Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free.

I have 3 different thrust-based implementations that perform certain calculations: first is the slowest and requires the least of GPU memory, second is the fastest and requires the most of GPU memory, and the third one is in-between. For each of those I know the size and data type for each device vector used so I am using vector.size()*sizeof(type) to roughly estimate the memory needed for storage.

So for a given input, based on its size, I would like to decide which implementation to use. In other words, determine the fastest implementation that will fit is in the available GPU memory.

I think that for very long vectors that I am dealing with, the size of the vector.data() that I am calculating is a fairly good estimate and the rest of the overhead (if any) could be disregarded.

But how would I estimate the memory usage overhead (if any) associated with the thrust algorithms implementation? Specifically I am looking for such estimates for transform, copy, reduce, reduce_by_key, and gather. I do not really care about the overhead that is static and is not a function of the algorithm input and output parameters sizes unless it’s very significant.

I understand the implication of the GPU memory fragmentation, etc. but let’s leave this aside for a moment.

Thank you very much for taking the time to look into this.

share|improve this question
talonmies Thank you for your answer. I should have mentioned that I am using thrust 1.5.2 that came with CUDA 4.2 installation. My understanding is that thrust “Custom temporary allocation” feature requires 1.6. Is that correct? At one point I tried to swap out 1.5.2 for 1.6 but after I did that I got so many errors reported by the compiler that I had to switch back because at the time I just couldn’t afford spending any time trying to fix them. It appeared that some host/device vector constructors were not available anymore or something along those lines. –  Leo Jun 11 '12 at 16:52
Leo, To comment on a specific answer, please add a comment to the answer using the "add comment" link under the answer. –  Heatsink Jun 11 '12 at 17:57
Heatsink, I completely agree with you, but for some reason there is no Add Comment link/button for me under the talonmies answer. Don't know why... –  Leo Jun 11 '12 at 20:48
talonmies, I accepted your answer. Thank you for your help. –  Leo Jun 12 '12 at 22:16

1 Answer 1

up vote 2 down vote accepted

Thrust is intended to be used like a black box and there is no documentation of the memory overheads of the various algorithms that I am aware of. But it doesn't sound like a very difficult problem to deduce it empirically by running a few numerical experiments. You might expect the memory consumption of a particular alogrithm to be approximable as:

total number of words of memory consumed = a + (1 + b)*N

for a problem with N input words. Here a will be the fixed overhead of the algorithm and 1+b the slope of best fit memory versus N line. b is then the amount of overhead the algorithm per input word.

So the question then becomes how to monitor the memory usage of a given algorithm. Thrust uses an internal helper function get_temporary_buffer to allocate internal memory. The best idea would be to writeyour own implementation of get_temporary_buffer which emits the size it has been called with, and (perhaps) uses a call to cudaGetMemInfo to get context memory statistics at the time the function gets called. You can see some concrete examples of how to intercept get_temporary_buffer calls here.

With a suitably instrumented allocator and some runs with it at a few different problem sizes, you should be able to fit the model above and estimate the b value for a given algorithm. The model can then be used in your code to determine safe maximum problem sizes for a given about of memory.

I hope this is what you were asking about...

share|improve this answer

Your Answer


By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.