# changing the values of the diagonal of a matrix in numpy

how can I change the values of the diagonal of a matrix in numpy?

I checked Numpy modify ndarray diagonal, but the function there is not implemented in numpy v 1.3.0.

lets say we have a np.array X and I want to set all values of the diagonal to 0.

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What version of numpy are you using? `np.diag_indices_from` was added in v1.4 –  JoshAdel Mar 31 '12 at 19:21
yep, you are right, I am currently using python v 1.3.0 –  pacodelumberg Mar 31 '12 at 20:57
@LangerHansIslands Hopefully you mean numpy 1.3, not python 1.3 (which came out in the mid-nineties... :p) –  Dougal Mar 31 '12 at 20:59
upps yeah :D you are right –  pacodelumberg Apr 2 '12 at 14:44

Did you try `numpy.fill_diagonal`? See the following answer and this discussion. Or the following from the documentation (although currently broken):

http://docs.scipy.org/doc/numpy/reference/generated/numpy.fill_diagonal.html

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Thank you @JoshAdel –  Mellkor Mar 31 '12 at 19:27
+1 This is the proper way to do this in numpy. The built-in is always preferable to iterating the array one element at a time using two for loops. –  JoshAdel Mar 31 '12 at 19:29

If you're using a version of numpy that doesn't have `fill_diagonal` (the right way to set the diagonal to a constant) or `diag_indices_from`, you can do this pretty easily with array slicing:

``````# assuming a 2d square array
n = mat.shape[0]
mat[range(n), range(n)] = 0
``````

This is much faster than an explicit loop in Python, because the looping happens in C and is potentially vectorized.

One nice thing about this is that you can also fill a diagonal with a list of elements, rather than a constant value (like `diagflat`, but for modifying an existing matrix rather than making a new one). For example, this will set the diagonal of your matrix to 0, 1, 2, ...:

``````# again assuming 2d square array
n = mat.shape[0]
mat[range(n), range(n)] = range(n)
``````

If you need to support more array shapes, this is more complicated (which is why fill_diagonal is nice...):

``````m[list(zip(*map(range, m.shape)))] = 0
``````

(The `list` call is only necessary in Python 3, where `zip` returns an iterator.)

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To make it clear for future readers, `mat[:n, :n] = 0` sets the whole array / matrix to 0, not just the diagonal elements. `zip` version indeed does the diag. –  gorlum0 Jan 20 at 11:58
@gorlum0 Whoops - thanks for pointing that out. I just edited to fix it (the `zip` isn't actually necessary there)`. –  Dougal Jan 20 at 15:28
Cool, even bare `ranges`. This implicit stuff is hard to get to know. –  gorlum0 Jan 21 at 6:07

Here's another good way to do this. If you want a one-dimensional view of the array's main diagonal use:

``````A.ravel()[:A.shape[1]**2:A.shape[1]+1]
``````

For the i'th superdiagonal use:

``````A.ravel()[i:max(0,A.shape[1]-i)*A.shape[1]:A.shape[1]+1]
``````

For the i'th subdiagonal use:

``````A.ravel()[A.shape[1]*i:A.shape[1]*(i+A.shape[1]):A.shape[1]+1]
``````

Or in general, for the i'th diagonal where the main diagonal is 0, the subdiagonals are negative and the superdiagonals are positive, use:

``````A.ravel()[max(i,-A.shape[1]*i):max(0,(A.shape[1]-i))*A.shape[1]:A.shape[1]+1]
``````

These are views and not copies, so they will run faster for extracting a diagonal, but any changes made to the new array object will apply to the original array. On my machine these run faster than the fill_diagonal function when setting the main diagonal to a constant, but that may not always be the case. They can also be used to assign an array of values to a diagonal instead of just a constant.

Notes: for small arrays it may be faster to use the `flat` attribute of the NumPy array. If speed is a major issue it could be worth it to make `A.shape[1]` a local variable. Also, if the array is not contiguous, `ravel()` will return a copy, so, in order to assign values to a strided slice, it will be necessary to creatively slice the original array used to generate the strided slice (if it is contiguous) or to use the `flat` attribute.

Also, in NumPy 1.9 and later the 'diagonal' method of arrays will return a view instead of a copy, so this trick to get a view will no longer be necessary. In NumPy 1.8 it will return a read-only view. See http://docs.scipy.org/doc/numpy-dev/reference/generated/numpy.diagonal.html

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Nice and hacky, I like it! Only caveat is I think you would get the `wrap=True` behavior described in the `np.fill_diagonal` docs. You can probably solve that adding an adequate stop value to your slices. –  Jaime Jul 23 at 4:41
Thank you, good catch. I just edited it to fix that and a few other things. –  IanH Jul 23 at 5:28
``````def replaceDiagonal(matrix, replacementList):
for i in range(len(replacementList)):
matrix[i][i] = replacementList[i]
``````

Where size is n in an n x n matrix.

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Or `n = len(replacement_list); matrix[:n, :n] = replacement_list`. This does the loop in C instead of in Python and so will be much faster. –  Dougal Mar 31 '12 at 19:37
@Dougal: Awesome, I didn't know that. Can you post it as an answer? –  Joel Cornett Mar 31 '12 at 19:51
Sure, just did. –  Dougal Mar 31 '12 at 21:10
If `A` is your matrix, the following will set its diagonal to zero:
``````A = A - np.diag(A)