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- import io
- import re
- import wave
- import gradio as gr
- import numpy as np
- from .fish_e2e import FishE2EAgent, FishE2EEventType
- from .schema import ServeMessage, ServeTextPart, ServeVQPart
- def wav_chunk_header(sample_rate=44100, bit_depth=16, channels=1):
- buffer = io.BytesIO()
- with wave.open(buffer, "wb") as wav_file:
- wav_file.setnchannels(channels)
- wav_file.setsampwidth(bit_depth // 8)
- wav_file.setframerate(sample_rate)
- wav_header_bytes = buffer.getvalue()
- buffer.close()
- return wav_header_bytes
- class ChatState:
- def __init__(self):
- self.conversation = []
- self.added_systext = False
- self.added_sysaudio = False
- def get_history(self):
- results = []
- for msg in self.conversation:
- results.append({"role": msg.role, "content": self.repr_message(msg)})
- # Process assistant messages to extract questions and update user messages
- for i, msg in enumerate(results):
- if msg["role"] == "assistant":
- match = re.search(r"Question: (.*?)\n\nResponse:", msg["content"])
- if match and i > 0 and results[i - 1]["role"] == "user":
- # Update previous user message with extracted question
- results[i - 1]["content"] += "\n" + match.group(1)
- # Remove the Question/Answer format from assistant message
- msg["content"] = msg["content"].split("\n\nResponse: ", 1)[1]
- return results
- def repr_message(self, msg: ServeMessage):
- response = ""
- for part in msg.parts:
- if isinstance(part, ServeTextPart):
- response += part.text
- elif isinstance(part, ServeVQPart):
- response += f"<audio {len(part.codes[0]) / 21:.2f}s>"
- return response
- def clear_fn():
- return [], ChatState(), None, None, None
- async def process_audio_input(
- sys_audio_input, sys_text_input, audio_input, state: ChatState, text_input: str
- ):
- if audio_input is None and not text_input:
- raise gr.Error("No input provided")
- agent = FishE2EAgent() # Create new agent instance for each request
- # Convert audio input to numpy array
- if isinstance(audio_input, tuple):
- sr, audio_data = audio_input
- elif text_input:
- sr = 44100
- audio_data = None
- else:
- raise gr.Error("Invalid audio format")
- if isinstance(sys_audio_input, tuple):
- sr, sys_audio_data = sys_audio_input
- else:
- sr = 44100
- sys_audio_data = None
- def append_to_chat_ctx(
- part: ServeTextPart | ServeVQPart, role: str = "assistant"
- ) -> None:
- if not state.conversation or state.conversation[-1].role != role:
- state.conversation.append(ServeMessage(role=role, parts=[part]))
- else:
- state.conversation[-1].parts.append(part)
- if state.added_systext is False and sys_text_input:
- state.added_systext = True
- append_to_chat_ctx(ServeTextPart(text=sys_text_input), role="system")
- if text_input:
- append_to_chat_ctx(ServeTextPart(text=text_input), role="user")
- audio_data = None
- result_audio = b""
- async for event in agent.stream(
- sys_audio_data,
- audio_data,
- sr,
- 1,
- chat_ctx={
- "messages": state.conversation,
- "added_sysaudio": state.added_sysaudio,
- },
- ):
- if event.type == FishE2EEventType.USER_CODES:
- append_to_chat_ctx(ServeVQPart(codes=event.vq_codes), role="user")
- elif event.type == FishE2EEventType.SPEECH_SEGMENT:
- append_to_chat_ctx(ServeVQPart(codes=event.vq_codes))
- yield state.get_history(), wav_chunk_header() + event.frame.data, None, None
- elif event.type == FishE2EEventType.TEXT_SEGMENT:
- append_to_chat_ctx(ServeTextPart(text=event.text))
- yield state.get_history(), None, None, None
- yield state.get_history(), None, None, None
- async def process_text_input(
- sys_audio_input, sys_text_input, state: ChatState, text_input: str
- ):
- async for event in process_audio_input(
- sys_audio_input, sys_text_input, None, state, text_input
- ):
- yield event
- def create_demo():
- with gr.Blocks() as demo:
- state = gr.State(ChatState())
- with gr.Row():
- # Left column (70%) for chatbot and notes
- with gr.Column(scale=7):
- chatbot = gr.Chatbot(
- [],
- elem_id="chatbot",
- bubble_full_width=False,
- height=600,
- type="messages",
- )
- # notes = gr.Markdown(
- # """
- # # Fish Agent
- # 1. 此Demo为Fish Audio自研端到端语言模型Fish Agent 3B版本.
- # 2. 你可以在我们的官方仓库找到代码以及权重,但是相关内容全部基于 CC BY-NC-SA 4.0 许可证发布.
- # 3. Demo为早期灰度测试版本,推理速度尚待优化.
- # # 特色
- # 1. 该模型自动集成ASR与TTS部分,不需要外挂其它模型,即真正的端到端,而非三段式(ASR+LLM+TTS).
- # 2. 模型可以使用reference audio控制说话音色.
- # 3. 可以生成具有较强情感与韵律的音频.
- # """
- # )
- notes = gr.Markdown(
- """
- # Fish Agent
- 1. This demo is Fish Audio's self-researh end-to-end language model, Fish Agent version 3B.
- 2. You can find the code and weights in our official repo in [gitub](https://github.com/fishaudio/fish-speech) and [hugging face](https://huggingface.co/fishaudio/fish-agent-v0.1-3b), but the content is released under a CC BY-NC-SA 4.0 licence.
- 3. The demo is an early alpha test version, the inference speed needs to be optimised.
- # Features
- 1. The model automatically integrates ASR and TTS parts, no need to plug-in other models, i.e., true end-to-end, not three-stage (ASR+LLM+TTS).
- 2. The model can use reference audio to control the speech timbre.
- 3. The model can generate speech with strong emotion.
- """
- )
- # Right column (30%) for controls
- with gr.Column(scale=3):
- sys_audio_input = gr.Audio(
- sources=["upload"],
- type="numpy",
- label="Give a timbre for your assistant",
- )
- sys_text_input = gr.Textbox(
- label="What is your assistant's role?",
- value="You are a voice assistant created by Fish Audio, offering end-to-end voice interaction for a seamless user experience. You are required to first transcribe the user's speech, then answer it in the following format: 'Question: [USER_SPEECH]\n\nAnswer: [YOUR_RESPONSE]\n'. You are required to use the following voice in this conversation.",
- type="text",
- )
- audio_input = gr.Audio(
- sources=["microphone"], type="numpy", label="Speak your message"
- )
- text_input = gr.Textbox(label="Or type your message", type="text")
- output_audio = gr.Audio(
- label="Assistant's Voice",
- streaming=True,
- autoplay=True,
- interactive=False,
- )
- send_button = gr.Button("Send", variant="primary")
- clear_button = gr.Button("Clear")
- # Event handlers
- audio_input.stop_recording(
- process_audio_input,
- inputs=[sys_audio_input, sys_text_input, audio_input, state, text_input],
- outputs=[chatbot, output_audio, audio_input, text_input],
- show_progress=True,
- )
- send_button.click(
- process_text_input,
- inputs=[sys_audio_input, sys_text_input, state, text_input],
- outputs=[chatbot, output_audio, audio_input, text_input],
- show_progress=True,
- )
- text_input.submit(
- process_text_input,
- inputs=[sys_audio_input, sys_text_input, state, text_input],
- outputs=[chatbot, output_audio, audio_input, text_input],
- show_progress=True,
- )
- clear_button.click(
- clear_fn,
- inputs=[],
- outputs=[chatbot, state, audio_input, output_audio, text_input],
- )
- return demo
- if __name__ == "__main__":
- demo = create_demo()
- demo.launch(server_name="127.0.0.1", server_port=7860, share=True)
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