In NumPy, I can get the size (in bytes) of a particular data type by:




For example:

np.float32(5).itemsize #4
np.float32(5).nbytes   #4

I have two questions. First, is there a way to get this information without creating an instance of the datatype? Second, what's the difference between itemsize and nbytes?


You need an instance of the dtype to get the itemsize, but you shouldn't need an instance of the ndarray. (As will become clear in a second, nbytes is a property of the array, not the dtype.)


print np.dtype(float).itemsize
print np.dtype(np.float32).itemsize
print np.dtype('|S10').itemsize

As far as the difference between itemsize and nbytes, nbytes is just x.itemsize * x.size.


In [16]: print np.arange(100).itemsize

In [17]: print np.arange(100).nbytes
  • 1
    Good answer. In fact, I'm not using an array at this point. In my real use-case, I have a datafile format that is record based -- It has a header with 240 bytes and then the data. The size of the data is determined by the number of elements (which is read from the header) but the data-type isn't stored :-(. Ultimately, I want the user to be able to pass dtype=... and from that datatype, I'd get the sizeof each data element and so I can know the size of the data. That way, I can seek to any record in the file and read it directly. It looks like np.dtype is the way to go... thanks. – mgilson Jun 6 '13 at 23:49
  • 1
    FWIW, It seems confusing that nbytes would be an instance of the data type when it is really only particularly useful in an array ... Of course, I suppose that I don't know the numpy data model well enough to comment on that too much ... Anyway, Thanks. This is what I needed. – mgilson Jun 6 '13 at 23:53
  • I agree, numpy's scalars (e.g. np.float32(5)) can be confusing. The difference between a numpy scalar and a 0-d numpy array (e.g. np.array(5, dtype=np.float32)) is even more confusing. (Try indexing the 0-d array!) The reason numpy scalars exist and have the same attributes as a normal ndarray is so things like x[5].abs() will work correctly for 1d arrays. It makes sense in the "broader picture" but it causes a lot of confusion. – Joe Kington Jun 7 '13 at 15:26

Looking at the NumPy C source file, this is the comment:

size : int
    Number of elements in the array.
itemsize : int
    The memory use of each array element in bytes.
nbytes : int
    The total number of bytes required to store the array data,
    i.e., ``itemsize * size``.

So in NumPy:

>>> x = np.zeros((3, 5, 2), dtype=np.float64)
>>> x.itemsize

So .nbytes is a shortcut for:

>>> np.prod(x.shape)*x.itemsize
>>> x.nbytes

So, to get a base size of a NumPy array without creating an instance of it, you can do this (assuming a 3x5x2 array of doubles for example):

>>> np.float64(1).itemsize * np.prod([3,5,2])

However, important note from the NumPy help file:

|  nbytes
|      Total bytes consumed by the elements of the array.
|      Notes
|      -----
|      Does not include memory consumed by non-element attributes of the
|      array object.
  • You created an instance via np.float64(1) which is what I was trying to avoid. The reason I wanted to avoid it is because when reading that line, a user might say "why 1?" ... when in fact, 1 isn't special ... It's just that I need an instance of np.float64 to get the itemsize ... However, +1 for answering the second question about itemsize vs nbytes (and reading the source)... – mgilson Jun 6 '13 at 23:46
  • 1
    You can do np.float64().itemsize as well. However, if you time the alternatives np.dtype(np.float64).itemsize is a bit faster than np.float64().itemsize Not so much to matter, but enough. It boils down to what you consider more readable I suppose. – dawg Jun 7 '13 at 15:24
  • Interesting ... Thanks for pointing out that np.float64() works as well. – mgilson Jun 7 '13 at 15:27

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