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run_loop.py
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1902 lines (1758 loc) · 77.8 KB
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"""
Run-loop orchestration helpers used by the Agent runner. This module coordinates tool execution,
approvals, and turn processing; all symbols here are internal and not part of the public SDK.
"""
from __future__ import annotations
import asyncio
import dataclasses as _dc
import json
from collections.abc import Awaitable, Callable, Mapping
from typing import Any, TypeVar, cast
from openai.types.responses import (
Response,
ResponseCompletedEvent,
ResponseFunctionToolCall,
ResponseOutputItemDoneEvent,
)
from openai.types.responses.response_output_item import McpCall, McpListTools
from openai.types.responses.response_prompt_param import ResponsePromptParam
from openai.types.responses.response_reasoning_item import ResponseReasoningItem
from .._mcp_tool_metadata import collect_mcp_list_tools_metadata
from .._tool_identity import (
NamedToolLookupKey,
build_function_tool_lookup_map,
get_function_tool_lookup_key_for_call,
get_tool_trace_name_for_tool,
)
from ..agent import Agent
from ..agent_output import AgentOutputSchemaBase
from ..exceptions import (
AgentsException,
InputGuardrailTripwireTriggered,
MaxTurnsExceeded,
ModelBehaviorError,
OutputGuardrailTripwireTriggered,
RunErrorDetails,
UserError,
)
from ..handoffs import Handoff
from ..items import (
HandoffCallItem,
ItemHelpers,
ModelResponse,
ReasoningItem,
RunItem,
ToolApprovalItem,
ToolCallItem,
ToolCallItemTypes,
ToolSearchCallItem,
ToolSearchOutputItem,
TResponseInputItem,
coerce_tool_search_call_raw_item,
coerce_tool_search_output_raw_item,
)
from ..lifecycle import RunHooks
from ..logger import logger
from ..memory import Session
from ..result import RunResultStreaming
from ..run_config import ReasoningItemIdPolicy, RunConfig
from ..run_context import AgentHookContext, RunContextWrapper, TContext
from ..run_error_handlers import RunErrorHandlers
from ..run_state import RunState
from ..sandbox.runtime import SandboxRuntime
from ..stream_events import (
AgentUpdatedStreamEvent,
RawResponsesStreamEvent,
RunItemStreamEvent,
)
from ..tool import (
FunctionTool,
Tool,
ToolOrigin,
ToolOriginType,
dispose_resolved_computers,
get_function_tool_origin,
)
from ..tracing import Span, SpanError, agent_span, get_current_trace, task_span, turn_span
from ..tracing.model_tracing import get_model_tracing_impl
from ..tracing.span_data import AgentSpanData, TaskSpanData
from ..usage import Usage
from ..util import _coro, _error_tracing
from .agent_bindings import AgentBindings, bind_public_agent
from .agent_runner_helpers import (
apply_resumed_conversation_settings,
attach_usage_to_span,
snapshot_usage,
usage_delta,
)
from .approvals import approvals_from_step
from .error_handlers import (
build_run_error_data,
create_message_output_item,
format_final_output_text,
resolve_run_error_handler_result,
validate_handler_final_output,
)
from .guardrails import (
input_guardrail_tripwire_triggered_for_stream,
run_input_guardrails,
run_input_guardrails_with_queue,
run_output_guardrails,
run_single_input_guardrail,
run_single_output_guardrail,
)
from .items import (
REJECTION_MESSAGE,
copy_input_items,
deduplicate_input_items_preferring_latest,
ensure_input_item_format,
normalize_resumed_input,
prepare_model_input_items,
run_items_to_input_items,
)
from .model_retry import (
apply_retry_attempt_usage,
get_response_with_retry,
stream_response_with_retry,
)
from .oai_conversation import OpenAIServerConversationTracker
from .prompt_cache_key import PromptCacheKeyResolver, model_settings_with_prompt_cache_key
from .run_steps import (
NextStepFinalOutput,
NextStepHandoff,
NextStepInterruption,
NextStepRunAgain,
ProcessedResponse,
QueueCompleteSentinel,
SingleStepResult,
ToolRunApplyPatchCall,
ToolRunComputerAction,
ToolRunFunction,
ToolRunHandoff,
ToolRunLocalShellCall,
ToolRunMCPApprovalRequest,
ToolRunShellCall,
)
from .session_persistence import (
persist_session_items_for_guardrail_trip,
prepare_input_with_session,
resumed_turn_items,
rewind_session_items,
save_result_to_session,
save_resumed_turn_items,
session_items_for_turn,
update_run_state_after_resume,
)
from .streaming import stream_step_items_to_queue, stream_step_result_to_queue
from .tool_actions import ApplyPatchAction, ComputerAction, LocalShellAction, ShellAction
from .tool_execution import (
build_litellm_json_tool_call,
coerce_shell_call,
execute_apply_patch_calls,
execute_computer_actions,
execute_function_tool_calls,
execute_local_shell_calls,
execute_shell_calls,
extract_tool_call_id,
initialize_computer_tools,
maybe_reset_tool_choice,
normalize_shell_output,
serialize_shell_output,
)
from .tool_planning import execute_mcp_approval_requests
from .tool_use_tracker import (
TOOL_CALL_TYPES,
AgentToolUseTracker,
hydrate_tool_use_tracker,
serialize_tool_use_tracker,
)
from .turn_preparation import (
get_all_tools,
get_handoffs,
get_model,
get_output_schema,
maybe_filter_model_input,
validate_run_hooks,
)
from .turn_resolution import (
check_for_final_output_from_tools,
execute_final_output,
execute_handoffs,
execute_tools_and_side_effects,
get_single_step_result_from_response,
process_model_response,
resolve_interrupted_turn,
run_final_output_hooks,
)
__all__ = [
"extract_tool_call_id",
"coerce_shell_call",
"normalize_shell_output",
"serialize_shell_output",
"ComputerAction",
"LocalShellAction",
"ShellAction",
"ApplyPatchAction",
"REJECTION_MESSAGE",
"AgentToolUseTracker",
"ToolRunHandoff",
"ToolRunFunction",
"ToolRunComputerAction",
"ToolRunMCPApprovalRequest",
"ToolRunLocalShellCall",
"ToolRunShellCall",
"ToolRunApplyPatchCall",
"ProcessedResponse",
"NextStepHandoff",
"NextStepFinalOutput",
"NextStepRunAgain",
"NextStepInterruption",
"SingleStepResult",
"QueueCompleteSentinel",
"execute_tools_and_side_effects",
"resolve_interrupted_turn",
"execute_function_tool_calls",
"execute_local_shell_calls",
"execute_shell_calls",
"execute_apply_patch_calls",
"execute_computer_actions",
"execute_handoffs",
"execute_mcp_approval_requests",
"execute_final_output",
"run_final_output_hooks",
"run_single_input_guardrail",
"run_single_output_guardrail",
"maybe_reset_tool_choice",
"initialize_computer_tools",
"process_model_response",
"stream_step_items_to_queue",
"stream_step_result_to_queue",
"check_for_final_output_from_tools",
"get_model_tracing_impl",
"validate_run_hooks",
"maybe_filter_model_input",
"run_input_guardrails_with_queue",
"start_streaming",
"run_single_turn_streamed",
"run_single_turn",
"get_single_step_result_from_response",
"run_input_guardrails",
"run_output_guardrails",
"get_new_response",
"get_output_schema",
"get_handoffs",
"get_all_tools",
"get_model",
"input_guardrail_tripwire_triggered_for_stream",
]
def _should_attach_generic_agent_error(exc: Exception) -> bool:
return not isinstance(
exc,
ModelBehaviorError | InputGuardrailTripwireTriggered | OutputGuardrailTripwireTriggered,
)
async def _should_persist_stream_items(
*,
session: Session | None,
server_conversation_tracker: OpenAIServerConversationTracker | None,
streamed_result: RunResultStreaming,
) -> bool:
if session is None or server_conversation_tracker is not None:
return False
should_skip_session_save = await input_guardrail_tripwire_triggered_for_stream(streamed_result)
return should_skip_session_save is False
def _prepare_turn_input_items(
caller_input: str | list[TResponseInputItem],
generated_items: list[RunItem],
reasoning_item_id_policy: ReasoningItemIdPolicy | None,
) -> list[TResponseInputItem]:
caller_items = ItemHelpers.input_to_new_input_list(caller_input)
continuation_items = run_items_to_input_items(generated_items, reasoning_item_id_policy)
return prepare_model_input_items(caller_items, continuation_items)
def _complete_stream_interruption(
streamed_result: RunResultStreaming,
*,
interruptions: list[ToolApprovalItem],
processed_response: ProcessedResponse | None,
) -> None:
streamed_result.interruptions = interruptions
streamed_result._last_processed_response = processed_response
streamed_result.is_complete = True
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
async def _save_resumed_stream_items(
*,
session: Session | None,
server_conversation_tracker: OpenAIServerConversationTracker | None,
streamed_result: RunResultStreaming,
run_state: RunState | None,
items: list[RunItem],
response_id: str | None,
store: bool | None = None,
) -> None:
if not await _should_persist_stream_items(
session=session,
server_conversation_tracker=server_conversation_tracker,
streamed_result=streamed_result,
):
return
streamed_result._current_turn_persisted_item_count = await save_resumed_turn_items(
session=session,
items=items,
persisted_count=streamed_result._current_turn_persisted_item_count,
response_id=response_id,
reasoning_item_id_policy=streamed_result._reasoning_item_id_policy,
store=store,
)
if run_state is not None:
run_state._current_turn_persisted_item_count = (
streamed_result._current_turn_persisted_item_count
)
async def _save_stream_items(
*,
session: Session | None,
server_conversation_tracker: OpenAIServerConversationTracker | None,
streamed_result: RunResultStreaming,
run_state: RunState | None,
items: list[RunItem],
response_id: str | None,
update_persisted_count: bool,
store: bool | None = None,
) -> None:
if not await _should_persist_stream_items(
session=session,
server_conversation_tracker=server_conversation_tracker,
streamed_result=streamed_result,
):
return
await save_result_to_session(
session,
[],
list(items),
run_state,
response_id=response_id,
store=store,
)
if update_persisted_count and streamed_result._state is not None:
streamed_result._current_turn_persisted_item_count = (
streamed_result._state._current_turn_persisted_item_count
)
async def _run_output_guardrails_for_stream(
*,
agent: Agent[TContext],
run_config: RunConfig,
output: Any,
context_wrapper: RunContextWrapper[TContext],
streamed_result: RunResultStreaming,
) -> list[Any]:
streamed_result._output_guardrails_task = asyncio.create_task(
run_output_guardrails(
agent.output_guardrails + (run_config.output_guardrails or []),
agent,
output,
context_wrapper,
)
)
try:
return cast(list[Any], await streamed_result._output_guardrails_task)
except OutputGuardrailTripwireTriggered:
raise
except asyncio.CancelledError:
raise
except Exception:
logger.error("Unexpected error in output guardrails", exc_info=True)
return []
async def _finalize_streamed_final_output(
*,
streamed_result: RunResultStreaming,
agent: Agent[TContext],
run_config: RunConfig,
output: Any,
context_wrapper: RunContextWrapper[TContext],
save_items: Callable[[list[RunItem], str | None, bool | None], Awaitable[None]],
items: list[RunItem],
response_id: str | None,
store_setting: bool | None,
) -> None:
output_guardrail_results = await _run_output_guardrails_for_stream(
agent=agent,
run_config=run_config,
output=output,
context_wrapper=context_wrapper,
streamed_result=streamed_result,
)
streamed_result.output_guardrail_results = output_guardrail_results
streamed_result.final_output = output
streamed_result.is_complete = True
await save_items(items, response_id, store_setting)
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
async def _finalize_streamed_interruption(
*,
streamed_result: RunResultStreaming,
save_items: Callable[[list[RunItem], str | None, bool | None], Awaitable[None]],
items: list[RunItem],
response_id: str | None,
store_setting: bool | None,
interruptions: list[ToolApprovalItem],
processed_response: ProcessedResponse | None,
) -> None:
await save_items(items, response_id, store_setting)
_complete_stream_interruption(
streamed_result,
interruptions=interruptions,
processed_response=processed_response,
)
T = TypeVar("T")
async def start_streaming(
starting_input: str | list[TResponseInputItem],
streamed_result: RunResultStreaming,
starting_agent: Agent[TContext],
max_turns: int,
hooks: RunHooks[TContext],
context_wrapper: RunContextWrapper[TContext],
run_config: RunConfig,
error_handlers: RunErrorHandlers[TContext] | None,
previous_response_id: str | None,
auto_previous_response_id: bool,
conversation_id: str | None,
session: Session | None,
run_state: RunState[TContext] | None = None,
*,
is_resumed_state: bool = False,
sandbox_runtime: SandboxRuntime[TContext] | None = None,
):
"""Run the streaming loop for a run result."""
if streamed_result.trace:
streamed_result.trace.start(mark_as_current=True)
if run_state is not None:
run_state.set_trace(get_current_trace() or streamed_result.trace)
streamed_result._trace_state = run_state._trace_state
if is_resumed_state and run_state is not None:
(
conversation_id,
previous_response_id,
auto_previous_response_id,
) = apply_resumed_conversation_settings(
run_state=run_state,
conversation_id=conversation_id,
previous_response_id=previous_response_id,
auto_previous_response_id=auto_previous_response_id,
)
current_trace = streamed_result.trace or get_current_trace()
current_task_span: Span[TaskSpanData] | None = (
task_span(name=current_trace.name) if current_trace else None
)
if current_task_span:
current_task_span.start(mark_as_current=True)
task_usage_start = snapshot_usage(context_wrapper.usage)
try:
resolved_reasoning_item_id_policy: ReasoningItemIdPolicy | None = (
run_config.reasoning_item_id_policy
if run_config.reasoning_item_id_policy is not None
else (run_state._reasoning_item_id_policy if run_state is not None else None)
)
if run_state is not None:
run_state._reasoning_item_id_policy = resolved_reasoning_item_id_policy
streamed_result._reasoning_item_id_policy = resolved_reasoning_item_id_policy
if (
conversation_id is not None
or previous_response_id is not None
or auto_previous_response_id
):
server_conversation_tracker = OpenAIServerConversationTracker(
conversation_id=conversation_id,
previous_response_id=previous_response_id,
auto_previous_response_id=auto_previous_response_id,
reasoning_item_id_policy=resolved_reasoning_item_id_policy,
)
else:
server_conversation_tracker = None
def _sync_conversation_tracking_from_tracker() -> None:
if server_conversation_tracker is None:
return
if run_state is not None:
run_state._conversation_id = server_conversation_tracker.conversation_id
run_state._previous_response_id = server_conversation_tracker.previous_response_id
run_state._auto_previous_response_id = (
server_conversation_tracker.auto_previous_response_id
)
streamed_result._conversation_id = server_conversation_tracker.conversation_id
streamed_result._previous_response_id = server_conversation_tracker.previous_response_id
streamed_result._auto_previous_response_id = (
server_conversation_tracker.auto_previous_response_id
)
if run_state is None:
run_state = RunState(
context=context_wrapper,
original_input=copy_input_items(starting_input),
starting_agent=starting_agent,
max_turns=max_turns,
conversation_id=conversation_id,
previous_response_id=previous_response_id,
auto_previous_response_id=auto_previous_response_id,
)
run_state._reasoning_item_id_policy = resolved_reasoning_item_id_policy
streamed_result._state = run_state
elif streamed_result._state is None:
streamed_result._state = run_state
if run_state is not None:
streamed_result._model_input_items = list(run_state._generated_items)
# Streamed follow-ups need the same normalized replay signal as sync runs when the
# runner's continuation differs from the richer session history.
streamed_result._replay_from_model_input_items = list(
run_state._generated_items
) != list(run_state._session_items)
if run_state is not None:
run_state._conversation_id = conversation_id
run_state._previous_response_id = previous_response_id
run_state._auto_previous_response_id = auto_previous_response_id
streamed_result._conversation_id = conversation_id
streamed_result._previous_response_id = previous_response_id
streamed_result._auto_previous_response_id = auto_previous_response_id
prompt_cache_key_resolver = PromptCacheKeyResolver.from_run_state(
run_state=run_state,
)
current_span: Span[AgentSpanData] | None = None
if run_state is not None and run_state._current_agent is not None:
current_agent = run_state._current_agent
else:
current_agent = starting_agent
if run_state is not None:
current_turn = run_state._current_turn
else:
current_turn = 0
should_run_agent_start_hooks = True
tool_use_tracker = AgentToolUseTracker()
if run_state is not None:
hydrate_tool_use_tracker(tool_use_tracker, run_state, starting_agent)
pending_server_items: list[RunItem] | None = None
session_input_items_for_persistence: list[TResponseInputItem] | None = None
if is_resumed_state and server_conversation_tracker is not None and run_state is not None:
session_items: list[TResponseInputItem] | None = None
if session is not None:
try:
session_items = await session.get_items()
except Exception:
session_items = None
server_conversation_tracker.hydrate_from_state(
original_input=run_state._original_input,
generated_items=run_state._generated_items,
model_responses=run_state._model_responses,
session_items=session_items,
)
streamed_result._event_queue.put_nowait(AgentUpdatedStreamEvent(new_agent=current_agent))
prepared_input: str | list[TResponseInputItem]
if is_resumed_state and run_state is not None:
prepared_input = normalize_resumed_input(starting_input)
streamed_result.input = prepared_input
streamed_result._original_input_for_persistence = []
streamed_result._stream_input_persisted = True
else:
server_manages_conversation = server_conversation_tracker is not None
prepared_input, session_items_snapshot = await prepare_input_with_session(
starting_input,
session,
run_config.session_input_callback,
run_config.session_settings,
include_history_in_prepared_input=not server_manages_conversation,
preserve_dropped_new_items=True,
)
streamed_result.input = prepared_input
streamed_result._original_input = copy_input_items(prepared_input)
if server_manages_conversation:
streamed_result._original_input_for_persistence = []
streamed_result._stream_input_persisted = True
else:
session_input_items_for_persistence = session_items_snapshot
streamed_result._original_input_for_persistence = session_items_snapshot
async def _save_resumed_items(
items: list[RunItem], response_id: str | None, store_setting: bool | None
) -> None:
await _save_resumed_stream_items(
session=session,
server_conversation_tracker=server_conversation_tracker,
streamed_result=streamed_result,
run_state=run_state,
items=items,
response_id=response_id,
store=store_setting,
)
async def _save_stream_items_with_count(
items: list[RunItem], response_id: str | None, store_setting: bool | None
) -> None:
await _save_stream_items(
session=session,
server_conversation_tracker=server_conversation_tracker,
streamed_result=streamed_result,
run_state=run_state,
items=items,
response_id=response_id,
update_persisted_count=True,
store=store_setting,
)
async def _save_stream_items_without_count(
items: list[RunItem], response_id: str | None, store_setting: bool | None
) -> None:
await _save_stream_items(
session=session,
server_conversation_tracker=server_conversation_tracker,
streamed_result=streamed_result,
run_state=run_state,
items=items,
response_id=response_id,
update_persisted_count=False,
store=store_setting,
)
except BaseException:
if current_task_span:
attach_usage_to_span(
current_task_span,
usage_delta(task_usage_start, context_wrapper.usage),
)
current_task_span.finish(reset_current=True)
if streamed_result.trace:
streamed_result.trace.finish(reset_current=True)
if not streamed_result.is_complete:
streamed_result.is_complete = True
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
raise
try:
while True:
all_input_guardrails = (
starting_agent.input_guardrails + (run_config.input_guardrails or [])
if current_turn == 0 and not is_resumed_state
else []
)
sequential_guardrails = [g for g in all_input_guardrails if not g.run_in_parallel]
parallel_guardrails = [g for g in all_input_guardrails if g.run_in_parallel]
current_bindings = bind_public_agent(current_agent)
execution_agent = current_bindings.execution_agent
prepared_turn_input = copy_input_items(streamed_result.input)
if sandbox_runtime is not None and sandbox_runtime.enabled and sequential_guardrails:
# Mirror the non-streaming path: a blocking first-turn guardrail should fire
# before sandbox prep can create, start, or mutate sandbox state.
existing_input_guardrail_count = len(streamed_result.input_guardrail_results)
await run_input_guardrails_with_queue(
starting_agent,
sequential_guardrails,
ItemHelpers.input_to_new_input_list(prepared_turn_input),
context_wrapper,
streamed_result,
None,
)
for result in streamed_result.input_guardrail_results[
existing_input_guardrail_count:
]:
if result.output.tripwire_triggered:
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
session_input_items_for_persistence = (
await persist_session_items_for_guardrail_trip(
session,
server_conversation_tracker,
session_input_items_for_persistence,
starting_input,
run_state,
store=current_agent.model_settings.resolve(
run_config.model_settings
).store,
)
)
raise InputGuardrailTripwireTriggered(result)
sequential_guardrails = []
if sandbox_runtime is not None:
prepared_sandbox = await sandbox_runtime.prepare_agent(
current_agent=current_agent,
current_input=prepared_turn_input,
context_wrapper=context_wrapper,
is_resumed_state=is_resumed_state,
)
current_bindings = prepared_sandbox.bindings
execution_agent = current_bindings.execution_agent
prepared_turn_input = copy_input_items(prepared_sandbox.input)
streamed_result.input = prepared_turn_input
streamed_result._original_input = copy_input_items(prepared_turn_input)
if run_state is not None:
run_state._original_input = copy_input_items(prepared_turn_input)
sandbox_runtime.apply_result_metadata(streamed_result)
if is_resumed_state and run_state is not None and run_state._current_step is not None:
if isinstance(run_state._current_step, NextStepInterruption):
if not run_state._model_responses or not run_state._last_processed_response:
raise UserError("No model response found in previous state")
last_model_response = run_state._model_responses[-1]
turn_result = await resolve_interrupted_turn(
bindings=current_bindings,
original_input=run_state._original_input,
original_pre_step_items=run_state._generated_items,
new_response=last_model_response,
processed_response=run_state._last_processed_response,
hooks=hooks,
context_wrapper=context_wrapper,
run_config=run_config,
server_manages_conversation=server_conversation_tracker is not None,
run_state=run_state,
)
tool_use_tracker.record_processed_response(
current_agent, run_state._last_processed_response
)
streamed_result._tool_use_tracker_snapshot = serialize_tool_use_tracker(
tool_use_tracker,
starting_agent=(
run_state._starting_agent
if run_state is not None and run_state._starting_agent is not None
else starting_agent
),
)
streamed_result.input = turn_result.original_input
streamed_result._original_input = copy_input_items(turn_result.original_input)
generated_items, turn_session_items = resumed_turn_items(turn_result)
base_session_items = (
list(run_state._session_items) if run_state is not None else []
)
streamed_result._model_input_items = generated_items
streamed_result.new_items = base_session_items + list(turn_session_items)
streamed_result._replay_from_model_input_items = list(
streamed_result._model_input_items
) != list(streamed_result.new_items)
if run_state is not None:
update_run_state_after_resume(
run_state,
turn_result=turn_result,
generated_items=generated_items,
session_items=streamed_result.new_items,
)
run_state._current_turn_persisted_item_count = (
streamed_result._current_turn_persisted_item_count
)
stream_step_items_to_queue(
list(turn_session_items), streamed_result._event_queue
)
store_setting = current_agent.model_settings.resolve(
run_config.model_settings
).store
if isinstance(turn_result.next_step, NextStepInterruption):
await _finalize_streamed_interruption(
streamed_result=streamed_result,
save_items=_save_resumed_items,
items=list(turn_session_items),
response_id=turn_result.model_response.response_id,
store_setting=store_setting,
interruptions=approvals_from_step(turn_result.next_step),
processed_response=run_state._last_processed_response,
)
break
if isinstance(turn_result.next_step, NextStepHandoff):
current_agent = turn_result.next_step.new_agent
if run_state is not None:
run_state._current_agent = current_agent
if current_span:
current_span.finish(reset_current=True)
current_span = None
should_run_agent_start_hooks = True
streamed_result._event_queue.put_nowait(
AgentUpdatedStreamEvent(new_agent=current_agent)
)
run_state._current_step = NextStepRunAgain() # type: ignore[assignment]
continue
if isinstance(turn_result.next_step, NextStepFinalOutput):
await _finalize_streamed_final_output(
streamed_result=streamed_result,
agent=current_agent,
run_config=run_config,
output=turn_result.next_step.output,
context_wrapper=context_wrapper,
save_items=_save_resumed_items,
items=list(turn_session_items),
response_id=turn_result.model_response.response_id,
store_setting=store_setting,
)
break
if isinstance(turn_result.next_step, NextStepRunAgain):
await _save_resumed_items(
list(turn_session_items),
turn_result.model_response.response_id,
store_setting,
)
run_state._current_step = NextStepRunAgain() # type: ignore[assignment]
continue
run_state._current_step = None
if streamed_result._cancel_mode == "after_turn":
streamed_result.is_complete = True
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
break
if streamed_result.is_complete:
break
all_tools = await get_all_tools(execution_agent, context_wrapper)
await initialize_computer_tools(tools=all_tools, context_wrapper=context_wrapper)
if current_span is None:
handoff_names = [
h.agent_name for h in await get_handoffs(execution_agent, context_wrapper)
]
if output_schema := get_output_schema(execution_agent):
output_type_name = output_schema.name()
else:
output_type_name = "str"
current_span = agent_span(
name=current_agent.name,
handoffs=handoff_names,
output_type=output_type_name,
)
current_span.start(mark_as_current=True)
tool_names = [
tool_name
for tool in all_tools
if (tool_name := get_tool_trace_name_for_tool(tool)) is not None
]
current_span.span_data.tools = tool_names
current_turn += 1
streamed_result.current_turn = current_turn
streamed_result._current_turn_persisted_item_count = 0
if run_state:
run_state._current_turn_persisted_item_count = 0
if current_turn > max_turns:
_error_tracing.attach_error_to_span(
current_span,
SpanError(
message="Max turns exceeded",
data={"max_turns": max_turns},
),
)
max_turns_error = MaxTurnsExceeded(f"Max turns ({max_turns}) exceeded")
handler_configured = bool(
error_handlers and error_handlers.get("max_turns") is not None
)
if handler_configured:
streamed_result._max_turns_handled = True
run_error_data = build_run_error_data(
input=streamed_result.input,
new_items=streamed_result.new_items,
raw_responses=streamed_result.raw_responses,
last_agent=current_agent,
reasoning_item_id_policy=streamed_result._reasoning_item_id_policy,
)
handler_result = await resolve_run_error_handler_result(
error_handlers=error_handlers,
error=max_turns_error,
context_wrapper=context_wrapper,
run_data=run_error_data,
)
if handler_result is None:
if handler_configured:
streamed_result._max_turns_handled = False
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
break
validated_output = validate_handler_final_output(
current_agent, handler_result.final_output
)
output_text = format_final_output_text(current_agent, validated_output)
synthesized_item = create_message_output_item(current_agent, output_text)
include_in_history = handler_result.include_in_history
if include_in_history:
streamed_result._model_input_items.append(synthesized_item)
streamed_result.new_items.append(synthesized_item)
if run_state is not None:
run_state._generated_items = list(streamed_result._model_input_items)
run_state._clear_generated_items_last_processed_marker()
run_state._session_items = list(streamed_result.new_items)
stream_step_items_to_queue([synthesized_item], streamed_result._event_queue)
store_setting = current_agent.model_settings.resolve(
run_config.model_settings
).store
if is_resumed_state:
await _save_resumed_items([synthesized_item], None, store_setting)
else:
await _save_stream_items_with_count([synthesized_item], None, store_setting)
await run_final_output_hooks(
current_agent, hooks, context_wrapper, validated_output
)
output_guardrail_results = await _run_output_guardrails_for_stream(
agent=current_agent,
run_config=run_config,
output=validated_output,
context_wrapper=context_wrapper,
streamed_result=streamed_result,
)
streamed_result.output_guardrail_results = output_guardrail_results
streamed_result.final_output = validated_output
streamed_result.is_complete = True
streamed_result._stored_exception = None
streamed_result._max_turns_handled = True
streamed_result.current_turn = max_turns
if run_state is not None:
run_state._current_turn = max_turns
run_state._current_step = None
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
break
if current_turn == 1:
if sequential_guardrails:
await run_input_guardrails_with_queue(
starting_agent,
sequential_guardrails,
ItemHelpers.input_to_new_input_list(prepared_turn_input),
context_wrapper,
streamed_result,
current_span,
)
for result in streamed_result.input_guardrail_results:
if result.output.tripwire_triggered:
streamed_result._event_queue.put_nowait(QueueCompleteSentinel())
session_input_items_for_persistence = (
await persist_session_items_for_guardrail_trip(
session,
server_conversation_tracker,
session_input_items_for_persistence,
starting_input,
run_state,
store=current_agent.model_settings.resolve(
run_config.model_settings
).store,
)
)
raise InputGuardrailTripwireTriggered(result)
if parallel_guardrails:
streamed_result._input_guardrails_task = asyncio.create_task(
run_input_guardrails_with_queue(
starting_agent,
parallel_guardrails,
ItemHelpers.input_to_new_input_list(prepared_turn_input),
context_wrapper,
streamed_result,
current_span,
)
)
try:
logger.debug(
"Starting turn %s, current_agent=%s",
current_turn,
current_agent.name,
)
turn_usage_start = snapshot_usage(context_wrapper.usage)
current_turn_span = turn_span(
turn=current_turn,
agent_name=current_agent.name,
)
current_turn_span.start(mark_as_current=True)