# How to convert from boolean array to int array in python

I have a Numpy 2-D array in which one column has Boolean values i.e. `True`/`False`. I want to convert it to integer `1` and `0` respectively, how can I do it?

E.g. my `data[0::,2]` is boolean, I tried

``````data[0::,2]=int(data[0::,2])
``````

, but it is giving me error:

`TypeError: only length-1 arrays can be converted to Python scalars`

My first 5 rows of array are:

``````[['0', '3', 'True', '22', '1', '0', '7.25', '0'],
['1', '1', 'False', '38', '1', '0', '71.2833', '1'],
['1', '3', 'False', '26', '0', '0', '7.925', '0'],
['1', '1', 'False', '35', '1', '0', '53.1', '0'],
['0', '3', 'True', '35', '0', '0', '8.05', '0']]
``````
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This can't be a 2D-array, since in 2D array all elements have the same type. Probably, you have a structured array. Could you, please, show a few full rows from it and its `dtype`? –  kirelagin Jun 1 '13 at 7:01
OK, those quotes should hint you that you've got an array of strings. So, again, in numpy all elements of a 2D-array must have the same type. You either need structured arrays or just get rid of numpy and use ordinary Python lists. Why do you need numpy and what is your final goal? –  kirelagin Jun 1 '13 at 7:07
Actually I am following a tutorial on machine learning project which uses python, and as I am new to python I am facing these difficulty, it asks for numpy array. So it'd be great if you can tell me how to convert this whole array of strings to float as it is clear that it can be converted to float(treating true as 1 and fase as 0). –  Akashdeep Saluja Jun 1 '13 at 7:10
How do you produce the data in the first place? From a text file? –  root Jun 1 '13 at 7:51

Ok, the easiest way to change a type of any array to float is doing:

`data.astype(float)`

The issue with your array is that `float('True')` is an error, because `'True'` can't be parsed as a float number. So, the best thing to do is fixing your array generation code to produce floats (or, at least, strings with valid float literals) instead of bools.

In the meantime you can use this function to fix your array:

``````def boolstr_to_floatstr(v):
if v == 'True':
return '1'
elif v == 'False':
return '0'
else:
return v
``````

And finally you convert your array like this:

``````new_data = np.vectorize(boolstr_to_floatstr)(data).astype(float)
``````
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It's giving error: "could not convert string to float:" –  Akashdeep Saluja Jun 1 '13 at 7:21
@AkashdeepSaluja I've double-checked the code and it is working for me. Could you please update your question with the exact output of `data[:5]`. –  kirelagin Jun 1 '13 at 7:26
The output in the question is the exact output, do you want something else? –  Akashdeep Saluja Jun 1 '13 at 7:35
@AkashdeepSaluja No, this can't be true. First of all, what I can see in the question is not a `numpy` array, but a Python list. And it was missing commas before I edited it—Python could not output this. Second, my code works for Python lists too, so everything should be fine. Add `print(data[:5])` to your code and post the exact output. –  kirelagin Jun 1 '13 at 7:39
It worked, actually my array had missing values. thanks.. :) –  Akashdeep Saluja Jun 1 '13 at 8:08
show 1 more comment

Using @kirelagin's idea with `ast.literal_eval`

``````>>> import ast
>>> import numpy as np
>>> arr = np.array(
[['0', '3', 'True', '22', '1', '0', '7.25', '0'],
['1', '1', 'False', '38', '1', '0', '71.2833', '1'],
['1', '3', 'False', '26', '0', '0', '7.925', '0'],
['1', '1', 'False', '35', '1', '0', '53.1', '0'],
['0', '3', 'True', '35', '0', '0', '8.05', '0']])
>>> np.vectorize(ast.literal_eval, otypes=[np.float])(arr)
array([[  0.    ,   3.    ,   1.    ,  22.    ,   1.    ,   0.    ,
7.25  ,   0.    ],
[  1.    ,   1.    ,   0.    ,  38.    ,   1.    ,   0.    ,
71.2833,   1.    ],
[  1.    ,   3.    ,   0.    ,  26.    ,   0.    ,   0.    ,
7.925 ,   0.    ],
[  1.    ,   1.    ,   0.    ,  35.    ,   1.    ,   0.    ,
53.1   ,   0.    ],
[  0.    ,   3.    ,   1.    ,  35.    ,   0.    ,   0.    ,
8.05  ,   0.    ]])
``````
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If I do this on your raw data source, which is strings:

``````data = [['0', '3', 'True', '22', '1', '0', '7.25', '0'],
['1', '1', 'False', '38', '1', '0', '71.2833', '1'],
['1', '3', 'False', '26', '0', '0', '7.925', '0'],
['1', '1', 'False', '35', '1', '0', '53.1', '0'],
['0', '3', 'True', '35', '0', '0', '8.05', '0']]

data = [[eval(x) for x in y] for y in data]
``````

``````data = [[float(x) for x in y] for y in data]
# or this if you prefer:
arr = numpy.array(data)
``````

..then the problem is solved. ..you can even do it as a one-liner (I think this makes ints, though, and floats are probably needed): numpy.array([[eval(x) for x in y] for y in data])

..I think the problem is that numpy is keeping your numeric strings as strings, and since not all of your strings are numeric, you can't do a type conversion on the whole array. Also, if you try to do a type conversion just on the parts of the array with "True" and "False", you're not really working with booleans, but with strings. ..and the only ways I know of to change that are to do the eval statement. ..well, you could do this, too:

``````booltext_int = {'True': 1, 'False': 2}
clean = [[float(x) if x[-1].isdigit() else booltext_int[x]
for x in y] for y in data]
``````

..this way you avoid evals, which are inherently insecure. ..but that may not matter, since you may be using a trusted data source.

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