Zack Zitting Bradshaw
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from typing import Callable, List
import numpy as np
import tenacity
from langchain.chat_models import ChatOpenAI
from langchain.output_parsers import RegexParser
from langchain.prompts import PromptTemplate
from langchain.schema import (
HumanMessage,
SystemMessage,
)
from swarms import Worker
class DialogueAgent:
def __init__(
self,
name: str,
system_message: SystemMessage,
model: ChatOpenAI,
) -> None:
self.name = name
self.system_message = system_message
self.model = model
self.prefix = f"{self.name}: "
self.reset()
def reset(self):
self.message_history = ["Here is the conversation so far."]
def send(self) -> str:
"""
Applies the chatmodel to the message history
and returns the message string
"""
message = self.model(
[
self.system_message,
HumanMessage(content="\n".join(self.message_history + [self.prefix])),
]
)
return message.content
def receive(self, name: str, message: str) -> None:
"""
Concatenates {message} spoken by {name} into message history
"""
self.message_history.append(f"{name}: {message}")
class DialogueSimulator:
def __init__(
self,
agents: List[Worker],
selection_function: Callable[[int, List[Worker]], int],
) -> None:
self.agents = agents
self._step = 0
self.select_next_speaker = selection_function
def reset(self):
for agent in self.agents:
agent.reset()
def inject(self, name: str, message: str):
"""
Initiates the conversation with a {message} from {name}
"""
for agent in self.agents:
agent.receive(name, message)
# increment time
self._step += 1
def step(self) -> tuple[str, str]:
# 1. choose the next speaker
speaker_idx = self.select_next_speaker(self._step, self.agents)
speaker = self.agents[speaker_idx]
# 2. next speaker sends message
message = speaker.send()
# 3. everyone receives message
for receiver in self.agents:
receiver.receive(speaker.name, message)
# 4. increment time
self._step += 1
return speaker.name, message
class BiddingDialogueAgent(DialogueAgent):
def __init__(
self,
name,
system_message: SystemMessage,
bidding_template: PromptTemplate,
model: ChatOpenAI,
) -> None:
super().__init__(name, system_message, model)
self.bidding_template = bidding_template
def bid(self) -> str:
"""
Asks the chat model to output a bid to speak
"""
prompt = PromptTemplate(
input_variables=["message_history", "recent_message"],
template=self.bidding_template,
).format(
message_history="\n".join(self.message_history),
recent_message=self.message_history[-1],
)
bid_string = self.model([SystemMessage(content=prompt)]).content
return bid_string
character_names = ["Donald Trump", "Kanye West", "Elizabeth Warren"]
topic = "transcontinental high speed rail"
word_limit = 50
game_description = f"""Here is the topic for the presidential debate: {topic}.
The presidential candidates are: {', '.join(character_names)}."""
player_descriptor_system_message = SystemMessage(
content="You can add detail to the description of each presidential candidate."
)
def generate_character_description(character_name):
character_specifier_prompt = [
player_descriptor_system_message,
HumanMessage(
content=f"""{game_description}
Please reply with a creative description of the presidential candidate, {character_name}, in {word_limit} words or less, that emphasizes their personalities.
Speak directly to {character_name}.
Do not add anything else."""
),
]
character_description = ChatOpenAI(temperature=1.0)(
character_specifier_prompt
).content
return character_description
def generate_character_header(character_name, character_description):
return f"""{game_description}
Your name is {character_name}.
You are a presidential candidate.
Your description is as follows: {character_description}
You are debating the topic: {topic}.
Your goal is to be as creative as possible and make the voters think you are the best candidate.
"""
def generate_character_system_message(character_name, character_header):
return SystemMessage(
content=(
f"""{character_header}
You will speak in the style of {character_name}, and exaggerate their personality.
You will come up with creative ideas related to {topic}.
Do not say the same things over and over again.
Speak in the first person from the perspective of {character_name}
For describing your own body movements, wrap your description in '*'.
Do not change roles!
Do not speak from the perspective of anyone else.
Speak only from the perspective of {character_name}.
Stop speaking the moment you finish speaking from your perspective.
Never forget to keep your response to {word_limit} words!
Do not add anything else.
"""
)
)
character_descriptions = [
generate_character_description(character_name) for character_name in character_names
]
character_headers = [
generate_character_header(character_name, character_description)
for character_name, character_description in zip(
character_names, character_descriptions
)
]
character_system_messages = [
generate_character_system_message(character_name, character_headers)
for character_name, character_headers in zip(character_names, character_headers)
]
for (
character_name,
character_description,
character_header,
character_system_message,
) in zip(
character_names,
character_descriptions,
character_headers,
character_system_messages,
):
print(f"\n\n{character_name} Description:")
print(f"\n{character_description}")
print(f"\n{character_header}")
print(f"\n{character_system_message.content}")
class BidOutputParser(RegexParser):
def get_format_instructions(self) -> str:
return "Your response should be an integer delimited by angled brackets, like this: <int>."
bid_parser = BidOutputParser(
regex=r"<(\d+)>", output_keys=["bid"], default_output_key="bid"
)
def generate_character_bidding_template(character_header):
bidding_template = f"""{character_header}
{{message_history}}
On the scale of 1 to 10, where 1 is not contradictory and 10 is extremely contradictory, rate how contradictory the following message is to your ideas.
{{recent_message}}
{bid_parser.get_format_instructions()}
Do nothing else.
"""
return bidding_template
character_bidding_templates = [
generate_character_bidding_template(character_header)
for character_header in character_headers
]
for character_name, bidding_template in zip(
character_names, character_bidding_templates
):
print(f"{character_name} Bidding Template:")
print(bidding_template)
topic_specifier_prompt = [
SystemMessage(content="You can make a task more specific."),
HumanMessage(
content=f"""{game_description}
You are the debate moderator.
Please make the debate topic more specific.
Frame the debate topic as a problem to be solved.
Be creative and imaginative.
Please reply with the specified topic in {word_limit} words or less.
Speak directly to the presidential candidates: {*character_names,}.
Do not add anything else."""
),
]
specified_topic = ChatOpenAI(temperature=1.0)(topic_specifier_prompt).content
print(f"Original topic:\n{topic}\n")
print(f"Detailed topic:\n{specified_topic}\n")
@tenacity.retry(
stop=tenacity.stop_after_attempt(2),
wait=tenacity.wait_none(), # No waiting time between retries
retry=tenacity.retry_if_exception_type(ValueError),
before_sleep=lambda retry_state: print(
f"ValueError occurred: {retry_state.outcome.exception()}, retrying..."
),
retry_error_callback=lambda retry_state: 0,
) # Default value when all retries are exhausted
def ask_for_bid(agent) -> str:
"""
Ask for agent bid and parses the bid into the correct format.
"""
bid_string = agent.bid()
bid = int(bid_parser.parse(bid_string)["bid"])
return bid
def select_next_speaker(step: int, agents: List[DialogueAgent]) -> int:
bids = []
for agent in agents:
bid = ask_for_bid(agent)
bids.append(bid)
# randomly select among multiple agents with the same bid
max_value = np.max(bids)
max_indices = np.where(bids == max_value)[0]
idx = np.random.choice(max_indices)
print("Bids:")
for i, (bid, agent) in enumerate(zip(bids, agents)):
print(f"\t{agent.name} bid: {bid}")
if i == idx:
selected_name = agent.name
print(f"Selected: {selected_name}")
print("\n")
return idx
characters = []
for character_name, character_system_message, bidding_template in zip(
character_names, character_system_messages, character_bidding_templates
):
characters.append(
BiddingDialogueAgent(
name=character_name,
system_message=character_system_message,
model=ChatOpenAI(temperature=0.2),
bidding_template=bidding_template,
)
)
max_iters = 10
n = 0
simulator = DialogueSimulator(agents=characters, selection_function=select_next_speaker)
simulator.reset()
simulator.inject("Debate Moderator", specified_topic)
print(f"(Debate Moderator): {specified_topic}")
print("\n")
while n < max_iters:
name, message = simulator.step()
print(f"({name}): {message}")
print("\n")
n += 1