| import math |
| import threading |
| from collections import Counter |
| from typing import Optional, cast |
|
|
| from flask import Flask, current_app |
|
|
| from core.app.app_config.entities import DatasetEntity, DatasetRetrieveConfigEntity |
| from core.app.entities.app_invoke_entities import InvokeFrom, ModelConfigWithCredentialsEntity |
| from core.callback_handler.index_tool_callback_handler import DatasetIndexToolCallbackHandler |
| from core.entities.agent_entities import PlanningStrategy |
| from core.memory.token_buffer_memory import TokenBufferMemory |
| from core.model_manager import ModelInstance, ModelManager |
| from core.model_runtime.entities.message_entities import PromptMessageTool |
| from core.model_runtime.entities.model_entities import ModelFeature, ModelType |
| from core.model_runtime.model_providers.__base.large_language_model import LargeLanguageModel |
| from core.ops.entities.trace_entity import TraceTaskName |
| from core.ops.ops_trace_manager import TraceQueueManager, TraceTask |
| from core.ops.utils import measure_time |
| from core.rag.data_post_processor.data_post_processor import DataPostProcessor |
| from core.rag.datasource.keyword.jieba.jieba_keyword_table_handler import JiebaKeywordTableHandler |
| from core.rag.datasource.retrieval_service import RetrievalService |
| from core.rag.entities.context_entities import DocumentContext |
| from core.rag.models.document import Document |
| from core.rag.rerank.rerank_type import RerankMode |
| from core.rag.retrieval.retrieval_methods import RetrievalMethod |
| from core.rag.retrieval.router.multi_dataset_function_call_router import FunctionCallMultiDatasetRouter |
| from core.rag.retrieval.router.multi_dataset_react_route import ReactMultiDatasetRouter |
| from core.tools.tool.dataset_retriever.dataset_multi_retriever_tool import DatasetMultiRetrieverTool |
| from core.tools.tool.dataset_retriever.dataset_retriever_base_tool import DatasetRetrieverBaseTool |
| from core.tools.tool.dataset_retriever.dataset_retriever_tool import DatasetRetrieverTool |
| from extensions.ext_database import db |
| from models.dataset import Dataset, DatasetQuery, DocumentSegment |
| from models.dataset import Document as DatasetDocument |
| from services.external_knowledge_service import ExternalDatasetService |
|
|
| default_retrieval_model = { |
| "search_method": RetrievalMethod.SEMANTIC_SEARCH.value, |
| "reranking_enable": False, |
| "reranking_model": {"reranking_provider_name": "", "reranking_model_name": ""}, |
| "top_k": 2, |
| "score_threshold_enabled": False, |
| } |
|
|
|
|
| class DatasetRetrieval: |
| def __init__(self, application_generate_entity=None): |
| self.application_generate_entity = application_generate_entity |
|
|
| def retrieve( |
| self, |
| app_id: str, |
| user_id: str, |
| tenant_id: str, |
| model_config: ModelConfigWithCredentialsEntity, |
| config: DatasetEntity, |
| query: str, |
| invoke_from: InvokeFrom, |
| show_retrieve_source: bool, |
| hit_callback: DatasetIndexToolCallbackHandler, |
| message_id: str, |
| memory: Optional[TokenBufferMemory] = None, |
| ) -> Optional[str]: |
| """ |
| Retrieve dataset. |
| :param app_id: app_id |
| :param user_id: user_id |
| :param tenant_id: tenant id |
| :param model_config: model config |
| :param config: dataset config |
| :param query: query |
| :param invoke_from: invoke from |
| :param show_retrieve_source: show retrieve source |
| :param hit_callback: hit callback |
| :param message_id: message id |
| :param memory: memory |
| :return: |
| """ |
| dataset_ids = config.dataset_ids |
| if len(dataset_ids) == 0: |
| return None |
| retrieve_config = config.retrieve_config |
|
|
| |
| model_type_instance = model_config.provider_model_bundle.model_type_instance |
| model_type_instance = cast(LargeLanguageModel, model_type_instance) |
|
|
| model_manager = ModelManager() |
| model_instance = model_manager.get_model_instance( |
| tenant_id=tenant_id, model_type=ModelType.LLM, provider=model_config.provider, model=model_config.model |
| ) |
|
|
| |
| model_schema = model_type_instance.get_model_schema( |
| model=model_config.model, credentials=model_config.credentials |
| ) |
|
|
| if not model_schema: |
| return None |
|
|
| planning_strategy = PlanningStrategy.REACT_ROUTER |
| features = model_schema.features |
| if features: |
| if ModelFeature.TOOL_CALL in features or ModelFeature.MULTI_TOOL_CALL in features: |
| planning_strategy = PlanningStrategy.ROUTER |
| available_datasets = [] |
| for dataset_id in dataset_ids: |
| |
| dataset = db.session.query(Dataset).filter(Dataset.tenant_id == tenant_id, Dataset.id == dataset_id).first() |
|
|
| |
| if not dataset: |
| continue |
|
|
| |
| if dataset and dataset.available_document_count == 0 and dataset.provider != "external": |
| continue |
|
|
| available_datasets.append(dataset) |
| all_documents = [] |
| user_from = "account" if invoke_from in {InvokeFrom.EXPLORE, InvokeFrom.DEBUGGER} else "end_user" |
| if retrieve_config.retrieve_strategy == DatasetRetrieveConfigEntity.RetrieveStrategy.SINGLE: |
| all_documents = self.single_retrieve( |
| app_id, |
| tenant_id, |
| user_id, |
| user_from, |
| available_datasets, |
| query, |
| model_instance, |
| model_config, |
| planning_strategy, |
| message_id, |
| ) |
| elif retrieve_config.retrieve_strategy == DatasetRetrieveConfigEntity.RetrieveStrategy.MULTIPLE: |
| all_documents = self.multiple_retrieve( |
| app_id, |
| tenant_id, |
| user_id, |
| user_from, |
| available_datasets, |
| query, |
| retrieve_config.top_k, |
| retrieve_config.score_threshold, |
| retrieve_config.rerank_mode, |
| retrieve_config.reranking_model, |
| retrieve_config.weights, |
| retrieve_config.reranking_enabled, |
| message_id, |
| ) |
|
|
| dify_documents = [item for item in all_documents if item.provider == "dify"] |
| external_documents = [item for item in all_documents if item.provider == "external"] |
| document_context_list = [] |
| retrieval_resource_list = [] |
| |
| for item in external_documents: |
| document_context_list.append(DocumentContext(content=item.page_content, score=item.metadata.get("score"))) |
| source = { |
| "dataset_id": item.metadata.get("dataset_id"), |
| "dataset_name": item.metadata.get("dataset_name"), |
| "document_name": item.metadata.get("title"), |
| "data_source_type": "external", |
| "retriever_from": invoke_from.to_source(), |
| "score": item.metadata.get("score"), |
| "content": item.page_content, |
| } |
| retrieval_resource_list.append(source) |
| document_score_list = {} |
| |
| if dify_documents: |
| for item in dify_documents: |
| if item.metadata.get("score"): |
| document_score_list[item.metadata["doc_id"]] = item.metadata["score"] |
|
|
| index_node_ids = [document.metadata["doc_id"] for document in dify_documents] |
| segments = DocumentSegment.query.filter( |
| DocumentSegment.dataset_id.in_(dataset_ids), |
| DocumentSegment.status == "completed", |
| DocumentSegment.enabled == True, |
| DocumentSegment.index_node_id.in_(index_node_ids), |
| ).all() |
|
|
| if segments: |
| index_node_id_to_position = {id: position for position, id in enumerate(index_node_ids)} |
| sorted_segments = sorted( |
| segments, key=lambda segment: index_node_id_to_position.get(segment.index_node_id, float("inf")) |
| ) |
| for segment in sorted_segments: |
| if segment.answer: |
| document_context_list.append( |
| DocumentContext( |
| content=f"question:{segment.get_sign_content()} answer:{segment.answer}", |
| score=document_score_list.get(segment.index_node_id, None), |
| ) |
| ) |
| else: |
| document_context_list.append( |
| DocumentContext( |
| content=segment.get_sign_content(), |
| score=document_score_list.get(segment.index_node_id, None), |
| ) |
| ) |
| if show_retrieve_source: |
| for segment in sorted_segments: |
| dataset = Dataset.query.filter_by(id=segment.dataset_id).first() |
| document = DatasetDocument.query.filter( |
| DatasetDocument.id == segment.document_id, |
| DatasetDocument.enabled == True, |
| DatasetDocument.archived == False, |
| ).first() |
| if dataset and document: |
| source = { |
| "dataset_id": dataset.id, |
| "dataset_name": dataset.name, |
| "document_id": document.id, |
| "document_name": document.name, |
| "data_source_type": document.data_source_type, |
| "segment_id": segment.id, |
| "retriever_from": invoke_from.to_source(), |
| "score": document_score_list.get(segment.index_node_id, 0.0), |
| } |
|
|
| if invoke_from.to_source() == "dev": |
| source["hit_count"] = segment.hit_count |
| source["word_count"] = segment.word_count |
| source["segment_position"] = segment.position |
| source["index_node_hash"] = segment.index_node_hash |
| if segment.answer: |
| source["content"] = f"question:{segment.content} \nanswer:{segment.answer}" |
| else: |
| source["content"] = segment.content |
| retrieval_resource_list.append(source) |
| if hit_callback and retrieval_resource_list: |
| retrieval_resource_list = sorted(retrieval_resource_list, key=lambda x: x.get("score") or 0.0, reverse=True) |
| for position, item in enumerate(retrieval_resource_list, start=1): |
| item["position"] = position |
| hit_callback.return_retriever_resource_info(retrieval_resource_list) |
| if document_context_list: |
| document_context_list = sorted(document_context_list, key=lambda x: x.score or 0.0, reverse=True) |
| return str("\n".join([document_context.content for document_context in document_context_list])) |
| return "" |
|
|
| def single_retrieve( |
| self, |
| app_id: str, |
| tenant_id: str, |
| user_id: str, |
| user_from: str, |
| available_datasets: list, |
| query: str, |
| model_instance: ModelInstance, |
| model_config: ModelConfigWithCredentialsEntity, |
| planning_strategy: PlanningStrategy, |
| message_id: Optional[str] = None, |
| ): |
| tools = [] |
| for dataset in available_datasets: |
| description = dataset.description |
| if not description: |
| description = "useful for when you want to answer queries about the " + dataset.name |
|
|
| description = description.replace("\n", "").replace("\r", "") |
| message_tool = PromptMessageTool( |
| name=dataset.id, |
| description=description, |
| parameters={ |
| "type": "object", |
| "properties": {}, |
| "required": [], |
| }, |
| ) |
| tools.append(message_tool) |
| dataset_id = None |
| if planning_strategy == PlanningStrategy.REACT_ROUTER: |
| react_multi_dataset_router = ReactMultiDatasetRouter() |
| dataset_id = react_multi_dataset_router.invoke( |
| query, tools, model_config, model_instance, user_id, tenant_id |
| ) |
|
|
| elif planning_strategy == PlanningStrategy.ROUTER: |
| function_call_router = FunctionCallMultiDatasetRouter() |
| dataset_id = function_call_router.invoke(query, tools, model_config, model_instance) |
|
|
| if dataset_id: |
| |
| dataset = db.session.query(Dataset).filter(Dataset.id == dataset_id).first() |
| if dataset: |
| results = [] |
| if dataset.provider == "external": |
| external_documents = ExternalDatasetService.fetch_external_knowledge_retrieval( |
| tenant_id=dataset.tenant_id, |
| dataset_id=dataset_id, |
| query=query, |
| external_retrieval_parameters=dataset.retrieval_model, |
| ) |
| for external_document in external_documents: |
| document = Document( |
| page_content=external_document.get("content"), |
| metadata=external_document.get("metadata"), |
| provider="external", |
| ) |
| document.metadata["score"] = external_document.get("score") |
| document.metadata["title"] = external_document.get("title") |
| document.metadata["dataset_id"] = dataset_id |
| document.metadata["dataset_name"] = dataset.name |
| results.append(document) |
| else: |
| retrieval_model_config = dataset.retrieval_model or default_retrieval_model |
|
|
| |
| top_k = retrieval_model_config["top_k"] |
| |
| if dataset.indexing_technique == "economy": |
| retrieval_method = "keyword_search" |
| else: |
| retrieval_method = retrieval_model_config["search_method"] |
| |
| reranking_model = ( |
| retrieval_model_config["reranking_model"] |
| if retrieval_model_config["reranking_enable"] |
| else None |
| ) |
| |
| score_threshold = 0.0 |
| score_threshold_enabled = retrieval_model_config.get("score_threshold_enabled") |
| if score_threshold_enabled: |
| score_threshold = retrieval_model_config.get("score_threshold") |
|
|
| with measure_time() as timer: |
| results = RetrievalService.retrieve( |
| retrieval_method=retrieval_method, |
| dataset_id=dataset.id, |
| query=query, |
| top_k=top_k, |
| score_threshold=score_threshold, |
| reranking_model=reranking_model, |
| reranking_mode=retrieval_model_config.get("reranking_mode", "reranking_model"), |
| weights=retrieval_model_config.get("weights", None), |
| ) |
| self._on_query(query, [dataset_id], app_id, user_from, user_id) |
|
|
| if results: |
| self._on_retrieval_end(results, message_id, timer) |
|
|
| return results |
| return [] |
|
|
| def multiple_retrieve( |
| self, |
| app_id: str, |
| tenant_id: str, |
| user_id: str, |
| user_from: str, |
| available_datasets: list, |
| query: str, |
| top_k: int, |
| score_threshold: float, |
| reranking_mode: str, |
| reranking_model: Optional[dict] = None, |
| weights: Optional[dict] = None, |
| reranking_enable: bool = True, |
| message_id: Optional[str] = None, |
| ): |
| if not available_datasets: |
| return [] |
| threads = [] |
| all_documents = [] |
| dataset_ids = [dataset.id for dataset in available_datasets] |
| index_type_check = all( |
| item.indexing_technique == available_datasets[0].indexing_technique for item in available_datasets |
| ) |
| if not index_type_check and (not reranking_enable or reranking_mode != RerankMode.RERANKING_MODEL): |
| raise ValueError( |
| "The configured knowledge base list have different indexing technique, please set reranking model." |
| ) |
| index_type = available_datasets[0].indexing_technique |
| if index_type == "high_quality": |
| embedding_model_check = all( |
| item.embedding_model == available_datasets[0].embedding_model for item in available_datasets |
| ) |
| embedding_model_provider_check = all( |
| item.embedding_model_provider == available_datasets[0].embedding_model_provider |
| for item in available_datasets |
| ) |
| if ( |
| reranking_enable |
| and reranking_mode == "weighted_score" |
| and (not embedding_model_check or not embedding_model_provider_check) |
| ): |
| raise ValueError( |
| "The configured knowledge base list have different embedding model, please set reranking model." |
| ) |
| if reranking_enable and reranking_mode == RerankMode.WEIGHTED_SCORE: |
| weights["vector_setting"]["embedding_provider_name"] = available_datasets[0].embedding_model_provider |
| weights["vector_setting"]["embedding_model_name"] = available_datasets[0].embedding_model |
|
|
| for dataset in available_datasets: |
| index_type = dataset.indexing_technique |
| retrieval_thread = threading.Thread( |
| target=self._retriever, |
| kwargs={ |
| "flask_app": current_app._get_current_object(), |
| "dataset_id": dataset.id, |
| "query": query, |
| "top_k": top_k, |
| "all_documents": all_documents, |
| }, |
| ) |
| threads.append(retrieval_thread) |
| retrieval_thread.start() |
| for thread in threads: |
| thread.join() |
|
|
| with measure_time() as timer: |
| if reranking_enable: |
| |
| data_post_processor = DataPostProcessor(tenant_id, reranking_mode, reranking_model, weights, False) |
|
|
| all_documents = data_post_processor.invoke( |
| query=query, documents=all_documents, score_threshold=score_threshold, top_n=top_k |
| ) |
| else: |
| if index_type == "economy": |
| all_documents = self.calculate_keyword_score(query, all_documents, top_k) |
| elif index_type == "high_quality": |
| all_documents = self.calculate_vector_score(all_documents, top_k, score_threshold) |
|
|
| self._on_query(query, dataset_ids, app_id, user_from, user_id) |
|
|
| if all_documents: |
| self._on_retrieval_end(all_documents, message_id, timer) |
|
|
| return all_documents |
|
|
| def _on_retrieval_end( |
| self, documents: list[Document], message_id: Optional[str] = None, timer: Optional[dict] = None |
| ) -> None: |
| """Handle retrieval end.""" |
| dify_documents = [document for document in documents if document.provider == "dify"] |
| for document in dify_documents: |
| query = db.session.query(DocumentSegment).filter( |
| DocumentSegment.index_node_id == document.metadata["doc_id"] |
| ) |
|
|
| |
| if "dataset_id" in document.metadata: |
| query = query.filter(DocumentSegment.dataset_id == document.metadata["dataset_id"]) |
|
|
| |
| query.update({DocumentSegment.hit_count: DocumentSegment.hit_count + 1}, synchronize_session=False) |
|
|
| db.session.commit() |
|
|
| |
| trace_manager: TraceQueueManager = ( |
| self.application_generate_entity.trace_manager if self.application_generate_entity else None |
| ) |
| if trace_manager: |
| trace_manager.add_trace_task( |
| TraceTask( |
| TraceTaskName.DATASET_RETRIEVAL_TRACE, message_id=message_id, documents=documents, timer=timer |
| ) |
| ) |
|
|
| def _on_query(self, query: str, dataset_ids: list[str], app_id: str, user_from: str, user_id: str) -> None: |
| """ |
| Handle query. |
| """ |
| if not query: |
| return |
| dataset_queries = [] |
| for dataset_id in dataset_ids: |
| dataset_query = DatasetQuery( |
| dataset_id=dataset_id, |
| content=query, |
| source="app", |
| source_app_id=app_id, |
| created_by_role=user_from, |
| created_by=user_id, |
| ) |
| dataset_queries.append(dataset_query) |
| if dataset_queries: |
| db.session.add_all(dataset_queries) |
| db.session.commit() |
|
|
| def _retriever(self, flask_app: Flask, dataset_id: str, query: str, top_k: int, all_documents: list): |
| with flask_app.app_context(): |
| dataset = db.session.query(Dataset).filter(Dataset.id == dataset_id).first() |
|
|
| if not dataset: |
| return [] |
|
|
| if dataset.provider == "external": |
| external_documents = ExternalDatasetService.fetch_external_knowledge_retrieval( |
| tenant_id=dataset.tenant_id, |
| dataset_id=dataset_id, |
| query=query, |
| external_retrieval_parameters=dataset.retrieval_model, |
| ) |
| for external_document in external_documents: |
| document = Document( |
| page_content=external_document.get("content"), |
| metadata=external_document.get("metadata"), |
| provider="external", |
| ) |
| document.metadata["score"] = external_document.get("score") |
| document.metadata["title"] = external_document.get("title") |
| document.metadata["dataset_id"] = dataset_id |
| document.metadata["dataset_name"] = dataset.name |
| all_documents.append(document) |
| else: |
| |
| retrieval_model = dataset.retrieval_model or default_retrieval_model |
|
|
| if dataset.indexing_technique == "economy": |
| |
| documents = RetrievalService.retrieve( |
| retrieval_method="keyword_search", dataset_id=dataset.id, query=query, top_k=top_k |
| ) |
| if documents: |
| all_documents.extend(documents) |
| else: |
| if top_k > 0: |
| |
| documents = RetrievalService.retrieve( |
| retrieval_method=retrieval_model["search_method"], |
| dataset_id=dataset.id, |
| query=query, |
| top_k=retrieval_model.get("top_k") or 2, |
| score_threshold=retrieval_model.get("score_threshold", 0.0) |
| if retrieval_model["score_threshold_enabled"] |
| else 0.0, |
| reranking_model=retrieval_model.get("reranking_model", None) |
| if retrieval_model["reranking_enable"] |
| else None, |
| reranking_mode=retrieval_model.get("reranking_mode") or "reranking_model", |
| weights=retrieval_model.get("weights", None), |
| ) |
|
|
| all_documents.extend(documents) |
|
|
| def to_dataset_retriever_tool( |
| self, |
| tenant_id: str, |
| dataset_ids: list[str], |
| retrieve_config: DatasetRetrieveConfigEntity, |
| return_resource: bool, |
| invoke_from: InvokeFrom, |
| hit_callback: DatasetIndexToolCallbackHandler, |
| ) -> Optional[list[DatasetRetrieverBaseTool]]: |
| """ |
| A dataset tool is a tool that can be used to retrieve information from a dataset |
| :param tenant_id: tenant id |
| :param dataset_ids: dataset ids |
| :param retrieve_config: retrieve config |
| :param return_resource: return resource |
| :param invoke_from: invoke from |
| :param hit_callback: hit callback |
| """ |
| tools = [] |
| available_datasets = [] |
| for dataset_id in dataset_ids: |
| |
| dataset = db.session.query(Dataset).filter(Dataset.tenant_id == tenant_id, Dataset.id == dataset_id).first() |
|
|
| |
| if not dataset: |
| continue |
|
|
| |
| if dataset and dataset.provider != "external" and dataset.available_document_count == 0: |
| continue |
|
|
| available_datasets.append(dataset) |
|
|
| if retrieve_config.retrieve_strategy == DatasetRetrieveConfigEntity.RetrieveStrategy.SINGLE: |
| |
| default_retrieval_model = { |
| "search_method": RetrievalMethod.SEMANTIC_SEARCH.value, |
| "reranking_enable": False, |
| "reranking_model": {"reranking_provider_name": "", "reranking_model_name": ""}, |
| "top_k": 2, |
| "score_threshold_enabled": False, |
| } |
|
|
| for dataset in available_datasets: |
| retrieval_model_config = dataset.retrieval_model or default_retrieval_model |
|
|
| |
| top_k = retrieval_model_config["top_k"] |
|
|
| |
| score_threshold = None |
| score_threshold_enabled = retrieval_model_config.get("score_threshold_enabled") |
| if score_threshold_enabled: |
| score_threshold = retrieval_model_config.get("score_threshold") |
|
|
| tool = DatasetRetrieverTool.from_dataset( |
| dataset=dataset, |
| top_k=top_k, |
| score_threshold=score_threshold, |
| hit_callbacks=[hit_callback], |
| return_resource=return_resource, |
| retriever_from=invoke_from.to_source(), |
| ) |
|
|
| tools.append(tool) |
| elif retrieve_config.retrieve_strategy == DatasetRetrieveConfigEntity.RetrieveStrategy.MULTIPLE: |
| tool = DatasetMultiRetrieverTool.from_dataset( |
| dataset_ids=[dataset.id for dataset in available_datasets], |
| tenant_id=tenant_id, |
| top_k=retrieve_config.top_k or 2, |
| score_threshold=retrieve_config.score_threshold, |
| hit_callbacks=[hit_callback], |
| return_resource=return_resource, |
| retriever_from=invoke_from.to_source(), |
| reranking_provider_name=retrieve_config.reranking_model.get("reranking_provider_name"), |
| reranking_model_name=retrieve_config.reranking_model.get("reranking_model_name"), |
| ) |
|
|
| tools.append(tool) |
|
|
| return tools |
|
|
| def calculate_keyword_score(self, query: str, documents: list[Document], top_k: int) -> list[Document]: |
| """ |
| Calculate keywords scores |
| :param query: search query |
| :param documents: documents for reranking |
| |
| :return: |
| """ |
| keyword_table_handler = JiebaKeywordTableHandler() |
| query_keywords = keyword_table_handler.extract_keywords(query, None) |
| documents_keywords = [] |
| for document in documents: |
| |
| document_keywords = keyword_table_handler.extract_keywords(document.page_content, None) |
| document.metadata["keywords"] = document_keywords |
| documents_keywords.append(document_keywords) |
|
|
| |
| query_keyword_counts = Counter(query_keywords) |
|
|
| |
| total_documents = len(documents) |
|
|
| |
| all_keywords = set() |
| for document_keywords in documents_keywords: |
| all_keywords.update(document_keywords) |
|
|
| keyword_idf = {} |
| for keyword in all_keywords: |
| |
| doc_count_containing_keyword = sum(1 for doc_keywords in documents_keywords if keyword in doc_keywords) |
| |
| keyword_idf[keyword] = math.log((1 + total_documents) / (1 + doc_count_containing_keyword)) + 1 |
|
|
| query_tfidf = {} |
|
|
| for keyword, count in query_keyword_counts.items(): |
| tf = count |
| idf = keyword_idf.get(keyword, 0) |
| query_tfidf[keyword] = tf * idf |
|
|
| |
| documents_tfidf = [] |
| for document_keywords in documents_keywords: |
| document_keyword_counts = Counter(document_keywords) |
| document_tfidf = {} |
| for keyword, count in document_keyword_counts.items(): |
| tf = count |
| idf = keyword_idf.get(keyword, 0) |
| document_tfidf[keyword] = tf * idf |
| documents_tfidf.append(document_tfidf) |
|
|
| def cosine_similarity(vec1, vec2): |
| intersection = set(vec1.keys()) & set(vec2.keys()) |
| numerator = sum(vec1[x] * vec2[x] for x in intersection) |
|
|
| sum1 = sum(vec1[x] ** 2 for x in vec1) |
| sum2 = sum(vec2[x] ** 2 for x in vec2) |
| denominator = math.sqrt(sum1) * math.sqrt(sum2) |
|
|
| if not denominator: |
| return 0.0 |
| else: |
| return float(numerator) / denominator |
|
|
| similarities = [] |
| for document_tfidf in documents_tfidf: |
| similarity = cosine_similarity(query_tfidf, document_tfidf) |
| similarities.append(similarity) |
|
|
| for document, score in zip(documents, similarities): |
| |
| document.metadata["score"] = score |
| documents = sorted(documents, key=lambda x: x.metadata["score"], reverse=True) |
| return documents[:top_k] if top_k else documents |
|
|
| def calculate_vector_score( |
| self, all_documents: list[Document], top_k: int, score_threshold: float |
| ) -> list[Document]: |
| filter_documents = [] |
| for document in all_documents: |
| if score_threshold is None or document.metadata["score"] >= score_threshold: |
| filter_documents.append(document) |
|
|
| if not filter_documents: |
| return [] |
| filter_documents = sorted(filter_documents, key=lambda x: x.metadata["score"], reverse=True) |
| return filter_documents[:top_k] if top_k else filter_documents |
|
|