Files
DB-GPT/examples/agents/data_manus_example.py
2026-02-10 13:50:50 +08:00

181 lines
5.8 KiB
Python
Raw Permalink Blame History

This file contains ambiguous Unicode characters
This file contains Unicode characters that might be confused with other characters. If you think that this is intentional, you can safely ignore this warning. Use the Escape button to reveal them.
import asyncio
import os
from pathlib import Path
from typing import Any, Dict, List, Optional, Tuple
import pandas as pd
from dbgpt.agent import (
AgentContext,
AgentMemory,
AutoPlanChatManager,
LLMConfig,
UserProxyAgent,
)
from dbgpt.agent.expand.actions.insert_action import Excel2TableAction
from dbgpt.agent.expand.data_scientist_agent import DataScientistAgent
from dbgpt.agent.expand.excel_table_agent import Excel2TableAgent, excel_files
from dbgpt.agent.expand.web_assistant_agent import WebSearchAgent
from dbgpt.agent.resource import RDBMSConnectorResource
from dbgpt.model.proxy import OpenAILLMClient, TongyiLLMClient
from dbgpt_ext.datasource.rdbms.conn_sqlite import SQLiteConnector
connector = SQLiteConnector.from_file_path("../test_files/datamanus_test.db")
db_resource = RDBMSConnectorResource("user_manager", connector=connector)
api_base = "https://dashscope.aliyuncs.com/compatible-mode/v1"
api_key = "sk-xxx"
model = "qwq-32b"
def read_excel_headers_and_data(
file_path: str, read_rows: Optional[int] = 3
) -> Tuple[List[str], List[Dict[str, Any]]]:
"""
读取Excel文件返回表头信息和结构化数据支持指定读取行数
参数:
file_path: Excel文件路径.xlsx格式
read_rows: 可选,指定读取的数据行数(不含表头)。
- 默认为5仅读取前5行数据
- 设为None或0读取全部数据
- 设为正整数N读取前N行数据若数据总行数不足N则读取实际所有行
返回:
Tuple[表头列表, 数据列表]
- 表头列表: 从Excel第一行读取的列名
- 数据列表: 每个元素是一个字典键为表头值为对应单元格数据空单元格转为None
"""
if not Path(file_path).exists():
raise FileNotFoundError(f"文件不存在: {file_path}")
if Path(file_path).suffix.lower() != ".xlsx":
raise ValueError(f"不支持的文件格式: {Path(file_path).suffix},仅支持.xlsx")
try:
df = pd.read_excel(
file_path, sheet_name=0, engine="openpyxl", keep_default_na=False
)
except Exception as e:
raise RuntimeError(f"读取Excel失败: {str(e)}")
headers = list(df.columns)
if not headers:
raise ValueError("Excel文件没有表头信息第一行为空")
total_data_rows = len(df)
if read_rows in (None, 0):
target_rows = total_data_rows
elif isinstance(read_rows, int) and read_rows > 0:
target_rows = min(read_rows, total_data_rows)
else:
raise ValueError(f"参数read_rows无效{read_rows}仅支持正整数、None或0")
df_target = df.head(target_rows)
data = []
for _, row in df_target.iterrows():
row_data = {
header: (row[header] if row[header] != "" else None) for header in headers
}
data.append(row_data)
return headers, data
def data2md(headers, table_data):
md_lines = []
md_lines.append("| " + " | ".join(headers) + " |")
md_lines.append("| " + " | ".join(["---"] * len(headers)) + " |")
for row in table_data:
values = []
for h in headers:
val = row.get(h, "")
if hasattr(val, "strftime"):
values.append(val.strftime("%Y-%m-%d"))
else:
values.append(str(val))
md_lines.append("| " + " | ".join(values) + " |")
markdown_table = "\n".join(md_lines)
return markdown_table
async def main():
all_file_data = []
# To read some data from Excel files, you can go to excel_table_agent.py
# by yourself and replace the excel_file variable
# as the default directory where the excel file is located
for excel_file in excel_files:
filename_with_ext = os.path.basename(excel_file)
headers, table_data = read_excel_headers_and_data(excel_file)
mdstr = data2md(headers, table_data)
all_file_data.append((filename_with_ext, mdstr))
llm_client = TongyiLLMClient(api_base=api_base, api_key=api_key, model=model)
context: AgentContext = AgentContext(
conv_id="test123", language="zh", temperature=0.5, max_new_tokens=2048
)
agent_memory = AgentMemory()
agent_memory.gpts_memory.init(conv_id="test123")
user_proxy = await UserProxyAgent().bind(agent_memory).bind(context).build()
excel_boy = (
await Excel2TableAgent()
.bind(context)
.bind(LLMConfig(llm_client=llm_client))
.bind(db_resource)
.bind(agent_memory)
.build()
)
sql_boy = (
await DataScientistAgent()
.bind(context)
.bind(LLMConfig(llm_client=llm_client))
.bind(db_resource)
.bind(agent_memory)
.build()
)
web_boy = (
await WebSearchAgent()
.bind(context)
.bind(LLMConfig(llm_client=llm_client))
.bind(agent_memory)
.build()
)
manager = (
await AutoPlanChatManager()
.bind(context)
.bind(agent_memory)
.bind(LLMConfig(llm_client=llm_client))
.build()
)
manager.hire([sql_boy])
manager.hire([excel_boy])
manager.hire([web_boy])
message_parts = ["我读取到以下Excel文件的数据"]
for i, (filename, mdstr) in enumerate(all_file_data, 1):
message_parts.append(f"\n文件 {i}: {filename}")
message_parts.append(f"数据内容:\n{mdstr}")
full_message = (
"\n".join(message_parts) + "\n\n\n截止今年中秋节之前哪些员工还有项目没有结项?"
)
print("完整消息内容:" + full_message)
await user_proxy.initiate_chat(
recipient=manager,
reviewer=user_proxy,
message=full_message,
)
print(await agent_memory.gpts_memory.app_link_chat_message("test123"))
if __name__ == "__main__":
asyncio.run(main())