AMD Exercises¶
Login to Lumi¶
ssh USERNAME@lumi.csc.fi
.ssh/config
file.
# LUMI
Host lumi
User <USERNAME>
Hostname lumi.csc.fi
IdentityFile <HOME_DIRECTORY>/.ssh/id_rsa
ServerAliveInterval 600
ServerAliveCountMax 30
The ServerAlive*
lines in the config file may be added to avoid timeouts when idle.
Now you can shorten your login command to the following.
ssh lumi
If you are able to log in with the ssh command, you should be able to use the secure copy command to transfer files. For example, you can copy the presentation slides from lumi to view them.
scp lumi:/project/project_465001098/Slides/AMD/<file_name> <local_filename>
You can also copy all the slides with the . From your local system:
mkdir slides
scp -r lumi:/project/project_465001098/Slides/AMD/* slides
If you don't have the additions to the config file, you would need a longer command:
mkdir slides
scp -r -i <HOME_DIRECTORY>/.ssh/<public ssh key file> <username>@lumi.csc.fi:/project/project_465001098/slides/AMD/ slides
or for a single file
scp -i <HOME_DIRECTORY>/.ssh/<public ssh key file> <username>@lumi.csc.fi:/project/project_465001098/slides/AMD/<file_name> <local_filename>
HIP Exercises¶
We assume that you have already allocated resources with salloc
cp -r /project/project_465001098/Exercises/AMD/HPCTrainingExamples/ .
salloc -N 1 -p standard-g --gpus=1 -t 10:00 -A project_465001098 --reservation LUMItraining_G
module load craype-accel-amd-gfx90a
module load PrgEnv-amd
module load rocm
git clone https://github.com/amd/HPCTrainingExamples
/project/project_465001098/Exercises/AMD/HPCTrainingExamples
as it has been tuned to the current LUMI environment.
Basic examples¶
cd HPCTrainingExamples/HIP/vectorAdd
Examine files here – README, Makefile and vectoradd_hip.cpp Notice that Makefile requires HIP_PATH to be set. Check with module show rocm or echo $HIP_PATH Also, the Makefile builds and runs the code. We’ll do the steps separately. Check also the HIPFLAGS in the Makefile.
make
srun -n 1 ./vectoradd
We can use SLURM submission script, let's call it hip_batch.sh
:
#!/bin/bash
#SBATCH -p standard-g
#SBATCH -N 1
#SBATCH --gpus=1
#SBATCH -t 10:00
#SBATCH --reservation LUMItraining_G
#SBATCH -A project_465001098
module load craype-accel-amd-gfx90a
module load rocm
cd $PWD/HPCTrainingExamples/HIP/vectorAdd
export HCC_AMDGPU_TARGET=gfx90a
make vectoradd
srun -n 1 --gpus 1 ./vectoradd
Submit the script
sbatch hip_batch.sh
Check for output in slurm-<job-id>.out
or error in slurm-<job-id>.err
Compile and run with Cray compiler
CC -x hip vectoradd.hip -o vectoradd
srun -n 1 --gpus 1 ./vectoradd
Now let’s try the cuda-stream example from https://github.com/ROCm-Developer-Tools/HIP-Examples
. This example is from the original McCalpin code as ported to CUDA by Nvidia. This version has been ported to use HIP. See add4 for another similar stream example.
git clone https://github.com/ROCm-Developer-Tools/HIP-Examples
export HCC_AMDGPU_TARGET=gfx90a
cd HIP-Examples/cuda-stream
make
srun -n 1 ./stream
export HCC_AMDGPU_TARGET=gfx90a
is not needed in case one sets the target GPU for MI250x as part of the compiler flags as --offload-arch=gfx90a
.
Now check the other examples in HPCTrainingExamples/HIP
like jacobi etc.
Hipify¶
We’ll use the same HPCTrainingExamples that were downloaded for the first exercise.
Get a node allocation.
salloc -N 1 --ntasks=1 --gpus=1 -p standard-g -A project_465001098 –-t 00:10:00`--reservation LUMItraining_G
A batch version of the example is also shown.
Hipify Examples¶
Exercise 1: Manual code conversion from CUDA to HIP (10 min)¶
Choose one or more of the CUDA samples in HPCTrainingExamples/HIPIFY/mini-nbody/cuda
directory. Manually convert it to HIP. Tip: for example, the cudaMalloc will be called hipMalloc.
Some code suggestions include nbody-block.cu, nbody-orig.cu, nbody-soa.cu
You’ll want to compile on the node you’ve been allocated so that hipcc will choose the correct GPU architecture.
Exercise 2: Code conversion from CUDA to HIP using HIPify tools (10 min)¶
Use the hipify-perl
script to “hipify” the CUDA samples you used to manually convert to HIP in Exercise 1. hipify-perl is in $ROCM_PATH/bin
directory and should be in your path.
First test the conversion to see what will be converted
hipify-perl -no-output -print-stats nbody-orig.cu
You'll see the statistics of HIP APIs that will be generated.
[HIPIFY] info: file 'nbody-orig.cu' statisitics:
CONVERTED refs count: 10
TOTAL lines of code: 91
WARNINGS: 0
[HIPIFY] info: CONVERTED refs by names:
cudaFree => hipFree: 1
cudaMalloc => hipMalloc: 1
cudaMemcpy => hipMemcpy: 2
cudaMemcpyDeviceToHost => hipMemcpyDeviceToHost: 1
cudaMemcpyHostToDevice => hipMemcpyHostToDevice: 1
hipify-perl
is in $ROCM_PATH/bin
directory and should be in your path. In some versions of ROCm, the script is called hipify-perl
.
Now let's actually do the conversion.
hipify-perl nbody-orig.cu > nbody-orig.cpp
Compile the HIP programs.
hipcc -DSHMOO -I ../ nbody-orig.cpp -o nbody-orig
The `#define SHMOO` fixes some timer printouts.
Add `--offload-arch=<gpu_type>` if not set by the environment to specify
the GPU type and avoid the autodetection issues when running on a single
GPU on a node.
- Fix any compiler issues, for example, if there was something that didn’t hipify correctly.
- Be on the lookout for hard-coded Nvidia specific things like warp sizes and PTX.
Run the program
srun ./nbody-orig
A batch version of Exercise 2 is:
#!/bin/bash
#SBATCH -N 1
#SBATCH --ntasks=1
#SBATCH --gpus=1
#SBATCH -p standard-g
#SBATCH -A project_465001098
#SBATCH -t 00:10:00
#SBATCH --reservation LUMItraining_G
module load craype-accel-amd-gfx90a
module load rocm
export HCC_AMDGPU_TARGET=gfx90a
cd HPCTrainingExamples/mini-nbody/cuda
hipify-perl -print-stats nbody-orig.cu > nbody-orig.cpp
hipcc -DSHMOO -I ../ nbody-orig.cpp -o nbody-orig
srun ./nbody-orig
cd ../../..
Notes:
- Hipify tools do not check correctness
hipconvertinplace-perl
is a convenience script that doeshipify-perl -inplace -print-stats
command
Debugging¶
The first exercise will be the same as the one covered in the presentation so that we can focus on the mechanics. Then there will be additional exercises to explore further or you can start debugging your own applications.
If required, copy the exercises:
cp -r /project/project_465001098/Exercises/AMD/HPCTrainingExamples/ .
Go to HPCTrainingExamples/HIP/saxpy
Edit the saxpy.hip
file and comment out the two hipMalloc lines.
71 //hipMalloc(&d_x, size);
72 //hipMalloc(&d_y, size);
Allocate resources:
salloc -N 1 -p standard-g --gpus=1 -t 30:00 -A project_465001098 --reservation LUMItraining_G
Now let's try using rocgdb to find the error.
Compile the code with
hipcc --offload-arch=gfx90a -o saxpy saxpy.hip
- Allocate a compute node.
- Run the code
srun -n 1 --gpus 1 ./saxpy
Output
Memory access fault by GPU node-4 (Agent handle: 0x32f330) on address (nil). Reason: Unknown.
hipcc -ggdb -O0 --offload-arch=gfx90a -o saxpy saxpy.hip
export OMP_NUM_THREADS=1
We have two options for running the debugger. We can use an interactive session, or we can just simply use a regular srun command.
srun rocgdb saxpy
The interactive approach uses:
srun --interactive --pty [--jobid=<jobid>] bash
rocgdb ./saxpy
We can also choose to use one of the Text User Interfaces (TUI) or Graphics User Interfaces (GUI). We look to see what is available.
which cgdb
-- not found
-- run with cgdb -d rocgdb <executable>
which ddd
-- not found
-- run with ddd --debugger rocgdb
which gdbgui
-- not found
-- run with gdbgui --gdb-cmd /opt/rocm/bin/rocgdb
rocgdb –tui
-- found
We have the TUI interface for rocgdb. We need an interactive session on the compute node to run with this interface. We do this by using the following command.
srun --interactive --pty [-jobid=<jobid>] bash
rocgdb -tui ./saxpy
The following is based on using the standard gdb interface. Using the TUI or GUI interfaces should be similar. You should see some output like the following once the debugger starts.
[output]
GNU gdb (rocm-rel-5.1-36) 11.2
Copyright (C) 2022 Free Software Foundation, Inc.
License GPLv3+: GNU GPL version 3 or later <http://gnu.org/licenses/gpl.html>
This is free software: you are free to change and redistribute it.
There is NO WARRANTY, to the extent permitted by law.
Type "show copying" and "show warranty" for details.
This GDB was configured as "x86_64-pc-linux-gnu".
Type "show configuration" for configuration details.
For bug reporting instructions, please see:
<https://github.com/ROCm-Developer-Tools/ROCgdb/issues>.
Find the GDB manual and other documentation resources online at:
<http://www.gnu.org/software/gdb/documentation/>.
For help, type "help".
Type "apropos word" to search for commands related to "word"...
Reading symbols from ./saxpy...
Now it is waiting for us to tell it what to do. We'll go for broke and just type run
(gdb) run
[output]
Thread 3 "saxpy" received signal SIGSEGV, Segmentation fault.[Switching to thread 3, lane 0 (AMDGPU Lane 1:2:1:1/0 (0,0,0)[0,0,0])]
0x000015554a001094 in saxpy (n=<optimized out>, x=<optimized out>, incx=<optimized out>, y=<optimized out>, incy=<optimized out>) at saxpy.hip:57
31 y[i] += a*x[i];
The line number 57 is a clue. Now let’s dive a little deeper by getting the GPU thread trace
(gdb) info threads [ shorthand - i th ]
[output]
Id Target Id Frame
1 Thread 0x15555552d300 (LWP 40477) "saxpy" 0x000015554b67ebc9 in ?? ()
from /opt/rocm/lib/libhsa-runtime64.so.1
2 Thread 0x15554a9ac700 (LWP 40485) "saxpy" 0x00001555533e1c47 in ioctl ()
from /lib64/libc.so.6
* 3 AMDGPU Wave 1:2:1:1 (0,0,0)/0 "saxpy" 0x000015554a001094 in saxpy (
n=<optimized out>, x=<optimized out>, incx=<optimized out>,
y=<optimized out>, incy=<optimized out>) at saxpy.hip:57
4 AMDGPU Wave 1:2:1:2 (0,0,0)/1 "saxpy" 0x000015554a001094 in saxpy (
n=<optimized out>, x=<optimized out>, incx=<optimized out>,
y=<optimized out>, incy=<optimized out>) at saxpy.hip:57
5 AMDGPU Wave 1:2:1:3 (1,0,0)/0 "saxpy" 0x000015554a001094 in saxpy (
n=<optimized out>, x=<optimized out>, incx=<optimized out>,
y=<optimized out>, incy=<optimized out>) at saxpy.hip:57
6 AMDGPU Wave 1:2:1:4 (1,0,0)/1 "saxpy" 0x000015554a001094 in saxpy (
n=<optimized out>, x=<optimized out>, incx=<optimized out>,
y=<optimized out>, incy=<optimized out>) at saxpy.hip:57
Note that the GPU threads are also shown! Switch to thread 1 (CPU)
(gdb) thread 1 [ shorthand - t 1]
[output]
[Switching to thread 1 (Thread 0x15555552d300 (LWP 47136))]
#0 0x000015554b67ebc9 in ?? () from /opt/rocm/lib/libhsa-runtime64.so.1
where
...
#12 0x0000155553b5b419 in hipDeviceSynchronize ()
from /opt/rocm/lib/libamdhip64.so.5
#13 0x000000000020d6fd in main () at saxpy.hip:79
(gdb) break saxpy.hip:78 [ shorthand – b saxpy.hip:78]
[output]
Breakpoint 2 at 0x21a830: file saxpy.hip, line 78
(gdb) run [ shorthand – r ]
Breakpoint 1, main () at saxpy.hip:78
48 saxpy<<<num_groups, group_size>>>(n, d_x, 1, d_y, 1);
From here we can investigate the input to the kernel and see that the memory has not been allocated. Restart the program in the debugger.
srun --interactive --pty [-jobid=<jobid>] rocgdb ./saxpy
(gdb) list 55,74
(gdb) b 60
[output]
Breakpoint 1 at 0x219ea2: file saxpy.cpp, line 62.
Alternativelly, one can specify we want to stop at the start of the routine before the allocations.
(gdb) b main
Breakpoint 2 at 0x219ea2: file saxpy.cpp, line 62.
(gdb) run
[output]
Starting program ...
...
Breakpoint 2, main() at saxpy.cpp:62
62 int n=256;
(gdb) p d_y
[output]
$1 = (float *) 0x13 <_start>
Should have intialized the pointer to NULL! It makes it easier to debug faulty alocations. In anycase, this is a very unlikely address - usually dynamic allocation live in a high address range, e.g. 0x123456789000.
(gdb) n
[output]
63 std::size_t size = sizeof(float)*n;
(gdb) n
[output]
Breakpoint 1, main () at saxpy.cpp:67
67 init(n, h_x, d_x);
(gdb) p h_x
[output]
$2 = (float *) 0x219cd0 <_start>
(gdb) p *h_x@5
Prints out the next 5 values pointed to by h_x
[output]
$3 = {-2.43e-33, 2.4e-33, -1.93e22, 556, 2.163e-36}
Random values printed out – not initialized!
(gdb) b 56
(gdb) c
[output]
Thread 5 “saxpy” hit Breakpoint 3 ….
56 if (i < n)
(gdb) info threads
Shows both CPU and GPU threads
(gdb) p x
[output]
$4 = (const float *) 0x219cd0 <_start>
(gdb) p *x@5
[output]
$5 = {-2.43e-33, 2.4e-33, -1.93e22, 556, 2.163e-36}
or
Cannot access memory at address 0x13
Let's move to the next statement:
(gdb) n
(gdb) n
(gdb) n
(gdb) p i
[output]
$6 = 0
(gdb) p y[0]
[output]
$7 = -2.12e14
(gdb) p x[0]
[output]
$8 = -2.43e-33
(gdb) p a
[output]
$9 = 1
We can see that there are multiple problems with this kernel. X and Y are not initialized. Each value of X is multiplied by 1.0 and then added to the existing value of Y.
Rocprof¶
Setup environment
salloc -N 1 --gpus=8 -p standard-g --exclusive -A project_465001098 -t 20:00 --reservation LUMItraining_G
module load PrgEnv-cray
module load craype-accel-amd-gfx90a
module load rocm
HIPIFY
exercises
cd ~/HPCTrainingExamples/HIPIFY/mini-nbody/hip/
Compile and run one case. We are on the front-end node, so we have two ways to compile for the GPU that we want to run on.
- The first is to explicitly set the GPU archicture when compiling (We are effectively cross-compiling for a GPU that is present where we are compiling).
hipcc -I../ -DSHMOO --offload-arch=gfx90a nbody-orig.hip -o nbody-orig
- The other option is to compile on the compute node where the compiler will auto-detect which GPU is present. Note that the autodetection may fail if you do not have all the GPUs (depending on the ROCm version). If that occurs, you will need to set
export ROCM_GPU=gfx90a
.
srun hipcc -I../ -DSHMOO nbody-orig.cpp -o nbody-orig
Now Run rocprof
on nbody-orig to obtain hotspots list
srun rocprof --stats nbody-orig 65536
cat results.csv
cat results.stats.csv
--basenames on
will show only kernel names without their parameters.
srun rocprof --stats --basenames on nbody-orig 65536
cat results.stats.csv
--hip-trace
srun rocprof --stats --hip-trace nbody-orig 65536
results.hip_stats.csv
cat results.hip_stats.csv
--hsa-trace
srun rocprof --stats --hip-trace --hsa-trace nbody-orig 65536
results.hsa_stats.csv
cat results.hsa_stats.csv
results.json
scp -i <HOME_DIRECTORY>/.ssh/<public ssh key file> <username>@lumi.csc.fi:<path_to_file>/results.json results.json
Open trace file
in the top left corner.
Navigate to the results.json
you just downloaded.
Use the keystrokes W,A,S,D to zoom in and move right and left in the GUI
Navigation
w/s Zoom in/out
a/d Pan left/right
Perfetto issue¶
Perfetto seems to introduced a bug, Sam created a container with a perfetto version that works with the rocprof traces. If you want to use that one you need to run docker on your laptop.
From your laptop:
sudo dockerd
sudo docker run -it --rm -p 10000:10000 --name myperfetto sfantao/perfetto4rocm
The open your web browser to: http://localhost:10000/
and open the trace.
Read about hardware counters available for the GPU on this system (look for gfx90a section)
less $ROCM_PATH/lib/rocprofiler/gfx_metrics.xml
rocprof_counters.txt
file with the counters you would like to collect
vi rocprof_counters.txt
rocprof_counters.txt
:
pmc : Wavefronts VALUInsts
pmc : SALUInsts SFetchInsts GDSInsts
pmc : MemUnitBusy ALUStalledByLDS
srun rocprof --timestamp on -i rocprof_counters.txt nbody-orig 65536
rocprof
runs 3 passes, one for each set of counters we have in that file.
Contents of rocprof_counters.csv
cat rocprof_counters.csv
Omnitrace¶
- Load Omnitrace
Omnitrace is known to work better with ROCm versions more recent than 5.2.3. So we use a ROCm 5.4.3 installation for this.
module load craype-accel-amd-gfx90a
module load PrgEnv-amd
module use /pfs/lustrep2/projappl/project_462000125/samantao-public/mymodules
module load rocm/5.4.3 omnitrace/1.10.3-rocm-5.4.x
- Allocate resources with
salloc
salloc -N 1 --ntasks=1 --partition=standard-g --gpus=1 -A project_465001098 --time=00:15:00 --reservation LUMItraining_G
- Check the various options and their values and also a second command for description
srun -n 1 --gpus 1 omnitrace-avail --categories omnitrace
srun -n 1 --gpus 1 omnitrace-avail --categories omnitrace --brief --description
- Create an Omnitrace configuration file with description per option
srun -n 1 omnitrace-avail -G omnitrace.cfg --all
- Declare to use this configuration file:
export OMNITRACE_CONFIG_FILE=/path/omnitrace.cfg
- Get the training examples:
cp -r /project/project_465001098/Exercises/AMD/HPCTrainingExamples/ .
-
Compile and execute saxpy
cd HPCTrainingExamples/HIP/saxpy
hipcc --offload-arch=gfx90a -O3 -o saxpy saxpy.hip
time srun -n 1 ./saxpy
-
Check the duration
-
Compile and execute Jacobi
cd HIP/jacobi
-
Now build the code
make -f Makefile.cray
time srun -n 1 --gpus 1 Jacobi_hip -g 1 1
-
Check the duration
Dynamic instrumentation¶
- Execute dynamic instrumentation:
time srun -n 1 --gpus 1 omnitrace-instrument -- ./saxpy
and check the duration
- About Jacobi example, as the dynamic instrumentation wuld take long time, check what the binary calls and gets instrumented:
nm --demangle Jacobi_hip | egrep -i ' (t|u) '
- Available functions to instrument:
srun -n 1 --gpus 1 omnitrace-instrument -v 1 --simulate --print-available functions -- ./Jacobi_hip -g 1 1
- the simulate option means that it will not execute the binary
Binary rewriting (to be used with MPI codes and decreases overhead)¶
-
Binary rewriting:
srun -n 1 --gpus 1 omnitrace-instrument -v -1 --print-available functions -o jacobi.inst -- ./Jacobi_hip
- We created a new instrumented binary called jacobi.inst
-
Executing the new instrumented binary:
time srun -n 1 --gpus 1 omnitrace-run -- ./jacobi.inst -g 1 1
and check the duration - See the list of the instrumented GPU calls:
cat omnitrace-jacobi.inst-output/TIMESTAMP/roctracer.txt
Visualization¶
- Copy the
perfetto-trace.proto
to your laptop, open the web page https://ui.perfetto.dev/ click to open the trace and select the file
Hardware counters¶
- See a list of all the counters:
srun -n 1 --gpus 1 omnitrace-avail --all
- Declare in your configuration file:
OMNITRACE_ROCM_EVENTS = GPUBusy,Wavefronts,VALUBusy,L2CacheHit,MemUnitBusy
- Execute:
srun -n 1 --gpus 1 omnitrace-run -- ./jacobi.inst -g 1 1
and copy the perfetto file and visualize
Sampling¶
Activate in your configuration file OMNITRACE_USE_SAMPLING = true
and OMNITRACE_SAMPLING_FREQ = 100
, execute and visualize
Kernel timings¶
- Open the file
omnitrace-binary-output/timestamp/wall_clock.txt
(replace binary and timestamp with your information) - In order to see the kernels gathered in your configuration file, make sure that
OMNITRACE_USE_TIMEMORY = true
andOMNITRACE_FLAT_PROFILE = true
, execute the code and open again the fileomnitrace-binary-output/timestamp/wall_clock.txt
Call-stack¶
Edit your omnitrace.cfg:
OMNITRACE_USE_SAMPLING = true;
OMNITRACE_SAMPLING_FREQ = 100
Execute again the instrumented binary and now you can see the call-stack when you visualize with perfetto.
Omniperf¶
- Load Omniperf:
Omniperf is using a virtual environemtn to keep its python dependencies.
module load cray-python
module load craype-accel-amd-gfx90a
module load PrgEnv-amd
module use /pfs/lustrep2/projappl/project_462000125/samantao-public/mymodules
module load rocm/5.4.3 omniperf/1.0.10-rocm-5.4.x
source /pfs/lustrep2/projappl/project_462000125/samantao-public/omnitools/venv/bin/activate
- Reserve a GPU, compile the exercise and execute Omniperf, observe how many times the code is executed
salloc -N 1 --ntasks=1 --partition=small-g --gpus=1 -A project_465001098 --time=00:30:00
cp -r /project/project_465001098/Exercises/AMD/HPCTrainingExamples/ .
cd HPCTrainingExamples/HIP/dgemm/
mkdir build
cd build
cmake ..
make
cd bin
srun -n 1 omniperf profile -n dgemm -- ./dgemm -m 8192 -n 8192 -k 8192 -i 1 -r 10 -d 0 -o dgemm.csv
-
Run
srun -n 1 --gpus 1 omniperf profile -h
to see all the options -
Now is created a workload in the directory workloads with the name dgemm (the argument of the -n). So, we can analyze it
srun -n 1 --gpus 1 omniperf analyze -p workloads/dgemm/mi200/ &> dgemm_analyze.txt
- If you want to only roofline analysis, then execute:
srun -n 1 omniperf profile -n dgemm --roof-only -- ./dgemm -m 8192 -n 8192 -k 8192 -i 1 -r 10 -d 0 -o dgemm.csv
There is no need for srun to analyze but we want to avoid everybody to use the login node. Explore the file dgemm_analyze.txt
- We can select specific IP Blocks, like:
srun -n 1 --gpus 1 omniperf analyze -p workloads/dgemm/mi200/ -b 7.1.2
But you need to know the code of the IP Block
- If you have installed Omniperf on your laptop (no ROCm required for analysis) then you can download the data and execute:
omniperf analyze -p workloads/dgemm/mi200/ --gui
- Open the web page: http://IP:8050/ The IP will be displayed in the output
For more exercises, visit here: https://github.com/amd/HPCTrainingExamples/tree/main/OmniperfExamples
or locally HPCTrainingExamples/OmniperfExamples
, there are 5 exercises, in each directory there is a readme file with instructions.
MNIST example¶
This example is supported by the files in /project/project_465000644/Exercises/AMD/Pytorch
.
These script experiment with different tools with a more realistic application. They cover PyTorch, how to install it, run it and then profile and debug a MNIST based training. We selected the one in https://github.com/kubeflow/examples/blob/master/pytorch_mnist/training/ddp/mnist/mnist_DDP.py but the concept would be similar for any PyTorch-based distributed training.
This is mostly based on a two node allocation.
-
Installing PyTorch directly on the filesystem using the system python installation.
./01-install-direct.sh
-
Installing PyTorch in a virtual environment based on the system python installation.
./02-install-venv.sh
-
Installing PyTorch in a condo environment based on the condo package python version.
./03-install-conda.sh
-
Installing PyTorch from source on top of a base condo environment. It builds with debug symbols which can be useful to facilitate debugging.
./04-install-source.sh
-
Testing a container prepared for LUMI that comprises PyTorch.
./05-test-container.sh
-
Test the right affinity settings.
./06-afinity-testing.sh
-
Complete example with MNIST training with all the trimmings to run it properly on LUMI.
./07-mnist-example.sh
-
Examples using rocprof, Omnitrace and Omniperf.
./08-mnist-rocprof.sh
./09-mnist-omnitrace.sh
./10-mnist-omnitrace-python.sh
./11-mnist-omniperf.sh
-
Example that debugs an hang in the application leveraging rocgdb.
./12-mnist-debug.sh