mirror of
https://github.com/hwchase17/langchain
synced 2024-11-02 09:40:22 +00:00
ed58eeb9c5
Moved the following modules to new package langchain-community in a backwards compatible fashion: ``` mv langchain/langchain/adapters community/langchain_community mv langchain/langchain/callbacks community/langchain_community/callbacks mv langchain/langchain/chat_loaders community/langchain_community mv langchain/langchain/chat_models community/langchain_community mv langchain/langchain/document_loaders community/langchain_community mv langchain/langchain/docstore community/langchain_community mv langchain/langchain/document_transformers community/langchain_community mv langchain/langchain/embeddings community/langchain_community mv langchain/langchain/graphs community/langchain_community mv langchain/langchain/llms community/langchain_community mv langchain/langchain/memory/chat_message_histories community/langchain_community mv langchain/langchain/retrievers community/langchain_community mv langchain/langchain/storage community/langchain_community mv langchain/langchain/tools community/langchain_community mv langchain/langchain/utilities community/langchain_community mv langchain/langchain/vectorstores community/langchain_community mv langchain/langchain/agents/agent_toolkits community/langchain_community mv langchain/langchain/cache.py community/langchain_community mv langchain/langchain/adapters community/langchain_community mv langchain/langchain/callbacks community/langchain_community/callbacks mv langchain/langchain/chat_loaders community/langchain_community mv langchain/langchain/chat_models community/langchain_community mv langchain/langchain/document_loaders community/langchain_community mv langchain/langchain/docstore community/langchain_community mv langchain/langchain/document_transformers community/langchain_community mv langchain/langchain/embeddings community/langchain_community mv langchain/langchain/graphs community/langchain_community mv langchain/langchain/llms community/langchain_community mv langchain/langchain/memory/chat_message_histories community/langchain_community mv langchain/langchain/retrievers community/langchain_community mv langchain/langchain/storage community/langchain_community mv langchain/langchain/tools community/langchain_community mv langchain/langchain/utilities community/langchain_community mv langchain/langchain/vectorstores community/langchain_community mv langchain/langchain/agents/agent_toolkits community/langchain_community mv langchain/langchain/cache.py community/langchain_community ``` Moved the following to core ``` mv langchain/langchain/utils/json_schema.py core/langchain_core/utils mv langchain/langchain/utils/html.py core/langchain_core/utils mv langchain/langchain/utils/strings.py core/langchain_core/utils cat langchain/langchain/utils/env.py >> core/langchain_core/utils/env.py rm langchain/langchain/utils/env.py ``` See .scripts/community_split/script_integrations.sh for all changes
578 lines
19 KiB
Python
578 lines
19 KiB
Python
from __future__ import annotations
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import os
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import time
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import uuid
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from typing import TYPE_CHECKING, Any, Dict, Iterable, List, Optional, Tuple, Type
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import numpy as np
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from langchain_core.documents import Document
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from langchain_core.embeddings import Embeddings
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from langchain_core.vectorstores import VectorStore
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if TYPE_CHECKING:
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import vearch
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DEFAULT_TOPN = 4
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class Vearch(VectorStore):
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_DEFAULT_TABLE_NAME = "langchain_vearch"
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_DEFAULT_CLUSTER_DB_NAME = "cluster_client_db"
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_DEFAULT_VERSION = 1
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def __init__(
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self,
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embedding_function: Embeddings,
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path_or_url: Optional[str] = None,
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table_name: str = _DEFAULT_TABLE_NAME,
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db_name: str = _DEFAULT_CLUSTER_DB_NAME,
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flag: int = _DEFAULT_VERSION,
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**kwargs: Any,
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) -> None:
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"""Initialize vearch vector store
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flag 1 for cluster,0 for standalone
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"""
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try:
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if flag:
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import vearch_cluster
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else:
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import vearch
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except ImportError:
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raise ValueError(
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"Could not import suitable python package. "
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"Please install it with `pip install vearch or vearch_cluster`."
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)
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if flag:
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if path_or_url is None:
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raise ValueError("Please input url of cluster")
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if not db_name:
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db_name = self._DEFAULT_CLUSTER_DB_NAME
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db_name += "_"
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db_name += str(uuid.uuid4()).split("-")[-1]
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self.using_db_name = db_name
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self.url = path_or_url
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self.vearch = vearch_cluster.VearchCluster(path_or_url)
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else:
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if path_or_url is None:
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metadata_path = os.getcwd().replace("\\", "/")
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else:
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metadata_path = path_or_url
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if not os.path.isdir(metadata_path):
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os.makedirs(metadata_path)
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log_path = os.path.join(metadata_path, "log")
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if not os.path.isdir(log_path):
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os.makedirs(log_path)
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self.vearch = vearch.Engine(metadata_path, log_path)
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self.using_metapath = metadata_path
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if not table_name:
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table_name = self._DEFAULT_TABLE_NAME
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table_name += "_"
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table_name += str(uuid.uuid4()).split("-")[-1]
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self.using_table_name = table_name
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self.embedding_func = embedding_function
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self.flag = flag
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@property
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def embeddings(self) -> Optional[Embeddings]:
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return self.embedding_func
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@classmethod
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def from_documents(
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cls: Type[Vearch],
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documents: List[Document],
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embedding: Embeddings,
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path_or_url: Optional[str] = None,
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table_name: str = _DEFAULT_TABLE_NAME,
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db_name: str = _DEFAULT_CLUSTER_DB_NAME,
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flag: int = _DEFAULT_VERSION,
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**kwargs: Any,
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) -> Vearch:
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"""Return Vearch VectorStore"""
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texts = [d.page_content for d in documents]
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metadatas = [d.metadata for d in documents]
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return cls.from_texts(
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texts=texts,
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embedding=embedding,
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metadatas=metadatas,
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path_or_url=path_or_url,
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table_name=table_name,
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db_name=db_name,
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flag=flag,
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**kwargs,
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)
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@classmethod
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def from_texts(
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cls: Type[Vearch],
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texts: List[str],
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embedding: Embeddings,
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metadatas: Optional[List[dict]] = None,
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path_or_url: Optional[str] = None,
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table_name: str = _DEFAULT_TABLE_NAME,
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db_name: str = _DEFAULT_CLUSTER_DB_NAME,
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flag: int = _DEFAULT_VERSION,
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**kwargs: Any,
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) -> Vearch:
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"""Return Vearch VectorStore"""
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vearch_db = cls(
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embedding_function=embedding,
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embedding=embedding,
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path_or_url=path_or_url,
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db_name=db_name,
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table_name=table_name,
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flag=flag,
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)
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vearch_db.add_texts(texts=texts, metadatas=metadatas)
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return vearch_db
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def _create_table(
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self,
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dim: int = 1024,
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field_list: List[dict] = [
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{"field": "text", "type": "str"},
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{"field": "metadata", "type": "str"},
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],
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) -> int:
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"""
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Create VectorStore Table
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Args:
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dim:dimension of vector
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fields_list: the field you want to store
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Return:
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code,0 for success,1 for failed
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"""
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type_dict = {"int": vearch.dataType.INT, "str": vearch.dataType.STRING}
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engine_info = {
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"index_size": 10000,
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"retrieval_type": "IVFPQ",
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"retrieval_param": {"ncentroids": 2048, "nsubvector": 32},
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}
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fields = [
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vearch.GammaFieldInfo(fi["field"], type_dict[fi["type"]])
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for fi in field_list
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]
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vector_field = vearch.GammaVectorInfo(
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name="text_embedding",
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type=vearch.dataType.VECTOR,
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is_index=True,
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dimension=dim,
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model_id="",
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store_type="MemoryOnly",
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store_param={"cache_size": 10000},
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has_source=False,
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)
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response_code = self.vearch.create_table(
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engine_info,
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name=self.using_table_name,
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fields=fields,
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vector_field=vector_field,
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)
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return response_code
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def _create_space(
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self,
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dim: int = 1024,
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) -> int:
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"""
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Create VectorStore space
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Args:
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dim:dimension of vector
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Return:
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code,0 failed for ,1 for success
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"""
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space_config = {
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"name": self.using_table_name,
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"partition_num": 1,
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"replica_num": 1,
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"engine": {
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"name": "gamma",
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"index_size": 1,
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"retrieval_type": "FLAT",
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"retrieval_param": {
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"metric_type": "L2",
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},
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},
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"properties": {
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"text": {
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"type": "string",
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},
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"metadata": {
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"type": "string",
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},
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"text_embedding": {
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"type": "vector",
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"index": True,
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"dimension": dim,
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"store_type": "MemoryOnly",
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},
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},
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}
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response_code = self.vearch.create_space(self.using_db_name, space_config)
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return response_code
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def add_texts(
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self,
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texts: Iterable[str],
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metadatas: Optional[List[dict]] = None,
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**kwargs: Any,
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) -> List[str]:
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"""
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Returns:
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List of ids from adding the texts into the vectorstore.
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"""
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embeddings = None
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if self.embedding_func is not None:
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embeddings = self.embedding_func.embed_documents(list(texts))
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if embeddings is None:
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raise ValueError("embeddings is None")
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if self.flag:
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dbs_list = self.vearch.list_dbs()
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if self.using_db_name not in dbs_list:
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create_db_code = self.vearch.create_db(self.using_db_name)
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if not create_db_code:
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raise ValueError("create db failed!!!")
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space_list = self.vearch.list_spaces(self.using_db_name)
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if self.using_table_name not in space_list:
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create_space_code = self._create_space(len(embeddings[0]))
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if not create_space_code:
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raise ValueError("create space failed!!!")
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docid = []
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if embeddings is not None and metadatas is not None:
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for text, metadata, embed in zip(texts, metadatas, embeddings):
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profiles: dict[str, Any] = {}
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profiles["text"] = text
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profiles["metadata"] = metadata["source"]
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embed_np = np.array(embed)
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profiles["text_embedding"] = {
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"feature": (embed_np / np.linalg.norm(embed_np)).tolist()
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}
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insert_res = self.vearch.insert_one(
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self.using_db_name, self.using_table_name, profiles
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)
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if insert_res["status"] == 200:
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docid.append(insert_res["_id"])
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continue
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else:
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retry_insert = self.vearch.insert_one(
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self.using_db_name, self.using_table_name, profiles
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)
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docid.append(retry_insert["_id"])
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continue
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else:
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table_path = os.path.join(
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self.using_metapath, self.using_table_name + ".schema"
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)
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if not os.path.exists(table_path):
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dim = len(embeddings[0])
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response_code = self._create_table(dim)
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if response_code:
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raise ValueError("create table failed!!!")
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if embeddings is not None and metadatas is not None:
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doc_items = []
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for text, metadata, embed in zip(texts, metadatas, embeddings):
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profiles_v: dict[str, Any] = {}
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profiles_v["text"] = text
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profiles_v["metadata"] = metadata["source"]
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embed_np = np.array(embed)
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profiles_v["text_embedding"] = embed_np / np.linalg.norm(embed_np)
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doc_items.append(profiles_v)
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docid = self.vearch.add(doc_items)
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t_time = 0
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while len(docid) != len(embeddings):
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time.sleep(0.5)
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if t_time > 6:
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break
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t_time += 1
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self.vearch.dump()
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return docid
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def _load(self) -> None:
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"""
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load vearch engine for standalone vearch
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"""
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self.vearch.load()
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@classmethod
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def load_local(
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cls,
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embedding: Embeddings,
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path_or_url: Optional[str] = None,
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table_name: str = _DEFAULT_TABLE_NAME,
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db_name: str = _DEFAULT_CLUSTER_DB_NAME,
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flag: int = _DEFAULT_VERSION,
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**kwargs: Any,
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) -> Vearch:
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"""Load the local specified table of standalone vearch.
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Returns:
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Success or failure of loading the local specified table
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"""
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if not path_or_url:
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raise ValueError("No metadata path!!!")
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if not table_name:
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raise ValueError("No table name!!!")
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table_path = os.path.join(path_or_url, table_name + ".schema")
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if not os.path.exists(table_path):
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raise ValueError("vearch vectorbase table not exist!!!")
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vearch_db = cls(
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embedding_function=embedding,
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path_or_url=path_or_url,
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table_name=table_name,
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db_name=db_name,
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flag=flag,
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)
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vearch_db._load()
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return vearch_db
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def similarity_search(
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self,
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query: str,
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k: int = DEFAULT_TOPN,
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**kwargs: Any,
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) -> List[Document]:
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"""
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Return docs most similar to query.
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"""
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if self.embedding_func is None:
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raise ValueError("embedding_func is None!!!")
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embeddings = self.embedding_func.embed_query(query)
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docs = self.similarity_search_by_vector(embeddings, k)
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return docs
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def similarity_search_by_vector(
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self,
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embedding: List[float],
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k: int = DEFAULT_TOPN,
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**kwargs: Any,
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) -> List[Document]:
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"""The most k similar documents and scores of the specified query.
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Args:
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embeddings: embedding vector of the query.
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k: The k most similar documents to the text query.
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min_score: the score of similar documents to the text query
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Returns:
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The k most similar documents to the specified text query.
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0 is dissimilar, 1 is the most similar.
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"""
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embed = np.array(embedding)
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if self.flag:
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query_data = {
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"query": {
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"sum": [
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{
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"field": "text_embedding",
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"feature": (embed / np.linalg.norm(embed)).tolist(),
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}
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],
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},
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"size": k,
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"fields": ["text", "metadata"],
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}
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query_result = self.vearch.search(
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self.using_db_name, self.using_table_name, query_data
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)
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res = query_result["hits"]["hits"]
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else:
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query_data = {
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"vector": [
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{
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"field": "text_embedding",
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"feature": embed / np.linalg.norm(embed),
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}
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],
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"fields": [],
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"is_brute_search": 1,
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"retrieval_param": {"metric_type": "InnerProduct", "nprobe": 20},
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"topn": k,
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}
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query_result = self.vearch.search(query_data)
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res = query_result[0]["result_items"]
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docs = []
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for item in res:
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content = ""
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meta_data = {}
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if self.flag:
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item = item["_source"]
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for item_key in item:
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if item_key == "text":
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content = item[item_key]
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continue
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if item_key == "metadata":
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meta_data["source"] = item[item_key]
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continue
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docs.append(Document(page_content=content, metadata=meta_data))
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return docs
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def similarity_search_with_score(
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self,
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query: str,
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k: int = DEFAULT_TOPN,
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**kwargs: Any,
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) -> List[Tuple[Document, float]]:
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"""The most k similar documents and scores of the specified query.
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Args:
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embeddings: embedding vector of the query.
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k: The k most similar documents to the text query.
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min_score: the score of similar documents to the text query
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Returns:
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The k most similar documents to the specified text query.
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0 is dissimilar, 1 is the most similar.
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"""
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if self.embedding_func is None:
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raise ValueError("embedding_func is None!!!")
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embeddings = self.embedding_func.embed_query(query)
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embed = np.array(embeddings)
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if self.flag:
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query_data = {
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"query": {
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"sum": [
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{
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"field": "text_embedding",
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"feature": (embed / np.linalg.norm(embed)).tolist(),
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}
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],
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},
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"size": k,
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"fields": ["text_embedding", "text", "metadata"],
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}
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query_result = self.vearch.search(
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self.using_db_name, self.using_table_name, query_data
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)
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res = query_result["hits"]["hits"]
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else:
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query_data = {
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"vector": [
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{
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"field": "text_embedding",
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"feature": embed / np.linalg.norm(embed),
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}
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],
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"fields": [],
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"is_brute_search": 1,
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"retrieval_param": {"metric_type": "InnerProduct", "nprobe": 20},
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"topn": k,
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}
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query_result = self.vearch.search(query_data)
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res = query_result[0]["result_items"]
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results: List[Tuple[Document, float]] = []
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for item in res:
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content = ""
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meta_data = {}
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if self.flag:
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score = item["_score"]
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item = item["_source"]
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for item_key in item:
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if item_key == "text":
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content = item[item_key]
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continue
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if item_key == "metadata":
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meta_data["source"] = item[item_key]
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continue
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if self.flag != 1 and item_key == "score":
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score = item[item_key]
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continue
|
|
tmp_res = (Document(page_content=content, metadata=meta_data), score)
|
|
results.append(tmp_res)
|
|
return results
|
|
|
|
def _similarity_search_with_relevance_scores(
|
|
self,
|
|
query: str,
|
|
k: int = 4,
|
|
**kwargs: Any,
|
|
) -> List[Tuple[Document, float]]:
|
|
return self.similarity_search_with_score(query, k, **kwargs)
|
|
|
|
def delete(
|
|
self,
|
|
ids: Optional[List[str]] = None,
|
|
**kwargs: Any,
|
|
) -> Optional[bool]:
|
|
"""Delete the documents which have the specified ids.
|
|
|
|
Args:
|
|
ids: The ids of the embedding vectors.
|
|
**kwargs: Other keyword arguments that subclasses might use.
|
|
Returns:
|
|
Optional[bool]: True if deletion is successful.
|
|
False otherwise, None if not implemented.
|
|
"""
|
|
|
|
ret: Optional[bool] = None
|
|
tmp_res = []
|
|
if ids is None or ids.__len__() == 0:
|
|
return ret
|
|
for _id in ids:
|
|
if self.flag:
|
|
ret = self.vearch.delete(self.using_db_name, self.using_table_name, _id)
|
|
else:
|
|
ret = self.vearch.del_doc(_id)
|
|
tmp_res.append(ret)
|
|
ret = all(i == 0 for i in tmp_res)
|
|
return ret
|
|
|
|
def get(
|
|
self,
|
|
ids: Optional[List[str]] = None,
|
|
**kwargs: Any,
|
|
) -> Dict[str, Document]:
|
|
"""Return docs according ids.
|
|
|
|
Args:
|
|
ids: The ids of the embedding vectors.
|
|
Returns:
|
|
Documents which satisfy the input conditions.
|
|
"""
|
|
|
|
results: Dict[str, Document] = {}
|
|
if ids is None or ids.__len__() == 0:
|
|
return results
|
|
if self.flag:
|
|
query_data = {"query": {"ids": ids}}
|
|
docs_detail = self.vearch.mget_by_ids(
|
|
self.using_db_name, self.using_table_name, query_data
|
|
)
|
|
for record in docs_detail:
|
|
if record["found"] is False:
|
|
continue
|
|
content = ""
|
|
meta_info = {}
|
|
for field in record["_source"]:
|
|
if field == "text":
|
|
content = record["_source"][field]
|
|
continue
|
|
elif field == "metadata":
|
|
meta_info["source"] = record["_source"][field]
|
|
continue
|
|
results[record["_id"]] = Document(
|
|
page_content=content, metadata=meta_info
|
|
)
|
|
else:
|
|
for id in ids:
|
|
docs_detail = self.vearch.get_doc_by_id(id)
|
|
if docs_detail == {}:
|
|
continue
|
|
content = ""
|
|
meta_info = {}
|
|
for field in docs_detail:
|
|
if field == "text":
|
|
content = docs_detail[field]
|
|
continue
|
|
elif field == "metadata":
|
|
meta_info["source"] = docs_detail[field]
|
|
continue
|
|
results[docs_detail["_id"]] = Document(
|
|
page_content=content, metadata=meta_info
|
|
)
|
|
return results
|