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# guardrails/attachments/pdf_guardrail.py
import time
import json
from typing import Dict, Any, Tuple, List
from .base import AttachmentGuardrail


class PdfGuardrail(AttachmentGuardrail):
    """
    Guardrail for PDF files (.pdf).
    Extracts text content using PyMuPDF and analyzes each chunk for unsafe content.
    """
    
    def __init__(self, config: Dict[str, Any]):
        super().__init__(config)
        self.chunk_size = config.get("chunk_size", 500)  # tokens per chunk
        self.confidence_threshold = config.get("confidence_threshold", 0.8)  # >80% confidence for blocking
        self.max_file_size = config.get("max_file_size_mb", 50) * 1024 * 1024  # Convert MB to bytes (larger limit for PDFs)
        
        # Initialize the finetuned model for analysis
        self.model_client = None
        self._init_model()
        
        # Initialize PyMuPDF
        self.pymupdf_available = False
        self._init_pymupdf()
        
    def _init_model(self):
        """Initialize the finetuned model client for text analysis (using shared model)"""
        try:
            from llm_clients.shared_models import shared_model_manager
            
            self.model_client = shared_model_manager.get_finetuned_guard_client("zazaman/fmb")
            
            if self.model_client:
                print(f"   🔍 PDF Guardrail: Using shared model zazaman/fmb")
            else:
                print(f"   ⚠️  PDF Guardrail: Could not get shared model")
                
        except Exception as e:
            print(f"   ⚠️  PDF Guardrail: Could not initialize shared model: {e}")
            self.model_client = None
    
    def _init_pymupdf(self):
        """Initialize PyMuPDF for PDF text extraction"""
        try:
            import fitz  # PyMuPDF
            self.pymupdf_available = True
            print(f"   📄 PDF Guardrail: PyMuPDF initialized successfully")
        except ImportError:
            print(f"   ⚠️  PDF Guardrail: PyMuPDF not available. Install with: pip install PyMuPDF")
            self.pymupdf_available = False
    
    def get_supported_extensions(self) -> List[str]:
        """Return supported PDF file extensions"""
        return ['.pdf']
    
    def process_file(self, file_path: str, file_content: bytes) -> Tuple[bool, Dict[str, Any]]:
        """
        Process a PDF file by extracting text, chunking, and analyzing each chunk for threats.
        
        Args:
            file_path: Path/name of the uploaded file
            file_content: Raw bytes content of the file
            
        Returns:
            Tuple of (is_safe, analysis_details)
        """
        start_time = time.time()
        
        # Get basic file info
        file_info = self.get_file_info(file_path, file_content)
        
        analysis_details = {
            **file_info,
            "chunk_size": self.chunk_size,
            "confidence_threshold": self.confidence_threshold,
            "chunks_analyzed": 0,
            "chunks_unsafe": 0,
            "max_confidence": 0.0,
            "analysis_time_ms": 0,
            "chunks_details": [],
            "model_used": "zazaman/fmb",
            "pages_processed": 0,
            "text_length": 0
        }
        
        try:
            # Check file size
            if len(file_content) > self.max_file_size:
                analysis_details["error"] = f"File too large: {file_info['size_kb']}KB > {self.max_file_size/1024/1024}MB"
                return False, analysis_details
            
            # Check if PyMuPDF is available
            if not self.pymupdf_available:
                analysis_details["error"] = "PyMuPDF not available. Cannot process PDF files."
                return False, analysis_details
            
            # Check if model is available
            if not self.model_client:
                analysis_details["error"] = "Text analysis model not available"
                return False, analysis_details
            
            # Extract text from PDF
            text_content, pages_processed = self._extract_text_from_pdf(file_content)
            analysis_details["pages_processed"] = pages_processed
            analysis_details["text_length"] = len(text_content)
            
            if not text_content.strip():
                analysis_details["warning"] = "No extractable text found in PDF"
                return True, analysis_details
            
            # Chunk the text
            chunks = self._chunk_text(text_content)
            analysis_details["chunks_analyzed"] = len(chunks)
            
            if not chunks:
                analysis_details["warning"] = "No processable content after chunking"
                return True, analysis_details
            
            # Analyze each chunk
            unsafe_chunks = 0
            max_confidence = 0.0
            
            for i, chunk in enumerate(chunks):
                chunk_start_time = time.time()
                
                try:
                    # Analyze chunk with the finetuned model
                    response = self.model_client.generate_content(chunk)
                    
                    # Parse the JSON response
                    ai_result = json.loads(response)
                    
                    confidence = ai_result.get("confidence", 0.0)
                    safety_status = ai_result.get("safety_status", "unsafe")
                    attack_type = ai_result.get("attack_type", "unknown")
                    is_chunk_safe = safety_status.lower() == "safe"
                    
                    chunk_latency = round((time.time() - chunk_start_time) * 1000, 1)
                    
                    chunk_detail = {
                        "chunk_index": i,
                        "chunk_length": len(chunk),
                        "is_safe": is_chunk_safe,
                        "confidence": confidence,
                        "safety_status": safety_status,
                        "attack_type": attack_type,
                        "latency_ms": chunk_latency,
                        "preview": chunk[:100] + "..." if len(chunk) > 100 else chunk
                    }
                    
                    analysis_details["chunks_details"].append(chunk_detail)
                    
                    # Track statistics
                    max_confidence = max(max_confidence, confidence)
                    
                    # Check if chunk is unsafe with high confidence (>80%)
                    if not is_chunk_safe and confidence > self.confidence_threshold:
                        unsafe_chunks += 1
                        chunk_detail["flagged"] = True
                        print(f"   🚨 PDF Guardrail: Unsafe chunk {i+1}/{len(chunks)} detected (confidence: {confidence:.3f})")
                    
                except Exception as e:
                    # If we can't analyze a chunk, treat it as unsafe
                    chunk_detail = {
                        "chunk_index": i,
                        "chunk_length": len(chunk),
                        "is_safe": False,
                        "error": str(e),
                        "latency_ms": round((time.time() - chunk_start_time) * 1000, 1),
                        "preview": chunk[:100] + "..." if len(chunk) > 100 else chunk
                    }
                    analysis_details["chunks_details"].append(chunk_detail)
                    unsafe_chunks += 1
            
            analysis_details["chunks_unsafe"] = unsafe_chunks
            analysis_details["max_confidence"] = max_confidence
            analysis_details["analysis_time_ms"] = round((time.time() - start_time) * 1000, 1)
            
            # File is safe if no chunks were flagged as unsafe
            is_file_safe = unsafe_chunks == 0
            
            if not is_file_safe:
                analysis_details["threat_summary"] = f"Detected {unsafe_chunks} unsafe chunks out of {len(chunks)} total chunks"
            
            return is_file_safe, analysis_details
            
        except Exception as e:
            analysis_details["error"] = f"Unexpected error during PDF analysis: {str(e)}"
            analysis_details["analysis_time_ms"] = round((time.time() - start_time) * 1000, 1)
            return False, analysis_details
    
    def _extract_text_from_pdf(self, pdf_content: bytes) -> Tuple[str, int]:
        """
        Extract text content from PDF using PyMuPDF.
        
        Args:
            pdf_content: Raw bytes content of the PDF file
            
        Returns:
            Tuple of (extracted_text, pages_processed)
        """
        try:
            import fitz  # PyMuPDF
            
            # Open PDF from bytes
            doc = fitz.open(stream=pdf_content, filetype="pdf")
            
            extracted_text = ""
            pages_processed = 0
            
            # Extract text from each page
            for page_num in range(len(doc)):
                page = doc.load_page(page_num)
                page_text = page.get_text()
                
                if page_text.strip():  # Only add non-empty pages
                    extracted_text += page_text + "\n\n"
                    pages_processed += 1
            
            doc.close()
            
            return extracted_text.strip(), pages_processed
            
        except Exception as e:
            raise Exception(f"Failed to extract text from PDF: {str(e)}")
    
    def _chunk_text(self, text: str) -> List[str]:
        """
        Chunk text into pieces of approximately chunk_size tokens.
        Uses a simple word-based approximation (1 token ≈ 0.75 words).
        """
        if not text.strip():
            return []
        
        # Approximate tokens using word count (1 token ≈ 0.75 words)
        # So for 500 tokens, we want ~667 words
        words_per_chunk = int(self.chunk_size / 0.75)
        
        # Split text into words
        words = text.split()
        
        if len(words) <= words_per_chunk:
            # Text is small enough to be a single chunk
            return [text]
        
        chunks = []
        current_chunk_words = []
        
        for word in words:
            current_chunk_words.append(word)
            
            # If we've reached the target chunk size, create a chunk
            if len(current_chunk_words) >= words_per_chunk:
                chunk_text = ' '.join(current_chunk_words)
                chunks.append(chunk_text)
                current_chunk_words = []
        
        # Add remaining words as the last chunk
        if current_chunk_words:
            chunk_text = ' '.join(current_chunk_words)
            chunks.append(chunk_text)
        
        return chunks
    
    def _estimate_tokens(self, text: str) -> int:
        """Estimate token count using word count approximation"""
        words = len(text.split())
        return int(words * 0.75)  # Rough approximation: 1 token ≈ 0.75 words