# MATLAB: How To Efficiently Remove NaN Elements from Matrix

I am looking for a way to remove the NaN numbers from a matrix in MATLAB efficiently (i.e. without using a for loop)

I will provide a quick example to illustrate what I am trying to achieve:

Say I have a matrix M:

``````          3.00          1.00
1.00          3.00
NaN           NaN
3.00          3.00
1.00          1.00
NaN           NaN
NaN           NaN
NaN           NaN
NaN           NaN
NaN           NaN
``````

I would like to find a way to change this to

``````          3.00          1.00
1.00          3.00
3.00          3.00
1.00          1.00
``````

I am currently trying to do this via M(isfinite(M)) but that ends up returning a vector instead of the matrix. Is there a trick to have it return a matrix instead?

-

If you have either no NaNs or all NaNs on each row, you can do the removal using:

``````M(isfinite(M(:, 1)), :)
``````
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Exactly what I was looking for. Thanks! Do you know if this is faster than the reshape command suggested by Steve? – Berk U. Mar 5 '11 at 9:02
Use this scheme. This is surely more efficient than using the reshape AFTER removing all of the nans. – user85109 Mar 5 '11 at 10:48
@jeremiah-willcock @woodchips ... how can we do this for columns `M(all(isnan(M), 1), :) = [];` for some reason didn't work. I transposed and used this but there should be a better method. Thanks – lovedynasty Mar 8 '12 at 15:28
That would remove `inf` values as well. Better use `M(~isnan(M(:, 1)), :)` – Luis Mendo Apr 2 '15 at 16:08

The best way is

``````M(any(isnan(M),2),:)=[]
``````

which will remove any row that contains at least one NaN.

-

Actually I would like to recommend a slightly different (and more general) approach.

So, in case that you want to ignore (i.e. delete) all the rows where at least one column includes `NaN`, then just:

``````M= M(0== sum(isnan(M), 2), :)
``````
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I'd suggest `M = M(~any(isnan(M), 2), :)` – rwong Mar 5 '11 at 20:32

try my `snip function`. I wanted to address typical questions like this in one simple function:

``````B = snip(A,nan)
``````

you can find the function file at

It also works with all other 'x', '0' or whatever elements and takes care of more similar problems.

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It seems to work but does not feel intuitive. Use the string `'1'` to remove the value 1. But use the value `nan` to remove the value `nan`. And what are you supposed to do if you want to remove the character `'1'`? --- I think the things it can do may be reasonable, but the way you have to ask for it is just a pain. It is also not clear what happens when higher dimensions are involved. – Dennis Jaheruddin Oct 23 '14 at 9:11

The following function removes NAN from the data for specified dimensions:

``````function data_out = remove_nan (data_in, remove_dim)
%remove row or col from the data_in if there is a NaN element

% e.g., data_in =[1 2 3 4 NaN; 1 2 3 4 5; 1 2 3 NaN NaN]
% from this data remove col 4 and 5 such that data_out=[ 1 2 3; 1 2 3; 1 2
% 3]

if nargin==1

col_loc=any(isnan(data_in),1);
data_in(:,col_loc)=[];
data_out=data_in;

elseif nargin==2

if remove_dim=='col'
%find the cols with nan and remove the colums
col_loc=any(isnan(data_in),1);
data_in(:,col_loc)=[];
data_out=data_in;
elseif  remove_dim='row'
%find the rows with nan and remove the rows
row_loc=any(isnan(data_in),2);
data_in(row_loc,:)=[];
data_out=data_in;
end
else
error( 'incorrect no of arguments')

end
``````
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if you are writing a function for it, why `remove_dim` is a string? why supporting only 2D arrays? why not supposting N-D arrays and working with "along-dimension" argument much like `sum` `max` and many others? – Shai Oct 23 '14 at 8:59
It will probably work, but it seems like this answer has both high complexity and low flexibility. At least the dimension input should simply be a number, which would greatly simplify your code as well. – Dennis Jaheruddin Oct 23 '14 at 9:00
@DennisJaheruddin It works and I use it for huge data sets in TB, specially in CSV files. I was looking for a function on 2D data set / databases for row or column oriented data and could not find one. SO thought of sharing. It can be extended for N-Dimension. – Shan Oct 24 '14 at 11:52