Kokoro-TTS-Zero / app.py
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Added Multi-Voice, GPU Timeout, etc
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import os
import gradio as gr
import spaces
import time
import matplotlib.pyplot as plt
import numpy as np
import torch
import os
from tts_model import TTSModel
from lib import format_audio_output
from lib.ui_content import header_html, demo_text_info
# Set HF_HOME for faster restarts with cached models/voices
os.environ["HF_HOME"] = "/data/.huggingface"
# Create TTS model instance
model = TTSModel()
def initialize_model():
"""Initialize model and get voices"""
if model.model is None:
if not model.initialize():
raise gr.Error("Failed to initialize model")
voices = model.list_voices()
if not voices:
raise gr.Error("No voices found. Please check the voices directory.")
return gr.update(choices=voices, value=[voices[0]] if voices else None)
def update_progress(chunk_num, total_chunks, tokens_per_sec, rtf, progress_state, start_time, gpu_timeout, progress):
# Calculate time metrics
elapsed = time.time() - start_time
gpu_time_left = max(0, gpu_timeout - elapsed)
# Calculate chunk time more accurately
prev_total_time = sum(progress_state["chunk_times"]) if progress_state["chunk_times"] else 0
chunk_time = elapsed - prev_total_time
# Validate metrics before adding to state
if chunk_time > 0 and tokens_per_sec >= 0:
# Update progress state with validated metrics
progress_state["progress"] = chunk_num / total_chunks
progress_state["total_chunks"] = total_chunks
progress_state["gpu_time_left"] = gpu_time_left
progress_state["tokens_per_sec"].append(float(tokens_per_sec))
progress_state["rtf"].append(float(rtf))
progress_state["chunk_times"].append(chunk_time)
# Only update progress display during processing
progress(progress_state["progress"], desc=f"Processing chunk {chunk_num}/{total_chunks} | GPU Time Left: {int(gpu_time_left)}s")
def generate_speech_from_ui(text, voice_names, speed, gpu_timeout, progress=gr.Progress(track_tqdm=False)):
"""Handle text-to-speech generation from the Gradio UI"""
try:
if not text or not voice_names:
raise gr.Error("Please enter text and select at least one voice")
start_time = time.time()
# Create progress state with explicit type initialization
progress_state = {
"progress": 0.0,
"tokens_per_sec": [], # Initialize as empty list
"rtf": [], # Initialize as empty list
"chunk_times": [], # Initialize as empty list
"gpu_time_left": float(gpu_timeout), # Ensure float
"total_chunks": 0
}
# Handle single or multiple voices
if isinstance(voice_names, str):
voice_names = [voice_names]
# Generate speech with progress tracking using combined voice
audio_array, duration, metrics = model.generate_speech(
text,
voice_names,
speed,
gpu_timeout=gpu_timeout,
progress_callback=update_progress,
progress_state=progress_state,
progress=progress
)
# Format output for Gradio
audio_output, duration_text = format_audio_output(audio_array)
# Create plot and metrics text outside GPU context
fig, metrics_text = create_performance_plot(metrics, voice_names)
return (
audio_output,
fig,
metrics_text
)
except Exception as e:
raise gr.Error(f"Generation failed: {str(e)}")
def create_performance_plot(metrics, voice_names):
"""Create performance plot and metrics text from generation metrics"""
# Clean and process the data
tokens_per_sec = np.array(metrics["tokens_per_sec"])
rtf_values = np.array(metrics["rtf"])
# Calculate statistics using cleaned data
median_tps = float(np.median(tokens_per_sec))
mean_tps = float(np.mean(tokens_per_sec))
std_tps = float(np.std(tokens_per_sec))
# Set y-axis limits based on data range
y_min = max(0, np.min(tokens_per_sec) * 0.9)
y_max = np.max(tokens_per_sec) * 1.1
# Create plot
fig, ax = plt.subplots(figsize=(10, 5))
fig.patch.set_facecolor('black')
ax.set_facecolor('black')
# Plot data points
chunk_nums = list(range(1, len(tokens_per_sec) + 1))
# Plot data points
ax.bar(chunk_nums, tokens_per_sec, color='#ff2a6d', alpha=0.6)
# Set y-axis limits with padding
padding = 0.1 * (y_max - y_min)
ax.set_ylim(max(0, y_min - padding), y_max + padding)
# Add median line
ax.axhline(y=median_tps, color='#05d9e8', linestyle='--',
label=f'Median: {median_tps:.1f} tokens/sec')
# Style improvements
ax.set_xlabel('Chunk Number', fontsize=24, labelpad=20, color='white')
ax.set_ylabel('Tokens per Second', fontsize=24, labelpad=20, color='white')
ax.set_title('Processing Speed by Chunk', fontsize=28, pad=30, color='white')
ax.tick_params(axis='both', which='major', labelsize=20, colors='white')
ax.spines['bottom'].set_color('white')
ax.spines['top'].set_color('white')
ax.spines['left'].set_color('white')
ax.spines['right'].set_color('white')
ax.grid(False)
ax.legend(fontsize=20, facecolor='black', edgecolor='#05d9e8', loc='lower left',
labelcolor='white')
plt.tight_layout()
# Calculate average RTF from individual chunk RTFs
rtf = np.mean(rtf_values)
# Prepare metrics text
metrics_text = (
f"Median Speed: {median_tps:.1f} tokens/sec (o200k_base)\n" +
f"Real-time Factor: {rtf:.3f}\n" +
f"Real Time Speed: {int(1/rtf)}x\n" +
f"Processing Time: {int(metrics['total_time'])}s\n" +
f"Total Tokens: {metrics['total_tokens']} (o200k_base)\n" +
f"Voices: {', '.join(voice_names)}"
)
return fig, metrics_text
# Create Gradio interface
with gr.Blocks(title="Kokoro TTS Demo", css="""
.equal-height {
min-height: 400px;
display: flex;
flex-direction: column;
}
""") as demo:
gr.HTML(header_html)
with gr.Row():
# Column 1: Text Input
with open("the_time_machine_hgwells.txt") as f:
text = f.readlines()[:200]
text = "".join(text)
with gr.Column(elem_classes="equal-height"):
text_input = gr.TextArea(
label="Text to speak",
placeholder="Enter text here or upload a .txt file",
lines=10,
value=text
)
# Column 2: Controls
with gr.Column(elem_classes="equal-height"):
file_input = gr.File(
label="Upload .txt file",
file_types=[".txt"],
type="binary"
)
def load_text_from_file(file_bytes):
if file_bytes is None:
return None
try:
return file_bytes.decode('utf-8')
except Exception as e:
raise gr.Error(f"Failed to read file: {str(e)}")
file_input.change(
fn=load_text_from_file,
inputs=[file_input],
outputs=[text_input]
)
with gr.Group():
voice_dropdown = gr.Dropdown(
label="Voice(s)",
choices=[], # Start empty, will be populated after initialization
value=None,
allow_custom_value=True,
multiselect=True
)
# Add refresh button to manually update voice list
refresh_btn = gr.Button("🔄 Refresh Voices", size="sm")
speed_slider = gr.Slider(
label="Speed",
minimum=0.5,
maximum=2.0,
value=1.0,
step=0.1
)
gpu_timeout_slider = gr.Slider(
label="GPU Timeout (seconds)",
minimum=15,
maximum=120,
value=60,
step=1,
info="Maximum time allowed for GPU processing"
)
submit_btn = gr.Button("Generate Speech", variant="primary")
# Column 3: Output
with gr.Column(elem_classes="equal-height"):
audio_output = gr.Audio(
label="Generated Speech",
type="numpy",
format="wav",
autoplay=False
)
progress_bar = gr.Progress(track_tqdm=False)
metrics_text = gr.Textbox(
label="Performance Summary",
interactive=False,
lines=5
)
metrics_plot = gr.Plot(
label="Processing Metrics",
show_label=True,
format="png" # Explicitly set format to PNG which is supported by matplotlib
)
# Set up event handlers
refresh_btn.click(
fn=initialize_model,
outputs=[voice_dropdown]
)
submit_btn.click(
fn=generate_speech_from_ui,
inputs=[text_input, voice_dropdown, speed_slider, gpu_timeout_slider],
outputs=[audio_output, metrics_plot, metrics_text],
show_progress=True
)
# Add text analysis info
with gr.Row():
with gr.Column():
gr.Markdown(demo_text_info)
# Initialize voices on load
demo.load(
fn=initialize_model,
outputs=[voice_dropdown]
)
# Launch the app
if __name__ == "__main__":
demo.launch()