impls -> inline, adapters -> remote (#381)

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Ashwin Bharambe 2024-11-06 14:54:05 -08:00 committed by GitHub
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# 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.
from typing import * # noqa: F403
from botocore.client import BaseClient
from llama_models.llama3.api.chat_format import ChatFormat
from llama_models.llama3.api.tokenizer import Tokenizer
from llama_stack.providers.utils.inference.model_registry import ModelRegistryHelper
from llama_stack.apis.inference import * # noqa: F403
from llama_stack.providers.remote.inference.bedrock.config import BedrockConfig
from llama_stack.providers.utils.bedrock.client import create_bedrock_client
BEDROCK_SUPPORTED_MODELS = {
"Llama3.1-8B-Instruct": "meta.llama3-1-8b-instruct-v1:0",
"Llama3.1-70B-Instruct": "meta.llama3-1-70b-instruct-v1:0",
"Llama3.1-405B-Instruct": "meta.llama3-1-405b-instruct-v1:0",
}
# NOTE: this is not quite tested after the recent refactors
class BedrockInferenceAdapter(ModelRegistryHelper, Inference):
def __init__(self, config: BedrockConfig) -> None:
ModelRegistryHelper.__init__(
self, stack_to_provider_models_map=BEDROCK_SUPPORTED_MODELS
)
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: str,
content: InterleavedTextMedia,
sampling_params: Optional[SamplingParams] = SamplingParams(),
response_format: Optional[ResponseFormat] = None,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> AsyncGenerator:
raise NotImplementedError()
@staticmethod
def _bedrock_stop_reason_to_stop_reason(bedrock_stop_reason: str) -> StopReason:
if bedrock_stop_reason == "max_tokens":
return StopReason.out_of_tokens
return StopReason.end_of_turn
@staticmethod
def _builtin_tool_name_to_enum(tool_name_str: str) -> Union[BuiltinTool, str]:
for builtin_tool in BuiltinTool:
if builtin_tool.value == tool_name_str:
return builtin_tool
else:
return tool_name_str
@staticmethod
def _bedrock_message_to_message(converse_api_res: Dict) -> Message:
stop_reason = BedrockInferenceAdapter._bedrock_stop_reason_to_stop_reason(
converse_api_res["stopReason"]
)
bedrock_message = converse_api_res["output"]["message"]
role = bedrock_message["role"]
contents = bedrock_message["content"]
tool_calls = []
text_content = []
for content in contents:
if "toolUse" in content:
tool_use = content["toolUse"]
tool_calls.append(
ToolCall(
tool_name=BedrockInferenceAdapter._builtin_tool_name_to_enum(
tool_use["name"]
),
arguments=tool_use["input"] if "input" in tool_use else None,
call_id=tool_use["toolUseId"],
)
)
elif "text" in content:
text_content.append(content["text"])
return CompletionMessage(
role=role,
content=text_content,
stop_reason=stop_reason,
tool_calls=tool_calls,
)
@staticmethod
def _messages_to_bedrock_messages(
messages: List[Message],
) -> Tuple[List[Dict], Optional[List[Dict]]]:
bedrock_messages = []
system_bedrock_messages = []
user_contents = []
assistant_contents = None
for message in messages:
role = message.role
content_list = (
message.content
if isinstance(message.content, list)
else [message.content]
)
if role == "ipython" or role == "user":
if not user_contents:
user_contents = []
if role == "ipython":
user_contents.extend(
[
{
"toolResult": {
"toolUseId": message.call_id,
"content": [
{"text": content} for content in content_list
],
}
}
]
)
else:
user_contents.extend(
[{"text": content} for content in content_list]
)
if assistant_contents:
bedrock_messages.append(
{"role": "assistant", "content": assistant_contents}
)
assistant_contents = None
elif role == "system":
system_bedrock_messages.extend(
[{"text": content} for content in content_list]
)
elif role == "assistant":
if not assistant_contents:
assistant_contents = []
assistant_contents.extend(
[
{
"text": content,
}
for content in content_list
]
+ [
{
"toolUse": {
"input": tool_call.arguments,
"name": (
tool_call.tool_name
if isinstance(tool_call.tool_name, str)
else tool_call.tool_name.value
),
"toolUseId": tool_call.call_id,
}
}
for tool_call in message.tool_calls
]
)
if user_contents:
bedrock_messages.append({"role": "user", "content": user_contents})
user_contents = None
else:
# Unknown role
pass
if user_contents:
bedrock_messages.append({"role": "user", "content": user_contents})
if assistant_contents:
bedrock_messages.append(
{"role": "assistant", "content": assistant_contents}
)
if system_bedrock_messages:
return bedrock_messages, system_bedrock_messages
return bedrock_messages, None
@staticmethod
def get_bedrock_inference_config(sampling_params: Optional[SamplingParams]) -> Dict:
inference_config = {}
if sampling_params:
param_mapping = {
"max_tokens": "maxTokens",
"temperature": "temperature",
"top_p": "topP",
}
for k, v in param_mapping.items():
if getattr(sampling_params, k):
inference_config[v] = getattr(sampling_params, k)
return inference_config
@staticmethod
def _tool_parameters_to_input_schema(
tool_parameters: Optional[Dict[str, ToolParamDefinition]],
) -> Dict:
input_schema = {"type": "object"}
if not tool_parameters:
return input_schema
json_properties = {}
required = []
for name, param in tool_parameters.items():
json_property = {
"type": param.param_type,
}
if param.description:
json_property["description"] = param.description
if param.required:
required.append(name)
json_properties[name] = json_property
input_schema["properties"] = json_properties
if required:
input_schema["required"] = required
return input_schema
@staticmethod
def _tools_to_tool_config(
tools: Optional[List[ToolDefinition]], tool_choice: Optional[ToolChoice]
) -> Optional[Dict]:
if not tools:
return None
bedrock_tools = []
for tool in tools:
tool_name = (
tool.tool_name
if isinstance(tool.tool_name, str)
else tool.tool_name.value
)
tool_spec = {
"toolSpec": {
"name": tool_name,
"inputSchema": {
"json": BedrockInferenceAdapter._tool_parameters_to_input_schema(
tool.parameters
),
},
}
}
if tool.description:
tool_spec["toolSpec"]["description"] = tool.description
bedrock_tools.append(tool_spec)
tool_config = {
"tools": bedrock_tools,
}
if tool_choice:
tool_config["toolChoice"] = (
{"any": {}}
if tool_choice.value == ToolChoice.required
else {"auto": {}}
)
return tool_config
async def chat_completion(
self,
model: 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] = ToolPromptFormat.json,
stream: Optional[bool] = False,
logprobs: Optional[LogProbConfig] = None,
) -> Union[
ChatCompletionResponse, AsyncIterator[ChatCompletionResponseStreamChunk]
]:
request = ChatCompletionRequest(
model=model,
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 = self._get_params_for_chat_completion(request)
converse_api_res = self.client.converse(**params)
output_message = BedrockInferenceAdapter._bedrock_message_to_message(
converse_api_res
)
return ChatCompletionResponse(
completion_message=output_message,
logprobs=None,
)
async def _stream_chat_completion(
self, request: ChatCompletionRequest
) -> AsyncGenerator:
params = self._get_params_for_chat_completion(request)
converse_stream_api_res = self.client.converse_stream(**params)
event_stream = converse_stream_api_res["stream"]
for chunk in event_stream:
if "messageStart" in chunk:
yield ChatCompletionResponseStreamChunk(
event=ChatCompletionResponseEvent(
event_type=ChatCompletionResponseEventType.start,
delta="",
)
)
elif "contentBlockStart" in chunk:
yield ChatCompletionResponseStreamChunk(
event=ChatCompletionResponseEvent(
event_type=ChatCompletionResponseEventType.progress,
delta=ToolCallDelta(
content=ToolCall(
tool_name=chunk["contentBlockStart"]["toolUse"]["name"],
call_id=chunk["contentBlockStart"]["toolUse"][
"toolUseId"
],
),
parse_status=ToolCallParseStatus.started,
),
)
)
elif "contentBlockDelta" in chunk:
if "text" in chunk["contentBlockDelta"]["delta"]:
delta = chunk["contentBlockDelta"]["delta"]["text"]
else:
delta = ToolCallDelta(
content=ToolCall(
arguments=chunk["contentBlockDelta"]["delta"]["toolUse"][
"input"
]
),
parse_status=ToolCallParseStatus.success,
)
yield ChatCompletionResponseStreamChunk(
event=ChatCompletionResponseEvent(
event_type=ChatCompletionResponseEventType.progress,
delta=delta,
)
)
elif "contentBlockStop" in chunk:
# Ignored
pass
elif "messageStop" in chunk:
stop_reason = (
BedrockInferenceAdapter._bedrock_stop_reason_to_stop_reason(
chunk["messageStop"]["stopReason"]
)
)
yield ChatCompletionResponseStreamChunk(
event=ChatCompletionResponseEvent(
event_type=ChatCompletionResponseEventType.complete,
delta="",
stop_reason=stop_reason,
)
)
elif "metadata" in chunk:
# Ignored
pass
else:
# Ignored
pass
def _get_params_for_chat_completion(self, request: ChatCompletionRequest) -> Dict:
bedrock_model = self.map_to_provider_model(request.model)
inference_config = BedrockInferenceAdapter.get_bedrock_inference_config(
request.sampling_params
)
tool_config = BedrockInferenceAdapter._tools_to_tool_config(
request.tools, request.tool_choice
)
bedrock_messages, system_bedrock_messages = (
BedrockInferenceAdapter._messages_to_bedrock_messages(request.messages)
)
converse_api_params = {
"modelId": bedrock_model,
"messages": bedrock_messages,
}
if inference_config:
converse_api_params["inferenceConfig"] = inference_config
# Tool use is not supported in streaming mode
if tool_config and not request.stream:
converse_api_params["toolConfig"] = tool_config
if system_bedrock_messages:
converse_api_params["system"] = system_bedrock_messages
return converse_api_params
async def embeddings(
self,
model: str,
contents: List[InterleavedTextMedia],
) -> EmbeddingsResponse:
raise NotImplementedError()