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#!/usr/bin/env python3
"""
Kiswahili Voice Agent for Hugging Face Spaces
Natural conversational Kiswahili voice-to-voice assistant
"""

import gradio as gr
import os
from datetime import datetime
import json

# Try to import optional dependencies
try:
    from gtts import gTTS
    HAS_GTTS = True
except ImportError:
    HAS_GTTS = False

try:
    import speech_recognition as sr
    HAS_SR = True
except ImportError:
    HAS_SR = False

try:
    import requests
    HAS_REQUESTS = True
except ImportError:
    HAS_REQUESTS = False

# Conversation history
conversation_history = []
conversation_id = None

# Natural Kiswahili system prompt
SYSTEM_PROMPT = """Wewe ni Manus, msaidizi wa sauti wa Kiswahili ambaye ana tabia nzuri na karimu. 
Unazungumza Kiswahili safi na asilia, na unafahamu utamaduni wa Kiswahili.
Katika kila jibu, jaribu kuuliza swali la mfuatano ili kuendelea na mazungumzo.
Jibu kwa ufupi lakini kwa maana - kwa kawaida 1-2 sentensi.
Kila jibu lazima liwe na swali au kauli inayokamatia mazungumzo."""

# Natural Kiswahili UI strings
UI_STRINGS = {
    "title": "πŸŽ™οΈ Manus - Msaidizi wa Sauti wa Kiswahili",
    "subtitle": "Mazungumzo ya asilia kwa Kiswahili",
    "instruction": "Bonyeza kurekodi, sema kitu kwa Kiswahili, kisha bonyeza kuacha.",
    "status_recording": "πŸ”΄ Inasikiliza...",
    "status_processing": "βš™οΈ Inachakata...",
    "status_ready": "βœ… Tayari",
    "status_error": "❌ Hitilafu",
    "user_label": "Wewe:",
    "assistant_label": "Manus:",
    "reset_button": "πŸ”„ Anza Upya",
    "reset_confirm": "Mazungumzo yamefutwa. Karibu tena!",
    "error_audio": "Haiwezekani kusoma sauti. Tafadhali jaribu tena.",
    "error_process": "Haiwezekani kuchakata sauti. Tafadhali jaribu tena.",
    "welcome": "Habari! Naitwa Manus. Karibu sana! Unaweza kusema kitu chochote kwa Kiswahili, na nitakujibu.",
}

def transcribe_audio(audio_file):
    """Transcribe Kiswahili audio using speech recognition"""
    if not HAS_SR:
        return "Haiwezekani kusoma sauti - moduli haipo"
    
    try:
        recognizer = sr.Recognizer()
        with sr.AudioFile(audio_file) as source:
            audio = recognizer.record(source)
        
        # Try to recognize Kiswahili
        text = recognizer.recognize_google(audio, language="sw-TZ")
        return text
    except sr.UnknownValueError:
        return "Haiwezekani kuelewa sauti. Tafadhali jaribu tena."
    except sr.RequestError:
        return "Haiwezekani kuunganisha na huduma ya mtandao."
    except Exception as e:
        return f"Hitilafu: {str(e)}"

def generate_response(user_text):
    """Generate natural Kiswahili response using simple logic"""
    # Simple rule-based responses for demo (replace with API call for better results)
    
    user_text_lower = user_text.lower()
    
    # Greeting responses
    greetings = {
        "habari": "Habari nzuri! Niko sawa. Wewe je, uko sawa?",
        "jina": "Naitwa Manus, msaidizi wako wa sauti. Jina lako nani?",
        "asante": "Karibu sana! Kuna kitu kingine ninachoweza kukusaidia?",
        "pole": "Pole pole! Kila kitu kitakuwa sawa. Unaweza kusema nini kinachokukosesha?",
        "ndiyo": "Nzuri! Unaweza kusema zaidi?",
        "hapana": "Sawa. Kuna kitu kingine?",
    }
    
    # Check for keywords
    for keyword, response in greetings.items():
        if keyword in user_text_lower:
            return response
    
    # Default conversational response
    default_responses = [
        "Hiyo ni kitu kizuri! Unaweza kusema zaidi kuhusu hilo?",
        "Nimeelewa. Na kisha nini?",
        "Sawa! Hiyo ni kitu muhimu. Unaweza kueneza?",
        "Nzuri sana! Unaweza kusema kitu kingine?",
        "Hiyo ni interesting! Unaweza kuniambia zaidi?",
    ]
    
    import random
    return random.choice(default_responses)

def text_to_speech_kiswahili(text):
    """Convert Kiswahili text to speech"""
    if not HAS_GTTS:
        return None
    
    try:
        tts = gTTS(text=text, lang='sw', slow=False)
        audio_file = "/tmp/response.mp3"
        tts.save(audio_file)
        return audio_file
    except Exception as e:
        print(f"TTS Error: {e}")
        return None

def process_voice_input(audio_input):
    """Main processing function for voice input"""
    global conversation_history, conversation_id
    
    if audio_input is None:
        return (
            UI_STRINGS["status_error"],
            UI_STRINGS["error_audio"],
            None,
            gr.update(value="")
        )
    
    try:
        # Step 1: Transcribe user audio
        user_text = transcribe_audio(audio_input)
        
        if "Hitilafu" in user_text or "Haiwezekani" in user_text:
            return (
                UI_STRINGS["status_error"],
                user_text,
                None,
                gr.update(value="")
            )
        
        # Step 2: Generate response
        assistant_response = generate_response(user_text)
        
        # Step 3: Convert response to speech
        audio_response = text_to_speech_kiswahili(assistant_response)
        
        # Step 4: Update conversation history
        conversation_history.append({
            "timestamp": datetime.now().isoformat(),
            "user": user_text,
            "assistant": assistant_response
        })
        
        # Format conversation display
        conversation_text = ""
        for msg in conversation_history:
            conversation_text += f"\n**{UI_STRINGS['user_label']}** {msg['user']}\n"
            conversation_text += f"**{UI_STRINGS['assistant_label']}** {msg['assistant']}\n"
        
        return (
            UI_STRINGS["status_ready"],
            conversation_text,
            audio_response,
            gr.update(value="")  # Clear recorder
        )
    
    except Exception as e:
        error_msg = f"{UI_STRINGS['status_error']}: {str(e)}"
        return (
            UI_STRINGS["status_error"],
            error_msg,
            None,
            gr.update(value="")
        )

def reset_conversation():
    """Reset conversation history"""
    global conversation_history
    conversation_history = []
    return (
        UI_STRINGS["status_ready"],
        UI_STRINGS["reset_confirm"],
        None,
        gr.update(value="")
    )

# Create Gradio interface
with gr.Blocks(title=UI_STRINGS["title"], theme=gr.themes.Soft()) as demo:
    gr.Markdown(f"# {UI_STRINGS['title']}")
    gr.Markdown(f"### {UI_STRINGS['subtitle']}")
    gr.Markdown(f"> {UI_STRINGS['instruction']}")
    
    with gr.Row():
        with gr.Column(scale=1):
            # Status indicator
            status_display = gr.Textbox(
                value=UI_STRINGS["status_ready"],
                label="Hali",
                interactive=False,
                lines=1
            )
            
            # Voice recorder
            audio_input = gr.Audio(
                label="🎀 Rekodi Sauti",
                type="filepath",
                sources=["microphone"]
            )
            
            # Process button
            process_btn = gr.Button(
                "πŸ“€ Tuma Sauti",
                variant="primary",
                size="lg"
            )
            
            # Reset button
            reset_btn = gr.Button(
                UI_STRINGS["reset_button"],
                variant="secondary"
            )
        
        with gr.Column(scale=1):
            # Conversation history
            conversation_display = gr.Markdown(
                value=f"**{UI_STRINGS['assistant_label']}** {UI_STRINGS['welcome']}\n",
                label="Mazungumzo"
            )
            
            # Audio response player
            audio_output = gr.Audio(
                label="πŸ”Š Jibu la Sauti",
                type="filepath",
                interactive=False
            )
    
    # Event handlers
    process_btn.click(
        fn=process_voice_input,
        inputs=[audio_input],
        outputs=[status_display, conversation_display, audio_output, audio_input]
    )
    
    reset_btn.click(
        fn=reset_conversation,
        outputs=[status_display, conversation_display, audio_output, audio_input]
    )
    
    # Auto-process when audio is recorded
    audio_input.change(
        fn=lambda audio: process_voice_input(audio) if audio else (
            UI_STRINGS["status_ready"],
            conversation_display.value,
            None,
            gr.update(value="")
        ),
        inputs=[audio_input],
        outputs=[status_display, conversation_display, audio_output, audio_input]
    )

if __name__ == "__main__":
    demo.launch(
        server_name="0.0.0.0",
        server_port=7860,
        share=True
    )