Tushare MCP Server
This is a Model Context Protocol (MCP) server that provides access to Tushare financial data.
Prerequisites
Python 3.10 or higher
A Tushare Token (Get it from Tushare.pro)
Installation
Install the dependencies:
pip install -r requirements.txtConfiguration
Create a
.envfile in the project root directory:TUSHARE_TOKEN=your_tushare_token_here
Project Layout
server/: MCP entrypoint (server.py) plus logs.src/: application code split intostrategies/(wheel backtest, etc.) andutils/(shared math + performance helpers).temp_data/: generated artifacts such aswheel_report.html,wheel_dashboard.html, and portfolio CSV/JSON outputs.tests/: standalone scripts for strategy prototyping (wheel_strategy.py,portfolio_rebalance.py, etc.).
Using with GitHub Copilot in VS Code
To use this MCP server with GitHub Copilot in VS Code, you need to configure the mcp.json file.
Open Configuration:
Open the Command Palette (
Ctrl+Shift+PorF1).Search for and select
MCP: Configure MCP Servers.This will open the
mcp.jsonfile (typically located in%APPDATA%\Code\User\mcp.jsonon Windows).
Add via Command Palette (quick way):
Press
Ctrl+Shift+Pagain and pickMCP: Add MCP Server.When the Enter Command prompt appears, paste:
C:\Users\lochen\AppData\Local\Microsoft\WindowsApps\python3.13.exe c:\Users\lochen\tushare-mcp\server\server.pyAccept the suggested server name (for example
tushare) and save.
Add Server Configuration manually: Add the
tushare-serverconfiguration to the JSON file. Make sure to use absolute paths for both the Python executable and the script.{ "mcpServers": { "tushare-server": { "command": "C:\\path\\to\\your\\python.exe", "args": [ "C:\\path\\to\\tushare_mcp_server\\server\\server.py" ] } } }Replace
C:\\path\\to\\your\\python.exewith your actual Python interpreter path (e.g.,C:\\Users\\username\\AppData\\Local\\Programs\\Python\\Python311\\python.exe).Replace
C:\\path\\to\\tushare_mcp_server\\server\\server.pywith the absolute path to this project's server entry point.
Restart VS Code: After saving
mcp.json, restart VS Code for the changes to take effect.
Usage
Testing with MCP Inspector
You can test the server using the MCP Inspector:
npx @modelcontextprotocol/inspector python server/server.pyPrice Volatility Tool
After the server is running (Inspector, Copilot, etc.), invoke the get_price_volatility tool to compute recent volatility for a stock. It supports frequency values daily, monthly, or yearly, letting you measure 波动率 on日线/月线/年线 data.
{
"tool": "get_price_volatility",
"args": {
"identifier": "000001.SZ",
"window": 30,
"frequency": "daily",
"annualize": true
}
}Key fields returned:
frequency: 数据频率(daily/monthly/yearly)。window_periods: 实际使用的周期数(交易日/月份/年份)。period_volatility: 该频率下的标准差。annualized_volatility: 根据频率自动换算后的年化波动率(252/12/1)。mean_period_return: 平均单周期收益。
Option Reference & Daily Data
基于 Tushare 文档 #157 新增了两个期权工具:
get_option_basic(exchange, fields): 返回上/深交所上市期权的合约元数据(行权价、类型、到期日等)。get_option_daily(ts_code, trade_date, start_date, end_date, exchange): 返回期权日线行情。
示例(通过 MCP 调用 get_option_daily 查询科创50期权在单日的 K 线):
{
"tool": "get_option_daily",
"args": {
"exchange": "SSE",
"trade_date": "20251203"
}
}返回值为 JSON 数组,字段与 Tushare opt_daily 接口一致,可配合 get_price_volatility 等工具进一步分析期权策略。
ETF/Fund Daily Quotes
使用新的 get_fund_daily 工具(Tushare 文档 #127 对应接口)可直接拉取 ETF/场内基金的日线行情:
{
"tool": "get_fund_daily",
"args": {
"ts_code": "159915.SZ",
"start_date": "20250101",
"end_date": "20251203",
"fields": "ts_code,trade_date,open,high,low,close,vol"
}
}当 fields 为空时会返回默认全部列。可搭配 get_option_daily、get_price_volatility 等工具构建 ETF+期权策略分析。
Wheel Strategy Backtest
tests/wheel_strategy.py 利用 159915.SZ(创业板ETF)及其期权,ETF 行情通过 Tushare fund_daily 接口(文档 #127)获取,模拟“车轮饼”策略:
每个自然月首个交易日:
若空仓,卖出 5%~10% OTM 的认沽合约(
call_put='P')。若持仓,卖出 5%~10% OTM 的认购合约(
call_put='C')。
到期日根据标的收盘价判断是否被指派,按轮动逻辑更新持仓。
统计权利金、被指派次数、最大保证金占用,并估算收益率。
报告会显示每笔交易的隐含波动率:若 Tushare 返回该字段则直接使用,否则基于 Black-Scholes(假定 2% 无风险利率)用成交价反推出一个参考值。
运行:
python tests/wheel_strategy.py输出包含总收益、占用保证金、近10期交易记录等。所有生成的 wheel_report.html、wheel_dashboard.html 等文件都会写入 temp_data/,便于统一清理。若需调整标的、时间区间或虚值区间,可编辑脚本顶部的常量(UNDERLYING、START_DATE、OTM_RANGE 等)。
Wheel Strategy MCP Tool
无需运行脚本,也可直接通过 MCP 调用 backtest_wheel_strategy:
{
"tool": "backtest_wheel_strategy",
"args": {
"underlying": "159915.SZ",
"start_date": "20230101",
"end_date": "20251203",
"otm_min": 0.05,
"otm_max": 0.10,
"initial_capital": 30000
}
}返回 JSON 中包含:
ending_value、return_on_capital、annualized_return等指标。recent_trades:近 12 期的期权选择、权利金、行权价及是否被指派。
可通过参数更换标的(只要该 ETF 有挂牌期权)、调整虚值区间或回测时间窗。确保 Tushare Token 对 fund_daily、opt_basic、opt_daily 接口有权限。
Multi-ETF Portfolio Backtest
tests/portfolio_rebalance.py 按照截图中的 10 只 ETF 及固定权重构建组合,并在每个自然月首个交易日动态再平衡:
python tests/portfolio_rebalance.py脚本会:
自动获取所有 ETF 的可用历史区间,并截取重叠部分;
计算每日组合净值并输出
temp_data/portfolio_equity_curve.csv,再平衡明细写入temp_data/portfolio_rebalances.csv;生成
temp_data/portfolio_vs_benchmarks.csv,其中包含组合与沪深300/中证500/创业板指的归一化指数曲线;在
temp_data/portfolio_summary.json中汇总收益率、年化波动率、最大回撤、Sharpe Ratio 及各基准指数的对比指标。
Using with Claude Desktop
Add the following configuration to your claude_desktop_config.json:
{
"mcpServers": {
"tushare": {
"command": "python",
"args": ["C:\\Users\\lochen\\tushare_mcp_server\\server\\server.py"],
"env": {
"TUSHARE_TOKEN": "your_token_here"
}
}
}
}Make sure to replace your_token_here with your actual Tushare token.
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