Open-source AI-driven quantitative trading platform for crypto, stocks, and forex with backtesting, live trading, market data, and multi-agent research.
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Updated
Apr 13, 2026 - Python
Open-source AI-driven quantitative trading platform for crypto, stocks, and forex with backtesting, live trading, market data, and multi-agent research.
Multi-symbol AI trading agent — Claude AI + FastAPI + Next.js + MetaTrader 5
ATOMIC MESH — Distributed deterministic HFT market-making engine. Avellaneda-Stoikov strategy with sub-microsecond C++ hot-path (575ns), event-sourced architecture, VPIN toxicity detection, QUIC mesh transport, real-time dashboard. Rust + C++17 FFI. Live on Binance.
Machine learning overlay for SPY using ^GSPC regime signals, Jump Model labels, and XGBoost. Focused on downside protection, recovery timing, and risk-adjusted improvement under a unified long-sample backtest.
Quantitative risk & performance analysis of U.S. equities. Sharpe ratio, VaR, drawdown, momentum strategy backtest, and minimum variance portfolio optimization.
🤖 AI Trading Bot 2026: MetaTrader 5 & GPT-4 API | Next.js Dashboard
Multi-task Deep Learning suite for Nifty 50 stock forecasting. Simultaneously predicts price returns and market direction using LSTM, GRU, and Transformers with bias-corrected weighted loss.
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