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Description of the Equipment

A High Performance Computing (HPC) is a specially designed network of computers capable of running applications that can exchange data efficiently.

VU MIF HPC consists of a supercomputer from the clusters (the first number is the actual and available amount):

Title Nodes CPU GPU RAM HDD Network Notes
main 35/36 48 0 384GiB 0 1Gbit/s, 2x10Gbit/s, 4xEDR(100Gbit/s) infiniband CPU
gpu 3/3 40 8 512GB/32GB 7TB 2x10Gbit/s, 4xEDR(100Gbit/s) infiniband CPU NVIDIA DGX-1
power 2/2 32 4 1024GB/32GB 1.8TB 2x10Gbit/s, 4xEDR(100Gbit/s) infiniband IBM Power System AC922

Total 40/41 nodes, 1912 CPU cores with 17TB RAM, 32 GPU with 1TB RAM.

The processor below = CPU = core - a single core of the processor (with all hyperthreads if they are turned on).

Software

In main and gpu partitions there are installed Qlustar 11 OS. It is based on Ubuntu 18.04 LTS. In power partition there is installed Ubuntu 18.04 LTS.

You can check the list of OS package with the command dpkg -l (in login node hpc or in power nodes).

With the command singularity it is possible to make use of ready-made copies of container files in directories /apps/local/hpc, /apps/local/nvidia, /apps/local/intel, /apps/local/lang or to download from singularity and docker online repositories. You can also create your own singularity containers using the MIF cloud service.

You can prepare your container with singularity, for example:

$ singularity build --sandbox /tmp/python docker://python:3.8
$ singularity exec -w /tmp/python pip install package
$ singularity build python.sif /tmp/python
$ rm -rf /tmp/python

Similarly, you can use R, Julia or other containers that do not require root privileges to install packages.

If you want to add OS packages to the singularity container, you need root/superuser privileges. With fakeroot, we simulate them, and copy the required library libfakeroot-sysv.so into the container, for example:

$ singularity build --sandbox /tmp/python docker://ubuntu:18.04
$ cp /libfakeroot-sysv.so /tmp/python/
$ fakeroot -l /libfakeroot-sysv.so singularity exec -w /tmp/python apt-get update
$ fakeroot -l /libfakeroot-sysv.so singularity exec -w /tmp/python apt-get install python3.8 ...
$ fakeroot -l /libfakeroot-sysv.so singularity exec -w /tmp/python apt-get clean
$ rm -rf /tmp/python/libfakeroot-sysv.so /tmp/python/var/lib/apt/lists (you can clean up more of what you don't need)
$ singularity build python.sif /tmp/python
$ rm -rf /tmp/python

There are ready-made scripts to run your hadoop tasks using the Magpie set in the directory /apps/local/bigdata.

With JupyterHub you can run calculations with the python command line in a web browser and use the JupyterLab environment. If you install your own JupyterLab environment in your home directory, you need to install the additional batchspawner package - this will start your environment, for example:

$ python3.7 -m pip install --upgrade pip setuptools wheel
$ python3.7 -m pip install --ignore-installed batchspawner jupyterlab

Alternatively, you can use a container that you made via JupyterHub. In that container, you need to install the batchswapner and jupyterlab packages, and to create a script ~/.local/bin/batchspawner-singleuser with execution permissions (chmod +x ~/.local/bin/batchspawner-singleuser).

#!/bin/sh
exec singularity exec --nv myjupyterlab.sif batchspawner-singleuser "$@"

Registration

  • For VU MIF network users - HPC can be used without additional registration if the available resources are enough (monthly limit - 100 CPU-h and 6 GPU-h). Once this limit has been reached, you can request more by filling in ITOAC service request form.
  • For users of the VU computer network - you must fill in the ITOAC service request form to get access to MIF HPC. After the confirmation of your request, you must create your account in Waldur portal. More details read here.
  • For other users (non-members of the VU community) - you must fill in the ITOAC service request form to get access to MIF HPC. After the confirmation of your request, you must come to VU MIF Didlaukio str. 47, Room 302/304 to receive your login credentials. Please arranged the exact time by phone + 370 5219 5005. With these credentials you are able to create an account in Waldur portal. More details read here.

Connection

You need to use SSH applications (ssh, putty, winscp, mobaxterm) and Kerberos or SSH key authentication to connect to HPC.

If Kerberos is used:

  • Log in to the Linux environment in a VU MIF classroom or public terminal with your VU MIF username and password or login to uosis.mif.vu.lt with your VU MIF username and password using ssh or putty.
  • Check if you have a valid Kerberos key (ticket) with the klist command. If the key is not available or has expired, the kinit command must be used.
  • Connect to the hpc node with the command ssh hpc (password must not be required).

If SSH keys are used (e.g. if you need to copy big files):

  • If you don't have SSH keys, you can find instructions on how to create them in a Windows environment here
  • Before you can use this method, you need to log in with Kerberos at least once. Then create a ~/.ssh directory in the HPC file system and put your ssh public key (in OpenSSH format) into the ~/.ssh/authorized_keys file.
  • Connect with ssh, sftp, scp, putty, winscp or any other ssh protocol supported software to hpc.mif.vu.lt with your ssh private key, specifying your VU MIF user name. It should not require a login password, but may require your ssh private key password.

The first time you connect, you will not be able to run SLURM jobs for the first 5 minutes. After that, SLURM account will be created.

Lustre - Shared File System

VU MIF HPC shared file system is available in the directory /scratch/lustre.

The system creates directory /scratch/lustre/home/username for each HPC user, where username is the HPC username.

The files in this file system are equally accessible on all compute nodes and on the hpc node.

Please use these directories only for their purpose and clean them up after calculations.

HPC Partition

Partition Time limit RAM Notes
main 7d 7000MB CPU cluster
gpu 48h 12000MB GPU cluster
power 48h 2000MB IBM Power9 cluster

The time limit for tasks is 2h in all partitions if it has not been specified. The table shows the maximum time limit.

The RAM column gives the amount of RAM allocated to each reserved CPU core.

Batch Processing of Tasks (SLURM)

To use computing resources of the HPC, you need to create task scenarios (sh or csh).

Example:

mpi-test-job.sh
#!/bin/bash
#SBATCH -p main
#SBATCH -n4
module load openmpi
mpicc -o mpi-test mpi-test.c
mpirun mpi-test

After submission and confirmation of your application to the ITOAC services, you need to create a user at https://hpc.mif.vu.lt/. The created user will be included in the relevant project, which will have a certain amount of resources. In order to use the project resources for calculations, you need to provide your allocation number. Below is an example with the allocation parameter “alloc_xxxx_project” (not applicable for VU MIF users, VU MIF users do not have to specify the –account parameter).

mpi-test-job.sh
#!/bin/bash
#SBATCH --account=alloc_xxxx_projektas
#SBATCH -p main
#SBATCH -n4
#SBATCH --time=minutes
module load openmpi
mpicc -o mpi-test mpi-test.c
mpirun mpi-test

It contains instructions for the task performer as special comments.

-p short - which queue to send to (main, gpu, power).

-n4 - how many processors to reserve (NOTE: if you set the number of cores to be used to x, but actually use fewer cores programmatically, the accounting will still count all the x “requested” cores, so we recommend to calculate this in advance).

The initial running directory of the task is the current directory (pwd) on the login node from where the task is run, unless it was changed to another directory by the -D parameter. For the initial running directory, use the HPC shared filesystem directories /scratch/lustre, as it must exist on the compute node and the job output file slurm-JOBID.out is created there, unless redirected by -o or -i (for these it is advisable to use the shared filesystem as well).

The generated script is sent with the command sbatch,

$ sbatch mpi-test-job

which returns the number of the submitted job JOBID.

The status of a pending or ongoing task can be checked with the command squeue

$ squeue -j JOBID

With the scancel command it is possible to cancel the running of a task or to remove it from the queue

$ scancel JOBID

If you forgot your tasks JOBID, you can check them with the command squeue

$ squeue

Completed tasks are no longer displayed in squeue.

If the specified number of processors is not available, your task is added to the queue. It will remain in the queue until a sufficient number of processors become available or until you remove it with scancel.

The output of the running job is recorded in the file slurm-JOBID.out. The error output is written to the same file unless you specified somewhere else. The file names can be changed with the sbatch command parameters -o (specify the output file) and -e (specify the error file).

More about SLURM opportunities you can read Quick Start User Guide.

Interactive Tasks (SLURM)

Interactive tasks can be done with the srun command:

$ srun --pty $SHELL

The above command will connect you to the compute node environment assigned to SLURM and allow you to directly run and debug programs on it.

After the commands are done disconnect from the compute node with the command

$ exit

If you want to run graphical programs, you need to connect to ssh -X to uosis.mif.vu.lt and hpc:

$ ssh -X uosis.mif.vu.lt
$ ssh -X hpc
$ srun --pty $SHELL

In power cluster interactive tasks can be performed with

$ srun -p power --mpi=none --pty $SHELL

GPU Tasks (SLURM)

To use GPU you need to specify additionally

--gres gpu:N

where N is desired GPU amount.

With nvidia-smi in the task you can check the GPU amount that was dedicated.

Example of an interactive task with 1 GPU:

$ srun -p gpu --gres gpu --pty $SHELL

Introduction to OpenMPI

Ubuntu 18.04 LTS is the packet of 2.1.1 OpenMPI version. To use the newer version 4.0.1 you need to use

module load openmpi/4.0

before running MPI commands.

MPI Compiling Programs

An example of a simple MPI program is in the directory /scratch/lustre/test/openmpi. mpicc (mpiCC, mpif77, mpif90, mpifort) is a framework for C (C++, F77, F90, Fortran) compilers that automatically adds the necessary MPI include and library files to the command line.

$ mpicc -o foo foo.c
$ mpif77 -o foo foo.f
$ mpif90 -o foo foo.f

Implementation of MPI Programmes

MPI programs are started with mpirun or mpiexec. You can learn more about them with the man mpirun or man mpiexec command.

A simple (SPMD) program can be started with the following mpirun command line.

$ mpirun foo

All allocated processors will be used according to the number ordered. If you want to use less, you can specify the -np quantity parameter in mpirun. It is not recommended to use less CPU than reserved for a longer time period, as unused CPUs remain free.

ATTENTION It is strictly forbidden to use more CPU than you have reserved, as this may affect the performance of other tasks.

Find more information on OpenMPI.

Task Efficiency

  • Please use at least 50% of the ordered CPU quantity.
  • Using more CPUs than ordered will not improve performance, as your task will only be able to use the CPUs ordered.
  • If you use the –mem=X parameter, the task can reserve more CPUs in proportion to the amount of memory it wants. For example: if you order –mem=14000 in the main queue, at least 2 CPUs will be reserved, unless other parameters specify more. If your task uses less than this, it will be an ineffective use of resources. In addition, it may run slower because it may use other memory than the executing CPU.

The Limits of Resources

If your tasks don't start because of AssocGrpCPUMinutesLimit or AssocGrpGRESMinutes, you need to check if there are any unused CPU/GPU resources left from your monthly limit.

The first way to see how much resources are used:

sreport -T cpu,mem,gres/gpu cluster AccountUtilizationByUser Start=0101 End=0131 User=USERNAME

Where the USERNAME - is your MIF user name. Start and End show the start and end days of the current month. You can specify them also by $(date +%m01) and $(date +%m31).

NOTE Usage of resources is given in minutes, divide the number by 60 to get hours.

The second way to see how much resources are used:

sshare -l -A USERNAME_mif -p -o GrpTRESRaw,GrpTRESMins,TRESRunMins

Where USERNAME is your MIF user name. Or specify the account whose usage you want to see in -A. The data is also displayed in minutes:

  • GrpTRESRaw - how much is used.
  • GrpTRESMins - what is the limit.
  • GGRTRESRunMins - the remaining resources for tasks that are still running.

The Links

en/hpc.1658154961.txt.gz · Last modified: 2022/07/18 14:36 by grikiete

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