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langchain/libs/community/langchain_community/embeddings/mosaicml.py

148 lines
5.0 KiB
Python

from typing import Any, Dict, List, Mapping, Optional, Tuple
import requests
from langchain_core.embeddings import Embeddings
from langchain_core.pydantic_v1 import BaseModel, Extra, root_validator
from langchain_core.utils import get_from_dict_or_env
class MosaicMLInstructorEmbeddings(BaseModel, Embeddings):
"""MosaicML embedding service.
To use, you should have the
environment variable ``MOSAICML_API_TOKEN`` set with your API token, or pass
it as a named parameter to the constructor.
Example:
.. code-block:: python
from langchain_community.llms import MosaicMLInstructorEmbeddings
endpoint_url = (
"https://models.hosted-on.mosaicml.hosting/instructor-large/v1/predict"
)
mosaic_llm = MosaicMLInstructorEmbeddings(
endpoint_url=endpoint_url,
mosaicml_api_token="my-api-key"
)
"""
endpoint_url: str = (
"https://models.hosted-on.mosaicml.hosting/instructor-xl/v1/predict"
)
"""Endpoint URL to use."""
embed_instruction: str = "Represent the document for retrieval: "
"""Instruction used to embed documents."""
query_instruction: str = (
"Represent the question for retrieving supporting documents: "
)
"""Instruction used to embed the query."""
retry_sleep: float = 1.0
"""How long to try sleeping for if a rate limit is encountered"""
mosaicml_api_token: Optional[str] = None
class Config:
"""Configuration for this pydantic object."""
extra = Extra.forbid
@root_validator()
def validate_environment(cls, values: Dict) -> Dict:
"""Validate that api key and python package exists in environment."""
mosaicml_api_token = get_from_dict_or_env(
values, "mosaicml_api_token", "MOSAICML_API_TOKEN"
)
values["mosaicml_api_token"] = mosaicml_api_token
return values
@property
def _identifying_params(self) -> Mapping[str, Any]:
"""Get the identifying parameters."""
return {"endpoint_url": self.endpoint_url}
def _embed(
self, input: List[Tuple[str, str]], is_retry: bool = False
) -> List[List[float]]:
payload = {"inputs": input}
# HTTP headers for authorization
headers = {
"Authorization": f"{self.mosaicml_api_token}",
"Content-Type": "application/json",
}
# send request
try:
response = requests.post(self.endpoint_url, headers=headers, json=payload)
except requests.exceptions.RequestException as e:
raise ValueError(f"Error raised by inference endpoint: {e}")
try:
if response.status_code == 429:
if not is_retry:
import time
time.sleep(self.retry_sleep)
return self._embed(input, is_retry=True)
raise ValueError(
f"Error raised by inference API: rate limit exceeded.\nResponse: "
f"{response.text}"
)
parsed_response = response.json()
# The inference API has changed a couple of times, so we add some handling
# to be robust to multiple response formats.
if isinstance(parsed_response, dict):
output_keys = ["data", "output", "outputs"]
for key in output_keys:
if key in parsed_response:
output_item = parsed_response[key]
break
else:
raise ValueError(
f"No key data or output in response: {parsed_response}"
)
if isinstance(output_item, list) and isinstance(output_item[0], list):
embeddings = output_item
else:
embeddings = [output_item]
else:
raise ValueError(f"Unexpected response type: {parsed_response}")
except requests.exceptions.JSONDecodeError as e:
raise ValueError(
f"Error raised by inference API: {e}.\nResponse: {response.text}"
)
return embeddings
def embed_documents(self, texts: List[str]) -> List[List[float]]:
"""Embed documents using a MosaicML deployed instructor embedding model.
Args:
texts: The list of texts to embed.
Returns:
List of embeddings, one for each text.
"""
instruction_pairs = [(self.embed_instruction, text) for text in texts]
embeddings = self._embed(instruction_pairs)
return embeddings
def embed_query(self, text: str) -> List[float]:
"""Embed a query using a MosaicML deployed instructor embedding model.
Args:
text: The text to embed.
Returns:
Embeddings for the text.
"""
instruction_pair = (self.query_instruction, text)
embedding = self._embed([instruction_pair])[0]
return embedding