In this article, I would like to show you how to design a CPPI (Constant proportion portfolio investment) strategy and publish it on the Internet. The result is http://184.108.40.206:8501/ (much more fun if you open the link on a big screen rather in a mobile browser)
Here are the steps.
First, let’s remember what CPPI is.
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