I have searched extensively in Google and here but cannot seem to find the answer I am looking for or at least, some thing I understand. Is it possible to use EWMA in Pandas for forecasting ? For example, if I had daily data of website clicks for 2 months 1st Feb to 31st Mar. and don't see any trend or seasonality in the data, it seems like I should be able to use EWMA to "predict" number of clicks at a later date say on 10th April. In Excel, I can imagine just filling approximately 10 dates or rows after 31st March and computing a moving average where the 5-day EWMA for 10th April will be based on weighted forecasts of prior days. Is there a way I can do this in Python ?

Thanks !

  • Anyone ? Please respond, will be super helpful.
    – PriS
    Commented Jan 25, 2017 at 15:49
  • For a function that produces EWMA estimates for all columns in a pandas dataframe, have a look here: stackoverflow.com/questions/45665217/…
    – vestland
    Commented Oct 16, 2017 at 6:55

1 Answer 1


It's a one-liner to implement, but you're going to be a little bored by EWMA's predictions of the future (the mean is simply the most recent observation). If you'd like a python package that lets you experiment with EWMA level, trend and seasonality, try my Holt Winters implementation:



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