Quant Engine
FreeNot checkedA quantitative finance MCP server providing 24 tools for option pricing, portfolio optimization, risk measurement, fixed income analysis, and utility functions,
About
A quantitative finance MCP server providing 24 tools for option pricing, portfolio optimization, risk measurement, fixed income analysis, and utility functions, enabling AI clients to perform professional financial calculations.
README
基于 Model Context Protocol (MCP) 的量化金融计算服务器,使用 FastMCP 框架,为 AI 客户端(如 Claude)提供专业的金融数学计算工具。
功能概览
本服务器提供 24 个 MCP 工具,覆盖量化金融四大核心领域:
| 模块 | 工具数量 | 功能 |
|---|---|---|
| pricing.py | 6 | 期权定价(BS模型、隐含波动率、蒙特卡洛、Greeks、二叉树) |
| portfolio.py | 5 | 组合优化(均值方差、有效前沿、Black-Litterman、HRP、绩效指标) |
| risk.py | 5 | 风险度量(历史VaR、参数法VaR、MC VaR、CVaR、最大回撤) |
| fixed_income.py | 4 | 固定收益(债券定价、久期、凸性、Nelson-Siegel曲线) |
| utils.py | 4 | 工具函数(收益解析、矩阵解析、格式化、输入验证) |
安装
# 克隆项目
git clone https://github.com/yourusername/mcp-quant-engine.git
cd mcp-quant-engine
# 安装依赖
pip install -r requirements.txt
使用
直接运行
python server.py
配置 MCP 客户端
在 Claude Desktop 配置文件中添加:
{
"mcpServers": {
"quant-engine": {
"command": "python",
"args": ["path/to/mcp-quant-engine/server.py"]
}
}
}
工具列表
期权定价工具 (pricing.py)
| 工具 | 描述 | 参数 |
|---|---|---|
black_scholes_call |
BS看涨期权定价 | S, K, T, r, sigma |
black_scholes_put |
BS看跌期权定价 | S, K, T, r, sigma |
implied_vol |
隐含波动率(牛顿迭代法) | price, S, K, T, r, option_type |
monte_carlo_option |
蒙特卡洛期权定价 | S, K, T, r, sigma, n_sims, option_type |
option_greeks |
全部Greeks计算 | S, K, T, r, sigma, option_type |
binomial_tree |
二叉树定价(美式期权) | S, K, T, r, sigma, steps, option_type |
组合优化工具 (portfolio.py)
| 工具 | 描述 | 参数 |
|---|---|---|
mean_variance_optimize |
均值方差优化 | returns_str, cov_matrix_str, target_return |
efficient_frontier |
有效前沿计算 | returns_str, cov_matrix_str, n_points |
black_litterman |
Black-Litterman模型 | P_str, Q_str, cov_matrix_str, market_weights_str, tau |
hrp_clustering |
层次风险平价 | returns_str |
portfolio_metrics |
组合绩效指标 | weights_str, returns_str, cov_matrix_str, rf |
风险度量工具 (risk.py)
| 工具 | 描述 | 参数 |
|---|---|---|
var_historical |
历史模拟法VaR | returns_str, confidence |
var_parametric |
参数法VaR | mean, std, confidence |
var_monte_carlo |
蒙特卡洛VaR | returns_str, confidence, n_sims |
cvar |
条件VaR (CVaR/ES) | returns_str, confidence |
max_drawdown |
最大回撤 | prices_str |
固定收益工具 (fixed_income.py)
| 工具 | 描述 | 参数 |
|---|---|---|
bond_price |
债券定价 | face, coupon_rate, ytm, maturity, freq |
bond_duration |
久期计算 | face, coupon_rate, ytm, maturity, freq |
bond_convexity |
凸性计算 | face, coupon_rate, ytm, maturity, freq |
nelson_siegel |
NS收益率曲线拟合 | beta0, beta1, beta2, tau, maturities_str |
工具函数 (utils.py)
| 工具 | 描述 | 参数 |
|---|---|---|
parse_returns |
解析收益序列 | input_str |
parse_matrix |
解析矩阵 | input_str |
format_result |
格式化数值 | value, precision |
validate_inputs |
输入验证 | args_str |
输入格式说明
- 收益序列:逗号分隔的数值字符串,如
"0.01,0.02,-0.01" - 矩阵:分号分隔行、逗号分隔列,如
"0.04,0.01;0.01,0.09" - 权重向量:逗号分隔的数值,如
"0.3,0.4,0.3"
技术栈
- MCP SDK:
mcp.server.fastmcp.FastMCP - 数值计算: NumPy, SciPy
- 数据处理: Pandas
- 优化求解: scipy.optimize.minimize (SLSQP)
- 层次聚类: scipy.cluster.hierarchy
- 统计分布: scipy.stats.norm
理论参考
- Black, F. & Scholes, M. (1973). The Pricing of Options and Corporate Liabilities.
- Cox, J., Ross, S. & Rubinstein, M. (1979). Option Pricing: A Simplified Approach.
- Markowitz, H. (1952). Portfolio Selection.
- Black, F. & Litterman, R. (1991). Global Portfolio Optimization.
- Lopez de Prado, M. (2016). Building Diversified Portfolios that Outperform Out-of-Sample.
- Nelson, C. & Siegel, A. (1987). Parsimonious Modeling of Yield Curves.
- Jorion, P. (2007). Value at Risk: The New Benchmark for Managing Financial Risk.
- Rockafellar, R. & Uryasev, S. (2002). Conditional Value-at-Risk.
项目结构
mcp-quant-engine/
├── server.py # MCP Server 入口
├── mcp_quant_engine/
│ ├── __init__.py # FastMCP 实例创建
│ ├── pricing.py # 期权定价工具(6个)
│ ├── portfolio.py # 组合优化工具(5个)
│ ├── risk.py # 风险度量工具(5个)
│ ├── fixed_income.py # 固定收益工具(4个)
│ └── utils.py # 数学工具函数(4个)
├── README.md
├── SKILL.md
└── requirements.txt
许可证
MIT License
Installing Quant Engine
This server has no published package — it is built from source. Open the repository and follow its README.
▸ github.com/wzx11223344/mcp-quant-engineFAQ
Is Quant Engine MCP free?
Yes, Quant Engine MCP is free — one-click install via Unyly at no cost.
Does Quant Engine need an API key?
No, Quant Engine runs without API keys or environment variables.
Is Quant Engine hosted or self-hosted?
Self-hosted: the server runs locally on your machine via the install command above.
How do I install Quant Engine in Claude Desktop, Claude Code or Cursor?
Open Quant Engine on unyly.org, pick your client tab (Claude Desktop, Claude Code, Cursor) and press Install — the config is generated automatically, no JSON editing.
Related MCPs
Stripe
Payments, customers, subscriptions
by Stripemalamutemayhem/unclick-agent-native-endpoints
110+ tools for AI agents spanning social media, finance, gaming, music, AU-specific services, and utilities. Zero-config local tools plus platform connectors. n
by malamutemayhemwhiteknightonhorse/APIbase
Unified API hub for AI agents with 56+ tools across travel (Amadeus, Sabre), prediction markets (Polymarket), crypto, and weather. Pay-per-call via x402 micropa
by whiteknightonhorsetrackerfitness729-jpg/sitelauncher-mcp-server
Deploy live HTTPS websites in seconds. Instant subdomains ($1 USDC) or custom .xyz domains ($10 USDC) on Base chain. Templates for crypto tokens and AI agent pr
Compare Quant Engine with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All finance MCPs
