I am having some seemingly trivial trouble with numpy when the array contains string data. I have the following code:

my_array = numpy.empty([1, 2], dtype = str)
my_array[0, 0] = "Cat"
my_array[0, 1] = "Apple"

Now, when I print it with print my_array[0, :], the response I get is ['C', 'A'], which is clearly not the expected output of Cat and Apple. Why is that, and how can I get the right output?


6 Answers 6


Numpy requires string arrays to have a fixed maximum length. When you create an empty array with dtype=str, it sets this maximum length to 1 by default. You can see if you do my_array.dtype; it will show "|S1", meaning "one-character string". Subsequent assignments into the array are truncated to fit this structure.

You can pass an explicit datatype with your maximum length by doing, e.g.:

my_array = numpy.empty([1, 2], dtype="S10")

The "S10" will create an array of length-10 strings. You have to decide how big will be big enough to hold all the data you want to hold.

  • Once I update an element in the list (i.e my_array[0] = 'hello'), does that first element still have "10-characters worth" of memory allocated? Or is it now truly a "S5" object? I assume not, since the dtype` of a numpy array must be consistent across the entire array? Sep 28, 2017 at 22:19
  • @jphollowed: Right, the size is fixed for the whole array, so if you initialize it as S10, it will still use up 10 bytes for each entry, even if the actual strings you store are smaller.
    – BrenBarn
    Sep 29, 2017 at 1:55
  • 1
    Why should I use this instead of dtype=object ? Is it faster ?
    – Boern
    Dec 7, 2017 at 11:18
  • @Boern: Most operations will be faster on a string dtype than object dtype. But in many cases using object dtype is okay if you don't care that much about speed.
    – BrenBarn
    Dec 7, 2017 at 19:20
  • 2
    @orodbhen It's better to have abstracted and leaked then never to have abstracted at all...
    – profPlum
    Apr 26, 2019 at 22:02

I got a "codec error" when I tried to use a non-ascii character with dtype="S10"

You also get an array with binary strings, which confused me.

I think it is better to use:

my_array = numpy.empty([1, 2], dtype="<U10")

Here 'U10' translates to "Unicode string of length 10; little endian format"

  • 2
    This would be an improved answer if it explained what dtype = "<U10" was.
    – eric
    Jun 6, 2019 at 16:58

The numpy string array is limited by its fixed length (length 1 by default). If you're unsure what length you'll need for your strings in advance, you can use dtype=object and get arbitrary length strings for your data elements:

my_array = numpy.empty([1, 2], dtype=object)

I understand there may be efficiency drawbacks to this approach, but I don't have a good reference to support that.

  • are there any caveats (like slower speed) compared to, let's say "S10" ?
    – Boern
    Dec 7, 2017 at 11:17

in case of anyone who's new here, I guess there's another way to do this job for now, just need a little work:

my_array = np.full([1, 2], "", dtype=np.object)

Use np.full instead of np.empty, and create the array with a empty string (type is object).


Another alternative is to initialize as follows:

my_array = np.array([["CAT","APPLE"],['','']], dtype=str)

In other words, first you write a regular array with what you want, then you turn it into a numpy array. However, this will fix your max string length to the length of the longest string at initialization. So if you were to add

my_array[1,0] = 'PINEAPPLE'

then the string stored would be 'PINEA'.


What works best if you are doing a for loop is to start a list comprehension, which will allow you to allocate the right memory.

data = ['CAT', 'APPLE', 'CARROT']
my_array = [name for name in data]

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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