# Element-wise string concatenation in numpy

Is this a bug?

``````import numpy as np
a1=np.array(['a','b'])
a2=np.array(['E','F'])

In [20]: add(a1,a2)
Out[20]: NotImplemented
``````

I am trying to do element-wise string concatenation. I thought Add() was the way to do it in numpy but obviously it is not working as expected.

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As the name implies, number is for numbers. Python itself has pretty good string operations. Why not just use that? `"".join(["a", "b"])` works fine. –  Keith Mar 31 '12 at 18:29
I was looking at this docs.scipy.org/doc/numpy/reference/routines.char.html –  Dave31415 Mar 31 '12 at 18:39
That's cool. But: "All of them are based on the string methods in the Python standard library.". So if you just use the standard library you can write code that doesn't depend on numpy. –  Keith Mar 31 '12 at 18:44

## 4 Answers

This can be done using numpy.core.defchararray.add. Here is an example:

``````>>> import numpy as np
>>> a1 = np.array(['a', 'b'])
>>> a2 = np.array(['E', 'F'])
>>> np.core.defchararray.add(a1, a2)
array(['aE', 'bF'],
dtype='<U2')
``````

There are other useful string operations available for NumPy data types.

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The `add` string operations you link to gives a `NotImplemented` (as in the question) for numpy 1.6.1 under python 3.2. Do you know from which version is implemented? –  Francesco Montesano Aug 6 '13 at 8:57
@FrancescoMontesano checking with that version combination on Ubuntu 12.04.2 LTS, the example in my answer works as expected. Generally speaking, using `np.add` also raises `NotImplemented` with any version. Ensure you are using `np.core.defchararray.add`. –  Mike T Aug 6 '13 at 9:49
Now I've seen the full signature of `add` in the docs (I missed that before). Anyway, would be nice if numpy would wrap `np.core.defchararray.*` into corresponding numeric ndarray operations. I think its much neater and easy to remember to do `np.add`. –  Francesco Montesano Aug 6 '13 at 10:11

You can use the `chararray` subclass to perform array operations with strings:

``````a1 = np.char.array(['a', 'b'])
a2 = np.char.array(['E', 'F'])

a1 + a2
#chararray(['aE', 'bF'], dtype='|S2')
``````

another nice example:

``````b = np.array([2, 4])
a1*b
#chararray(['aa', 'bbbb'], dtype='|S4')
``````
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Another solution is to convert string arrays into arrays of python of objects so that str.add is called:

``````>>> import numpy as np
>>> a = np.array(['a', 'b', 'c', 'd'], dtype=np.object)
>>> print a+a
array(['aa', 'bb', 'cc', 'dd'], dtype=object)
``````

This is not that slow (less than twice as slow as adding integer arrays).

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This can (and should) be done in pure Python, as `numpy` also uses the Python string manipulation functions internally:

``````>>> a1 = ['a','b']
>>> a2 = ['E','F']
>>> map(''.join, zip(a1, a2))
['aE', 'bF']
``````
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Ok, so the add function I was using is not at top level in numpy. Is either of those faster/better or preferred for any reason? –  Dave31415 Mar 31 '12 at 18:42
This doesn't answer the question. There are times when one might want to do this in numpy, e.g. when working with large arrays of strings. The original poster gave a simple example for which one would use pure Python, but was asking for a numpy solution. –  Thucydides411 Apr 20 '13 at 21:11
@Thucydides411 From what I understood at the time of writing my answer, numpy just used the builtin Python primitives, so I didn't see what advantage that would have. Not sure whether that is true, it seems like it is not. Maybe I misinterpreted the statement "All of them are based on the string methods in the Python standard library." in the docs –  Niklas B. May 6 '14 at 17:02