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# File: lcars_enhanced_interface.py

import asyncio
import json
import os
import time
import uuid
from typing import Dict, List, Any, Optional
from dataclasses import dataclass
import threading
import pyttsx3
import re
from pathlib import Path

import gradio as gr
from rich.console import Console
from openai import OpenAI, AsyncOpenAI
import asyncio
from collections import defaultdict
import json
import os
import queue
import traceback
import uuid
from typing import Dict, List, Any, Optional, Callable, Coroutine
from dataclasses import dataclass
from queue import Queue, Empty
from threading import Lock, Event, Thread
import threading
from concurrent.futures import ThreadPoolExecutor
import time
from openai import OpenAI, AsyncOpenAI
from rich.console import Console
import gradio as gr
import pyttsx3
import re
from pathlib import Path
#############################################################
BASE_URL="http://localhost:1234/v1"
BASE_API_KEY="not-needed"
BASE_CLIENT = AsyncOpenAI(
    base_url=BASE_URL,
    api_key=BASE_API_KEY
) # Global state for client
BASEMODEL_ID = "leroydyer/qwen/qwen3-0.6b-q4_k_m.gguf"  # Global state for selected model ID
CLIENT =OpenAI(
    base_url=BASE_URL,
    api_key=BASE_API_KEY)
# --- Configuration ---
DEFAULT_BASE_URL = "http://localhost:1234/v1"
DEFAULT_API_KEY = "not-needed"
DEFAULT_MODEL_ID = "leroydyer/qwen/qwen3-0.6b-q4_k_m.gguf"
DEFAULT_TEMPERATURE = 0.3
DEFAULT_MAX_TOKENS = 5000


# --- Configuration ---
DEFAULT_BASE_URL = "http://localhost:1234/v1"
DEFAULT_API_KEY = "not-needed"
DEFAULT_MODEL_ID = "leroydyer/qwen/qwen3-0.6b-q4_k_m.gguf"
DEFAULT_TEMPERATURE = 0.7
DEFAULT_MAX_TOKENS = 5000
console = Console()
class EventManager:
    def __init__(self):
        self._handlers = defaultdict(list)
        self._lock = threading.Lock()
    def register(self, event: str, handler: Callable):
        with self._lock:
            self._handlers[event].append(handler)
    def unregister(self, event: str, handler: Callable):
        with self._lock:
            if event in self._handlers and handler in self._handlers[event]:
                self._handlers[event].remove(handler)
    def raise_event(self, event: str, data: Any):
        with self._lock:
            handlers = self._handlers[event][:]
        for handler in handlers:
            try:
                handler(data)
            except Exception as e:
                console.log(f"Error in event handler for {event}: {e}", style="bold red")

EVENT_MANAGER = EventManager()
def RegisterEvent(event: str, handler: Callable):
    EVENT_MANAGER.register(event, handler)
def RaiseEvent(event: str, data: Any):
    EVENT_MANAGER.raise_event(event, data)
def UnregisterEvent(event: str, handler: Callable):
    EVENT_MANAGER.unregister(event, handler)
@dataclass
class LLMMessage:
    role: str
    content: str
    message_id: str = None
    conversation_id: str = None
    timestamp: float = None
    metadata: Dict[str, Any] = None
    def __post_init__(self):
        if self.message_id is None:
            self.message_id = str(uuid.uuid4())
        if self.timestamp is None:
            self.timestamp = time.time()
        if self.metadata is None:
            self.metadata = {}

@dataclass
class LLMRequest:
    message: LLMMessage
    response_event: str = None
    callback: Callable = None
    def __post_init__(self):
        if self.response_event is None:
            self.response_event = f"llm_response_{self.message.message_id}"

@dataclass
class LLMResponse:
    message: LLMMessage
    request_id: str
    success: bool = True
    error: str = None

class LLMAgent:
    """Main Agent Driver ! 
    Agent For Multiple messages at once , 
    has a message queing service as well as agenerator method for easy intergration with console     
    applications as well as ui !"""
    def __init__(
        self,
        model_id: str = DEFAULT_MODEL_ID,
        system_prompt: str = None,
        max_queue_size: int = 1000,
        max_retries: int = 3,
        timeout: int = 30000,
        max_tokens: int = 5000,
        temperature: float = 0.3,
        base_url: str = "http://localhost:1234/v1",
        api_key: str = "not-needed",
        generate_fn: Callable[[List[Dict[str, str]]], Coroutine[Any, Any, str]] = None
    ):
        self.model_id = model_id
        self.system_prompt = system_prompt or "You are a helpful AI assistant."
        self.request_queue = Queue(maxsize=max_queue_size)
        self.max_retries = max_retries
        self.timeout = timeout
        self.is_running = False
        self._stop_event = Event()
        self.processing_thread = None
        # Conversation tracking
        self.conversations: Dict[str, List[LLMMessage]] = {}
        self.max_history_length = 20
        self._generate = generate_fn or self._default_generate
        self.api_key = api_key
        self.base_url = base_url        
        self.max_tokens = max_tokens
        self.temperature = temperature
        self.async_client = self.CreateClient(base_url, api_key)
        # Active requests waiting for responses
        self.pending_requests: Dict[str, LLMRequest] = {}
        self.pending_requests_lock = Lock()
        # Register internal event handlers
        self._register_event_handlers()
        # Start the processing thread immediately
        self.start()

    async def _default_generate(self, messages: List[Dict[str, str]]) -> str:
        """Default generate function if none provided"""
        return await self.openai_generate(messages)

    def _register_event_handlers(self):
        """Register internal event handlers for response routing"""
        RegisterEvent("llm_internal_response", self._handle_internal_response)

    def _handle_internal_response(self, response: LLMResponse):
        """Route responses to the appropriate request handlers"""
        console.log(f"[bold cyan]Handling internal response for: {response.request_id}[/bold cyan]")
        request = None
        with self.pending_requests_lock:
            if response.request_id in self.pending_requests:
                request = self.pending_requests[response.request_id]
                del self.pending_requests[response.request_id]
                console.log(f"Found pending request for: {response.request_id}")
            else:
                console.log(f"No pending request found for: {response.request_id}", style="yellow")
                return
        # Raise the specific response event
        if request.response_event:
            console.log(f"[bold green]Raising event: {request.response_event}[/bold green]")
            RaiseEvent(request.response_event, response)
        # Call callback if provided
        if request.callback:
            try:
                console.log(f"[bold yellow]Calling callback for: {response.request_id}[/bold yellow]")
                request.callback(response)
            except Exception as e:
                console.log(f"Error in callback: {e}", style="bold red")

    def _add_to_conversation_history(self, conversation_id: str, message: LLMMessage):
        """Add message to conversation history"""
        if conversation_id not in self.conversations:
            self.conversations[conversation_id] = []
        self.conversations[conversation_id].append(message)
        # Trim history if too long
        if len(self.conversations[conversation_id]) > self.max_history_length * 2:
            self.conversations[conversation_id] = self.conversations[conversation_id][-(self.max_history_length * 2):]

    def _build_messages_from_conversation(self, conversation_id: str, new_message: LLMMessage) -> List[Dict[str, str]]:
        """Build message list from conversation history"""
        messages = []
        # Add system prompt
        if self.system_prompt:
            messages.append({"role": "system", "content": self.system_prompt})
        # Add conversation history
        if conversation_id in self.conversations:
            for msg in self.conversations[conversation_id][-self.max_history_length:]:
                messages.append({"role": msg.role, "content": msg.content})
        # Add the new message
        messages.append({"role": new_message.role, "content": new_message.content})
        return messages

    def _process_llm_request(self, request: LLMRequest):
        """Process a single LLM request"""
        console.log(f"[bold green]Processing LLM request: {request.message.message_id}[/bold green]")
        try:
            # Build messages for LLM
            messages = self._build_messages_from_conversation(
                request.message.conversation_id or "default",
                request.message
            )
            console.log(f"Calling LLM with {len(messages)} messages")
            # Call LLM - Use sync call for thread compatibility
            response_content = self._call_llm_sync(messages)
            console.log(f"[bold green]LLM response received: {response_content}...[/bold green]")
            # Create response message
            response_message = LLMMessage(
                role="assistant",
                content=response_content,
                conversation_id=request.message.conversation_id,
                metadata={"request_id": request.message.message_id}
            )
            # Update conversation history
            self._add_to_conversation_history(
                request.message.conversation_id or "default",
                request.message
            )
            self._add_to_conversation_history(
                request.message.conversation_id or "default",
                response_message
            )
            # Create and send response
            response = LLMResponse(
                message=response_message,
                request_id=request.message.message_id,
                success=True
            )
            console.log(f"[bold blue]Sending internal response for: {request.message.message_id}[/bold blue]")
            RaiseEvent("llm_internal_response", response)
        except Exception as e:
            console.log(f"[bold red]Error processing LLM request: {e}[/bold red]")
            traceback.print_exc()
            # Create error response
            error_response = LLMResponse(
                message=LLMMessage(
                    role="system",
                    content=f"Error: {str(e)}",
                    conversation_id=request.message.conversation_id
                ),
                request_id=request.message.message_id,
                success=False,
                error=str(e)
            )
            RaiseEvent("llm_internal_response", error_response)

    def _call_llm_sync(self, messages: List[Dict[str, str]]) -> str:
        """Sync call to the LLM with retry logic"""
        console.log(f"Making LLM call to {self.model_id}")
        for attempt in range(self.max_retries):
            try:
                response = CLIENT.chat.completions.create(
                    model=self.model_id,
                    messages=messages,
                    temperature=self.temperature,
                    max_tokens=self.max_tokens
                )
                content = response.choices[0].message.content
                console.log(f"LLM call successful, response length: {len(content)}")
                return content
            except Exception as e:
                console.log(f"LLM call attempt {attempt + 1} failed: {e}")
                if attempt == self.max_retries - 1:
                    raise e
                time.sleep(1) # Wait before retry
    def _process_queue(self):
        """Main queue processing loop"""
        console.log("[bold cyan]LLM Agent queue processor started[/bold cyan]")
        while not self._stop_event.is_set():
            try:
                request = self.request_queue.get(timeout=1.0)
                if request:
                    console.log(f"Got request from queue: {request.message.message_id}")
                    self._process_llm_request(request)
                    self.request_queue.task_done()
            except Empty:
                continue
            except Exception as e:
                console.log(f"Error in queue processing: {e}", style="bold red")
                traceback.print_exc()
        console.log("[bold cyan]LLM Agent queue processor stopped[/bold cyan]")

    def send_message(
        self,
        content: str,
        role: str = "user",
        conversation_id: str = None,
        response_event: str = None,
        callback: Callable = None,
        metadata: Dict = None
    ) -> str:
        """Send a message to the LLM and get response via events"""
        if not self.is_running:
            raise RuntimeError("LLM Agent is not running. Call start() first.")
        # Create message
        message = LLMMessage(
            role=role,
            content=content,
            conversation_id=conversation_id,
            metadata=metadata or {}
        )
        # Create request
        request = LLMRequest(
            message=message,
            response_event=response_event,
            callback=callback
        )
        # Store in pending requests BEFORE adding to queue
        with self.pending_requests_lock:
            self.pending_requests[message.message_id] = request
            console.log(f"Added to pending requests: {message.message_id}")
        # Add to queue
        try:
            self.request_queue.put(request, timeout=5.0)
            console.log(f"[bold magenta]Message queued: {message.message_id}, Content: {content[:50]}...[/bold magenta]")
            return message.message_id
        except queue.Full:
            console.log(f"[bold red]Queue full, cannot send message[/bold red]")
            with self.pending_requests_lock:
                if message.message_id in self.pending_requests:
                    del self.pending_requests[message.message_id]
            raise RuntimeError("LLM Agent queue is full")

    async def chat(self, messages: List[Dict[str, str]]) -> str:
        """
        Async chat method that sends message via queue and returns response string.
        This is the main method you should use.
        """
        # Create future for the response
        loop = asyncio.get_event_loop()
        response_future = loop.create_future()
        def chat_callback(response: LLMResponse):
            """Callback when LLM responds - thread-safe"""
            console.log(f"[bold yellow]βœ“ CHAT CALLBACK TRIGGERED![/bold yellow]")
            if not response_future.done():
                if response.success:
                    content = response.message.content
                    console.log(f"Callback received content: {content}...")
                    # Schedule setting the future result on the main event loop
                    loop.call_soon_threadsafe(response_future.set_result, content)
                else:
                    console.log(f"Error in response: {response.error}")
                    error_msg = f"❌ Error: {response.error}"
                    loop.call_soon_threadsafe(response_future.set_result, error_msg)
            else:
                console.log(f"[bold red]Future already done, ignoring callback[/bold red]")
        console.log(f"Sending message to LLM agent...")
        # Extract the actual message content from the messages list
        user_message = ""
        for msg in messages:
            if msg.get("role") == "user":
                user_message = msg.get("content", "")
                break
        if not user_message.strip():
            return ""
        # Send message with callback using the queue system
        try:
            message_id = self.send_message(
                content=user_message,
                conversation_id="default",
                callback=chat_callback
            )
            console.log(f"Message sent with ID: {message_id}, waiting for response...")
            # Wait for the response and return it
            try:
                response = await asyncio.wait_for(response_future, timeout=self.timeout)
                console.log(f"[bold green]βœ“ Chat complete! Response length: {len(response)}[/bold green]")
                return response
            except asyncio.TimeoutError:
                console.log("[bold red]Response timeout[/bold red]")
                # Clean up the pending request
                with self.pending_requests_lock:
                    if message_id in self.pending_requests:
                        del self.pending_requests[message_id]
                return "❌ Response timeout - check if LLM server is running"
        except Exception as e:
            console.log(f"[bold red]Error sending message: {e}[/bold red]")
            traceback.print_exc()
            return f"❌ Error sending message: {e}"

    def start(self):
        """Start the LLM agent"""
        if not self.is_running:
            self.is_running = True
            self._stop_event.clear()
            self.processing_thread = Thread(target=self._process_queue, daemon=True)
            self.processing_thread.start()
            console.log("[bold green]LLM Agent started[/bold green]")

    def stop(self):
        """Stop the LLM agent"""
        console.log("Stopping LLM Agent...")
        self._stop_event.set()
        if self.processing_thread and self.processing_thread.is_alive():
            self.processing_thread.join(timeout=10)
        self.is_running = False
        console.log("LLM Agent stopped")

    def get_conversation_history(self, conversation_id: str = "default") -> List[LLMMessage]:
        """Get conversation history"""
        return self.conversations.get(conversation_id, [])[:]

    def clear_conversation(self, conversation_id: str = "default"):
        """Clear conversation history"""
        if conversation_id in self.conversations:
            del self.conversations[conversation_id]

    async def _chat(self, messages: List[Dict[str, str]]) -> str:
        return await self._generate(messages)

    @staticmethod
    async def openai_generate(messages: List[Dict[str, str]], max_tokens: int = 8096, temperature: float = 0.4, model: str = DEFAULT_MODEL_ID,tools=None) -> str:
        """Static method for generating responses using OpenAI API"""
        try:
            resp = await BASE_CLIENT.chat.completions.create(
                model=model,
                messages=messages,
                temperature=temperature,
                max_tokens=max_tokens,
                tools=tools
            )
            response_text = resp.choices[0].message.content or ""
            return response_text
        except Exception as e:
            console.log(f"[bold red]Error in openai_generate: {e}[/bold red]")
            return f"[LLM_Agent Error - openai_generate: {str(e)}]"

    async def _call_(self, messages: List[Dict[str, str]]) -> str:
        """Internal call method using instance client"""
        try:
            resp = await self.async_client.chat.completions.create(
                model=self.model_id,
                messages=messages,
                temperature=self.temperature,
                max_tokens=self.max_tokens
            )
            response_text = resp.choices[0].message.content or ""
            return response_text
        except Exception as e:
            console.log(f"[bold red]Error in _call_: {e}[/bold red]")
            return f"[LLM_Agent Error - _call_: {str(e)}]"  

    @staticmethod              
    def CreateClient(base_url: str, api_key: str) -> AsyncOpenAI:
        '''Create async OpenAI Client required for multi tasking'''
        return AsyncOpenAI(
            base_url=base_url,
            api_key=api_key
        ) 

    @staticmethod
    async def fetch_available_models(base_url: str, api_key: str) -> List[str]:
        """Fetches available models from the OpenAI API."""
        try:
            async_client = AsyncOpenAI(base_url=base_url, api_key=api_key)
            models = await async_client.models.list()
            model_choices = [model.id for model in models.data]
            return model_choices
        except Exception as e:
            console.log(f"[bold red]LLM_Agent Error fetching models: {e}[/bold red]")
            return ["LLM_Agent Error fetching models"]   

    def get_models(self) -> List[str]:             
        """Get available models using instance credentials"""
        return asyncio.run(self.fetch_available_models(self.base_url, self.api_key))

    def get_queue_size(self) -> int:
        """Get current queue size"""
        return self.request_queue.qsize()

    def get_pending_requests_count(self) -> int:
        """Get number of pending requests"""
        with self.pending_requests_lock:
            return len(self.pending_requests)

    def get_status(self) -> Dict[str, Any]:
        """Get agent status information"""
        return {
            "is_running": self.is_running,
            "queue_size": self.get_queue_size(),
            "pending_requests": self.get_pending_requests_count(),
            "conversations_count": len(self.conversations),
            "model": self.model_id
        }

# --- Enhanced Canvas Management ---
@dataclass
class CanvasArtifact:
    id: str
    type: str  # 'code', 'diagram', 'text', 'image'
    content: str
    title: str
    timestamp: float
    metadata: Dict[str, Any]

class EnhancedLLMAgent(LLMAgent):
    def __init__(self, *args, **kwargs):
        super().__init__(*args, **kwargs)
        # Enhanced canvas management
        self.canvas_artifacts: Dict[str, List[CanvasArtifact]] = {}

    def add_artifact_to_canvas(self, conversation_id: str, content: str, artifact_type: str = "code", title: str = None):
        if conversation_id not in self.canvas_artifacts:
            self.canvas_artifacts[conversation_id] = []
        artifact = CanvasArtifact(
            id=str(uuid.uuid4())[:8],
            type=artifact_type,
            content=content,
            title=title or f"{artifact_type}_{len(self.canvas_artifacts[conversation_id]) + 1}",
            timestamp=time.time(),
            metadata={"conversation_id": conversation_id}
        )
        self.canvas_artifacts[conversation_id].append(artifact)
        return artifact

    def get_canvas_context(self, conversation_id: str) -> str:
        if conversation_id not in self.canvas_artifacts or not self.canvas_artifacts[conversation_id]:
            return ""
        context_lines = ["\n=== COLLABORATIVE CANVAS ARTIFACTS ==="]
        for artifact in self.canvas_artifacts[conversation_id][-10:]:  # Last 10 artifacts
            context_lines.append(f"\n--- {artifact.title} [{artifact.type.upper()}] ---")
            context_lines.append(artifact.content[:500] + "..." if len(artifact.content) > 500 else artifact.content)
        return "\n".join(context_lines) + "\n=================================\n"

    def _extract_artifacts_to_canvas(self, response: str, conversation_id: str):
        code_blocks = re.findall(r'```(?:\w+)?\n(.*?)```', response, re.DOTALL)
        for code_block in code_blocks:
            if len(code_block.strip()) > 10:
                lang_match = re.search(r'```(\w+)', response)
                lang = lang_match.group(1).lower() if lang_match else "python"
                self.add_artifact_to_canvas(
                    conversation_id,
                    code_block.strip(),
                    "code",
                    f"Extracted Code ({lang})"
                )

    def get_canvas_summary(self, conversation_id: str) -> List[Dict]:
        if conversation_id not in self.canvas_artifacts:
            return []
        return [
            {
                "id": artifact.id,
                "type": artifact.type.upper(),
                "title": artifact.title,
                "preview": artifact.content[:100] + "..." if len(artifact.content) > 100 else artifact.content,
                "timestamp": time.strftime("%H:%M", time.localtime(artifact.timestamp))
            }
            for artifact in reversed(self.canvas_artifacts[conversation_id])  # Newest first
        ]

    def get_artifact_by_id(self, conversation_id: str, artifact_id: str):
        if conversation_id not in self.canvas_artifacts:
            return None
        for artifact in self.canvas_artifacts[conversation_id]:
            if artifact.id == artifact_id:
                return artifact
        return None

    def clear_canvas(self, conversation_id: str = "default"):
        if conversation_id in self.canvas_artifacts:
            self.canvas_artifacts[conversation_id] = []

    async def chat_with_canvas(self, message: str, conversation_id: str = "default", include_canvas: bool = True) -> str:
        """Enhanced chat that includes canvas context"""
        # Build messages with system prompt and canvas context
        messages = [{"role": "system", "content": self.system_prompt}]

        # Include canvas context if requested
        if include_canvas:
            canvas_context = self.get_canvas_context(conversation_id)
            if canvas_context:
                messages.append({"role": "system", "content": f"Current collaborative canvas state:\n{canvas_context}"})

        # Add conversation history
        for msg in self.conversations.get(conversation_id, [])[-self.max_history_length:]:
            messages.append({"role": msg.role, "content": msg.content})

        # Add current message
        messages.append({"role": "user", "content": message})

        try:
            response = await self._call_(messages)
            
            # Update conversation history
            user_msg = LLMMessage(role="user", content=message, conversation_id=conversation_id)
            self._add_to_conversation_history(conversation_id, user_msg)
            
            response_msg = LLMMessage(role="assistant", content=response, conversation_id=conversation_id)
            self._add_to_conversation_history(conversation_id, response_msg)

            # Auto-extract and add code artifacts to canvas
            self._extract_artifacts_to_canvas(response, conversation_id)

            return response
            
        except Exception as e:
            error_msg = f"Error in chat_with_canvas: {str(e)}"
            console.log(f"[red]{error_msg}[/red]")
            return error_msg



# --- Enhanced LLMAgent with Canvas Support ---
class AI_Agent:
    def __init__(self, model_id: str, system_prompt: str = "You are a helpful assistant. Respond concisely in 1-2 sentences.", history: List[Dict] = None):
        self.model_id = model_id
        self.system_prompt = system_prompt
        self.history = history or []
        self.conversation_id = f"conv_{uuid.uuid4().hex[:8]}"
        
        # Create agent instance
        self.client = LLMAgent(
            model_id=model_id,
            system_prompt=self.system_prompt,
            generate_fn=LLMAgent.openai_generate
        )
        
        console.log(f"[bold green]βœ“ MyAgent initialized with model: {model_id}[/bold green]")
    
    async def call_llm(self, messages: List[Dict], use_history: bool = True) -> str:
        """
        Send messages to LLM and get response
        Args:
            messages: List of message dicts with 'role' and 'content'
            use_history: Whether to include conversation history
        Returns:
            str: LLM response
        """
        try:
            console.log(f"[bold yellow]Sending {len(messages)} messages to LLM (use_history: {use_history})...[/bold yellow]")
            
            # Enhance messages based on history setting
            enhanced_messages = await self._enhance_messages(messages, use_history)
            
            response = await self.client.chat(enhanced_messages)
            console.log(f"[bold green]βœ“ Response received ({len(response)} chars)[/bold green]")
            
            # Update conversation history ONLY if we're using history
            if use_history:
                self._update_history(messages, response)
            
            return response
            
        except Exception as e:
            console.log(f"[bold red]βœ— ERROR: {e}[/bold red]")
            traceback.print_exc()
            return f"Error: {str(e)}"
    
    async def _enhance_messages(self, messages: List[Dict], use_history: bool) -> List[Dict]:
        """Enhance messages with system prompt and optional history"""
        enhanced = []
        
        # Add system prompt if not already in messages
        has_system = any(msg.get('role') == 'system' for msg in messages)
        if not has_system and self.system_prompt:
            enhanced.append({"role": "system", "content": self.system_prompt})
        
        # Add conversation history only if requested
        if use_history and self.history:
            enhanced.extend(self.history[-10:])  # Last 10 messages for context
        
        # Add current messages
        enhanced.extend(messages)
        
        return enhanced
    
    def _update_history(self, messages: List[Dict], response: str):
        """Update conversation history with new exchange"""
        # Add user messages to history
        for msg in messages:
            if msg.get('role') in ['user', 'assistant']:
                self.history.append(msg)
        
        # Add assistant response to history
        self.history.append({"role": "assistant", "content": response})
        
        # Keep history manageable (last 20 exchanges)
        if len(self.history) > 40:  # 20 user + 20 assistant messages
            self.history = self.history[-40:]
    
    async def simple_query(self, query: str) -> str:
        """Simple one-shot query method - NO history/context"""
        messages = [{"role": "user", "content": query}]
        return await self.call_llm(messages, use_history=False)
    
    async def multi_turn_chat(self, user_input: str) -> str:
        """Multi-turn chat that maintains context across calls"""
        messages = [{"role": "user", "content": user_input}]
        response = await self.call_llm(messages, use_history=True)
        return response
    

    def get_conversation_summary(self) -> Dict:
        """Get conversation summary"""
        return {
            "conversation_id": self.conversation_id,
            "total_messages": len(self.history),
            "user_messages": len([msg for msg in self.history if msg.get('role') == 'user']),
            "assistant_messages": len([msg for msg in self.history if msg.get('role') == 'assistant']),
            "recent_exchanges": self.history[-4:] if self.history else []
        }
    
    def clear_history(self):
        """Clear conversation history"""
        self.history.clear()
        console.log("[bold yellow]Conversation history cleared[/bold yellow]")
    
    def update_system_prompt(self, new_prompt: str):
        """Update the system prompt"""
        self.system_prompt = new_prompt
        console.log(f"[bold blue]System prompt updated[/bold blue]")
    
    def stop(self):
        """Stop the client gracefully"""
        if hasattr(self, 'client') and self.client:
            self.client.stop()
            console.log("[bold yellow]MyAgent client stopped[/bold yellow]") 
    async def contextual_query(self, query: str, context_messages: List[Dict] = None, 
                             context_text: str = None, context_files: List[str] = None) -> str:
        """
        Query with specific context but doesn't update main history
        
        Args:
            query: The user question
            context_messages: List of message dicts for context
            context_text: Plain text context (will be converted to system message)
            context_files: List of file paths to read and include as context
        """
        messages = []
        
        # Add system prompt
        if self.system_prompt:
            messages.append({"role": "system", "content": self.system_prompt})
        
        # Handle different context types
        if context_messages:
            messages.extend(context_messages)
        
        if context_text:
            messages.append({"role": "system", "content": f"Additional context: {context_text}"})
        
        if context_files:
            file_context = await self._read_files_context(context_files)
            if file_context:
                messages.append({"role": "system", "content": f"File contents:\n{file_context}"})
        
        # Add the actual query
        messages.append({"role": "user", "content": query})
        
        return await self.call_llm(messages, use_history=False)
      
    async def _read_files_context(self, file_paths: List[str]) -> str:
        """Read multiple files and return as context string"""
        contexts = []
        for file_path in file_paths:
            try:
                if os.path.exists(file_path):
                    with open(file_path, 'r', encoding='utf-8') as f:
                        content = f.read()
                        contexts.append(f"--- {os.path.basename(file_path)} ---\n{content}")
                else:
                    console.log(f"[bold yellow]File not found: {file_path}[/bold yellow]")
            except Exception as e:
                console.log(f"[bold red]Error reading file {file_path}: {e}[/bold red]")
        
        return "\n\n".join(contexts) if contexts else ""
    
    
    async def query_with_code_context(self, query: str, code_snippets: List[str] = None,
                                    code_files: List[str] = None) -> str:
        """
        Specialized contextual query for code-related questions
        """
        code_context = "CODE CONTEXT:\n"
        
        if code_snippets:
            for i, snippet in enumerate(code_snippets, 1):
                code_context += f"\nSnippet {i}:\n```\n{snippet}\n```\n"
        
        if code_files:
            # Read code files and include them
            for file_path in code_files:
                if file_path.endswith(('.py', '.js', '.java', '.cpp', '.c', '.html', '.css')):
                    code_context += f"\nFile: {file_path}\n```\n"
                    try:
                        with open(file_path, 'r') as f:
                            code_context += f.read()
                    except Exception as e:
                        code_context += f"Error reading file: {e}"
                    code_context += "\n```\n"
        
        return await self.contextual_query(query, context_text=code_context)
    
    async def multi_context_query(self, query: str, contexts: Dict[str, Any]) -> str:
        """
        Advanced contextual query with multiple context types
        
        Args:
            query: The user question
            contexts: Dict with various context types
                - 'messages': List of message dicts
                - 'text': Plain text context
                - 'files': List of file paths
                - 'urls': List of URLs
                - 'code': List of code snippets or files
                - 'metadata': Any additional metadata
        """
        all_context_messages = []
        
        # Build context from different sources
        if contexts.get('text'):
            all_context_messages.append({"role": "system", "content": f"Context: {contexts['text']}"})
        
        if contexts.get('messages'):
            all_context_messages.extend(contexts['messages'])
        
        if contexts.get('files'):
            file_context = await self._read_files_context(contexts['files'])
            if file_context:
                all_context_messages.append({"role": "system", "content": f"File Contents:\n{file_context}"})
        
        if contexts.get('code'):
            code_context = "\n".join([f"Code snippet {i}:\n```\n{code}\n```" 
                                    for i, code in enumerate(contexts['code'], 1)])
            all_context_messages.append({"role": "system", "content": f"Code Context:\n{code_context}"})
        
        if contexts.get('metadata'):
            all_context_messages.append({"role": "system", "content": f"Metadata: {contexts['metadata']}"})
        
        return await self.contextual_query(query, context_messages=all_context_messages)
            
  
# --- Enhanced LLMAgent with Canvas Support ---
@dataclass
class CanvasArtifact:
    id: str
    type: str  # 'code', 'diagram', 'text', 'image'
    content: str
    title: str
    timestamp: float
    metadata: Dict[str, Any]

class EnhancedLLMAgent:
    def __init__(self, model_id: str = DEFAULT_MODEL_ID, system_prompt: str = None, 
                 base_url: str = DEFAULT_BASE_URL, api_key: str = DEFAULT_API_KEY):
        self.model_id = model_id
        self.system_prompt = system_prompt or """You are an advanced AI development assistant operating in a Star Trek LCARS interface. 
        You specialize in code generation, analysis, and collaborative development. 
        Always provide practical, executable code solutions when appropriate.
        Format code responses clearly with proper markdown code blocks and explain your reasoning."""
        self.base_url = base_url
        self.api_key = api_key
        self.client = OpenAI(base_url=base_url, api_key=api_key)
        
        # Enhanced conversation and canvas management
        self.conversations: Dict[str, List[Dict]] = {}
        self.canvas_artifacts: Dict[str, List[CanvasArtifact]] = {}
        self.max_history_length = 50
        
        # Speech synthesis
        try:
            self.tts_engine = pyttsx3.init()
            self.setup_tts()
            self.speech_enabled = True
        except Exception as e:
            console.log(f"[yellow]TTS not available: {e}[/yellow]")
            self.speech_enabled = False
        
        console.log("[bold green]πŸš€ Enhanced LLM Agent Initialized[/bold green]")

    def setup_tts(self):
        """Configure text-to-speech engine"""
        if hasattr(self, 'tts_engine'):
            voices = self.tts_engine.getProperty('voices')
            if voices:
                self.tts_engine.setProperty('voice', voices[0].id)
            self.tts_engine.setProperty('rate', 150)
            self.tts_engine.setProperty('volume', 0.8)

    def speak(self, text: str):
        """Convert text to speech in a non-blocking way"""
        if not hasattr(self, 'speech_enabled') or not self.speech_enabled:
            return
            
        def _speak():
            try:
                # Clean text for speech (remove markdown, code blocks)
                clean_text = re.sub(r'```.*?```', '', text, flags=re.DOTALL)
                clean_text = re.sub(r'`.*?`', '', clean_text)
                clean_text = clean_text.strip()
                if clean_text:
                    self.tts_engine.say(clean_text)  # Limit length
                    self.tts_engine.runAndWait()
                else:
                    self.tts_engine.say(text)  # Limit length
                    self.tts_engine.runAndWait()                    
            except Exception as e:
                console.log(f"[red]TTS Error: {e}[/red]")
        
        thread = threading.Thread(target=_speak, daemon=True)
        thread.start()

    def setup_tts(self):
        """Configure text-to-speech engine"""
        try:
            self.tts_engine = pyttsx3.init()
            voices = self.tts_engine.getProperty('voices')
            if voices:
                # Try to find a better voice
                for voice in voices:
                    if 'female' in voice.name.lower() or 'zira' in voice.name.lower():
                        self.tts_engine.setProperty('voice', voice.id)
                        break
                else:
                    self.tts_engine.setProperty('voice', voices[0].id)

            self.tts_engine.setProperty('rate', 180)  # Slightly faster
            self.tts_engine.setProperty('volume', 1.0)  # Maximum volume
            self.speech_enabled = True
            console.log("[green]TTS engine initialized successfully[/green]")
        except Exception as e:
            console.log(f"[red]TTS initialization failed: {e}[/red]")
            self.speech_enabled = False

    def add_artifact_to_canvas(self, conversation_id: str, content: str, artifact_type: str = "code", title: str = None):
        """Add artifacts to the collaborative canvas"""
        if conversation_id not in self.canvas_artifacts:
            self.canvas_artifacts[conversation_id] = []
        
        artifact = CanvasArtifact(
            id=str(uuid.uuid4())[:8],
            type=artifact_type,
            content=content,
            title=title or f"{artifact_type}_{len(self.canvas_artifacts[conversation_id]) + 1}",
            timestamp=time.time(),
            metadata={"conversation_id": conversation_id}
        )
        
        self.canvas_artifacts[conversation_id].append(artifact)
        console.log(f"[green]Added artifact to canvas: {artifact.title}[/green]")
        return artifact

    def get_canvas_context(self, conversation_id: str) -> str:
        """Get formatted canvas context for LLM prompts"""
        if conversation_id not in self.canvas_artifacts or not self.canvas_artifacts[conversation_id]:
            return ""
        
        context_lines = ["\n=== COLLABORATIVE CANVAS ARTIFACTS ==="]
        for artifact in self.canvas_artifacts[conversation_id][-10:]:  # Last 10 artifacts
            context_lines.append(f"\n--- {artifact.title} [{artifact.type.upper()}] ---")
            preview = artifact.content[:500] + "..." if len(artifact.content) > 500 else artifact.content
            context_lines.append(preview)
        
        return "\n".join(context_lines) + "\n=================================\n"

    async def chat_with_canvas(self, message: str, conversation_id: str = "default", include_canvas: bool = True) -> str:
        """Enhanced chat that includes canvas context"""
        if conversation_id not in self.conversations:
            self.conversations[conversation_id] = []
        
        # Build messages with system prompt and canvas context
        messages = [{"role": "system", "content": self.system_prompt}]
        
        # Include canvas context if requested
        if include_canvas:
            canvas_context = self.get_canvas_context(conversation_id)
            if canvas_context:
                messages.append({"role": "system", "content": f"Current collaborative canvas state:\n{canvas_context}"})
        
        # Add conversation history
        for msg in self.conversations[conversation_id][-self.max_history_length:]:
            messages.append(msg)
        
        # Add current message
        messages.append({"role": "user", "content": message})
        
        try:
            # Use async client for better performance
            async_client = AsyncOpenAI(base_url=self.base_url, api_key=self.api_key)
            response = await async_client.chat.completions.create(
                model=self.model_id,
                messages=messages,
                temperature=0.7,
                max_tokens=DEFAULT_MAX_TOKENS
            )
            
            response_text = response.choices[0].message.content
            
            # Update conversation history
            self.conversations[conversation_id].extend([
                {"role": "user", "content": message},
                {"role": "assistant", "content": response_text}
            ])
            
            # Auto-extract and add code artifacts to canvas
            self._extract_artifacts_to_canvas(response_text, conversation_id)
            
            return response_text
            
        except Exception as e:
            error_msg = f"Error in chat_with_canvas: {str(e)}"
            console.log(f"[red]{error_msg}[/red]")
            return error_msg

    def _extract_artifacts_to_canvas(self, response: str, conversation_id: str):
        """Automatically extract code blocks and add to canvas"""
        # Find all code blocks with optional language specification
        code_blocks = re.findall(r'```(?:\w+)?\n(.*?)```', response, re.DOTALL)
        for i, code_block in enumerate(code_blocks):
            if len(code_block.strip()) > 10:  # Only add substantial code blocks
                # Try to detect language from the code block marker
                lang_match = re.search(r'```(\w+)\n', response)
                lang = lang_match.group(1) if lang_match else "unknown"
                
                self.add_artifact_to_canvas(
                    conversation_id, 
                    code_block.strip(), 
                    "code", 
                    f"code_snippet_{lang}_{len(self.canvas_artifacts.get(conversation_id, [])) + 1}"
                )

    def clear_conversation(self, conversation_id: str = "default"):
        """Clear conversation but keep canvas artifacts"""
        if conversation_id in self.conversations:
            self.conversations[conversation_id] = []
            console.log(f"[yellow]Cleared conversation: {conversation_id}[/yellow]")

    def clear_canvas(self, conversation_id: str = "default"):
        """Clear canvas artifacts"""
        if conversation_id in self.canvas_artifacts:
            self.canvas_artifacts[conversation_id] = []
            console.log(f"[yellow]Cleared canvas: {conversation_id}[/yellow]")

    def get_canvas_summary(self, conversation_id: str) -> List[Dict]:
        """Get summary of canvas artifacts for display"""
        if conversation_id not in self.canvas_artifacts:
            return []
        
        artifacts = []
        for artifact in reversed(self.canvas_artifacts[conversation_id]):  # Newest first
            artifacts.append({
                "id": artifact.id,
                "type": artifact.type.upper(),
                "title": artifact.title,
                "preview": artifact.content[:100] + "..." if len(artifact.content) > 100 else artifact.content,
                "timestamp": time.strftime("%H:%M:%S", time.localtime(artifact.timestamp))
            })
        
        return artifacts

    def get_artifact_by_id(self, conversation_id: str, artifact_id: str) -> Optional[CanvasArtifact]:
        """Get specific artifact by ID"""
        if conversation_id not in self.canvas_artifacts:
            return None
            
        for artifact in self.canvas_artifacts[conversation_id]:
            if artifact.id == artifact_id:
                return artifact
        return None

    @staticmethod
    async def fetch_available_models(base_url: str, api_key: str) -> List[str]:
        """Fetch available models from the API"""
        try:
            console.log(f"[blue]Fetching models from {base_url}[/blue]")
            async_client = AsyncOpenAI(base_url=base_url, api_key=api_key)
            models = await async_client.models.list()
            model_list = [model.id for model in models.data]
            console.log(f"[green]Found {len(model_list)} models[/green]")
            return model_list
        except Exception as e:
            console.log(f"[red]Error fetching models: {e}[/red]")
            return ["default-model"]

    def update_config(self, base_url: str, api_key: str, model_id: str, temperature: float, max_tokens: int):
        """Update agent configuration"""
        self.base_url = base_url
        self.api_key = api_key
        self.model_id = model_id
        console.log(f"[blue]Updated config: {model_id} @ {base_url}[/blue]")

# --- LCARS Styled Gradio Interface ---
class LcarsInterface:
    def __init__(self, agent: EnhancedLLMAgent):
        self.agent = agent
        self.current_conversation = "default"

    def create_interface(self):
        """Create the full LCARS-styled interface"""
        
        # Enhanced LCARS CSS with proper Star Trek styling
        lcars_css = """
        :root {
            --lcars-orange: #FF9900;
            --lcars-red: #FF0033;
            --lcars-blue: #6699FF;
            --lcars-purple: #CC99FF;
            --lcars-pale-blue: #99CCFF;
            --lcars-black: #000000;
            --lcars-dark-blue: #3366CC;
            --lcars-gray: #424242;
            --lcars-yellow: #FFFF66;
        }
        
        body {
            background: var(--lcars-black);
            color: var(--lcars-orange);
            font-family: 'Antonio', 'LCD', 'Courier New', monospace;
            margin: 0;
            padding: 0;
        }
        
        .gradio-container {
            background: var(--lcars-black) !important;
            min-height: 100vh;
        }
        
        .lcars-container {
            background: var(--lcars-black);
            border: 4px solid var(--lcars-orange);
            border-radius: 0 30px 0 0;
            min-height: 100vh;
            padding: 20px;
        }
        
        .lcars-header {
            background: linear-gradient(90deg, var(--lcars-red), var(--lcars-orange));
            padding: 20px 40px;
            border-radius: 0 60px 0 0;
            margin: -20px -20px 20px -20px;
            border-bottom: 6px solid var(--lcars-blue);
            box-shadow: 0 4px 20px rgba(255, 153, 0, 0.3);
        }
        
        .lcars-title {
            font-size: 3em;
            font-weight: bold;
            color: var(--lcars-black);
            text-shadow: 3px 3px 6px rgba(255, 255, 255, 0.4);
            margin: 0;
            letter-spacing: 2px;
        }
        
        .lcars-subtitle {
            font-size: 1.4em;
            color: var(--lcars-black);
            margin: 10px 0 0 0;
            font-weight: bold;
        }
        
        .lcars-panel {
            background: linear-gradient(135deg, rgba(66, 66, 66, 0.9), rgba(40, 40, 40, 0.9));
            border: 3px solid var(--lcars-orange);
            border-radius: 0 25px 0 25px;
            padding: 20px;
            margin-bottom: 20px;
            box-shadow: 0 4px 15px rgba(255, 153, 0, 0.2);
        }
        
        .lcars-button {
            background: linear-gradient(135deg, var(--lcars-orange), var(--lcars-red));
            color: var(--lcars-black) !important;
            border: none !important;
            border-radius: 0 20px 0 20px !important;
            padding: 12px 24px !important;
            font-family: inherit !important;
            font-weight: bold !important;
            font-size: 1.1em !important;
            cursor: pointer !important;
            transition: all 0.3s ease !important;
            margin: 8px !important;
            box-shadow: 0 4px 8px rgba(255, 153, 0, 0.3) !important;
        }
        
        .lcars-button:hover {
            background: linear-gradient(135deg, var(--lcars-red), var(--lcars-orange)) !important;
            transform: translateY(-2px) !important;
            box-shadow: 0 6px 12px rgba(255, 153, 0, 0.4) !important;
        }
        
        .lcars-input {
            background: var(--lcars-black) !important;
            color: var(--lcars-orange) !important;
            border: 2px solid var(--lcars-blue) !important;
            border-radius: 0 15px 0 15px !important;
            padding: 12px !important;
            font-family: inherit !important;
            font-size: 1.1em !important;
        }
        
        .lcars-chatbot {
            background: var(--lcars-black) !important;
            border: 3px solid var(--lcars-purple) !important;
            border-radius: 0 20px 0 20px !important;
            min-height: 400px;
            max-height: 500px;
        }
        
        .lcars-code-editor {
            background: var(--lcars-black) !important;
            color: var(--lcars-pale-blue) !important;
            border: 3px solid var(--lcars-blue) !important;
            border-radius: 0 20px 0 20px !important;
            font-family: 'Fira Code', 'Courier New', monospace !important;
            font-size: 1em !important;
        }
        
        .user-message {
            background: linear-gradient(135deg, rgba(102, 153, 255, 0.2), rgba(51, 102, 204, 0.2)) !important;
            border-left: 6px solid var(--lcars-blue) !important;
            padding: 12px !important;
            margin: 8px 0 !important;
            border-radius: 0 15px 0 15px !important;
        }
        
        .assistant-message {
            background: linear-gradient(135deg, rgba(255, 153, 0, 0.2), rgba(255, 102, 0, 0.2)) !important;
            border-left: 6px solid var(--lcars-orange) !important;
            padding: 12px !important;
            margin: 8px 0 !important;
            border-radius: 0 15px 0 15px !important;
        }
        
        .artifact-item {
            background: linear-gradient(135deg, rgba(204, 153, 255, 0.15), rgba(153, 102, 204, 0.15));
            border: 2px solid var(--lcars-purple);
            padding: 10px;
            margin: 6px 0;
            border-radius: 0 12px 0 12px;
            cursor: pointer;
            transition: all 0.3s ease;
        }
        
        .artifact-item:hover {
            background: linear-gradient(135deg, rgba(204, 153, 255, 0.3), rgba(153, 102, 204, 0.3));
            transform: translateX(5px);
        }
        
        .status-indicator {
            display: inline-block;
            width: 16px;
            height: 16px;
            border-radius: 50%;
            background: var(--lcars-red);
            margin-right: 12px;
            box-shadow: 0 0 10px currentColor;
        }
        
        .status-online {
            background: var(--lcars-blue);
            animation: pulse 1.5s infinite;
        }
        
        @keyframes pulse {
            0% { transform: scale(1); opacity: 1; }
            50% { transform: scale(1.1); opacity: 0.7; }
            100% { transform: scale(1); opacity: 1; }
        }
        
        .panel-title {
            color: var(--lcars-yellow) !important;
            font-size: 1.4em !important;
            font-weight: bold !important;
            margin-bottom: 15px !important;
            border-bottom: 2px solid var(--lcars-orange);
            padding-bottom: 8px;
        }
        
        .gradio-accordion {
            border: 2px solid var(--lcars-orange) !important;
            border-radius: 0 20px 0 20px !important;
            margin-bottom: 20px !important;
        }
        
        .gradio-accordion .label {
            background: linear-gradient(90deg, var(--lcars-orange), var(--lcars-red)) !important;
            color: var(--lcars-black) !important;
            font-size: 1.3em !important;
            font-weight: bold !important;
            padding: 15px 20px !important;
        }
        """

        with gr.Blocks(css=lcars_css, theme=gr.themes.Default(), title="LCARS Terminal") as interface:
            
            with gr.Column(elem_classes="lcars-container"):
                # Header Section
                with gr.Row(elem_classes="lcars-header"):
                    gr.Markdown("""
                    <div style="text-align: center; width: 100%;">
                        <div class="lcars-title">πŸš€ LCARS TERMINAL v4.2</div>
                        <div class="lcars-subtitle">STARFLEET AI DEVELOPMENT CONSOLE</div>
                        <div style="margin-top: 10px;">
                            <span class="status-indicator status-online"></span>
                            <span style="color: var(--lcars-black); font-weight: bold;">SYSTEM ONLINE</span>
                        </div>
                    </div>
                    """)
                
                # Main Content Area
                with gr.Row():
                    # Left Sidebar - Controls and Configuration
                    with gr.Column(scale=1, min_width=400):
                        # Configuration Panel
                        with gr.Column(elem_classes="lcars-panel"):
                            gr.Markdown("### πŸ”§ SYSTEM CONFIGURATION", elem_classes="panel-title")
                            
                            with gr.Row():
                                base_url = gr.Textbox(
                                    value=DEFAULT_BASE_URL,
                                    label="API Base URL",
                                    elem_classes="lcars-input"
                                )
                                api_key = gr.Textbox(
                                    value=DEFAULT_API_KEY,
                                    label="API Key",
                                    type="password",
                                    elem_classes="lcars-input"
                                )
                            
                            with gr.Row():
                                model_dropdown = gr.Dropdown(
                                    choices=["Fetching models..."],
                                    value="default-model",
                                    label="AI Model",
                                    elem_classes="lcars-input"
                                )
                                fetch_models_btn = gr.Button("πŸ“‘ Fetch Models", elem_classes="lcars-button")
                            
                            with gr.Row():
                                temperature = gr.Slider(
                                    0.0, 2.0, 
                                    value=0.7, 
                                    label="Temperature",
                                    elem_classes="lcars-input"
                                )
                                max_tokens = gr.Slider(
                                    128, 8192,
                                    value=2000,
                                    step=128,
                                    label="Max Tokens",
                                    elem_classes="lcars-input"
                                )
                            
                            with gr.Row():
                                update_config_btn = gr.Button("πŸ’Ύ Apply Config", elem_classes="lcars-button")
                                speech_toggle = gr.Checkbox(value=True, label="πŸ”Š Speech Output")
                        
                        # Canvas Artifacts Panel
                        with gr.Column(elem_classes="lcars-panel"):
                            gr.Markdown("### 🎨 CANVAS ARTIFACTS", elem_classes="panel-title")
                            artifact_display = gr.JSON(
                                label="",
                                elem_id="artifact-display"
                            )
                            with gr.Row():
                                refresh_artifacts_btn = gr.Button("πŸ”„ Refresh", elem_classes="lcars-button")
                                clear_canvas_btn = gr.Button("πŸ—‘οΈ Clear Canvas", elem_classes="lcars-button")
                    
                    # Main Content - Chat and Code Canvas
                    with gr.Column(scale=2):
                        # Collaborative Code Canvas
                        with gr.Accordion("πŸ’» COLLABORATIVE CODE CANVAS", open=True):
                            code_editor = gr.Code(
                                value="# Welcome to LCARS Collaborative Canvas\n# Your code artifacts will appear here\n\nprint('Hello, Starfleet!')",
                                language="python",
                                lines=20,
                                label="",
                                elem_classes="lcars-code-editor"
                            )
                            
                            with gr.Row():
                                load_to_chat_btn = gr.Button("πŸ’¬ Discuss This Code", elem_classes="lcars-button")
                                analyze_btn = gr.Button("πŸ” Analyze Code", elem_classes="lcars-button")
                                optimize_btn = gr.Button("⚑ Optimize", elem_classes="lcars-button")
                                document_btn = gr.Button("πŸ“š Document", elem_classes="lcars-button")
                        
                        # Chat Interface
                        with gr.Column(elem_classes="lcars-panel"):
                            gr.Markdown("### πŸ’¬ MISSION LOG", elem_classes="panel-title")
                            chatbot = gr.Chatbot(
                                label="",
                                elem_classes="lcars-chatbot",
                                show_label=False,
                                height=400
                            )
                            
                            with gr.Row():
                                message_input = gr.Textbox(
                                    placeholder="Enter your command or query...",
                                    show_label=False,
                                    lines=2,
                                    elem_classes="lcars-input",
                                    scale=4
                                )
                                send_btn = gr.Button("πŸš€ TRANSMIT", elem_classes="lcars-button", scale=1)
                        
                        # Status and Controls
                        with gr.Row():
                            status_display = gr.Textbox(
                                value="LCARS terminal operational. Awaiting commands.",
                                label="Status",
                                max_lines=2,
                                elem_classes="lcars-input"
                            )
                            with gr.Column(scale=0):
                                clear_chat_btn = gr.Button("πŸ—‘οΈ Clear Chat", elem_classes="lcars-button")
                                new_session_btn = gr.Button("πŸ†• New Session", elem_classes="lcars-button")
            
            # === EVENT HANDLERS ===
            
            async def fetch_and_update_models(base_url, api_key):
                """Fetch models and update dropdown"""
                try:
                    models = await EnhancedLLMAgent.fetch_available_models(base_url, api_key)
                    if models:
                        return gr.update(choices=models, value=models[0])
                    else:
                        return gr.update(choices=["No models found"], value="No models found")
                except Exception as e:
                    console.log(f"[red]Error fetching models: {e}[/red]")
                    return gr.update(choices=[f"Error: {str(e)}"], value=f"Error: {str(e)}")
            
            def update_agent_config(base_url, api_key, model_id, temperature_val, max_tokens_val):
                """Update agent configuration"""
                try:
                    self.agent.update_config(base_url, api_key, model_id, temperature_val, max_tokens_val)
                    return f"βœ… Configuration updated: {model_id}"
                except Exception as e:
                    return f"❌ Config error: {str(e)}"
            
            def get_artifacts():
                """Get current canvas artifacts"""
                return self.agent.get_canvas_summary(self.current_conversation)
            
            def clear_canvas():
                """Clear the canvas"""
                self.agent.clear_canvas(self.current_conversation)
                return [], "βœ… Canvas cleared"
            
            async def process_message(message, history, speech_enabled):
                """Process a chat message"""
                if not message.strip():
                    return "", history, "Please enter a message"
                
                # Add user message to history
                history = history + [[message, None]]
                
                try:
                    # Get AI response
                    response = await self.agent.chat_with_canvas(
                        message, 
                        self.current_conversation, 
                        include_canvas=True
                    )
                    
                    # Update history with response
                    history[-1][1] = response
                    
                    # Speech synthesis if enabled
                    if speech_enabled and self.agent.speech_enabled:
                        self.agent.speak(response)
                    
                    # Get updated artifacts
                    artifacts = get_artifacts()
                    
                    status = f"βœ… Response received. Canvas artifacts: {len(artifacts)}"
                    return "", history, status, artifacts
                    
                except Exception as e:
                    error_msg = f"❌ Error: {str(e)}"
                    history[-1][1] = error_msg
                    return "", history, error_msg, get_artifacts()
            
            def load_code_to_chat(code):
                """Load code from canvas into chat"""
                if not code.strip():
                    return ""
                return f"Please analyze this code:\n```python\n{code}\n```"
            
            def analyze_code(code):
                """Quick analysis of code"""
                if not code.strip():
                    return "Please provide some code to analyze"
                return f"Perform a comprehensive analysis of this code:\n```python\n{code}\n```"
            
            def optimize_code(code):
                """Quick optimization request"""
                if not code.strip():
                    return "Please provide some code to optimize"
                return f"Optimize this code for performance and best practices:\n```python\n{code}\n```"
            
            def document_code(code):
                """Quick documentation request"""
                if not code.strip():
                    return "Please provide some code to document"
                return f"Generate comprehensive documentation for this code:\n```python\n{code}\n```"
            
            def clear_chat():
                """Clear chat history"""
                self.agent.clear_conversation(self.current_conversation)
                return [], "βœ… Chat cleared"
            
            def new_session():
                """Start new session"""
                self.agent.clear_conversation(self.current_conversation)
                self.agent.clear_canvas(self.current_conversation)
                return [], "# New collaborative session started\n\nprint('Ready for development!')", "πŸ†• New session started", []
            
            # Connect event handlers
            fetch_models_btn.click(
                fetch_and_update_models,
                inputs=[base_url, api_key],
                outputs=model_dropdown
            )
            
            update_config_btn.click(
                update_agent_config,
                inputs=[base_url, api_key, model_dropdown, temperature, max_tokens],
                outputs=status_display
            )
            
            send_btn.click(
                process_message,
                inputs=[message_input, chatbot, speech_toggle],
                outputs=[message_input, chatbot, status_display, artifact_display]
            )
            
            message_input.submit(
                process_message,
                inputs=[message_input, chatbot, speech_toggle],
                outputs=[message_input, chatbot, status_display, artifact_display]
            )
            
            load_to_chat_btn.click(
                load_code_to_chat,
                inputs=code_editor,
                outputs=message_input
            )
            
            analyze_btn.click(
                analyze_code,
                inputs=code_editor,
                outputs=message_input
            )
            
            optimize_btn.click(
                optimize_code,
                inputs=code_editor,
                outputs=message_input
            )
            
            document_btn.click(
                document_code,
                inputs=code_editor,
                outputs=message_input
            )
            
            refresh_artifacts_btn.click(
                get_artifacts,
                outputs=artifact_display
            )
            
            clear_canvas_btn.click(
                clear_canvas,
                outputs=[artifact_display, status_display]
            )
            
            clear_chat_btn.click(
                clear_chat,
                outputs=[chatbot, status_display]
            )
            
            new_session_btn.click(
                new_session,
                outputs=[chatbot, code_editor, status_display, artifact_display]
            )
            
            # Initialize artifacts on load
            interface.load(get_artifacts, outputs=artifact_display)
        
        return interface

# --- Main Application ---
def main():
    console.log("[bold blue]πŸš€ Starting LCARS Enhanced Interface...[/bold blue]")
    
    try:
        # Initialize the enhanced agent
        agent = EnhancedLLMAgent()
        
        # Create and launch the interface
        interface = LcarsInterface(agent)
        demo = interface.create_interface()
        
        console.log("[bold green]βœ… LCARS Interface Ready - Launching...[/bold green]")
        demo.launch(
            share=True,
            show_error=True,
            inbrowser=True
        )
    except Exception as e:
        console.log(f"[bold red]Failed to start application: {e}[/bold red]")
        raise



if __name__ == "__main__":
    main()