How do I calculate a Smoothed Moving Average on a Python Pandas dataframe?

I have a pandas dataframe and would like to easily calculate the smoothed moving average. To calculate the simple moving average, you would use something like `df.iloc[:,1].rolling(window=3).mean()` and for the exponential moving average you would use something like `df_T.iloc[:,0].ewm(span=40,adjust=False).mean()`. Is there anything similar that I can do to easily calculate the smoothed moving average?

• I looked at TA-Lib, a famous technical indicator, and could not find anything similar. So I will have to implement it myself. Please refer to this. Commented Nov 17, 2021 at 12:48

If we assume the formula for smooth moving average, SMA (aka MMA) as:

`SMA(x) = SMA(x)*1/n + SMA(x-1)*(n-1)/n`

You can operate the formula directly on the series values:

``````import numpy as np
def smma(series_in,n):
size = len(series_in)
series_out = pd.Series(np.zeros(size))
series_out.index = series_in.index
series_out[0] = series_in[0]
for i in range(1,size):
series_out[i] = series_in[i]*1/n + series_out[i-1]*(n-1)/n
return series_out

window_size = 3
df['smma'] = smma(df[0], window_size)
``````

I do not believe this is possible with `pandas.DataFrame.rolling` unless you do a custom `pandas.DataFrame.rolling.apply` and add expand the formula yourself (as a function of `window_size`).

Take note that the output series I assign the same index as the input series, if you join a `numpy.ndarray` as a column to a `pandas.DataFrame` and your row index is not sorted integers, you have the possibility of mis-alignment of data.