mirror of
https://github.com/langgenius/dify.git
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6c4e6bf1d6
Co-authored-by: jyong <jyong@dify.ai>
166 lines
6.2 KiB
Python
166 lines
6.2 KiB
Python
import threading
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from typing import Optional
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from flask import Flask, current_app
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from flask_login import current_user
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from core.rag.data_post_processor.data_post_processor import DataPostProcessor
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from core.rag.datasource.keyword.keyword_factory import Keyword
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from core.rag.datasource.vdb.vector_factory import Vector
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from extensions.ext_database import db
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from models.dataset import Dataset
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default_retrieval_model = {
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'search_method': 'semantic_search',
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'reranking_enable': False,
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'reranking_model': {
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'reranking_provider_name': '',
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'reranking_model_name': ''
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},
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'top_k': 2,
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'score_threshold_enabled': False
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}
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class RetrievalService:
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@classmethod
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def retrieve(cls, retrival_method: str, dataset_id: str, query: str,
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top_k: int, score_threshold: Optional[float] = .0, reranking_model: Optional[dict] = None):
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all_documents = []
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threads = []
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# retrieval_model source with keyword
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if retrival_method == 'keyword_search':
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keyword_thread = threading.Thread(target=RetrievalService.keyword_search, kwargs={
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'flask_app': current_app._get_current_object(),
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'dataset_id': dataset_id,
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'query': query,
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'top_k': top_k
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})
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threads.append(keyword_thread)
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keyword_thread.start()
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# retrieval_model source with semantic
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if retrival_method == 'semantic_search' or retrival_method == 'hybrid_search':
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embedding_thread = threading.Thread(target=RetrievalService.embedding_search, kwargs={
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'flask_app': current_app._get_current_object(),
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'dataset_id': dataset_id,
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'query': query,
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'top_k': top_k,
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'score_threshold': score_threshold,
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'reranking_model': reranking_model,
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'all_documents': all_documents,
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'retrival_method': retrival_method
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})
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threads.append(embedding_thread)
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embedding_thread.start()
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# retrieval source with full text
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if retrival_method == 'full_text_search' or retrival_method == 'hybrid_search':
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full_text_index_thread = threading.Thread(target=RetrievalService.full_text_index_search, kwargs={
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'flask_app': current_app._get_current_object(),
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'dataset_id': dataset_id,
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'query': query,
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'retrival_method': retrival_method,
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'score_threshold': score_threshold,
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'top_k': top_k,
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'reranking_model': reranking_model,
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'all_documents': all_documents
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})
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threads.append(full_text_index_thread)
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full_text_index_thread.start()
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for thread in threads:
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thread.join()
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if retrival_method == 'hybrid_search':
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data_post_processor = DataPostProcessor(str(current_user.current_tenant_id), reranking_model, False)
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all_documents = data_post_processor.invoke(
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query=query,
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documents=all_documents,
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score_threshold=score_threshold,
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top_n=top_k
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)
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return all_documents
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@classmethod
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def keyword_search(cls, flask_app: Flask, dataset_id: str, query: str,
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top_k: int, all_documents: list):
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with flask_app.app_context():
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dataset = db.session.query(Dataset).filter(
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Dataset.id == dataset_id
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).first()
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keyword = Keyword(
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dataset=dataset
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)
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documents = keyword.search(
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query,
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k=top_k
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)
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all_documents.extend(documents)
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@classmethod
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def embedding_search(cls, flask_app: Flask, dataset_id: str, query: str,
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top_k: int, score_threshold: Optional[float], reranking_model: Optional[dict],
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all_documents: list, retrival_method: str):
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with flask_app.app_context():
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dataset = db.session.query(Dataset).filter(
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Dataset.id == dataset_id
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).first()
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vector = Vector(
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dataset=dataset
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)
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documents = vector.search_by_vector(
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query,
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search_type='similarity_score_threshold',
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k=top_k,
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score_threshold=score_threshold,
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filter={
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'group_id': [dataset.id]
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}
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)
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if documents:
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if reranking_model and retrival_method == 'semantic_search':
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data_post_processor = DataPostProcessor(str(dataset.tenant_id), reranking_model, False)
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all_documents.extend(data_post_processor.invoke(
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query=query,
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documents=documents,
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score_threshold=score_threshold,
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top_n=len(documents)
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))
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else:
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all_documents.extend(documents)
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@classmethod
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def full_text_index_search(cls, flask_app: Flask, dataset_id: str, query: str,
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top_k: int, score_threshold: Optional[float], reranking_model: Optional[dict],
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all_documents: list, retrival_method: str):
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with flask_app.app_context():
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dataset = db.session.query(Dataset).filter(
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Dataset.id == dataset_id
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).first()
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vector_processor = Vector(
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dataset=dataset,
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)
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documents = vector_processor.search_by_full_text(
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query,
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top_k=top_k
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)
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if documents:
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if reranking_model and retrival_method == 'full_text_search':
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data_post_processor = DataPostProcessor(str(dataset.tenant_id), reranking_model, False)
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all_documents.extend(data_post_processor.invoke(
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query=query,
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documents=documents,
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score_threshold=score_threshold,
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top_n=len(documents)
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))
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else:
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all_documents.extend(documents)
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