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173 lines
6.2 KiB
Python
173 lines
6.2 KiB
Python
import asyncio
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from typing import cast
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import pytest
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from pydantic import BaseModel, Field
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from crewai import LLM
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from crewai.lite_agent import LiteAgent
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from crewai.tools import BaseTool
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from crewai.utilities.events import crewai_event_bus
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from crewai.utilities.events.tool_usage_events import ToolUsageStartedEvent
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# A simple test tool
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class SecretLookupTool(BaseTool):
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name: str = "secret_lookup"
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description: str = "A tool to lookup secrets"
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def _run(self) -> str:
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return "SUPERSECRETPASSWORD123"
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# Define Mock Search Tool
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class WebSearchTool(BaseTool):
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"""Tool for searching the web for information."""
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name: str = "search_web"
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description: str = "Search the web for information about a topic."
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def _run(self, query: str) -> str:
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"""Search the web for information about a topic."""
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# This is a mock implementation
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if "tokyo" in query.lower():
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return "Tokyo's population in 2023 was approximately 21 million people in the city proper, and 37 million in the greater metropolitan area."
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elif "climate change" in query.lower() and "coral" in query.lower():
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return "Climate change severely impacts coral reefs through: 1) Ocean warming causing coral bleaching, 2) Ocean acidification reducing calcification, 3) Sea level rise affecting light availability, 4) Increased storm frequency damaging reef structures. Sources: NOAA Coral Reef Conservation Program, Global Coral Reef Alliance."
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else:
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return f"Found information about {query}: This is a simulated search result for demonstration purposes."
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# Define Mock Calculator Tool
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class CalculatorTool(BaseTool):
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"""Tool for performing calculations."""
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name: str = "calculate"
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description: str = "Calculate the result of a mathematical expression."
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def _run(self, expression: str) -> str:
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"""Calculate the result of a mathematical expression."""
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try:
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result = eval(expression, {"__builtins__": {}})
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return f"The result of {expression} is {result}"
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except Exception as e:
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return f"Error calculating {expression}: {str(e)}"
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# Define a custom response format using Pydantic
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class ResearchResult(BaseModel):
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"""Structure for research results."""
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main_findings: str = Field(description="The main findings from the research")
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key_points: list[str] = Field(description="List of key points")
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sources: list[str] = Field(description="List of sources used")
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@pytest.mark.vcr(filter_headers=["authorization"])
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def test_lite_agent_with_tools():
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"""Test that LiteAgent can use tools."""
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# Create a LiteAgent with tools
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llm = LLM(model="gpt-4o-mini")
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agent = LiteAgent(
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role="Research Assistant",
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goal="Find information about the population of Tokyo",
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backstory="You are a helpful research assistant who can search for information about the population of Tokyo.",
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llm=llm,
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tools=[WebSearchTool()],
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verbose=True,
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)
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result = agent.kickoff(
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"What is the population of Tokyo and how many people would that be per square kilometer if Tokyo's area is 2,194 square kilometers?"
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)
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assert (
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"21 million" in result.raw or "37 million" in result.raw
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), "Agent should find Tokyo's population"
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assert (
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"per square kilometer" in result.raw
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), "Agent should calculate population density"
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received_events = []
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@crewai_event_bus.on(ToolUsageStartedEvent)
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def event_handler(source, event):
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received_events.append(event)
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agent.kickoff("What are the effects of climate change on coral reefs?")
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# Verify tool usage events were emitted
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assert len(received_events) > 0, "Tool usage events should be emitted"
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event = received_events[0]
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assert isinstance(event, ToolUsageStartedEvent)
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assert event.agent_role == "Research Assistant"
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assert event.tool_name == "search_web"
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@pytest.mark.vcr(filter_headers=["authorization"])
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def test_lite_agent_structured_output():
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"""Test that LiteAgent can return a simple structured output."""
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class SimpleOutput(BaseModel):
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"""Simple structure for agent outputs."""
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summary: str = Field(description="A brief summary of findings")
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confidence: int = Field(description="Confidence level from 1-100")
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web_search_tool = WebSearchTool()
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llm = LLM(model="gpt-4o-mini")
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agent = LiteAgent(
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role="Info Gatherer",
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goal="Provide brief information",
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backstory="You gather and summarize information quickly.",
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llm=llm,
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tools=[web_search_tool],
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verbose=True,
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response_format=SimpleOutput,
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)
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result = agent.kickoff(
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"What is the population of Tokyo? Return your strucutred output in JSON format with the following fields: summary, confidence"
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)
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print(f"\n=== Agent Result Type: {type(result)}")
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print(f"=== Agent Result: {result}")
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print(f"=== Pydantic: {result.pydantic}")
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assert result.pydantic is not None, "Should return a Pydantic model"
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output = cast(SimpleOutput, result.pydantic)
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assert isinstance(output.summary, str), "Summary should be a string"
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assert len(output.summary) > 0, "Summary should not be empty"
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assert isinstance(output.confidence, int), "Confidence should be an integer"
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assert 1 <= output.confidence <= 100, "Confidence should be between 1 and 100"
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assert "tokyo" in output.summary.lower() or "population" in output.summary.lower()
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assert result.usage_metrics is not None
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return result
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@pytest.mark.vcr(filter_headers=["authorization"])
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def test_lite_agent_returns_usage_metrics():
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"""Test that LiteAgent returns usage metrics."""
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llm = LLM(model="gpt-4o-mini")
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agent = LiteAgent(
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role="Research Assistant",
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goal="Find information about the population of Tokyo",
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backstory="You are a helpful research assistant who can search for information about the population of Tokyo.",
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llm=llm,
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tools=[WebSearchTool()],
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verbose=True,
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)
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result = agent.kickoff(
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"What is the population of Tokyo? Return your strucutred output in JSON format with the following fields: summary, confidence"
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)
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assert result.usage_metrics is not None
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assert result.usage_metrics["total_tokens"] > 0
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