You cannot select more than 25 topics Topics must start with a letter or number, can include dashes ('-') and can be up to 35 characters long.
langchain/libs/partners/together/langchain_together/embeddings.py

270 lines
9.0 KiB
Python

"""Wrapper around Together AI's Embeddings API."""
import logging
import os
import warnings
from typing import (
Any,
Dict,
List,
Literal,
Mapping,
Optional,
Sequence,
Set,
Tuple,
Union,
)
import openai
from langchain_core.embeddings import Embeddings
from langchain_core.pydantic_v1 import (
BaseModel,
Extra,
Field,
SecretStr,
root_validator,
)
from langchain_core.utils import (
convert_to_secret_str,
get_from_dict_or_env,
get_pydantic_field_names,
)
logger = logging.getLogger(__name__)
class TogetherEmbeddings(BaseModel, Embeddings):
"""TogetherEmbeddings embedding model.
To use, set the environment variable `TOGETHER_API_KEY` with your API key or
pass it as a named parameter to the constructor.
Example:
.. code-block:: python
from langchain_together import TogetherEmbeddings
model = TogetherEmbeddings()
"""
client: Any = Field(default=None, exclude=True) #: :meta private:
async_client: Any = Field(default=None, exclude=True) #: :meta private:
model: str = "togethercomputer/m2-bert-80M-8k-retrieval"
"""Embeddings model name to use.
Instead, use 'togethercomputer/m2-bert-80M-8k-retrieval' for example.
"""
dimensions: Optional[int] = None
"""The number of dimensions the resulting output embeddings should have.
Not yet supported.
"""
together_api_key: Optional[SecretStr] = Field(default=None, alias="api_key")
"""API Key for Solar API."""
together_api_base: str = Field(
default="https://api.together.ai/v1/", alias="base_url"
)
"""Endpoint URL to use."""
embedding_ctx_length: int = 4096
"""The maximum number of tokens to embed at once.
Not yet supported.
"""
allowed_special: Union[Literal["all"], Set[str]] = set()
"""Not yet supported."""
disallowed_special: Union[Literal["all"], Set[str], Sequence[str]] = "all"
"""Not yet supported."""
chunk_size: int = 1000
"""Maximum number of texts to embed in each batch.
Not yet supported.
"""
max_retries: int = 2
"""Maximum number of retries to make when generating."""
request_timeout: Optional[Union[float, Tuple[float, float], Any]] = Field(
default=None, alias="timeout"
)
"""Timeout for requests to Together embedding API. Can be float, httpx.Timeout or
None."""
show_progress_bar: bool = False
"""Whether to show a progress bar when embedding.
Not yet supported.
"""
model_kwargs: Dict[str, Any] = Field(default_factory=dict)
"""Holds any model parameters valid for `create` call not explicitly specified."""
skip_empty: bool = False
"""Whether to skip empty strings when embedding or raise an error.
Defaults to not skipping.
Not yet supported."""
default_headers: Union[Mapping[str, str], None] = None
default_query: Union[Mapping[str, object], None] = None
# Configure a custom httpx client. See the
# [httpx documentation](https://www.python-httpx.org/api/#client) for more details.
http_client: Union[Any, None] = None
"""Optional httpx.Client. Only used for sync invocations. Must specify
http_async_client as well if you'd like a custom client for async invocations.
"""
http_async_client: Union[Any, None] = None
"""Optional httpx.AsyncClient. Only used for async invocations. Must specify
http_client as well if you'd like a custom client for sync invocations."""
class Config:
extra = Extra.forbid
allow_population_by_field_name = True
@root_validator(pre=True)
def build_extra(cls, values: Dict[str, Any]) -> Dict[str, Any]:
"""Build extra kwargs from additional params that were passed in."""
all_required_field_names = get_pydantic_field_names(cls)
extra = values.get("model_kwargs", {})
for field_name in list(values):
if field_name in extra:
raise ValueError(f"Found {field_name} supplied twice.")
if field_name not in all_required_field_names:
warnings.warn(
f"""WARNING! {field_name} is not default parameter.
{field_name} was transferred to model_kwargs.
Please confirm that {field_name} is what you intended."""
)
extra[field_name] = values.pop(field_name)
invalid_model_kwargs = all_required_field_names.intersection(extra.keys())
if invalid_model_kwargs:
raise ValueError(
f"Parameters {invalid_model_kwargs} should be specified explicitly. "
f"Instead they were passed in as part of `model_kwargs` parameter."
)
values["model_kwargs"] = extra
return values
@root_validator()
def validate_environment(cls, values: Dict) -> Dict:
"""Validate that api key and python package exists in environment."""
together_api_key = get_from_dict_or_env(
values, "together_api_key", "TOGETHER_API_KEY"
)
values["together_api_key"] = (
convert_to_secret_str(together_api_key) if together_api_key else None
)
values["together_api_base"] = values["together_api_base"] or os.getenv(
"TOGETHER_API_BASE"
)
client_params = {
"api_key": (
values["together_api_key"].get_secret_value()
if values["together_api_key"]
else None
),
"base_url": values["together_api_base"],
"timeout": values["request_timeout"],
"max_retries": values["max_retries"],
"default_headers": values["default_headers"],
"default_query": values["default_query"],
}
if not values.get("client"):
sync_specific = (
{"http_client": values["http_client"]} if values["http_client"] else {}
)
values["client"] = openai.OpenAI(
**client_params, **sync_specific
).embeddings
if not values.get("async_client"):
async_specific = (
{"http_client": values["http_async_client"]}
if values["http_async_client"]
else {}
)
values["async_client"] = openai.AsyncOpenAI(
**client_params, **async_specific
).embeddings
return values
@property
def _invocation_params(self) -> Dict[str, Any]:
params: Dict = {"model": self.model, **self.model_kwargs}
if self.dimensions is not None:
params["dimensions"] = self.dimensions
return params
def embed_documents(self, texts: List[str]) -> List[List[float]]:
"""Embed a list of document texts using passage model.
Args:
texts: The list of texts to embed.
Returns:
List of embeddings, one for each text.
"""
embeddings = []
params = self._invocation_params
params["model"] = params["model"]
for text in texts:
response = self.client.create(input=text, **params)
if not isinstance(response, dict):
response = response.model_dump()
embeddings.extend([i["embedding"] for i in response["data"]])
return embeddings
def embed_query(self, text: str) -> List[float]:
"""Embed query text using query model.
Args:
text: The text to embed.
Returns:
Embedding for the text.
"""
params = self._invocation_params
params["model"] = params["model"]
response = self.client.create(input=text, **params)
if not isinstance(response, dict):
response = response.model_dump()
return response["data"][0]["embedding"]
async def aembed_documents(self, texts: List[str]) -> List[List[float]]:
"""Embed a list of document texts using passage model asynchronously.
Args:
texts: The list of texts to embed.
Returns:
List of embeddings, one for each text.
"""
embeddings = []
params = self._invocation_params
params["model"] = params["model"]
for text in texts:
response = await self.async_client.create(input=text, **params)
if not isinstance(response, dict):
response = response.model_dump()
embeddings.extend([i["embedding"] for i in response["data"]])
return embeddings
async def aembed_query(self, text: str) -> List[float]:
"""Asynchronous Embed query text using query model.
Args:
text: The text to embed.
Returns:
Embedding for the text.
"""
params = self._invocation_params
params["model"] = params["model"]
response = await self.async_client.create(input=text, **params)
if not isinstance(response, dict):
response = response.model_dump()
return response["data"][0]["embedding"]