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harmony_utils.py 5.41 KB
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# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
import datetime
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from collections.abc import Iterable
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from typing import Literal, Optional

from openai.types.responses.tool import Tool
from openai_harmony import (Conversation, DeveloperContent,
                            HarmonyEncodingName, Message, ReasoningEffort,
                            Role, StreamableParser, SystemContent, TextContent,
                            ToolDescription, load_harmony_encoding)

REASONING_EFFORT = {
    "high": ReasoningEffort.HIGH,
    "medium": ReasoningEffort.MEDIUM,
    "low": ReasoningEffort.LOW,
}

_harmony_encoding = None


def get_encoding():
    global _harmony_encoding
    if _harmony_encoding is None:
        _harmony_encoding = load_harmony_encoding(
            HarmonyEncodingName.HARMONY_GPT_OSS)
    return _harmony_encoding


def get_system_message(
    model_identity: Optional[str] = None,
    reasoning_effort: Optional[Literal["high", "medium", "low"]] = None,
    start_date: Optional[str] = None,
    browser_description: Optional[str] = None,
    python_description: Optional[str] = None,
) -> Message:
    sys_msg_content = SystemContent.new()
    if model_identity is not None:
        sys_msg_content = sys_msg_content.with_model_identity(model_identity)
    if reasoning_effort is not None:
        sys_msg_content = sys_msg_content.with_reasoning_effort(
            REASONING_EFFORT[reasoning_effort])
    if start_date is None:
        # NOTE(woosuk): This brings non-determinism in vLLM. Be careful.
        start_date = datetime.datetime.now().strftime("%Y-%m-%d")
    sys_msg_content = sys_msg_content.with_conversation_start_date(start_date)
    if browser_description is not None:
        sys_msg_content = sys_msg_content.with_tools(browser_description)
    if python_description is not None:
        sys_msg_content = sys_msg_content.with_tools(python_description)
    sys_msg = Message.from_role_and_content(Role.SYSTEM, sys_msg_content)
    return sys_msg


def get_developer_message(instructions: Optional[str] = None,
                          tools: Optional[list[Tool]] = None) -> Message:
    dev_msg_content = DeveloperContent.new()
    if instructions is not None:
        dev_msg_content = dev_msg_content.with_instructions(instructions)
    if tools is not None:
        function_tools = []
        for tool in tools:
            if tool.type in ("web_search_preview", "code_interpreter"):
                # These are built-in tools that are added to the system message.
                pass
            elif tool.type == "function":
                function_tools.append(tool)
            else:
                raise ValueError(f"tool type {tool.type} not supported")
        if function_tools:
            function_tool_descriptions = [
                ToolDescription.new(
                    name=tool.name,
                    description=tool.description,
                    parameters=tool.parameters,
                ) for tool in function_tools
            ]
            dev_msg_content = dev_msg_content.with_function_tools(
                function_tool_descriptions)
    dev_msg = Message.from_role_and_content(Role.DEVELOPER, dev_msg_content)
    return dev_msg


def get_user_message(content: str) -> Message:
    return Message.from_role_and_content(Role.USER, content)


def parse_chat_input(chat_msg) -> Message:
    role = chat_msg["role"]
    content = chat_msg["content"]
    if isinstance(content, str):
        contents = [TextContent(text=content)]
    else:
        # TODO: Support refusal.
        contents = [TextContent(text=c["text"]) for c in content]
    msg = Message.from_role_and_contents(role, contents)
    return msg


def render_for_completion(messages: list[Message]) -> list[int]:
    conversation = Conversation.from_messages(messages)
    token_ids = get_encoding().render_conversation_for_completion(
        conversation, Role.ASSISTANT)
    return token_ids


def get_stop_tokens_for_assistant_actions() -> list[int]:
    return get_encoding().stop_tokens_for_assistant_actions()


def get_streamable_parser_for_assistant() -> StreamableParser:
    return StreamableParser(get_encoding(), role=Role.ASSISTANT)
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def parse_output_into_messages(token_ids: Iterable[int]) -> StreamableParser:
    parser = get_streamable_parser_for_assistant()
    for token_id in token_ids:
        parser.process(token_id)
    return parser


def parse_chat_output(
        token_ids: list[int]) -> tuple[Optional[str], Optional[str], bool]:
    parser = parse_output_into_messages(token_ids)
    output_msgs = parser.messages
    if len(output_msgs) == 0:
        # The generation has stopped during reasoning.
        is_tool_call = False
        reasoning_content = parser.current_content
        final_content = None
    elif len(output_msgs) == 1:
        # The generation has stopped during final message.
        is_tool_call = False
        reasoning_content = output_msgs[0].content[0].text
        final_content = parser.current_content
    else:
        if len(output_msgs) != 2:
            raise ValueError(
                "Expected 2 output messages (reasoning and final), "
                f"but got {len(output_msgs)}.")
        reasoning_msg, final_msg = output_msgs
        reasoning_content = reasoning_msg.content[0].text
        final_content = final_msg.content[0].text
        is_tool_call = final_msg.recipient is not None
    return reasoning_content, final_content, is_tool_call