# Print an integer array as hexadecimal numbers

I have an array created by using

``````array1 = np.array([[25,  160,   154, 233],
[61, 244,  198,  248],
[227, 226, 141, 72 ],
[190, 43,  42, 8]],np.int) ;
``````

which displays as

``````[[25,  160, 154, 233]
[61,  244, 198, 248]
[227, 226, 141,  72]
[190,  43,  42 ,  8]]
``````

How do I display this array as hexadecimal numbers like this:

``````[[0x04,  0xe0,  0x48, 0x28]
[0x66,  0xcb,  0xf8, 0x06]
[0x81,  0x19,  0xd3, 0x26]
[0xe5,  0x9a,  0x7a, 0x4c]]
``````

Note: numbers in hex may not be real conversions of numbers in int. I have filled hex array just to give example of what I need.

-
What version of numpy are you using (`np.version.version`)? –  Steven Rumbalski Feb 25 '12 at 21:25

You can set the print options for numpy to do this.

``````import numpy as np
np.set_printoptions(formatter={'int':hex})
np.array([1,2,3,4,5])
``````

gives

``````array([0x1L, 0x2L, 0x3L, 0x4L, 0x5L])
``````

The L at the end is just because I am on a 64-bit platform and it is sending longs to the formatter. To fix this you can use

``````np.set_printoptions(formatter={'int':lambda x:hex(int(x))})
``````
-
FYI for the OP. The `formatter` parameter for `set_printoptions` appears in the 2.0 docs, but not in 1.6. So I imagine it's a new feature. If you have an older version, you could roll your own formatting function and supply it to numpy with `numpy.set_string_function`. The function you supply would need to format the whole array rather than a single item like in Justin's answer. –  Steven Rumbalski Feb 25 '12 at 22:42

Python has a built-in hex function for converting integers to their hex representation (a string). You can use numpy.vectorize to apply it over the elements of the multidimensional array.

``````>>> import numpy as np
>>> A = np.array([[1,2],[3,4]])
>>> vhex = np.vectorize(hex)
>>> vhex(A)
array([['0x1', '0x2'],
['0x3', '0x4']],
dtype='<U8')
``````

There might be a built-in method of doing this with numpy which would be a better choice if speed is an issue.

-
-0, due to the existence of `numpy.set_printoptions`. –  Steven Rumbalski Feb 25 '12 at 21:24
The vectorize is handy when only an occasional hex string is needed. Otherwise would need to original=get_printoptions(), set_printoptions(hex), print hex, set_printoptions(original) –  David Poole Sep 20 '12 at 14:14

This one-liner should do the job:

``````print '[' + '],\n['.join(','.join(hex(n) for n in ar) for ar in array1) + ']'
``````
-
-0, due to the existence of `numpy.set_printoptions`. –  Steven Rumbalski Feb 25 '12 at 21:24
Yes, that's definitely a better solution. Question asker, please see Justin Peel's answer, and don't use mine. –  Gordon Bailey Feb 25 '12 at 21:27

It should be possible to get the behavior you want with `numpy.set_printoptions`, using the `formatter` keyword arg. It takes a dictionary with a type specification (i.e. `'int'`) as key and a callable object returning the string to print. I'd insert code but my old version of `numpy` doesn't have the functionality yet. (ugh.)

-

Just throwing in my two cents you could do this pretty simply using list comprehension if it's always a 2d array like that

``````a = [[1,2],[3,4]]
print [map(hex, l) for l in a]
``````

which gives you `[['0x1', '0x2'], ['0x3', '0x4']]`

-

If what you're looking for it's just for display you can do something like this:

``````>>> a = [6, 234, 8, 9, 10, 1234, 555, 98]
>>> print '\n'.join([hex(i) for i in a])
0x6
0xea
0x8
0x9
0xa
0x4d2
0x22b
0x62
``````
-
``````array1_hex = np.array([[hex(int(x)) for x in y] for y in array1])