llama-stack/llama_stack/providers/remote/inference/bedrock/bedrock.py
Yuan Tang 34ab7a3b6c
Fix precommit check after moving to ruff (#927)
Lint check in main branch is failing. This fixes the lint check after we
moved to ruff in https://github.com/meta-llama/llama-stack/pull/921. We
need to move to a `ruff.toml` file as well as fixing and ignoring some
additional checks.

Signed-off-by: Yuan Tang <terrytangyuan@gmail.com>
2025-02-02 06:46:45 -08:00

199 lines
7.1 KiB
Python

# Copyright (c) Meta Platforms, Inc. and affiliates.
# All rights reserved.
#
# This source code is licensed under the terms described in the LICENSE file in
# the root directory of this source tree.
import json
from typing import AsyncGenerator, AsyncIterator, Dict, List, Optional, Union
from botocore.client import BaseClient
from llama_models.datatypes import CoreModelId
from llama_models.llama3.api.chat_format import ChatFormat
from llama_models.llama3.api.tokenizer import Tokenizer
from llama_stack.apis.common.content_types import InterleavedContent
from llama_stack.apis.inference import (
ChatCompletionRequest,
ChatCompletionResponse,
ChatCompletionResponseStreamChunk,
EmbeddingsResponse,
Inference,
LogProbConfig,
Message,
ResponseFormat,
SamplingParams,
ToolChoice,
ToolDefinition,
ToolPromptFormat,
)
from llama_stack.providers.remote.inference.bedrock.config import BedrockConfig
from llama_stack.providers.utils.bedrock.client import create_bedrock_client
from llama_stack.providers.utils.inference.model_registry import (
build_model_alias,
ModelRegistryHelper,
)
from llama_stack.providers.utils.inference.openai_compat import (
get_sampling_strategy_options,
OpenAICompatCompletionChoice,
OpenAICompatCompletionResponse,
process_chat_completion_response,
process_chat_completion_stream_response,
)
from llama_stack.providers.utils.inference.prompt_adapter import (
chat_completion_request_to_prompt,
content_has_media,
interleaved_content_as_str,
)
MODEL_ALIASES = [
build_model_alias(
"meta.llama3-1-8b-instruct-v1:0",
CoreModelId.llama3_1_8b_instruct.value,
),
build_model_alias(
"meta.llama3-1-70b-instruct-v1:0",
CoreModelId.llama3_1_70b_instruct.value,
),
build_model_alias(
"meta.llama3-1-405b-instruct-v1:0",
CoreModelId.llama3_1_405b_instruct.value,
),
]
class BedrockInferenceAdapter(ModelRegistryHelper, Inference):
def __init__(self, config: BedrockConfig) -> None:
ModelRegistryHelper.__init__(self, MODEL_ALIASES)
self._config = config
self._client = create_bedrock_client(config)
self.formatter = ChatFormat(Tokenizer.get_instance())
@property
def client(self) -> BaseClient:
return self._client
async def initialize(self) -> None:
pass
async def shutdown(self) -> None:
self.client.close()
async def completion(
self,
model_id: str,
content: InterleavedContent,
sampling_params: Optional[SamplingParams] = SamplingParams(),
response_format: Optional[ResponseFormat] = None,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> AsyncGenerator:
raise NotImplementedError()
async def chat_completion(
self,
model_id: str,
messages: List[Message],
sampling_params: Optional[SamplingParams] = SamplingParams(),
response_format: Optional[ResponseFormat] = None,
tools: Optional[List[ToolDefinition]] = None,
tool_choice: Optional[ToolChoice] = ToolChoice.auto,
tool_prompt_format: Optional[ToolPromptFormat] = None,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> Union[ChatCompletionResponse, AsyncIterator[ChatCompletionResponseStreamChunk]]:
model = await self.model_store.get_model(model_id)
request = ChatCompletionRequest(
model=model.provider_resource_id,
messages=messages,
sampling_params=sampling_params,
tools=tools or [],
tool_choice=tool_choice,
tool_prompt_format=tool_prompt_format,
response_format=response_format,
stream=stream,
logprobs=logprobs,
)
if stream:
return self._stream_chat_completion(request)
else:
return await self._nonstream_chat_completion(request)
async def _nonstream_chat_completion(self, request: ChatCompletionRequest) -> ChatCompletionResponse:
params = await self._get_params_for_chat_completion(request)
res = self.client.invoke_model(**params)
chunk = next(res["body"])
result = json.loads(chunk.decode("utf-8"))
choice = OpenAICompatCompletionChoice(
finish_reason=result["stop_reason"],
text=result["generation"],
)
response = OpenAICompatCompletionResponse(choices=[choice])
return process_chat_completion_response(response, self.formatter)
async def _stream_chat_completion(self, request: ChatCompletionRequest) -> AsyncGenerator:
params = await self._get_params_for_chat_completion(request)
res = self.client.invoke_model_with_response_stream(**params)
event_stream = res["body"]
async def _generate_and_convert_to_openai_compat():
for chunk in event_stream:
chunk = chunk["chunk"]["bytes"]
result = json.loads(chunk.decode("utf-8"))
choice = OpenAICompatCompletionChoice(
finish_reason=result["stop_reason"],
text=result["generation"],
)
yield OpenAICompatCompletionResponse(choices=[choice])
stream = _generate_and_convert_to_openai_compat()
async for chunk in process_chat_completion_stream_response(stream, self.formatter):
yield chunk
async def _get_params_for_chat_completion(self, request: ChatCompletionRequest) -> Dict:
bedrock_model = request.model
sampling_params = request.sampling_params
options = get_sampling_strategy_options(sampling_params)
if sampling_params.max_tokens:
options["max_gen_len"] = sampling_params.max_tokens
if sampling_params.repetition_penalty > 0:
options["repetition_penalty"] = sampling_params.repetition_penalty
prompt = await chat_completion_request_to_prompt(request, self.get_llama_model(request.model), self.formatter)
return {
"modelId": bedrock_model,
"body": json.dumps(
{
"prompt": prompt,
**options,
}
),
}
async def embeddings(
self,
model_id: str,
contents: List[InterleavedContent],
) -> EmbeddingsResponse:
model = await self.model_store.get_model(model_id)
embeddings = []
for content in contents:
assert not content_has_media(content), "Bedrock does not support media for embeddings"
input_text = interleaved_content_as_str(content)
input_body = {"inputText": input_text}
body = json.dumps(input_body)
response = self.client.invoke_model(
body=body,
modelId=model.provider_resource_id,
accept="application/json",
contentType="application/json",
)
response_body = json.loads(response.get("body").read())
embeddings.append(response_body.get("embedding"))
return EmbeddingsResponse(embeddings=embeddings)