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

datatype(...).itemsize

or:

datatype(...).nbytes

e.g.:

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

I have 2 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 ...

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2 Answers 2

up vote 13 down vote accepted

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.)

E.g.

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.

E.g.

In [16]: print np.arange(100).itemsize
8

In [17]: print np.arange(100).nbytes
800
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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
8

So .nbytes is a shortcut for:

>>> np.prod(x.shape)*x.itemsize
240
>>> x.nbytes
240

So, to get a base size of 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])
240

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.   
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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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