getting-started
Trading strategy developer kit
A repository providing examples and tools for developing and backtesting algorithmic trading strategies in Python.
Start developing and backtesting your own automated trading strategies
76 stars
1 watching
12 forks
Language: Jupyter Notebook
last commit: 3 months ago algorithmic-tradingethereumjupyter-notebookpandaspythonsolanatrading-strategiestradingbot
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