The file looks like above: 2 rows, 1 col numpy.loadtxt() returns
[ 2.76533441 3.30956328]
Please don't tell me use array.transpose() in this case, I need a real solution. Thank you in advance!!
You can always use the reshape command. A single column text file loads as a 1D array which in numpy's case is a row vector.
>>> a array([ 2.76533441, 3.30956328]) >>> a[:,None] array([[ 2.76533441], [ 3.30956328]]) >>> b=np.arange(5)[:,None] >>> b array([, , , , ]) >>> np.savetxt('something.npz',b) >>> np.loadtxt('something.npz') array([ 0., 1., 2., 3., 4.]) >>> np.loadtxt('something.npz').reshape(-1,1) #Another way of doing it array([[ 0.], [ 1.], [ 2.], [ 3.], [ 4.]])
You can check this using the number of dimensions.
data=np.loadtxt('data.npz') if data.ndim==1: data=data[:,None]
np.loadtxt('something.npz',ndmin=2) #Always gives at at least a 2D array.
Although its worth pointing out that if you always have a column of data numpy will always load it as a 1D array. This is more of a feature of numpy arrays rather then a bug I believe.
If you like, you can use
matrix to read from string. Let
test.txt involve the content. Here's a function for your needs:
import numpy as np def my_loadtxt(filename): return np.array(np.matrix(open(filename).read().strip().replace('\n', ';'))) a = my_loadtxt('test.txt') print a
It gives column vectors if the input is a column vector. For the row vectors, it gives row vectors.
I've written a wrapper for
loadtxt to do this and is similar to answer from @petrichor, but I think
matrix can't have a string data format (probably understandably) so and that method doesn't seem to work if you're loading strings (such as column headings).
def my_loadtxt(filename, skiprows=0, usecols=None, dtype=None): d = np.loadtxt(filename, skiprows=skiprows, usecols=usecols, dtype=dtype, unpack=True) if len(d.shape) == 0: d = d.reshape((1, 1)) elif len(d.shape) == 1: d = d.reshape((d.shape, 1)) return d