The K-Scale Labs clusters are shared cluster for robotics research. This page contains notes on how to access the clusters.
Contents
Onboarding
To get onboarded, you should send us the public key that you want to use and maybe your preferred username.
Lambda Cluster
After being onboarded, you should receive the following information:
- Your user ID (for this example, we'll use
stompy
) - The jumphost ID (for this example, we'll use
127.0.0.1
) - The cluster ID (for this example, we'll use
127.0.0.2
)
To connect, you should be able to use the following command:
ssh -o ProxyCommand="ssh -i ~/.ssh/id_rsa -W %h:%p stompy@127.0.0.1" stompy@127.0.0.2 -i ~/.ssh/id_rsa
Note that ~/.ssh/id_rsa
should point to your private key file.
Alternatively, you can add the following to your SSH config file, which should allow you to connect directly,
Use your favorite editor to open the ssh config file (normally located at ~/.ssh/config
for Ubuntu) and paste the text:
Host jumphost
User stompy
Hostname 127.0.0.1
IdentityFile ~/.ssh/id_rsa
Host cluster
User stompy
Hostname 127.0.0.2
ProxyJump jumphost
IdentityFile ~/.ssh/id_rsa
After setting this up, you can use the command ssh cluster
to directly connect.
You can also access via VS Code. Tutorial of using ssh
in VS Code is here.
Please inform us if you have any issues!
Notes
- You may need to restart
ssh
to get it working. - You may be sharing your part of the cluster with other users. If so, it is a good idea to avoid using all the GPUs. If you're training models in PyTorch, you can do this using the
CUDA_VISIBLE_DEVICES
command. - You should avoid storing data files and model checkpoints to your root directory. Instead, use the
/ephemeral
directory. Your home directory should come with a symlink to a subdirectory which you have write access to.
Andromeda Cluster
The Andromeda cluster is a different cluster which uses Slurm for job management. Authentication is different from the Lambda cluster - Ben will provide instructions directly.
Reserving a GPU
Here is a script you can use for getting an interactive node through Slurm.
gpunode () {
local job_id=$(squeue -u $USER -h -t R -o %i -n gpunode)
if [[ -n $job_id ]]
then
echo "Attaching to job ID $job_id"
srun --jobid=$job_id --partition=$SLURM_GPUNODE_PARTITION --gpus=$SLURM_GPUNODE_NUM_GPUS --cpus-per-gpu=$SLURM_GPUNODE_CPUS_PER_GPU --pty $SLURM_XPUNODE_SHELL
return 0
fi
echo "Creating new job"
srun --partition=$SLURM_GPUNODE_PARTITION --gpus=$SLURM_GPUNODE_NUM_GPUS --cpus-per-gpu=$SLURM_GPUNODE_CPUS_PER_GPU --interactive --job-name=gpunode --pty $SLURM_XPUNODE_SHELL
}
Example env vars:
export SLURM_GPUNODE_PARTITION='compute'
export SLURM_GPUNODE_NUM_GPUS=1
export SLURM_GPUNODE_CPUS_PER_GPU=4
export SLURM_XPUNODE_SHELL='/bin/bash'
Integrate the example script into your shell then run gpunode
.
You can see partition options by running sinfo
.
You might get an error like this: groups: cannot find name for group ID 1506
. But things should still run fine. Check with nvidia-smi
.
Useful Commands
Set a node state back to normal:
sudo scontrol update nodename='nodename' state=resume