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Python

# Copyright (c) Microsoft. All rights reserved.
import sys
from typing import Any, Literal
from unittest.mock import AsyncMock, patch
import pytest
from pydantic import BaseModel
from semantic_kernel.agents.orchestration.magentic import (
MagenticContext,
MagenticOrchestration,
ProgressLedger,
ProgressLedgerItem,
StandardMagenticManager,
)
from semantic_kernel.agents.orchestration.orchestration_base import DefaultTypeAlias, OrchestrationResult
from semantic_kernel.agents.orchestration.prompts._magentic_prompts import (
ORCHESTRATOR_FINAL_ANSWER_PROMPT,
ORCHESTRATOR_PROGRESS_LEDGER_PROMPT,
ORCHESTRATOR_TASK_LEDGER_FACTS_PROMPT,
ORCHESTRATOR_TASK_LEDGER_FACTS_UPDATE_PROMPT,
ORCHESTRATOR_TASK_LEDGER_FULL_PROMPT,
ORCHESTRATOR_TASK_LEDGER_PLAN_PROMPT,
ORCHESTRATOR_TASK_LEDGER_PLAN_UPDATE_PROMPT,
)
from semantic_kernel.agents.runtime.in_process.in_process_runtime import InProcessRuntime
from semantic_kernel.connectors.ai.chat_completion_client_base import ChatCompletionClientBase
from semantic_kernel.connectors.ai.prompt_execution_settings import PromptExecutionSettings
from semantic_kernel.contents.chat_history import ChatHistory
from semantic_kernel.contents.chat_message_content import ChatMessageContent
from semantic_kernel.contents.streaming_chat_message_content import StreamingChatMessageContent
from semantic_kernel.contents.utils.author_role import AuthorRole
from tests.unit.agents.orchestration.conftest import MockAgent, MockAgentWithException, MockRuntime
class MockChatCompletionService(ChatCompletionClientBase):
"""A mock chat completion service for testing purposes."""
pass
class MockPromptExecutionSettings(PromptExecutionSettings):
"""A mock prompt execution settings class for testing purposes."""
response_format: (
dict[Literal["type"], Literal["text", "json_object"]] | dict[str, Any] | type[BaseModel] | type | None
) = None
# region MagenticOrchestration
async def test_init_member_without_description_throws():
"""Test the prepare method of the MagenticOrchestration with a member without description."""
agent_a = MockAgent()
agent_b = MockAgent()
with pytest.raises(ValueError):
MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
),
)
async def test_prepare():
"""Test the prepare method of the MagenticOrchestration."""
agent_a = MockAgent(description="test agent")
agent_b = MockAgent(description="test agent")
runtime = MockRuntime()
package_path = "semantic_kernel.agents.orchestration.magentic"
with (
patch(f"{package_path}.MagenticOrchestration._start"),
patch(f"{package_path}.MagenticAgentActor.register") as mock_agent_actor_register,
patch(f"{package_path}.MagenticManagerActor.register") as mock_manager_actor_register,
patch.object(runtime, "add_subscription") as mock_add_subscription,
):
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
),
)
await orchestration.invoke(task="test_message", runtime=runtime)
assert mock_agent_actor_register.call_count == 2
assert mock_manager_actor_register.call_count == 1
assert mock_add_subscription.call_count == 3
ManagerProgressList = [
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_a", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_b", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="N/A", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
]
ManagerProgressListStalling = [
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_a", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=True, reason="mock_reasoning"), # is_in_loop=True
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_a", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=True, reason="mock_reasoning"), # is_in_loop=True
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="N/A", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_b", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="N/A", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
]
ManagerProgressListUnknownSpeaker = [
ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=True, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="unknown", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
),
]
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke():
"""Test the invoke method of the MagenticOrchestration."""
with (
patch.object(MockAgent, "invoke_stream", wraps=MockAgent.invoke_stream, autospec=True) as mock_invoke_stream,
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager, "create_progress_ledger", new_callable=AsyncMock, side_effect=ManagerProgressList
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
runtime = InProcessRuntime()
runtime.start()
try:
orchestration = MagenticOrchestration(members=[agent_a, agent_b], manager=manager)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
result = await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
assert isinstance(orchestration_result, OrchestrationResult)
assert isinstance(result, ChatMessageContent)
assert result.role == AuthorRole.ASSISTANT
assert result.content == "mock_response"
assert mock_invoke_stream.call_count == 2
assert mock_get_chat_message_content.call_count == 3
async def test_invoke_with_list_error():
"""Test the invoke method of the MagenticOrchestration with a list of messages which raises an error."""
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
messages = [
ChatMessageContent(role=AuthorRole.USER, content="test_message_1"),
ChatMessageContent(role=AuthorRole.USER, content="test_message_2"),
]
runtime = MockRuntime()
package_path = "semantic_kernel.agents.orchestration.magentic"
with (
patch(f"{package_path}.MagenticAgentActor.register"),
patch(f"{package_path}.MagenticManagerActor.register"),
patch.object(runtime, "add_subscription"),
pytest.raises(ValueError),
):
orchestration = MagenticOrchestration(members=[agent_a, agent_b], manager=manager)
orchestration_result = await orchestration.invoke(task=messages, runtime=runtime)
await orchestration_result.get(1.0)
async def test_invoke_with_agent_raising_exception():
"""Test the invoke method of the MagenticOrchestration with a list of messages which raises an error."""
with (
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager, "create_progress_ledger", new_callable=AsyncMock, side_effect=ManagerProgressList
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
agent_a = MockAgentWithException(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
runtime = InProcessRuntime()
runtime.start()
orchestration = MagenticOrchestration(members=[agent_a, agent_b], manager=manager)
try:
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
with pytest.raises(RuntimeError, match="Mock agent exception"):
await orchestration_result.get(1.0)
assert orchestration_result.exception is not None
finally:
await runtime.stop_when_idle()
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_response_callback():
"""Test the invoke method of the MagenticOrchestration with a response callback."""
runtime = InProcessRuntime()
runtime.start()
responses: list[DefaultTypeAlias] = []
with (
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager, "create_progress_ledger", new_callable=AsyncMock, side_effect=ManagerProgressList
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
),
agent_response_callback=lambda x: responses.append(x),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
assert len(responses) == 2
assert all(isinstance(item, ChatMessageContent) for item in responses)
assert all(item.content == "mock_response" for item in responses)
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_streaming_response_callback():
"""Test the invoke method of the MagenticOrchestration with a streaming response callback."""
runtime = InProcessRuntime()
runtime.start()
responses: dict[str, list[StreamingChatMessageContent]] = {}
with (
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager, "create_progress_ledger", new_callable=AsyncMock, side_effect=ManagerProgressList
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
),
streaming_agent_response_callback=lambda x, _: responses.setdefault(x.name, []).append(x),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
assert len(responses[agent_a.name]) == 2
assert len(responses[agent_b.name]) == 2
assert all(isinstance(item, StreamingChatMessageContent) for item in responses[agent_a.name])
assert all(isinstance(item, StreamingChatMessageContent) for item in responses[agent_b.name])
agent_a_response = sum(responses[agent_a.name][1:], responses[agent_a.name][0])
assert agent_a_response.content == "mock_response"
agent_b_response = sum(responses[agent_b.name][1:], responses[agent_b.name][0])
assert agent_b_response.content == "mock_response"
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_max_stall_count_exceeded():
""" "Test the invoke method of the MagenticOrchestration with max stall count exceeded."""
runtime = InProcessRuntime()
runtime.start()
with (
patch.object(MockAgent, "invoke_stream", wraps=MockAgent.invoke_stream, autospec=True) as mock_invoke_stream,
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager,
"create_progress_ledger",
new_callable=AsyncMock,
side_effect=ManagerProgressListStalling,
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
max_stall_count=1,
),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
assert mock_invoke_stream.call_count == 3
# Exceeding max stall count will trigger replanning, which will recreate the facts and plan,
# resulting in two additional calls to get_chat_message_content compared to the `test_invoke` test.
assert mock_get_chat_message_content.call_count == 5
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_max_round_count_exceeded():
""" "Test the invoke method of the MagenticOrchestration with max round count exceeded."""
runtime = InProcessRuntime()
runtime.start()
with (
patch.object(MockAgent, "invoke_stream", wraps=MockAgent.invoke_stream, autospec=True) as mock_invoke_stream,
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager,
"create_progress_ledger",
new_callable=AsyncMock,
side_effect=ManagerProgressListStalling,
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
max_round_count=1,
),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
result = await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
# Partial result will be returned when max round count is exceeded.
assert result.content == mock_get_chat_message_content.return_value.content
assert mock_invoke_stream.call_count == 1
# Planning will be called once, so the facts and plan will be created once.
assert mock_get_chat_message_content.call_count == 2
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_max_reset_count_exceeded():
""" "Test the invoke method of the MagenticOrchestration with max reset count exceeded."""
runtime = InProcessRuntime()
runtime.start()
with (
patch.object(MockAgent, "invoke_stream", wraps=MockAgent.invoke_stream, autospec=True) as mock_invoke_stream,
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager,
"create_progress_ledger",
new_callable=AsyncMock,
side_effect=ManagerProgressListStalling,
),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
max_stall_count=0, # No stall allowed
max_reset_count=0, # No reset allowed
),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
result = await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
# Partial result will be returned when max reset count is exceeded. The test emits content based on the prompt
# so check that the content is not None and not an exact match to a mock response.
assert result.content is not None
assert mock_invoke_stream.call_count == 1
# Planning and replanning will be each called once, so the facts and plan will be created twice.
assert mock_get_chat_message_content.call_count == 4
@pytest.mark.skipif(
sys.version_info < (3, 11),
reason="Python 3.10 doesn't bound the original function provided to the wraps argument of the patch object.",
)
async def test_invoke_with_unknown_speaker():
"""Test the invoke method of the MagenticOrchestration with an unknown speaker."""
runtime = InProcessRuntime()
runtime.start()
with (
patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content,
patch.object(
StandardMagenticManager,
"create_progress_ledger",
new_callable=AsyncMock,
side_effect=ManagerProgressListUnknownSpeaker,
),
pytest.raises(ValueError),
):
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
agent_a = MockAgent(name="agent_a", description="test agent")
agent_b = MockAgent(name="agent_b", description="test agent")
try:
orchestration = MagenticOrchestration(
members=[agent_a, agent_b],
manager=StandardMagenticManager(
chat_completion_service=MockChatCompletionService(ai_model_id="test"),
prompt_execution_settings=MockPromptExecutionSettings(),
),
)
orchestration_result = await orchestration.invoke(task="test_message", runtime=runtime)
await orchestration_result.get(1.0)
finally:
await runtime.stop_when_idle()
# endregion MagenticOrchestration
# region StandardMagenticManager
def test_standard_magentic_manager_init():
"""Test the initialization of the StandardMagenticManager."""
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
assert manager.max_stall_count > 0
assert manager.max_reset_count is None
assert manager.max_round_count is None
assert (
manager.task_ledger_facts_prompt is not None
and manager.task_ledger_facts_prompt == ORCHESTRATOR_TASK_LEDGER_FACTS_PROMPT
)
assert (
manager.task_ledger_plan_prompt is not None
and manager.task_ledger_plan_prompt == ORCHESTRATOR_TASK_LEDGER_PLAN_PROMPT
)
assert (
manager.task_ledger_full_prompt is not None
and manager.task_ledger_full_prompt == ORCHESTRATOR_TASK_LEDGER_FULL_PROMPT
)
assert (
manager.task_ledger_facts_update_prompt is not None
and manager.task_ledger_facts_update_prompt == ORCHESTRATOR_TASK_LEDGER_FACTS_UPDATE_PROMPT
)
assert (
manager.task_ledger_plan_update_prompt is not None
and manager.task_ledger_plan_update_prompt == ORCHESTRATOR_TASK_LEDGER_PLAN_UPDATE_PROMPT
)
assert (
manager.progress_ledger_prompt is not None
and manager.progress_ledger_prompt == ORCHESTRATOR_PROGRESS_LEDGER_PROMPT
)
assert manager.final_answer_prompt is not None and manager.final_answer_prompt == ORCHESTRATOR_FINAL_ANSWER_PROMPT
def test_standard_magentic_manager_init_with_custom_prompts():
"""Test the initialization of the StandardMagenticManager with custom prompts."""
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
task_ledger_facts_prompt="custom_task_ledger_facts_prompt",
task_ledger_plan_prompt="custom_task_ledger_plan_prompt",
task_ledger_full_prompt="custom_task_ledger_full_prompt",
task_ledger_facts_update_prompt="custom_task_ledger_facts_update_prompt",
task_ledger_plan_update_prompt="custom_task_ledger_plan_update_prompt",
progress_ledger_prompt="custom_progress_ledger_prompt",
final_answer_prompt="custom_final_answer_prompt",
)
assert manager.task_ledger_facts_prompt == "custom_task_ledger_facts_prompt"
assert manager.task_ledger_plan_prompt == "custom_task_ledger_plan_prompt"
assert manager.task_ledger_full_prompt == "custom_task_ledger_full_prompt"
assert manager.task_ledger_facts_update_prompt == "custom_task_ledger_facts_update_prompt"
assert manager.task_ledger_plan_update_prompt == "custom_task_ledger_plan_update_prompt"
assert manager.progress_ledger_prompt == "custom_progress_ledger_prompt"
assert manager.final_answer_prompt == "custom_final_answer_prompt"
def test_standard_magentic_manager_init_with_invalid_prompt_execution_settings():
"""Test the initialization of the StandardMagenticManager with invalid prompt execution settings."""
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = PromptExecutionSettings()
with pytest.raises(ValueError):
StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
def test_standard_magentic_manager_init_without_prompt_execution_settings():
"""Test the initialization of the StandardMagenticManager without prompt execution settings."""
# The default prompt execution settings of the mock chat completion service
# does not support structured output.
chat_completion_service = MockChatCompletionService(ai_model_id="test")
with pytest.raises(ValueError):
StandardMagenticManager(chat_completion_service=chat_completion_service)
async def test_standard_magentic_manager_plan():
"""Test the plan method of the StandardMagenticManager."""
with patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content:
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
task_ledger_facts_prompt="custom_task_ledger_facts_prompt",
task_ledger_plan_prompt="custom_task_ledger_plan_prompt {{$team}}",
)
magentic_context = MagenticContext(
chat_history=ChatHistory(),
task=ChatMessageContent(role="user", content="test_message"),
participant_descriptions={"agent_a": "test_agent_a", "agent_b": "test_agent_b"},
)
task_ledger = await manager.plan(magentic_context.model_copy(deep=True))
assert isinstance(task_ledger, ChatMessageContent)
assert task_ledger.content.count("mock_response") == 2
assert "test_message" in task_ledger.content
assert "{'agent_a': 'test_agent_a', 'agent_b': 'test_agent_b'}" in task_ledger.content
assert mock_get_chat_message_content.call_count == 2
assert (
mock_get_chat_message_content.call_args_list[0][0][0].messages[0].content
== "custom_task_ledger_facts_prompt"
)
assert (
mock_get_chat_message_content.call_args_list[1][0][0].messages[2].content
== "custom_task_ledger_plan_prompt {'agent_a': 'test_agent_a', 'agent_b': 'test_agent_b'}"
)
async def test_standard_magentic_manager_replan():
"""Test the replan method of the StandardMagenticManager."""
with patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content:
mock_get_chat_message_content.return_value = ChatMessageContent(role="assistant", content="mock_response")
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
task_ledger_facts_update_prompt="custom_task_ledger_facts_prompt {{$old_facts}}",
task_ledger_plan_update_prompt="custom_task_ledger_plan_prompt {{$team}}",
)
magentic_context = MagenticContext(
chat_history=ChatHistory(),
task=ChatMessageContent(role="user", content="test_message"),
participant_descriptions={"agent_a": "test_agent_a", "agent_b": "test_agent_b"},
)
# Need to plan before replanning
_ = await manager.plan(magentic_context.model_copy(deep=True))
task_ledger = await manager.replan(magentic_context.model_copy(deep=True))
assert isinstance(task_ledger, ChatMessageContent)
assert task_ledger.content.count("mock_response") == 2
assert "test_message" in task_ledger.content
assert "{'agent_a': 'test_agent_a', 'agent_b': 'test_agent_b'}" in task_ledger.content
assert mock_get_chat_message_content.call_count == 4
assert (
mock_get_chat_message_content.call_args_list[2][0][0].messages[0].content
== "custom_task_ledger_facts_prompt mock_response"
)
assert (
mock_get_chat_message_content.call_args_list[3][0][0].messages[2].content
== "custom_task_ledger_plan_prompt {'agent_a': 'test_agent_a', 'agent_b': 'test_agent_b'}"
)
async def test_standard_magentic_manager_replan_without_plan():
"""Test the replan method of the StandardMagenticManager."""
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
magentic_context = MagenticContext(
chat_history=ChatHistory(),
task=ChatMessageContent(role="user", content="test_message"),
participant_descriptions={"agent_a": "test_agent_a", "agent_b": "test_agent_b"},
)
with pytest.raises(RuntimeError):
_ = await manager.replan(magentic_context.model_copy(deep=True))
async def test_standard_magentic_manager_create_progress_ledger():
"""Test the create_progress_ledger method of the StandardMagenticManager."""
mock_progress_ledger = ProgressLedger(
is_request_satisfied=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_in_loop=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
is_progress_being_made=ProgressLedgerItem(answer=False, reason="mock_reasoning"),
next_speaker=ProgressLedgerItem(answer="agent_a", reason="mock_reasoning"),
instruction_or_question=ProgressLedgerItem(answer="mock_instruction", reason="mock_reasoning"),
)
with patch.object(
MockChatCompletionService, "get_chat_message_content", new_callable=AsyncMock
) as mock_get_chat_message_content:
mock_get_chat_message_content.return_value = ChatMessageContent(
role="assistant", content=mock_progress_ledger.model_dump_json()
)
chat_completion_service = MockChatCompletionService(ai_model_id="test")
prompt_execution_settings = MockPromptExecutionSettings()
manager = StandardMagenticManager(
chat_completion_service=chat_completion_service,
prompt_execution_settings=prompt_execution_settings,
)
magentic_context = MagenticContext(
chat_history=ChatHistory(),
task=ChatMessageContent(role="user", content="test_message"),
participant_descriptions={"agent_a": "test_agent_a", "agent_b": "test_agent_b"},
)
progress_ledger = await manager.create_progress_ledger(magentic_context.model_copy(deep=True))
assert isinstance(progress_ledger, ProgressLedger)
assert progress_ledger == mock_progress_ledger
assert (
"{'agent_a': 'test_agent_a', 'agent_b': 'test_agent_b'}"
in mock_get_chat_message_content.call_args_list[0][0][0].messages[0].content
)
assert "agent_a, agent_b" in mock_get_chat_message_content.call_args_list[0][0][0].messages[0].content
assert (
magentic_context.task.content in mock_get_chat_message_content.call_args_list[0][0][0].messages[0].content
)
assert mock_get_chat_message_content.call_args_list[0][0][1].extension_data["response_format"] == ProgressLedger
# endregion MagenticManager