litellm-mirror/litellm/llms/bedrock/chat/converse_transformation.py
Krish Dholakia 14165d3648
LiteLLM Minor Fixes & Improvements (10/02/2024) (#6023)
* feat(together_ai/completion): handle together ai completion calls

* fix: handle list of int / list of list of int for text completion calls

* fix(utils.py): check if base model in bedrock converse model list

Fixes https://github.com/BerriAI/litellm/issues/6003

* test(test_optional_params.py): add unit tests for bedrock optional param mapping

Fixes https://github.com/BerriAI/litellm/issues/6003

* feat(utils.py): enable passing dummy tool call for anthropic/bedrock calls if tool_use blocks exist

Fixes https://github.com/BerriAI/litellm/issues/5388

* fixed an issue with tool use of claude models with anthropic and bedrock (#6013)

* fix(utils.py): handle empty schema for anthropic/bedrock

Fixes https://github.com/BerriAI/litellm/issues/6012

* fix: fix linting errors

* fix: fix linting errors

* fix: fix linting errors

* fix(proxy_cli.py): fix import route for app + health checks path (#6026)

* (testing): Enable testing us.anthropic.claude-3-haiku-20240307-v1:0. (#6018)

* fix(proxy_cli.py): fix import route for app + health checks gettsburg.wav

Fixes https://github.com/BerriAI/litellm/issues/5999

---------

Co-authored-by: David Manouchehri <david.manouchehri@ai.moda>

---------

Co-authored-by: Ved Patwardhan <54766411+vedpatwardhan@users.noreply.github.com>
Co-authored-by: David Manouchehri <david.manouchehri@ai.moda>
2024-10-02 22:00:28 -04:00

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"""
Translating between OpenAI's `/chat/completion` format and Amazon's `/converse` format
"""
import copy
import time
import types
from typing import List, Optional, Union
import httpx
import litellm
from litellm.litellm_core_utils.core_helpers import map_finish_reason
from litellm.litellm_core_utils.litellm_logging import Logging
from litellm.types.llms.bedrock import *
from litellm.types.llms.openai import (
AllMessageValues,
ChatCompletionResponseMessage,
ChatCompletionToolCallChunk,
ChatCompletionToolCallFunctionChunk,
ChatCompletionToolParam,
ChatCompletionToolParamFunctionChunk,
)
from litellm.types.utils import ModelResponse, Usage
from litellm.utils import CustomStreamWrapper, add_dummy_tool, has_tool_call_blocks
from ...prompt_templates.factory import _bedrock_converse_messages_pt, _bedrock_tools_pt
from ..common_utils import BedrockError, get_bedrock_tool_name
class AmazonConverseConfig:
"""
Reference - https://docs.aws.amazon.com/bedrock/latest/APIReference/API_runtime_Converse.html
#2 - https://docs.aws.amazon.com/bedrock/latest/userguide/conversation-inference.html#conversation-inference-supported-models-features
"""
maxTokens: Optional[int]
stopSequences: Optional[List[str]]
temperature: Optional[int]
topP: Optional[int]
def __init__(
self,
maxTokens: Optional[int] = None,
stopSequences: Optional[List[str]] = None,
temperature: Optional[int] = None,
topP: Optional[int] = None,
) -> None:
locals_ = locals()
for key, value in locals_.items():
if key != "self" and value is not None:
setattr(self.__class__, key, value)
@classmethod
def get_config(cls):
return {
k: v
for k, v in cls.__dict__.items()
if not k.startswith("__")
and not isinstance(
v,
(
types.FunctionType,
types.BuiltinFunctionType,
classmethod,
staticmethod,
),
)
and v is not None
}
def get_supported_openai_params(self, model: str) -> List[str]:
supported_params = [
"max_tokens",
"max_completion_tokens",
"stream",
"stream_options",
"stop",
"temperature",
"top_p",
"extra_headers",
"response_format",
]
if (
model.startswith("anthropic")
or model.startswith("mistral")
or model.startswith("cohere")
or model.startswith("meta.llama3-1")
):
supported_params.append("tools")
if model.startswith("anthropic") or model.startswith("mistral"):
# only anthropic and mistral support tool choice config. otherwise (E.g. cohere) will fail the call - https://docs.aws.amazon.com/bedrock/latest/APIReference/API_runtime_ToolChoice.html
supported_params.append("tool_choice")
return supported_params
def map_tool_choice_values(
self, model: str, tool_choice: Union[str, dict], drop_params: bool
) -> Optional[ToolChoiceValuesBlock]:
if tool_choice == "none":
if litellm.drop_params is True or drop_params is True:
return None
else:
raise litellm.utils.UnsupportedParamsError(
message="Bedrock doesn't support tool_choice={}. To drop it from the call, set `litellm.drop_params = True.".format(
tool_choice
),
status_code=400,
)
elif tool_choice == "required":
return ToolChoiceValuesBlock(any={})
elif tool_choice == "auto":
return ToolChoiceValuesBlock(auto={})
elif isinstance(tool_choice, dict):
# only supported for anthropic + mistral models - https://docs.aws.amazon.com/bedrock/latest/APIReference/API_runtime_ToolChoice.html
specific_tool = SpecificToolChoiceBlock(
name=tool_choice.get("function", {}).get("name", "")
)
return ToolChoiceValuesBlock(tool=specific_tool)
else:
raise litellm.utils.UnsupportedParamsError(
message="Bedrock doesn't support tool_choice={}. Supported tool_choice values=['auto', 'required', json object]. To drop it from the call, set `litellm.drop_params = True.".format(
tool_choice
),
status_code=400,
)
def get_supported_image_types(self) -> List[str]:
return ["png", "jpeg", "gif", "webp"]
def map_openai_params(
self,
model: str,
non_default_params: dict,
optional_params: dict,
drop_params: bool,
messages: Optional[List[AllMessageValues]] = None,
) -> dict:
for param, value in non_default_params.items():
if param == "response_format":
json_schema: Optional[dict] = None
schema_name: str = ""
if "response_schema" in value:
json_schema = value["response_schema"]
schema_name = "json_tool_call"
elif "json_schema" in value:
json_schema = value["json_schema"]["schema"]
schema_name = value["json_schema"]["name"]
"""
Follow similar approach to anthropic - translate to a single tool call.
When using tools in this way: - https://docs.anthropic.com/en/docs/build-with-claude/tool-use#json-mode
- You usually want to provide a single tool
- You should set tool_choice (see Forcing tool use) to instruct the model to explicitly use that tool
- Remember that the model will pass the input to the tool, so the name of the tool and description should be from the models perspective.
"""
if json_schema is not None:
_tool_choice = self.map_tool_choice_values(
model=model, tool_choice="required", drop_params=drop_params # type: ignore
)
_tool = ChatCompletionToolParam(
type="function",
function=ChatCompletionToolParamFunctionChunk(
name=schema_name, parameters=json_schema
),
)
optional_params["tools"] = [_tool]
optional_params["tool_choice"] = _tool_choice
optional_params["json_mode"] = True
else:
if litellm.drop_params is True or drop_params is True:
pass
else:
raise litellm.utils.UnsupportedParamsError(
message="Bedrock doesn't support response_format={}. To drop it from the call, set `litellm.drop_params = True.".format(
value
),
status_code=400,
)
if param == "max_tokens" or param == "max_completion_tokens":
optional_params["maxTokens"] = value
if param == "stream":
optional_params["stream"] = value
if param == "stop":
if isinstance(value, str):
if len(value) == 0: # converse raises error for empty strings
continue
value = [value]
optional_params["stopSequences"] = value
if param == "temperature":
optional_params["temperature"] = value
if param == "top_p":
optional_params["topP"] = value
if param == "tools":
optional_params["tools"] = value
if param == "tool_choice":
_tool_choice_value = self.map_tool_choice_values(
model=model, tool_choice=value, drop_params=drop_params # type: ignore
)
if _tool_choice_value is not None:
optional_params["tool_choice"] = _tool_choice_value
## VALIDATE REQUEST
"""
Bedrock doesn't support tool calling without `tools=` param specified.
"""
if (
"tools" not in non_default_params
and messages is not None
and has_tool_call_blocks(messages)
):
if litellm.modify_params:
optional_params["tools"] = add_dummy_tool(
custom_llm_provider="bedrock_converse"
)
else:
raise litellm.UnsupportedParamsError(
message="Bedrock doesn't support tool calling without `tools=` param specified. Pass `tools=` param OR set `litellm.modify_params = True` // `litellm_settings::modify_params: True` to add dummy tool to the request.",
model="",
llm_provider="bedrock",
)
return optional_params
def _transform_request(
self,
model: str,
messages: List[AllMessageValues],
optional_params: dict,
litellm_params: dict,
) -> RequestObject:
system_prompt_indices = []
system_content_blocks: List[SystemContentBlock] = []
for idx, message in enumerate(messages):
if message["role"] == "system":
_system_content_block: Optional[SystemContentBlock] = None
if isinstance(message["content"], str) and len(message["content"]) > 0:
_system_content_block = SystemContentBlock(text=message["content"])
elif isinstance(message["content"], list):
for m in message["content"]:
if m.get("type", "") == "text" and len(m["text"]) > 0:
_system_content_block = SystemContentBlock(text=m["text"])
if _system_content_block is not None:
system_content_blocks.append(_system_content_block)
system_prompt_indices.append(idx)
if len(system_prompt_indices) > 0:
for idx in reversed(system_prompt_indices):
messages.pop(idx)
inference_params = copy.deepcopy(optional_params)
additional_request_keys = []
additional_request_params = {}
supported_converse_params = AmazonConverseConfig.__annotations__.keys()
supported_tool_call_params = ["tools", "tool_choice"]
supported_guardrail_params = ["guardrailConfig"]
inference_params.pop("json_mode", None) # used for handling json_schema
## TRANSFORMATION ##
bedrock_messages: List[MessageBlock] = _bedrock_converse_messages_pt(
messages=messages,
model=model,
llm_provider="bedrock_converse",
user_continue_message=litellm_params.pop("user_continue_message", None),
)
# send all model-specific params in 'additional_request_params'
for k, v in inference_params.items():
if (
k not in supported_converse_params
and k not in supported_tool_call_params
and k not in supported_guardrail_params
):
additional_request_params[k] = v
additional_request_keys.append(k)
for key in additional_request_keys:
inference_params.pop(key, None)
bedrock_tools: List[ToolBlock] = _bedrock_tools_pt(
inference_params.pop("tools", [])
)
bedrock_tool_config: Optional[ToolConfigBlock] = None
if len(bedrock_tools) > 0:
tool_choice_values: ToolChoiceValuesBlock = inference_params.pop(
"tool_choice", None
)
bedrock_tool_config = ToolConfigBlock(
tools=bedrock_tools,
)
if tool_choice_values is not None:
bedrock_tool_config["toolChoice"] = tool_choice_values
_data: RequestObject = {
"messages": bedrock_messages,
"additionalModelRequestFields": additional_request_params,
"system": system_content_blocks,
"inferenceConfig": InferenceConfig(**inference_params),
}
# Guardrail Config
guardrail_config: Optional[GuardrailConfigBlock] = None
request_guardrails_config = inference_params.pop("guardrailConfig", None)
if request_guardrails_config is not None:
guardrail_config = GuardrailConfigBlock(**request_guardrails_config)
_data["guardrailConfig"] = guardrail_config
# Tool Config
if bedrock_tool_config is not None:
_data["toolConfig"] = bedrock_tool_config
return _data
def _transform_response(
self,
model: str,
response: httpx.Response,
model_response: ModelResponse,
stream: bool,
logging_obj: Optional[Logging],
optional_params: dict,
api_key: str,
data: Union[dict, str],
messages: List,
print_verbose,
encoding,
) -> Union[ModelResponse, CustomStreamWrapper]:
## LOGGING
if logging_obj is not None:
logging_obj.post_call(
input=messages,
api_key=api_key,
original_response=response.text,
additional_args={"complete_input_dict": data},
)
print_verbose(f"raw model_response: {response.text}")
json_mode: Optional[bool] = optional_params.pop("json_mode", None)
## RESPONSE OBJECT
try:
completion_response = ConverseResponseBlock(**response.json()) # type: ignore
except Exception as e:
raise BedrockError(
message="Received={}, Error converting to valid response block={}. File an issue if litellm error - https://github.com/BerriAI/litellm/issues".format(
response.text, str(e)
),
status_code=422,
)
"""
Bedrock Response Object has optional message block
completion_response["output"].get("message", None)
A message block looks like this (Example 1):
"output": {
"message": {
"role": "assistant",
"content": [
{
"text": "Is there anything else you'd like to talk about? Perhaps I can help with some economic questions or provide some information about economic concepts?"
}
]
}
},
(Example 2):
"output": {
"message": {
"role": "assistant",
"content": [
{
"toolUse": {
"toolUseId": "tooluse_hbTgdi0CSLq_hM4P8csZJA",
"name": "top_song",
"input": {
"sign": "WZPZ"
}
}
}
]
}
}
"""
message: Optional[MessageBlock] = completion_response["output"]["message"]
chat_completion_message: ChatCompletionResponseMessage = {"role": "assistant"}
content_str = ""
tools: List[ChatCompletionToolCallChunk] = []
if message is not None:
for idx, content in enumerate(message["content"]):
"""
- Content is either a tool response or text
"""
if "text" in content:
content_str += content["text"]
if "toolUse" in content:
## check tool name was formatted by litellm
_response_tool_name = content["toolUse"]["name"]
response_tool_name = get_bedrock_tool_name(
response_tool_name=_response_tool_name
)
_function_chunk = ChatCompletionToolCallFunctionChunk(
name=response_tool_name,
arguments=json.dumps(content["toolUse"]["input"]),
)
_tool_response_chunk = ChatCompletionToolCallChunk(
id=content["toolUse"]["toolUseId"],
type="function",
function=_function_chunk,
index=idx,
)
tools.append(_tool_response_chunk)
chat_completion_message["content"] = content_str
if json_mode is True and tools is not None and len(tools) == 1:
# to support 'json_schema' logic on bedrock models
json_mode_content_str: Optional[str] = tools[0]["function"].get("arguments")
if json_mode_content_str is not None:
chat_completion_message["content"] = json_mode_content_str
else:
chat_completion_message["tool_calls"] = tools
## CALCULATING USAGE - bedrock returns usage in the headers
input_tokens = completion_response["usage"]["inputTokens"]
output_tokens = completion_response["usage"]["outputTokens"]
total_tokens = completion_response["usage"]["totalTokens"]
model_response.choices = [
litellm.Choices(
finish_reason=map_finish_reason(completion_response["stopReason"]),
index=0,
message=litellm.Message(**chat_completion_message),
)
]
model_response.created = int(time.time())
model_response.model = model
usage = Usage(
prompt_tokens=input_tokens,
completion_tokens=output_tokens,
total_tokens=total_tokens,
)
setattr(model_response, "usage", usage)
# Add "trace" from Bedrock guardrails - if user has opted in to returning it
if "trace" in completion_response:
setattr(model_response, "trace", completion_response["trace"])
return model_response
def _supported_cross_region_inference_region(self) -> List[str]:
"""
Abbreviations of regions AWS Bedrock supports for cross region inference
"""
return ["us", "eu"]
def _get_base_model(self, model: str) -> str:
"""
Get the base model from the given model name.
Handle model names like - "us.meta.llama3-2-11b-instruct-v1:0" -> "meta.llama3-2-11b-instruct-v1"
AND "meta.llama3-2-11b-instruct-v1:0" -> "meta.llama3-2-11b-instruct-v1"
"""
potential_region = model.split(".", 1)[0]
if potential_region in self._supported_cross_region_inference_region():
return model.split(".", 1)[1]
return model