1

I have a dataframe column with either a single integer value or a range of two integers. I want to create a final column where the range values are averaged, so that the column become purely integer.

I am trying to use pandas.str.find("-") to find the location of break point and then use np.where() to create separate columns for First Value and Second Value in Range.

import numpy as np
import pandas as pd

d = {'A' : ['1234', '12 - 16'], 'Avg':[1234, 14]}
df= pd.DataFrame(d)

df['bp'] = df['A'].str.find("-")
df['F'] = np.where(df['bp']>0, df['A'].str.slice(0, df['bp']), df['A'])

I am getting NAN where range is present in column. Expected Output is in Column "Avg".

2

Using str.split

df['A'].str.split(' - ').apply(lambda s: sum(map(int,s))/len(s),1)

0    1234.0
1      14.0
Name: A, dtype: float64
0

you can do it using vectorization (with out apply function like below) using str function and explode (pandas above 0.25)

your index must be unique or you need to call df.reset_index for this to work

import pandas as pd

d = {'A' : ['1234', '12 - 16'], 'Avg':[1234, 14]}
df= pd.DataFrame(d)
df["A"].str.split("-").explode().astype(pd.np.int).groupby(level=0).mean()

  • Are you sure this is vectorized? Using split and explode doesn't sound vectorized at all to me ;] . In fact, this solution is actually slower than using plain apply (which in turn Is likely bit slower than a simple list comprehension itself here) – rafaelc Oct 16 '19 at 3:32
0

Use extractall and call mean directly on level=0

df.A.str.extractall(r'(\d+)').astype(int).mean(level=0)[0]

Out[64]:
0    1234
1      14
Name: 0, dtype: int32

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