How do you rotate a two dimensional array?

Inspired by Raymond Chen's post, say you have a 4x4 two dimensional array, write a function that rotates it 90 degrees. Raymond links to a solution in pseudo code, but I'd like to see some real world stuff.






Becomes:






Update: Nick's answer is the most straightforward, but is there a way to do it better than n^2? What if the matrix was 10000x10000?

• How could you possibly get away with less than n^2? All elements must be read and set, and there are n^2 elements Mar 14 '09 at 19:06
• May 15 '09 at 6:32
• What is your n? You don't say if the 2D array is square (it's not in the general case! e.g a vector is a matrix with one dimension of 1), yet you seem to imply that n is the width and height, and have therefore n² elements. It would make more sense to have n be the number of elements, with n=w×h. Jan 6 '10 at 22:34
• Here is a fast way of doing it: store the row and column indices (say i and j). Transpose takes constant time (just swap the indices :). You can do the same with rotations (play with indices).
– mrk
Oct 7 '13 at 19:29
• In case n^2 is not feasible. You can create an interface which access each element. Then given (i, j), apply rotation to (i, j) access the rotated element and return. Might not be the best soln but works. Dec 8 '16 at 5:04

O(n^2) time and O(1) space algorithm ( without any workarounds and hanky-panky stuff! )

Rotate by +90:

1. Transpose
2. Reverse each row

Rotate by -90:

Method 1 :

1. Transpose
2. Reverse each column

Method 2 :

1. Reverse each row
2. Transpose

Rotate by +180:

Method 1: Rotate by +90 twice

Method 2: Reverse each row and then reverse each column (Transpose)

Rotate by -180:

Method 1: Rotate by -90 twice

Method 2: Reverse each column and then reverse each row

Method 3: Rotate by +180 as they are same

• This was very helpful for me; I was able to write an algorithm once I knew the "[pseudo-]code version" of this operation. Thanks!
– duma
Nov 16 '12 at 15:49
• One of my favorite SO answers of all time. Very instructive!
– user67416
Apr 4 '13 at 2:49
• Here's a JavaScript implementation JSFiddle if anyone is interested. Apr 25 '14 at 10:43
• Rotate by -90: (1) Reverse each row; (2) Transpose. Haskell: rotateCW = map reverse . transpose and rotateCCW = transpose . map reverse Sep 8 '14 at 17:01
• What's the difference between rotating 180 and -180? May 21 '17 at 8:47

I’d like to add a little more detail. In this answer, key concepts are repeated, the pace is slow and intentionally repetitive. The solution provided here is not the most syntactically compact, it is however, intended for those who wish to learn what matrix rotation is and the resulting implementation.

Firstly, what is a matrix? For the purposes of this answer, a matrix is just a grid where the width and height are the same. Note, the width and height of a matrix can be different, but for simplicity, this tutorial considers only matrices with equal width and height (square matrices). And yes, matrices is the plural of matrix.

Example matrices are: 2×2, 3×3 or 5×5. Or, more generally, N×N. A 2×2 matrix will have 4 squares because 2×2=4. A 5×5 matrix will have 25 squares because 5×5=25. Each square is called an element or entry. We’ll represent each element with a period (.) in the diagrams below:

2×2 matrix

. .
. .

3×3 matrix

. . .
. . .
. . .

4×4 matrix

. . . .
. . . .
. . . .
. . . .

So, what does it mean to rotate a matrix? Let’s take a 2×2 matrix and put some numbers in each element so the rotation can be observed:

0 1
2 3

Rotating this by 90 degrees gives us:

2 0
3 1

We literally turned the whole matrix once to the right just like turning the steering wheel of a car. It may help to think of “tipping” the matrix onto its right side. We want to write a function, in Python, that takes a matrix and rotates it once to the right. The function signature will be:

def rotate(matrix):
# Algorithm goes here.

The matrix will be defined using a two-dimensional array:

matrix = [
[0,1],
[2,3]
]

Therefore the first index position accesses the row. The second index position accesses the column:

matrix[row][column]

We’ll define a utility function to print a matrix.

def print_matrix(matrix):
for row in matrix:
print row

One method of rotating a matrix is to do it a layer at a time. But what is a layer? Think of an onion. Just like the layers of an onion, as each layer is removed, we move towards the center. Other analogies is a Matryoshka doll or a game of pass-the-parcel.

The width and height of a matrix dictate the number of layers in that matrix. Let’s use different symbols for each layer:

A 2×2 matrix has 1 layer

. .
. .

A 3×3 matrix has 2 layers

. . .
. x .
. . .

A 4×4 matrix has 2 layers

. . . .
. x x .
. x x .
. . . .

A 5×5 matrix has 3 layers

. . . . .
. x x x .
. x O x .
. x x x .
. . . . .

A 6×6 matrix has 3 layers

. . . . . .
. x x x x .
. x O O x .
. x O O x .
. x x x x .
. . . . . .

A 7×7 matrix has 4 layers

. . . . . . .
. x x x x x .
. x O O O x .
. x O - O x .
. x O O O x .
. x x x x x .
. . . . . . .

You may notice that incrementing the width and height of a matrix by one, does not always increase the number of layers. Taking the above matrices and tabulating the layers and dimensions, we see the number of layers increases once for every two increments of width and height:

+-----+--------+
| N×N | Layers |
+-----+--------+
| 1×1 |      1 |
| 2×2 |      1 |
| 3×3 |      2 |
| 4×4 |      2 |
| 5×5 |      3 |
| 6×6 |      3 |
| 7×7 |      4 |
+-----+--------+

However, not all layers need rotating. A 1×1 matrix is the same before and after rotation. The central 1×1 layer is always the same before and after rotation no matter how large the overall matrix:

+-----+--------+------------------+
| N×N | Layers | Rotatable Layers |
+-----+--------+------------------+
| 1×1 |      1 |                0 |
| 2×2 |      1 |                1 |
| 3×3 |      2 |                1 |
| 4×4 |      2 |                2 |
| 5×5 |      3 |                2 |
| 6×6 |      3 |                3 |
| 7×7 |      4 |                3 |
+-----+--------+------------------+

Given N×N matrix, how can we programmatically determine the number of layers we need to rotate? If we divide the width or height by two and ignore the remainder we get the following results.

+-----+--------+------------------+---------+
| N×N | Layers | Rotatable Layers |   N/2   |
+-----+--------+------------------+---------+
| 1×1 |      1 |                0 | 1/2 = 0 |
| 2×2 |      1 |                1 | 2/2 = 1 |
| 3×3 |      2 |                1 | 3/2 = 1 |
| 4×4 |      2 |                2 | 4/2 = 2 |
| 5×5 |      3 |                2 | 5/2 = 2 |
| 6×6 |      3 |                3 | 6/2 = 3 |
| 7×7 |      4 |                3 | 7/2 = 3 |
+-----+--------+------------------+---------+

Notice how N/2 matches the number of layers that need to be rotated? Sometimes the number of rotatable layers is one less the total number of layers in the matrix. This occurs when the innermost layer is formed of only one element (i.e. a 1×1 matrix) and therefore need not be rotated. It simply gets ignored.

We will undoubtedly need this information in our function to rotate a matrix, so let’s add it now:

def rotate(matrix):
size = len(matrix)
# Rotatable layers only.
layer_count = size / 2

Now we know what layers are and how to determine the number of layers that actually need rotating, how do we isolate a single layer so we can rotate it? Firstly, we inspect a matrix from the outermost layer, inwards, to the innermost layer. A 5×5 matrix has three layers in total and two layers that need rotating:

. . . . .
. x x x .
. x O x .
. x x x .
. . . . .

Let’s look at columns first. The position of the columns defining the outermost layer, assuming we count from 0, are 0 and 4:

+--------+-----------+
| Column | 0 1 2 3 4 |
+--------+-----------+
|        | . . . . . |
|        | . x x x . |
|        | . x O x . |
|        | . x x x . |
|        | . . . . . |
+--------+-----------+

0 and 4 are also the positions of the rows for the outermost layer.

+-----+-----------+
| Row |           |
+-----+-----------+
|   0 | . . . . . |
|   1 | . x x x . |
|   2 | . x O x . |
|   3 | . x x x . |
|   4 | . . . . . |
+-----+-----------+

This will always be the case since the width and height are the same. Therefore we can define the column and row positions of a layer with just two values (rather than four).

Moving inwards to the second layer, the position of the columns are 1 and 3. And, yes, you guessed it, it’s the same for rows. It’s important to understand we had to both increment and decrement the row and column positions when moving inwards to the next layer.

+-----------+---------+---------+---------+
|   Layer   |  Rows   | Columns | Rotate? |
+-----------+---------+---------+---------+
| Outermost | 0 and 4 | 0 and 4 | Yes     |
| Inner     | 1 and 3 | 1 and 3 | Yes     |
| Innermost | 2       | 2       | No      |
+-----------+---------+---------+---------+

So, to inspect each layer, we want a loop with both increasing and decreasing counters that represent moving inwards, starting from the outermost layer. We’ll call this our ‘layer loop’.

def rotate(matrix):
size = len(matrix)
layer_count = size / 2

for layer in range(0, layer_count):
first = layer
last = size - first - 1
print 'Layer %d: first: %d, last: %d' % (layer, first, last)

# 5x5 matrix
matrix = [
[ 0, 1, 2, 3, 4],
[ 5, 6, 6, 8, 9],
[10,11,12,13,14],
[15,16,17,18,19],
[20,21,22,23,24]
]

rotate(matrix)

The code above loops through the (row and column) positions of any layers that need rotating.

Layer 0: first: 0, last: 4
Layer 1: first: 1, last: 3

We now have a loop providing the positions of the rows and columns of each layer. The variables first and last identify the index position of the first and last rows and columns. Referring back to our row and column tables:

+--------+-----------+
| Column | 0 1 2 3 4 |
+--------+-----------+
|        | . . . . . |
|        | . x x x . |
|        | . x O x . |
|        | . x x x . |
|        | . . . . . |
+--------+-----------+

+-----+-----------+
| Row |           |
+-----+-----------+
|   0 | . . . . . |
|   1 | . x x x . |
|   2 | . x O x . |
|   3 | . x x x . |
|   4 | . . . . . |
+-----+-----------+

So we can navigate through the layers of a matrix. Now we need a way of navigating within a layer so we can move elements around that layer. Note, elements never ‘jump’ from one layer to another, but they do move within their respective layers.

Rotating each element in a layer rotates the entire layer. Rotating all layers in a matrix rotates the entire matrix. This sentence is very important, so please try your best to understand it before moving on.

Now, we need a way of actually moving elements, i.e. rotate each element, and subsequently the layer, and ultimately the matrix. For simplicity, we’ll revert to a 3x3 matrix — that has one rotatable layer.

0 1 2
3 4 5
6 7 8

Our layer loop provides the indexes of the first and last columns, as well as first and last rows:

+-----+-------+
| Col | 0 1 2 |
+-----+-------+
|     | 0 1 2 |
|     | 3 4 5 |
|     | 6 7 8 |
+-----+-------+

+-----+-------+
| Row |       |
+-----+-------+
|   0 | 0 1 2 |
|   1 | 3 4 5 |
|   2 | 6 7 8 |
+-----+-------+

Because our matrices are always square, we need just two variables, first and last, since index positions are the same for rows and columns.

def rotate(matrix):
size = len(matrix)
layer_count = size / 2

# Our layer loop i=0, i=1, i=2
for layer in range(0, layer_count):

first = layer
last = size - first - 1

# We want to move within a layer here.

The variables first and last can easily be used to reference the four corners of a matrix. This is because the corners themselves can be defined using various permutations of first and last (with no subtraction, addition or offset of those variables):

+---------------+-------------------+-------------+
| Corner        | Position          | 3x3 Values  |
+---------------+-------------------+-------------+
| top left      | (first, first)    | (0,0)       |
| top right     | (first, last)     | (0,2)       |
| bottom right  | (last, last)      | (2,2)       |
| bottom left   | (last, first)     | (2,0)       |
+---------------+-------------------+-------------+

For this reason, we start our rotation at the outer four corners — we’ll rotate those first. Let’s highlight them with *.

* 1 *
3 4 5
* 7 *

We want to swap each * with the * to the right of it. So let’s go ahead a print out our corners defined using only various permutations of first and last:

def rotate(matrix):
size = len(matrix)
layer_count = size / 2
for layer in range(0, layer_count):

first = layer
last = size - first - 1

top_left = (first, first)
top_right = (first, last)
bottom_right = (last, last)
bottom_left = (last, first)

print 'top_left: %s' % (top_left)
print 'top_right: %s' % (top_right)
print 'bottom_right: %s' % (bottom_right)
print 'bottom_left: %s' % (bottom_left)

matrix = [
[0, 1, 2],
[3, 4, 5],
[6, 7, 8]
]

rotate(matrix)

Output should be:

top_left: (0, 0)
top_right: (0, 2)
bottom_right: (2, 2)
bottom_left: (2, 0)

Now we could quite easily swap each of the corners from within our layer loop:

def rotate(matrix):
size = len(matrix)
layer_count = size / 2
for layer in range(0, layer_count):

first = layer
last = size - first - 1

top_left = matrix[first][first]
top_right = matrix[first][last]
bottom_right = matrix[last][last]
bottom_left = matrix[last][first]

# bottom_left -> top_left
matrix[first][first] = bottom_left
# top_left -> top_right
matrix[first][last] = top_left
# top_right -> bottom_right
matrix[last][last] = top_right
# bottom_right -> bottom_left
matrix[last][first] = bottom_right

print_matrix(matrix)
print '---------'
rotate(matrix)
print_matrix(matrix)

Matrix before rotating corners:

[0, 1, 2]
[3, 4, 5]
[6, 7, 8]

Matrix after rotating corners:

[6, 1, 0]
[3, 4, 5]
[8, 7, 2]

Great! We have successfully rotated each corner of the matrix. But, we haven’t rotated the elements in the middle of each layer. Clearly we need a way of iterating within a layer.

The problem is, the only loop in our function so far (our layer loop), moves to the next layer on each iteration. Since our matrix has only one rotatable layer, the layer loop exits after rotating only the corners. Let’s look at what happens with a larger, 5×5 matrix (where two layers need rotating). The function code has been omitted, but it remains the same as above:

matrix = [
[0, 1, 2, 3, 4],
[5, 6, 7, 8, 9],
[10, 11, 12, 13, 14],
[15, 16, 17, 18, 19],
[20, 21, 22, 23, 24]
]
print_matrix(matrix)
print '--------------------'
rotate(matrix)
print_matrix(matrix)

The output is:

[20,  1,  2,  3,  0]
[ 5, 16,  7,  6,  9]
[10, 11, 12, 13, 14]
[15, 18, 17,  8, 19]
[24, 21, 22, 23,  4]

It shouldn’t be a surprise that the corners of the outermost layer have been rotated, but, you may also notice the corners of the next layer (inwards) have also been rotated. This makes sense. We’ve written code to navigate through layers and also to rotate the corners of each layer. This feels like progress, but unfortunately we must take a step back. It’s just no good moving onto the next layer until the previous (outer) layer has been fully rotated. That is, until each element in the layer has been rotated. Rotating only the corners won’t do!

Take a deep breath. We need another loop. A nested loop no less. The new, nested loop, will use the first and last variables, plus an offset to navigate within a layer. We’ll call this new loop our ‘element loop’. The element loop will visit each element along the top row, each element down the right side, each element along the bottom row and each element up the left side.

• Moving forwards along the top row requires the column index to be incremented.
• Moving down the right side requires the row index to be incremented.
• Moving backwards along the bottom requires the column index to be decremented.
• Moving up the left side requires the row index to be decremented.

This sounds complex, but it’s made easy because the number of times we increment and decrement to achieve the above remains the same along all four sides of the matrix. For example:

• Move 1 element across the top row.
• Move 1 element down the right side.
• Move 1 element backwards along the bottom row.
• Move 1 element up the left side.

This means we can use a single variable in combination with the first and last variables to move within a layer. It may help to note that moving across the top row and down the right side both require incrementing. While moving backwards along the bottom and up the left side both require decrementing.

def rotate(matrix):
size = len(matrix)
layer_count = size / 2

# Move through layers (i.e. layer loop).
for layer in range(0, layer_count):

first = layer
last = size - first - 1

# Move within a single layer (i.e. element loop).
for element in range(first, last):

offset = element - first

# 'element' increments column (across right)
top = (first, element)
# 'element' increments row (move down)
right_side = (element, last)
# 'last-offset' decrements column (across left)
bottom = (last, last-offset)
# 'last-offset' decrements row (move up)
left_side = (last-offset, first)

print 'top: %s' % (top)
print 'right_side: %s' % (right_side)
print 'bottom: %s' % (bottom)
print 'left_side: %s' % (left_side)

Now we simply need to assign the top to the right side, right side to the bottom, bottom to the left side, and left side to the top. Putting this all together we get:

def rotate(matrix):
size = len(matrix)
layer_count = size / 2

for layer in range(0, layer_count):
first = layer
last = size - first - 1

for element in range(first, last):
offset = element - first

top = matrix[first][element]
right_side = matrix[element][last]
bottom = matrix[last][last-offset]
left_side = matrix[last-offset][first]

matrix[first][element] = left_side
matrix[element][last] = top
matrix[last][last-offset] = right_side
matrix[last-offset][first] = bottom

Given the matrix:

0,  1,  2
3,  4,  5
6,  7,  8

Our rotate function results in:

6,  3,  0
7,  4,  1
8,  5,  2
• I initially felt like "wow, best explanation ever", but after reading it a couple of times (to make sure I didn't miss anything important in the sea of words), my opinion changed to "man, I get it, can we keep it moving please?" Still upvoted for taking what must have been hours to compose such an elaborate answer. Jul 21 '18 at 18:51
• @AbhijitSarkar - Thanks for up-voting and I hope it at least helped in some small way. Of course, you're right, my answer is wordy. This was however intentionally in contrast to the vast majority of answers. As I said at the very start of my answer: "In this answer, key concepts are repeated, the pace is slow and intentionally repetitive." If you have edits which keep the clarity and necessary repetitiveness but reduce the word count, I'm very open to suggestions. Or just edit :)
– Jack
Jul 22 '18 at 10:01
• TL;DR: list(zip(*reversed(your_list_of_lists))) Dec 28 '19 at 7:34
• Another upvote. Probably the best Stackoverflow post I have seen. More a beautiful tutorial than an answer to a question. Thanks for your effort. Small error: top_element = (first, element) should be: top = (first, element) in the second last block of pseudo-code. Dec 16 '20 at 12:22
• @Jack one of the best code explanations I have ever come across. Should be in the ELI5 sub-reddit. Very organic and intuitive. Feb 16 '21 at 17:39

Here it is in C#

int[,] array = new int[4,4] {
{ 1,2,3,4 },
{ 5,6,7,8 },
{ 9,0,1,2 },
{ 3,4,5,6 }
};

int[,] rotated = RotateMatrix(array, 4);

static int[,] RotateMatrix(int[,] matrix, int n) {
int[,] ret = new int[n, n];

for (int i = 0; i < n; ++i) {
for (int j = 0; j < n; ++j) {
ret[i, j] = matrix[n - j - 1, i];
}
}

return ret;
}
• Sure, but what about a solution using O(1) memory? Sep 7 '08 at 17:51
• Your solution has O(n^2) space complexity. Need to do better Oct 6 '13 at 3:54
• How about for N X M matrix ? Aug 8 '14 at 10:21
• The complexity is linear in the number of elements in the array. If N is the number of elements the complexity is O(N). If N is the length of side, then yes, the complexity is O(N^2), but that is still optimal. You have to read every element at least once. Printing the matrix is the same complexitiy Aug 4 '15 at 20:34
• For a -90 degrees rotation: ret[i][j] = matrix[j][n - i - 1] Aug 6 '17 at 20:57

Python:

rotated = list(zip(*original[::-1]))

and counterclockwise:

rotated_ccw = list(zip(*original))[::-1]

How this works:

zip(*original) will swap axes of 2d arrays by stacking corresponding items from lists into new lists. (The * operator tells the function to distribute the contained lists into arguments)

>>> list(zip(*[[1,2,3],[4,5,6],[7,8,9]]))
[[1,4,7],[2,5,8],[3,6,9]]

The [::-1] statement reverses array elements (please see Extended Slices or this question):

>>> [[1,2,3],[4,5,6],[7,8,9]][::-1]
[[7,8,9],[4,5,6],[1,2,3]]

Finally, combining the two will result in the rotation transformation.

The change in placement of [::-1] will reverse lists in different levels of the matrix.

• I believe this code originates from Peter Norvig: norvig.com/python-iaq.html Jul 7 '09 at 14:43
• You can use zip(*reversed(original)) instead of zip(*original[::-1]) to avoid creating an extra copy of the original list. Dec 28 '19 at 7:46

Here is one that does the rotation in place instead of using a completely new array to hold the result. I've left off initialization of the array and printing it out. This only works for square arrays but they can be of any size. Memory overhead is equal to the size of one element of the array so you can do the rotation of as large an array as you want.

int a;
int n = 4;
int tmp;
for (int i = 0; i < n / 2; i++)
{
for (int j = i; j < n - i - 1; j++)
{
tmp             = a[i][j];
a[i][j]         = a[j][n-i-1];
a[j][n-i-1]     = a[n-i-1][n-j-1];
a[n-i-1][n-j-1] = a[n-j-1][i];
a[n-j-1][i]     = tmp;
}
}
• I can see at least one bug. If you're going to post code, test it or at least say you haven't done so. Oct 1 '08 at 7:12
• Where? Point it out and I'll fix it. I did test it and it worked fine on both odd and even sized arrays. Oct 4 '08 at 1:29
• its a beautiful solution. Mind can perform such feats if set to purpose. from O(n2) to O(1) Jul 31 '12 at 18:29
• It's not O(1); it's still O(n^2)
– duma
Nov 16 '12 at 15:39
• Its O(n^2) with memory O(1).
– Neel
Mar 4 '13 at 15:50

There are tons of good code here but I just want to show what's going on geometrically so you can understand the code logic a little better. Here is how I would approach this.

first of all, do not confuse this with transposition which is very easy..

the basica idea is to treat it as layers and we rotate one layer at a time..

say we have a 4x4

1   2   3   4
5   6   7   8
9   10  11  12
13  14  15  16

after we rotate it clockwise by 90 we get

13  9   5   1
14  10  6   2
15  11  7   3
16  12  8   4

so let's decompose this, first we rotate the 4 corners essentially

1           4

13          16

then we rotate the following diamond which is sort of askew

2
8
9
15

and then the 2nd skewed diamond

3
5
12
14

so that takes care of the outer edge so essentially we do that one shell at a time until

finally the middle square (or if it's odd just the final element which does not move)

6   7
10  11

so now let's figure out the indices of each layer, assume we always work with the outermost layer, we are doing

[0,0] -> [0,n-1], [0,n-1] -> [n-1,n-1], [n-1,n-1] -> [n-1,0], and [n-1,0] -> [0,0]
[0,1] -> [1,n-1], [1,n-2] -> [n-1,n-2], [n-1,n-2] -> [n-2,0], and [n-2,0] -> [0,1]
[0,2] -> [2,n-2], [2,n-2] -> [n-1,n-3], [n-1,n-3] -> [n-3,0], and [n-3,0] -> [0,2]

so on and so on until we are halfway through the edge

so in general the pattern is

[0,i] -> [i,n-i], [i,n-i] -> [n-1,n-(i+1)], [n-1,n-(i+1)] -> [n-(i+1),0], and [n-(i+1),0] to [0,i]
• what does it mean "halfway through the edge"? I see a lot of algorithms looping until N/2 and others looping til N, but I can't see where the N/2 is coming from.
– PDN
Mar 7 '16 at 3:07
• I believe its the same solution as given in cracking the coding interview. But I like the step by step explanation. Very nice and thorough. Nov 8 '16 at 18:10
• @PDN This answer explains it in detail. Feb 5 '17 at 9:57

As I said in my previous post, here's some code in C# that implements an O(1) matrix rotation for any size matrix. For brevity and readability there's no error checking or range checking. The code:

static void Main (string [] args)
{
int [,]
//  create an arbitrary matrix
m = {{0, 1}, {2, 3}, {4, 5}};

Matrix
//  create wrappers for the data
m1 = new Matrix (m),
m2 = new Matrix (m),
m3 = new Matrix (m);

//  rotate the matricies in various ways - all are O(1)
m1.RotateClockwise90 ();
m2.Rotate180 ();
m3.RotateAnitclockwise90 ();

//  output the result of transforms
System.Diagnostics.Trace.WriteLine (m1.ToString ());
System.Diagnostics.Trace.WriteLine (m2.ToString ());
System.Diagnostics.Trace.WriteLine (m3.ToString ());
}

class Matrix
{
enum Rotation
{
None,
Clockwise90,
Clockwise180,
Clockwise270
}

public Matrix (int [,] matrix)
{
m_matrix = matrix;
m_rotation = Rotation.None;
}

//  the transformation routines
public void RotateClockwise90 ()
{
m_rotation = (Rotation) (((int) m_rotation + 1) & 3);
}

public void Rotate180 ()
{
m_rotation = (Rotation) (((int) m_rotation + 2) & 3);
}

public void RotateAnitclockwise90 ()
{
m_rotation = (Rotation) (((int) m_rotation + 3) & 3);
}

//  accessor property to make class look like a two dimensional array
public int this [int row, int column]
{
get
{
int
value = 0;

switch (m_rotation)
{
case Rotation.None:
value = m_matrix [row, column];
break;

case Rotation.Clockwise90:
value = m_matrix [m_matrix.GetUpperBound (0) - column, row];
break;

case Rotation.Clockwise180:
value = m_matrix [m_matrix.GetUpperBound (0) - row, m_matrix.GetUpperBound (1) - column];
break;

case Rotation.Clockwise270:
value = m_matrix [column, m_matrix.GetUpperBound (1) - row];
break;
}

return value;
}

set
{
switch (m_rotation)
{
case Rotation.None:
m_matrix [row, column] = value;
break;

case Rotation.Clockwise90:
m_matrix [m_matrix.GetUpperBound (0) - column, row] = value;
break;

case Rotation.Clockwise180:
m_matrix [m_matrix.GetUpperBound (0) - row, m_matrix.GetUpperBound (1) - column] = value;
break;

case Rotation.Clockwise270:
m_matrix [column, m_matrix.GetUpperBound (1) - row] = value;
break;
}
}
}

//  creates a string with the matrix values
public override string ToString ()
{
int
num_rows = 0,
num_columns = 0;

switch (m_rotation)
{
case Rotation.None:
case Rotation.Clockwise180:
num_rows = m_matrix.GetUpperBound (0);
num_columns = m_matrix.GetUpperBound (1);
break;

case Rotation.Clockwise90:
case Rotation.Clockwise270:
num_rows = m_matrix.GetUpperBound (1);
num_columns = m_matrix.GetUpperBound (0);
break;
}

StringBuilder
output = new StringBuilder ();

output.Append ("{");

for (int row = 0 ; row <= num_rows ; ++row)
{
if (row != 0)
{
output.Append (", ");
}

output.Append ("{");

for (int column = 0 ; column <= num_columns ; ++column)
{
if (column != 0)
{
output.Append (", ");
}

output.Append (this [row, column].ToString ());
}

output.Append ("}");
}

output.Append ("}");

return output.ToString ();
}

int [,]
//  the original matrix
m_matrix;

Rotation
//  the current view of the matrix
m_rotation;
}

OK, I'll put my hand up, it doesn't actually do any modifications to the original array when rotating. But, in an OO system that doesn't matter as long as the object looks like it's been rotated to the clients of the class. At the moment, the Matrix class uses references to the original array data so changing any value of m1 will also change m2 and m3. A small change to the constructor to create a new array and copy the values to it will sort that out.

• Bravo! This is a very nice solution and I don't know why it isn't the accepted answer. Sep 14 '08 at 16:11
• @martinatime: perhaps because it is 5 times as big
Oct 4 '10 at 17:59
• @Toad: Well, writing code is always a trade off between competing requirements: speed, size, cost, etc. Oct 4 '10 at 20:34
• true... another problem is the fact that the matrix is in fact not rotated, but is rotated 'just in time'. Which is great for accessing a few elements, but would be horrible if this matrix was used in calculations or image manipulations. So saying O(1) is not really fair.
Oct 5 '10 at 11:17
• If you are interested in just a few elements of the rotated matrix, this code is fine. It's readable, its understandable and it just retrieves the elements. However when performing the full rotation, this code will be slow. For every element it has the overhead of a method call, 2d array lookups (that has a multiplication), every set/get has a switch in it, who knows what it does for memory caching, etc So I would wager that removing all the fluff and having a really fast loop swapping elements in place would be way quicker than this. Would it be more readable? Probably not.
Oct 15 '20 at 20:57

Whilst rotating the data in place might be necessary (perhaps to update the physically stored representation), it becomes simpler and possibly more performant to add a layer of indirection onto the array access, perhaps an interface:

{
int GetValue(int x, int y);
}

If your Matrix already implements this interface, then it can be rotated via a decorator class like this:

{

{
_baseMatrix = baseMatrix;
}

int GetValue(int x, int y)
{
// transpose x and y dimensions
return _baseMatrix(y, x);
}
}

Rotating +90/-90/180 degrees, flipping horizontally/vertically and scaling can all be achieved in this fashion as well.

Performance would need to be measured in your specific scenario. However the O(n^2) operation has now been replaced with an O(1) call. It's a virtual method call which is slower than direct array access, so it depends upon how frequently the rotated array is used after rotation. If it's used once, then this approach would definitely win. If it's rotated then used in a long-running system for days, then in-place rotation might perform better. It also depends whether you can accept the up-front cost.

As with all performance issues, measure, measure, measure!

• +1... And if the matrix is really large and you only access a couple elements (sparse use) it's even more effective Jun 4 '09 at 2:25
• It seems a little unfair to call this an O(1) time solution. To solve the problem posed by the OP this will still take O(n^2) time. Not only that, it wouldn't solve the problem because it returns the transpose. The example given doesn't have the transpose as the solution. Apr 20 '10 at 4:32
• Now, if all you wanted was the first 3 elements of the matrix, this is a fine solution, but the problem is to retrieve a completely transformed matrix (i.e. assuming you need all the matrix elements). Calling this O(1) is the Credit Default Swap method of Algorithm Analysis - you haven't solved the problem, you've just pushed it to someone else :) Jun 29 '10 at 23:31
• @Paul Betts: I get your point, but like I wrote above in the comments, even if you actually have the matrix transposed you still have to write the loop if you want to read the values out. So reading all values from a matrix is always O(N^2) regardless. The difference here is that if you transpose, rotate, scale, scale again, etc, then you still only take the O(N^2) hit once. Like I said, this isn't always the best solution, but in many cases it's appropriate and worthwhile. The OP seemed to be looking for a magic solution, and this is as close as you'll get. Jun 30 '10 at 4:29
• I like this answer, but I want to point something out. Printing out the decorated matrix (and doing other sequential reads in general) may be much slower than doing the same to a matrix that's been rotated in memory, and it's not just because of virtual method calls. For a big matrix, you're going to vastly increase the number of cache misses you get by reading "down" rather than "across". Oct 4 '10 at 18:23

This a better version of it in Java: I've made it for a matrix with a different width and height

• h is here the height of the matrix after rotating
• w is here the width of the matrix after rotating

public int[][] rotateMatrixRight(int[][] matrix)
{
/* W and H are already swapped */
int w = matrix.length;
int h = matrix.length;
int[][] ret = new int[h][w];
for (int i = 0; i < h; ++i) {
for (int j = 0; j < w; ++j) {
ret[i][j] = matrix[w - j - 1][i];
}
}
return ret;
}

public int[][] rotateMatrixLeft(int[][] matrix)
{
/* W and H are already swapped */
int w = matrix.length;
int h = matrix.length;
int[][] ret = new int[h][w];
for (int i = 0; i < h; ++i) {
for (int j = 0; j < w; ++j) {
ret[i][j] = matrix[j][h - i - 1];
}
}
return ret;
}

This code is based on Nick Berardi's post.

• Thanks. This was the clearest Java code here. Question - How did you/Nick come up with the [w - j - 1] part? Looking at @tweaking answer i can see how you could derive that through induction/solving examples. Just wondering if thats how it was obtained or is it based on some mathematical principle pertaining to Matrices. Aug 30 '15 at 3:37

Ruby-way: .transpose.map &:reverse

• It's even simpler than that: array.reverse.transpose rotates an array clockwise, while array.transpose.reverse rotates it counterclockwise. There's no need for map. Jul 11 '19 at 11:48

There are a lot of answers already, and I found two claiming O(1) time complexity. The real O(1) algorithm is to leave the array storage untouched, and change how you index its elements. The goal here is that it does not consume additional memory, nor does it require additional time to iterate the data.

Rotations of 90, -90 and 180 degrees are simple transformations which can be performed as long as you know how many rows and columns are in your 2D array; To rotate any vector by 90 degrees, swap the axes and negate the Y axis. For -90 degree, swap the axes and negate the X axis. For 180 degrees, negate both axes without swapping.

Further transformations are possible, such as mirroring horizontally and/or vertically by negating the axes independently.

This can be done through e.g. an accessor method. The examples below are JavaScript functions, but the concepts apply equally to all languages.

// Get an array element in column/row order
var getArray2d = function(a, x, y) {
return a[y][x];
};

//demo
var arr = [
[5, 4, 6],
[1, 7, 9],
[-2, 11, 0],
[8, 21, -3],
[3, -1, 2]
];

var newarr = [];
arr.forEach(() => newarr.push(new Array(arr.length)));

for (var i = 0; i < newarr.length; i++) {
for (var j = 0; j < newarr.length; j++) {
newarr[i][j] = getArray2d(arr, i, j);
}
}
console.log(newarr);

// Get an array element rotated 90 degrees clockwise
function getArray2dCW(a, x, y) {
var t = x;
x = y;
y = a.length - t - 1;
return a[y][x];
}

//demo
var arr = [
[5, 4, 6],
[1, 7, 9],
[-2, 11, 0],
[8, 21, -3],
[3, -1, 2]
];

var newarr = [];
arr.forEach(() => newarr.push(new Array(arr.length)));

for (var i = 0; i < newarr.length; i++) {
for (var j = 0; j < newarr.length; j++) {
newarr[j][i] = getArray2dCW(arr, i, j);
}
}
console.log(newarr);

// Get an array element rotated 90 degrees counter-clockwise
function getArray2dCCW(a, x, y) {
var t = x;
x = a.length - y - 1;
y = t;
return a[y][x];
}

//demo
var arr = [
[5, 4, 6],
[1, 7, 9],
[-2, 11, 0],
[8, 21, -3],
[3, -1, 2]
];

var newarr = [];
arr.forEach(() => newarr.push(new Array(arr.length)));

for (var i = 0; i < newarr.length; i++) {
for (var j = 0; j < newarr.length; j++) {
newarr[j][i] = getArray2dCCW(arr, i, j);
}
}
console.log(newarr);

// Get an array element rotated 180 degrees
function getArray2d180(a, x, y) {
x = a.length - x - 1;
y = a.length - y - 1;
return a[y][x];
}

//demo
var arr = [
[5, 4, 6],
[1, 7, 9],
[-2, 11, 0],
[8, 21, -3],
[3, -1, 2]
];

var newarr = [];
arr.forEach(() => newarr.push(new Array(arr.length)));

for (var i = 0; i < newarr.length; i++) {
for (var j = 0; j < newarr.length; j++) {
newarr[j][i] = getArray2d180(arr, i, j);
}
}
console.log(newarr);

This code assumes an array of nested arrays, where each inner array is a row.

The method allows you to read (or write) elements (even in random order) as if the array has been rotated or transformed. Now just pick the right function to call, probably by reference, and away you go!

The concept can be extended to apply transformations additively (and non-destructively) through the accessor methods. Including arbitrary angle rotations and scaling.

• None of these actually rotated from the original array though. The first one, the end result is simply transposed. The second one, you appear to have just shuffled the rows or mirrored across the horizontal center. The third, you only reversed the rows and the fourth is also transposed. None of which were actually "rotated". Dec 28 '18 at 1:16
• There are some bugs in the latter two examples. Trivial to fix. I pointed out explicitly that this solution is not an in-place rotation. It is a transformation function, which makes it suitable for lazy iteration. Jan 28 '19 at 19:50
• Except there's no rotation so you didn't actually answer what the OP asked. Feb 26 '19 at 0:42
• @SM177Y Another editor added non-working example code to my answer. I can see how you were confused by it. I have fixed the bugs in the iteration loops. The functions as provided do in fact "rotate" the data in the arrays. Feb 27 '19 at 5:29
• Also important detail is that the example code really washes out the original answer that I provided, which was trying to illustrate the power of functional transformations over linear space-time complexity solutions. With a functional transformation you are already iterating or otherwise accessing the array elements, so the transformation is considered "free" in the sense of constant space and time complexity. Mar 9 '19 at 2:54

A couple of people have already put up examples which involve making a new array.

A few other things to consider:

(a) Instead of actually moving the data, simply traverse the "rotated" array differently.

(b) Doing the rotation in-place can be a little trickier. You'll need a bit of scratch place (probably roughly equal to one row or column in size). There's an ancient ACM paper about doing in-place transposes (http://doi.acm.org/10.1145/355719.355729), but their example code is nasty goto-laden FORTRAN.

http://doi.acm.org/10.1145/355611.355612 is another, supposedly superior, in-place transpose algorithm.

• I agree with this. Have a method that determine the translation between the source data and the "rotated" data. Sep 14 '08 at 16:07

Nick's answer would work for an NxM array too with only a small modification (as opposed to an NxN).

string[,] orig = new string[n, m];
string[,] rot = new string[m, n];

...

for ( int i=0; i < n; i++ )
for ( int j=0; j < m; j++ )
rot[j, n - i - 1] = orig[i, j];

One way to think about this is that you have moved the center of the axis (0,0) from the top left corner to the top right corner. You're simply transposing from one to the other.

Time - O(N), Space - O(1)

public void rotate(int[][] matrix) {
int n = matrix.length;
for (int i = 0; i < n / 2; i++) {
int last = n - 1 - i;
for (int j = i; j < last; j++) {
int top = matrix[i][j];
matrix[i][j] = matrix[last - j][i];
matrix[last - j][i] = matrix[last][last - j];
matrix[last][last - j] = matrix[j][last];
matrix[j][last] = top;
}
}
}
• This is not O(1). This is O(n). Oct 15 '14 at 3:52
• @JasonOster I believe this is O(1) space, since it consumes no additional space. Oct 27 '14 at 11:55
• @ffledgling My mistake. O(1) space complexity, yes. O(n) time complexity. Nov 8 '14 at 0:49
• Space Complexity is O(n) as well. Space Complexity should include the space of input variable size. careercup.com/question?id=14952322 Jan 1 '16 at 15:59
• How could I modify this to work for a counterclockwise rotation? Jan 21 '18 at 3:57

Here's my Ruby version (note the values aren't displayed the same, but it still rotates as described).

def rotate(matrix)
result = []
4.times { |x|
result[x] = []
4.times { |y|
result[x][y] = matrix[y][3 - x]
}
}

result
end

matrix = []
matrix = [1,2,3,4]
matrix = [5,6,7,8]
matrix = [9,0,1,2]
matrix = [3,4,5,6]

def print_matrix(matrix)
4.times { |y|
4.times { |x|
print "#{matrix[x][y]} "
}
puts ""
}
end

print_matrix(matrix)
puts ""
print_matrix(rotate(matrix))

The output:

1 5 9 3
2 6 0 4
3 7 1 5
4 8 2 6

4 3 2 1
8 7 6 5
2 1 0 9
6 5 4 3

here's a in-space rotate method, by java, only for square. for non-square 2d array, you will have to create new array anyway.

private void rotateInSpace(int[][] arr) {
int z = arr.length;
for (int i = 0; i < z / 2; i++) {
for (int j = 0; j < (z / 2 + z % 2); j++) {
int x = i, y = j;
int temp = arr[x][y];
for (int k = 0; k < 4; k++) {
int temptemp = arr[y][z - x - 1];
arr[y][z - x - 1] = temp;
temp = temptemp;

int tempX = y;
y = z - x - 1;
x = tempX;
}
}
}
}

code to rotate any size 2d array by creating new array:

private int[][] rotate(int[][] arr) {
int width = arr.length;
int depth = arr.length;
int[][] re = new int[width][depth];
for (int i = 0; i < depth; i++) {
for (int j = 0; j < width; j++) {
re[j][depth - i - 1] = arr[i][j];
}
}
return re;
}

A common method to rotate a 2D array clockwise or anticlockwise.

• clockwise rotate
• first reverse up to down, then swap the symmetry
1 2 3     7 8 9     7 4 1
4 5 6  => 4 5 6  => 8 5 2
7 8 9     1 2 3     9 6 3

void rotate(vector<vector<int> > &matrix) {
reverse(matrix.begin(), matrix.end());
for (int i = 0; i < matrix.size(); ++i) {
for (int j = i + 1; j < matrix[i].size(); ++j)
swap(matrix[i][j], matrix[j][i]);
}
}
• anticlockwise rotate
• first reverse left to right, then swap the symmetry
1 2 3     3 2 1     3 6 9
4 5 6  => 6 5 4  => 2 5 8
7 8 9     9 8 7     1 4 7

void anti_rotate(vector<vector<int> > &matrix) {
for (auto vi : matrix) reverse(vi.begin(), vi.end());
for (int i = 0; i < matrix.size(); ++i) {
for (int j = i + 1; j < matrix[i].size(); ++j)
swap(matrix[i][j], matrix[j][i]);
}
}
• I like this solution because it's pretty intuitive and straight forward, thanks
– BdR
Feb 14 '21 at 22:38

Implementation of dimple's +90 pseudocode (e.g. transpose then reverse each row) in JavaScript:

function rotate90(a){
// transpose from http://www.codesuck.com/2012/02/transpose-javascript-array-in-one-line.html
a = Object.keys(a).map(function (c) { return a.map(function (r) { return r[c]; }); });
// row reverse
for (i in a){
a[i] = a[i].reverse();
}
return a;
}

You can do this in 3 easy steps:

1)Suppose we have a matrix

1 2 3
4 5 6
7 8 9

2)Take the transpose of the matrix

1 4 7
2 5 8
3 6 9

3)Interchange rows to get rotated matrix

3 6 9
2 5 8
1 4 7

Java source code for this:

public class MyClass {

public static void main(String args[]) {
Demo obj = new Demo();
/*initial matrix to rotate*/
int[][] matrix = { { 1, 2, 3 }, { 4, 5, 6 }, { 7, 8, 9 } };
int[][] transpose = new int; // matrix to store transpose

obj.display(matrix);              // initial matrix

obj.rotate(matrix, transpose);    // call rotate method
System.out.println();
obj.display(transpose);           // display the rotated matix
}
}

class Demo {
public void rotate(int[][] mat, int[][] tran) {

/* First take the transpose of the matrix */
for (int i = 0; i < mat.length; i++) {
for (int j = 0; j < mat.length; j++) {
tran[i][j] = mat[j][i];
}
}

/*
* Interchange the rows of the transpose matrix to get rotated
* matrix
*/
for (int i = 0, j = tran.length - 1; i != j; i++, j--) {
for (int k = 0; k < tran.length; k++) {
swap(i, k, j, k, tran);
}
}
}

public void swap(int a, int b, int c, int d, int[][] arr) {
int temp = arr[a][b];
arr[a][b] = arr[c][d];
arr[c][d] = temp;
}

/* Method to display the matrix */
public void display(int[][] arr) {
for (int i = 0; i < arr.length; i++) {
for (int j = 0; j < arr.length; j++) {
System.out.print(arr[i][j] + " ");
}
System.out.println();
}
}
}

Output:

1 2 3
4 5 6
7 8 9

3 6 9
2 5 8
1 4 7

This is my implementation, in C, O(1) memory complexity, in place rotation, 90 degrees clockwise:

#include <stdio.h>

#define M_SIZE 5

static void initMatrix();
static void printMatrix();
static void rotateMatrix();

static int m[M_SIZE][M_SIZE];

int main(void){
initMatrix();
printMatrix();
rotateMatrix();
printMatrix();

return 0;
}

static void initMatrix(){
int i, j;

for(i = 0; i < M_SIZE; i++){
for(j = 0; j < M_SIZE; j++){
m[i][j] = M_SIZE*i + j + 1;
}
}
}

static void printMatrix(){
int i, j;

printf("Matrix\n");
for(i = 0; i < M_SIZE; i++){
for(j = 0; j < M_SIZE; j++){
printf("%02d ", m[i][j]);
}
printf("\n");
}
printf("\n");
}

static void rotateMatrix(){
int r, c;

for(r = 0; r < M_SIZE/2; r++){
for(c = r; c < M_SIZE - r - 1; c++){
int tmp = m[r][c];

m[r][c] = m[M_SIZE - c - 1][r];
m[M_SIZE - c - 1][r] = m[M_SIZE - r - 1][M_SIZE - c - 1];
m[M_SIZE - r - 1][M_SIZE - c - 1] = m[c][M_SIZE - r - 1];
m[c][M_SIZE - r - 1] = tmp;
}
}
}

Here is the Java version:

public static void rightRotate(int[][] matrix, int n) {
for (int layer = 0; layer < n / 2; layer++) {
int first = layer;
int last = n - 1 - first;
for (int i = first; i < last; i++) {
int offset = i - first;
int temp = matrix[first][i];
matrix[first][i] = matrix[last-offset][first];
matrix[last-offset][first] = matrix[last][last-offset];
matrix[last][last-offset] = matrix[i][last];
matrix[i][last] = temp;
}
}
}

the method first rotate the mostouter layer, then move to the inner layer squentially.

From a linear point of view, consider the matrices:

1 2 3        0 0 1
A = 4 5 6    B = 0 1 0
7 8 9        1 0 0

Now take A transpose

1 4 7
A' = 2 5 8
3 6 9

And consider the action of A' on B, or B on A'.
Respectively:

7 4 1          3 6 9
A'B = 8 5 2    BA' = 2 5 8
9 6 3          1 4 7

This is expandable for any n x n matrix. And applying this concept quickly in code:

void swapInSpace(int** mat, int r1, int c1, int r2, int c2)
{
mat[r1][c1] ^= mat[r2][c2];
mat[r2][c2] ^= mat[r1][c1];
mat[r1][c1] ^= mat[r2][c2];
}

void transpose(int** mat, int size)
{
for (int i = 0; i < size; i++)
{
for (int j = (i + 1); j < size; j++)
{
swapInSpace(mat, i, j, j, i);
}
}
}

void rotate(int** mat, int size)
{
//Get transpose
transpose(mat, size);

//Swap columns
for (int i = 0; i < size / 2; i++)
{
for (int j = 0; j < size; j++)
{
swapInSpace(mat, i, j, size - (i + 1), j);
}
}
}

C# code to rotate [n,m] 2D arrays 90 deg right

using System;
using System.Collections.Generic;
using System.Linq;
using System.Text;

namespace MatrixProject
{
// mattrix class

class Matrix{
private int rows;
private int cols;
private int[,] matrix;

public Matrix(int n){
this.rows = n;
this.cols = n;
this.matrix = new int[this.rows,this.cols];

}

public Matrix(int n,int m){
this.rows = n;
this.cols = m;

this.matrix = new int[this.rows,this.cols];
}

public void Show()
{
for (var i = 0; i < this.rows; i++)
{
for (var j = 0; j < this.cols; j++) {
Console.Write("{0,3}", this.matrix[i, j]);
}
Console.WriteLine();
}
}

{
for (var i = 0; i < this.rows; i++)
for (var j = 0; j < this.cols; j++)
{
Console.Write("element[{0},{1}]=",i,j);
}
}

// rotate [n,m] 2D array by 90 deg right
public void Rotate90DegRight()
{

// create a mirror of current matrix
int[,] mirror = this.matrix;

// create a new matrix
this.matrix = new int[this.cols, this.rows];

for (int i = 0; i < this.rows; i++)
{
for (int j = 0; j < this.cols; j++)
{
this.matrix[j, this.rows - i - 1] = mirror[i, j];
}
}

// replace cols count with rows count
int tmp = this.rows;
this.rows = this.cols;
this.cols = tmp;
}
}

class Program
{
static void Main(string[] args)
{
Matrix myMatrix = new Matrix(3,4);
Console.WriteLine("Enter matrix elements:");
Console.WriteLine("Matrix elements are:");
myMatrix.Show();
myMatrix.Rotate90DegRight();
Console.WriteLine("Matrix rotated at 90 deg are:");
myMatrix.Show();
}
}
}

Result:

Enter matrix elements:
element[0,0]=1
element[0,1]=2
element[0,2]=3
element[0,3]=4
element[1,0]=5
element[1,1]=6
element[1,2]=7
element[1,3]=8
element[2,0]=9
element[2,1]=10
element[2,2]=11
element[2,3]=12
Matrix elements are:
1  2  3  4
5  6  7  8
9 10 11 12
Matrix rotated at 90 deg are:
9  5  1
10  6  2
11  7  3
12  8  4

PHP:

<?php
\$a = array(array(1,2,3,4),array(5,6,7,8),array(9,0,1,2),array(3,4,5,6));
\$b = array(); //result

while(count(\$a)>0)
{
\$b[count(\$a)-1][] = array_shift(\$a);
if (count(\$a)==0)
{
array_shift(\$a);
}
}

From PHP5.6, Array transposition can be performed with a sleak array_map() call. In other words, columns are converted to rows.

Code: (Demo)

\$array = [
[1, 2, 3, 4],
[5, 6, 7, 8],
[9, 0, 1, 2],
[3, 4, 5, 6]
];
\$transposed = array_map(null, ...\$array);

\$transposed:

[
[1, 5, 9, 3],
[2, 6, 0, 4],
[3, 7, 1, 5],
[4, 8, 2, 6]
]

For i:= 0 to X do For j := 0 to X do graphic[j][i] := graphic2[X-i][j]

X is the size of the array the graphic is in.

#transpose is a standard method of Ruby's Array class, thus:

% irb
irb(main):001:0> m = [[1, 2, 3, 4], [5, 6, 7, 8], [9, 0, 1, 2], [3, 4, 5, 6]]
=> [[1, 2, 3, 4], [5, 6, 7, 8], [9, 0, 1, 2], [3, 4, 5, 6]]
irb(main):002:0> m.reverse.transpose
=> [[3, 9, 5, 1], [4, 0, 6, 2], [5, 1, 7, 3], [6, 2, 8, 4]]

The implementation is an n^2 transposition function written in C. You can see it here: http://www.ruby-doc.org/core-1.9.3/Array.html#method-i-transpose by choosing "click to toggle source" beside "transpose".

I recall better than O(n^2) solutions, but only for specially constructed matrices (such as sparse matrices)

C code for matrix rotation 90 degree clockwise IN PLACE for any M*N matrix

void rotateInPlace(int * arr[size][size], int row, int column){
int i, j;
int temp = row>column?row:column;
int flipTill = row < column ? row : column;
for(i=0;i<flipTill;i++){
for(j=0;j<i;j++){
swapArrayElements(arr, i, j);
}
}

temp = j+1;

for(i = row>column?i:0; i<row; i++){
for(j=row<column?temp:0; j<column; j++){
swapArrayElements(arr, i, j);
}
}

for(i=0;i<column;i++){
for(j=0;j<row/2;j++){
temp = arr[i][j];
arr[i][j] = arr[i][row-j-1];
arr[i][row-j-1] = temp;
}
}
}

here is my In Place implementation in C

void rotateRight(int matrix[][SIZE], int length) {

int layer = 0;

for (int layer = 0; layer < length / 2; ++layer) {

int first = layer;
int last = length - 1 - layer;

for (int i = first; i < last; ++i) {

int topline = matrix[first][i];
int rightcol = matrix[i][last];
int bottomline = matrix[last][length - layer - 1 - i];
int leftcol = matrix[length - layer - 1 - i][first];

matrix[first][i] = leftcol;
matrix[i][last] = topline;
matrix[last][length - layer - 1 - i] = rightcol;
matrix[length - layer - 1 - i][first] = bottomline;
}
}
}

Here is my attempt for matrix 90 deg rotation which is a 2 step solution in C. First transpose the matrix in place and then swap the cols.

#define ROWS        5
#define COLS        5

void print_matrix_b(int B[][COLS], int rows, int cols)
{
for (int i = 0; i <= rows; i++) {
for (int j = 0; j <=cols; j++) {
printf("%d ", B[i][j]);
}
printf("\n");
}
}

void swap_columns(int B[][COLS], int l, int r, int rows)
{
int tmp;
for (int i = 0; i <= rows; i++) {
tmp = B[i][l];
B[i][l] = B[i][r];
B[i][r] = tmp;
}
}

void matrix_2d_rotation(int B[][COLS], int rows, int cols)
{
int tmp;
// Transpose the matrix first
for (int i = 0; i <= rows; i++) {
for (int j = i; j <=cols; j++) {
tmp = B[i][j];
B[i][j] = B[j][i];
B[j][i] = tmp;
}
}
// Swap the first and last col and continue until
// the middle.
for (int i = 0; i < (cols / 2); i++)
swap_columns(B, i, cols - i, rows);
}

int _tmain(int argc, _TCHAR* argv[])
{
int B[ROWS][COLS] = {
{1, 2, 3, 4, 5},
{6, 7, 8, 9, 10},
{11, 12, 13, 14, 15},
{16, 17, 18, 19, 20},
{21, 22, 23, 24, 25}
};

matrix_2d_rotation(B, ROWS - 1, COLS - 1);

print_matrix_b(B, ROWS - 1, COLS -1);
return 0;
}

@dagorym: Aw, man. I had been hanging onto this as a good "I'm bored, what can I ponder" puzzle. I came up with my in-place transposition code, but got here to find yours pretty much identical to mine...ah, well. Here it is in Ruby.

require 'pp'
n = 10
a = []
n.times { a << (1..n).to_a }

pp a

0.upto(n/2-1) do |i|
i.upto(n-i-2) do |j|
tmp             = a[i][j]
a[i][j]         = a[n-j-1][i]
a[n-j-1][i]     = a[n-i-1][n-j-1]
a[n-i-1][n-j-1] = a[j][n-i-1]
a[j][n-i-1]     = tmp
end
end

pp a