UnisKB/apps/embedding/vector/base_vector.py

184 lines
5.4 KiB
Python
Raw Normal View History

# coding=utf-8
"""
@project: maxkb
@Author
@file base_vector.py
@date2023/10/18 19:16
@desc:
"""
2023-12-21 04:16:39 +00:00
import threading
from abc import ABC, abstractmethod
from typing import List, Dict
2024-03-06 05:43:45 +00:00
from langchain_community.embeddings import HuggingFaceEmbeddings
from common.config.embedding_config import EmbeddingModel
2023-12-15 06:22:19 +00:00
from common.util.common import sub_array
from embedding.models import SourceType, SearchMode
2023-12-21 04:16:39 +00:00
lock = threading.Lock()
class BaseVectorStore(ABC):
vector_exists = False
@abstractmethod
def vector_is_create(self) -> bool:
"""
判断向量库是否创建
:return: 是否创建向量库
"""
pass
@abstractmethod
def vector_create(self):
"""
创建 向量库
:return:
"""
pass
def save_pre_handler(self):
"""
插入前置处理器 主要是判断向量库是否创建
:return: True
"""
if not BaseVectorStore.vector_exists:
if not self.vector_is_create():
self.vector_create()
BaseVectorStore.vector_exists = True
return True
def save(self, text, source_type: SourceType, dataset_id: str, document_id: str, paragraph_id: str, source_id: str,
is_active: bool,
embedding=None):
"""
插入向量数据
:param source_id: 资源id
2023-12-18 03:32:29 +00:00
:param dataset_id: 知识库id
:param text: 文本
:param source_type: 资源类型
:param document_id: 文档id
:param is_active: 是否禁用
:param embedding: 向量化处理器
:param paragraph_id 段落id
:return: bool
"""
if embedding is None:
embedding = EmbeddingModel.get_embedding_model()
self.save_pre_handler()
self._save(text, source_type, dataset_id, document_id, paragraph_id, source_id, is_active, embedding)
def batch_save(self, data_list: List[Dict], embedding=None):
2023-12-21 04:16:39 +00:00
# 获取锁
lock.acquire()
try:
"""
批量插入
:param data_list: 数据列表
:param embedding: 向量化处理器
:return: bool
"""
if embedding is None:
embedding = EmbeddingModel.get_embedding_model()
self.save_pre_handler()
result = sub_array(data_list)
for child_array in result:
self._batch_save(child_array, embedding)
finally:
# 释放锁
lock.release()
return True
@abstractmethod
def _save(self, text, source_type: SourceType, dataset_id: str, document_id: str, paragraph_id: str, source_id: str,
is_active: bool,
embedding: HuggingFaceEmbeddings):
pass
@abstractmethod
def _batch_save(self, text_list: List[Dict], embedding: HuggingFaceEmbeddings):
pass
def search(self, query_text, dataset_id_list: list[str], exclude_document_id_list: list[str],
2024-01-16 08:46:54 +00:00
exclude_paragraph_list: list[str],
is_active: bool,
embedding: HuggingFaceEmbeddings):
2024-01-16 08:46:54 +00:00
if dataset_id_list is None or len(dataset_id_list) == 0:
return []
embedding_query = embedding.embed_query(query_text)
result = self.query(embedding_query, dataset_id_list, exclude_document_id_list, exclude_paragraph_list,
is_active, 1, 0.65)
return result[0]
@abstractmethod
def query(self, query_text: str, query_embedding: List[float], dataset_id_list: list[str],
exclude_document_id_list: list[str],
exclude_paragraph_list: list[str], is_active: bool, top_n: int, similarity: float,
search_mode: SearchMode):
pass
2023-12-25 09:10:59 +00:00
@abstractmethod
def hit_test(self, query_text, dataset_id: list[str], exclude_document_id_list: list[str], top_number: int,
similarity: float,
search_mode: SearchMode,
2023-12-25 09:10:59 +00:00
embedding: HuggingFaceEmbeddings):
pass
@abstractmethod
def update_by_paragraph_id(self, paragraph_id: str, instance: Dict):
pass
@abstractmethod
def update_by_paragraph_ids(self, paragraph_ids: str, instance: Dict):
pass
@abstractmethod
def update_by_source_id(self, source_id: str, instance: Dict):
pass
@abstractmethod
def update_by_source_ids(self, source_ids: List[str], instance: Dict):
pass
@abstractmethod
def embed_documents(self, text_list: List[str]):
pass
@abstractmethod
def embed_query(self, text: str):
pass
@abstractmethod
def delete_by_dataset_id(self, dataset_id: str):
pass
@abstractmethod
def delete_by_document_id(self, document_id: str):
pass
@abstractmethod
def delete_bu_document_id_list(self, document_id_list: List[str]):
pass
2024-03-21 10:33:35 +00:00
@abstractmethod
def delete_by_dataset_id_list(self, dataset_id_list: List[str]):
pass
@abstractmethod
def delete_by_source_id(self, source_id: str, source_type: str):
pass
@abstractmethod
def delete_by_source_ids(self, source_ids: List[str], source_type: str):
pass
@abstractmethod
def delete_by_paragraph_id(self, paragraph_id: str):
pass
@abstractmethod
def delete_by_paragraph_ids(self, paragraph_ids: List[str]):
pass