One or more of the system checks did not pass, with the following errors ... CUDA Environment:

3 Ansichten (letzte 30 Tage)
I successfully connected the jetson nano and correctly identified cuda, but I still reported an error when I checked it. How can I solve it?
jetsonObj = jetson('myIP','myname','mypassword')
camlist = getCameraList(jetsonObj)
Checking for CUDA availability on the Target...
Checking for 'nvcc' in the target system path...
Checking for cuDNN library availability on the Target...
Checking for TensorRT library availability on the Target...
Checking for prerequisite libraries is complete.
Gathering hardware details...
Checking for third-party library availability on the Target...
Gathering hardware details is complete.
Board name : NVIDIA Jetson TX1
CUDA Version : 10.2
cuDNN Version : 8.0
TensorRT Version : 7.1
GStreamer Version : 1.14.5
V4L2 Version : 1.14.2-1
SDL Version : 1.2
Available Webcams :
Available GPUs : NVIDIA Tegra X1
jetsonObj =
jetson with properties:
DeviceAddress: '***'
Port: 22
BoardName: 'NVIDIA Jetson TX1'
CUDAVersion: '10.2'
cuDNNVersion: '8.0'
TensorRTVersion: '7.1'
SDLVersion: '1.2'
V4L2Version: '1.14.2-1'
GStreamerVersion: '1.14.5'
GPUInfo: [1×1 struct]
WebcamList: []
camlist =
1×3 table
Camera Name Video Device Available Resolutions
__________________________ _____________ ________________________________________________
"vi-output, imx219 8-0010" "/dev/video0" "[1280 720],[1920 1080],[3264 1848],[3264 2464]"
then i check env:envCfg = coder.gpuEnvConfig('jetson');
envCfg.BasicCodegen = 1;
envCfg.Quiet = 1;
envCfg.HardwareObject = jetsonObj;
coder.checkGpuInstall(envCfg);

Akzeptierte Antwort

cui,xingxing
cui,xingxing am 2 Nov. 2020
I solved the problem by referring to it, ~/.bashrc also needs to add an additional environment variable
case $- in
*i*) ;;
*)
export PATH=${PATH}:/usr/local/cuda-10.2/bin
export LD_LIBRARY_PATH=${LD_LIBRARY_PATH}:/usr/local/cuda-10.2/lib64
export LD_LIBRARY_PATH=${LD_LIBRARY_PATH}:/usr/lib/aarch64-linux-gnu
return;;
esac
  1 Kommentar
teng yang
teng yang am 18 Jan. 2021
Hi! I have the same problem.But I have a new error after using your method.It is like this:
One or more of the system checks did not pass, with the following errors ...
Deep Learning (cuDNN) Code Generation: (Test GPU code generation failed with
the error 'emlc:compilationError'. View report for further
information: View report)
Do you have any suggestion ?

Melden Sie sich an, um zu kommentieren.

Weitere Antworten (0)

Kategorien

Mehr zu Get Started with GPU Coder finden Sie in Help Center und File Exchange

Produkte


Version

R2020b

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!

Translated by