I’ve been fascinated by debates—the strategic framing, the sharp retorts, and the fastidiously timed comebacks. Debates aren’t simply entertaining; they’re structured battles of concepts, pushed by logic and proof. Lately, I began questioning: might we replicate that dynamic utilizing AI brokers—having them debate one another autonomously, full with real-time fact-checking and moderation? The end result was Deb8flow, an autonomous AI debating atmosphere powered by LangGraph, OpenAI’s GPT-4o mannequin, and the brand new built-in Web Search function.
In Deb8flow, two brokers—Professional and Con—sq. off on a given matter whereas a Moderator manages turn-taking. A devoted Truth Checker critiques each declare in actual time utilizing GPT-4o’s new shopping capabilities, and a remaining Decide evaluates the arguments for high quality and coherence. If an agent repeatedly makes factual errors, they’re robotically disqualified—guaranteeing the talk stays grounded in reality.
This text gives an in-depth have a look at the superior structure and dynamic workflows that energy autonomous AI debates. I’ll stroll you thru how Deb8flow’s modular design leverages LangGraph’s state administration and conditional routing, alongside GPT-4o’s capabilities.
Even in the event you’re new to AI brokers or LangGraph (see sources [1] and [2] for primers), I’ll clarify the important thing ideas clearly. And in the event you’d wish to discover additional, the total mission is obtainable on GitHub: iason-solomos/Deb8flow.
Able to see how AI brokers can debate autonomously in follow?
Let’s dive in.
Excessive-Degree Overview: Autonomous Debates with A number of Brokers
In Deb8flow, we orchestrate a formal debate between two AI brokers – one arguing Professional and one Con – full with a Moderator, a Truth Checker, and a remaining Decide. The controversy unfolds autonomously, with every agent taking part in a job in a structured format.
At its core, Deb8flow is a LangGraph-powered agent system, constructed atop LangChain, utilizing GPT-4o to energy every function—Professional, Con, Decide, and past. We use GPT-4o’s preview mannequin with shopping capabilities to allow real-time fact-checking. In essence, the Professional and Con brokers debate; after every assertion, a fact-checker agent makes use of GPT-4o’s internet search to catch any hallucinations or inaccuracies in that assertion in actual time. The controversy solely continues as soon as the assertion is verified. The entire course of is coordinated by a LangGraph-defined workflow that ensures correct turn-taking and conditional logic.
Excessive-level debate movement graph. Every rectangle is an agent node (Professional/Con debaters, Truth Checker, Decide, and so on.), and diamonds are management nodes (Moderator and a router after fact-checking). Strong arrows denote the conventional development, whereas dashed arrows point out retries if a declare fails fact-check. The Decide node outputs the ultimate verdict, then the workflow ends.
Picture generated by the creator with DALL-E
The controversy workflow goes by means of these phases:
- Matter Era: A Matter Generator agent produces a nuanced, debatable matter for the session (e.g. “Ought to AI be utilized in classroom training?”).
- Opening: The Professional Argument Agent makes a gap assertion in favor of the subject, kicking off the talk.
- Rebuttal: The Debate Moderator then offers the ground to the Con Argument agent, who rebuts the Professional’s opening assertion.
- Counter: The Moderator offers the ground again to the Professional agent, who counters the Con agent’s factors.
- Closing: The Moderator switches the ground to the Con agent one final time for a closing argument.
- Judgment: Lastly, the Decide agent critiques the total debate historical past and evaluates either side primarily based on argument high quality, readability, and persuasiveness. Probably the most convincing aspect wins.
After each single speech, the Truth Checker agent steps in to confirm the factual accuracy of that assertion. If a debater’s declare doesn’t maintain up (e.g. cites a improper statistic or “hallucinates” a reality), the workflow triggers a retry: the speaker has to right or modify their assertion. (If both debater accumulates 3 fact-check failures, they’re robotically disqualified for repeatedly spreading inaccuracies, and their opponent wins by default.) This mechanism retains our AI debaters trustworthy and grounded in actuality!
Stipulations and Setup
Earlier than diving into the code, be sure you have the next in place:
- Python 3.12+ put in.
- An OpenAI API key with entry to the GPT-4o mannequin. You’ll be able to create your individual API key right here: https://platform.openai.com/settings/organization/api-keys
- Venture Code: Clone the Deb8flow repository from GitHub (
git clone https://github.com/iason-solomos/Deb8flow.git
). The repo features anecessities.txt
for all required packages. Key dependencies embody LangChain/LangGraph (for constructing the agent graph) and the OpenAI Python consumer. - Set up Dependencies: In your mission listing, run:
pip set up -r necessities.txt
to put in the required libraries. - Create a
.env
file within the mission root to carry your OpenAI API credentials. It must be of the shape:OPENAI_API_KEY_GPT4O = "sk-…"
- You too can at any time take a look at the README file: https://github.com/iason-solomos/Deb8flow in the event you merely wish to run the completed app.
As soon as dependencies are put in and the atmosphere variable is about, you ought to be able to run the app. The mission construction is organized for readability:
Deb8flow/
├── configurations/
│ ├── debate_constants.py
│ └── llm_config.py
├── nodes/
│ ├── base_component.py
│ ├── topic_generator_node.py
│ ├── pro_debater_node.py
│ ├── con_debater_node.py
│ ├── debate_moderator_node.py
│ ├── fact_checker_node.py
│ ├── fact_check_router_node.py
│ └── judge_node.py
├── prompts/
│ ├── topic_generator_prompts.py
│ ├── pro_debater_prompts.py
│ ├── con_debater_prompts.py
│ └── … (prompts for different brokers)
├── checks/ (incorporates unit and complete workflow checks)
└── debate_workflow.py
A fast tour of this construction:
configurations/
holds fixed definitions and LLM configuration lessons.
nodes/
incorporates the implementation of every agent or useful node within the debate (every of those is a module defining one agent’s conduct).
prompts/
shops the immediate templates for the language mannequin (so every agent is aware of easy methods to immediate GPT-4o for its particular process).
debate_workflow.py
ties all the pieces collectively by defining the LangGraph workflow (the graph of nodes and transitions).
debate_state.py
defines the shared knowledge construction that the brokers might be utilizing on every run.
checks/
consists of some fundamental checks and instance runs that can assist you confirm all the pieces is working.
Below the Hood: State Administration and Workflow Setup
To coordinate a fancy multi-turn debate, we’d like a shared state and a well-defined movement. We’ll begin by how Deb8flow defines the debate state and constants, after which see how the LangGraph workflow is constructed.
Defining the Debate State Schema (debate_state.py
)
Deb8flow makes use of a shared state (https://langchain-ai.github.io/langgraph/concepts/low_level/#state ) within the type of a Python TypedDict
that each one brokers can learn from and replace. This state tracks the talk’s progress and context – issues like the subject, the historical past of messages, whose flip it’s, and so on. By centralizing this data, every agent node could make choices primarily based on the present state of the talk.
Hyperlink: debate_state.py
from typing import TypedDict, Checklist, Dict, Literal
DebateStage = Literal["opening", "rebuttal", "counter", "final_argument"]
class DebateMessage(TypedDict):
speaker: str # e.g. professional or con
content material: str # The message every speaker produced
validated: bool # Whether or not the FactChecker okay’d this message
stage: DebateStage # The stage of the talk when this message was produced
class DebateState(TypedDict):
debate_topic: str
positions: Dict[str, str]
messages: Checklist[DebateMessage]
opening_statement_pro_agent: str
stage: str # "opening", "rebuttal", "counter", "final_argument"
speaker: str # "professional" or "con"
times_pro_fact_checked: int # The variety of instances the professional agent has been fact-checked. If it reaches 3, the professional agent is disqualified.
times_con_fact_checked: int # The variety of instances the con agent has been fact-checked. If it reaches 3, the con agent is disqualified.
Key fields that we have to have within the DebateState
embody:
debate_topic
(str): The subject being debated.messages
(Checklist[DebateMessage]): An inventory of all messages exchanged thus far. Every message is a dictionary with fields forspeaker
(e.g."professional"
or"con"
or"fact_checker"
), the messagecontent material
(textual content), avalidated
flag (whether or not it handed fact-check), and thestage
of the talk when it was produced.stage
(str): The present debate stage (one in every of"opening"
,"rebuttal"
,"counter"
,"final_argument"
).speaker
(str): Whose flip it’s presently ("professional"
or"con"
).times_pro_fact_checked
/times_con_fact_checked
(int): Counters for what number of instances either side has been caught with a false declare. (In our guidelines, if a debater fails fact-check 3 instances, they may very well be disqualified or robotically lose.)positions
(Dict[str, str]): (Optionally available) A mapping of every aspect’s common stance (e.g.,"professional": "In favor of the subject"
).
By structuring the talk’s state, brokers discover it simple to entry the dialog historical past or examine the present stage, and the management logic can replace the state between turns. The state is basically the reminiscence of the talk.
Constants and Configuration
To keep away from “magic strings” scattered within the code, we outline some constants in debate_constants.py
. For instance, constants for stage names (STAGE_OPENING = "opening"
, and so on.), speaker identifiers (SPEAKER_PRO = "professional"
, SPEAKER_CON = "con"
, and so on.), and node names (NODE_PRO_DEBATER = "pro_debater_node"
, and so on.). These make the code simpler to take care of and browse.
# Stage names
STAGE_OPENING = "opening"
STAGE_REBUTTAL = "rebuttal"
STAGE_COUNTER = "counter"
STAGE_FINAL_ARGUMENT = "final_argument"
STAGE_END = "finish"
# Audio system
SPEAKER_PRO = "professional"
SPEAKER_CON = "con"
SPEAKER_JUDGE = "decide"
# Node names
NODE_PRO_DEBATER = "pro_debater_node"
NODE_CON_DEBATER = "con_debater_node"
NODE_DEBATE_MODERATOR = "debate_moderator_node"
NODE_JUDGE = "judge_node"
We additionally arrange LLM configuration in llm_config.py. Right here, we outline lessons for OpenAI or Azure OpenAI configs after which create a dictionary llm_config_map
mapping mannequin names to their config. As an illustration, we map "gpt-4o"
to an OpenAILLMConfig
that holds the mannequin title and API key. This manner, at any time when we have to initialize a GPT-4o agent, we are able to simply do llm_config_map["gpt-4o"]
to get the proper config. All our fundamental brokers (debaters, matter generator, decide) use this similar GPT-4o configuration.
import os
from dataclasses import dataclass
from typing import Union
@dataclass
class OpenAILLMConfig:
"""
A knowledge class to retailer configuration particulars for OpenAI fashions.
Attributes:
model_name (str): The title of the OpenAI mannequin to make use of.
openai_api_key (str): The API key for authenticating with the OpenAI service.
"""
model_name: str
openai_api_key: str
llm_config_map = {
"gpt-4o": OpenAILLMConfig(
model_name="gpt-4o",
openai_api_key=os.getenv("OPENAI_API_KEY_GPT4O"),
)
}
Constructing the LangGraph Workflow (debate_workflow.py
)
With state and configs in place, we assemble the debate workflow graph. LangGraph’s StateGraph is the spine that connects all our agent nodes within the order they need to execute. Right here’s how we set it up:
class DebateWorkflow:
def _initialize_workflow(self) -> StateGraph:
workflow = StateGraph(DebateState)
# Nodes
workflow.add_node("generate_topic_node", GenerateTopicNode(llm_config_map["gpt-4o"]))
workflow.add_node("pro_debater_node", ProDebaterNode(llm_config_map["gpt-4o"]))
workflow.add_node("con_debater_node", ConDebaterNode(llm_config_map["gpt-4o"]))
workflow.add_node("fact_check_node", FactCheckNode())
workflow.add_node("fact_check_router_node", FactCheckRouterNode())
workflow.add_node("debate_moderator_node", DebateModeratorNode())
workflow.add_node("judge_node", JudgeNode(llm_config_map["gpt-4o"]))
# Entry level
workflow.set_entry_point("generate_topic_node")
# Stream
workflow.add_edge("generate_topic_node", "pro_debater_node")
workflow.add_edge("pro_debater_node", "fact_check_node")
workflow.add_edge("con_debater_node", "fact_check_node")
workflow.add_edge("fact_check_node", "fact_check_router_node")
workflow.add_edge("judge_node", END)
return workflow
async def run(self):
workflow = self._initialize_workflow()
graph = workflow.compile()
# graph.get_graph().draw_mermaid_png(output_file_path="workflow_graph.png")
initial_state = {
"matter": "",
"positions": {}
}
final_state = await graph.ainvoke(initial_state, config={"recursion_limit": 50})
return final_state
Let’s break down what’s taking place:
- We initialize a brand new
StateGraph
with ourDebateState
kind because the state schema. - We add every node (agent) to the graph with a reputation. For nodes that want an LLM, we move within the GPT-4o config. For instance,
"pro_debater_node"
is added asProDebaterNode(llm_config_map["gpt-4o"])
, which means the Professional debater agent will use GPT-4o as its underlying mannequin. - We set the entry level of the graph to
"generate_topic_node"
. This implies step one of the workflow is to generate a debate matter. - Then we add directed edges to attach nodes. The sides above encode the first sequence: matter -> professional’s flip -> fact-check -> (then a routing choice) -> … ultimately -> decide -> END. We don’t join the Moderator or Truth Examine Router with static edges, since these nodes use dynamic instructions to redirect the movement. The ultimate edge connects the decide to an
END
marker to terminate the graph.
When the workflow runs, management will move alongside these edges so as, however at any time when we hit a router or moderator node, that node will output a command telling the graph which node to go to subsequent (overriding the default edge). That is how we create conditional loops: the fact_check_router_node
may ship us again to a debater node for a retry, as a substitute of following a straight line. LangGraph helps this by permitting nodes to return a particular Command
object with goto
directions.
In abstract, at a excessive stage we’ve outlined an agentic workflow: a graph of autonomous brokers the place management can department and loop primarily based on the brokers’ outputs. Now, let’s discover what every of those agent nodes truly does.
Agent Nodes Breakdown
Every stage or function within the debate is encapsulated in a node (agent). In LangGraph, nodes are sometimes easy features, however I wished a extra object-oriented method for readability and reusability. So in Deb8flow, each node is a class with a __call__
technique. All the principle agent lessons inherit from a typical BaseComponent
for shared performance. This design makes the system modular: we are able to simply swap out or lengthen brokers by modifying their class definitions, and every agent class is answerable for its piece of the workflow.
Let’s undergo the important thing brokers one after the other.
BaseComponent
– A Reusable Agent Base Class
Most of our agent nodes (just like the debaters and decide) share widespread wants: they use an LLM to generate output, they may have to retry on errors, and they need to observe token utilization. The BaseComponent
class (outlined in nodes/base_component.py
) offers these widespread options so we don’t repeat code.
class BaseComponent:
"""
A foundational class for managing LLM-based workflows with token monitoring.
Can deal with each Azure OpenAI (AzureChatOpenAI) and OpenAI (ChatOpenAI).
"""
def __init__(
self,
llm_config: Optionally available[LLMConfig] = None,
temperature: float = 0.0,
max_retries: int = 5,
):
"""
Initializes the BaseComponent with elective LLM configuration and temperature.
Args:
llm_config (Optionally available[LLMConfig]): Configuration for both Azure or OpenAI.
temperature (float): Controls the randomness of LLM outputs. Defaults to 0.0.
max_retries (int): What number of instances to retry on 429 errors.
"""
logger = logging.getLogger(self.__class__.__name__)
tracer = hint.get_tracer(__name__, tracer_provider=get_tracer_provider())
self.logger = logger
self.tracer = tracer
self.llm: Optionally available[ChatOpenAI] = None
self.output_parser: Optionally available[StrOutputParser] = None
self.state: Optionally available[DebateState] = None
self.prompt_template: Optionally available[ChatPromptTemplate] = None
self.chain: Optionally available[RunnableSequence] = None
self.paperwork: Optionally available[List] = None
self.prompt_tokens = 0
self.completion_tokens = 0
self.max_retries = max_retries
if llm_config is just not None:
self.llm = self._init_llm(llm_config, temperature)
self.output_parser = StrOutputParser()
def _init_llm(self, config: LLMConfig, temperature: float):
"""
Initializes an LLM occasion for both Azure OpenAI or normal OpenAI.
"""
if isinstance(config, AzureOpenAILLMConfig):
# If it is Azure, use the AzureChatOpenAI class
return AzureChatOpenAI(
deployment_name=config.deployment_name,
azure_endpoint=config.azure_endpoint,
openai_api_version=config.openai_api_version,
openai_api_key=config.openai_api_key,
temperature=temperature,
)
elif isinstance(config, OpenAILLMConfig):
# If it is normal OpenAI, use the ChatOpenAI class
return ChatOpenAI(
model_name=config.model_name,
openai_api_key=config.openai_api_key,
temperature=temperature,
)
else:
increase ValueError("Unsupported LLMConfig kind.")
def validate_initialization(self) -> None:
"""
Ensures we've got an LLM and an output parser.
"""
if not self.llm:
increase ValueError("LLM is just not initialized. Guarantee `llm_config` is supplied.")
if not self.output_parser:
increase ValueError("Output parser is just not initialized.")
def execute_chain(self, inputs: Any) -> Any:
"""
Executes the LLM chain, tracks token utilization, and retries on 429 errors.
"""
if not self.chain:
increase ValueError("No chain is initialized for execution.")
retry_wait = 1 # Preliminary wait time in seconds
for try in vary(self.max_retries):
attempt:
with get_openai_callback() as cb:
end result = self.chain.invoke(inputs)
self.logger.data("Immediate Token utilization: %s", cb.prompt_tokens)
self.logger.data("Completion Token utilization: %s", cb.completion_tokens)
self.prompt_tokens = cb.prompt_tokens
self.completion_tokens = cb.completion_tokens
return end result
besides Exception as e:
# If the error mentions 429, do exponential backoff and retry
if "429" in str(e):
self.logger.warning(
f"Fee restrict reached. Retrying in {retry_wait} seconds... "
f"(Try {try + 1}/{self.max_retries})"
)
time.sleep(retry_wait)
retry_wait *= 2
else:
self.logger.error(f"Sudden error: {str(e)}")
increase e
increase Exception("API request failed after most variety of retries")
def create_chain(
self, system_template: str, human_template: str
) -> RunnableSequence:
"""
Creates a sequence for unstructured outputs.
"""
self.validate_initialization()
self.prompt_template = ChatPromptTemplate.from_messages(
[
("system", system_template),
("human", human_template),
]
)
self.chain = self.prompt_template | self.llm | self.output_parser
return self.chain
def create_structured_output_chain(
self, system_template: str, human_template: str, output_model: Sort[BaseModel]
) -> RunnableSequence:
"""
Creates a sequence that yields structured outputs (parsed right into a Pydantic mannequin).
"""
self.validate_initialization()
self.prompt_template = ChatPromptTemplate.from_messages(
[
("system", system_template),
("human", human_template),
]
)
self.chain = self.prompt_template | self.llm.with_structured_output(output_model)
return self.chain
def build_return_with_tokens(self, node_specific_data: dict) -> dict:
"""
Comfort technique so as to add token utilization data into the return values.
"""
return {
**node_specific_data,
"prompt_tokens": self.prompt_tokens,
"completion_tokens": self.completion_tokens,
}
def __call__(self, state: DebateState) -> None:
"""
Updates the node's native copy of the state.
"""
self.state = state
for key, worth in state.objects():
setattr(self, key, worth)
Key options of BaseComponent
:
- It shops an LLM consumer (e.g. an OpenAI
ChatOpenAI
occasion) initialized with a given mannequin and API key, in addition to an output parser. - It offers a way
create_chain(system_template, human_template)
which units up a LangChain immediate chain (aRunnableSequence
) combining a system immediate and a human immediate. This chain is what truly generates outputs when run. - It has an
execute_chain(inputs)
technique that invokes the chain and consists of logic to retry if the OpenAI API returns a rate-limit error (HTTP 429). That is executed with exponential backoff as much as amax_retries
rely. - It retains observe of token utilization (immediate tokens and completion tokens) for logging or evaluation.
- The
__call__
technique of BaseComponent (which every subclass will name throughtremendous().__call__(state)
) can carry out any setup wanted earlier than the node’s fundamental logic runs (like guaranteeing the LLM is initialized).
By constructing on BaseComponent
, every agent class can give attention to its distinctive logic (like what immediate to make use of and easy methods to deal with the state), whereas inheriting the heavy lifting of interacting with GPT-4o reliably.
Matter Generator Agent (GenerateTopicNode
)
The Matter Generator (topic_generator_node.py) is the primary agent within the graph. Its job is to give you a debatable matter for the session. We give it a immediate that instructs it to output a nuanced matter that might moderately have a professional and con aspect.
This agent inherits from BaseComponent
and makes use of a immediate chain (system + human immediate) to generate one merchandise of textual content – the talk matter. When referred to as, it executes the chain (with no particular enter, simply utilizing the immediate) and will get again a topic_text
. It then updates the state with:
debate_topic
: the generated matter (stripped of any further whitespace),positions
: a dictionary assigning the professional and con stances (by default we use"In favor of the subject"
and"In opposition to the subject"
),stage
: set to"opening"
,speaker
: set to"professional"
(so the Professional aspect will communicate first).
In code, the return may appear like:
return {
"debate_topic": debate_topic,
"positions": positions,
"stage": "opening",
"speaker": first_speaker # "professional"
}
Listed here are the prompts for the subject generator:
SYSTEM_PROMPT = """
You're a brainstorming AI that means debate subjects.
You'll present a single, attention-grabbing or well timed matter that may have two opposing views.
"""
HUMAN_PROMPT = """
Please recommend one debate matter for 2 AI brokers to debate.
For instance, it may very well be about expertise, politics, philosophy, or any attention-grabbing area.
Simply present the subject in a concise sentence.
"""
Then we move these prompts within the constructor of the category itself.
class GenerateTopicNode(BaseComponent):
def __init__(self, llm_config, temperature: float = 0.7):
tremendous().__init__(llm_config, temperature)
# Create the immediate chain.
self.chain: RunnableSequence = self.create_chain(
system_template=SYSTEM_PROMPT,
human_template=HUMAN_PROMPT
)
def __call__(self, state: DebateState) -> Dict[str, str]:
"""
Generates a debate matter and assigns positions to the 2 debaters.
"""
tremendous().__call__(state)
topic_text = self.execute_chain({})
# Retailer the subject and assign stances within the DebateState
debate_topic = topic_text.strip()
positions = {
"professional": "In favor of the subject",
"con": "In opposition to the subject"
}
first_speaker = "professional"
self.logger.data("Welcome to our debate panel! As we speak's debate matter is: %s", debate_topic)
return {
"debate_topic": debate_topic,
"positions": positions,
"stage": "opening",
"speaker": first_speaker
}
It’s a sample we are going to repeat for all lessons apart from these not utilizing LLMs and the actual fact checker.
Now we are able to implement the two stars of the present, the Professional and Con argument brokers!
Debater Brokers (Professional and Con)
Hyperlink: pro_debater_node.py
The 2 debater brokers are very comparable in construction, however every makes use of totally different immediate templates tailor-made to their function (professional vs con) and the stage of the talk.
The Professional debater, for instance, has to deal with an opening assertion and a counter-argument (countering the Con’s rebuttal). We additionally want logic for retries in case an announcement fails fact-check. In code, the ProDebater class units up a number of immediate chains:
opening_chain
and anopening_retry_chain
(utilizing barely totally different human prompts – the retry immediate may instruct it to attempt once more with out repeating any factually doubtful claims).counter_chain
andcounter_retry_chain
for the counter-argument stage.
class ProDebaterNode(BaseComponent):
def __init__(self, llm_config, temperature: float = 0.7):
tremendous().__init__(llm_config, temperature)
self.opening_chain = self.create_chain(SYSTEM_PROMPT, OPENING_HUMAN_PROMPT)
self.opening_retry_chain = self.create_chain(SYSTEM_PROMPT, OPENING_RETRY_HUMAN_PROMPT)
self.counter_chain = self.create_chain(SYSTEM_PROMPT, COUNTER_HUMAN_PROMPT)
self.counter_retry_chain = self.create_chain(SYSTEM_PROMPT, COUNTER_RETRY_HUMAN_PROMPT)
def __call__(self, state: DebateState) -> Dict[str, Any]:
tremendous().__call__(state)
debate_topic = state.get("debate_topic")
messages = state.get("messages", [])
stage = state.get("stage")
speaker = state.get("speaker")
# Examine if retrying (final message was by professional and never validated)
last_msg = messages[-1] if messages else None
retrying = last_msg and last_msg["speaker"] == SPEAKER_PRO and never last_msg["validated"]
if stage == STAGE_OPENING and speaker == SPEAKER_PRO:
chain = self.opening_retry_chain if retrying else self.opening_chain # choose which chain we're triggering: the conventional one or the fact-cehcked one
end result = chain.invoke({
"debate_topic": debate_topic
})
elif stage == STAGE_COUNTER and speaker == SPEAKER_PRO:
opponent_msg = self._get_last_message_by(SPEAKER_CON, messages)
debate_history = get_debate_history(messages)
chain = self.counter_retry_chain if retrying else self.counter_chain
end result = chain.invoke({
"debate_topic": debate_topic,
"opponent_statement": opponent_msg,
"debate_history": debate_history
})
else:
increase ValueError(f"Unknown flip for ProDebater: stage={stage}, speaker={speaker}")
new_message = create_debate_message(speaker=SPEAKER_PRO, content material=end result, stage=stage)
self.logger.data("Speaker: %s, Stage: %s, Retry: %snMessage:npercents", speaker, stage, retrying, end result)
return {
"messages": messages + [new_message]
}
def _get_last_message_by(self, speaker_prefix, messages):
for m in reversed(messages):
if m.get("speaker") == speaker_prefix:
return m["content"]
return ""
When the ProDebater’s __call__
runs, it seems on the present stage
and speaker
within the state to resolve what to do:
- If it’s the opening stage and the speaker is “professional”, it makes use of the
opening_chain
to generate a gap argument. If the final message from Professional was marked invalid (not validated), it is aware of this can be a retry, so it could use theopening_retry_chain
as a substitute. - If it’s the counter stage and speaker is “professional”, it generates a counter-argument to regardless of the opponent (Con) simply stated. It can fetch the final message by the Con from the
messages
historical past, and feed that into the immediate (in order that the Professional can straight counter it). Once more, if the final Professional message was invalid, it could swap to the retry chain.
After producing its argument, the Debater agent creates a brand new message entry (with speaker="professional"
, the content material textual content, validated=False
initially, and the stage) and appends it to the state’s message record. That turns into the output of the node (LangGraph will merge this partial state replace into the worldwide state).
The Con Debater agent mirrors this logic for its phases:
It equally appends its message to the state.
It has a rebuttal and closing argument (remaining argument) stage, every with a traditional and a retry chain.
It checks if it’s the rebuttal stage (speaker “con”) or remaining argument stage (speaker “con”) and invokes the suitable chain, probably utilizing the final Professional message for context when rebutting.
Through the use of class-based implementation, our debaters’ code is less complicated to take care of. We are able to clearly separate what the Professional does vs what the Con does, even when they share construction. Additionally, by encapsulating immediate chains inside the category, every debater can handle a number of attainable outputs (common vs retry) cleanly.
Immediate design: The precise prompts (in prompts/pro_debater_prompts.py
and con_debater_prompts.py
) information the GPT-4o mannequin to tackle a persona (“You’re a debater arguing for/towards the subject…”) and produce the argument. Additionally they instruct the mannequin to maintain statements factual and logical. If a reality examine fails, the retry immediate could say one thing like: “Your earlier assertion had an unverified declare. Revise your argument to be factually right whereas sustaining your place.” – encouraging the mannequin to right itself.
With this, our AI debaters can have interaction in a multi-turn duel, and even get well from factual missteps.
Truth Checker Agent (FactCheckNode
)
After every debater speaks, the Truth Checker agent swoops in to confirm their claims. This agent is applied in fact_checker_node.py
, and apparently, it makes use of the GPT-4o mannequin’s shopping capability reasonably than our personal customized prompts. Primarily, we delegate the fact-checking to OpenAI’s GPT-4 with internet search.
How does this work? The OpenAI Python consumer for GPT-4 (with shopping) permits us to ship a consumer message and get a structured response. In FactCheckNode.__call__
, we do one thing like:
completion = self.consumer.beta.chat.completions.parse(
mannequin="gpt-4o-search-preview",
web_search_options={},
messages=[{
"role": "user",
"content": (
f"Consider the following statement from a debate. "
f"If the statement contains numbers, or figures from studies, fact-check it online.nn"
f"Statement:n"{claim}"nn"
f"Reply clearly whether any numbers or studies might be inaccurate or hallucinated, and why."
f"n"
f"If the statement doesn't contain references to studies or numbers cited, don't go online to fact-check, and just consider it successfully fact-checked, with a 'yes' score.nn"
)
}],
response_format=FactCheck
)
If the result’s “sure” (which means the declare appears truthful or not less than not factually improper), the Truth Checker will mark the final message’s validated
discipline as True within the state, and output {"validated": True}
with no additional modifications. This indicators that the talk can proceed usually.
If the result’s “no” (which means it discovered the declare to be incorrect or doubtful), the Truth Checker will append a brand new message to the state with speaker="fact_checker"
describing the discovering (or we might merely mark it, however offering a short observe like “(Truth Checker: The statistic cited couldn’t be verified.)” could be helpful). It can additionally set validated: False
and increment a counter for whichever aspect made the declare. The output state from this node consists of validated: False
and an up to date times_pro_fact_checked
or times_con_fact_checked
rely.
We additionally use a Pydantic BaseModel to regulate the output of the LLM:
class FactCheck(BaseModel):
"""
Pydantic mannequin for the actual fact checking the claims made by debaters.
Attributes:
binary_score (str): 'sure' if the declare is verifiable and truthful, 'no' in any other case.
"""
binary_score: str = Discipline(
description="Signifies if the declare is verifiable and truthful. 'sure' or 'no'."
)
justification: str = Discipline(
description="Rationalization of the reasoning behind the rating."
)
Debate Moderator Agent (DebateModeratorNode
)
The Debate Moderator is the conductor of the talk. As a substitute of manufacturing prolonged textual content, this agent’s job is to handle turn-taking and stage development. Within the workflow, after an announcement is validated by the Truth Checker, management passes to the Moderator node. The Moderator then points a Command
that updates the state for the following flip and directs the movement to the suitable subsequent agent.
The logic in DebateModeratorNode.__call__
(see nodes/debate_moderator_node.py
) goes roughly like this:
if stage == STAGE_OPENING and speaker == SPEAKER_PRO:
return Command(
replace={"stage": STAGE_REBUTTAL, "speaker": SPEAKER_CON},
goto=NODE_CON_DEBATER
)
elif stage == STAGE_REBUTTAL and speaker == SPEAKER_CON:
return Command(
replace={"stage": STAGE_COUNTER, "speaker": SPEAKER_PRO},
goto=NODE_PRO_DEBATER
)
elif stage == STAGE_COUNTER and speaker == SPEAKER_PRO:
return Command(
replace={"stage": STAGE_FINAL_ARGUMENT, "speaker": SPEAKER_CON},
goto=NODE_CON_DEBATER
)
elif stage == STAGE_FINAL_ARGUMENT and speaker == SPEAKER_CON:
return Command(
replace={},
goto=NODE_JUDGE
)
increase ValueError(f"Sudden stage/speaker combo: stage={stage}, speaker={speaker}")
Every conditional corresponds to a degree within the debate the place a flip simply ended, and units up the following flip. For instance, after the opening (Professional simply spoke), it units stage to rebuttal, switches speaker to Con, and directs the workflow to the Con debater node. After the final_argument (Con’s closing), it directs to the Decide with no additional replace (the talk stage successfully ends).
Truth Examine Router (FactCheckRouterNode
)
That is one other management node (just like the Moderator) that introduces conditional logic. The Truth Examine Router sits proper after the Truth Checker agent within the movement. Its function is to department the workflow relying on the fact-check end result.
In nodes/fact_check_router_node.py
, the logic is:
if pro_fact_checks >= 3 or con_fact_checks >= 3:
disqualified = SPEAKER_PRO if pro_fact_checks >= 3 else SPEAKER_CON
winner = SPEAKER_CON if disqualified == SPEAKER_PRO else SPEAKER_PRO
verdict_msg = {
"speaker": "moderator",
"content material": (
f"Debate ended early resulting from extreme factual inaccuracies.nn"
f"DISQUALIFIED: {disqualified.higher()} (exceeded reality examine restrict)n"
f"WINNER: {winner.higher()}"
),
"validated": True,
"stage": "verdict"
}
return Command(
replace={"messages": messages + [verdict_msg]},
goto=END
)
if last_message.get("validated"):
return Command(goto=NODE_DEBATE_MODERATOR)
elif speaker == SPEAKER_PRO:
return Command(goto=NODE_PRO_DEBATER)
elif speaker == SPEAKER_CON:
return Command(goto=NODE_CON_DEBATER)
increase ValueError("Unable to find out routing in FactCheckRouterNode.")
First, the Truth Examine Router checks if both aspect’s fact-check rely has reached 3. In that case, it creates a Moderator-style message asserting an early finish: the offending aspect is disqualified and the opposite aspect is the winner. It appends this verdict to the messages and returns a Command that jumps to END
, successfully terminating the talk with out going to the Decide (as a result of we already know the result).
If we’re not ending the talk early, it then seems on the Truth Checker’s end result for the final message (which is saved as validated
on that message). If validated is True, we go to the talk moderator: Command(goto=debate_moderator_node)
.
Else if the assertion fails fact-check, the workflow goes again to the debater to supply a revised assertion (with the state counters up to date to replicate the failure). This loop can occur a number of instances if wanted (as much as the disqualification restrict).
This dynamic management is the center of Deb8flow’s “agentic” nature – the power to adapt the trail of execution primarily based on the content material of the brokers’ outputs. It showcases LangGraph’s power: combining management movement with state. We’re basically encoding debate guidelines (like permitting retries for false claims, or ending the talk if somebody cheats too typically) straight into the workflow graph.
Decide Agent (JudgeNode
)
Final however not least, the Decide agent delivers the ultimate verdict primarily based on rhetorical ability, readability, construction, and total persuasiveness. Its system immediate and human immediate make this specific:
- System Immediate: “You might be an neutral debate decide AI. … Consider which debater offered their case extra clearly, persuasively, and logically. You have to give attention to communication expertise, construction of argument, rhetorical power, and total coherence.”
- Human Immediate: “Right here is the total debate transcript. Please analyze the efficiency of each debaters—PRO and CON. Consider rhetorical efficiency—readability, construction, persuasion, and relevance—and resolve who offered their case extra successfully.”
When the Decide node runs, it receives your complete debate transcript (all validated messages) alongside the unique matter. It then makes use of GPT-4o to look at how either side framed their arguments, dealt with counterpoints, and supported (or didn’t assist) claims with examples or logic. Crucially, the Decide is forbidden to guage which place is objectively right (or who it thinks could be right)—solely who argued extra persuasively.
Beneath is an instance remaining verdict from a Deb8flow run on the subject:
“Ought to governments implement a common fundamental earnings in response to rising automation within the workforce?”
WINNER: PRO
REASON: The PRO debater offered a extra compelling and rhetorically efficient case for common fundamental earnings. Their arguments have been well-structured, starting with a transparent assertion of the difficulty and the need of UBI in response to automation. They successfully addressed potential counterarguments by highlighting the unprecedented pace and scope of present technological modifications, which distinguishes the present state of affairs from previous technological shifts. The PRO additionally supplied empirical proof from UBI pilot packages to counter the CON's claims about work disincentives and financial inefficiencies, reinforcing their argument with real-world examples.
In distinction, the CON debater, whereas presenting legitimate issues about UBI, relied closely on historic analogies and assumptions about workforce adaptability with out adequately addressing the distinctive challenges posed by fashionable automation. Their arguments concerning the fiscal burden and potential inefficiencies of UBI have been much less supported by particular proof in comparison with the PRO's rebuttals.
Total, the PRO's arguments have been extra coherent, persuasive, and backed by empirical proof, making their case extra convincing to a impartial observer.
Langsmith Tracing
All through Deb8flow’s growth, I relied on LangSmith (LangChain’s tracing and observability toolkit) to make sure your complete debate pipeline was behaving accurately. As a result of we’ve got a number of brokers passing management between themselves, it’s simple for sudden loops or misrouted states to happen. LangSmith offers a handy technique to:
- Visualize Execution Stream: You’ll be able to see every agent’s immediate, the tokens consumed (so it’s also possible to observe prices), and any intermediate states. This makes it a lot easier to verify that, say, the Con Debater is correctly referencing the Professional Debater’s final message, or that the Truth Checker is precisely receiving the declare to confirm.
- Debug State Updates: If the Moderator or Truth Examine Router is sending the movement to the improper node, the hint will spotlight that mismatch. You’ll be able to hint which agent was invoked at every step and why, serving to you see stage or speaker misalignments early.
- Observe Immediate and Completion Tokens: With a number of GPT-4o calls, it’s helpful to see what number of tokens every stage is utilizing, which LangSmith logs robotically in the event you allow tracing.
Integrating LangSmith is unexpectedly simple. You’ll simply want to supply these 3 keys in your .env file: LANGCHAIN_API_KEY
LANGCHAIN_TRACING_V2
LANGCHAIN_PROJECT
Then you’ll be able to open the LangSmith UI to see a structured hint of every run. This significantly reduces the guesswork concerned in debugging multi-agent programs and is, in my expertise, important for extra complicated AI orchestration like ours. Instance of a single run:

Reflections and Subsequent Steps
Constructing Deb8flow was an eye-opening train in orchestrating autonomous agent workflows. We didn’t simply chain a single mannequin name – we created a complete debate simulation with AI brokers, every with a particular function, and allowed them to work together in keeping with a algorithm. LangGraph supplied a transparent framework to outline how knowledge and management flows between brokers, making the complicated sequence manageable in code. Through the use of class-based brokers and a shared state, we maintained modularity and readability, which is able to repay for any software program engineering mission in the long term.
An thrilling facet of this mission was seeing emergent conduct. Regardless that every agent follows a script (a immediate), the unscripted mixture – a debater making an attempt to deceive, a fact-checker catching it, the debater rephrasing – felt surprisingly real looking! It’s a small step towards extra Agentic Ai programs that may carry out non-trivial multi-step duties with oversight on one another.
There’s loads of concepts for enchancment:
- Person Interplay: At present it’s totally autonomous, however one might add a mode the place a human offers the subject and even takes the function of 1 aspect towards an AI opponent.
- We are able to swap the order by which the Debaters discuss.
- We are able to change the prompts, and thus to a superb diploma the conduct of the brokers, and experiment with totally different prompts.
- Make the debaters additionally carry out internet search earlier than producing their statements, thus offering them with the newest data.
The broader implication of Deb8flow is the way it showcases a sample for composable AI brokers. By defining clear boundaries and interactions (similar to microservices in software program), we are able to have complicated AI-driven processes that stay interpretable and controllable. Every agent is sort of a cog in a machine, and LangGraph is the gear system making them work in unison.
I discovered this mission energizing, and I hope it evokes you to discover multi-agent workflows. Whether or not it’s debating, collaborating on writing, or fixing issues from totally different knowledgeable angles, the mixture of GPT, instruments, and structured agentic workflows opens up a brand new world of potentialities for AI growth. Glad hacking!
References
[1] D. Bouchard, “From Basics to Advanced: Exploring LangGraph,” Medium, Nov. 22, 2023. [Online]. Available: https://medium.com/data-science/from-basics-to-advanced-exploring-langgraph-e8c1cf4db787. [Accessed: Apr. 1, 2025].
[2] A. W. T. Ng, “Constructing a Analysis Agent that Can Write to Google Docs: Half 1,” In the direction of Information Science, Jan. 11, 2024. [Online]. Obtainable: https://towardsdatascience.com/building-a-research-agent-that-can-write-to-google-docs-part-1-4b49ea05a292/. [Accessed: Apr. 1, 2025].