I'm new to OpenCL and I'm using the C++ wrapper to program with it. I have an older AMD card (Radeon HD 5770) which might be the cause of the problem but I want to rule this one out for now.

I'm trying to "process" an "image" for which I'm faking a 400 x 400 pixel^2 as a 1D array of integers. So, my buffer size should be 4 * 400 * 400 - roughly 640kb. I don't think this is large at all.

Some stats I think are relevant:

  • Max work items per work group: 256
  • Max Work item dimensions per work group: (256, 256, 256) where x * y * z <= 256, though, I think.
  • Max memory allocation size: 536,870,912 (looks like 1/2 GB)
  • Catalyst 14.12
  • AMD SDK 3.0.0 (Beta)
  • Using Visual Studio Community 2013

Some code:

#include <cstdio>
#include <cstdlib>
#include <fstream>
#include <iostream>
#include <iterator>
#include <stdio.h>
#include <streambuf>
#include <string>

#include <CL/cl.hpp>

using namespace System;
using namespace std;
#define IMG_WIDTH 400
#define IMG_HEIGHT 400

int main(array<System::String ^> ^args)
    vector<cl::Platform> all_platforms;

    cl::Platform default_platform = all_platforms[0];

    vector<cl::Device> all_devices;
    default_platform.getDevices(CL_DEVICE_TYPE_ALL, &all_devices);
    cl::Device default_device = all_devices[0];     

    cl::Context context({ default_device });

    std::ifstream file("kernels.cl");
    std::string kcode(std::istreambuf_iterator<char>(file),

    cl::Program::Sources sources(1,
         std::make_pair(kcode.c_str(), kcode.length() + 1));

    cl::Program program(context, sources);

    if (program.build({ default_device }) != CL_SUCCESS){
        cout << "Error building " << program.getBuildInfo<CL_PROGRAM_BUILD_LOG>(default_device) << endl;

    int h_C[IMG_WIDTH * IMG_HEIGHT]; // initialize the array.
    cl::Buffer d_C(context, CL_MEM_READ_WRITE, sizeof(int) * IMG_WIDTH * IMG_HEIGHT); // create the device memory for this array.

    cl::CommandQueue queue(context, default_device, CL_QUEUE_PROFILING_ENABLE);

    cl::Kernel kernel_to_run(program, "get_row");   
    kernel_to_run.setArg(0, d_C);
    kernel_to_run.setArg(1, IMG_WIDTH);
    kernel_to_run.setArg(2, IMG_HEIGHT);

    cl::Event evt;
    queue.enqueueNDRangeKernel(kernel_to_run, cl::NullRange, cl::NDRange(IMG_WIDTH, IMG_HEIGHT), cl::NDRange(10, 10), NULL, &evt);

    /* I think the problem is here. If I comment it out, the program
       will run fine, but I need the device information back to the
       host, though!
    queue.enqueueReadBuffer(d_C, CL_TRUE, 0, sizeof(int) * IMG_WIDTH * IMG_HEIGHT, h_C);

    unsigned long elapsed = (unsigned long)(evt.getProfilingInfo<CL_PROFILING_COMMAND_END>() -
std::cout << " result: " << elapsed / (float)10e6 << " ms";

    delete &d_C;

The Kernel, which does nothing but only store which global row each "pixel" belongs to:

#pragma OPENCL EXTENSION cl_khr_byte_addressable_store : enable
__kernel void get_row(__global int *out, int width, int height){

    int r = get_global_id(1);
    int c = get_global_id(0);

    if ((r >= height) || (c >= width))

    int gIdx = r * width + c;

    out[gIdx] = r;


What am I doing wrong? For 400 x 400, the program gives me an error "Process is Terminated Due To Stack Overflow Exception"

  • Are my "image" dimensions too big (a mere 400 x 400) for total work item size?
  • I chose a work group size of 100 (10 x 10), so, I think I will have 1600 work groups with a 400 x 400. I don't think there is a limit on the number of work groups, even for older devices, or is there?
  • Maybe I don't have my host code in the correct order.

Any help on this is appreciated. I don't want to get a new graphics card if at all possible. I don't want to split my image into smaller rectangles and then divide those up into work groups.

I do the equivalent of the above in CUDA (in another machine) with larger images than 400 x 400 with no problem.


Your variable h_C consumes a lot of stack memory. Stack memory is very limited. Instead of using a stack variable like,


Dynamically-allocate it using something like std::vector:

std::vector<int> h_C;
queue.enqueueReadBuffer(d_C, CL_TRUE, 0, sizeof(int) * IMG_WIDTH * IMG_HEIGHT, h_C.data());

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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