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When working with non-deterministic systems that make model-based decisions (e.g., agents powered by LLMs), it can be useful to examine their decision-making process in detail:
Understand reasoning: Analyze the steps that led to a successful result.
Debug mistakes: Identify where and why errors occurred.
Explore alternatives: Test different paths to uncover better solutions.
LangGraph provides time-travel functionality to support these use cases. Specifically, you can resume execution from a prior checkpoint — either replaying the same state or modifying it to explore alternatives. In all cases, resuming past execution produces a new fork in the history.To use time-travel in LangGraph:
Identify a checkpoint in an existing thread: Use the get_state_history method to retrieve the execution history for a specific thread_id and locate the desired checkpoint_id.
Alternatively, set an interrupt before the node(s) where you want execution to pause. You can then find the most recent checkpoint recorded up to that interrupt.
Resume execution from the checkpoint: Use the invoke or stream methods with an input of None and a configuration containing the appropriate thread_id and checkpoint_id.
This example builds a simple LangGraph workflow that generates a joke topic and writes a joke using an LLM. It demonstrates how to run the graph, retrieve past execution checkpoints, optionally modify the state, and resume execution from a chosen checkpoint to explore alternate outcomes.
import osimport getpassfrom langchain_anthropic import ChatAnthropicdef _set_env(var: str): if not os.environ.get(var): os.environ[var] = getpass.getpass(f"{var}: ")_set_env("ANTHROPIC_API_KEY")llm = ChatAnthropic(model="claude-sonnet-4-5-20250929")
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Implement the workflow
The implementation of the workflow is a simple graph with two nodes, one for generating a joke topic, another for writing the joke itself and a state to storing the intermediate values.
import uuidfrom typing_extensions import TypedDict, NotRequiredfrom langgraph.graph import StateGraph, START, ENDfrom langchain.chat_models import init_chat_modelfrom langgraph.checkpoint.memory import InMemorySaverclass State(TypedDict): topic: NotRequired[str] joke: NotRequired[str]model = init_chat_model( "claude-sonnet-4-5-20250929", temperature=0,)def generate_topic(state: State): """LLM call to generate a topic for the joke""" msg = model.invoke("Give me a funny topic for a joke") return {"topic": msg.content}def write_joke(state: State): """LLM call to write a joke based on the topic""" msg = model.invoke(f"Write a short joke about {state['topic']}") return {"joke": msg.content}# Build workflowworkflow = StateGraph(State)# Add nodesworkflow.add_node("generate_topic", generate_topic)workflow.add_node("write_joke", write_joke)# Add edges to connect nodesworkflow.add_edge(START, "generate_topic")workflow.add_edge("generate_topic", "write_joke")workflow.add_edge("write_joke", END)# Compilecheckpointer = InMemorySaver()graph = workflow.compile(checkpointer=checkpointer)graph
How about "The Secret Life of Socks in the Dryer"? You know, exploring the mysterious phenomenon of how socks go into the laundry as pairs but come out as singles. Where do they go? Are they starting new lives elsewhere? Is there a sock paradise we don't know about? There's a lot of comedic potential in the everyday mystery that unites us all!# The Secret Life of Socks in the DryerI finally discovered where all my missing socks go after the dryer. Turns out they're not missing at all—they've just eloped with someone else's socks from the laundromat to start new lives together.My blue argyle is now living in Bermuda with a red polka dot, posting vacation photos on Sockstagram and sending me lint as alimony.
To continue from a previous point in the graphs run, use get_state_history to retrieve all the states and select the one where you want to resume execution.
# The states are returned in reverse chronological order.states = list(graph.get_state_history(config))for state in states: print(state.next) print(state.config["configurable"]["checkpoint_id"]) print()
# This is the state before last (states are listed in chronological order)selected_state = states[1]print(selected_state.next)print(selected_state.values)
Output:
('write_joke',){'topic': 'How about "The Secret Life of Socks in the Dryer"? You know, exploring the mysterious phenomenon of how socks go into the laundry as pairs but come out as singles. Where do they go? Are they starting new lives elsewhere? Is there a sock paradise we don\\'t know about? There\\'s a lot of comedic potential in the everyday mystery that unites us all!'}