def filter_data(df, raw_col,threshold,filt_col):
    df['pct'] = None
    df[filt_col] = None
    df[filt_col][0] = df[raw_col][0]
    max_val = df[raw_col][0]
    for i in range(1,len(df)):
        df['pct'][i] = (df[raw_col][i] - max_val)*1.0 / max_val
        if abs(df['pct'][i]) < threshold:
            df[filt_col][i] = None
            df[filt_col][i] = df[raw_col][i]
            max_val = df[raw_col][i]
    df = df.dropna(axis=0, how='any').reset_index()
    return df

from random import randint
some_lst = [randint(50, 100) for i in range(0,50)]
some_df = pd.DataFrame({'raw_col':some_lst})
some_df_filt = filter_data(some_df,'raw_col',0.01,'raw_col_filt')

The goal to create a new column(filt_col) where record from numeric column (raw_col) are removed with the following logic; if rate of change between two adjacent rows is less than threshold remove the latter. It works but is very inefficient in terms of running time. Any hints on how I could optimise it?

  • 1
    Could you please share an example of your initial df and the result you're looking for?
    – rpanai
    Jun 12, 2018 at 14:19
  • " some_df_filt " and specifically the column " raw_col_filt " is the desirable output...
    – kostas
    Jun 12, 2018 at 16:10
  • 1
    I meant a mcve. If you can produce that it would be easier to help you out.
    – rpanai
    Jun 12, 2018 at 16:23

1 Answer 1


IIUC, you can do this very simply using .pct_change() and loc


df['pctn'] = df.raw_col.pct_change()


threshold  = 0.01
df.loc[df.pctn.abs() >= threshold]

You can check that this solution yields the same result as yours, which you said works, but is slow

df.loc[df.pctn.abs() >= 0.01].raw_col.tolist() == some_df_filt.raw_col.tolist()
  • 2
    This should be the accepted answer. When testing, the speedup is several orders of magnitude. Where the algorithm in the question operates on a dataframe using lots of code outside of the pandas/numpy api (effectively rendering pandas/numpy useless from an efficiency standpoint), this answer uses the api effectively, keeping things out of the python realm. From a practical perspective, you don't need anything better than this. Where my crappy desktop was taking minutes to do 1000 numbers with the original algorithm, I can now do 10,000,000 with this answer in 1.1 seconds.
    – Evan
    Jul 10, 2018 at 12:56
  • I was trying to avoid using this method and I came up with my function because I would like to have the logic being transferred across different languages effortlessly. But thinking about it, it doesnt make much sense to have a universal mediocre solution instead of using each languages' strengths.
    – kostas
    Jul 10, 2018 at 15:36

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