How to integrate LangGraph with AutoGen, CrewAI, and other frameworks
This guide shows how to integrate AutoGen agents with LangGraph to leverage features like persistence, streaming, and memory, and then deploy the integrated solution to LangGraph Platform for scalable production use. In this guide we show how to build a LangGraph chatbot that integrates with AutoGen, but you can follow the same approach with other frameworks.Integrating AutoGen with LangGraph provides several benefits:
Create an AutoGen agent that can execute code. This example is adapted from AutoGen’s official tutorials:
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import autogenimport osconfig_list = [{"model": "gpt-4o", "api_key": os.environ["OPENAI_API_KEY"]}]llm_config = { "timeout": 600, "cache_seed": 42, "config_list": config_list, "temperature": 0,}autogen_agent = autogen.AssistantAgent( name="assistant", llm_config=llm_config,)user_proxy = autogen.UserProxyAgent( name="user_proxy", human_input_mode="NEVER", max_consecutive_auto_reply=10, is_termination_msg=lambda x: x.get("content", "").rstrip().endswith("TERMINATE"), code_execution_config={ "work_dir": "web", "use_docker": False, }, # Please set use_docker=True if docker is available to run the generated code. Using docker is safer than running the generated code directly. llm_config=llm_config, system_message="Reply TERMINATE if the task has been solved at full satisfaction. Otherwise, reply CONTINUE, or the reason why the task is not solved yet.",)
We will now create a LangGraph chatbot graph that calls AutoGen agent.
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from langchain_core.messages import convert_to_openai_messagesfrom langgraph.graph import StateGraph, MessagesState, STARTfrom langgraph.checkpoint.memory import MemorySaverdef call_autogen_agent(state: MessagesState): # Convert LangGraph messages to OpenAI format for AutoGen messages = convert_to_openai_messages(state["messages"]) # Get the last user message last_message = messages[-1] # Pass previous message history as context (excluding the last message) carryover = messages[:-1] if len(messages) > 1 else [] # Initiate chat with AutoGen response = user_proxy.initiate_chat( autogen_agent, message=last_message, carryover=carryover ) # Extract the final response from the agent final_content = response.chat_history[-1]["content"] # Return the response in LangGraph format return {"messages": {"role": "assistant", "content": final_content}}# Create the graph with memory for persistencecheckpointer = MemorySaver()# Build the graphbuilder = StateGraph(MessagesState)builder.add_node("autogen", call_autogen_agent)builder.add_edge(START, "autogen")# Compile with checkpointer for persistencegraph = builder.compile(checkpointer=checkpointer)
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from IPython.display import display, Imagedisplay(Image(graph.get_graph().draw_mermaid_png()))
Before deploying to LangGraph Platform, you can test the graph locally:
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# pass the thread ID to persist agent outputs for future interactions# highlight-next-lineconfig = {"configurable": {"thread_id": "1"}}for chunk in graph.stream( { "messages": [ { "role": "user", "content": "Find numbers between 10 and 30 in fibonacci sequence", } ] }, # highlight-next-line config,): print(chunk)
Output:
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user_proxy (to assistant):Find numbers between 10 and 30 in fibonacci sequence--------------------------------------------------------------------------------assistant (to user_proxy):To find numbers between 10 and 30 in the Fibonacci sequence, we can generate the Fibonacci sequence and check which numbers fall within this range. Here's a plan:1. Generate Fibonacci numbers starting from 0.2. Continue generating until the numbers exceed 30.3. Collect and print the numbers that are between 10 and 30....
Since we’re leveraging LangGraph’s persistence features we can now continue the conversation using the same thread ID — LangGraph will automatically pass previous history to the AutoGen agent:
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for chunk in graph.stream( { "messages": [ { "role": "user", "content": "Multiply the last number by 3", } ] }, # highlight-next-line config,): print(chunk)
Output:
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user_proxy (to assistant):Multiply the last number by 3Context: Find numbers between 10 and 30 in fibonacci sequenceThe Fibonacci numbers between 10 and 30 are 13 and 21. These numbers are part of the Fibonacci sequence, which is generated by adding the two preceding numbers to get the next number, starting from 0 and 1. The sequence goes: 0, 1, 1, 2, 3, 5, 8, 13, 21, 34, ...As you can see, 13 and 21 are the only numbers in this sequence that fall between 10 and 30.TERMINATE--------------------------------------------------------------------------------assistant (to user_proxy):The last number in the Fibonacci sequence between 10 and 30 is 21. Multiplying 21 by 3 gives:21 * 3 = 63TERMINATE--------------------------------------------------------------------------------{'call_autogen_agent': {'messages': {'role': 'assistant', 'content': 'The last number in the Fibonacci sequence between 10 and 30 is 21. Multiplying 21 by 3 gives:\n\n21 * 3 = 63\n\nTERMINATE'}}}