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import json
import os
import gradio as gr
from typing import Optional, Dict, Any, Union
from PIL import Image
from pydantic import BaseModel
import logging
from config import Config

# Try to import llama_cpp with fallback
try:
    from llama_cpp import Llama, LlamaGrammar
    LLAMA_CPP_AVAILABLE = True
except ImportError as e:
    print(f"Warning: llama-cpp-python not available: {e}")
    LLAMA_CPP_AVAILABLE = False
    Llama = None
    LlamaGrammar = None

# Try to import huggingface_hub
try:
    from huggingface_hub import hf_hub_download
    HUGGINGFACE_HUB_AVAILABLE = True
except ImportError as e:
    print(f"Warning: huggingface_hub not available: {e}")
    HUGGINGFACE_HUB_AVAILABLE = False
    hf_hub_download = None

# Setup logging
logging.basicConfig(level=logging.INFO)
logger = logging.getLogger(__name__)

class StructuredOutputRequest(BaseModel):
    prompt: str
    image: Optional[str] = None  # base64 encoded image
    json_schema: Dict[str, Any]

class LLMClient:
    def __init__(self):
        """
        Initialize client for working with local GGUF model via llama-cpp-python
        """
        self.model_path = Config.get_model_path()
        logger.info(f"Using model: {self.model_path}")
        
        self.llm = None
        
        self._initialize_model()
    
    def _download_model_if_needed(self) -> str:
        """Download model from Hugging Face if it doesn't exist locally"""
        if os.path.exists(self.model_path):
            logger.info(f"Model already exists at: {self.model_path}")
            return self.model_path
        
        # If model doesn't exist and we're in production (Docker), 
        # it means the build process failed or model is in wrong location
        if os.getenv('DOCKER_CONTAINER', 'false').lower() == 'true':
            # Let's check common locations where model might be
            alternative_paths = [
                f"/app/models/{Config.MODEL_FILENAME}",
                f"./models/{Config.MODEL_FILENAME}",
                f"/models/{Config.MODEL_FILENAME}",
                f"/app/{Config.MODEL_FILENAME}"
            ]
            
            for alt_path in alternative_paths:
                if os.path.exists(alt_path):
                    logger.info(f"Found model at alternative location: {alt_path}")
                    return alt_path
            
            # List what's actually in the models directory
            models_dir = "/app/models"
            if os.path.exists(models_dir):
                files = os.listdir(models_dir)
                logger.error(f"Contents of {models_dir}: {files}")
            else:
                logger.error(f"Directory {models_dir} does not exist")
            
            # Try to download as fallback
            logger.warning("Model not found in expected locations, attempting download...")
        
        if not HUGGINGFACE_HUB_AVAILABLE:
            raise ImportError("huggingface_hub is not available. Please install it to download models.")
        
        logger.info(f"Downloading model {Config.MODEL_REPO}/{Config.MODEL_FILENAME}...")
        
        # Create models directory if it doesn't exist
        models_dir = Config.get_models_dir()
        os.makedirs(models_dir, exist_ok=True)
        
        try:
            # Download model
            model_path = hf_hub_download(
                repo_id=Config.MODEL_REPO,
                filename=Config.MODEL_FILENAME,
                local_dir=models_dir,
                token=Config.HUGGINGFACE_TOKEN if Config.HUGGINGFACE_TOKEN else None
            )
            
            logger.info(f"Model downloaded to: {model_path}")
            return model_path
        except Exception as e:
            logger.error(f"Failed to download model: {e}")
            raise
    
    def _initialize_model(self):
        """Initialize local GGUF model"""
        try:
            if not LLAMA_CPP_AVAILABLE:
                raise ImportError("llama-cpp-python is not available. Please check installation.")
            
            logger.info("Loading local model...")
            
            # Download model if needed
            model_path = self._download_model_if_needed()
            
            # Verify model file exists and is readable
            if not os.path.exists(model_path):
                raise FileNotFoundError(f"Model file not found: {model_path}")
            
            # Check file size to ensure it's not corrupted
            file_size = os.path.getsize(model_path)
            if file_size < 1024 * 1024:  # Less than 1MB is suspicious for GGUF model
                raise ValueError(f"Model file seems corrupted or incomplete. Size: {file_size} bytes")
            
            logger.info(f"Model file verified. Size: {file_size / (1024**3):.2f} GB")
            
            # Initialize Llama model with enhanced error handling
            logger.info("Initializing Llama model...")
            self.llm = Llama(
                model_path=model_path,
                n_ctx=Config.N_CTX,
                n_batch=Config.N_BATCH,
                n_gpu_layers=Config.N_GPU_LAYERS,
                use_mlock=Config.USE_MLOCK,
                use_mmap=Config.USE_MMAP,
                vocab_only=False,
                f16_kv=Config.F16_KV,
                logits_all=False,
                embedding=False,
                n_threads=Config.N_THREADS,
                last_n_tokens_size=64,
                lora_base=None,
                lora_path=None,
                seed=Config.SEED,
                verbose=True  # Enable verbose for debugging
            )
            
            logger.info("Model successfully loaded and initialized")
            
            # Test model with a simple prompt to verify it's working
            logger.info("Testing model with simple prompt...")
            test_response = self.llm("Hello", max_tokens=1, temperature=0.1)
            logger.info("Model test successful")
            
        except Exception as e:
            logger.error(f"Error initializing model: {e}")
            # Provide more specific error information
            if "Failed to load model from file" in str(e):
                logger.error("This error usually indicates:")
                logger.error("1. Model file is corrupted or incomplete")
                logger.error("2. llama-cpp-python version is incompatible with the model")
                logger.error("3. Insufficient memory to load the model")
                logger.error(f"4. Model path: {self.model_path}")
            raise
    
    def _validate_json_schema(self, schema: str) -> Dict[str, Any]:
        """Validate and parse JSON schema"""
        try:
            parsed_schema = json.loads(schema)
            return parsed_schema
        except json.JSONDecodeError as e:
            raise ValueError(f"Invalid JSON schema: {e}")
    
    def _format_prompt_with_schema(self, prompt: str, json_schema: Dict[str, Any]) -> str:
        """
        Format prompt for structured output generation
        """
        schema_str = json.dumps(json_schema, ensure_ascii=False, indent=2)
        
        formatted_prompt = f"""User: {prompt}

Please respond in strict accordance with the following JSON schema:

```json
{schema_str}
```

Return ONLY valid JSON without additional comments or explanations."""
        
        return formatted_prompt

def _json_schema_to_gbnf(schema: Dict[str, Any], root_name: str = "root") -> str:
    """Convert JSON schema to GBNF (Backus-Naur Form) grammar for structured output"""
    rules = []
    rule_names = set()  # Track rule names to avoid duplicates
    
    def add_rule(name: str, definition: str):
        if name not in rule_names:
            rules.append(f"{name} ::= {definition}")
            rule_names.add(name)
    
    def process_type(schema_part: Dict[str, Any], type_name: str = "value") -> str:
        if "type" not in schema_part:
            # Handle anyOf, oneOf, allOf cases - simplified to string for now
            return "string"
        
        schema_type = schema_part["type"]
        
        if schema_type == "object":
            # Handle object type
            properties = schema_part.get("properties", {})
            required = schema_part.get("required", [])
            
            if not properties:
                add_rule(type_name, '"{" ws "}"')
                return type_name
            
            # Separate required and optional parts
            required_parts = []
            optional_parts = []
            
            for prop_name, prop_schema in properties.items():
                prop_type_name = f"{type_name}_{prop_name}"
                prop_type = process_type(prop_schema, prop_type_name)
                prop_def = f'"\\"" "{prop_name}" "\\"" ws ":" ws {prop_type}'
                
                if prop_name in required:
                    required_parts.append(prop_def)
                else:
                    optional_parts.append(prop_def)
            
            # Build object structure - simplified approach
            if not required_parts and not optional_parts:
                object_def = '"{" ws "}"'
            else:
                # For simplicity, create a fixed structure based on required fields only
                # and treat optional fields as always present but with optional values
                if not required_parts:
                    # Only optional fields - make the whole object optional content
                    if len(optional_parts) == 1:
                        object_def = f'"{" ws ({optional_parts[0]})? ws "}"'
                    else:
                        comma_separated = ' ws "," ws '.join(optional_parts)
                        object_def = f'"{" ws ({comma_separated})? ws "}"'
                else:
                    # Has required fields
                    all_parts = required_parts.copy()
                    
                    # Add optional parts as truly optional (with optional commas)
                    for opt_part in optional_parts:
                        all_parts.append(f'(ws "," ws {opt_part})?')
                    
                    if len(all_parts) == 1:
                        object_def = f'"{" ws {all_parts[0]} ws "}"'
                    else:
                        # Join required parts with commas, optional parts are already with optional commas
                        required_with_commas = ' ws "," ws '.join(required_parts)
                        optional_with_commas = ' '.join([f'(ws "," ws {opt})?' for opt in optional_parts])
                        
                        if optional_with_commas:
                            object_def = f'"{{" ws {required_with_commas} {optional_with_commas} ws "}}"'
                        else:
                            object_def = f'"{{" ws {required_with_commas} ws "}}"'
            
            add_rule(type_name, object_def)
            return type_name
            
        elif schema_type == "array":
            # Handle array type
            items_schema = schema_part.get("items", {})
            items_type_name = f"{type_name}_items"
            item_type = process_type(items_schema, f"{type_name}_item")
            
            # Create array items rule
            add_rule(items_type_name, f"{item_type} (ws \",\" ws {item_type})*")
            add_rule(type_name, f'"[" ws ({items_type_name})? ws "]"')
            return type_name
            
        elif schema_type == "string":
            # Handle string type with enum support
            if "enum" in schema_part:
                enum_values = schema_part["enum"]
                enum_options = ' | '.join([f'"\\"" "{val}" "\\""' for val in enum_values])
                add_rule(type_name, enum_options)
                return type_name
            else:
                return "string"
                
        elif schema_type == "number" or schema_type == "integer":
            return "number"
            
        elif schema_type == "boolean":
            return "boolean"
            
        else:
            return "string"  # fallback
    
    # Process root schema
    process_type(schema, root_name)
    
    # Basic GBNF rules for primitives
    basic_rules = [
        'ws ::= [ \\t\\n]*',
        'string ::= "\\"" char* "\\""',
        'char ::= [^"\\\\] | "\\\\" (["\\\\bfnrt] | "u" hex hex hex hex)',
        'hex ::= [0-9a-fA-F]',
        'number ::= "-"? ("0" | [1-9] [0-9]*) ("." [0-9]+)? ([eE] [+-]? [0-9]+)?',
        'boolean ::= "true" | "false"',
        'null ::= "null"'
    ]
    
    # Add basic rules only if they haven't been added yet
    for rule in basic_rules:
        rule_name = rule.split(' ::= ')[0]
        if rule_name not in rule_names:
            rules.append(rule)
            rule_names.add(rule_name)
    
    return "\\n".join(rules)
    
    def generate_structured_response(self, 
                                   prompt: str, 
                                   json_schema: Union[str, Dict[str, Any]], 
                                   image: Optional[Image.Image] = None,
                                   use_grammar: bool = True) -> Dict[str, Any]:
        """
        Generate structured response from local GGUF model
        """
        try:
            # Validate and parse JSON schema
            if isinstance(json_schema, str):
                parsed_schema = self._validate_json_schema(json_schema)
            else:
                parsed_schema = json_schema
            
            # Format prompt
            formatted_prompt = self._format_prompt_with_schema(prompt, parsed_schema)
            
            # Warning about images (not supported in this implementation)
            if image is not None:
                logger.warning("Image processing is not supported with this local model")
            
            # Generate response
            logger.info(f"Generating response... (Grammar: {'Enabled' if use_grammar else 'Disabled'})")
            
            # Create grammar if enabled
            grammar = None
            if use_grammar and LLAMA_CPP_AVAILABLE and LlamaGrammar is not None:
                try:
                    gbnf_grammar = _json_schema_to_gbnf(parsed_schema, "root")
                    grammar = LlamaGrammar.from_string(gbnf_grammar)
                    logger.info("Grammar successfully created from JSON schema")
                except Exception as e:
                    logger.warning(f"Failed to create grammar: {e}. Falling back to non-grammar mode.")
                    use_grammar = False
            
            # Set generation parameters
            generation_params = {
                "max_tokens": Config.MAX_NEW_TOKENS,
                "temperature": Config.TEMPERATURE,
                "echo": False
            }
            
            # Add grammar or stop tokens based on mode
            if use_grammar and grammar is not None:
                generation_params["grammar"] = grammar
                # For grammar mode, use a simpler prompt without schema explanation
                simple_prompt = f"User: {prompt}\n\nAssistant:"
                response = self.llm(simple_prompt, **generation_params)
            else:
                generation_params["stop"] = ["User:", "\n\n", "Assistant:", "Human:"]
                response = self.llm(formatted_prompt, **generation_params)
            
            # Extract generated text
            generated_text = response['choices'][0]['text']
            
            # Attempt to parse JSON response
            try:
                # Find JSON in response
                json_start = generated_text.find('{')
                json_end = generated_text.rfind('}') + 1
                
                if json_start != -1 and json_end > json_start:
                    json_str = generated_text[json_start:json_end]
                    parsed_response = json.loads(json_str)
                    return {
                        "success": True,
                        "data": parsed_response,
                        "raw_response": generated_text
                    }
                else:
                    return {
                        "error": "Could not find JSON in model response",
                        "raw_response": generated_text
                    }
                    
            except json.JSONDecodeError as e:
                return {
                    "error": f"JSON parsing error: {e}",
                    "raw_response": generated_text
                }
                
        except Exception as e:
            logger.error(f"Unexpected error: {e}")
            return {
                "error": f"Generation error: {str(e)}"
            }

def test_grammar_generation(json_schema_str: str) -> Dict[str, Any]:
    """
    Test grammar generation without running the full model
    """
    try:
        parsed_schema = llm_client._validate_json_schema(json_schema_str)
        gbnf_grammar = _json_schema_to_gbnf(parsed_schema, "root")
        return {
            "success": True,
            "grammar": gbnf_grammar,
            "schema": parsed_schema
        }
    except Exception as e:
        return {
            "success": False,
            "error": str(e)
        }

# Initialize client
logger.info("Initializing LLM client...")
try:
    llm_client = LLMClient()
    logger.info("LLM client successfully initialized")
except Exception as e:
    logger.error(f"Error initializing LLM client: {e}")
    llm_client = None

def process_request(prompt: str, 
                   json_schema: str, 
                   image: Optional[Image.Image] = None, 
                   use_grammar: bool = True) -> str:
    """
    Process request through Gradio interface
    """
    if llm_client is None:
        return json.dumps({
            "error": "LLM client not initialized",
            "details": "Check logs for detailed error information"
        }, ensure_ascii=False, indent=2)
    
    if not prompt.strip():
        return json.dumps({"error": "Prompt cannot be empty"}, ensure_ascii=False, indent=2)
    
    if not json_schema.strip():
        return json.dumps({"error": "JSON schema cannot be empty"}, ensure_ascii=False, indent=2)
    
    result = llm_client.generate_structured_response(prompt, json_schema, image, use_grammar)
    return json.dumps(result, ensure_ascii=False, indent=2)

# Examples for demonstration
example_schema = """{
  "type": "object",
  "properties": {
    "summary": {
      "type": "string",
      "description": "Brief summary of the response"
    },
    "sentiment": {
      "type": "string",
      "enum": ["positive", "negative", "neutral"],
      "description": "Emotional tone"
    },
    "confidence": {
      "type": "number",
      "minimum": 0,
      "maximum": 1,
      "description": "Confidence level in the response"
    },
    "keywords": {
      "type": "array",
      "items": {
        "type": "string"
      },
      "description": "Key words"
    }
  },
  "required": ["summary", "sentiment", "confidence"]
}"""

example_prompt = "Analyze the following text and provide a structured assessment: 'The company's new product received enthusiastic user reviews. Sales exceeded all expectations by 150%.'"

def create_gradio_interface():
    """Create Gradio interface"""
    
    with gr.Blocks(title="LLM Structured Output", theme=gr.themes.Soft()) as demo:
        gr.Markdown("# πŸ€– LLM with Structured Output")
        gr.Markdown(f"Application for generating structured responses using model **{Config.MODEL_REPO}/{Config.MODEL_FILENAME}**")
        
        # Show model status
        if llm_client is None:
            gr.Markdown("⚠️ **Warning**: Model not loaded. Check configuration and restart the application.")
        else:
            gr.Markdown("βœ… **Status**: Model successfully loaded and ready to work")
        
        with gr.Row():
            with gr.Column():
                prompt_input = gr.Textbox(
                    label="Prompt for model",
                    placeholder="Enter your request...",
                    lines=5,
                    value=example_prompt
                )
                
                image_input = gr.Image(
                    label="Image (optional, for multimodal models)",
                    type="pil"
                )
                
                schema_input = gr.Textbox(
                    label="JSON schema for response structure",
                    placeholder="Enter JSON schema...",
                    lines=15,
                    value=example_schema
                )
                
                grammar_checkbox = gr.Checkbox(
                    label="πŸ”— Use Grammar (GBNF) Mode",
                    value=True,
                    info="Enable grammar-based structured output for more precise JSON generation"
                )
                
                submit_btn = gr.Button("Generate Response", variant="primary")
                
            with gr.Column():
                output = gr.Textbox(
                    label="Structured Response",
                    lines=20,
                    interactive=False
                )
        
        submit_btn.click(
            fn=process_request,
            inputs=[prompt_input, schema_input, image_input, grammar_checkbox],
            outputs=output
        )
        
        # Examples
        gr.Markdown("## πŸ“‹ Usage Examples")
        
        examples = gr.Examples(
            examples=[
                [
                    "Describe today's weather in New York",
                    """{
  "type": "object",
  "properties": {
    "temperature": {"type": "number"},
    "description": {"type": "string"},
    "humidity": {"type": "number"}
  }
}""",
                    None
                ],
                [
                    "Create a Python learning plan for one month",
                    """{
  "type": "object",
  "properties": {
    "weeks": {
      "type": "array",
      "items": {
        "type": "object",
        "properties": {
          "week_number": {"type": "integer"},
          "topics": {"type": "array", "items": {"type": "string"}},
          "practice_hours": {"type": "number"}
        }
      }
    },
    "total_hours": {"type": "number"}
  }
}""",
                    None
                ]
            ],
            inputs=[prompt_input, schema_input, image_input]
        )
        
        # Model information
        gr.Markdown(f"""
## ℹ️ Model Information

- **Model**: {Config.MODEL_REPO}/{Config.MODEL_FILENAME}
- **Local path**: {Config.MODEL_PATH}
- **Context window**: {Config.N_CTX} tokens
- **Batch size**: {Config.N_BATCH}
- **GPU layers**: {Config.N_GPU_LAYERS if Config.N_GPU_LAYERS >= 0 else "All"}
- **CPU threads**: {Config.N_THREADS}
- **Maximum response length**: {Config.MAX_NEW_TOKENS} tokens
- **Temperature**: {Config.TEMPERATURE}
- **Memory lock**: {"Enabled" if Config.USE_MLOCK else "Disabled"}
- **Memory mapping**: {"Enabled" if Config.USE_MMAP else "Disabled"}

πŸ’‘ **Tips**: 
- Use clear and specific JSON schemas for better results
- Enable Grammar (GBNF) mode for more precise JSON structure enforcement
- Grammar mode uses schema-based constraints to guarantee valid JSON output
- Disable Grammar mode for more flexible text generation with schema guidance

πŸ”— **Grammar Features**:
- Automatic conversion of JSON Schema to GBNF grammar
- Strict enforcement of JSON structure during generation
- Support for objects, arrays, strings, numbers, booleans, and enums
- Improved consistency and reliability of structured outputs
        """)
    
    return demo

if __name__ == "__main__":
    # Create and launch Gradio interface
    demo = create_gradio_interface()
    demo.launch(
        server_name=Config.HOST,
        server_port=Config.GRADIO_PORT,
        share=False,
        debug=True
    )