mirror of
https://github.com/hwchase17/langchain
synced 2024-11-02 09:40:22 +00:00
c8391d4ff1
Fix of YandexGPT embeddings. The current version uses a single `model_name` for queries and documents, essentially making the `embed_documents` and `embed_query` methods the same. Yandex has a different endpoint (`model_uri`) for encoding documents, see [this](https://yandex.cloud/en/docs/yandexgpt/concepts/embeddings). The bug may impact retrievers built with `YandexGPTEmbeddings` (for instance FAISS database as retriever) since they use both `embed_documents` and `embed_query`. A simple snippet to test the behaviour: ```python from langchain_community.embeddings.yandex import YandexGPTEmbeddings embeddings = YandexGPTEmbeddings() q_emb = embeddings.embed_query('hello world') doc_emb = embeddings.embed_documents(['hello world', 'hello world']) q_emb == doc_emb[0] ``` The response is `True` with the current version and `False` with the changes I made. Twitter: @egor_krash --------- Co-authored-by: Bagatur <22008038+baskaryan@users.noreply.github.com> Co-authored-by: Bagatur <baskaryan@gmail.com>
204 lines
7.4 KiB
Python
204 lines
7.4 KiB
Python
"""Wrapper around YandexGPT embedding models."""
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from __future__ import annotations
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import logging
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import time
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from typing import Any, Callable, Dict, List
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from langchain_core.embeddings import Embeddings
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from langchain_core.pydantic_v1 import BaseModel, Field, SecretStr, root_validator
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from langchain_core.utils import convert_to_secret_str, get_from_dict_or_env
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from tenacity import (
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before_sleep_log,
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retry,
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retry_if_exception_type,
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stop_after_attempt,
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wait_exponential,
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)
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logger = logging.getLogger(__name__)
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class YandexGPTEmbeddings(BaseModel, Embeddings):
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"""YandexGPT Embeddings models.
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To use, you should have the ``yandexcloud`` python package installed.
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There are two authentication options for the service account
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with the ``ai.languageModels.user`` role:
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- You can specify the token in a constructor parameter `iam_token`
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or in an environment variable `YC_IAM_TOKEN`.
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- You can specify the key in a constructor parameter `api_key`
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or in an environment variable `YC_API_KEY`.
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To use the default model specify the folder ID in a parameter `folder_id`
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or in an environment variable `YC_FOLDER_ID`.
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Example:
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.. code-block:: python
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from langchain_community.embeddings.yandex import YandexGPTEmbeddings
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embeddings = YandexGPTEmbeddings(iam_token="t1.9eu...", folder_id=<folder-id>)
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""" # noqa: E501
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iam_token: SecretStr = "" # type: ignore[assignment]
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"""Yandex Cloud IAM token for service account
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with the `ai.languageModels.user` role"""
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api_key: SecretStr = "" # type: ignore[assignment]
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"""Yandex Cloud Api Key for service account
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with the `ai.languageModels.user` role"""
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model_uri: str = Field(default="", alias="query_model_uri")
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"""Query model uri to use."""
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doc_model_uri: str = ""
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"""Doc model uri to use."""
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folder_id: str = ""
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"""Yandex Cloud folder ID"""
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doc_model_name: str = "text-search-doc"
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"""Doc model name to use."""
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model_name: str = Field(default="text-search-query", alias="query_model_name")
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"""Query model name to use."""
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model_version: str = "latest"
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"""Model version to use."""
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url: str = "llm.api.cloud.yandex.net:443"
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"""The url of the API."""
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max_retries: int = 6
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"""Maximum number of retries to make when generating."""
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sleep_interval: float = 0.0
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"""Delay between API requests"""
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class Config:
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"""Configuration for this pydantic object."""
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allow_population_by_field_name = True
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@root_validator()
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def validate_environment(cls, values: Dict) -> Dict:
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"""Validate that iam token exists in environment."""
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iam_token = convert_to_secret_str(
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get_from_dict_or_env(values, "iam_token", "YC_IAM_TOKEN", "")
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)
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values["iam_token"] = iam_token
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api_key = convert_to_secret_str(
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get_from_dict_or_env(values, "api_key", "YC_API_KEY", "")
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)
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values["api_key"] = api_key
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folder_id = get_from_dict_or_env(values, "folder_id", "YC_FOLDER_ID", "")
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values["folder_id"] = folder_id
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if api_key.get_secret_value() == "" and iam_token.get_secret_value() == "":
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raise ValueError("Either 'YC_API_KEY' or 'YC_IAM_TOKEN' must be provided.")
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if values["iam_token"]:
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values["_grpc_metadata"] = [
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("authorization", f"Bearer {values['iam_token'].get_secret_value()}")
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]
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if values["folder_id"]:
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values["_grpc_metadata"].append(("x-folder-id", values["folder_id"]))
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else:
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values["_grpc_metadata"] = (
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("authorization", f"Api-Key {values['api_key'].get_secret_value()}"),
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)
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if not values.get("doc_model_uri"):
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if values["folder_id"] == "":
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raise ValueError("'doc_model_uri' or 'folder_id' must be provided.")
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values[
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"doc_model_uri"
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] = f"emb://{values['folder_id']}/{values['doc_model_name']}/{values['model_version']}" # noqa: E501
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if not values.get("model_uri"):
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if values["folder_id"] == "":
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raise ValueError("'model_uri' or 'folder_id' must be provided.")
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values[
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"model_uri"
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] = f"emb://{values['folder_id']}/{values['model_name']}/{values['model_version']}" # noqa: E501
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return values
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def embed_documents(self, texts: List[str]) -> List[List[float]]:
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"""Embed documents using a YandexGPT embeddings models.
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Args:
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texts: The list of texts to embed.
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Returns:
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List of embeddings, one for each text.
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"""
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return _embed_with_retry(self, texts=texts)
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def embed_query(self, text: str) -> List[float]:
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"""Embed a query using a YandexGPT embeddings models.
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Args:
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text: The text to embed.
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Returns:
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Embeddings for the text.
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"""
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return _embed_with_retry(self, texts=[text], embed_query=True)[0]
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def _create_retry_decorator(llm: YandexGPTEmbeddings) -> Callable[[Any], Any]:
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from grpc import RpcError
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min_seconds = 1
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max_seconds = 60
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return retry(
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reraise=True,
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stop=stop_after_attempt(llm.max_retries),
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wait=wait_exponential(multiplier=1, min=min_seconds, max=max_seconds),
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retry=(retry_if_exception_type((RpcError))),
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before_sleep=before_sleep_log(logger, logging.WARNING),
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)
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def _embed_with_retry(llm: YandexGPTEmbeddings, **kwargs: Any) -> Any:
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"""Use tenacity to retry the embedding call."""
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retry_decorator = _create_retry_decorator(llm)
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@retry_decorator
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def _completion_with_retry(**_kwargs: Any) -> Any:
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return _make_request(llm, **_kwargs)
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return _completion_with_retry(**kwargs)
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def _make_request(self: YandexGPTEmbeddings, texts: List[str], **kwargs): # type: ignore[no-untyped-def]
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try:
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import grpc
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try:
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from yandex.cloud.ai.foundation_models.v1.embedding.embedding_service_pb2 import ( # noqa: E501
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TextEmbeddingRequest,
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)
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from yandex.cloud.ai.foundation_models.v1.embedding.embedding_service_pb2_grpc import ( # noqa: E501
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EmbeddingsServiceStub,
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)
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except ModuleNotFoundError:
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from yandex.cloud.ai.foundation_models.v1.foundation_models_service_pb2 import ( # noqa: E501
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TextEmbeddingRequest,
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)
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from yandex.cloud.ai.foundation_models.v1.foundation_models_service_pb2_grpc import ( # noqa: E501
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EmbeddingsServiceStub,
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)
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except ImportError as e:
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raise ImportError(
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"Please install YandexCloud SDK with `pip install yandexcloud` \
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or upgrade it to recent version."
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) from e
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result = []
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channel_credentials = grpc.ssl_channel_credentials()
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channel = grpc.secure_channel(self.url, channel_credentials)
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# Use the query model if embed_query is True
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if kwargs.get("embed_query"):
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model_uri = self.model_uri
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else:
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model_uri = self.doc_model_uri
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for text in texts:
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request = TextEmbeddingRequest(model_uri=model_uri, text=text)
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stub = EmbeddingsServiceStub(channel)
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res = stub.TextEmbedding(request, metadata=self._grpc_metadata) # type: ignore[attr-defined]
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result.append(list(res.embedding))
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time.sleep(self.sleep_interval)
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return result
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