context.py 33.9 KB
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# SPDX-License-Identifier: Apache-2.0
# SPDX-FileCopyrightText: Copyright contributors to the vLLM project
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import asyncio
import contextlib
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import copy
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import json
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import logging
from abc import ABC, abstractmethod
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from collections.abc import Callable
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from contextlib import AsyncExitStack
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from dataclasses import replace
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from typing import TYPE_CHECKING, Final, Union
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from openai.types.responses.response_function_tool_call_output_item import (
    ResponseFunctionToolCallOutputItem,
)
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from openai.types.responses.tool import Mcp
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from openai_harmony import Author, Message, Role, StreamState, TextContent
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from vllm import envs
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from vllm.entrypoints.chat_utils import (
    ChatTemplateContentFormatOption,
)
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from vllm.entrypoints.constants import MCP_PREFIX
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from vllm.entrypoints.mcp.tool import Tool
from vllm.entrypoints.mcp.tool_server import ToolServer
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from vllm.entrypoints.openai.engine.protocol import (
    FunctionCall,
)
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from vllm.entrypoints.openai.parser.harmony_utils import (
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    get_encoding,
    get_streamable_parser_for_assistant,
    render_for_completion,
)
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from vllm.entrypoints.openai.parser.responses_parser import (
    get_responses_parser_for_simple_context,
)
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from vllm.entrypoints.openai.responses.protocol import (
    ResponseInputOutputItem,
    ResponseRawMessageAndToken,
    ResponsesRequest,
)
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from vllm.entrypoints.openai.responses.utils import construct_tool_dicts
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from vllm.outputs import RequestOutput
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from vllm.reasoning.abs_reasoning_parsers import ReasoningParser
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from vllm.tokenizers import TokenizerLike
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from vllm.tool_parsers.abstract_tool_parser import ToolParser
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from vllm.utils import random_uuid
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if TYPE_CHECKING:
    from mcp.client import ClientSession

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logger = logging.getLogger(__name__)

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# This is currently needed as the tool type doesn't 1:1 match the
# tool namespace, which is what is used to look up the
# connection to the tool server
_TOOL_NAME_TO_TYPE_MAP = {
    "browser": "web_search_preview",
    "python": "code_interpreter",
    "container": "container",
}


def _map_tool_name_to_tool_type(tool_name: str) -> str:
    if tool_name not in _TOOL_NAME_TO_TYPE_MAP:
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        available_tools = ", ".join(_TOOL_NAME_TO_TYPE_MAP.keys())
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        raise ValueError(
            f"Built-in tool name '{tool_name}' not defined in mapping. "
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            f"Available tools: {available_tools}"
        )
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    return _TOOL_NAME_TO_TYPE_MAP[tool_name]

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class TurnMetrics:
    """Tracks token and toolcall details for a single conversation turn."""
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    def __init__(
        self,
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        input_tokens: int = 0,
        output_tokens: int = 0,
        cached_input_tokens: int = 0,
        tool_output_tokens: int = 0,
    ) -> None:
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        self.input_tokens = input_tokens
        self.output_tokens = output_tokens
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        self.cached_input_tokens = cached_input_tokens
        self.tool_output_tokens = tool_output_tokens
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    def reset(self) -> None:
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        """Reset counters for a new turn."""
        self.input_tokens = 0
        self.output_tokens = 0
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        self.cached_input_tokens = 0
        self.tool_output_tokens = 0
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    def copy(self) -> "TurnMetrics":
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        """Create a copy of this turn's token counts."""
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        return TurnMetrics(
            self.input_tokens,
            self.output_tokens,
            self.cached_input_tokens,
            self.tool_output_tokens,
        )
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class ConversationContext(ABC):
    @abstractmethod
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    def append_output(self, output: RequestOutput) -> None:
        pass

    @abstractmethod
    def append_tool_output(self, output) -> None:
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        pass

    @abstractmethod
    async def call_tool(self) -> list[Message]:
        pass

    @abstractmethod
    def need_builtin_tool_call(self) -> bool:
        pass

    @abstractmethod
    def render_for_completion(self) -> list[int]:
        pass

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    @abstractmethod
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    async def init_tool_sessions(
        self,
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        tool_server: ToolServer | None,
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        exit_stack: AsyncExitStack,
        request_id: str,
        mcp_tools: dict[str, Mcp],
    ) -> None:
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        pass

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    @abstractmethod
    async def cleanup_session(self) -> None:
        raise NotImplementedError("Should not be called.")

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def _create_json_parse_error_messages(
    last_msg: Message, e: json.JSONDecodeError
) -> list[Message]:
    """
    Creates an error message when json parse failed.
    """
    error_msg = (
        f"Error parsing tool arguments as JSON: {str(e)}. "
        "Please ensure the tool call arguments are valid JSON and try again."
    )
    content = TextContent(text=error_msg)
    author = Author(role=Role.TOOL, name=last_msg.recipient)
    return [
        Message(
            author=author,
            content=[content],
            recipient=Role.ASSISTANT,
            channel=last_msg.channel,
        )
    ]


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class SimpleContext(ConversationContext):
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    """This is a context that cannot handle MCP tool calls"""

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    def __init__(self):
        self.last_output = None
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        # Accumulated final output for streaming mode
        self._accumulated_text: str = ""
        self._accumulated_token_ids: list[int] = []
        self._accumulated_logprobs: list = []

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        self.num_prompt_tokens = 0
        self.num_output_tokens = 0
        self.num_cached_tokens = 0
        # todo num_reasoning_tokens is not implemented yet.
        self.num_reasoning_tokens = 0
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        # not implemented yet for SimpleContext
        self.all_turn_metrics = []
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        self.input_messages: list[ResponseRawMessageAndToken] = []

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    def append_output(self, output) -> None:
        self.last_output = output
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        if not isinstance(output, RequestOutput):
            raise ValueError("SimpleContext only supports RequestOutput.")
        self.num_prompt_tokens = len(output.prompt_token_ids or [])
        self.num_cached_tokens = output.num_cached_tokens or 0
        self.num_output_tokens += len(output.outputs[0].token_ids or [])
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        # Accumulate text, token_ids, and logprobs for streaming mode
        delta_output = output.outputs[0]
        self._accumulated_text += delta_output.text
        self._accumulated_token_ids.extend(delta_output.token_ids)
        if delta_output.logprobs is not None:
            self._accumulated_logprobs.extend(delta_output.logprobs)

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        if len(self.input_messages) == 0:
            output_prompt = output.prompt or ""
            output_prompt_token_ids = output.prompt_token_ids or []
            self.input_messages.append(
                ResponseRawMessageAndToken(
                    message=output_prompt,
                    tokens=output_prompt_token_ids,
                )
            )
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    @property
    def output_messages(self) -> list[ResponseRawMessageAndToken]:
        """Return consolidated output as a single message.

        In streaming mode, text and tokens are accumulated across many deltas.
        This property returns them as a single entry rather than one per delta.
        """
        if not self._accumulated_text and not self._accumulated_token_ids:
            return []
        return [
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            ResponseRawMessageAndToken(
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                message=self._accumulated_text,
                tokens=list(self._accumulated_token_ids),
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            )
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        ]
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    @property
    def final_output(self) -> RequestOutput | None:
        """Return the final output, with complete text/token_ids/logprobs."""
        if self.last_output is not None and self.last_output.outputs:
            assert isinstance(self.last_output, RequestOutput)
            final_output = copy.copy(self.last_output)
            # copy inner item to avoid modify last_output
            final_output.outputs = [replace(item) for item in self.last_output.outputs]
            final_output.outputs[0].text = self._accumulated_text
            final_output.outputs[0].token_ids = tuple(self._accumulated_token_ids)
            if self._accumulated_logprobs:
                final_output.outputs[0].logprobs = self._accumulated_logprobs
            return final_output
        return self.last_output

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    def append_tool_output(self, output) -> None:
        raise NotImplementedError("Should not be called.")

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    def need_builtin_tool_call(self) -> bool:
        return False

    async def call_tool(self) -> list[Message]:
        raise NotImplementedError("Should not be called.")

    def render_for_completion(self) -> list[int]:
        raise NotImplementedError("Should not be called.")

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    async def init_tool_sessions(
        self,
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        tool_server: ToolServer | None,
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        exit_stack: AsyncExitStack,
        request_id: str,
        mcp_tools: dict[str, Mcp],
    ) -> None:
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        pass

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    async def cleanup_session(self) -> None:
        raise NotImplementedError("Should not be called.")

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class ParsableContext(ConversationContext):
    def __init__(
        self,
        *,
        response_messages: list[ResponseInputOutputItem],
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        tokenizer: TokenizerLike,
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        reasoning_parser_cls: Callable[[TokenizerLike], ReasoningParser] | None,
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        request: ResponsesRequest,
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        available_tools: list[str] | None,
        tool_parser_cls: Callable[[TokenizerLike], ToolParser] | None,
        chat_template: str | None,
        chat_template_content_format: ChatTemplateContentFormatOption,
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    ):
        self.num_prompt_tokens = 0
        self.num_output_tokens = 0
        self.num_cached_tokens = 0
        self.num_reasoning_tokens = 0
        # not implemented yet for ParsableContext
        self.all_turn_metrics: list[TurnMetrics] = []

        if reasoning_parser_cls is None:
            raise ValueError("reasoning_parser_cls must be provided.")

        self.parser = get_responses_parser_for_simple_context(
            tokenizer=tokenizer,
            reasoning_parser_cls=reasoning_parser_cls,
            response_messages=response_messages,
            request=request,
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            tool_parser_cls=tool_parser_cls,
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        )
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        self.tool_parser_cls = tool_parser_cls
        self.request = request
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        self.available_tools = available_tools or []
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        self._tool_sessions: dict[str, ClientSession | Tool] = {}
        self.called_tools: set[str] = set()

        self.tool_dicts = construct_tool_dicts(request.tools, request.tool_choice)
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        self.chat_template = chat_template
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        self.chat_template_content_format: Final = chat_template_content_format
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        self.input_messages: list[ResponseRawMessageAndToken] = []
        self.output_messages: list[ResponseRawMessageAndToken] = []
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        self._accumulated_token_ids: list[int] = []
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    def append_output(self, output: RequestOutput) -> None:
        self.num_prompt_tokens = len(output.prompt_token_ids or [])
        self.num_cached_tokens = output.num_cached_tokens or 0
        self.num_output_tokens += len(output.outputs[0].token_ids or [])
        self.parser.process(output.outputs[0])
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        output_token_ids = output.outputs[0].token_ids or []
        self._accumulated_token_ids.extend(output_token_ids)
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        # only store if enable_response_messages is True, save memory
        if self.request.enable_response_messages:
            output_prompt = output.prompt or ""
            output_prompt_token_ids = output.prompt_token_ids or []
            if len(self.input_messages) == 0:
                self.input_messages.append(
                    ResponseRawMessageAndToken(
                        message=output_prompt,
                        tokens=output_prompt_token_ids,
                    )
                )
            else:
                self.output_messages.append(
                    ResponseRawMessageAndToken(
                        message=output_prompt,
                        tokens=output_prompt_token_ids,
                    )
                )
            self.output_messages.append(
                ResponseRawMessageAndToken(
                    message=output.outputs[0].text,
                    tokens=output.outputs[0].token_ids,
                )
            )

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    def append_tool_output(self, output: list[ResponseInputOutputItem]) -> None:
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        self.parser.response_messages.extend(output)
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    def need_builtin_tool_call(self) -> bool:
        """Return true if the last message is a MCP tool call"""
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        last_message = self.parser.response_messages[-1]
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        # TODO(qandrew): figure out which tools are MCP tools
        if last_message.type == "function_call":  # noqa: SIM102
            if last_message.name in (
                "code_interpreter",
                "python",
                "web_search_preview",
            ) or last_message.name.startswith("container"):
                return True
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        return False

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    async def call_python_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: FunctionCall
    ) -> list[ResponseInputOutputItem]:
        self.called_tools.add("python")
        if isinstance(tool_session, Tool):
            return await tool_session.get_result_parsable_context(self)
        args = json.loads(last_msg.arguments)
        param = {
            "code": args["code"],
        }
        result = await tool_session.call_tool("python", param)
        result_str = result.content[0].text

        message = ResponseFunctionToolCallOutputItem(
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            id=f"mcpo_{random_uuid()}",
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            type="function_call_output",
            call_id=f"call_{random_uuid()}",
            output=result_str,
            status="completed",
        )

        return [message]

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    async def call_search_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: FunctionCall
    ) -> list[ResponseInputOutputItem]:
        self.called_tools.add("browser")
        if isinstance(tool_session, Tool):
            return await tool_session.get_result_parsable_context(self)
        if envs.VLLM_TOOL_JSON_ERROR_AUTOMATIC_RETRY:
            try:
                args = json.loads(last_msg.arguments)
            except json.JSONDecodeError as e:
                return _create_json_parse_error_messages(last_msg, e)
        else:
            args = json.loads(last_msg.arguments)
        result = await tool_session.call_tool("search", args)
        result_str = result.content[0].text

        message = ResponseFunctionToolCallOutputItem(
            id=f"fco_{random_uuid()}",
            type="function_call_output",
            call_id=f"call_{random_uuid()}",
            output=result_str,
            status="completed",
        )

        return [message]

    async def call_container_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: Message
    ) -> list[Message]:
        """
        Call container tool. Expect this to be run in a stateful docker
        with command line terminal.
        The official container tool would at least
        expect the following format:
        - for tool name: exec
            - args:
                {
                    "cmd":List[str] "command to execute",
                    "workdir":optional[str] "current working directory",
                    "env":optional[object/dict] "environment variables",
                    "session_name":optional[str] "session name",
                    "timeout":optional[int] "timeout in seconds",
                    "user":optional[str] "user name",
                }
        """
        self.called_tools.add("container")
        if isinstance(tool_session, Tool):
            return await tool_session.get_result_parsable_context(self)
        # tool_name = last_msg.recipient.split(".")[1].split(" ")[0]
        if envs.VLLM_TOOL_JSON_ERROR_AUTOMATIC_RETRY:
            try:
                args = json.loads(last_msg.arguments)
            except json.JSONDecodeError as e:
                return _create_json_parse_error_messages(last_msg, e)
        else:
            args = json.loads(last_msg.arguments)
        result = await tool_session.call_tool("exec", args)
        result_str = result.content[0].text

        message = ResponseFunctionToolCallOutputItem(
            id=f"fco_{random_uuid()}",
            type="function_call_output",
            call_id=f"call_{random_uuid()}",
            output=result_str,
            status="completed",
        )

        return [message]

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    async def call_tool(self) -> list[ResponseInputOutputItem]:
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        if not self.parser.response_messages:
            return []
        last_msg = self.parser.response_messages[-1]
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        # change this to a mcp_ function call
        last_msg.id = f"{MCP_PREFIX}{random_uuid()}"
        self.parser.response_messages[-1] = last_msg
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        if last_msg.name == "code_interpreter":
            return await self.call_python_tool(self._tool_sessions["python"], last_msg)
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        elif last_msg.name == "web_search_preview":
            return await self.call_search_tool(self._tool_sessions["browser"], last_msg)
        elif last_msg.name.startswith("container"):
            return await self.call_container_tool(
                self._tool_sessions["container"], last_msg
            )
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        return []
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    def render_for_completion(self):
        raise NotImplementedError("Should not be called.")

    async def init_tool_sessions(
        self,
        tool_server: ToolServer | None,
        exit_stack: AsyncExitStack,
        request_id: str,
        mcp_tools: dict[str, Mcp],
    ):
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        if tool_server:
            for tool_name in self.available_tools:
                if tool_name in self._tool_sessions:
                    continue

                tool_type = _map_tool_name_to_tool_type(tool_name)
                headers = (
                    mcp_tools[tool_type].headers if tool_type in mcp_tools else None
                )
                tool_session = await exit_stack.enter_async_context(
                    tool_server.new_session(tool_name, request_id, headers)
                )
                self._tool_sessions[tool_name] = tool_session
                exit_stack.push_async_exit(self.cleanup_session)
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    async def cleanup_session(self, *args, **kwargs) -> None:
        """Can be used as coro to used in __aexit__"""
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        async def cleanup_tool_session(tool_session):
            if not isinstance(tool_session, Tool):
                logger.info(
                    "Cleaning up tool session for %s", tool_session._client_info
                )
                with contextlib.suppress(Exception):
                    await tool_session.call_tool("cleanup_session", {})

        await asyncio.gather(
            *(
                cleanup_tool_session(self._tool_sessions[tool])
                for tool in self.called_tools
            )
        )
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class HarmonyContext(ConversationContext):
    def __init__(
        self,
        messages: list,
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        available_tools: list[str],
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    ):
        self._messages = messages
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        self.finish_reason: str | None = None
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        self.available_tools = available_tools
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        self._tool_sessions: dict[str, ClientSession | Tool] = {}
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        self.called_tools: set[str] = set()
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        self.parser = get_streamable_parser_for_assistant()
        self.num_init_messages = len(messages)
        self.num_prompt_tokens = 0
        self.num_output_tokens = 0
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        self.num_cached_tokens = 0
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        self.num_reasoning_tokens = 0
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        self.num_tool_output_tokens = 0
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        # Turn tracking - replaces multiple individual tracking variables
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        self.current_turn_metrics = TurnMetrics()
        # Track metrics for all turns
        self.all_turn_metrics: list[TurnMetrics] = []
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        self.is_first_turn = True
        self.first_tok_of_message = True  # For streaming support
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    def _update_num_reasoning_tokens(self):
        # Count all analysis and commentary channels as reasoning tokens
        if self.parser.current_channel in {"analysis", "commentary"}:
            self.num_reasoning_tokens += 1
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    def append_output(self, output: RequestOutput) -> None:
        output_token_ids = output.outputs[0].token_ids
        self.parser = get_streamable_parser_for_assistant()
        for token_id in output_token_ids:
            self.parser.process(token_id)
            # Check if the current token is part of reasoning content
            self._update_num_reasoning_tokens()
        self._update_prefill_token_usage(output)
        self._update_decode_token_usage(output)
        # Append current turn to all turn list for next turn's calculations
        self.all_turn_metrics.append(self.current_turn_metrics.copy())
        self.current_turn_metrics.reset()
        # append_output is called only once before tool calling
        # in non-streaming case
        # so we can append all the parser messages to _messages
        output_msgs = self.parser.messages
        # The responses finish reason is set in the last message
        self.finish_reason = output.outputs[0].finish_reason
        self._messages.extend(output_msgs)

    def append_tool_output(self, output: list[Message]) -> None:
        output_msgs = output
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        self._messages.extend(output_msgs)

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    def _update_prefill_token_usage(self, output: RequestOutput) -> None:
        """Update token usage statistics for the prefill phase of generation.
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        The prefill phase processes the input prompt tokens. This method:
        1. Counts the prompt tokens for this turn
        2. Calculates tool output tokens for multi-turn conversations
        3. Updates cached token counts
        4. Tracks state for next turn calculations
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        Tool output tokens are calculated as:
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        current_prompt_tokens - last_turn_prompt_tokens -
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        last_turn_output_tokens
        This represents tokens added between turns (typically tool responses).
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        Args:
            output: The RequestOutput containing prompt token information
        """
        if output.prompt_token_ids is not None:
            this_turn_input_tokens = len(output.prompt_token_ids)
        else:
            this_turn_input_tokens = 0
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            logger.error("RequestOutput appended contains no prompt_token_ids.")
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        # Update current turn input tokens
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        self.current_turn_metrics.input_tokens = this_turn_input_tokens
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        self.num_prompt_tokens += this_turn_input_tokens

        # Calculate tool tokens (except on first turn)
        if self.is_first_turn:
            self.is_first_turn = False
        else:
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            previous_turn = self.all_turn_metrics[-1]
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            # start counting tool after first turn
            # tool tokens = this turn prefill - last turn prefill -
            # last turn decode
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            this_turn_tool_tokens = (
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                self.current_turn_metrics.input_tokens
                - previous_turn.input_tokens
                - previous_turn.output_tokens
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            )
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            # Handle negative tool token counts (shouldn't happen in normal
            # cases)
            if this_turn_tool_tokens < 0:
                logger.error(
                    "Negative tool output tokens calculated: %d "
                    "(current_input=%d, previous_input=%d, "
                    "previous_output=%d). Setting to 0.",
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                    this_turn_tool_tokens,
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                    self.current_turn_metrics.input_tokens,
                    previous_turn.input_tokens,
                    previous_turn.output_tokens,
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                )
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                this_turn_tool_tokens = 0

            self.num_tool_output_tokens += this_turn_tool_tokens
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            self.current_turn_metrics.tool_output_tokens = this_turn_tool_tokens
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        # Update cached tokens
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        num_cached_token = output.num_cached_tokens
        if num_cached_token is not None:
            self.num_cached_tokens += num_cached_token
            self.current_turn_metrics.cached_input_tokens = num_cached_token
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    def _update_decode_token_usage(self, output: RequestOutput) -> int:
        """Update token usage statistics for the decode phase of generation.
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        The decode phase processes the generated output tokens. This method:
        1. Counts output tokens from all completion outputs
        2. Updates the total output token count
        3. Tracks tokens generated in the current turn
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        In streaming mode, this is called for each token generated.
        In non-streaming mode, this is called once with all output tokens.
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        Args:
            output: The RequestOutput containing generated token information
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        Returns:
            int: Number of output tokens processed in this call
        """
        updated_output_token_count = 0
        if output.outputs:
            for completion_output in output.outputs:
                # only keep last round
                updated_output_token_count += len(completion_output.token_ids)
            self.num_output_tokens += updated_output_token_count
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            self.current_turn_metrics.output_tokens += updated_output_token_count
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        return updated_output_token_count

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    @property
    def messages(self) -> list:
        return self._messages

    def need_builtin_tool_call(self) -> bool:
        last_msg = self.messages[-1]
        recipient = last_msg.recipient
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        return recipient is not None and (
            recipient.startswith("browser.")
            or recipient.startswith("python")
            or recipient.startswith("container.")
        )
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    async def call_tool(self) -> list[Message]:
        if not self.messages:
            return []
        last_msg = self.messages[-1]
        recipient = last_msg.recipient
        if recipient is not None:
            if recipient.startswith("browser."):
                return await self.call_search_tool(
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                    self._tool_sessions["browser"], last_msg
                )
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            elif recipient.startswith("python"):
                return await self.call_python_tool(
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                    self._tool_sessions["python"], last_msg
                )
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            elif recipient.startswith("container."):
                return await self.call_container_tool(
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                    self._tool_sessions["container"], last_msg
                )
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        raise ValueError("No tool call found")

    def render_for_completion(self) -> list[int]:
        return render_for_completion(self.messages)

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    async def call_search_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: Message
    ) -> list[Message]:
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        self.called_tools.add("browser")
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        if isinstance(tool_session, Tool):
            return await tool_session.get_result(self)
        tool_name = last_msg.recipient.split(".")[1]
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        if envs.VLLM_TOOL_JSON_ERROR_AUTOMATIC_RETRY:
            try:
                args = json.loads(last_msg.content[0].text)
            except json.JSONDecodeError as e:
                return _create_json_parse_error_messages(last_msg, e)
        else:
            args = json.loads(last_msg.content[0].text)
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        result = await tool_session.call_tool(tool_name, args)
        result_str = result.content[0].text
        content = TextContent(text=result_str)
        author = Author(role=Role.TOOL, name=last_msg.recipient)
        return [
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            Message(
                author=author,
                content=[content],
                recipient=Role.ASSISTANT,
                channel=last_msg.channel,
            )
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        ]

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    async def call_python_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: Message
    ) -> list[Message]:
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        self.called_tools.add("python")
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        if isinstance(tool_session, Tool):
            return await tool_session.get_result(self)
        param = {
            "code": last_msg.content[0].text,
        }
        result = await tool_session.call_tool("python", param)
        result_str = result.content[0].text

        content = TextContent(text=result_str)
        author = Author(role=Role.TOOL, name="python")

        return [
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            Message(
                author=author,
                content=[content],
                channel=last_msg.channel,
                recipient=Role.ASSISTANT,
            )
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        ]
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    async def init_tool_sessions(
        self,
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        tool_server: ToolServer | None,
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        exit_stack: AsyncExitStack,
        request_id: str,
        mcp_tools: dict[str, Mcp],
    ):
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        if tool_server:
            for tool_name in self.available_tools:
                if tool_name not in self._tool_sessions:
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                    tool_type = _map_tool_name_to_tool_type(tool_name)
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                    headers = (
                        mcp_tools[tool_type].headers if tool_type in mcp_tools else None
                    )
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                    tool_session = await exit_stack.enter_async_context(
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                        tool_server.new_session(tool_name, request_id, headers)
                    )
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                    self._tool_sessions[tool_name] = tool_session
                    exit_stack.push_async_exit(self.cleanup_session)

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    async def call_container_tool(
        self, tool_session: Union["ClientSession", Tool], last_msg: Message
    ) -> list[Message]:
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        """
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        Call container tool. Expect this to be run in a stateful docker
        with command line terminal.
        The official container tool would at least
        expect the following format:
        - for tool name: exec
            - args:
                {
                    "cmd":List[str] "command to execute",
                    "workdir":optional[str] "current working directory",
                    "env":optional[object/dict] "environment variables",
                    "session_name":optional[str] "session name",
                    "timeout":optional[int] "timeout in seconds",
                    "user":optional[str] "user name",
                }
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        """
        self.called_tools.add("container")
        if isinstance(tool_session, Tool):
            return await tool_session.get_result(self)
        tool_name = last_msg.recipient.split(".")[1].split(" ")[0]
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        if envs.VLLM_TOOL_JSON_ERROR_AUTOMATIC_RETRY:
            try:
                args = json.loads(last_msg.content[0].text)
            except json.JSONDecodeError as e:
                return _create_json_parse_error_messages(last_msg, e)
        else:
            args = json.loads(last_msg.content[0].text)
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        result = await tool_session.call_tool(tool_name, args)
        result_str = result.content[0].text
        content = TextContent(text=result_str)
        author = Author(role=Role.TOOL, name=last_msg.recipient)
        return [
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            Message(
                author=author,
                content=[content],
                recipient=Role.ASSISTANT,
                channel=last_msg.channel,
            )
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        ]

    async def cleanup_session(self, *args, **kwargs) -> None:
        """Can be used as coro to used in __aexit__"""

        async def cleanup_tool_session(tool_session):
            if not isinstance(tool_session, Tool):
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                logger.info(
                    "Cleaning up tool session for %s", tool_session._client_info
                )
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                with contextlib.suppress(Exception):
                    await tool_session.call_tool("cleanup_session", {})

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        await asyncio.gather(
            *(
                cleanup_tool_session(self._tool_sessions[tool])
                for tool in self.called_tools
            )
        )
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class StreamingHarmonyContext(HarmonyContext):
    def __init__(self, *args, **kwargs):
        super().__init__(*args, **kwargs)
        self.last_output = None

        self.parser = get_streamable_parser_for_assistant()
        self.encoding = get_encoding()
        self.last_tok = None
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        self.first_tok_of_message = True
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        self.last_content_delta = None
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    @property
    def messages(self) -> list:
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        return self._messages
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    def append_output(self, output: RequestOutput) -> None:
        # append_output is called for each output token in streaming case,
        # so we only want to add the prompt tokens once for each message.
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        self.last_content_delta = None
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        if self.first_tok_of_message:
            self._update_prefill_token_usage(output)
        # Reset self.first_tok_of_message if needed:
        # if the current token is the last one of the current message
        # (finished=True), then the next token processed will mark the
        # beginning of a new message
        self.first_tok_of_message = output.finished
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        last_delta_text = ""
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        for tok in output.outputs[0].token_ids:
            self.parser.process(tok)
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            last_delta_text += self.parser.last_content_delta or ""
        if last_delta_text:
            self.last_content_delta = last_delta_text
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        self._update_decode_token_usage(output)

        # For streaming, update previous turn when message is complete
        if output.finished:
            self.all_turn_metrics.append(self.current_turn_metrics.copy())
            self.current_turn_metrics.reset()
        # Check if the current token is part of reasoning content
        self._update_num_reasoning_tokens()
        self.last_tok = tok
        if len(self._messages) - self.num_init_messages < len(self.parser.messages):
            self._messages.extend(
                self.parser.messages[len(self._messages) - self.num_init_messages :]
            )

    def append_tool_output(self, output: list[Message]) -> None:
        # Handle the case of tool output in direct message format
        assert len(output) == 1, "Tool output should be a single message"
        msg = output[0]
        # Sometimes the recipient is not set for tool messages,
        # so we set it to "assistant"
        if msg.author.role == Role.TOOL and msg.recipient is None:
            msg.recipient = "assistant"
        toks = self.encoding.render(msg)
        for tok in toks:
            self.parser.process(tok)
        self.last_tok = toks[-1]
        # TODO: add tool_output messages to self._messages
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    def is_expecting_start(self) -> bool:
        return self.parser.state == StreamState.EXPECT_START

    def is_assistant_action_turn(self) -> bool:
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        return self.last_tok in self.encoding.stop_tokens_for_assistant_actions()
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    def render_for_completion(self) -> list[int]:
        # now this list of tokens as next turn's starting tokens
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        # `<|start|>assistant`,
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        # we need to process them in parser.
        rendered_tokens = super().render_for_completion()

        last_n = -1
        to_process = []
        while rendered_tokens[last_n] != self.last_tok:
            to_process.append(rendered_tokens[last_n])
            last_n -= 1
        for tok in reversed(to_process):
            self.parser.process(tok)

        return rendered_tokens