import logging logger = logging.getLogger(__name__) """ Entity and relationship extraction from text Uses LLM with structured output and ontology constraints """ from typing import List, Dict, Any, Optional import json import asyncio from ..core.models import Entity, Relationship, Chunk, ExtractionResult, OntologySchema from ..core.llm_factory import LLMFactory from ..core.entity_resolver import SemanticEntityResolver from ..config import settings class KnowledgeExtractor: """ Extract entities and relationships from text chunks Includes hallucination guards and ontology validators """ def __init__( self, llm_provider: Optional[str] = None, ontology: Optional[OntologySchema] = None ): self.llm = LLMFactory.create(provider=llm_provider) self.ontology = ontology self.resolver = SemanticEntityResolver(self.llm) async def extract_from_chunk( self, chunk: Chunk, ontology: Optional[OntologySchema] = None ) -> ExtractionResult: """ Extract entities and relationships from a single chunk Args: chunk: Text chunk to process ontology: Ontology schema to use Returns: Extraction result with entities and relationships """ import time start_time = time.time() ontology = ontology or self.ontology if not ontology: raise ValueError("No ontology schema provided") # Create extraction prompt prompt = self._create_extraction_prompt(chunk.text, ontology) system_prompt = """You are a precise knowledge extraction system. Extract only information that is explicitly stated in the text. Do not infer or hallucinate information. Use only the entity types and relationship types provided in the ontology.""" # Get extraction from LLM response = await self.llm.complete( prompt, system_prompt=system_prompt, temperature=0.1 ) # Parse extraction entities, relationships = self._parse_extraction(response, ontology) # Add chunk reference chunk_copy = chunk.model_copy() processing_time = time.time() - start_time return ExtractionResult( entities=entities, relationships=relationships, chunks=[chunk_copy], ontology_version=ontology.version, processing_time_seconds=processing_time ) async def extract_from_chunks( self, chunks: List[Chunk], ontology: Optional[OntologySchema] = None, resolve_entities: bool = True, progress_callback=None ) -> ExtractionResult: """ Extract from multiple chunks with entity resolution Args: chunks: List of chunks to process ontology: Ontology schema resolve_entities: Whether to resolve duplicate entities Returns: Combined extraction result """ import time start_time = time.time() # Process chunks in parallel (with rate limiting) semaphore = asyncio.Semaphore(settings.max_concurrent_extractions) async def process_chunk(chunk: Chunk): async with semaphore: return await self.extract_from_chunk(chunk, ontology) tasks = [asyncio.create_task(process_chunk(chunk)) for chunk in chunks] results_list = [] for i, coro in enumerate(asyncio.as_completed(tasks)): try: res = await coro results_list.append(res) except Exception as e: results_list.append(e) if progress_callback: progress_callback(i + 1, len(chunks)) # Combine results results = results_list all_entities = [] all_relationships = [] for result in results: if isinstance(result, Exception): logger.info(f"Extraction error: {result}") continue all_entities.extend(result.entities) all_relationships.extend(result.relationships) # Resolve entities if requested if resolve_entities and all_entities: resolved = await self.resolver.resolve(all_entities) # Update entities - keep canonical versions entity_map = {} # Maps old name to canonical entity final_entities = [] for canonical_id, duplicates in resolved.items(): # Find canonical entity canonical = next((e for e in all_entities if e.id == canonical_id), None) if canonical: final_entities.append(canonical) entity_map[canonical.name] = canonical.name for dup in duplicates: entity_map[dup.name] = canonical.name # Add non-duplicate entities resolved_ids = set() for entities in resolved.values(): resolved_ids.update([e.id for e in entities]) resolved_ids.update(resolved.keys()) for entity in all_entities: if entity.id not in resolved_ids: final_entities.append(entity) entity_map[entity.name] = entity.name # Update relationships to use canonical names final_relationships = [] for rel in all_relationships: updated_rel = rel.model_copy() updated_rel.source = entity_map.get(rel.source, rel.source) updated_rel.target = entity_map.get(rel.target, rel.target) final_relationships.append(updated_rel) else: final_entities = all_entities final_relationships = all_relationships processing_time = time.time() - start_time return ExtractionResult( entities=final_entities, relationships=final_relationships, chunks=chunks, ontology_version=ontology.version if ontology else "v1.0", processing_time_seconds=processing_time ) def _create_extraction_prompt( self, text: str, ontology: OntologySchema ) -> str: """Create extraction prompt with ontology constraints""" prompt = f""" Extract entities and relationships from the following text according to the ontology. Ontology: Entity Types: {', '.join(ontology.entity_types)} Relationship Types: {', '.join(ontology.relationship_types)} Text: {text} Extract all entities and relationships. Return as JSON: {{ "entities": [ {{"name": "entity name", "type": "EntityType", "properties": {{"key": "value"}}}}, ... ], "relationships": [ {{"source": "entity1 name", "target": "entity2 name", "type": "RELATIONSHIP_TYPE"}}, ... ] }} Rules: - Only use entity types and relationship types from the ontology - Extract only explicitly mentioned information - Entity names should be normalized (e.g., "Apple Inc." not "Apple") - Source and target in relationships must match entity names exactly """ return prompt def _parse_extraction( self, response: str, ontology: OntologySchema ) -> tuple[List[Entity], List[Relationship]]: """Parse and validate extraction response""" try: # Clean response cleaned = response.strip() if "```json" in cleaned: cleaned = cleaned.split("```json")[1].split("```")[0] elif "```" in cleaned: cleaned = cleaned.split("```")[1].split("```")[0] cleaned = cleaned.strip() data = json.loads(cleaned) # Parse entities entities = [] for e in data.get("entities", []): # Validate entity type if e.get("type") not in ontology.entity_types: continue entity = Entity( name=e.get("name", ""), type=e.get("type", "Entity"), properties=e.get("properties", {}), ontology_version=ontology.version, confidence=e.get("confidence", 0.9) ) entities.append(entity) # Parse relationships relationships = [] for r in data.get("relationships", []): # Validate relationship type if r.get("type") not in ontology.relationship_types: continue relationship = Relationship( source=r.get("source", ""), target=r.get("target", ""), type=r.get("type", "RELATED_TO"), properties=r.get("properties", {}), ontology_version=ontology.version, confidence=r.get("confidence", 0.9) ) relationships.append(relationship) return entities, relationships except Exception as e: logger.info(f"Failed to parse extraction: {e}") return [], [] async def generate_embeddings( self, chunks: List[Chunk] ) -> List[Chunk]: """ Generate embeddings for chunks Args: chunks: Chunks to embed Returns: Chunks with embeddings """ texts = [chunk.text for chunk in chunks] embeddings = await self.llm.embed_batch(texts) for chunk, embedding in zip(chunks, embeddings): chunk.embedding = embedding return chunks