X-Trend: Few-Shot Learning Patterns in Financial Time-Series for Trend-Following Strategies
-
Updated
Feb 25, 2024
X-Trend: Few-Shot Learning Patterns in Financial Time-Series for Trend-Following Strategies
Automated Python implementation of a Mount Lucas Management (MLM) style trend-following strategy for futures using the IBKR API (ib_insync). Calculates 200-day MA signals on Continuous Futures, filters trades by volatility, and executes on front-month contracts.
Advanced trend detection and labelling for time series with Python
A Python-based framework for back testing, optimizing and identifying cryptocurrency trading strategies using historical data.
Modular Python scaffold for systematic trend-following/managed-futures research: validates multi-asset futures data, builds continuous contracts, runs configurable backtests via CLI/API, simulates trading costs and rolls, and delivers institutional-grade analytics and reports.
Do more than HODL. Simulate hedge-fund-like trend following strategies on popular crypto coins.
The project explores trend-following techniques using L1 and L2 regularization.
Unified trend-following systems implemented in pure NumPy with comprehensive validation and testing. This implementation follows the theoretical framework presented in Sepp & Lucic (2025) "The Science and Practice of Trend-following Systems".
A real-time, automated trend-following dashboard for Hyperliquid perps built with Python
📈 Develop and backtest systematic trend-following strategies with managed futures in Python, enabling efficient investment research and analysis.
Add a description, image, and links to the trend-following topic page so that developers can more easily learn about it.
To associate your repository with the trend-following topic, visit your repo's landing page and select "manage topics."