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Conversational Flows

Conversational apps treat each user line as a new flow run with the same session id. CrewAI adds helpers for message history, optional intent routing, deferred tracing, UI bridges, and a local flow.chat() REPL for conversational flows.

ConceptImplementation
Session idhandle_turn(..., session_id=...)kickoff(inputs={"id": ...})state.id
User linehandle_turn(message) appends to state.messages before the graph runs
Turn completeFlowFinished for this run only; chat continues on the next handle_turn
Full-session traceConversationConfig(defer_trace_finalization=True) + finalize_session_traces()

Use flow.handle_turn(message, session_id=...) for every user message from REST, WebSocket, tests, and custom UIs. Use flow.chat() when you want a local terminal chat loop for a conversational Flow.

Flow.kickoff() does not accept user_message= or session_id= keyword arguments. For conversational flows, handle_turn() stores the pending message and calls kickoff(inputs={"id": session_id}) internally after resetting per-turn execution state.

APIUse for
handle_turn(message, session_id=...)Ergonomic one-turn wrapper for conversational Flow
chat()Local terminal REPL for conversational Flow
kickoff(inputs={...})Advanced flow execution without conversational turn handling
ask()Blocking prompt inside one step (wizard, clarification)
@human_feedbackApprove/reject a step output — not the next chat line
ChatSession.handle_turn(...)Transport layer over handle_turn (SSE / WebSocket)
from uuid import uuid4
from crewai import Flow
from crewai.flow import listen
from crewai.experimental.conversational import (
ConversationConfig,
ConversationState,
)
@ConversationConfig(defer_trace_finalization=True)
class SupportFlow(Flow[ConversationState]):
conversational = True
def route_turn(self, context):
message = (self.state.current_user_message or "").lower()
if "order" in message:
return "order"
if "bye" in message or "goodbye" in message:
return "goodbye"
return "help"
@listen("order")
def handle_order(self):
reply = "Your order is on the way."
self.append_assistant_message(reply)
return reply
@listen("help")
def handle_help(self):
reply = "How can I help?"
self.append_assistant_message(reply)
return reply
@listen("goodbye")
def handle_goodbye(self):
reply = "Goodbye!"
self.append_assistant_message(reply)
return reply
session_id = str(uuid4())
flow = SupportFlow()
try:
flow.handle_turn("Where is my order?", session_id=session_id)
flow.handle_turn("What about returns?", session_id=session_id)
finally:
flow.finalize_session_traces() # one trace link for the whole chat

Each handle_turn runs this pipeline:

  1. Turn setup — stores the pending user message, resolves the session id, resets per-turn execution tracking, and calls kickoff(inputs={"id": session_id}).
  2. State restore — if inputs["id"] exists and @persist is configured, loads the latest snapshot.
  3. FlowStarted — emitted on the first deferred session turn only.
  4. Pending turn hydration — appends the user message to state.messages, sets current_user_message / last_user_message, and optionally classifies when intents / default_intents + intent_llm are set.
  5. Graph executionconversation_startroute_conversation → the selected @listen handler.
  6. End of run — per-turn flow_finished and trace finalization are skipped when deferral is enabled; nested Agent.kickoff() / crews do not close the parent batch either.

Handlers should call append_assistant_message(reply) so the next turn’s conversation_messages includes assistant text. The user line is already stored by handle_turn — do not append it again in handlers.

Decorate your conversational Flow subclass with ConversationConfig.

FieldDefaultPurpose
system_promptFramework defaultSystem message used by the built-in converse_turn.
llmNoneConversation LLM used by converse_turn and as router fallback.
routerNoneRouterConfig for LLM-driven routing.
intent_llmNoneLLM for intents= / default_intents pre-classification.
default_intentsNoneOutcome labels for pre-classification.
defer_trace_finalizationTrueKeep one trace batch open across handle_turn() calls.

Override pre-classification per turn with handle_turn(..., intents=..., intent_llm=...).

ChatState, ConversationalConfig, and crewai.flow.conversation helpers are still importable for advanced orchestration, tests, or custom wrappers. They do not add user_message= or session_id= keyword arguments to Flow.kickoff().

from crewai.flow import ChatState
class MyChatState(ChatState):
# Inherited: id, messages, last_user_message, last_intent, session_ready
research_turn_count: int = 0
custom_flag: bool = False
FieldRole
idSession UUID (same as inputs["id"])
messageslist of {role, content} for LLM history
last_user_messageLatest user line for this turn
last_intentRoute label after classification (if used)
session_readyOne-time bootstrap flag (permissions, caches, etc.)

ConversationalInputs is a TypedDict for conventional kickoff(inputs={...}) keys: id, user_message, last_intent.

ParameterPurpose
messageThis turn’s text
session_idConversation UUID → inputs["id"] / state.id
intentsOutcome labels for pre-kickoff classify_intent
intent_llmLLM for classification (required with intents)
**kickoff_kwargsForwarded to kickoff() for options like input_files, from_checkpoint, and restore_from_state_id

Flow.kickoff() accepts inputs, input_files, from_checkpoint, and restore_from_state_id. Pass inputs={"id": session_id} when you need raw flow execution, but use handle_turn() when the call represents a chat message.

AttributePurpose
conversationalSet to True to enable the conversational graph and handle_turn()
defer_trace_finalizationInstance flag; set automatically from config on handle_turn()
suppress_flow_eventsHides console flow panels; tracing still records method/flow events
streamEnable streaming; use with ChatSession.handle_turn(..., stream=True)
NameDescription
append_assistant_message(content)Append a user-visible assistant reply to state.messages
append_message(role, content, **extra)Lower-level append to state.messages
conversation_messagesRead-only history for LLM calls
classify_intent(text, outcomes, *, llm, context=None)Map text to one outcome (same collapse logic as @human_feedback)
receive_user_message(text, *, outcomes=None, llm=None)Append user message; optionally set last_intent
finalize_session_traces()Emit deferred flow_finished and finalize the session trace batch
_should_defer_trace_finalization()Whether this flow defers per-turn trace finalization
input_historyAudit trail of ask() prompts and responses

Importable for tests or custom orchestration:

FunctionDescription
normalize_kickoff_inputs(inputs, user_message=..., session_id=...)Merge conversational kwargs into inputs
get_conversation_messages(flow)Read messages from state or internal buffer
append_message(flow, role, content, **extra)Same as instance method
prepare_conversational_turn(flow, user_message=..., intents=..., intent_llm=..., config=...)Lower-level turn hydration for custom wrappers
receive_user_message(flow, text, ...)Same as instance method
set_state_field(flow, name, value)Set a field on dict or Pydantic state
get_conversational_config(flow)Read class conversational_config
input_history_to_messages(entries)Convert input_history to LLM message format

A. Pre-classify via ConversationConfig (simplest)

Section titled “A. Pre-classify via ConversationConfig (simplest)”

Set default_intents and intent_llm. Each handle_turn() runs classification before routing; read self.state.last_intent in route_turn().

B. Classify inside route_turn (richer prompts)

Section titled “B. Classify inside route_turn (richer prompts)”

Set default_intents=None so handle_turn() only appends the user message. In route_turn(), call classify_intent with a custom prompt or descriptions:

def route_turn(self, context):
intent = self.classify_intent(
self._routing_prompt(self.state.current_user_message),
("GREETING", "ORDER", "RESEARCH", "GOODBYE"),
llm="gpt-4o-mini",
)
self.state.last_intent = intent
return intent

Use @listen("RESEARCH") (or similar) for steps that run Agent.kickoff() with tools — not bare LLM.call() — when you need web research or multi-step tool use.

When the flow finishes but the user keeps chatting

Section titled “When the flow finishes but the user keeps chatting”

FlowFinished means this graph run completed. The conversation continues with another handle_turn() and the same session_id. @persist restores messages, flags, and context.

Persist pattern: prefer @persist on a single terminal step (for example finalize) rather than on the whole Flow class. Class-level persist saves after every method; load_state uses the latest row, which may be a mid-run snapshot (for example right after bootstrap) and miss handler updates from the same turn.

Do not use @human_feedback for follow-up chat lines unless a human must approve a specific step output before it is shown.

Opt into the conversational chat graph by setting conversational = True on a Flow subclass. The base Flow then ships a built-in @start / @router / converse_turn / end_conversation graph, manages state.messages, can drive a router LLM, and keeps the trace batch open across turns. You write the custom routes; the framework owns the rest.

Use this when you want a multi-turn chat with a router and per-route handlers without wiring the lifecycle yourself. Use Flow[ChatState] (the lower-level pattern above) when you need full control.

from crewai import Flow
from crewai.flow import listen
from crewai.experimental.conversational import (
ConversationConfig,
ConversationState,
)
@ConversationConfig(defer_trace_finalization=True)
class SupportFlow(Flow[ConversationState]):
conversational = True
def route_turn(self, context: dict) -> str | None:
message = (self.state.current_user_message or "").lower()
if "search" in message or "news" in message:
return "INTERNET_SEARCH"
if "docs" in message or "crewai" in message:
return "CREWAI_DOCS"
return "converse"
@listen("INTERNET_SEARCH")
def handle_internet_search(self) -> str:
"""Fresh web research, current news, real-time lookups."""
reply = "I would run the web research route here."
self.append_assistant_message(reply)
return reply
@listen("CREWAI_DOCS")
def handle_crewai_docs(self) -> str:
"""Look up the CrewAI documentation for framework/API questions."""
reply = "I would look up the CrewAI docs here."
self.append_assistant_message(reply)
return reply
flow = SupportFlow()
try:
flow.handle_turn("What can you do?") # routes to converse
flow.handle_turn("Search the web for AI news.") # routes to INTERNET_SEARCH
flow.handle_turn("Check the CrewAI docs.") # routes to CREWAI_DOCS
finally:
flow.finalize_session_traces()

For a local terminal chat, use chat():

def kickoff() -> None:
SupportFlow().chat()

chat() wraps handle_turn() in a REPL, exits on exit / quit, skips blank lines by default, and calls finalize_session_traces() when the session ends.

Class decorator that attaches per-class chat defaults.

FieldDefaultPurpose
system_promptslices.conversational_system_prompt from i18nSystem message used by the built-in converse_turn. Pass "" to opt out entirely.
llmNoneConversation LLM (used by converse_turn and as router fallback).
routerNoneRouterConfig for LLM-driven routing. Without it, the flow always falls through to converse.
answer_from_history_promptFramework defaultSystem message for the optional answer_from_history route.
answer_from_history_llmNoneEnables the answer_from_history short-circuit when set.
intent_llmNoneLLM for legacy intents=/default_intents pre-classification.
default_intentsNoneOutcome labels for legacy pre-classification.
visible_agent_outputsNone"all", or a list of agent names whose append_agent_result() calls should be promoted to public assistant messages.
defer_trace_finalizationTrueKeep one trace batch open across handle_turn() calls.

RouterConfig and the auto-built route catalog

Section titled “RouterConfig and the auto-built route catalog”
from typing import Literal
from pydantic import BaseModel
from crewai import LLM
from crewai.experimental.conversational import RouterConfig
class MyRoute(BaseModel):
intent: Literal["INTERNET_SEARCH", "CREWAI_DOCS", "converse"]
ROUTER_LLM = LLM(model="gpt-4o-mini")
router_config = RouterConfig(
prompt="Optional domain framing (policy, voice, persona).",
response_format=MyRoute, # optional; auto-generated otherwise
llm=ROUTER_LLM, # falls back to ConversationConfig.llm
routes=["INTERNET_SEARCH", "CREWAI_DOCS"], # optional; inferred from listeners
route_descriptions={
"INTERNET_SEARCH": "Override the docstring for this one route.",
},
default_intent="converse", # used when LLM call fails or no LLM available
fallback_intent="converse", # used when LLM returns an invalid route
intent_field="intent",
)

The router prompt that gets sent to the LLM is built automatically. For each route the framework picks a description with this precedence:

  1. RouterConfig.route_descriptions[label] — explicit override.
  2. Flow.builtin_route_descriptions[label] — framework-canned text for converse, end, answer_from_history (phrased for the router LLM).
  3. First non-empty line of the @listen(label) handler’s docstring.
  4. Empty (the route is listed without a description).

So in practice, adding a new route is @listen("X") + a one-line docstring:

from crewai.flow import listen
@listen("INTERNET_SEARCH")
def handle_internet_search(self) -> str:
"""Fresh web research, current news, real-time lookups."""
...

…and the router LLM sees:

Routes:
- CREWAI_DOCS: Look up the CrewAI documentation for framework/API questions.
- INTERNET_SEARCH: Fresh web research, current news, real-time lookups.
- converse: Ordinary chat, follow-ups, summaries, clarifications…
- end: User signals the conversation is finished (goodbye, exit, done).

RouterConfig.prompt is for domain framing (assistant persona, business rules, voice). The route catalog is auto-built — don’t list routes in prompt; they’ll drift the moment you add a handler.

RouteHandlerPurpose
converseconverse_turnDefault chat handler. Calls ConversationConfig.llm with the system prompt + canonical message history.
endend_conversationSets state.ended = True and emits a terminator reply.
answer_from_historyanswer_from_history_turnOptional. Routes here when ConversationConfig.answer_from_history_llm is set and the message can be answered from existing history.

You can override any of these by defining a same-named handler in your subclass.

flow.handle_turn(message) runs one turn:

  1. Resets per-execution tracking (_completed_methods, _method_outputs) so the graph re-runs — without this, repeated kickoff calls on the same flow instance would short-circuit on turn 2+ because Flow.kickoff_async treats inputs={"id": ...} as a checkpoint restore.
  2. Appends the user message to state.messages, sets current_user_message / last_user_message. last_intent is preserved from the prior turn so the router LLM can use it as a signal.
  3. Runs conversation_startroute_conversation → the chosen @listen handler.
  4. The router stores its decision in state.last_intent (visible to the next turn’s router context).
  5. If your handler returned a string and didn’t already call append_assistant_message, handle_turn appends it for you.

Call handle_turn() for chat messages. Calling kickoff(inputs={"id": ...}) directly runs the flow graph without applying the conversational turn wrapper.

flow.chat() is the batteries-included terminal wrapper around handle_turn():

flow = SupportFlow()
flow.chat()

It handles the common local loop:

  1. Prompts for a user message.
  2. Stops on exit / quit, EOFError, or KeyboardInterrupt.
  3. Calls handle_turn(message, session_id=...).
  4. Prints the assistant result.
  5. Finalizes deferred session traces in a finally block.

Customize the terminal behavior with injectable I/O:

flow.chat(
session_id="demo-session",
prompt="You: ",
assistant_prefix="Assistant: ",
exit_commands=("exit", "quit", "bye"),
)

For web apps, background workers, tests, and custom transports, keep using handle_turn() directly.

To run side effects (event bus setup, telemetry) on every routing decision, override route_turn:

from typing import Any
from crewai import Flow
from crewai.experimental.conversational import ConversationState
class SupportFlow(Flow[ConversationState]):
conversational = True
def route_turn(self, context: dict[str, Any]) -> str | None:
self.event_bus = MyBus(self)
return super().route_turn(context)

To bypass the LLM router entirely and pick a route programmatically, return a string from route_turn; returning None falls back to _route_with_config(...).

append_assistant_message and append_agent_result

Section titled “append_assistant_message and append_agent_result”

Inside a @listen(label) handler, choose:

  • self.append_assistant_message(text) — adds a user-visible assistant turn to state.messages. The next turn’s converse_turn sees it.
  • self.append_agent_result(agent_name, result, visibility="private") — records a structured event in state.events and a thread in state.agent_threads[agent_name]. Public visibility also calls append_assistant_message for you. Use private results for scratch work that shouldn’t pollute the canonical history.

ConversationConfig.visible_agent_outputs can promote specific agents’ private results to public globally ("all", or a list of agent names).

With defer_trace_finalization=True (default in ConversationConfig):

  • One trace batch for the whole chat session.
  • flow_started on the first turn only; flow_finished once in finalize_session_traces().
  • Per-turn kickoff does not print “Trace batch finalized”.
  • Nested work (Agent.kickoff(), crews, Exa tools) appends to the parent batch; inner AgentExecutor flows do not close the session batch early.
flow.chat(session_id=session_id)

flow.chat() calls finalize_session_traces() for you. When you own the loop with handle_turn(), call finalize_session_traces() when the session ends.

suppress_flow_events=True only hides Rich console panels; trace and method events still emit for observability.

The experimental conversational Flow uses the same tracing lifecycle: defer_trace_finalization defaults to True, so each handle_turn() keeps the session trace open. Always finalize at the end of the session — wrap your REPL/loop in try/finally and call flow.finalize_session_traces() on exit. Without it, the trace batch stays open and the final conversation may never export.

Set stream = True on the Flow class. kickoff(...) will then emit assistant_delta (and related) events through the standard event bus.

from crewai.flow import (
ChatState,
ConversationalConfig,
ConversationalInputs,
Flow,
listen,
persist,
router,
start,
)