207

I have a column in python pandas DataFrame that has boolean True/False values, but for further calculations I need 1/0 representation. Is there a quick pandas/numpy way to do that?

2
  • 2
    What further calculations are required?
    – Jon Clements
    Jun 29 '13 at 17:58
  • 1
    To parrot @JonClements, why do you need to convert bool to int to use in calculation? bool works with arithmetic directly (since it is internally an int).
    – cs95
    Jul 14 '20 at 2:09
399

A succinct way to convert a single column of boolean values to a column of integers 1 or 0:

df["somecolumn"] = df["somecolumn"].astype(int)
6
  • 18
    The corner case is if there are NaN values in somecolumn. Using astype(int) will then fail. Another approach, which converts True to 1.0 and False to 0.0 (floats) while preserving NaN-values is to do: df.somecolumn = df.somecolumn.replace({True: 1, False: 0})
    – DustByte
    Jan 10 '20 at 11:29
  • @DustByte Good catch! Apr 14 '20 at 13:49
  • @DustByte Couldn't you just use astype(float) and get the same result?
    – AMC
    Apr 27 '20 at 21:29
  • if the value is text and a lowercase "true" or "false" then first do a astype(bool].astype(int) and the conversion will work. Sas outputs is bools as lowercase true and false. Sep 29 '20 at 11:03
  • how can this be applied to a number of columns?
    – unaied
    Mar 29 at 10:41
84

Just multiply your Dataframe by 1 (int)

[1]: data = pd.DataFrame([[True, False, True], [False, False, True]])
[2]: print data
          0      1     2
     0   True  False  True
     1   False False  True

[3]: print data*1
         0  1  2
     0   1  0  1
     1   0  0  1
5
  • 1
    What are the advantages of this solution?
    – AMC
    Apr 27 '20 at 23:56
  • 5
    @AMC There are none, it's a hacky way to do it. Nov 17 '20 at 21:54
  • 2
    @AMC if your dataframe has float types beside booleans this method won't ruin them, df.astype(int) does. And since it's hacky it's probably a good idea to make intention clear with comment like # bool -> int. Feb 17 at 18:42
  • 2
    There is an advantage of using data * 1 against data + 0 with mixed types – it works on strings as well, where data + 0 throws an error. Equivalent performance-wise. Feb 17 at 18:56
  • advantage: slightly shorter
    – qwr
    Oct 17 at 23:44
46

True is 1 in Python, and likewise False is 0*:

>>> True == 1
True
>>> False == 0
True

You should be able to perform any operations you want on them by just treating them as though they were numbers, as they are numbers:

>>> issubclass(bool, int)
True
>>> True * 5
5

So to answer your question, no work necessary - you already have what you are looking for.

* Note I use is as an English word, not the Python keyword is - True will not be the same object as any random 1.

5
  • 2
    Just be careful with data types if doing floating point math: np.sin(True).dtype is float16 for me.
    – jorgeca
    Jun 29 '13 at 18:09
  • 9
    I've got a dataframe with a boolean column, and I can call df.my_column.mean() just fine (as you imply), but when I try: df.groupby("some_other_column").agg({"my_column":"mean"}) I get DataError: No numeric types to aggregate, so it appears they are NOT always the same. Just FYI.
    – dwanderson
    Dec 15 '16 at 21:10
  • In pandas version 24 (and maybe earlier) you can aggregate bool columns just fine. Feb 11 '19 at 22:09
  • 1
    It looks like numpy also throws errors with boolean types: TypeError: numpy boolean subtract, the -` operator, is deprecated, use the bitwise_xor, the ^ operator, or the logical_xor function instead.` Using @User's answer fixes this. Mar 13 '19 at 16:01
  • Another reason it's not the same: df.col1 + df.col2 + df.col3 doesn't work for bool columns as it does for int columns
    – colorlace
    May 24 '19 at 21:55
22

You also can do this directly on Frames

In [104]: df = DataFrame(dict(A = True, B = False),index=range(3))

In [105]: df
Out[105]: 
      A      B
0  True  False
1  True  False
2  True  False

In [106]: df.dtypes
Out[106]: 
A    bool
B    bool
dtype: object

In [107]: df.astype(int)
Out[107]: 
   A  B
0  1  0
1  1  0
2  1  0

In [108]: df.astype(int).dtypes
Out[108]: 
A    int64
B    int64
dtype: object
16

This question specifically mentions a single column, so the currently accepted answer works. However, it doesn't generalize to multiple columns. For those interested in a general solution, use the following:

df.replace({False: 0, True: 1}, inplace=True)

This works for a DataFrame that contains columns of many different types, regardless of how many are boolean.

0
2

You can use a transformation for your data frame:

df = pd.DataFrame(my_data condition)

transforming True/False in 1/0

df = df*1
1
  • This is identical to this solution, posted 3 years earlier.
    – AMC
    Apr 27 '20 at 23:59
2

Use Series.view for convert boolean to integers:

df["somecolumn"] = df["somecolumn"].view('i1')
0
0

I had to map FAKE/REAL to 0/1 but couldn't find proper answer.

Please find below how to map column name 'type' which has values FAKE/REAL to 0/1
(Note: similar can be applied to any column name and values)

df.loc[df['type'] == 'FAKE', 'type'] = 0
df.loc[df['type'] == 'REAL', 'type'] = 1
3
  • Much simpler: df['type'] = df['type'].map({'REAL': 1, 'FAKE': 0}). In any case, I'm not sure it's too relevant to this question.
    – AMC
    Nov 18 '20 at 1:29
  • Thanks for providing simpler solution. As I mentioned in answer, I was trying to find solution for slightly different question, and only similar questions like this were available. Hope my answer and your solution will help someone in future.
    – kaishu
    Nov 26 '20 at 15:59
  • There are other questions which already cover that, though, like stackoverflow.com/q/20250771.
    – AMC
    Nov 26 '20 at 21:27

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.