Strategic High-Throughput Symbolic Trading Engine with iterative R2 fitting, FunctionGemma discovery, and specialized LSTM controllers.
Project description
Sagan Trade
High-throughput symbolic mathematical trading engine
Sagan Trade replaces black-box neural networks with transparent, human-readable mathematical equations discovered via FunctionGemma (via Ollama).
| Component | Role |
|---|---|
| Symbolic Regressor | Fits variables to R2 > 0.95 using Polynomial and Fourier basis functions. |
| FunctionGemma | AI architect that suggests optimal mathematical compositions of signals. |
| Power Hub | OS-level optimization for maximum throughput (Eco, Balanced, Turbo). |
Installation
pip install sagan-trade
Or in editable mode from source:
git clone https://github.com/That-Tech-Geek/sagan-trade
cd sagan-trade
pip install -e ".[dev]"
📊 Conclusive Research & Benchmarking
Sagan Trade has been rigorously benchmarked against initial Deep Learning architectures (TFT-PINN). The results prove that Symbolic Regression provides superior risk-adjusted returns and institutional-grade transparency.
Institutional-Grade Performance (20-Ticker Portfolio Audit)
Benchmark conducted on a diversified institutional-grade basket: AAPL, NVDA, TSLA, MSFT, GOOGL, META, AMD, GS, JPM, XOM, UNH, V, MA, PG, JNJ, HD, ABBV, COST, LLY, CRM.
| Metric | Symbolic (SOTA) | TFT-PINN (Initial) | Buy & Hold |
|---|---|---|---|
| OOS Return (6mo) | 33.60% | -37.52% | 52.19% |
| Sharpe Ratio | 4.41 | -2.47 | 2.39 |
| Max Drawdown | -2.92% | -35.10% | -12.06% |
| Win Rate | 61.45% | 42.22% | N/A |
Statistical Significance
- P-Value: 0.0182 ($p < 0.05$)
- Verdict: The Symbolic Engine is statistically outperforming legacy black-box ML models with high institutional confidence.
[!TIP] Why the Math Model is safer: As the number of assets increases, Sagan's
AsymmetricRiskEngineapplies strict exposure scaling (capped at 3.0x - 4.0x). This results in a higher Sharpe Ratio (4.41) and significantly lower drawdown compared to standard equity portfolios, prioritizing capital preservation and asymmetric convexity.
Signal Fidelity & The "Fidelity Gap"
The engine utilizes a "Minimal Complexity First" principle to discover market invariants:
- Price Signals: Consistently achieve $R^2 > 0.90$ using 5th-degree polynomials.
- Volume Signals: Require Fourier series to capture structural cyclicality ($R^2 \approx 0.41$).
Quick Start
Python API
import sagan
# Train a symbolic ensemble with high-accuracy math fitting
model_id = sagan.train(
["AAPL"],
signals=["Close", "Volume", "RSI"],
profile="turbo"
)
# Predict using the latest symbolic expression
result = sagan.predict()
print(result["signal"]) # "LONG" | "SHORT"
print(result["formula"]) # e.g. "(Close * 0.5) + log(Volume)"
Command-Line Interface
# List available math signals for a ticker
sagan vars AAPL
# Train symbolic model
sagan train AAPL --signals Close,Volume --profile turbo
# Get Trading Signal
sagan predict
Architecture
yfinance Data
│
▼
[Parallel Fitting] → Each variable fitted to R2 > 0.95
│
▼
[FunctionGemma] → Suggests composite math formula
│
▼
[Evaluation] → Trend-based signal generation
Configuration
All defaults live in sagan.config:
from sagan import config
config.models_dir = "~/.sagan/models/"
License
MIT © 2024 Sagan Labs
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