# Sorting arrays in NumPy by column

How can I sort an array in NumPy by the nth column?

For example,

``````a = array([[9, 2, 3],
[4, 5, 6],
[7, 0, 5]])
``````

I'd like to sort rows by the second column, such that I get back:

``````array([[7, 0, 5],
[9, 2, 3],
[4, 5, 6]])
``````
• This is a really bad example since `np.sort(a, axis=0)` would be a satisfactory solution for the given matrix. I suggested an edit with a better example but was rejected, although actually the question would be much more clear. The example should be something like `a = numpy.array([[1, 2, 3], [6, 5, 2], [3, 1, 1]])` with desired output `array([[3, 1, 1], [1, 2, 3], [6, 5, 2]])` – David Aug 4 '17 at 16:16
• David, you don't get the point of the question. He wants to keep the order within each row the same. – marcorossi Nov 8 '17 at 23:22
• @marcorossi I did get the point, but the example was very badly formulated because, as I said, there were multiple possible answers (which, however, wouldn't have satisfied the OP's request). A later edit based on my comment has indeed been approved (funny that mine got rejected, though). So now everything is fine. – David Jun 9 '20 at 9:51
• If the answers could be sorted by order of decreasing interest... – mins Apr 8 at 14:18
• I think using a structured array could be a way to make the code more readable. I attached a possible answer here: stackoverflow.com/a/67788660/13890678 – lhoupert Jun 1 at 12:15

@steve's answer is actually the most elegant way of doing it.

For the "correct" way see the order keyword argument of numpy.ndarray.sort

However, you'll need to view your array as an array with fields (a structured array).

The "correct" way is quite ugly if you didn't initially define your array with fields...

As a quick example, to sort it and return a copy:

``````In [1]: import numpy as np

In [2]: a = np.array([[1,2,3],[4,5,6],[0,0,1]])

In [3]: np.sort(a.view('i8,i8,i8'), order=['f1'], axis=0).view(np.int)
Out[3]:
array([[0, 0, 1],
[1, 2, 3],
[4, 5, 6]])
``````

To sort it in-place:

``````In [6]: a.view('i8,i8,i8').sort(order=['f1'], axis=0) #<-- returns None

In [7]: a
Out[7]:
array([[0, 0, 1],
[1, 2, 3],
[4, 5, 6]])
``````

@Steve's really is the most elegant way to do it, as far as I know...

The only advantage to this method is that the "order" argument is a list of the fields to order the search by. For example, you can sort by the second column, then the third column, then the first column by supplying order=['f1','f2','f0'].

• In my numpy 1.6.1rc1, it raises `ValueError: new type not compatible with array.` – Clippit Oct 5 '11 at 17:40
• Would it make sense to file a feature request that the "correct" way be made less ugly? – endolith Aug 21 '13 at 3:15
• What if the values in the array are `float`? Should I change anything? – Marco Mar 23 '14 at 9:23
• One major advantage of this method over Steve's is that it allows very large arrays to be sorted in place. For a sufficiently large array, the indices returned by `np.argsort` may themselve take up quite a lot of memory, and on top of that, indexing with an array will also generate a copy of the array that is being sorted. – ali_m Jul 11 '15 at 23:38
• Can someone explain the `'i8,i8,i8'`? This is for each column or each row? What should change if sorting a different dtype? How do I find out how many bits are being used? Thank you – evn Nov 28 '20 at 23:52

To sort by the second column of `a`:

``````a[a[:, 1].argsort()]
``````
• This is not clear, what is `1` in here? the index to be sorted by? – orezvani Apr 14 '14 at 5:30
• `[:,1]` indicates the second column of `a`. – Steve Tjoa Apr 17 '14 at 20:49
• If you want the reverse sort, modify this to be `a[a[:,1].argsort()[::-1]]` – Steven C. Howell May 14 '15 at 14:49
• I find this easier to read: `ind = np.argsort( a[:,1] ); a = a[ind]` – poppie Feb 13 '17 at 3:40
• a[a[:,k].argsort()] is the same as a[a[:,k].argsort(),:]. This generalizes to the other dimension (sort cols using a row): a[:,a[j,:].argsort()] (hope i typed that right.) – bean Feb 4 '18 at 17:40

You can sort on multiple columns as per Steve Tjoa's method by using a stable sort like mergesort and sorting the indices from the least significant to the most significant columns:

``````a = a[a[:,2].argsort()] # First sort doesn't need to be stable.
a = a[a[:,1].argsort(kind='mergesort')]
a = a[a[:,0].argsort(kind='mergesort')]
``````

This sorts by column 0, then 1, then 2.

• Why does First Sort not need to be stable? – Little Bobby Tables Oct 26 '16 at 20:59
• Good question - stable means that when there's a tie you maintain the original order, and the original order of the unsorted file is irrelevant. – J.J Oct 27 '16 at 13:06
• This seems like a really super important point. having a list that silently doesn’t sort would be bad. – Clumsy cat May 21 '18 at 9:07

In case someone wants to make use of sorting at a critical part of their programs here's a performance comparison for the different proposals:

``````import numpy as np
table = np.random.rand(5000, 10)

%timeit table.view('f8,f8,f8,f8,f8,f8,f8,f8,f8,f8').sort(order=['f9'], axis=0)
1000 loops, best of 3: 1.88 ms per loop

%timeit table[table[:,9].argsort()]
10000 loops, best of 3: 180 µs per loop

import pandas as pd
df = pd.DataFrame(table)
%timeit df.sort_values(9, ascending=True)
1000 loops, best of 3: 400 µs per loop
``````

So, it looks like indexing with argsort is the quickest method so far...

From the Python documentation wiki, I think you can do:

``````a = ([[1, 2, 3], [4, 5, 6], [0, 0, 1]]);
a = sorted(a, key=lambda a_entry: a_entry[1])
print a
``````

The output is:

``````[[[0, 0, 1], [1, 2, 3], [4, 5, 6]]]
``````
• With this solution, one gets a list instead of a NumPy array, so this might not always be convenient (takes more memory, is probably slower, etc.). – Eric O Lebigot Sep 28 '11 at 20:13
• this "solution" is slower by the most-upvoted answer by a factor of ... well, close to infinity actually – Jivan Jun 18 '20 at 12:03
• @Jivan Actually, this solution is faster than the most-upvoted answer by a factor of 5 imgur.com/a/IbqtPBL – Antony Hatchkins Nov 26 '20 at 16:43

From the NumPy mailing list, here's another solution:

``````>>> a
array([[1, 2],
[0, 0],
[1, 0],
[0, 2],
[2, 1],
[1, 0],
[1, 0],
[0, 0],
[1, 0],
[2, 2]])
>>> a[np.lexsort(np.fliplr(a).T)]
array([[0, 0],
[0, 0],
[0, 2],
[1, 0],
[1, 0],
[1, 0],
[1, 0],
[1, 2],
[2, 1],
[2, 2]])
``````
• The correct generalization is `a[np.lexsort(a.T[cols])]`. where `cols=[1]` in the original question. – Radio Controlled Apr 11 '18 at 13:12

My Problem:

I want to calculate an SVD and need to sort my eigenvalues in descending order. But I want to keep the mapping between eigenvalues and eigenvectors. My eigenvalues were in the first row and the corresponding eigenvector below it in the same column.

So I want to sort a two-dimensional array column-wise by the first row in descending order.

My Solution

``````a = a[::, a[0,].argsort()[::-1]]
``````

So how does this work?

`a[0,]` is just the first row I want to sort by.

Now I use argsort to get the order of indices.

I use `[::-1]` because I need descending order.

Lastly I use `a[::, ...]` to get a view with the columns in the right order.

``````import numpy as np
a=np.array([[21,20,19,18,17],[16,15,14,13,12],[11,10,9,8,7],[6,5,4,3,2]])
y=np.argsort(a[:,2],kind='mergesort')# a[:,2]=[19,14,9,4]
a=a[y]
print(a)
``````

Desired output is `[[6,5,4,3,2],[11,10,9,8,7],[16,15,14,13,12],[21,20,19,18,17]]`

note that `argsort(numArray)` returns the indices of an `numArray` as it was supposed to be arranged in a sorted manner.

example

``````x=np.array([8,1,5])
z=np.argsort(x) #[1,3,0] are the **indices of the predicted sorted array**
print(x[z]) #boolean indexing which sorts the array on basis of indices saved in z
``````

answer would be `[1,5,8]`

• You sure its not [1,2,0]? – adir abargil Dec 20 '20 at 6:04

A little more complicated `lexsort` example - descending on the 1st column, secondarily ascending on the 2nd. The tricks with `lexsort` are that it sorts on rows (hence the `.T`), and gives priority to the last.

``````In [120]: b=np.array([[1,2,1],[3,1,2],[1,1,3],[2,3,4],[3,2,5],[2,1,6]])
In [121]: b
Out[121]:
array([[1, 2, 1],
[3, 1, 2],
[1, 1, 3],
[2, 3, 4],
[3, 2, 5],
[2, 1, 6]])
In [122]: b[np.lexsort(([1,-1]*b[:,[1,0]]).T)]
Out[122]:
array([[3, 1, 2],
[3, 2, 5],
[2, 1, 6],
[2, 3, 4],
[1, 1, 3],
[1, 2, 1]])
``````

Here is another solution considering all columns (more compact way of J.J's answer);

``````ar=np.array([[0, 0, 0, 1],
[1, 0, 1, 0],
[0, 1, 0, 0],
[1, 0, 0, 1],
[0, 0, 1, 0],
[1, 1, 0, 0]])
``````

Sort with lexsort,

``````ar[np.lexsort(([ar[:, i] for i in range(ar.shape[1]-1, -1, -1)]))]
``````

Output:

``````array([[0, 0, 0, 1],
[0, 0, 1, 0],
[0, 1, 0, 0],
[1, 0, 0, 1],
[1, 0, 1, 0],
[1, 1, 0, 0]])
``````

Simply using sort, use coloumn number based on which you want to sort.

``````a = np.array([1,1], [1,-1], [-1,1], [-1,-1]])
print (a)
a=a.tolist()
a = np.array(sorted(a, key=lambda a_entry: a_entry[0]))
print (a)
``````

It is an old question but if you need to generalize this to a higher than 2 dimension arrays, here is the solution than can be easily generalized:

``````np.einsum('ij->ij', a[a[:,1].argsort(),:])
``````

This is an overkill for two dimensions and `a[a[:,1].argsort()]` would be enough per @steve's answer, however that answer cannot be generalized to higher dimensions. You can find an example of 3D array in this question.

Output:

``````[[7 0 5]
[9 2 3]
[4 5 6]]
``````

#for sorting along column 1

``````indexofsort=np.argsort(dataset[:,0],axis=-1,kind='stable')
dataset   = dataset[indexofsort,:]
``````
``````def sort_np_array(x, column=None, flip=False):
x = x[np.argsort(x[:, column])]
if flip:
x = np.flip(x, axis=0)
return x
``````

Array in the original question:

``````a = np.array([[9, 2, 3],
[4, 5, 6],
[7, 0, 5]])
``````

The result of the `sort_np_array` function as expected by the author of the question:

``````sort_np_array(a, column=1, flip=False)
``````
``````[2]: array([[7, 0, 5],
[9, 2, 3],
[4, 5, 6]])
``````

Thanks to this post: https://stackoverflow.com/a/5204280/13890678

I found a more "generic" answer using structured array. I think one advantage of this method is that the code is easier to read.

``````import numpy as np
a = np.array([[9, 2, 3],
[4, 5, 6],
[7, 0, 5]])

struct_a = np.core.records.fromarrays(
a.transpose(), names="col1, col2, col3", formats="i8, i8, i8"
)
struct_a.sort(order="col2")

print(struct_a)
``````
``````[(7, 0, 5) (9, 2, 3) (4, 5, 6)]
``````