# Initializing numpy matrix to something other than zero or one

I have the following code:

``````r = numpy.zeros(shape = (width, height, 9))
``````

It creates a width x height x 9 matrix filled with zeros. Instead, I'd like to know if there's a function or way to initialize them instead to NaN.

Is there any? Without having to resort to manually doing loops and such?

Thanks

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One caveat is that NumPy doesn't have an integer NA value (unlike R). See pandas list of gotchas. Hence `np.nan` goes wrong when converted to int. – smci Jul 28 '13 at 3:31

You rarely need loops for vector operations in numpy. You can create an uninitialized array and assign to all entries at once:

``````>>> a = numpy.empty((3,3,))
>>> a[:] = numpy.NAN
>>> a
array([[ NaN,  NaN,  NaN],
[ NaN,  NaN,  NaN],
[ NaN,  NaN,  NaN]])
``````

I have timed the alternatives `a[:] = numpy.nan` here and `a.fill(numpy.nan)` as posted by Blaenk:

``````\$ python -mtimeit "import numpy as np; a = np.empty((100,100));" "a.fill(np.nan)"
10000 loops, best of 3: 54.3 usec per loop
\$ python -mtimeit "import numpy as np; a = np.empty((100,100));" "a[:] = np.nan"
10000 loops, best of 3: 88.8 usec per loop
``````

The timings show a preference for `ndarray.fill(..)` as the faster alternative. OTOH, I like numpy's convenience implementation where you can assign values to whole slices at the time, the code's intention is very clear.

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I agree that your code's intention is clearer. But thanks for the unbiased timings (or rather, the fact that you still posted them), I appreciate it :) – Jorge Israel Peña Nov 10 '09 at 7:19
I like this one: `a = numpy.empty((3, 3,)) * numpy.nan`. It timed faster than `fill` but slower than the assignment method, but it is a oneliner!! – heltonbiker Apr 30 '12 at 14:09
Please look at this answer: stackoverflow.com/questions/10871220/… – Ivan Jun 3 '12 at 15:15
I prefer the `.fill()` method, but the difference in speeds reduces to practically nothing as the arrays get larger. – naught101 Mar 24 '14 at 11:13

Are you familiar with `numpy.nan`?

You can create your own method such as:

``````def nans(shape, dtype=float):
a = numpy.empty(shape, dtype)
a.fill(numpy.nan)
return a
``````

Then

``````nans([3,4])
``````

would output

``````array([[ NaN,  NaN,  NaN,  NaN],
[ NaN,  NaN,  NaN,  NaN],
[ NaN,  NaN,  NaN,  NaN]])
``````

I found this code in a mailing list thread.

-

Another option is to use `np.full`, an option available in numpy 1.8+

a = np.full([width, height, 9],np.nan)

This is pretty flexible and you can fill it with any other number that you want.

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this is roughly as fast as the accepted answer. – dbliss Sep 16 at 4:56
I'd consider this as the most correct answer since it is eactly what `full` is meant for. `np.empy((x,y))*np.nan` is a good runner-up (and compatibility for old versions of numpy). – travc Sep 21 at 19:38

As said, numpy.empty() is the way to go. However, for objects, fill() might not do exactly what you thing it does:

``````In[36]: a = numpy.empty(5,dtype=object)
In[37]: a.fill([])
In[38]: a
Out[38]: array([[], [], [], [], []], dtype=object)
In[39]: a[0].append(4)
In[40]: a
Out[40]: array([[4], [4], [4], [4], [4]], dtype=object)
``````

One way around can be e.g.:

``````In[41]: a = numpy.empty(5,dtype=object)
In[42]: a[:]= [ [] for x in range(5)]
In[43]: a[0].append(4)
In[44]: a
Out[44]: array([[4], [], [], [], []], dtype=object)
``````
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You can always use multiplication if you don't immediately recall the `.empty` or `.full` methods:

``````>>> np.nan * np.ones(shape=(3,2))
array([[ nan,  nan],
[ nan,  nan],
[ nan,  nan]])
``````

Of course it works with any other numerical value as well:

``````>>> 42 * np.ones(shape=(3,2))
array([[ 42,  42],
[ 42,  42],
[ 42, 42]])
``````

But the @u0b34a0f6ae's accepted answer is 3x faster (CPU cycles, not brain cycles to remember numpy syntax ;):

``````\$ python -mtimeit "import numpy as np; X = np.empty((100,100));" "X[:] = np.nan;"
100000 loops, best of 3: 8.9 usec per loop
(predict)laneh@predict:~/src/predict/predict/webapp\$ master
\$ python -mtimeit "import numpy as np; X = np.ones((100,100));" "X *= np.nan;"
10000 loops, best of 3: 24.9 usec per loop
``````
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