title |
slug |
url |
aliases |
Connector Chain |
Connector Chain ZH |
coagent/connector-chain-zh |
/coagent/connector-chain-zh |
|
快速构建一个 agent chain
- 首先增加openai配置,也可以是其它类似于openai接口的模型(通过fastchat启动)
# 设置openai的api-key
import os, sys
import openai
import importlib
os.environ["API_BASE_URL"] = OPENAI_API_BASE
os.environ["OPENAI_API_KEY"] = "sk-xxxx"
openai.api_key = "sk-xxxx"
# os.environ["OPENAI_PROXY"] = "socks5h://127.0.0.1:13659"
os.environ["DUCKDUCKGO_PROXY"] = os.environ.get("DUCKDUCKGO_PROXY") or "socks5://127.0.0.1:13659"
- 配置相关 LLM 和 Embedding Model
# LLM 和 Embedding Model 配置
llm_config = LLMConfig(
model_name="gpt-3.5-turbo", model_device="cpu",api_key=os.environ["OPENAI_API_KEY"],
api_base_url=os.environ["API_BASE_URL"], temperature=0.3
)
embed_config = EmbedConfig(
embed_engine="model", embed_model="text2vec-base-chinese",
embed_model_path="D://project/gitlab/llm/external/ant_code/Codefuse-chatbot/embedding_models/text2vec-base-chinese"
)
- 这里从已有的agent配置选多个role组合成 agent chain
from coagent.base_configs.env_config import JUPYTER_WORK_PATH, KB_ROOT_PATH
from coagent.llm_models.llm_config import EmbedConfig, LLMConfig
from coagent.connector.configs import AGETN_CONFIGS
from coagent.connector.chains import BaseChain
from coagent.connector.schema import Message, load_role_configs
# 构建 agent chain 链路
role_configs = load_role_configs(AGETN_CONFIGS)
agent_config = role_configs["general_planner"]
role1 = role_configs["general_planner"]
role2 = role_configs["executor"]
agent_module = importlib.import_module("examples.connector.agents")
agents = [
getattr(agent_module, role1.role.agent_type)(
role=role1.role,
prompt_config = role1.prompt_config,
prompt_manager_type=role1.prompt_manager_type,
chat_turn=role1.chat_turn,
focus_agents=role1.focus_agents,
focus_message_keys=role1.focus_message_keys,
llm_config=llm_config,
embed_config=embed_config,
jupyter_work_path=JUPYTER_WORK_PATH,
kb_root_path=KB_ROOT_PATH,
),
getattr(agent_module, role2.role.agent_type)(
role=role2.role,
prompt_config = role2.prompt_config,
prompt_manager_type=role2.prompt_manager_type,
chat_turn=role2.chat_turn,
focus_agents=role2.focus_agents,
focus_message_keys=role2.focus_message_keys,
llm_config=llm_config,
embed_config=embed_config,
jupyter_work_path=JUPYTER_WORK_PATH,
kb_root_path=KB_ROOT_PATH,
),
]
chain = BaseChain(
agents,
chat_turn=1,
jupyter_work_path=JUPYTER_WORK_PATH,
kb_root_path=KB_ROOT_PATH,
llm_config=llm_config,
embed_config=embed_config,
)
# round-1
query_content = "确认本地是否存在employee_data.csv,并查看它有哪些列和数据类型;然后画柱状图"
query = Message(
role_name="human", role_type="user",
role_content=query_content, input_query=query_content, origin_query=query_content,
)
output_message, output_memory = chain.step(query)
print(output_memory.to_str_messages(content_key="parsed_output_list"))
Chain 参数配置
Config Key Name |
Type |
Description |
agents |
List[BaseAgent] |
|
llm_config |
LLMConfig |
大语言模型配置 |
embed_config |
EmbedConfig |
向量模型配置 |
sandbox_server |
Dict |
沙盒环境即notebook启动配置 |
jupyter_work_path |
str |
沙盒环境的工作目录 |
kb_root_path |
str |
memory的存储路径 |
log_verbose |
str |
agent prompt&predict的日志打印级别 |