pull/55/head
Kye 1 year ago
parent d23a728ac2
commit fdff36f715

@ -1,109 +0,0 @@
import faiss
from langchain.chat_models import ChatOpenAI
from langchain.docstore import InMemoryDocstore
from langchain.embeddings import OpenAIEmbeddings
from langchain.vectorstores import FAISS
from langchain_experimental.autonomous_agents import AutoGPT
from swarms.tools.autogpt import (
DuckDuckGoSearchRun,
FileChatMessageHistory,
ReadFileTool,
WebpageQATool,
WriteFileTool,
process_csv,
# web_search,
query_website_tool,
)
from swarms.utils.decorators import error_decorator, log_decorator, timing_decorator
ROOT_DIR = "./data/"
class AutoBot:
@log_decorator
@error_decorator
@timing_decorator
def __init__(
self,
model_name="gpt-4",
openai_api_key=None,
ai_name="Autobot Swarm Worker",
ai_role="Worker in a swarm",
# embedding_size=None,
# k=None,
temperature=0.5
):
self.openai_api_key = openai_api_key
self.temperature = temperature
try:
self.llm = ChatOpenAI(model_name=model_name,
openai_api_key=self.openai_api_key,
temperature=self.temperature)
except Exception as error:
raise RuntimeError(f"Error Initializing ChatOpenAI: {error}")
self.ai_name = ai_name
self.ai_role = ai_role
# self.embedding_size = embedding_size
# # self.k = k
self.setup_tools()
self.setup_memory()
self.setup_agent()
@log_decorator
@error_decorator
@timing_decorator
def setup_tools(self):
self.tools = [
WriteFileTool(root_dir=ROOT_DIR),
ReadFileTool(root_dir=ROOT_DIR),
process_csv,
query_website_tool,
]
def setup_memory(self):
try:
embeddings_model = OpenAIEmbeddings(openai_api_key=self.openai_api_key)
embedding_size = 1536
index = faiss.IndexFlatL2(embedding_size)
self.vectorstore = FAISS(embeddings_model.embed_query, index, InMemoryDocstore({}), {})
except Exception as error:
raise RuntimeError(f"Error setting up memory perhaps try try tuning the embedding size: {error}")
def setup_agent(self):
try:
self.agent = AutoGPT.from_llm_and_tools(
ai_name=self.ai_name,
ai_role=self.ai_role,
tools=self.tools,
llm=self.llm,
memory=self.vectorstore.as_retriever(search_kwargs={"k": 8}),
)
except Exception as error:
raise RuntimeError(f"Error setting up agent: {error}")
@log_decorator
@error_decorator
@timing_decorator
def run(self, task):
try:
result = self.agent.run([task])
return result
except Exception as error:
raise RuntimeError(f"Error while running agent: {error}")
@log_decorator
@error_decorator
@timing_decorator
def __call__(self, task):
try:
results = self.agent.run([task])
return results
except Exception as error:
raise RuntimeError(f"Error while running agent: {error}")

@ -1,268 +0,0 @@
import re
from datetime import datetime
from typing import Any, Dict, List, Optional, Tuple
from pydantic import BaseModel, Field
from langchain.chains import LLMChain
from langchain.prompts import PromptTemplate
from langchain_experimental.generative_agents.memory import GenerativeAgentMemory
from swarms.utils.schema.base import BaseLanguageModel
# TODO: Add ability to integrate with tools
# TODO: Replace with f strings and all PromptTemplate
class WorkerCharacterAgent(BaseModel):
"""A character with memory and innate characteristics."""
name: str
"""The character's name."""
age: Optional[int] = None
"""The optional age of the character."""
traits: str = "N/A"
"""Permanent traits to ascribe to the character."""
status: str
"""The traits of the character you wish not to change."""
memory: GenerativeAgentMemory
"""The memory object that combines relevance, recency, and 'importance'."""
llm: BaseLanguageModel
"""The underlying language model."""
verbose: bool = False
summary: str = "" #: :meta private:
"""Stateful self-summary generated via reflection on the character's memory."""
summary_refresh_seconds: int = 3600 #: :meta private:
"""How frequently to re-generate the summary."""
last_refreshed: datetime = Field(default_factory=datetime.now) # : :meta private:
"""The last time the character's summary was regenerated."""
daily_summaries: List[str] = Field(default_factory=list) # : :meta private:
"""Summary of the events in the plan that the agent took."""
class Config:
"""Configuration for this pydantic object."""
arbitrary_types_allowed = True
# LLM-related methods
@staticmethod
def _parse_list(text: str) -> List[str]:
"""Parse a newline-separated string into a list of strings."""
lines = re.split(r"\n", text.strip())
return [re.sub(r"^\s*\d+\.\s*", "", line).strip() for line in lines]
def chain(self, prompt: str) -> LLMChain:
return LLMChain(
llm=self.llm, prompt=prompt, verbose=self.verbose, memory=self.memory
)
def _get_entity_from_observation(self, observation: str) -> str:
# prompt = PromptTemplate.from_template(
# "What is the observed entity in the following observation? {observation}"
# + "\nEntity="
# )
# return self.chain(prompt).run(observation=observation).strip()
prompt = self.chain(f"What is the observed entity in the following observation? {observation}\n Entity=").strip()
return prompt
def _get_entity_action(self, observation: str, entity_name: str) -> str:
# prompt = PromptTemplate.from_template(
# "What is the {entity} doing in the following observation? {observation}"
# + "\nThe {entity} is"
# )
# return (
# self.chain(prompt).run(entity=entity_name, observation=observation).strip()
# )
return self.chain(f"What is the {entity_name} doing in the following observation {observation}\n The {entity_name} is?").strip()
# TODO: Replace with f strings and all PromptTemplate
def summarize_related_memories(self, observation: str) -> str:
"""Summarize memories that are most relevant to an observation."""
prompt = f"""
{q1}
Context from Memory:
{relevant_memories}
Relevant Context:
"""
prompt = PromptTemplate.from_template(
"""
{q1}?
Context from memory:
{relevant_memories}
Relevant context:
"""
)
entity_name = self._get_entity_from_observation(observation)
entity_action = self._get_entity_action(observation, entity_name)
q1 = f"What is the relationship between {self.name} and {entity_name}"
q2 = f"{entity_name} is {entity_action}"
return self.chain(prompt=prompt).run(q1=q1, queries=[q1, q2]).strip()
def _generate_reaction(
self, observation: str, suffix: str, now: Optional[datetime] = None
) -> str:
"""React to a given observation or dialogue act."""
prompt = PromptTemplate.from_template(
"{agent_summary_description}"
+ "\nIt is {current_time}."
+ "\n{agent_name}'s status: {agent_status}"
+ "\nSummary of relevant context from {agent_name}'s memory:"
+ "\n{relevant_memories}"
+ "\nMost recent observations: {most_recent_memories}"
+ "\nObservation: {observation}"
+ "\n\n"
+ suffix
)
agent_summary_description = self.get_summary(now=now)
relevant_memories_str = self.summarize_related_memories(observation)
current_time_str = (
datetime.now().strftime("%B %d, %Y, %I:%M %p")
if now is None
else now.strftime("%B %d, %Y, %I:%M %p")
)
kwargs: Dict[str, Any] = dict(
agent_summary_description=agent_summary_description,
current_time=current_time_str,
relevant_memories=relevant_memories_str,
agent_name=self.name,
observation=observation,
agent_status=self.status,
)
consumed_tokens = self.llm.get_num_tokens(
prompt.format(most_recent_memories="", **kwargs)
)
kwargs[self.memory.most_recent_memories_token_key] = consumed_tokens
return self.chain(prompt=prompt).run(**kwargs).strip()
def _clean_response(self, text: str) -> str:
return re.sub(f"^{self.name} ", "", text.strip()).strip()
def generate_reaction(
self, observation: str, now: Optional[datetime] = None
) -> Tuple[bool, str]:
"""React to a given observation."""
call_to_action_template = (
"Should {agent_name} react to the observation, and if so,"
+ " what would be an appropriate reaction? Respond in one line."
+ ' If the action is to engage in dialogue, write:\nSAY: "what to say"'
+ "\notherwise, write:\nREACT: {agent_name}'s reaction (if anything)."
+ "\nEither do nothing, react, or say something but not both.\n\n"
)
full_result = self._generate_reaction(
observation, call_to_action_template, now=now
)
result = full_result.strip().split("\n")[0]
# AAA
self.memory.save_context(
{},
{
self.memory.add_memory_key: f"{self.name} observed "
f"{observation} and reacted by {result}",
self.memory.now_key: now,
},
)
if "REACT:" in result:
reaction = self._clean_response(result.split("REACT:")[-1])
return False, f"{self.name} {reaction}"
if "SAY:" in result:
said_value = self._clean_response(result.split("SAY:")[-1])
return True, f"{self.name} said {said_value}"
else:
return False, result
def generate_dialogue_response(
self, observation: str, now: Optional[datetime] = None
) -> Tuple[bool, str]:
"""React to a given observation."""
call_to_action_template = (
"What would {agent_name} say? To end the conversation, write:"
' GOODBYE: "what to say". Otherwise to continue the conversation,'
' write: SAY: "what to say next"\n\n'
)
full_result = self._generate_reaction(
observation, call_to_action_template, now=now
)
result = full_result.strip().split("\n")[0]
if "GOODBYE:" in result:
farewell = self._clean_response(result.split("GOODBYE:")[-1])
self.memory.save_context(
{},
{
self.memory.add_memory_key: f"{self.name} observed "
f"{observation} and said {farewell}",
self.memory.now_key: now,
},
)
return False, f"{self.name} said {farewell}"
if "SAY:" in result:
response_text = self._clean_response(result.split("SAY:")[-1])
self.memory.save_context(
{},
{
self.memory.add_memory_key: f"{self.name} observed "
f"{observation} and said {response_text}",
self.memory.now_key: now,
},
)
return True, f"{self.name} said {response_text}"
else:
return False, result
######################################################
# Agent stateful' summary methods. #
# Each dialog or response prompt includes a header #
# summarizing the agent's self-description. This is #
# updated periodically through probing its memories #
######################################################
def _compute_agent_summary(self) -> str:
""""""
prompt = PromptTemplate.from_template(
"How would you summarize {name}'s core characteristics given the"
+ " following statements:\n"
+ "{relevant_memories}"
+ "Do not embellish."
+ "\n\nSummary: "
)
# The agent seeks to think about their core characteristics.
return (
self.chain(prompt)
.run(name=self.name, queries=[f"{self.name}'s core characteristics"])
.strip()
)
def get_summary(
self, force_refresh: bool = False, now: Optional[datetime] = None
) -> str:
"""Return a descriptive summary of the agent."""
current_time = datetime.now() if now is None else now
since_refresh = (current_time - self.last_refreshed).seconds
if (
not self.summary
or since_refresh >= self.summary_refresh_seconds
or force_refresh
):
self.summary = self._compute_agent_summary()
self.last_refreshed = current_time
age = self.age if self.age is not None else "N/A"
return (
f"Name: {self.name} (age: {age})"
+ f"\nInnate traits: {self.traits}"
+ f"\n{self.summary}"
)
def get_full_header(
self, force_refresh: bool = False, now: Optional[datetime] = None
) -> str:
"""Return a full header of the agent's status, summary, and current time."""
now = datetime.now() if now is None else now
summary = self.get_summary(force_refresh=force_refresh, now=now)
current_time_str = now.strftime("%B %d, %Y, %I:%M %p")
return (
f"{summary}\nIt is {current_time_str}.\n{self.name}'s status: {self.status}"
)

@ -1,304 +0,0 @@
import logging
import re
from datetime import datetime
from typing import Any, Dict, List, Optional
from langchain import LLMChain
from langchain.base_language import BaseLanguageModel
############
from langchain.prompts import PromptTemplate
from langchain.retrievers import TimeWeightedVectorStoreRetriever
from langchain.schema import BaseMemory, Document
from langchain.utils import mock_now
logger = logging.getLogger(__name__)
#######################
class WorkerSims(BaseMemory):
llm: BaseLanguageModel
"""The core language model."""
memory_retriever: TimeWeightedVectorStoreRetriever
"""The retriever to fetch related memories."""
verbose: bool = False
reflection_threshold: Optional[float] = None
"""When aggregate_importance exceeds reflection_threshold, stop to reflect."""
current_plan: List[str] = []
"""The current plan of the agent."""
# A weight of 0.15 makes this less important than it
# would be otherwise, relative to salience and time
importance_weight: float = 0.15
"""How much weight to assign the memory importance."""
aggregate_importance: float = 0.0 # : :meta private:
"""Track the sum of the 'importance' of recent memories.
Triggers reflection when it reaches reflection_threshold."""
max_tokens_limit: int = 1200 # : :meta private:
# input keys
queries_key: str = "queries"
most_recent_memories_token_key: str = "recent_memories_token"
add_memory_key: str = "add_memory"
# output keys
relevant_memories_key: str = "relevant_memories"
relevant_memories_simple_key: str = "relevant_memories_simple"
most_recent_memories_key: str = "most_recent_memories"
now_key: str = "now"
reflecting: bool = False
def chain(self, prompt: PromptTemplate) -> LLMChain:
return LLMChain(llm=self.llm, prompt=prompt, verbose=self.verbose)
@staticmethod
def _parse_list(text: str) -> List[str]:
"""Parse a newline-separated string into a list of strings."""
lines = re.split(r"\n", text.strip())
lines = [line for line in lines if line.strip()] # remove empty lines
return [re.sub(r"^\s*\d+\.\s*", "", line).strip() for line in lines]
def _get_topics_of_reflection(self, last_k: int = 50) -> List[str]:
"""Return the 3 most salient high-level questions about recent observations."""
prompt = PromptTemplate.from_template(
"{observations}\n\n"
"Given only the information above, what are the 3 most salient "
"high-level questions we can answer about the subjects in the statements?\n"
"Provide each question on a new line."
)
observations = self.memory_retriever.memory_stream[-last_k:]
observation_str = "\n".join(
[self._format_memory_detail(o) for o in observations]
)
result = self.chain(prompt).run(observations=observation_str)
return self._parse_list(result)
def _get_insights_on_topic(
self, topic: str, now: Optional[datetime] = None
) -> List[str]:
"""Generate 'insights' on a topic of reflection, based on pertinent memories."""
prompt = PromptTemplate.from_template(
"Statements relevant to: '{topic}'\n"
"---\n"
"{related_statements}\n"
"---\n"
"What 5 high-level novel insights can you infer from the above statements "
"that are relevant for answering the following question?\n"
"Do not include any insights that are not relevant to the question.\n"
"Do not repeat any insights that have already been made.\n\n"
"Question: {topic}\n\n"
"(example format: insight (because of 1, 5, 3))\n"
)
related_memories = self.fetch_memories(topic, now=now)
related_statements = "\n".join(
[
self._format_memory_detail(memory, prefix=f"{i+1}. ")
for i, memory in enumerate(related_memories)
]
)
result = self.chain(prompt).run(
topic=topic, related_statements=related_statements
)
# TODO: Parse the connections between memories and insights
return self._parse_list(result)
def pause_to_reflect(self, now: Optional[datetime] = None) -> List[str]:
"""Reflect on recent observations and generate 'insights'."""
if self.verbose:
logger.info("Character is reflecting")
new_insights = []
topics = self._get_topics_of_reflection()
for topic in topics:
insights = self._get_insights_on_topic(topic, now=now)
for insight in insights:
self.add_memory(insight, now=now)
new_insights.extend(insights)
return new_insights
def _score_memory_importance(self, memory_content: str) -> float:
"""Score the absolute importance of the given memory."""
prompt = PromptTemplate.from_template(
"On the scale of 1 to 10, where 1 is purely mundane"
+ " (e.g., brushing teeth, making bed) and 10 is"
+ " extremely poignant (e.g., a break up, college"
+ " acceptance), rate the likely poignancy of the"
+ " following piece of memory. Respond with a single integer."
+ "\nMemory: {memory_content}"
+ "\nRating: "
)
score = self.chain(prompt).run(memory_content=memory_content).strip()
if self.verbose:
logger.info(f"Importance score: {score}")
match = re.search(r"^\D*(\d+)", score)
if match:
return (float(match.group(1)) / 10) * self.importance_weight
else:
return 0.0
def _score_memories_importance(self, memory_content: str) -> List[float]:
"""Score the absolute importance of the given memory."""
prompt = PromptTemplate.from_template(
"On the scale of 1 to 10, where 1 is purely mundane"
+ " (e.g., brushing teeth, making bed) and 10 is"
+ " extremely poignant (e.g., a break up, college"
+ " acceptance), rate the likely poignancy of the"
+ " following piece of memory. Always answer with only a list of numbers."
+ " If just given one memory still respond in a list."
+ " Memories are separated by semi colans (;)"
+ "\Memories: {memory_content}"
+ "\nRating: "
)
scores = self.chain(prompt).run(memory_content=memory_content).strip()
if self.verbose:
logger.info(f"Importance scores: {scores}")
# Split into list of strings and convert to floats
scores_list = [float(x) for x in scores.split(";")]
return scores_list
def add_memories(
self, memory_content: str, now: Optional[datetime] = None
) -> List[str]:
"""Add an observations or memories to the agent's memory."""
importance_scores = self._score_memories_importance(memory_content)
self.aggregate_importance += max(importance_scores)
memory_list = memory_content.split(";")
documents = []
for i in range(len(memory_list)):
documents.append(
Document(
page_content=memory_list[i],
metadata={"importance": importance_scores[i]},
)
)
result = self.memory_retriever.add_documents(documents, current_time=now)
# After an agent has processed a certain amount of memories (as measured by
# aggregate importance), it is time to reflect on recent events to add
# more synthesized memories to the agent's memory stream.
if (
self.reflection_threshold is not None
and self.aggregate_importance > self.reflection_threshold
and not self.reflecting
):
self.reflecting = True
self.pause_to_reflect(now=now)
# Hack to clear the importance from reflection
self.aggregate_importance = 0.0
self.reflecting = False
return result
def add_memory(
self, memory_content: str, now: Optional[datetime] = None
) -> List[str]:
"""Add an observation or memory to the agent's memory."""
importance_score = self._score_memory_importance(memory_content)
self.aggregate_importance += importance_score
document = Document(
page_content=memory_content, metadata={"importance": importance_score}
)
result = self.memory_retriever.add_documents([document], current_time=now)
# After an agent has processed a certain amount of memories (as measured by
# aggregate importance), it is time to reflect on recent events to add
# more synthesized memories to the agent's memory stream.
if (
self.reflection_threshold is not None
and self.aggregate_importance > self.reflection_threshold
and not self.reflecting
):
self.reflecting = True
self.pause_to_reflect(now=now)
# Hack to clear the importance from reflection
self.aggregate_importance = 0.0
self.reflecting = False
return result
def fetch_memories(
self, observation: str, now: Optional[datetime] = None
) -> List[Document]:
"""Fetch related memories."""
if now is not None:
with mock_now(now):
return self.memory_retriever.get_relevant_documents(observation)
else:
return self.memory_retriever.get_relevant_documents(observation)
def format_memories_detail(self, relevant_memories: List[Document]) -> str:
content = []
for mem in relevant_memories:
content.append(self._format_memory_detail(mem, prefix="- "))
return "\n".join([f"{mem}" for mem in content])
def _format_memory_detail(self, memory: Document, prefix: str = "") -> str:
created_time = memory.metadata["created_at"].strftime("%B %d, %Y, %I:%M %p")
return f"{prefix}[{created_time}] {memory.page_content.strip()}"
def format_memories_simple(self, relevant_memories: List[Document]) -> str:
return "; ".join([f"{mem.page_content}" for mem in relevant_memories])
def _get_memories_until_limit(self, consumed_tokens: int) -> str:
"""Reduce the number of tokens in the documents."""
result = []
for doc in self.memory_retriever.memory_stream[::-1]:
if consumed_tokens >= self.max_tokens_limit:
break
consumed_tokens += self.llm.get_num_tokens(doc.page_content)
if consumed_tokens < self.max_tokens_limit:
result.append(doc)
return self.format_memories_simple(result)
@property
def memory_variables(self) -> List[str]:
"""Input keys this memory class will load dynamically."""
return []
def load_memory_variables(self, inputs: Dict[str, Any]) -> Dict[str, str]:
"""Return key-value pairs given the text input to the chain."""
queries = inputs.get(self.queries_key)
now = inputs.get(self.now_key)
if queries is not None:
relevant_memories = [
mem for query in queries for mem in self.fetch_memories(query, now=now)
]
return {
self.relevant_memories_key: self.format_memories_detail(
relevant_memories
),
self.relevant_memories_simple_key: self.format_memories_simple(
relevant_memories
),
}
most_recent_memories_token = inputs.get(self.most_recent_memories_token_key)
if most_recent_memories_token is not None:
return {
self.most_recent_memories_key: self._get_memories_until_limit(
most_recent_memories_token
)
}
return {}
def save_context(self, inputs: Dict[str, Any], outputs: Dict[str, Any]) -> None:
"""Save the context of this model run to memory."""
# TODO: fix the save memory key
mem = outputs.get(self.add_memory_key)
now = outputs.get(self.now_key)
if mem:
self.add_memory(mem, now=now)
def clear(self) -> None:
"""Clear memory contents."""
# TODO
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