QuantContext
FreeNot checkedQuantContext turns plain-English strategy descriptions into executable quant research by screening stocks, backtesting, and performing factor analysis using rea
About
QuantContext turns plain-English strategy descriptions into executable quant research by screening stocks, backtesting, and performing factor analysis using real market data.
README
QuantContext is an MCP server that turns plain-English strategy descriptions into executable quant research: screen stocks by any criteria, backtest over historical data, and run factor analysis to see where the returns come from. Every number is computed from real market data, not generated by an LLM. Results are fully reproducible.
Works with Claude, Codex, OpenCode, or any other MCP-compatible coding agent.
Install
pip install quantcontext-mcp
Claude Code:
claude mcp add quantcontext -- quantcontext
Claude Desktop (~/Library/Application Support/Claude/claude_desktop_config.json):
{
"mcpServers": {
"quantcontext": {
"command": "quantcontext"
}
}
}
No API keys. No configuration.
Tools
Three tools that compose into a full research workflow:
screen_stocks -> backtest_strategy -> factor_analysis
| Tool | What it does |
|---|---|
screen_stocks |
Filter S&P 500, Nasdaq 100, or Russell 2000 by fundamentals, momentum, quality, technical signals, or a multi-factor blend. Returns ranked candidates. |
backtest_strategy |
Test a strategy over history with a rebalance-loop engine. Returns CAGR, Sharpe, max drawdown, equity curve, and trade log. |
factor_analysis |
Decompose strategy returns into Fama-French factors (market, size, value, momentum). Returns alpha with t-statistic, factor loadings, and R-squared. |
Sample Prompts
Stock screening:
Screen S&P 500 for value stocks: PE under 15, ROE above 12%
Find the top 20% momentum stocks in the Nasdaq 100 over the last 200 days
Rank S&P 500 stocks by a blend of value, momentum, and quality, equal weight each factor
Find S&P 500 stocks with RSI under 40 and price above the 200-day moving average
Backtesting:
Backtest a top-20% momentum strategy on Nasdaq 100, monthly rebalance, last 2 years
How would a value screen (PE under 15, ROE above 12%) have performed on S&P 500 over the last 3 years?
Test a momentum strategy with a 15% stop loss and 20% max portfolio drawdown circuit breaker
Full research workflow:
Screen S&P 500 for cheap, high-quality stocks. Backtest monthly over 3 years,
then run factor analysis. Is the return real alpha or just factor exposure?
Screen Types
| Screen | Description | Key parameters |
|---|---|---|
fundamental_screen |
Filter by PE, ROE, leverage, revenue growth | pe_lt, roe_gt, debt_equity_lt, revenue_growth_gt |
quality_screen |
Profitability and balance sheet health | roe_gt, debt_equity_lt, profit_margin_gt |
momentum_screen |
Rank by N-day price momentum | lookback_days, top_pct |
value_screen |
Cheapest stocks by valuation | pe_lt, top_n |
factor_model |
Multi-factor composite score | weights (value/momentum/quality/volatility), top_n |
technical_signal |
RSI and SMA crossover signals | rsi_period, sma_short, sma_long |
mean_reversion |
Stocks below z-score threshold | lookback_days, z_threshold |
Use from Python
The tools are also importable directly — no agent required. Useful if you have an existing script and want to plug in backtesting or factor analysis.
from quantcontext.server import screen_stocks, backtest_strategy, factor_analysis
import asyncio, json
# Screen
result = json.loads(asyncio.run(screen_stocks(
universe="sp500",
screen_type="fundamental_screen",
config={"pe_lt": 15, "roe_gt": 12},
)))
# Backtest
bt = json.loads(asyncio.run(backtest_strategy(
stages=[{"order": 1, "type": "screen", "skill": "fundamental_screen", "config": {"pe_lt": 15, "roe_gt": 12}}],
universe="sp500",
rebalance="monthly",
start_date="2022-01-01",
)))
print(bt["metrics"])
# Factor analysis — pipe the equity curve straight in
fa = json.loads(asyncio.run(factor_analysis(
equity_curve=bt["full_equity_curve"]
)))
print(fa["alpha_annualized"], fa["alpha_tstat"])
Strategies are expressed using the built-in screen types from the table above. All functions are async and return JSON strings.
Data
All public data, no API keys required.
| Data | Source | Cache |
|---|---|---|
| Daily OHLCV prices | Yahoo Finance (yfinance) |
~/.cache/quantcontext/prices.parquet |
| Fundamentals (PE, ROE, margins, etc.) | Yahoo Finance | ~/.cache/quantcontext/financials/, 24h TTL |
| Fama-French factors (Mkt-RF, SMB, HML, Mom) | Kenneth French Data Library | ~/.cache/quantcontext/ff_factors.parquet |
| Universe lists (S&P 500, Nasdaq 100) | Wikipedia | ~/.cache/quantcontext/sp500_tickers.json |
The first tool call downloads and caches data (10-30 seconds). All subsequent calls use the local cache: screening under 1s, backtesting 3-8s.
To skip the cold start, run once after install:
quantcontext-warmup --url https://quantcontext.ai/api/data
Links
License
MIT
Install QuantContext in Claude Desktop, Claude Code & Cursor
unyly install quantcontextInstalls into Claude Desktop, Claude Code, Cursor & VS Code — handles npx, uvx and build-from-source repos for you.
First time? Get the CLI: curl -fsSL https://unyly.org/install | sh
Or configure manually
Run in your terminal:
claude mcp add quantcontext -- uvx quantcontext-mcpFAQ
Is QuantContext MCP free?
Yes, QuantContext MCP is free — one-click install via Unyly at no cost.
Does QuantContext need an API key?
No, QuantContext runs without API keys or environment variables.
Is QuantContext hosted or self-hosted?
A hosted option is available: Unyly runs the server in the cloud, no local setup required.
How do I install QuantContext in Claude Desktop, Claude Code or Cursor?
Open QuantContext 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
GitHub
PRs, issues, code search, CI status
by GitHubFilesystem
Secure file operations with configurable access controls.
Memory
Knowledge graph-based persistent memory system.
Template MCP Server
A CLI tool to create a new Model Context Protocol server project with TypeScript support, dual transport options, and an extensible structure
by mcpdotdirectCompare QuantContext with
Not sure what to pick?
Find your stack in 60 seconds
Author?
Embed badge for your README
Browse similar
All development MCPs
