Retrieval-Augmented Generation (RAG) con Milvus y Camel
Esta guía muestra cómo construir un sistema de Generación Aumentada por Recuperación (RAG) utilizando CAMEL y Milvus.
El sistema RAG combina un sistema de recuperación con un modelo generativo para generar texto nuevo basado en una petición dada. En primer lugar, el sistema recupera documentos relevantes de un corpus utilizando Milvus y, a continuación, utiliza un modelo generativo para generar un nuevo texto basado en los documentos recuperados.
CAMEL es un marco multiagente. Milvus es la base de datos vectorial de código abierto más avanzada del mundo, creada para potenciar la búsqueda de similitudes y las aplicaciones de IA.
En este cuaderno, mostramos el uso del módulo CAMEL Retrieve tanto de forma personalizada como automática. También mostraremos cómo combinar AutoRetriever
con ChatAgent
, y además combinar AutoRetriever
con RolePlaying
usando Function Calling
.
Se incluyen 4 partes principales:
- RAG personalizado
- Auto RAG
- Agente único con Auto RAG
- Role-playing con Auto RAG
Cargar datos
Primero carguemos el papel CAMEL desde https://arxiv.org/pdf/2303.17760.pdf. Este será nuestro ejemplo local de datos.
$ pip install -U "camel-ai[all]" pymilvus
Si está utilizando Google Colab, para habilitar las dependencias recién instaladas, es posible que tenga que reiniciar el tiempo de ejecución (Haga clic en el menú "Tiempo de ejecución" en la parte superior de la pantalla, y seleccione "Reiniciar sesión" en el menú desplegable).
import os
import requests
os.makedirs("local_data", exist_ok=True)
url = "https://arxiv.org/pdf/2303.17760.pdf"
response = requests.get(url)
with open("local_data/camel paper.pdf", "wb") as file:
file.write(response.content)
1. RAG personalizado
En esta sección configuraremos nuestro pipeline RAG personalizado, tomaremos VectorRetriever
como ejemplo. Estableceremos OpenAIEmbedding
como modelo de incrustación y MilvusStorage
como almacenamiento.
Para establecer la incrustación OpenAI, tenemos que establecer la OPENAI_API_KEY
en la parte inferior.
os.environ["OPENAI_API_KEY"] = "Your Key"
Importar y configurar la instancia de incrustación:
from camel.embeddings import OpenAIEmbedding
embedding_instance = OpenAIEmbedding()
Importar y configurar la instancia de almacenamiento vectorial:
from camel.storages import MilvusStorage
storage_instance = MilvusStorage(
vector_dim=embedding_instance.get_output_dim(),
url_and_api_key=(
"./milvus_demo.db", # Your Milvus connection URI
"", # Your Milvus token
),
collection_name="camel_paper",
)
Para url_and_api_key
:
- Utilizar un archivo local, por ejemplo
./milvus.db
, como URI de conexión Milvus es el método más conveniente, ya que utiliza automáticamente Milvus Lite para almacenar todos los datos en este archivo. - Si tiene una gran escala de datos, puede configurar un servidor Milvus de mayor rendimiento en docker o kubernetes. En esta configuración, utilice la uri del servidor, por ejemplo
http://localhost:19530
, como url. - Si desea utilizar Zilliz Cloud, el servicio en la nube totalmente gestionado para Milvus, ajuste la uri de conexión y el token, que se corresponden con el punto final público y la clave Api en Zilliz Cloud.
Importe y configure la instancia del recuperador:
Por defecto, el similarity_threshold
se establece en 0,75. Puede cambiarlo.
from camel.retrievers import VectorRetriever
vector_retriever = VectorRetriever(
embedding_model=embedding_instance, storage=storage_instance
)
Utilizamos Unstructured Module
integrado para dividir el contenido en pequeños trozos, el contenido se dividirá automacitlly con su chunk_by_title
función, el carácter máximo para cada trozo es de 500 caracteres, que es una longitud adecuada para OpenAIEmbedding
. Todo el texto en los trozos será incrustado y almacenado en la instancia de almacenamiento vectorial, esto tomará algún tiempo, por favor espere.
vector_retriever.process(content_input_path="local_data/camel paper.pdf")
[nltk_data] Downloading package punkt to /root/nltk_data...
[nltk_data] Unzipping tokenizers/punkt.zip.
[nltk_data] Downloading package averaged_perceptron_tagger to
[nltk_data] /root/nltk_data...
[nltk_data] Unzipping taggers/averaged_perceptron_tagger.zip.
Ahora podemos recuperar información del almacenamiento vectorial haciendo una consulta. Por defecto, se devolverá el contenido de texto del primer fragmento con la mayor puntuación de similitud coseno, y la puntuación de similitud debe ser superior a 0,75 para asegurar que el contenido recuperado es relevante para la consulta. También puede cambiar el valor de top_k
.
La lista de cadenas devuelta incluye:
- puntuación de similitud
- ruta del contenido
- metadatos
- texto
retrieved_info = vector_retriever.query(query="What is CAMEL?", top_k=1)
print(retrieved_info)
[{'similarity score': '0.8321675658226013', 'content path': 'local_data/camel paper.pdf', 'metadata': {'last_modified': '2024-04-19T14:40:00', 'filetype': 'application/pdf', 'page_number': 45}, 'text': 'CAMEL Data and Code License The intended purpose and licensing of CAMEL is solely for research use. The source code is licensed under Apache 2.0. The datasets are licensed under CC BY NC 4.0, which permits only non-commercial usage. It is advised that any models trained using the dataset should not be utilized for anything other than research purposes.\n\n45'}]
Probemos con una consulta irrelevante:
retrieved_info_irrelevant = vector_retriever.query(
query="Compared with dumpling and rice, which should I take for dinner?", top_k=1
)
print(retrieved_info_irrelevant)
[{'text': 'No suitable information retrieved from local_data/camel paper.pdf with similarity_threshold = 0.75.'}]
2. Auto RAG
En esta sección ejecutaremos AutoRetriever
con la configuración predeterminada. Utiliza OpenAIEmbedding
como modelo de incrustación por defecto y Milvus
como almacenamiento vectorial por defecto.
Lo que hay que hacer es
- Establecer rutas de entrada de contenido, que pueden ser rutas locales o urls remotas.
- Establecer url remota y clave api para Milvus
- Dar una consulta
El Auto RAG pipeline creará colecciones para las rutas de entrada de contenido dadas, el nombre de la colección se establecerá automáticamente basado en el nombre de la ruta de entrada de contenido, si la colección existe, hará la recuperación directamente.
from camel.retrievers import AutoRetriever
from camel.types import StorageType
auto_retriever = AutoRetriever(
url_and_api_key=(
"./milvus_demo.db", # Your Milvus connection URI
"", # Your Milvus token
),
storage_type=StorageType.MILVUS,
embedding_model=embedding_instance,
)
retrieved_info = auto_retriever.run_vector_retriever(
query="What is CAMEL-AI",
content_input_paths=[
"local_data/camel paper.pdf", # example local path
"https://www.camel-ai.org/", # example remote url
],
top_k=1,
return_detailed_info=True,
)
print(retrieved_info)
Original Query:
{What is CAMEL-AI}
Retrieved Context:
{'similarity score': '0.8252888321876526', 'content path': 'local_data/camel paper.pdf', 'metadata': {'last_modified': '2024-04-19T14:40:00', 'filetype': 'application/pdf', 'page_number': 7}, 'text': ' Section 3.2, to simulate assistant-user cooperation. For our analysis, we set our attention on AI Society setting. We also gathered conversational data, named CAMEL AI Society and CAMEL Code datasets and problem-solution pairs data named CAMEL Math and CAMEL Science and analyzed and evaluated their quality. Moreover, we will discuss potential extensions of our framework and highlight both the risks and opportunities that future AI society might present.'}
{'similarity score': '0.8378663659095764', 'content path': 'https://www.camel-ai.org/', 'metadata': {'filetype': 'text/html', 'languages': ['eng'], 'page_number': 1, 'url': 'https://www.camel-ai.org/', 'link_urls': ['#h.3f4tphhd9pn8', 'https://join.slack.com/t/camel-ai/shared_invite/zt-2g7xc41gy-_7rcrNNAArIP6sLQqldkqQ', 'https://discord.gg/CNcNpquyDc'], 'link_texts': [None, None, None], 'emphasized_text_contents': ['Mission', 'CAMEL-AI.org', 'is an open-source community dedicated to the study of autonomous and communicative agents. We believe that studying these agents on a large scale offers valuable insights into their behaviors, capabilities, and potential risks. To facilitate research in this field, we provide, implement, and support various types of agents, tasks, prompts, models, datasets, and simulated environments.', 'Join us via', 'Slack', 'Discord', 'or'], 'emphasized_text_tags': ['span', 'span', 'span', 'span', 'span', 'span', 'span']}, 'text': 'Mission\n\nCAMEL-AI.org is an open-source community dedicated to the study of autonomous and communicative agents. We believe that studying these agents on a large scale offers valuable insights into their behaviors, capabilities, and potential risks. To facilitate research in this field, we provide, implement, and support various types of agents, tasks, prompts, models, datasets, and simulated environments.\n\nJoin us via\n\nSlack\n\nDiscord\n\nor'}
3. Agente Único con Auto RAG
En esta sección mostraremos como combinar el AutoRetriever
con un ChatAgent
.
Vamos a establecer una función de agente, en esta función podemos obtener la respuesta proporcionando una consulta a este agente.
from camel.agents import ChatAgent
from camel.messages import BaseMessage
from camel.types import RoleType
from camel.retrievers import AutoRetriever
from camel.types import StorageType
def single_agent(query: str) -> str:
# Set agent role
assistant_sys_msg = BaseMessage(
role_name="Assistant",
role_type=RoleType.ASSISTANT,
meta_dict=None,
content="""You are a helpful assistant to answer question,
I will give you the Original Query and Retrieved Context,
answer the Original Query based on the Retrieved Context,
if you can't answer the question just say I don't know.""",
)
# Add auto retriever
auto_retriever = AutoRetriever(
url_and_api_key=(
"./milvus_demo.db", # Your Milvus connection URI
"", # Your Milvus token
),
storage_type=StorageType.MILVUS,
embedding_model=embedding_instance,
)
retrieved_info = auto_retriever.run_vector_retriever(
query=query,
content_input_paths=[
"local_data/camel paper.pdf", # example local path
"https://www.camel-ai.org/", # example remote url
],
# vector_storage_local_path="storage_default_run",
top_k=1,
return_detailed_info=True,
)
# Pass the retrieved infomation to agent
user_msg = BaseMessage.make_user_message(role_name="User", content=retrieved_info)
agent = ChatAgent(assistant_sys_msg)
# Get response
assistant_response = agent.step(user_msg)
return assistant_response.msg.content
print(single_agent("What is CAMEL-AI"))
CAMEL-AI is an open-source community dedicated to the study of autonomous and communicative agents. It provides, implements, and supports various types of agents, tasks, prompts, models, datasets, and simulated environments to facilitate research in this field.
4. Role-playing con Auto RAG
En esta sección mostraremos cómo combinar RETRIEVAL_FUNCS
con RolePlaying
aplicando Function Calling
.
from typing import List
from colorama import Fore
from camel.agents.chat_agent import FunctionCallingRecord
from camel.configs import ChatGPTConfig
from camel.functions import (
MATH_FUNCS,
RETRIEVAL_FUNCS,
)
from camel.societies import RolePlaying
from camel.types import ModelType
from camel.utils import print_text_animated
def role_playing_with_rag(
task_prompt, model_type=ModelType.GPT_4O, chat_turn_limit=10
) -> None:
task_prompt = task_prompt
user_model_config = ChatGPTConfig(temperature=0.0)
function_list = [
*MATH_FUNCS,
*RETRIEVAL_FUNCS,
]
assistant_model_config = ChatGPTConfig(
tools=function_list,
temperature=0.0,
)
role_play_session = RolePlaying(
assistant_role_name="Searcher",
user_role_name="Professor",
assistant_agent_kwargs=dict(
model_type=model_type,
model_config=assistant_model_config,
tools=function_list,
),
user_agent_kwargs=dict(
model_type=model_type,
model_config=user_model_config,
),
task_prompt=task_prompt,
with_task_specify=False,
)
print(
Fore.GREEN
+ f"AI Assistant sys message:\n{role_play_session.assistant_sys_msg}\n"
)
print(Fore.BLUE + f"AI User sys message:\n{role_play_session.user_sys_msg}\n")
print(Fore.YELLOW + f"Original task prompt:\n{task_prompt}\n")
print(
Fore.CYAN
+ f"Specified task prompt:\n{role_play_session.specified_task_prompt}\n"
)
print(Fore.RED + f"Final task prompt:\n{role_play_session.task_prompt}\n")
n = 0
input_msg = role_play_session.init_chat()
while n < chat_turn_limit:
n += 1
assistant_response, user_response = role_play_session.step(input_msg)
if assistant_response.terminated:
print(
Fore.GREEN
+ (
"AI Assistant terminated. Reason: "
f"{assistant_response.info['termination_reasons']}."
)
)
break
if user_response.terminated:
print(
Fore.GREEN
+ (
"AI User terminated. "
f"Reason: {user_response.info['termination_reasons']}."
)
)
break
# Print output from the user
print_text_animated(Fore.BLUE + f"AI User:\n\n{user_response.msg.content}\n")
# Print output from the assistant, including any function
# execution information
print_text_animated(Fore.GREEN + "AI Assistant:")
tool_calls: List[FunctionCallingRecord] = assistant_response.info["tool_calls"]
for func_record in tool_calls:
print_text_animated(f"{func_record}")
print_text_animated(f"{assistant_response.msg.content}\n")
if "CAMEL_TASK_DONE" in user_response.msg.content:
break
input_msg = assistant_response.msg
Ejecuta el juego de rol con la función recuperadora definida:
role_playing_with_rag(
task_prompt="""What is the main termination reasons for AI Society
dataset, how many number of messages did camel decided to
limit, what's the value plus 100? You should refer to the
content in path camel/local_data/camel paper.pdf"""
)
AI Assistant sys message:
BaseMessage(role_name='Searcher', role_type=<RoleType.ASSISTANT: 'assistant'>, meta_dict={'task': "What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what's the value plus 100?", 'assistant_role': 'Searcher', 'user_role': 'Professor'}, content="===== RULES OF ASSISTANT =====\nNever forget you are a Searcher and I am a Professor. Never flip roles! Never instruct me!\nWe share a common interest in collaborating to successfully complete a task.\nYou must help me to complete the task.\nHere is the task: What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what's the value plus 100?. Never forget our task!\nI must instruct you based on your expertise and my needs to complete the task.\n\nI must give you one instruction at a time.\nYou must write a specific solution that appropriately solves the requested instruction and explain your solutions.\nYou must decline my instruction honestly if you cannot perform the instruction due to physical, moral, legal reasons or your capability and explain the reasons.\nUnless I say the task is completed, you should always start with:\n\nSolution: <YOUR_SOLUTION>\n\n<YOUR_SOLUTION> should be very specific, include detailed explanations and provide preferable detailed implementations and examples and lists for task-solving.\nAlways end <YOUR_SOLUTION> with: Next request.")
AI User sys message:
BaseMessage(role_name='Professor', role_type=<RoleType.USER: 'user'>, meta_dict={'task': "What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what's the value plus 100?", 'assistant_role': 'Searcher', 'user_role': 'Professor'}, content='===== RULES OF USER =====\nNever forget you are a Professor and I am a Searcher. Never flip roles! You will always instruct me.\nWe share a common interest in collaborating to successfully complete a task.\nI must help you to complete the task.\nHere is the task: What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what\'s the value plus 100?. Never forget our task!\nYou must instruct me based on my expertise and your needs to solve the task ONLY in the following two ways:\n\n1. Instruct with a necessary input:\nInstruction: <YOUR_INSTRUCTION>\nInput: <YOUR_INPUT>\n\n2. Instruct without any input:\nInstruction: <YOUR_INSTRUCTION>\nInput: None\n\nThe "Instruction" describes a task or question. The paired "Input" provides further context or information for the requested "Instruction".\n\nYou must give me one instruction at a time.\nI must write a response that appropriately solves the requested instruction.\nI must decline your instruction honestly if I cannot perform the instruction due to physical, moral, legal reasons or my capability and explain the reasons.\nYou should instruct me not ask me questions.\nNow you must start to instruct me using the two ways described above.\nDo not add anything else other than your instruction and the optional corresponding input!\nKeep giving me instructions and necessary inputs until you think the task is completed.\nWhen the task is completed, you must only reply with a single word <CAMEL_TASK_DONE>.\nNever say <CAMEL_TASK_DONE> unless my responses have solved your task.')
Original task prompt:
What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what's the value plus 100?
Specified task prompt:
None
Final task prompt:
What is the main termination reasons for AI Society dataset, how many number of messages did camel decided to limit, what's the value plus 100?
AI User:
Instruction: Provide a summary of the main termination reasons in the AI Society dataset.
Input: None
AI Assistant:
Function Execution: local_retriever
Args: {'query': 'main termination reasons for AI Society dataset'}
Result: Original Query:
{main termination reasons for AI Society dataset}
Retrieved Context:
Next we examine the conversation termination reasons for both AI Society and Code datasets. As can be seen in Figure 8, the main termination reasons for AI Society dataset is Assistant Instruct whereas for Code it is Token Limit. The latter is expected as the since responses that contain code tend to be long. It is also interesting to note that in both datasets, the termination due to Maximum Number of Messages is low indicating that the limit of 40 maximum messages is reasonable. Our decision t
Solution: The main termination reason for the AI Society dataset is "Assistant Instruct." This indicates that conversations in the AI Society dataset typically end when the assistant is instructed to terminate the conversation.
Next request.
AI User:
Instruction: Identify the number of messages that the camel decided to limit in the context provided.
Input: None
AI Assistant:
Solution: The context provided from the local retriever indicates that the camel decided to limit the number of messages to a maximum of 40 messages. This is mentioned in the retrieved context where it states that the termination due to Maximum Number of Messages is low, indicating that the limit of 40 maximum messages is reasonable.
Next request.
AI User:
Instruction: Calculate the value of the message limit plus 100.
Input: None
AI Assistant:
Function Execution: add
Args: {'a': 40, 'b': 100}
Result: 140
Solution: The value of the message limit plus 100 is 140.
Next request.
AI User:
CAMEL_TASK_DONE
AI Assistant:
Solution: Understood, the task is completed.
Next request.