Hey I have a time series order dataset in pandas with missing values for some dates to correct it I am trying to pick up the value from the previous dates available.

for date in dates_missing:
    df_temp = df[df.order_date<date].sort_values(['order_date'],ascending=False)
    supplier_map = df_temp.groupby('supplier_id')['value'].first()

    for supplier_id in supplier_map.index.values:
        df[(df.order_datetime==date)&(df.su_id == supp)]['value'] = supplier_map.get(supplier_id)

To explain the code I am looping over the missing dates then fetching the list of values previous to the missing date. Then getting the supplier id to value map using the pandas first()

NOW the slowest part is updating back the original data frame

I am looping over each supplier and updating the values in the original data frame.

Need suggestion to speed up this inner for loop

Example:

|order_date|supplier_id |value |sku_id| |2017-12-01| 10 | 1.0 | 1 | |2017-12-01| 9 | 1.3 | 7 | |2017-12-01| 3 | 1.4 | 2 | |2017-12-02| 3 | 0 | 2 | |2017-12-02| 9 | 0 | 7 | |2017-12-03| 3 | 1.0 | 2 | |2017-12-03| 10 | 1.0 | 1 | |2017-12-03| 9 | 1.3 | 7 |

date to fix 2017-12-02

|2017-12-02| 3 | 0 | 2 | |2017-12-02| 9 | 0 | 7 |

corrected data frame

|order_date|supplier_id |value |sku_id| |2017-12-01| 10 | 1.0 | 1 | |2017-12-01| 9 | 1.3 | 7 | |2017-12-01| 3 | 1.4 | 2 | |2017-12-02| 3 | 1.4 | 2 | |2017-12-02| 9 | 1.3 | 7 | |2017-12-03| 3 | 1.0 | 2 | |2017-12-03| 10 | 1.0 | 1 | |2017-12-03| 9 | 1.3 | 7 | PS: I might not be way clear with the question so would be happy to answer doubts and re-edit the post moving on.

  • is your date is missing in a row or some values associated with the date are missing, can you clairify ? – Naga Kiran Sep 14 at 16:04
  • Can you provide a Minimal, Complete, and Verifiable example with some sample data and your expected output? Without seeing how your missing data is actually represented, it's difficult to provide a real answer. – ALollz Sep 14 at 16:05
  • Why not use pd.interpolate ? – Anna Iliukovich-Strakovskaia Sep 14 at 16:25
  • @NagaKiran the data are rows but for certain dates values are zero – Amandeep Singh Sep 14 at 16:26
  • @AnnaIliukovich-StrakovskaiaI guess lack of example let to confusion provide one for clear context – Amandeep Singh Sep 14 at 16:40

You can group the dataframe by day and supplier_id, for each grouped dataframe replace 0 with Null, once you got null fill with forward fill, for early values you can use backward fill,

It may reduce your time

df.replace(0,np.nan,inplace=True)
df['values'] = df.groupby([df.supplier_id])['values'].apply(lambda x: x.replace(0,np.nan).fillna(method='ffill').fillna(method = 'bfill'))

Out:

    order_date  sku_id  supplier_id values
0   2017-12-01  1   10  1.0
1   2017-12-01  7   9   1.3
2   2017-12-01  2   3   1.4
3   2017-12-02  2   3   1.4
4   2017-12-02  7   9   1.3
5   2017-12-03  2   3   1.0
6   2017-12-03  1   10  1.0
7   2017-12-03  7   9   1.3

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