|
- import json
- import logging
- from typing import Dict, List
-
- import pytest
- from autogen_agentchat import EVENT_LOGGER_NAME
- from autogen_agentchat.agents import AssistantAgent
- from autogen_agentchat.base import Handoff, TaskResult
- from autogen_agentchat.messages import (
- ChatMessage,
- HandoffMessage,
- MemoryQueryEvent,
- ModelClientStreamingChunkEvent,
- MultiModalMessage,
- StructuredMessage,
- TextMessage,
- ThoughtEvent,
- ToolCallExecutionEvent,
- ToolCallRequestEvent,
- ToolCallSummaryMessage,
- )
- from autogen_core import ComponentModel, FunctionCall, Image
- from autogen_core.memory import ListMemory, Memory, MemoryContent, MemoryMimeType, MemoryQueryResult
- from autogen_core.model_context import BufferedChatCompletionContext
- from autogen_core.models import (
- AssistantMessage,
- CreateResult,
- FunctionExecutionResult,
- FunctionExecutionResultMessage,
- LLMMessage,
- RequestUsage,
- SystemMessage,
- UserMessage,
- )
- from autogen_core.models._model_client import ModelFamily
- from autogen_core.tools import BaseTool, FunctionTool
- from autogen_ext.models.openai import OpenAIChatCompletionClient
- from autogen_ext.models.replay import ReplayChatCompletionClient
- from pydantic import BaseModel
- from utils import FileLogHandler
-
- logger = logging.getLogger(EVENT_LOGGER_NAME)
- logger.setLevel(logging.DEBUG)
- logger.addHandler(FileLogHandler("test_assistant_agent.log"))
-
-
- def _pass_function(input: str) -> str:
- return "pass"
-
-
- async def _fail_function(input: str) -> str:
- return "fail"
-
-
- async def _echo_function(input: str) -> str:
- return input
-
-
- @pytest.mark.asyncio
- async def test_run_with_tools(monkeypatch: pytest.MonkeyPatch) -> None:
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[FunctionCall(id="1", arguments=json.dumps({"input": "task"}), name="_pass_function")],
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- thought="Calling pass function",
- cached=False,
- ),
- "pass",
- "TERMINATE",
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- result = await agent.run(task="task")
-
- # Make sure the create call was made with the correct parameters.
- assert len(model_client.create_calls) == 1
- llm_messages = model_client.create_calls[0]["messages"]
- assert len(llm_messages) == 2
- assert isinstance(llm_messages[0], SystemMessage)
- assert llm_messages[0].content == agent._system_messages[0].content # type: ignore
- assert isinstance(llm_messages[1], UserMessage)
- assert llm_messages[1].content == "task"
-
- assert len(result.messages) == 5
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ThoughtEvent)
- assert result.messages[1].content == "Calling pass function"
- assert isinstance(result.messages[2], ToolCallRequestEvent)
- assert result.messages[2].models_usage is not None
- assert result.messages[2].models_usage.completion_tokens == 5
- assert result.messages[2].models_usage.prompt_tokens == 10
- assert isinstance(result.messages[3], ToolCallExecutionEvent)
- assert result.messages[3].models_usage is None
- assert isinstance(result.messages[4], ToolCallSummaryMessage)
- assert result.messages[4].content == "pass"
- assert result.messages[4].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
- # Test state saving and loading.
- state = await agent.save_state()
- agent2 = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[_pass_function, _fail_function, FunctionTool(_echo_function, description="Echo")],
- )
- await agent2.load_state(state)
- state2 = await agent2.save_state()
- assert state == state2
-
-
- @pytest.mark.asyncio
- async def test_run_with_tools_and_reflection() -> None:
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[FunctionCall(id="1", arguments=json.dumps({"input": "task"}), name="_pass_function")],
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- ),
- CreateResult(
- finish_reason="stop",
- content="Hello",
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- ),
- CreateResult(
- finish_reason="stop",
- content="TERMINATE",
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- ),
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[_pass_function, _fail_function, FunctionTool(_echo_function, description="Echo")],
- reflect_on_tool_use=True,
- )
- result = await agent.run(task="task")
-
- # Make sure the create call was made with the correct parameters.
- assert len(model_client.create_calls) == 2
- llm_messages = model_client.create_calls[0]["messages"]
- assert len(llm_messages) == 2
- assert isinstance(llm_messages[0], SystemMessage)
- assert llm_messages[0].content == agent._system_messages[0].content # type: ignore
- assert isinstance(llm_messages[1], UserMessage)
- assert llm_messages[1].content == "task"
- llm_messages = model_client.create_calls[1]["messages"]
- assert len(llm_messages) == 4
- assert isinstance(llm_messages[0], SystemMessage)
- assert llm_messages[0].content == agent._system_messages[0].content # type: ignore
- assert isinstance(llm_messages[1], UserMessage)
- assert llm_messages[1].content == "task"
- assert isinstance(llm_messages[2], AssistantMessage)
- assert isinstance(llm_messages[3], FunctionExecutionResultMessage)
-
- assert len(result.messages) == 4
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ToolCallRequestEvent)
- assert result.messages[1].models_usage is not None
- assert result.messages[1].models_usage.completion_tokens == 5
- assert result.messages[1].models_usage.prompt_tokens == 10
- assert isinstance(result.messages[2], ToolCallExecutionEvent)
- assert result.messages[2].models_usage is None
- assert isinstance(result.messages[3], TextMessage)
- assert result.messages[3].content == "Hello"
- assert result.messages[3].models_usage is not None
- assert result.messages[3].models_usage.completion_tokens == 5
- assert result.messages[3].models_usage.prompt_tokens == 10
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
- # Test state saving and loading.
- state = await agent.save_state()
- agent2 = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- await agent2.load_state(state)
- state2 = await agent2.save_state()
- assert state == state2
-
-
- @pytest.mark.asyncio
- async def test_run_with_parallel_tools() -> None:
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[
- FunctionCall(id="1", arguments=json.dumps({"input": "task1"}), name="_pass_function"),
- FunctionCall(id="2", arguments=json.dumps({"input": "task2"}), name="_pass_function"),
- FunctionCall(id="3", arguments=json.dumps({"input": "task3"}), name="_echo_function"),
- ],
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- thought="Calling pass and echo functions",
- cached=False,
- ),
- "pass",
- "TERMINATE",
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- result = await agent.run(task="task")
-
- assert len(result.messages) == 5
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ThoughtEvent)
- assert result.messages[1].content == "Calling pass and echo functions"
- assert isinstance(result.messages[2], ToolCallRequestEvent)
- assert result.messages[2].content == [
- FunctionCall(id="1", arguments=r'{"input": "task1"}', name="_pass_function"),
- FunctionCall(id="2", arguments=r'{"input": "task2"}', name="_pass_function"),
- FunctionCall(id="3", arguments=r'{"input": "task3"}', name="_echo_function"),
- ]
- assert result.messages[2].models_usage is not None
- assert result.messages[2].models_usage.completion_tokens == 5
- assert result.messages[2].models_usage.prompt_tokens == 10
- assert isinstance(result.messages[3], ToolCallExecutionEvent)
- expected_content = [
- FunctionExecutionResult(call_id="1", content="pass", is_error=False, name="_pass_function"),
- FunctionExecutionResult(call_id="2", content="pass", is_error=False, name="_pass_function"),
- FunctionExecutionResult(call_id="3", content="task3", is_error=False, name="_echo_function"),
- ]
- for expected in expected_content:
- assert expected in result.messages[3].content
- assert result.messages[3].models_usage is None
- assert isinstance(result.messages[4], ToolCallSummaryMessage)
- assert result.messages[4].content == "pass\npass\ntask3"
- assert result.messages[4].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
- # Test state saving and loading.
- state = await agent.save_state()
- agent2 = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[_pass_function, _fail_function, FunctionTool(_echo_function, description="Echo")],
- )
- await agent2.load_state(state)
- state2 = await agent2.save_state()
- assert state == state2
-
-
- @pytest.mark.asyncio
- async def test_run_with_parallel_tools_with_empty_call_ids() -> None:
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[
- FunctionCall(id="", arguments=json.dumps({"input": "task1"}), name="_pass_function"),
- FunctionCall(id="", arguments=json.dumps({"input": "task2"}), name="_pass_function"),
- FunctionCall(id="", arguments=json.dumps({"input": "task3"}), name="_echo_function"),
- ],
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- ),
- "pass",
- "TERMINATE",
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- result = await agent.run(task="task")
-
- assert len(result.messages) == 4
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ToolCallRequestEvent)
- assert result.messages[1].content == [
- FunctionCall(id="", arguments=r'{"input": "task1"}', name="_pass_function"),
- FunctionCall(id="", arguments=r'{"input": "task2"}', name="_pass_function"),
- FunctionCall(id="", arguments=r'{"input": "task3"}', name="_echo_function"),
- ]
- assert result.messages[1].models_usage is not None
- assert result.messages[1].models_usage.completion_tokens == 5
- assert result.messages[1].models_usage.prompt_tokens == 10
- assert isinstance(result.messages[2], ToolCallExecutionEvent)
- expected_content = [
- FunctionExecutionResult(call_id="", content="pass", is_error=False, name="_pass_function"),
- FunctionExecutionResult(call_id="", content="pass", is_error=False, name="_pass_function"),
- FunctionExecutionResult(call_id="", content="task3", is_error=False, name="_echo_function"),
- ]
- for expected in expected_content:
- assert expected in result.messages[2].content
- assert result.messages[2].models_usage is None
- assert isinstance(result.messages[3], ToolCallSummaryMessage)
- assert result.messages[3].content == "pass\npass\ntask3"
- assert result.messages[3].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
- # Test state saving and loading.
- state = await agent.save_state()
- agent2 = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[_pass_function, _fail_function, FunctionTool(_echo_function, description="Echo")],
- )
- await agent2.load_state(state)
- state2 = await agent2.save_state()
- assert state == state2
-
-
- @pytest.mark.asyncio
- async def test_handoffs() -> None:
- handoff = Handoff(target="agent2")
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[
- FunctionCall(id="1", arguments=json.dumps({}), name=handoff.name),
- ],
- usage=RequestUsage(prompt_tokens=42, completion_tokens=43),
- cached=False,
- )
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- tool_use_agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- handoffs=[handoff],
- )
- assert HandoffMessage in tool_use_agent.produced_message_types
- result = await tool_use_agent.run(task="task")
- assert len(result.messages) == 4
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ToolCallRequestEvent)
- assert result.messages[1].models_usage is not None
- assert result.messages[1].models_usage.completion_tokens == 43
- assert result.messages[1].models_usage.prompt_tokens == 42
- assert isinstance(result.messages[2], ToolCallExecutionEvent)
- assert result.messages[2].models_usage is None
- assert isinstance(result.messages[3], HandoffMessage)
- assert result.messages[3].content == handoff.message
- assert result.messages[3].target == handoff.target
- assert result.messages[3].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in tool_use_agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
-
- @pytest.mark.asyncio
- async def test_custom_handoffs() -> None:
- name = "transfer_to_agent2"
- description = "Handoff to agent2."
- next_action = "next_action"
-
- class TextCommandHandOff(Handoff):
- @property
- def handoff_tool(self) -> BaseTool[BaseModel, BaseModel]:
- """Create a handoff tool from this handoff configuration."""
-
- def _next_action(action: str) -> str:
- """Returns the action you want the user to perform"""
- return action
-
- return FunctionTool(_next_action, name=self.name, description=self.description, strict=True)
-
- handoff = TextCommandHandOff(name=name, description=description, target="agent2")
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[
- FunctionCall(id="1", arguments=json.dumps({"action": next_action}), name=handoff.name),
- ],
- usage=RequestUsage(prompt_tokens=42, completion_tokens=43),
- cached=False,
- )
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- tool_use_agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- handoffs=[handoff],
- )
- assert HandoffMessage in tool_use_agent.produced_message_types
- result = await tool_use_agent.run(task="task")
- assert len(result.messages) == 4
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ToolCallRequestEvent)
- assert result.messages[1].models_usage is not None
- assert result.messages[1].models_usage.completion_tokens == 43
- assert result.messages[1].models_usage.prompt_tokens == 42
- assert isinstance(result.messages[2], ToolCallExecutionEvent)
- assert result.messages[2].models_usage is None
- assert isinstance(result.messages[3], HandoffMessage)
- assert result.messages[3].content == next_action
- assert result.messages[3].target == handoff.target
-
- assert result.messages[3].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in tool_use_agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
-
- @pytest.mark.asyncio
- async def test_custom_object_handoffs() -> None:
- """test handoff tool return a object"""
- name = "transfer_to_agent2"
- description = "Handoff to agent2."
- next_action = {"action": "next_action"} # using a map, not a str
-
- class DictCommandHandOff(Handoff):
- @property
- def handoff_tool(self) -> BaseTool[BaseModel, BaseModel]:
- """Create a handoff tool from this handoff configuration."""
-
- def _next_action(action: str) -> Dict[str, str]:
- """Returns the action you want the user to perform"""
- return {"action": action}
-
- return FunctionTool(_next_action, name=self.name, description=self.description, strict=True)
-
- handoff = DictCommandHandOff(name=name, description=description, target="agent2")
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="function_calls",
- content=[
- FunctionCall(id="1", arguments=json.dumps({"action": "next_action"}), name=handoff.name),
- ],
- usage=RequestUsage(prompt_tokens=42, completion_tokens=43),
- cached=False,
- )
- ],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- tool_use_agent = AssistantAgent(
- "tool_use_agent",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- handoffs=[handoff],
- )
- assert HandoffMessage in tool_use_agent.produced_message_types
- result = await tool_use_agent.run(task="task")
- assert len(result.messages) == 4
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].models_usage is None
- assert isinstance(result.messages[1], ToolCallRequestEvent)
- assert result.messages[1].models_usage is not None
- assert result.messages[1].models_usage.completion_tokens == 43
- assert result.messages[1].models_usage.prompt_tokens == 42
- assert isinstance(result.messages[2], ToolCallExecutionEvent)
- assert result.messages[2].models_usage is None
- assert isinstance(result.messages[3], HandoffMessage)
- # the content will return as a string, because the function call will convert to string
- assert result.messages[3].content == str(next_action)
- assert result.messages[3].target == handoff.target
-
- assert result.messages[3].models_usage is None
-
- # Test streaming.
- model_client.reset()
- index = 0
- async for message in tool_use_agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
-
- @pytest.mark.asyncio
- async def test_multi_modal_task(monkeypatch: pytest.MonkeyPatch) -> None:
- model_client = ReplayChatCompletionClient(["Hello"])
- agent = AssistantAgent(
- name="assistant",
- model_client=model_client,
- )
- # Generate a random base64 image.
- img_base64 = "iVBORw0KGgoAAAANSUhEUgAAAAEAAAABCAIAAACQd1PeAAAADElEQVR4nGP4//8/AAX+Av4N70a4AAAAAElFTkSuQmCC"
- result = await agent.run(task=MultiModalMessage(source="user", content=["Test", Image.from_base64(img_base64)]))
- assert len(result.messages) == 2
-
-
- @pytest.mark.asyncio
- async def test_run_with_structured_task() -> None:
- class InputTask(BaseModel):
- input: str
- data: List[str]
-
- model_client = ReplayChatCompletionClient(["Hello"])
- agent = AssistantAgent(
- name="assistant",
- model_client=model_client,
- )
-
- task = StructuredMessage[InputTask](content=InputTask(input="Test", data=["Test1", "Test2"]), source="user")
- result = await agent.run(task=task)
- assert len(result.messages) == 2
-
-
- @pytest.mark.asyncio
- async def test_invalid_model_capabilities() -> None:
- model = "random-model"
- model_client = OpenAIChatCompletionClient(
- model=model,
- api_key="",
- model_info={
- "vision": False,
- "function_calling": False,
- "json_output": False,
- "family": ModelFamily.UNKNOWN,
- "structured_output": False,
- },
- )
-
- with pytest.raises(ValueError):
- agent = AssistantAgent(
- name="assistant",
- model_client=model_client,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- await agent.run(task=TextMessage(source="user", content="Test"))
-
- with pytest.raises(ValueError):
- agent = AssistantAgent(name="assistant", model_client=model_client, handoffs=["agent2"])
- await agent.run(task=TextMessage(source="user", content="Test"))
-
-
- @pytest.mark.asyncio
- async def test_remove_images() -> None:
- model = "random-model"
- model_client_1 = OpenAIChatCompletionClient(
- model=model,
- api_key="",
- model_info={
- "vision": False,
- "function_calling": False,
- "json_output": False,
- "family": ModelFamily.UNKNOWN,
- "structured_output": False,
- },
- )
- model_client_2 = OpenAIChatCompletionClient(
- model=model,
- api_key="",
- model_info={
- "vision": True,
- "function_calling": False,
- "json_output": False,
- "family": ModelFamily.UNKNOWN,
- "structured_output": False,
- },
- )
-
- img_base64 = "iVBORw0KGgoAAAANSUhEUgAAAAEAAAABCAIAAACQd1PeAAAADElEQVR4nGP4//8/AAX+Av4N70a4AAAAAElFTkSuQmCC"
- messages: List[LLMMessage] = [
- SystemMessage(content="System.1"),
- UserMessage(content=["User.1", Image.from_base64(img_base64)], source="user.1"),
- AssistantMessage(content="Assistant.1", source="assistant.1"),
- UserMessage(content="User.2", source="assistant.2"),
- ]
-
- agent_1 = AssistantAgent(name="assistant_1", model_client=model_client_1)
- result = agent_1._get_compatible_context(model_client_1, messages) # type: ignore
- assert len(result) == 4
- assert isinstance(result[1].content, str)
-
- agent_2 = AssistantAgent(name="assistant_2", model_client=model_client_2)
- result = agent_2._get_compatible_context(model_client_2, messages) # type: ignore
- assert len(result) == 4
- assert isinstance(result[1].content, list)
-
-
- @pytest.mark.asyncio
- async def test_list_chat_messages(monkeypatch: pytest.MonkeyPatch) -> None:
- model_client = ReplayChatCompletionClient(
- [
- CreateResult(
- finish_reason="stop",
- content="Response to message 1",
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- )
- ]
- )
- agent = AssistantAgent(
- "test_agent",
- model_client=model_client,
- )
-
- # Create a list of chat messages
- messages: List[ChatMessage] = [
- TextMessage(content="Message 1", source="user"),
- TextMessage(content="Message 2", source="user"),
- ]
-
- # Test run method with list of messages
- result = await agent.run(task=messages)
- assert len(result.messages) == 3 # 2 input messages + 1 response message
- assert isinstance(result.messages[0], TextMessage)
- assert result.messages[0].content == "Message 1"
- assert result.messages[0].source == "user"
- assert isinstance(result.messages[1], TextMessage)
- assert result.messages[1].content == "Message 2"
- assert result.messages[1].source == "user"
- assert isinstance(result.messages[2], TextMessage)
- assert result.messages[2].content == "Response to message 1"
- assert result.messages[2].source == "test_agent"
- assert result.messages[2].models_usage is not None
- assert result.messages[2].models_usage.completion_tokens == 5
- assert result.messages[2].models_usage.prompt_tokens == 10
-
- # Test run_stream method with list of messages
- model_client.reset() # Reset the mock client
- index = 0
- async for message in agent.run_stream(task=messages):
- if isinstance(message, TaskResult):
- assert message == result
- else:
- assert message == result.messages[index]
- index += 1
-
-
- @pytest.mark.asyncio
- async def test_model_context(monkeypatch: pytest.MonkeyPatch) -> None:
- model_client = ReplayChatCompletionClient(["Response to message 3"])
- model_context = BufferedChatCompletionContext(buffer_size=2)
- agent = AssistantAgent(
- "test_agent",
- model_client=model_client,
- model_context=model_context,
- )
-
- messages = [
- TextMessage(content="Message 1", source="user"),
- TextMessage(content="Message 2", source="user"),
- TextMessage(content="Message 3", source="user"),
- ]
- await agent.run(task=messages)
-
- # Check that the model_context property returns the correct internal context
- assert agent.model_context == model_context
- # Check if the mock client is called with only the last two messages.
- assert len(model_client.create_calls) == 1
- # 2 message from the context + 1 system message
- assert len(model_client.create_calls[0]["messages"]) == 3
-
-
- @pytest.mark.asyncio
- async def test_run_with_memory(monkeypatch: pytest.MonkeyPatch) -> None:
- model_client = ReplayChatCompletionClient(["Hello"])
- b64_image_str = "iVBORw0KGgoAAAANSUhEUgAAAAEAAAABCAIAAACQd1PeAAAADElEQVR4nGP4//8/AAX+Av4N70a4AAAAAElFTkSuQmCC"
-
- # Test basic memory properties and empty context
- memory = ListMemory(name="test_memory")
- assert memory.name == "test_memory"
-
- empty_context = BufferedChatCompletionContext(buffer_size=2)
- empty_results = await memory.update_context(empty_context)
- assert len(empty_results.memories.results) == 0
-
- # Test various content types
- memory = ListMemory()
- await memory.add(MemoryContent(content="text content", mime_type=MemoryMimeType.TEXT))
- await memory.add(MemoryContent(content={"key": "value"}, mime_type=MemoryMimeType.JSON))
- await memory.add(MemoryContent(content=Image.from_base64(b64_image_str), mime_type=MemoryMimeType.IMAGE))
-
- # Test query functionality
- query_result = await memory.query(MemoryContent(content="", mime_type=MemoryMimeType.TEXT))
- assert isinstance(query_result, MemoryQueryResult)
- # Should have all three memories we added
- assert len(query_result.results) == 3
-
- # Test clear and cleanup
- await memory.clear()
- empty_query = await memory.query(MemoryContent(content="", mime_type=MemoryMimeType.TEXT))
- assert len(empty_query.results) == 0
- await memory.close() # Should not raise
-
- # Test invalid memory type
- with pytest.raises(TypeError):
- AssistantAgent(
- "test_agent",
- model_client=model_client,
- memory="invalid", # type: ignore
- )
-
- # Test with agent
- memory2 = ListMemory()
- await memory2.add(MemoryContent(content="test instruction", mime_type=MemoryMimeType.TEXT))
-
- agent = AssistantAgent("test_agent", model_client=model_client, memory=[memory2])
-
- # Test dump and load component with memory
- agent_config: ComponentModel = agent.dump_component()
- assert agent_config.provider == "autogen_agentchat.agents.AssistantAgent"
- agent2 = AssistantAgent.load_component(agent_config)
-
- result = await agent2.run(task="test task")
- assert len(result.messages) > 0
- memory_event = next((msg for msg in result.messages if isinstance(msg, MemoryQueryEvent)), None)
- assert memory_event is not None
- assert len(memory_event.content) > 0
- assert isinstance(memory_event.content[0], MemoryContent)
-
- # Test memory protocol
- class BadMemory:
- pass
-
- assert not isinstance(BadMemory(), Memory)
- assert isinstance(ListMemory(), Memory)
-
-
- @pytest.mark.asyncio
- async def test_assistant_agent_declarative() -> None:
- model_client = ReplayChatCompletionClient(
- ["Response to message 3"],
- model_info={
- "function_calling": True,
- "vision": True,
- "json_output": True,
- "family": ModelFamily.GPT_4O,
- "structured_output": True,
- },
- )
- model_context = BufferedChatCompletionContext(buffer_size=2)
- agent = AssistantAgent(
- "test_agent",
- model_client=model_client,
- model_context=model_context,
- memory=[ListMemory(name="test_memory")],
- )
-
- agent_config: ComponentModel = agent.dump_component()
- assert agent_config.provider == "autogen_agentchat.agents.AssistantAgent"
-
- agent2 = AssistantAgent.load_component(agent_config)
- assert agent2.name == agent.name
-
- agent3 = AssistantAgent(
- "test_agent",
- model_client=model_client,
- model_context=model_context,
- tools=[
- _pass_function,
- _fail_function,
- FunctionTool(_echo_function, description="Echo"),
- ],
- )
- agent3_config = agent3.dump_component()
- assert agent3_config.provider == "autogen_agentchat.agents.AssistantAgent"
-
-
- @pytest.mark.asyncio
- async def test_model_client_stream() -> None:
- mock_client = ReplayChatCompletionClient(
- [
- "Response to message 3",
- ]
- )
- agent = AssistantAgent(
- "test_agent",
- model_client=mock_client,
- model_client_stream=True,
- )
- chunks: List[str] = []
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert isinstance(message.messages[-1], TextMessage)
- assert message.messages[-1].content == "Response to message 3"
- elif isinstance(message, ModelClientStreamingChunkEvent):
- chunks.append(message.content)
- assert "".join(chunks) == "Response to message 3"
-
-
- @pytest.mark.asyncio
- async def test_model_client_stream_with_tool_calls() -> None:
- mock_client = ReplayChatCompletionClient(
- [
- CreateResult(
- content=[
- FunctionCall(id="1", name="_pass_function", arguments=r'{"input": "task"}'),
- FunctionCall(id="3", name="_echo_function", arguments=r'{"input": "task"}'),
- ],
- finish_reason="function_calls",
- usage=RequestUsage(prompt_tokens=10, completion_tokens=5),
- cached=False,
- ),
- "Example response 2 to task",
- ]
- )
- mock_client._model_info["function_calling"] = True # pyright: ignore
- agent = AssistantAgent(
- "test_agent",
- model_client=mock_client,
- model_client_stream=True,
- reflect_on_tool_use=True,
- tools=[_pass_function, _echo_function],
- )
- chunks: List[str] = []
- async for message in agent.run_stream(task="task"):
- if isinstance(message, TaskResult):
- assert isinstance(message.messages[-1], TextMessage)
- assert isinstance(message.messages[1], ToolCallRequestEvent)
- assert message.messages[-1].content == "Example response 2 to task"
- assert message.messages[1].content == [
- FunctionCall(id="1", name="_pass_function", arguments=r'{"input": "task"}'),
- FunctionCall(id="3", name="_echo_function", arguments=r'{"input": "task"}'),
- ]
- assert isinstance(message.messages[2], ToolCallExecutionEvent)
- assert message.messages[2].content == [
- FunctionExecutionResult(call_id="1", content="pass", is_error=False, name="_pass_function"),
- FunctionExecutionResult(call_id="3", content="task", is_error=False, name="_echo_function"),
- ]
- elif isinstance(message, ModelClientStreamingChunkEvent):
- chunks.append(message.content)
- assert "".join(chunks) == "Example response 2 to task"
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