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7

Ok, I think I've figured it out on my own. If cuobjdump is in the path, then in cuda-gdb, the command x $pc will give you the assembler at which the current thread is stopped. The problem is that if the source was not compiled with -G, you won't be able to relate the assembler statement to a line in your code. To match the assembler to the kernel code, ...


4

There are several problems here. It is probably easier to start by showing the "correct" way to use those two constant arrays, then explain why what you did doesn't work. So the kernel should look like this: __global__ void kernel(int *X, int *out, int N) { int tid = threadIdx.x + blockIdx.x*blockDim.x; if( tid<N ) { out[tid] = ...


4

Your example code is completely optimised away by the compiler because none of the code contributes to a global memory write. This is easily proved by compiling the kernel to a cubin file and disassembling the result with cuobjdump: $ nvcc -arch=sm_20 -Xptxas="-v" -cubin struct.cu ptxas info : Compiling entry function '_Z8myKernelv' for 'sm_20' ptxas ...


4

The worst problem I see is that you are launching far too many blocks for the size of the input array. At the moment you are computing the grid size as: dim3 numBlocks(n_x*n_y / threadsPerBlock.x, n_x*n_y / threadsPerBlock.y); which should yield a grid size of (400,4000) blocks for an input array of only 200x200. That is clearly incorrect. The calculation ...


4

If you do proper cuda error checking in your code, you can retrieve that 0xb error that is being reported from a cudaGetLastError call, and pass it to a decoder (cudaGetErrorString) that will tell you something more meaningful. CUDA runtime API error codes are enumerated in driver_types.h, which on a standard linux install will be in /usr/local/cuda/include ...


3

Thank you. From the sounds of it, your problem is that the device nodes required are not getting initialized. Usually, running X will create the device nodes that are required for the CUDA software stack to communicate with the hardware. When X is not running, as the case is here, running as root creates the nodes. A normal user cannot create the nodes due ...


3

Additional information on CUDA-MEMCHECK errors can be found in CUDA-MEMCHECK User Manual. Misaligned address exceptions occur when the address does not meet the natural alignment of the data access size. error if (address & (access_size_in_bytes - 1)) For example if you tried to perform a 32-bit shared load from address 0x1 you would receive a ...


3

These libraries are not open source, and so naturally debug symbols are not provided. If you find that there is a bug in a library, I recommend you become a registered CUDA developer and report the issue using the online bug report form. Alternatively (but less preferably), report the issue in more detail here or on the NVIDIA forums. Before you report a ...


3

From the CUDA DEBUGGER User Manual, Section 3.3.1: NVCC, the NVIDIA CUDA compiler driver, provides a mechanism for generating the debugging information necessary for CUDA-GDB to work properly. The -g -G option pair must be passed to NVCC when an application is compiled in order to debug with CUDA-GDB; for example, nvcc -g -G foo.cu -o foo ...


3

I think it's likely that in-kernel new is failing, because you are allocating too much memory. In-kernel new has similar behavior and limitations as in-kernel malloc. These allocations are limited to the device heap, which starts out by default at 8MB. If the 250x250 array size corresponds to something in that range (8MB), then going significantly above ...


3

The problem was the version of cuda-gdb, I had to use cuda-gdb version 5. It comes with the toolkit version 5, just did a symbolic lick to /usr/bin and it's working.


2

Can you make sure the CUDA_VISIBLE_DEVICES environment variable contains all the devices you want to be used, such as: $ ./deviceQuery -noprompt | egrep "^Device" Device 0: "Tesla C2050" Device 1: "Tesla C1060" Device 2: "Quadro FX 3800" By setting the variable you can make only a subset of them visible to the runtime: $ export CUDA_VISIBLE_DEVICES="0,2" ...


2

You have broken a line in two - it should be: $ export PATH=/usr/local/cuda/bin:$PATH $ export LD_LIBRARY_PATH=/usr/local/cuda/lib64:/usr/local/cuda/lib:$LD_LIBRARY_PATH You probably got confused by the line wrap in the nVidia PDF.


2

I am from the CUDA developer tools team. When compiled for device side debug (i.e. -G), the original code will not be optimized out. The issue looks like a memcheck bug. Thank you for finding this. We will look into it.


2

This will be a problem: manmatvec residues0 ; residues0.x = &resu0; residues0.y = &resv0; residues0.z = &resw0; The resu0, resv0, and resw0 variables are allocated in host memory - on the host stack. You're putting host addresses into the manmatvec structure, then passing the manmatvec into the kernel. On the receiving end, the ...


2

You should set a breakpoint before issuing a run command. Does your application perform proper error checking? Note that cuda-gdb may "hide" GPUs used to render you OS graphical interface. E.g. if you have a single GPU system and run CUDA application from cuda-gdb in windowing environment (such as GTK or KDE) you application may fail because no GPUs will be ...


2

Please follow the steps outlined in "Setting Up the Debugger Environment" in CUDA-GDB manual. This problem is caused by the debugger requiring special permissions.


2

You should be able to use regular CUDA debugger (e.g. Nsight or cuda-gdb) to debug the GPU code in your JCuda application. You can use Java debuggers (e.g. Eclipse) to debug Java code. There is no debugger that can seamlessly debug Java and CUDA code though.


2

It is possible to debug CUDA programs with nsight and bumblebee. (nsight v.5.0.0, bumblebee 3.2.1, Debian sid) You just have to replace the debugger command line (CUDA GDB Executable) in: Project Explorer -> right click on your project -> select "Debug as" -> click on "Debug configurations..." -> select "Debugger" tab CUDA GDB Executable: optirun ...


2

This is internal cuda-gdb bug. You should report a bug. Can you try installing CUDA toolkit from the package on NVIDIA site?


2

The behavior is undefined in the event of a CUDA error which corrupts the CUDA context. This type of error is evident because it is "sticky", meaning once it occurs, every single CUDA API call will return that error, until the context is destroyed. Non-sticky errors are cleared automatically after they are returned by a cuda API call (with the exception of ...


2

The GeForce GTX 750 Ti is based on NVIDIA's new Maxwell architecture (compute capability 5.0) and requires CUDA 6.0.


1

Unconditional breakpoint breaks for every new "batch" of threads arriving to the device. This is needed so you can explore all your threads. Because of some technical issues, conditional breakpoints should be set after you break in kernel at least once. This will be fixed in CUDA Toolkit 6.0.


1

So, i want to know: Within the __device__ kernel, uarray is shared yet? Yes, when you pass a pointer to shared memory to a device function this way, it still points to the same place in shared memory. In response to the questions posted below which are perplexing me, I elected to show a simple example: $ cat t249.cu #include <stdio.h> #define ...


1

Can you ping/ssh the remote host? In our testing, we noticed that the CentOS and Fedora have a firewall enabled by default. Please consult your OS documentation on how to open the ports.


1

This looks like a bug in Nsight, we will take a look into this matter. Please make sure that you have remote toolkit configured for your connection. From the main menu, select Run -> Debug Configurations... In the left-hand tree, select you debug configuration under C/C++ Remote Application Make sure that Remote toolkit combo has proper toolkit selected. ...


1

I have experienced same problem. (Kepler architecture, ubuntu 13.04) I have done some research and found out this link. The problem occurs because of your driver version is higher than your toolkit version. Your toolkit isn't able to recognize your driver. I have solved this problem by installing Cuda-Toolkit-5.5 (Release Candidate) and display driver from ...


1

This behavior is typical for kernel launch failure. Make sure you check return codes of the CUDA calls. Note that for debugging you may want to add additional call cudaDeviceSynchronize immediately after the kernel call and to check the return code from this call - it is the most precise way to obtain the cause of the asynchronous kernel launch failure. ...


1

So there are several problems with this code. In no particular order: You are indexing through your various arrays from 1 to 4, but this is not correct in C. C indexing starts at zero and goes to one less than the dimension. This has nothing to do with CUDA. cudaMemcpy2D expects two pointers (src and dst) both of which are pointers to linear arrays in ...


1

Try running "lsof /dev/nvidia*", it will show you which program is holding the device nodes open. If X is using those GPUs, it will be evident from the output.



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