PyTrendFollow
Futures trader
A systematic futures trading framework using trend following algorithms and interacting with multiple data sources
PyTrendFollow - systematic futures trading using trend following
379 stars
25 watching
74 forks
Language: Python
last commit: almost 7 years ago algorithmic-tradingpythonsystematic-trading-strategiestradingtrading-bot
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