with gr.Column(scale=1):
layout["dataset"]["inputs"]["speaker"] = gr.Dropdown(choices=get_speakers(), label="Speakers")
layout["dataset"]["outputs"]["audio"] = gr.Audio(label="Output")
layout["dataset"]["buttons"]["sample"] = gr.Button(value="Sample")
layout["dataset"]["buttons"]["sample"].click(
fn=load_sample,
inputs=[ x for x in layout["dataset"]["inputs"].values() if x is not None],
outputs=[ x for x in layout["dataset"]["outputs"].values() if x is not None],
)
if not USING_SPACES:
with gr.Tab("Settings"):
with gr.Row():
with gr.Column(scale=7):
with gr.Row():
layout["settings"]["inputs"]["models"] = gr.Dropdown(choices=get_model_paths(), value=args.yaml or args.model, label="Model")
layout["settings"]["inputs"]["device"] = gr.Dropdown(choices=get_devices(), value="cuda:0", label="Device")
layout["settings"]["inputs"]["dtype"] = gr.Dropdown(choices=get_dtypes(), value="auto", label="Precision")
layout["settings"]["inputs"]["attentions"] = gr.Dropdown(choices=get_attentions(), value="auto", label="Attentions")
with gr.Column(scale=1):
layout["settings"]["buttons"]["load"] = gr.Button(value="Load Model")
2024-11-06 03:38:02 +00:00
layout["settings"]["buttons"]["load"].click(
fn=load_model,
inputs=[ x for x in layout["settings"]["inputs"].values() if x is not None],
outputs=[ x for x in layout["settings"]["outputs"].values() if x is not None],
)
if os.path.exists("README.md") and args.render_markdown:
md = open("README.md", "r", encoding="utf-8").read()
# remove HF's metadata
if md.startswith("---\n"):
md = "".join(md.split("---")[2:])
gr.Markdown(md)
def start( lock=True ):
2024-09-06 04:21:18 +00:00
setup_logging()
2024-11-06 03:38:02 +00:00
if not USING_SPACES:
2024-11-06 04:30:49 +00:00
ui.queue(max_size=8)
ui.launch(share=args.share, server_name=args.listen_host, server_port=args.listen_port, prevent_thread_lock=not lock)
2024-11-06 03:38:02 +00:00
else:
2024-11-06 04:30:49 +00:00
ui.queue().launch()
if __name__ == "__main__":
start()