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What is the fastest way to copy data from array b to array a, without modifying the address of array a. I need this because an external library (PyFFTW) uses a pointer to my array that cannot change.

For example:

a = numpy.empty(n, dtype=complex)
for i in xrange(a.size):
  a[i] = b[i]

It is possible to do it without a loop?

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4 Answers 4

up vote 24 down vote accepted

I believe

a = numpy.empty_like (b)
a[:] = b

will make a deep copy quickly. As Funsi mentions, recent versions of numpy also have the copyto function.

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4  
+1. But wouldn't numpy.empty be substantially fast than numpy.zeros? –  mg007 Sep 6 '12 at 11:52
    
I wonder what is the difference between a[:] = b and a = b ? –  M.ElSaka Feb 21 '13 at 16:03
5  
@M.ElSaka a = b merely creates a new reference to b. a[:] = b means "set all elements of a equal to those of b". The difference is important because numpy arrays are mutable types. –  Brian Hawkins Mar 6 '13 at 0:05
5  
@mg007 I ran some tests, which showed empty() is about 10% faster than zeros(). Surprisingly empty_like() is even faster. copyto(a,b) is faster than the array syntax a[:] = b. See gist.github.com/bhawkins/5095558 –  Brian Hawkins Mar 6 '13 at 0:28

numpy version 1.7 has the numpy.copyto function that does what you are looking for:

numpy.copyto(dst, src)

Copies values from one array to another,> broadcasting as necessary.

See: http://docs.scipy.org/doc/numpy-dev/reference/generated/numpy.copyto.html

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This doesn't work for me. I get AttributeError: 'module' object has no attribute 'copyto' –  kalu May 14 at 22:44

you can easy use:

b = 1*a

this is the fastest way, but also have some problems. If you don't define directly the dtype of a and also doesn't check the dtype of b you can get into trouble. For example:

a = np.arange(10)        # dtype = int64
b = 1*a                  # dtype = int64

a = np.arange(10.)       # dtype = float64
b = 1*a                  # dtype = float64

a = np.arange(10)        # dtype = int64
b = 1. * a               # dtype = float64

I hope, I could make the point clear. Sometimes you will have a data type change with just one little operation.

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1  
No. Doing so creates a new array. It is equivalent to b = a.copy(). –  Charles Brunet Jun 22 '11 at 11:26
    
sorry, but I don't get you. What do you mean with create a new array? All the other methods which are presented here have the same behavior. a = numpy.zeros(len(b)) or a = numpy.empty(n,dtype=complex) will also create a new array. –  PateToni Jun 23 '11 at 5:34
1  
Suppose you have a = numpy.empty(1000) . Now, you need to fill a with data, without changing its address in memory. If you do a[0] = 1, you don't recreate an array, you just change the content of the array. –  Charles Brunet Jun 23 '11 at 11:55
    
@CharlesBrunet the array will have to be created at some point. This clever one-liner just do it all in one operation. –  heltonbiker Mar 6 '13 at 0:28
a = numpy.array(b)

is even faster than the suggested solutions up to numpy v1.6 and makes a copy of the array as well. I could however not test it against copyto(a,b), since I don't have the most recent version of numpy.

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