# Copyright (c) Microsoft. All rights reserved. import asyncio import boto3 from semantic_kernel.agents import BedrockAgent, BedrockAgentThread """ The following sample demonstrates how to use an already existing Bedrock Agent within Semantic Kernel. This sample requires that you have an existing agent created either previously in code or via the AWS Console. This sample uses the following main component(s): - a Bedrock agent You will learn how to retrieve a Bedrock agent and talk to it. """ # Replace "your-agent-id" with the ID of the agent you want to use AGENT_ID = "your-agent-id" async def main(): client = boto3.client("bedrock-agent") agent_model = client.get_agent(agentId=AGENT_ID)["agent"] bedrock_agent = BedrockAgent(agent_model) thread: BedrockAgentThread = None try: while True: user_input = input("User:> ") if user_input == "exit": print("\n\nExiting chat...") break # Invoke the agent # The chat history is maintained in the session async for response in bedrock_agent.invoke( messages=user_input, thread=thread, ): print(f"Bedrock agent: {response}") thread = response.thread except KeyboardInterrupt: print("\n\nExiting chat...") return False except EOFError: print("\n\nExiting chat...") return False finally: # Cleanup: Delete the thread await thread.delete() if thread else None # Sample output (using anthropic.claude-3-haiku-20240307-v1:0): # User:> Hi, my name is John. # Bedrock agent: Hello John. How can I help you? # User:> What is my name? # Bedrock agent: Your name is John. if __name__ == "__main__": asyncio.run(main())