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# What does this PR do? - Configured ruff linter to automatically fix import sorting issues. - Set --exit-non-zero-on-fix to ensure non-zero exit code when fixes are applied. - Enabled the 'I' selection to focus on import-related linting rules. - Ran the linter, and formatted all codebase imports accordingly. - Removed the black dep from the "dev" group since we use ruff Signed-off-by: Sébastien Han <seb@redhat.com> [//]: # (If resolving an issue, uncomment and update the line below) [//]: # (Closes #[issue-number]) ## Test Plan [Describe the tests you ran to verify your changes with result summaries. *Provide clear instructions so the plan can be easily re-executed.*] [//]: # (## Documentation) [//]: # (- [ ] Added a Changelog entry if the change is significant) Signed-off-by: Sébastien Han <seb@redhat.com>
666 lines
22 KiB
Python
666 lines
22 KiB
Python
# Copyright (c) Meta Platforms, Inc. and affiliates.
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# All rights reserved.
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#
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# This source code is licensed under the terms described in the LICENSE file in
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# the root directory of this source tree.
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import json
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import warnings
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from typing import Any, AsyncGenerator, Dict, Generator, Iterable, List, Optional, Union
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from llama_models.datatypes import (
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GreedySamplingStrategy,
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TopKSamplingStrategy,
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TopPSamplingStrategy,
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)
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from llama_models.llama3.api.datatypes import (
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BuiltinTool,
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StopReason,
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ToolCall,
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ToolDefinition,
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)
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from openai import AsyncStream
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from openai.types.chat import (
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ChatCompletionAssistantMessageParam as OpenAIChatCompletionAssistantMessage,
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)
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from openai.types.chat import (
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ChatCompletionChunk as OpenAIChatCompletionChunk,
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)
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from openai.types.chat import (
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ChatCompletionContentPartImageParam as OpenAIChatCompletionContentPartImageParam,
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)
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from openai.types.chat import (
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ChatCompletionContentPartParam as OpenAIChatCompletionContentPartParam,
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)
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from openai.types.chat import (
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ChatCompletionMessageParam as OpenAIChatCompletionMessage,
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)
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from openai.types.chat import (
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ChatCompletionMessageToolCallParam as OpenAIChatCompletionMessageToolCall,
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)
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from openai.types.chat import (
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ChatCompletionSystemMessageParam as OpenAIChatCompletionSystemMessage,
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)
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from openai.types.chat import (
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ChatCompletionToolMessageParam as OpenAIChatCompletionToolMessage,
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)
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from openai.types.chat import (
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ChatCompletionUserMessageParam as OpenAIChatCompletionUserMessage,
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)
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from openai.types.chat.chat_completion import (
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Choice as OpenAIChoice,
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)
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from openai.types.chat.chat_completion import (
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ChoiceLogprobs as OpenAIChoiceLogprobs, # same as chat_completion_chunk ChoiceLogprobs
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)
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from openai.types.chat.chat_completion_content_part_image_param import (
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ImageURL as OpenAIImageURL,
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)
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from openai.types.chat.chat_completion_message_tool_call_param import (
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Function as OpenAIFunction,
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)
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from openai.types.completion import Completion as OpenAICompletion
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from openai.types.completion_choice import Logprobs as OpenAICompletionLogprobs
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from llama_stack.apis.common.content_types import (
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ImageContentItem,
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InterleavedContent,
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TextContentItem,
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TextDelta,
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ToolCallDelta,
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ToolCallParseStatus,
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)
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from llama_stack.apis.inference import (
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ChatCompletionRequest,
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ChatCompletionResponse,
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ChatCompletionResponseEvent,
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ChatCompletionResponseEventType,
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ChatCompletionResponseStreamChunk,
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CompletionMessage,
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CompletionRequest,
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CompletionResponse,
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CompletionResponseStreamChunk,
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JsonSchemaResponseFormat,
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Message,
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SystemMessage,
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TokenLogProbs,
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ToolResponseMessage,
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UserMessage,
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)
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from llama_stack.providers.utils.inference.prompt_adapter import (
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convert_image_content_to_url,
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)
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def _convert_tooldef_to_openai_tool(tool: ToolDefinition) -> dict:
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"""
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Convert a ToolDefinition to an OpenAI API-compatible dictionary.
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ToolDefinition:
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tool_name: str | BuiltinTool
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description: Optional[str]
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parameters: Optional[Dict[str, ToolParamDefinition]]
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ToolParamDefinition:
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param_type: str
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description: Optional[str]
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required: Optional[bool]
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default: Optional[Any]
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OpenAI spec -
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{
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"type": "function",
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"function": {
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"name": tool_name,
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"description": description,
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"parameters": {
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"type": "object",
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"properties": {
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param_name: {
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"type": param_type,
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"description": description,
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"default": default,
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},
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...
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},
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"required": [param_name, ...],
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},
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},
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}
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"""
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out = {
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"type": "function",
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"function": {},
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}
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function = out["function"]
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if isinstance(tool.tool_name, BuiltinTool):
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function.update(name=tool.tool_name.value) # TODO(mf): is this sufficient?
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else:
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function.update(name=tool.tool_name)
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if tool.description:
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function.update(description=tool.description)
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if tool.parameters:
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parameters = {
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"type": "object",
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"properties": {},
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}
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properties = parameters["properties"]
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required = []
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for param_name, param in tool.parameters.items():
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properties[param_name] = {"type": param.param_type}
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if param.description:
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properties[param_name].update(description=param.description)
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if param.default:
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properties[param_name].update(default=param.default)
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if param.required:
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required.append(param_name)
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if required:
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parameters.update(required=required)
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function.update(parameters=parameters)
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return out
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async def _convert_message(message: Message | Dict) -> OpenAIChatCompletionMessage:
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"""
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Convert a Message to an OpenAI API-compatible dictionary.
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"""
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# users can supply a dict instead of a Message object, we'll
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# convert it to a Message object and proceed with some type safety.
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if isinstance(message, dict):
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if "role" not in message:
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raise ValueError("role is required in message")
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if message["role"] == "user":
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message = UserMessage(**message)
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elif message["role"] == "assistant":
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message = CompletionMessage(**message)
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elif message["role"] == "tool":
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message = ToolResponseMessage(**message)
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elif message["role"] == "system":
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message = SystemMessage(**message)
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else:
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raise ValueError(f"Unsupported message role: {message['role']}")
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# Map Llama Stack spec to OpenAI spec -
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# str -> str
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# {"type": "text", "text": ...} -> {"type": "text", "text": ...}
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# {"type": "image", "image": {"url": {"uri": ...}}} -> {"type": "image_url", "image_url": {"url": ...}}
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# {"type": "image", "image": {"data": ...}} -> {"type": "image_url", "image_url": {"url": "data:image/?;base64,..."}}
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# List[...] -> List[...]
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async def _convert_user_message_content(
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content: InterleavedContent,
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) -> Union[str, Iterable[OpenAIChatCompletionContentPartParam]]:
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# Llama Stack and OpenAI spec match for str and text input
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if isinstance(content, str) or isinstance(content, TextContentItem):
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return content
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elif isinstance(content, ImageContentItem):
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return OpenAIChatCompletionContentPartImageParam(
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image_url=OpenAIImageURL(url=await convert_image_content_to_url(content)),
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type="image_url",
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)
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elif isinstance(content, List):
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return [await _convert_user_message_content(item) for item in content]
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else:
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raise ValueError(f"Unsupported content type: {type(content)}")
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out: OpenAIChatCompletionMessage = None
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if isinstance(message, UserMessage):
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out = OpenAIChatCompletionUserMessage(
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role="user",
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content=await _convert_user_message_content(message.content),
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)
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elif isinstance(message, CompletionMessage):
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out = OpenAIChatCompletionAssistantMessage(
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role="assistant",
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content=message.content,
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tool_calls=[
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OpenAIChatCompletionMessageToolCall(
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id=tool.call_id,
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function=OpenAIFunction(
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name=tool.tool_name,
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arguments=json.dumps(tool.arguments),
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),
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type="function",
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)
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for tool in message.tool_calls
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],
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)
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elif isinstance(message, ToolResponseMessage):
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out = OpenAIChatCompletionToolMessage(
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role="tool",
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tool_call_id=message.call_id,
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content=message.content,
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)
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elif isinstance(message, SystemMessage):
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out = OpenAIChatCompletionSystemMessage(
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role="system",
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content=message.content,
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)
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else:
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raise ValueError(f"Unsupported message type: {type(message)}")
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return out
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async def convert_chat_completion_request(
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request: ChatCompletionRequest,
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n: int = 1,
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) -> dict:
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"""
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Convert a ChatCompletionRequest to an OpenAI API-compatible dictionary.
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"""
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# model -> model
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# messages -> messages
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# sampling_params TODO(mattf): review strategy
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# strategy=greedy -> nvext.top_k = -1, temperature = temperature
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# strategy=top_p -> nvext.top_k = -1, top_p = top_p
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# strategy=top_k -> nvext.top_k = top_k
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# temperature -> temperature
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# top_p -> top_p
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# top_k -> nvext.top_k
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# max_tokens -> max_tokens
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# repetition_penalty -> nvext.repetition_penalty
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# response_format -> GrammarResponseFormat TODO(mf)
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# response_format -> JsonSchemaResponseFormat: response_format = "json_object" & nvext["guided_json"] = json_schema
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# tools -> tools
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# tool_choice ("auto", "required") -> tool_choice
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# tool_prompt_format -> TBD
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# stream -> stream
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# logprobs -> logprobs
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if request.response_format and not isinstance(request.response_format, JsonSchemaResponseFormat):
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raise ValueError(
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f"Unsupported response format: {request.response_format}. Only JsonSchemaResponseFormat is supported."
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)
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nvext = {}
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payload: Dict[str, Any] = dict(
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model=request.model,
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messages=[await _convert_message(message) for message in request.messages],
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stream=request.stream,
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n=n,
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extra_body=dict(nvext=nvext),
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extra_headers={
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b"User-Agent": b"llama-stack: nvidia-inference-adapter",
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},
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)
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if request.response_format:
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# server bug - setting guided_json changes the behavior of response_format resulting in an error
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# payload.update(response_format="json_object")
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nvext.update(guided_json=request.response_format.json_schema)
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if request.tools:
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payload.update(tools=[_convert_tooldef_to_openai_tool(tool) for tool in request.tools])
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if request.tool_config.tool_choice:
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payload.update(
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tool_choice=request.tool_config.tool_choice.value
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) # we cannot include tool_choice w/o tools, server will complain
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if request.logprobs:
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payload.update(logprobs=True)
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payload.update(top_logprobs=request.logprobs.top_k)
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if request.sampling_params:
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nvext.update(repetition_penalty=request.sampling_params.repetition_penalty)
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if request.sampling_params.max_tokens:
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payload.update(max_tokens=request.sampling_params.max_tokens)
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strategy = request.sampling_params.strategy
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if isinstance(strategy, TopPSamplingStrategy):
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nvext.update(top_k=-1)
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payload.update(top_p=strategy.top_p)
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payload.update(temperature=strategy.temperature)
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elif isinstance(strategy, TopKSamplingStrategy):
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if strategy.top_k != -1 and strategy.top_k < 1:
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warnings.warn("top_k must be -1 or >= 1")
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nvext.update(top_k=strategy.top_k)
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elif isinstance(strategy, GreedySamplingStrategy):
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nvext.update(top_k=-1)
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else:
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raise ValueError(f"Unsupported sampling strategy: {strategy}")
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return payload
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def _convert_openai_finish_reason(finish_reason: str) -> StopReason:
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"""
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Convert an OpenAI chat completion finish_reason to a StopReason.
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finish_reason: Literal["stop", "length", "tool_calls", ...]
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- stop: model hit a natural stop point or a provided stop sequence
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- length: maximum number of tokens specified in the request was reached
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- tool_calls: model called a tool
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->
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class StopReason(Enum):
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end_of_turn = "end_of_turn"
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end_of_message = "end_of_message"
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out_of_tokens = "out_of_tokens"
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"""
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# TODO(mf): are end_of_turn and end_of_message semantics correct?
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return {
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"stop": StopReason.end_of_turn,
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"length": StopReason.out_of_tokens,
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"tool_calls": StopReason.end_of_message,
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}.get(finish_reason, StopReason.end_of_turn)
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def _convert_openai_tool_calls(
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tool_calls: List[OpenAIChatCompletionMessageToolCall],
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) -> List[ToolCall]:
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"""
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Convert an OpenAI ChatCompletionMessageToolCall list into a list of ToolCall.
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OpenAI ChatCompletionMessageToolCall:
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id: str
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function: Function
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type: Literal["function"]
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OpenAI Function:
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arguments: str
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name: str
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->
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ToolCall:
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call_id: str
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tool_name: str
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arguments: Dict[str, ...]
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"""
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if not tool_calls:
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return [] # CompletionMessage tool_calls is not optional
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return [
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ToolCall(
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call_id=call.id,
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tool_name=call.function.name,
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arguments=json.loads(call.function.arguments),
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)
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for call in tool_calls
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]
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def _convert_openai_logprobs(
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logprobs: OpenAIChoiceLogprobs,
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) -> Optional[List[TokenLogProbs]]:
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"""
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Convert an OpenAI ChoiceLogprobs into a list of TokenLogProbs.
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OpenAI ChoiceLogprobs:
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content: Optional[List[ChatCompletionTokenLogprob]]
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OpenAI ChatCompletionTokenLogprob:
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token: str
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logprob: float
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top_logprobs: List[TopLogprob]
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OpenAI TopLogprob:
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token: str
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logprob: float
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->
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TokenLogProbs:
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logprobs_by_token: Dict[str, float]
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- token, logprob
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"""
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if not logprobs:
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return None
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return [
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TokenLogProbs(logprobs_by_token={logprobs.token: logprobs.logprob for logprobs in content.top_logprobs})
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for content in logprobs.content
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]
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def convert_openai_chat_completion_choice(
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choice: OpenAIChoice,
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) -> ChatCompletionResponse:
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"""
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Convert an OpenAI Choice into a ChatCompletionResponse.
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OpenAI Choice:
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message: ChatCompletionMessage
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finish_reason: str
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logprobs: Optional[ChoiceLogprobs]
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OpenAI ChatCompletionMessage:
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role: Literal["assistant"]
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content: Optional[str]
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tool_calls: Optional[List[ChatCompletionMessageToolCall]]
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->
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ChatCompletionResponse:
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completion_message: CompletionMessage
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logprobs: Optional[List[TokenLogProbs]]
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CompletionMessage:
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role: Literal["assistant"]
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content: str | ImageMedia | List[str | ImageMedia]
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stop_reason: StopReason
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tool_calls: List[ToolCall]
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class StopReason(Enum):
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end_of_turn = "end_of_turn"
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end_of_message = "end_of_message"
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out_of_tokens = "out_of_tokens"
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"""
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assert hasattr(choice, "message") and choice.message, "error in server response: message not found"
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assert hasattr(choice, "finish_reason") and choice.finish_reason, (
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"error in server response: finish_reason not found"
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)
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return ChatCompletionResponse(
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completion_message=CompletionMessage(
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content=choice.message.content or "", # CompletionMessage content is not optional
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stop_reason=_convert_openai_finish_reason(choice.finish_reason),
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tool_calls=_convert_openai_tool_calls(choice.message.tool_calls),
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),
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logprobs=_convert_openai_logprobs(choice.logprobs),
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)
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|
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async def convert_openai_chat_completion_stream(
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stream: AsyncStream[OpenAIChatCompletionChunk],
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) -> AsyncGenerator[ChatCompletionResponseStreamChunk, None]:
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"""
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Convert a stream of OpenAI chat completion chunks into a stream
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of ChatCompletionResponseStreamChunk.
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"""
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# generate a stream of ChatCompletionResponseEventType: start -> progress -> progress -> ...
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def _event_type_generator() -> Generator[ChatCompletionResponseEventType, None, None]:
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yield ChatCompletionResponseEventType.start
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while True:
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yield ChatCompletionResponseEventType.progress
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event_type = _event_type_generator()
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# we implement NIM specific semantics, the main difference from OpenAI
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# is that tool_calls are always produced as a complete call. there is no
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# intermediate / partial tool call streamed. because of this, we can
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# simplify the logic and not concern outselves with parse_status of
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# started/in_progress/failed. we can always assume success.
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#
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# a stream of ChatCompletionResponseStreamChunk consists of
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# 0. a start event
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# 1. zero or more progress events
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# - each progress event has a delta
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# - each progress event may have a stop_reason
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# - each progress event may have logprobs
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# - each progress event may have tool_calls
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# if a progress event has tool_calls,
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# it is fully formed and
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# can be emitted with a parse_status of success
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# 2. a complete event
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stop_reason = None
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async for chunk in stream:
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choice = chunk.choices[0] # assuming only one choice per chunk
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# we assume there's only one finish_reason in the stream
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stop_reason = _convert_openai_finish_reason(choice.finish_reason) or stop_reason
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|
# if there's a tool call, emit an event for each tool in the list
|
|
# if tool call and content, emit both separately
|
|
|
|
if choice.delta.tool_calls:
|
|
# the call may have content and a tool call. ChatCompletionResponseEvent
|
|
# does not support both, so we emit the content first
|
|
if choice.delta.content:
|
|
yield ChatCompletionResponseStreamChunk(
|
|
event=ChatCompletionResponseEvent(
|
|
event_type=next(event_type),
|
|
delta=TextDelta(text=choice.delta.content),
|
|
logprobs=_convert_openai_logprobs(choice.logprobs),
|
|
)
|
|
)
|
|
|
|
# it is possible to have parallel tool calls in stream, but
|
|
# ChatCompletionResponseEvent only supports one per stream
|
|
if len(choice.delta.tool_calls) > 1:
|
|
warnings.warn("multiple tool calls found in a single delta, using the first, ignoring the rest")
|
|
|
|
# NIM only produces fully formed tool calls, so we can assume success
|
|
yield ChatCompletionResponseStreamChunk(
|
|
event=ChatCompletionResponseEvent(
|
|
event_type=next(event_type),
|
|
delta=ToolCallDelta(
|
|
tool_call=_convert_openai_tool_calls(choice.delta.tool_calls)[0],
|
|
parse_status=ToolCallParseStatus.succeeded,
|
|
),
|
|
logprobs=_convert_openai_logprobs(choice.logprobs),
|
|
)
|
|
)
|
|
else:
|
|
yield ChatCompletionResponseStreamChunk(
|
|
event=ChatCompletionResponseEvent(
|
|
event_type=next(event_type),
|
|
delta=TextDelta(text=choice.delta.content or ""),
|
|
logprobs=_convert_openai_logprobs(choice.logprobs),
|
|
)
|
|
)
|
|
|
|
yield ChatCompletionResponseStreamChunk(
|
|
event=ChatCompletionResponseEvent(
|
|
event_type=ChatCompletionResponseEventType.complete,
|
|
delta=TextDelta(text=""),
|
|
stop_reason=stop_reason,
|
|
)
|
|
)
|
|
|
|
|
|
def convert_completion_request(
|
|
request: CompletionRequest,
|
|
n: int = 1,
|
|
) -> dict:
|
|
"""
|
|
Convert a ChatCompletionRequest to an OpenAI API-compatible dictionary.
|
|
"""
|
|
# model -> model
|
|
# prompt -> prompt
|
|
# sampling_params TODO(mattf): review strategy
|
|
# strategy=greedy -> nvext.top_k = -1, temperature = temperature
|
|
# strategy=top_p -> nvext.top_k = -1, top_p = top_p
|
|
# strategy=top_k -> nvext.top_k = top_k
|
|
# temperature -> temperature
|
|
# top_p -> top_p
|
|
# top_k -> nvext.top_k
|
|
# max_tokens -> max_tokens
|
|
# repetition_penalty -> nvext.repetition_penalty
|
|
# response_format -> nvext.guided_json
|
|
# stream -> stream
|
|
# logprobs.top_k -> logprobs
|
|
|
|
nvext = {}
|
|
payload: Dict[str, Any] = dict(
|
|
model=request.model,
|
|
prompt=request.content,
|
|
stream=request.stream,
|
|
extra_body=dict(nvext=nvext),
|
|
extra_headers={
|
|
b"User-Agent": b"llama-stack: nvidia-inference-adapter",
|
|
},
|
|
n=n,
|
|
)
|
|
|
|
if request.response_format:
|
|
# this is not openai compliant, it is a nim extension
|
|
nvext.update(guided_json=request.response_format.json_schema)
|
|
|
|
if request.logprobs:
|
|
payload.update(logprobs=request.logprobs.top_k)
|
|
|
|
if request.sampling_params:
|
|
nvext.update(repetition_penalty=request.sampling_params.repetition_penalty)
|
|
|
|
if request.sampling_params.max_tokens:
|
|
payload.update(max_tokens=request.sampling_params.max_tokens)
|
|
|
|
if request.sampling_params.strategy == "top_p":
|
|
nvext.update(top_k=-1)
|
|
payload.update(top_p=request.sampling_params.top_p)
|
|
elif request.sampling_params.strategy == "top_k":
|
|
if request.sampling_params.top_k != -1 and request.sampling_params.top_k < 1:
|
|
warnings.warn("top_k must be -1 or >= 1")
|
|
nvext.update(top_k=request.sampling_params.top_k)
|
|
elif request.sampling_params.strategy == "greedy":
|
|
nvext.update(top_k=-1)
|
|
payload.update(temperature=request.sampling_params.temperature)
|
|
|
|
return payload
|
|
|
|
|
|
def _convert_openai_completion_logprobs(
|
|
logprobs: Optional[OpenAICompletionLogprobs],
|
|
) -> Optional[List[TokenLogProbs]]:
|
|
"""
|
|
Convert an OpenAI CompletionLogprobs into a list of TokenLogProbs.
|
|
"""
|
|
if not logprobs:
|
|
return None
|
|
|
|
return [TokenLogProbs(logprobs_by_token=logprobs) for logprobs in logprobs.top_logprobs]
|
|
|
|
|
|
def convert_openai_completion_choice(
|
|
choice: OpenAIChoice,
|
|
) -> CompletionResponse:
|
|
"""
|
|
Convert an OpenAI Completion Choice into a CompletionResponse.
|
|
"""
|
|
return CompletionResponse(
|
|
content=choice.text,
|
|
stop_reason=_convert_openai_finish_reason(choice.finish_reason),
|
|
logprobs=_convert_openai_completion_logprobs(choice.logprobs),
|
|
)
|
|
|
|
|
|
async def convert_openai_completion_stream(
|
|
stream: AsyncStream[OpenAICompletion],
|
|
) -> AsyncGenerator[CompletionResponse, None]:
|
|
"""
|
|
Convert a stream of OpenAI Completions into a stream
|
|
of ChatCompletionResponseStreamChunks.
|
|
"""
|
|
async for chunk in stream:
|
|
choice = chunk.choices[0]
|
|
yield CompletionResponseStreamChunk(
|
|
delta=choice.text,
|
|
stop_reason=_convert_openai_finish_reason(choice.finish_reason),
|
|
logprobs=_convert_openai_completion_logprobs(choice.logprobs),
|
|
)
|