# How to remove zero values from an array in parallel

How can I efficiently remove zero values from an array in parallel using CUDA. The information about the number of zero values is available in advance, which should simplify this task.

It is important that the numbers remain ordered as in the source array, when being copied to the resulting array.

Example:

The array would e.g. contain the following values: [0, 0, 19, 7, 0, 3, 5, 0, 0, 1] with the additional information that 5 values are zeros. The desired end result would then be another array containing: [19, 7, 3, 5, 1]

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surely you want to remove zeros? if you remove the non zeros you would get an array of only zeros?! –  Darkcat Studios Sep 17 '12 at 16:46
yeah corrected that. I am looking for an efficient way to remove the zero values from the source array. –  diver_182 Sep 17 '12 at 16:49
How critical is the efficiency? i would say create a new array, and loop through the old array, copy each non-zero value to it then delete the old array. but there may be a simpler approach, so i wont answer this (i also have not used CUDA) –  Darkcat Studios Sep 17 '12 at 16:54
I would like to replace the for loop through cuda threads, effectivly parallelizing the removal. –  diver_182 Sep 17 '12 at 16:56
This sounds like a standard stream stream compaction operation –  talonmies Sep 17 '12 at 17:21

To eliminate some elements from an array you may use Thrust Library's compaction operations. Given a predicate `is_not_zero`, which returns `false` for zero values, and `true` for others, you may write the operation like this

``````thrust::copy_if(in_array, in_array + size, out_array, is_not_zero);
``````

the output array will include only the values which are non-zero, because the predicate indicates so.

You may also use "remove_if" function with a reverse predicate which return `true` for zeros, and `false` for others..

``````thrust::remove_if(in_array, in_array + size, is_zero);
``````

I suggest you taking a look at compaction examples of Thrust library, or general compaction concept.

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I might not be able to use thrust in that project, but if I could I would use your proposal. Thx for your help. –  diver_182 Sep 18 '12 at 7:21
There are similar libraries and just kernel implementations for compaction. You might not need to use Thrust for just this function, I suggest you to use it though. Just look at the examples of CUDA SDK. –  phoad Sep 18 '12 at 8:17

If you don't want to use Thrust and you prefer to use CUDA, probably the best thing to do is to run Sum Scan, described in detail here

http://http.developer.nvidia.com/GPUGems2/gpugems2_chapter36.html

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What about a variation of odd-even merge sort, or in fact any sorting algorithm, where the ordering is defined by `a < b === (a != 0 && b == 0)`?

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This is a one-bit sort, so one can do a lot better than a general merge sort. –  Jared Hoberock Sep 17 '12 at 23:10
@JaredHoberock: Well, I have not seen you propose a different working approach that works a lot better. –  Václav Zeman Sep 18 '12 at 5:08
Another problem with a sorting approach is that it would destroy the input, which @diver_182 wishes to preserve in the input array. `remove_copy_if` will work better for this case as @phoad notes above. –  Jared Hoberock Sep 18 '12 at 5:54
@JaredHoberock: That's not a problem, he can first copy and then sort. –  Václav Zeman Sep 18 '12 at 6:13