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I would like to use the example of the simple moving average (sma) to show what performance jumps are possible with numba. I think numba is best suited to speed up this library and would clearly prefer it over NumExpr.
In addition, I have created a jupyter notebook to show the performace increase.
https://gist.github.com/N720720/8fdac1c88e5ed9a9c9f65592714925e3