233 lines
7.8 KiB
Python
233 lines
7.8 KiB
Python
"""
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Analysis Agent - Analyzes research findings using ADK + Gemini.
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Exposes A2A Protocol endpoint, returns structured JSON.
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"""
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import uvicorn
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import os
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import json
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from typing import List
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from dotenv import load_dotenv
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from pydantic import BaseModel, Field
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load_dotenv()
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from a2a.server.apps import A2AStarletteApplication
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from a2a.server.request_handlers import DefaultRequestHandler
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from a2a.server.tasks import InMemoryTaskStore
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from a2a.types import (
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AgentCapabilities,
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AgentCard,
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AgentSkill,
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)
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from a2a.server.agent_execution import AgentExecutor, RequestContext
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from a2a.server.events import EventQueue
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from a2a.utils import new_agent_text_message
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from google.adk.agents.llm_agent import LlmAgent
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from google.adk.runners import Runner
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from google.adk.sessions import InMemorySessionService
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from google.adk.memory.in_memory_memory_service import InMemoryMemoryService
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from google.adk.artifacts import InMemoryArtifactService
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from google.genai import types
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class InsightItem(BaseModel):
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title: str = Field(description="Title of the insight")
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description: str = Field(description="Detailed description of the insight")
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importance: str = Field(description="Why this insight matters")
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class StructuredAnalysis(BaseModel):
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topic: str = Field(description="The topic being analyzed")
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overview: str = Field(description="Brief overview of the analysis")
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insights: List[InsightItem] = Field(description="List of key insights")
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conclusion: str = Field(description="Concluding thoughts")
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class AnalysisAgent:
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def __init__(self):
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self._agent = self._build_agent()
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self._user_id = "remote_agent"
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self._runner = Runner(
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app_name=self._agent.name,
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agent=self._agent,
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artifact_service=InMemoryArtifactService(),
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session_service=InMemorySessionService(),
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memory_service=InMemoryMemoryService(),
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)
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def _build_agent(self) -> LlmAgent:
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model_name = os.getenv("GEMINI_MODEL", "gemini-2.5-flash")
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return LlmAgent(
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model=model_name,
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name="analysis_agent",
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description="An agent that analyzes research findings and provides insights",
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instruction="""
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You are an analysis agent. Your role is to analyze research findings and provide meaningful insights.
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When you receive research data, analyze it thoroughly and create an insightful analysis.
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Return ONLY a valid JSON object with this exact structure:
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{
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"topic": "The topic being analyzed",
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"overview": "A brief 2-3 sentence overview of the analysis",
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"insights": [
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{
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"title": "Key Insight 1",
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"description": "Detailed explanation of this insight",
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"importance": "Why this matters"
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},
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{
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"title": "Key Insight 2",
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"description": "Detailed explanation of this insight",
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"importance": "Why this matters"
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},
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{
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"title": "Key Insight 3",
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"description": "Detailed explanation of this insight",
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"importance": "Why this matters"
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}
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],
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"conclusion": "Concluding thoughts and recommendations"
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}
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Provide 3-5 meaningful insights based on the research.
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Make the analysis thoughtful and actionable.
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Return ONLY valid JSON, no markdown code blocks, no other text.
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""",
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tools=[],
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)
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async def invoke(self, query: str, session_id: str) -> str:
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"""Generate analysis and return JSON string."""
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session = await self._runner.session_service.get_session(
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app_name=self._agent.name,
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user_id=self._user_id,
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session_id=session_id,
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)
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content = types.Content(role="user", parts=[types.Part.from_text(text=query)])
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if session is None:
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session = await self._runner.session_service.create_session(
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app_name=self._agent.name,
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user_id=self._user_id,
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state={},
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session_id=session_id,
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)
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response_text = ""
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async for event in self._runner.run_async(
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user_id=self._user_id, session_id=session.id, new_message=content
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):
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if event.is_final_response():
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if (
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event.content
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and event.content.parts
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and event.content.parts[0].text
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):
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response_text = "\n".join(
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[p.text for p in event.content.parts if p.text]
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)
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break
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content_str = response_text.strip()
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if "```json" in content_str:
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content_str = content_str.split("```json")[1].split("```")[0].strip()
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elif "```" in content_str:
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content_str = content_str.split("```")[1].split("```")[0].strip()
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try:
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structured_data = json.loads(content_str)
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validated_analysis = StructuredAnalysis(**structured_data)
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final_response = json.dumps(validated_analysis.model_dump(), indent=2)
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print("✅ Successfully created structured analysis")
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return final_response
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except json.JSONDecodeError as e:
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print(f"❌ JSON parsing error: {e}")
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print(f"Content: {content_str}")
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return json.dumps(
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{
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"error": "Failed to generate structured analysis",
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"raw_content": content_str[:200],
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}
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)
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except Exception as e:
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print(f"❌ Validation error: {e}")
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return json.dumps({"error": f"Validation failed: {str(e)}"})
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# A2A Protocol executor wraps the ADK agent
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class AnalysisAgentExecutor(AgentExecutor):
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def __init__(self):
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self.agent = AnalysisAgent()
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async def execute(
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self,
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context: RequestContext,
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event_queue: EventQueue,
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) -> None:
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query = context.get_user_input()
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session_id = getattr(context, "context_id", "default_session")
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final_content = await self.agent.invoke(query, session_id)
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await event_queue.enqueue_event(new_agent_text_message(final_content))
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async def cancel(self, context: RequestContext, event_queue: EventQueue) -> None:
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raise Exception("cancel not supported")
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port = int(os.getenv("ANALYSIS_PORT", 9002))
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skill = AgentSkill(
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id="analysis_agent",
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name="Analysis Agent",
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description="Analyzes research findings and provides meaningful insights using ADK",
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tags=["research", "analysis", "insights", "adk"],
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examples=[
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"Analyze this research about quantum computing",
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"What are the key insights from this data?",
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"Provide analysis of these research findings",
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],
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)
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public_agent_card = AgentCard(
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name="Analysis Agent",
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description="ADK-powered agent that analyzes research findings and provides meaningful insights",
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url=f"http://localhost:{port}/",
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version="1.0.0",
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defaultInputModes=["text"],
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defaultOutputModes=["text"],
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capabilities=AgentCapabilities(streaming=True),
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skills=[skill],
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supportsAuthenticatedExtendedCard=False,
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)
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def main():
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if not os.getenv("GOOGLE_API_KEY") and not os.getenv("GEMINI_API_KEY"):
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print("⚠️ Warning: No API key found!")
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print(" Set GOOGLE_API_KEY or GEMINI_API_KEY")
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print(" Get a key from: https://aistudio.google.com/app/apikey")
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print()
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request_handler = DefaultRequestHandler(
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agent_executor=AnalysisAgentExecutor(),
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task_store=InMemoryTaskStore(),
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)
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server = A2AStarletteApplication(
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agent_card=public_agent_card,
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http_handler=request_handler,
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extended_agent_card=public_agent_card,
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)
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print(f"💡 Starting Analysis Agent (ADK + A2A) on http://localhost:{port}")
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print(f" Agent: {public_agent_card.name}")
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print(f" Description: {public_agent_card.description}")
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uvicorn.run(server.build(), host="0.0.0.0", port=port)
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if __name__ == "__main__":
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main()
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