1

I have a pandas dataframe 'result'. One of the attribute in this data frame is 'transaction' which contain value like 0 if it's a non cash transaction and some real number if transaction is cash transaction.This attribute look like:

result['transaction'] = [0,0,0,23.2,432,12,0,0,56.4]

I want to change the value of this attribute such that all non-zero values will be replaced by 1. So my resultant attribute should look like this:

result['transaction'] = [0,0,0,1,1,1,0,0,1]

How can I do this?

5

Another option could be to use astype to convert to bool and then int.

df.astype(bool).astype(int)

Which outputs

   transaction
0            0
1            0
2            0 
3            1
4            1
5            1
6            0
7            0
8            1

In my experience this approach has proven to be quite fast.

3

Original dataframe:

df
    col1
0    0.0
1    0.0
2    0.0
3   23.2
4  432.0
5   12.0
6    0.0
7    0.0
8   56.4

df.where

You can use df.where to filter and assign:

df.col1 = df.where(df.col1 == 0, 1)
df
   col1
0   0.0
1   0.0
2   0.0
3   1.0
4   1.0
5   1.0
6   0.0
7   0.0
8   1.0

Boolean Indexing

You can also use boolean indexing with a simpler predicate:

df[df.col1 != 0] = 1
df
   col1
0   0.0
1   0.0
2   0.0
3   1.0
4   1.0
5   1.0
6   0.0
7   0.0
8   1.0

df.map

df[df.col1.map((0).__ne__)] = 1
df
   col1
0   0.0
1   0.0
2   0.0
3   1.0
4   1.0
5   1.0
6   0.0
7   0.0
8   1.0

Note that, for every method, you can tack on a .astype(int) if you want to get rid of the floating point part of your output.

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