# How can I map True/False to 1/0 in a Pandas DataFrame?

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?

• What further calculations are required? – Jon Clements Jun 29 '13 at 17:58
• 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 at 2:09

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)
``````
• 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 at 11:29
• @DustByte Good catch! – Homunculus Reticulli Apr 14 at 13:49
• @DustByte Couldn't you just use `astype(float)` and get the same result? – AMC Apr 27 at 21:29

Just multiply your Dataframe by 1 (int)

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

: print data*1
0  1  2
0   1  0  1
1   0  0  1
``````
• What are the advantages of this solution? – AMC Apr 27 at 23:56

`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`.

• 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
• 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. – BallpointBen Feb 11 '19 at 22:09
• 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. – Amadou Kone 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

You also can do this directly on Frames

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

In : df
Out:
A      B
0  True  False
1  True  False
2  True  False

In : df.dtypes
Out:
A    bool
B    bool
dtype: object

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

In : df.astype(int).dtypes
Out:
A    int64
B    int64
dtype: object
``````

You can use a transformation for your data frame:

``````df = pd.DataFrame(my_data condition)
``````

# transforming True/False in 1/0

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

Use `Series.view` for convert boolean to integers:

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