# Inference The pretrained model checkpoints can be reached at [🤗 Hugging Face](https://huggingface.co/SWivid/F5-TTS) and [🤖 Model Scope](https://www.modelscope.cn/models/SWivid/F5-TTS_Emilia-ZH-EN), or will be automatically downloaded when running inference scripts. **More checkpoints with whole community efforts can be found in [SHARED.md](SHARED.md), supporting more languages.** Currently support **30s for a single** generation, which is the **total length** including both prompt and output audio. However, you can provide `infer_cli` and `infer_gradio` with longer text, will automatically do chunk generation. Long reference audio will be **clip short to ~15s**. To avoid possible inference failures, make sure you have seen through the following instructions. - Use reference audio <15s and leave some silence (e.g. 1s) at the end. Otherwise there is a risk of truncating in the middle of word, leading to suboptimal generation. - Uppercased letters will be uttered letter by letter, so use lowercased letters for normal words. - Add some spaces (blank: " ") or punctuations (e.g. "," ".") to explicitly introduce some pauses. - Preprocess numbers to Chinese letters if you want to have them read in Chinese, otherwise in English. ## Gradio App Currently supported features: - Basic TTS with Chunk Inference - Multi-Style / Multi-Speaker Generation - Voice Chat powered by Qwen2.5-3B-Instruct The cli command `f5-tts_infer-gradio` equals to `python src/f5_tts/infer/infer_gradio.py`, which launches a Gradio APP (web interface) for inference. The script will load model checkpoints from Huggingface. You can also manually download files and update the path to `load_model()` in `infer_gradio.py`. Currently only load TTS models first, will load ASR model to do transcription if `ref_text` not provided, will load LLM model if use Voice Chat. Could also be used as a component for larger application. ```python import gradio as gr from f5_tts.infer.infer_gradio import app with gr.Blocks() as main_app: gr.Markdown("# This is an example of using F5-TTS within a bigger Gradio app") # ... other Gradio components app.render() main_app.launch() ``` ## CLI Inference The cli command `f5-tts_infer-cli` equals to `python src/f5_tts/infer/infer_cli.py`, which is a command line tool for inference. The script will load model checkpoints from Huggingface. You can also manually download files and use `--ckpt_file` to specify the model you want to load, or directly update in `infer_cli.py`. For change vocab.txt use `--vocab_file` to provide your `vocab.txt` file. Basically you can inference with flags: ```bash # Leave --ref_text "" will have ASR model transcribe (extra GPU memory usage) f5-tts_infer-cli \ --model "F5-TTS" \ --ref_audio "ref_audio.wav" \ --ref_text "The content, subtitle or transcription of reference audio." \ --gen_text "Some text you want TTS model generate for you." # Choose Vocoder f5-tts_infer-cli --vocoder_name bigvgan --load_vocoder_from_local --ckpt_file f5-tts_infer-cli --vocoder_name vocos --load_vocoder_from_local --ckpt_file ``` And a `.toml` file would help with more flexible usage. ```bash f5-tts_infer-cli -c custom.toml ``` For example, you can use `.toml` to pass in variables, refer to `src/f5_tts/infer/examples/basic/basic.toml`: ```toml # F5-TTS | E2-TTS model = "F5-TTS" ref_audio = "infer/examples/basic/basic_ref_en.wav" # If an empty "", transcribes the reference audio automatically. ref_text = "Some call me nature, others call me mother nature." gen_text = "I don't really care what you call me. I've been a silent spectator, watching species evolve, empires rise and fall. But always remember, I am mighty and enduring." # File with text to generate. Ignores the text above. gen_file = "" remove_silence = false output_dir = "tests" ``` You can also leverage `.toml` file to do multi-style generation, refer to `src/f5_tts/infer/examples/multi/story.toml`. ```toml # F5-TTS | E2-TTS model = "F5-TTS" ref_audio = "infer/examples/multi/main.flac" # If an empty "", transcribes the reference audio automatically. ref_text = "" gen_text = "" # File with text to generate. Ignores the text above. gen_file = "infer/examples/multi/story.txt" remove_silence = true output_dir = "tests" [voices.town] ref_audio = "infer/examples/multi/town.flac" ref_text = "" [voices.country] ref_audio = "infer/examples/multi/country.flac" ref_text = "" ``` You should mark the voice with `[main]` `[town]` `[country]` whenever you want to change voice, refer to `src/f5_tts/infer/examples/multi/story.txt`. ## Speech Editing To test speech editing capabilities, use the following command: ```bash python src/f5_tts/infer/speech_edit.py ``` ## Socket Realtime Client To communicate with socket server you need to run ```bash python src/f5_tts/socket_server.py ```
Then create client to communicate ``` python import socket import numpy as np import asyncio import pyaudio async def listen_to_voice(text, server_ip='localhost', server_port=9999): client_socket = socket.socket(socket.AF_INET, socket.SOCK_STREAM) client_socket.connect((server_ip, server_port)) async def play_audio_stream(): buffer = b'' p = pyaudio.PyAudio() stream = p.open(format=pyaudio.paFloat32, channels=1, rate=24000, # Ensure this matches the server's sampling rate output=True, frames_per_buffer=2048) try: while True: chunk = await asyncio.get_event_loop().run_in_executor(None, client_socket.recv, 1024) if not chunk: # End of stream break if b"END_OF_AUDIO" in chunk: buffer += chunk.replace(b"END_OF_AUDIO", b"") if buffer: audio_array = np.frombuffer(buffer, dtype=np.float32).copy() # Make a writable copy stream.write(audio_array.tobytes()) break buffer += chunk if len(buffer) >= 4096: audio_array = np.frombuffer(buffer[:4096], dtype=np.float32).copy() # Make a writable copy stream.write(audio_array.tobytes()) buffer = buffer[4096:] finally: stream.stop_stream() stream.close() p.terminate() try: # Send only the text to the server await asyncio.get_event_loop().run_in_executor(None, client_socket.sendall, text.encode('utf-8')) await play_audio_stream() print("Audio playback finished.") except Exception as e: print(f"Error in listen_to_voice: {e}") finally: client_socket.close() # Example usage: Replace this with your actual server IP and port async def main(): await listen_to_voice("my name is jenny..", server_ip='localhost', server_port=9998) # Run the main async function asyncio.run(main()) ```