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I want to use my two graphic cards for calculation with CUDA Thrust.

I have two graphic cards. Running on single cards works well for both cards, even when I store two device_vectors in the std::vector.

If I use both cards at the same time, the first cycle in the loop works and causes no error. After the first run it causes an error, probably because the device pointer is not valid.

I am not sure what the exact problem is, or how to use both cards for calculation.

Minimal code sample:

std::vector<thrust::device_vector<float> > TEST() {
    std::vector<thrust::device_vector<float> > vRes;

    unsigned int iDeviceCount   = GetCudaDeviceCount();
    for(unsigned int i = 0; i < iDeviceCount; i++) {
        checkCudaErrors(cudaSetDevice(i) ); 
        thrust::host_vector<float> hvConscience(1024);

                // first run works, runs afterwards cause errors ..
        vRes.push_back(hvConscience); // this push_back causes the error on exec

    return vRes;

Error message on execution:

terminate called after throwing an instance of 'thrust::system::system_error'
what():  invalid argument
share|improve this question
Are you using copy from host or use from host for the buffers? –  huseyin tugrul buyukisik Jun 2 '13 at 19:42
Don't know what you mean exactly. This code copies from host to device. –  dgrat Jun 3 '13 at 8:14
So they are not in SLI mode? –  huseyin tugrul buyukisik Jun 3 '13 at 10:37
No they are not in SLI. I was in hope, that SLI is not necessary, because calculation (in my case) could be asynchronous. –  dgrat Jun 3 '13 at 11:00
@huseyintugrulbuyukisik: What you are asking about is completely irrelevant. Please try and keep the signal to noise ratio up.... –  talonmies Jun 3 '13 at 11:30

1 Answer 1

up vote 5 down vote accepted

The problem here is that you are trying to perform a device to device of copy data between a pair of device_vector which reside in different GPU contexts (because of the cudaSetDevice call). What you have perhaps overlooked is that this sequence of operations:

thrust::host_vector<float> hvConscience(1024);

is performing a copy from hvConscience at each loop iteration. The thrust backend is expecting that source and destination memory lie in the same GPU context. In this case they do not, thus the error.

What you probably want to do is work with a vector of pointers to device_vector instead, so something like:

typedef thrust::device_vector< float > vec;
typedef vec *p_vec;
std::vector< p_vec > vRes;

unsigned int iDeviceCount   = GetCudaDeviceCount();
for(unsigned int i = 0; i < iDeviceCount; i++) {
    p_vec hvConscience = new vec(1024);

[disclaimer: code written in browser, neither compiled nor tested, us at own risk]

This way you are only creating each vector once, in the correct GPU context, and then copy assigning a host pointer, which doesn't trigger any device side copies across memory spaces.

share|improve this answer
I had already a doubt that this may be the reason. Now it is clear. Thanks, I try it out. –  dgrat Jun 3 '13 at 12:40
@user1909456: If this solved your problem, please consider accepting it to remove the question from the unanswered queue. –  talonmies Jun 8 '13 at 13:30
@user1909456 Could you please accept the above answer? Your questions list has a 100% unanswered rate. –  JackOLantern Feb 7 at 20:52

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