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2

The source of the problem is this: thrust::device_vector<CustomPoint> output; output.reserve(devicePoints.size()); reserve only changes the guaranteed minimum storage allocation for the vector. It doesn't change its size. In the code above output.size() is still 0. Also note that thrust::transform doesn't alter the size of the output vector. ...


0

Two things can help: trying to optimize data cache usage by putting the vertices roughly in the order you will draw them trying to optimize post transform cache usage (there is an algorithm to do that here, and implementations can probably be found on the net)


1

I found another way to do this. In order to be able to use lower_bound, I needed to make sure that t is globally sorted. In order to do that, I first find out the starting points of each sub_segment using adjacent_difference. After that, scatter_if copies increasing numbers from a counting_iterator for each starting point of a subsegment. Finally, ...


2

Here is one possible approach: Mark the end of your (t-)segments. I assume that it's possible for an e-segment to have a single t-segment. If that's the case, then adjacent e-segments could have t-segments of the same numerical value (1 presumably). Therefore marking the end of segments needs to consider both e and t. I use a method basically like ...


-1

Firstly, thanks to m.s. for his answer as it pointed me in the right direction. Please bear in mind though if you are using Microsoft Visual Studio, only VS2013 supports variadic tuples. For c++11 feature support list for host compiler (cl.exe as in VS2013) use the link below. https://msdn.microsoft.com/en-us/library/hh567368.aspx PS : make sure you are ...


2

The two ideas I considered were: Idea A: Compute all the entropies Select the ones that meet the criteria Idea B: Select the incoming data that meets the criteria Compute the entropies. Idea A seems to be doing unnecessary work - computing entropies that are or may be not needed. However as I worked through the process for Idea B, I ended up adding ...


3

There is no need to copy, you can use a combination of thrust::zip_iterator and a strided_range iterator. The following example works for a list of floats where 3 consecutive values belong to each other. It can of course be extended to support more than that, it is just a matter of typing. The first step is to load some demo data on to the GPU, this uses a ...


0

Have a look at the documentation of cublasDgemv. The signature is: cublasDgemv(cublasHandle_t handle, cublasOperation_t trans, int m, int n, const double *alpha, const double *A, int lda, const double *x, int incx, const double *beta, ...


0

thrust::device_vector <float> vec(raw_data, raw_data+100); vec variable is filled with data copied from pointer variable raw_data of range 0 to 100. It is using the following constructor to initialize the variable vec. template<typename InputIterator > __host__ device_vector (InputIterator first, InputIterator last)


5

The problem is you are instantiating all the vectors in the same CUDA GPU context, then trying to use them in a different context. This happens because the default constructor for each device_vector gets called when you define the array of structures. To annotate your code: struct LstmLayer lstmLayers[MAX_NUM_LSTM_LAYERS]; // default constructor for each ...


3

As @JaredHoberock pointed out, probably the key issue is that you are trying to compile a .cpp file. You need to rename that file to .cu and also make sure it is being compiled by nvcc. After you fix that, you will probably run into another issue. This is not correct and will not compile: thrust::sort(h_vec.begin(), d_vec.end()); The first parameter ...


0

Thanks for the help, I now see what I did wrong. Here is the working version of the code. //Subdividing input data across GPUs int number_gpu=Np / GPU_N; int data_offset_gpu[GPU_N+1]; data_offset_gpu[0]=0; //Get data sizes for each GPU for (i = 0; i < GPU_N; i++) { data_offset_gpu[i+1] = data_offset_gpu[i] + number_gpu; } //Take into account "odd" ...


2

You should provide an MCVE, not a partial snippet. SO expects that for questions like these ("why isn't this code working?"). However, I see at least 2 issues. this doesn't look correct to me: This: thrust::device_vector<ARRAYTYPE> dev_pos(3*number_gpu[i]); says "allocated on the device, storage in the vector dev_pos for 3*number_gpu[i] ...


2

There are 2 things I would point out. Both of these are (now) referenced in this related question/answer which you may wish to refer to. The failure of thrust to issue the underlying kernels to non-default streams in this case seems to be related to this issue. It can be rectified (as covered in the comments to the question) by updating to the latest ...


4

Thrust interprets ordinary pointers as pointing to data on the host: thrust::reduce_by_key(d_list, d_list+n, d_ones, C, D,cmp); Therefore thrust will call the host path for the above algorithm, and it will seg fault when it attempts to dereference those pointers in host code. This is covered in the thrust getting started guide: You may wonder ...


-2

I wonder if there is possible to make the simply following: int *ptr = &dv[0]; when dv is allocated in device.


2

From your last comment, it is clear that what you are really asking about here is functor parameter initialisation. CUDA uses the C++ object model, so structures have class semantics and behaviour. So your example functor struct my_functor { __host__ __device__ float operator()(thrust::tuple<float, float> args) const { float A[2] = ...


2

What you have appeared to have overlooked is that copy_if returns an iterator which points to the end of the copied data from the stream compaction operation. So all that is required is this: //copies to device thrust::device_vector<int> d_src = h_src; //Result vector thrust::device_vector<int> d_res(d_src.size()); //Copy non-zero elements ...


1

This can be easily done in thrust. The following code uses thrust::find to find the value within the array. It uses a custom operator== which should avoid divergence. #include <thrust/device_vector.h> #include <thrust/find.h> #include <vector_types.h> inline __host__ __device__ bool operator==(const int3& a, const int3& b) { ...



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