I have an object of
dtype='<U77' type, consisting of a string of numbers, separated with the spaces:
array('[ 0.20988965 0.05172284 -0.13468404 ... 2.06070718 -0.6160391\n 3. ]', dtype='<U77')
How can I convert it into numpy array?
Even if you wanted to do some kludgy string parsing to try to fix this object, you can't. You've already lost almost all of the original data, and there's no way to get it back just by looking at the string.
... in the middle? That's what happens when you
>>> print(numpy.arange(1001)) [ 0 1 2 ... 998 999 1000]
It looks like you
array on the resulting string. NumPy isn't designed for
array on the printed output isn't how you'd reverse it.
You need to redo the computation that originally produced the array, and pick a better way to save the result, like
So here is a quick solution:
save the original data string as
np.savetxt('filename', data_string), then when loading you get something like the following:
array('[ 0.119871 -0.50688947 0.27891722 0.58804999 -2.03537473 0.63659631\n 1.2 -0.83374409 -1.04955507 -0.6538087 -0.05 -0.23323881\n 1.2 3. 1.2 ]', dtype='<U183')
np.fromstring(c1[1:-2], dtype=float, sep=' ') as a converter, this will come back with a similar numpy array:
array([ 0.119871 , -0.50688947, 0.27891722, 0.58804999, -2.03537473,
0.63659631, 1.2 , -0.83374409, -1.04955507, -0.6538087 ,
-0.05 , -0.23323881, 1.2 , 3. , 1.2 ])