.. | ||
.vscode | ||
main.cu | ||
Makefile | ||
NsightEclipse.xml | ||
README.md |
cuDLAErrorReporting - cuDLA Error Reporting
Description
This sample demonstrates how DLA errors can be detected via CUDA.
Key Concepts
cuDLA, Data Parallel Algorithms, Image Processing
Supported SM Architectures
SM 6.0 SM 6.1 SM 7.0 SM 7.2 SM 7.5 SM 8.0 SM 8.6 SM 8.7 SM 9.0
Supported OSes
Linux, QNX
Supported CPU Architecture
aarch64
CUDA APIs involved
CUDA Runtime API
cudaStreamCreateWithFlags, cudaStreamDestroy, cudaFree, cudaGetErrorName, cudaSetDevice, cudaStreamSynchronize, cudaMalloc, cudaMemsetAsync, cudaMemcpyAsync
Prerequisites
Download and install the CUDA Toolkit 11.8 for your corresponding platform.
Build and Run
Linux
The Linux samples are built using makefiles. To use the makefiles, change the current directory to the sample directory you wish to build, and run make:
$ cd <sample_dir>
$ make
The samples makefiles can take advantage of certain options:
-
TARGET_ARCH= - cross-compile targeting a specific architecture. Allowed architectures are aarch64. By default, TARGET_ARCH is set to HOST_ARCH. On a x86_64 machine, not setting TARGET_ARCH is the equivalent of setting TARGET_ARCH=x86_64.
$ make TARGET_ARCH=aarch64
See here for more details. -
dbg=1 - build with debug symbols
$ make dbg=1
-
SMS="A B ..." - override the SM architectures for which the sample will be built, where
"A B ..."
is a space-delimited list of SM architectures. For example, to generate SASS for SM 50 and SM 60, useSMS="50 60"
.$ make SMS="50 60"
-
HOST_COMPILER=<host_compiler> - override the default g++ host compiler. See the Linux Installation Guide for a list of supported host compilers.
$ make HOST_COMPILER=g++