# Numpy - asarray of a list, dimension not automatically set in the vector

I have a list of numbers

``````l = [ 1 , 3, 5]
``````

I want to convert it to a numpy array vector

``````import numpy as np
vec = np.asarray(l)
``````

But the dimensions of vec is not set

``````vec.shape
``````

I know I can do

``````vec.shape = (vec.shape[0], 1)
``````

But is there any faster, shorter way to set the second dimension to one?

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What's your use case? Are you coming from Matlab? You're getting a 1D array, which let's you forget whether you need column or row vectors, because it just works (in dot products, setting rows or columns of a 2D array...). –  jorgeca Apr 24 '13 at 18:56

``````>>> vec = np.asarray(l).reshape((1,-1))
>>> vec.shape
(1, 3)
``````

I think is what you want ... maybe

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Exactly! Why did you put double parenthesis ((1,-1))? And what does -1 mean? –  user1506145 Apr 24 '13 at 18:59
-1 is the default size so it will work with any size list ... other wise you would need to put the size there (3 in this case ... ) the argument to reshape is a (width,height) tuple ... –  Joran Beasley Apr 24 '13 at 19:00
Actually, `.reshape(1,-1)` also works. –  Warren Weckesser Apr 24 '13 at 19:02
oh Ive always just given it a tuple :P –  Joran Beasley Apr 24 '13 at 19:09
@user1506145 I don't believe this is what the OP wants... shape should be `(3, 1)` to make a column vector. –  askewchan Apr 25 '13 at 1:10

I think an easier way to read this (for me) is to use `np.newaxis`:

``````a = np.array([1,3,5])
a.shape
#(3,)

b = a[np.newaxis,...]
print b
#[[1, 3, 4]]

b.shape
#(1, 3)
``````

But this is not a column vector..., maybe you want:

``````c = a[...,np.newaxis]
print c
#[[1],
# [3],
# [4]]

c.shape
#(3, 1)
``````

You can also use `None` instead of `np.newaxis` wherever you want the new axis:

``````a[...,None]
#[[1],
# [3],
# [4]]
``````
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