I have an numpy array of form

a = [1,2,3]

which I want to save to a .txt file such that the file looks like:

1 2 3

If I use numpy.savetxt then I get a file like:


There should be a easy solution to this I suppose, any suggestions?

  • 1
    Or you only dealing with 1D arrays? – Benjamin Bannier Mar 5 '12 at 11:05

If numpy >= 1.5, you can do:

# note that the filename is enclosed with double quotes,
# example "filename.txt"

numpy.savetxt("filename", a, newline=" ")


several 1D arrays with same length

a = numpy.array([1,2,3])
b = numpy.array([4,5,6])
numpy.savetxt(filename, (a,b), fmt="%d")

# gives:
# 1 2 3
# 4 5 6

several 1D arrays with variable length

a = numpy.array([1,2,3])
b = numpy.array([4,5])

with open(filename,"w") as f:
    f.write("\n".join(" ".join(map(str, x)) for x in (a,b)))

# gives:
# 1 2 3
# 4 5
  • What if a new identical array is to be added to the file, at next row. How to break the line first line and continue on the second line? – Palle Mar 5 '12 at 16:46
  • 1
    @PatrikT: If you have more than one 1D arrays you can just do numpy.savetxt(filename,(a,b,c)). It saves row wise. But they should have same size. – Avaris Mar 5 '12 at 20:03
  • What if e.g. a is shorter than b and c? How do I save these 3 arrays row wise? – Palle Mar 7 '12 at 13:03
  • @PatrikT: If you have variable length arrays, savetxt is not much of help. It is possible to do but it gets uglier and beats the purpose I think. Just write them normally as BioGeek suggested in a loop. I'll edit my answer to include all those alternatives. – Avaris Mar 7 '12 at 20:25

An alternative answer is to reshape the array so that it has dimensions (1, N) like so:

savetext(filename, a.reshape(1, a.shape[0]))
  • This is exactly what you need if you're dumping readings into a file where every reading is made up of N samples. Perfect answer. – MedoAlmasry May 11 '20 at 0:24
import numpy
a = numpy.array([1,2,3])

with open(r'test.txt', 'w') as f:
    f.write(" ".join(map(str, a)))

I found that the first solution in the accepted answer to be problematic for cases where the newline character is still required. The easiest solution to the problem was doing this:

numpy.savetxt(filename, [a], delimiter='\t')
import numpy as np

a = [1,2,3]    
b = np.array(a).reshape((1,3))    
  • 5
    While this code-only answer may solve the problem at hand, more explanation is necessary to help future users of the site understand how to apply this solution to their situation. – Keyur Potdar Mar 15 '18 at 13:57
  • 1
    Please add some explanation to your answer – Ryan Schaefer Mar 15 '18 at 14:14

I know this is old, but none of these answers solved the root problem of numpy not saving the array row-wise. I found that this one liner did the trick for me:

b = np.matrix(a)
np.savetxt("file", b)

Very very easy: [1,2,3]

A list is like a column.


If you want a list like a row, double corchete:

[[1, 2, 3]]  --->    1, 2, 3


[[1, 2, 3], [4, 5, 6]]  ---> 1, 2, 3
                             4, 5, 6


np.savetxt("file", [['r1c1', 'r1c2'], ['r2c1', 'r2c2']], delimiter=';', fmt='%s')

Note, the comma between square brackets, inner list are elements of the outer list


The numpy.savetxt() method has several parameters which are worth noting:

fmt : str or sequence of strs, optional
    it is used to format the numbers in the array, see the doc for details on formating

delimiter : str, optional
    String or character separating columns

newline : str, optional
    String or character separating lines.

Let's take an example. I have an array of size (M, N), which consists of integer numbers in the range (0, 255). To save the array row-wise and show it nicely, we can use the following code:

import numpy as np

np.savetxt("my_array.txt", my_array, fmt="%4d", delimiter=",", newline="\n")


' '.join(a)

and write this output to a file.

  • 3
    That will give a TypeError: sequence item 0: expected string, numpy.int32 found, so you must first convert to string before joining. – BioGeek Mar 5 '12 at 11:06
  • ' '.join(str(x) for x in a) – st.ph.n Jun 7 '16 at 17:38

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