langchain/libs/community/langchain_community/llms/sagemaker_endpoint.py
Eugene Yurtsev bf5193bb99
community[patch]: Upgrade pydantic extra (#25185)
Upgrade to using a literal for specifying the extra which is the
recommended approach in pydantic 2.

This works correctly also in pydantic v1.

```python
from pydantic.v1 import BaseModel

class Foo(BaseModel, extra="forbid"):
    x: int

Foo(x=5, y=1)
```

And 


```python
from pydantic.v1 import BaseModel

class Foo(BaseModel):
    x: int

    class Config:
      extra = "forbid"

Foo(x=5, y=1)
```


## Enum -> literal using grit pattern:

```
engine marzano(0.1)
language python
or {
    `extra=Extra.allow` => `extra="allow"`,
    `extra=Extra.forbid` => `extra="forbid"`,
    `extra=Extra.ignore` => `extra="ignore"`
}
```

Resorted attributes in config and removed doc-string in case we will
need to deal with going back and forth between pydantic v1 and v2 during
the 0.3 release. (This will reduce merge conflicts.)


## Sort attributes in Config:

```
engine marzano(0.1)
language python


function sort($values) js {
    return $values.text.split(',').sort().join("\n");
}


class_definition($name, $body) as $C where {
    $name <: `Config`,
    $body <: block($statements),
    $values = [],
    $statements <: some bubble($values) assignment() as $A where {
        $values += $A
    },
    $body => sort($values),
}

```
2024-08-08 17:20:39 +00:00

370 lines
13 KiB
Python

"""Sagemaker InvokeEndpoint API."""
import io
import json
from abc import abstractmethod
from typing import Any, Dict, Generic, Iterator, List, Mapping, Optional, TypeVar, Union
from langchain_core.callbacks import CallbackManagerForLLMRun
from langchain_core.language_models.llms import LLM
from langchain_core.utils import pre_init
from langchain_community.llms.utils import enforce_stop_tokens
INPUT_TYPE = TypeVar("INPUT_TYPE", bound=Union[str, List[str]])
OUTPUT_TYPE = TypeVar("OUTPUT_TYPE", bound=Union[str, List[List[float]], Iterator])
class LineIterator:
"""Parse the byte stream input.
The output of the model will be in the following format:
b'{"outputs": [" a"]}\n'
b'{"outputs": [" challenging"]}\n'
b'{"outputs": [" problem"]}\n'
...
While usually each PayloadPart event from the event stream will
contain a byte array with a full json, this is not guaranteed
and some of the json objects may be split acrossPayloadPart events.
For example:
{'PayloadPart': {'Bytes': b'{"outputs": '}}
{'PayloadPart': {'Bytes': b'[" problem"]}\n'}}
This class accounts for this by concatenating bytes written via the 'write' function
and then exposing a method which will return lines (ending with a '\n' character)
within the buffer via the 'scan_lines' function.
It maintains the position of the last read position to ensure
that previous bytes are not exposed again.
For more details see:
https://aws.amazon.com/blogs/machine-learning/elevating-the-generative-ai-experience-introducing-streaming-support-in-amazon-sagemaker-hosting/
"""
def __init__(self, stream: Any) -> None:
self.byte_iterator = iter(stream)
self.buffer = io.BytesIO()
self.read_pos = 0
def __iter__(self) -> "LineIterator":
return self
def __next__(self) -> Any:
while True:
self.buffer.seek(self.read_pos)
line = self.buffer.readline()
if line and line[-1] == ord("\n"):
self.read_pos += len(line)
return line[:-1]
try:
chunk = next(self.byte_iterator)
except StopIteration:
if self.read_pos < self.buffer.getbuffer().nbytes:
continue
raise
if "PayloadPart" not in chunk:
# Unknown Event Type
continue
self.buffer.seek(0, io.SEEK_END)
self.buffer.write(chunk["PayloadPart"]["Bytes"])
class ContentHandlerBase(Generic[INPUT_TYPE, OUTPUT_TYPE]):
"""Handler class to transform input from LLM to a
format that SageMaker endpoint expects.
Similarly, the class handles transforming output from the
SageMaker endpoint to a format that LLM class expects.
"""
"""
Example:
.. code-block:: python
class ContentHandler(ContentHandlerBase):
content_type = "application/json"
accepts = "application/json"
def transform_input(self, prompt: str, model_kwargs: Dict) -> bytes:
input_str = json.dumps({prompt: prompt, **model_kwargs})
return input_str.encode('utf-8')
def transform_output(self, output: bytes) -> str:
response_json = json.loads(output.read().decode("utf-8"))
return response_json[0]["generated_text"]
"""
content_type: Optional[str] = "text/plain"
"""The MIME type of the input data passed to endpoint"""
accepts: Optional[str] = "text/plain"
"""The MIME type of the response data returned from endpoint"""
@abstractmethod
def transform_input(self, prompt: INPUT_TYPE, model_kwargs: Dict) -> bytes:
"""Transforms the input to a format that model can accept
as the request Body. Should return bytes or seekable file
like object in the format specified in the content_type
request header.
"""
@abstractmethod
def transform_output(self, output: bytes) -> OUTPUT_TYPE:
"""Transforms the output from the model to string that
the LLM class expects.
"""
class LLMContentHandler(ContentHandlerBase[str, str]):
"""Content handler for LLM class."""
class SagemakerEndpoint(LLM):
"""Sagemaker Inference Endpoint models.
To use, you must supply the endpoint name from your deployed
Sagemaker model & the region where it is deployed.
To authenticate, the AWS client uses the following methods to
automatically load credentials:
https://boto3.amazonaws.com/v1/documentation/api/latest/guide/credentials.html
If a specific credential profile should be used, you must pass
the name of the profile from the ~/.aws/credentials file that is to be used.
Make sure the credentials / roles used have the required policies to
access the Sagemaker endpoint.
See: https://docs.aws.amazon.com/IAM/latest/UserGuide/access_policies.html
"""
"""
Args:
region_name: The aws region e.g., `us-west-2`.
Fallsback to AWS_DEFAULT_REGION env variable
or region specified in ~/.aws/config.
credentials_profile_name: The name of the profile in the ~/.aws/credentials
or ~/.aws/config files, which has either access keys or role information
specified. If not specified, the default credential profile or, if on an
EC2 instance, credentials from IMDS will be used.
client: boto3 client for Sagemaker Endpoint
content_handler: Implementation for model specific LLMContentHandler
Example:
.. code-block:: python
from langchain_community.llms import SagemakerEndpoint
endpoint_name = (
"my-endpoint-name"
)
region_name = (
"us-west-2"
)
credentials_profile_name = (
"default"
)
se = SagemakerEndpoint(
endpoint_name=endpoint_name,
region_name=region_name,
credentials_profile_name=credentials_profile_name
)
#Use with boto3 client
client = boto3.client(
"sagemaker-runtime",
region_name=region_name
)
se = SagemakerEndpoint(
endpoint_name=endpoint_name,
client=client
)
"""
client: Any = None
"""Boto3 client for sagemaker runtime"""
endpoint_name: str = ""
"""The name of the endpoint from the deployed Sagemaker model.
Must be unique within an AWS Region."""
region_name: str = ""
"""The aws region where the Sagemaker model is deployed, eg. `us-west-2`."""
credentials_profile_name: Optional[str] = None
"""The name of the profile in the ~/.aws/credentials or ~/.aws/config files, which
has either access keys or role information specified.
If not specified, the default credential profile or, if on an EC2 instance,
credentials from IMDS will be used.
See: https://boto3.amazonaws.com/v1/documentation/api/latest/guide/credentials.html
"""
content_handler: LLMContentHandler
"""The content handler class that provides an input and
output transform functions to handle formats between LLM
and the endpoint.
"""
streaming: bool = False
"""Whether to stream the results."""
"""
Example:
.. code-block:: python
from langchain_community.llms.sagemaker_endpoint import LLMContentHandler
class ContentHandler(LLMContentHandler):
content_type = "application/json"
accepts = "application/json"
def transform_input(self, prompt: str, model_kwargs: Dict) -> bytes:
input_str = json.dumps({prompt: prompt, **model_kwargs})
return input_str.encode('utf-8')
def transform_output(self, output: bytes) -> str:
response_json = json.loads(output.read().decode("utf-8"))
return response_json[0]["generated_text"]
"""
model_kwargs: Optional[Dict] = None
"""Keyword arguments to pass to the model."""
endpoint_kwargs: Optional[Dict] = None
"""Optional attributes passed to the invoke_endpoint
function. See `boto3`_. docs for more info.
.. _boto3: <https://boto3.amazonaws.com/v1/documentation/api/latest/index.html>
"""
class Config:
extra = "forbid"
@pre_init
def validate_environment(cls, values: Dict) -> Dict:
"""Dont do anything if client provided externally"""
if values.get("client") is not None:
return values
"""Validate that AWS credentials to and python package exists in environment."""
try:
import boto3
try:
if values["credentials_profile_name"] is not None:
session = boto3.Session(
profile_name=values["credentials_profile_name"]
)
else:
# use default credentials
session = boto3.Session()
values["client"] = session.client(
"sagemaker-runtime", region_name=values["region_name"]
)
except Exception as e:
raise ValueError(
"Could not load credentials to authenticate with AWS client. "
"Please check that credentials in the specified "
"profile name are valid."
) from e
except ImportError:
raise ImportError(
"Could not import boto3 python package. "
"Please install it with `pip install boto3`."
)
return values
@property
def _identifying_params(self) -> Mapping[str, Any]:
"""Get the identifying parameters."""
_model_kwargs = self.model_kwargs or {}
return {
**{"endpoint_name": self.endpoint_name},
**{"model_kwargs": _model_kwargs},
}
@property
def _llm_type(self) -> str:
"""Return type of llm."""
return "sagemaker_endpoint"
def _call(
self,
prompt: str,
stop: Optional[List[str]] = None,
run_manager: Optional[CallbackManagerForLLMRun] = None,
**kwargs: Any,
) -> str:
"""Call out to Sagemaker inference endpoint.
Args:
prompt: The prompt to pass into the model.
stop: Optional list of stop words to use when generating.
Returns:
The string generated by the model.
Example:
.. code-block:: python
response = se("Tell me a joke.")
"""
_model_kwargs = self.model_kwargs or {}
_model_kwargs = {**_model_kwargs, **kwargs}
_endpoint_kwargs = self.endpoint_kwargs or {}
body = self.content_handler.transform_input(prompt, _model_kwargs)
content_type = self.content_handler.content_type
accepts = self.content_handler.accepts
if self.streaming and run_manager:
try:
resp = self.client.invoke_endpoint_with_response_stream(
EndpointName=self.endpoint_name,
Body=body,
ContentType=self.content_handler.content_type,
**_endpoint_kwargs,
)
iterator = LineIterator(resp["Body"])
current_completion: str = ""
for line in iterator:
resp = json.loads(line)
resp_output = resp.get("outputs")[0]
if stop is not None:
# Uses same approach as below
resp_output = enforce_stop_tokens(resp_output, stop)
current_completion += resp_output
run_manager.on_llm_new_token(resp_output)
return current_completion
except Exception as e:
raise ValueError(f"Error raised by streaming inference endpoint: {e}")
else:
try:
response = self.client.invoke_endpoint(
EndpointName=self.endpoint_name,
Body=body,
ContentType=content_type,
Accept=accepts,
**_endpoint_kwargs,
)
except Exception as e:
raise ValueError(f"Error raised by inference endpoint: {e}")
text = self.content_handler.transform_output(response["Body"])
if stop is not None:
# This is a bit hacky, but I can't figure out a better way to enforce
# stop tokens when making calls to the sagemaker endpoint.
text = enforce_stop_tokens(text, stop)
return text