Difference between revisions of "MBRC"

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The MBRC ([https://mbrc.umd.edu MBRC]) at the University of Maryland is located within the Institute for Advanced Computer Studies.  The MBRC has a cluster of computational (CPU/GPU) resources that are available to be scheduled.
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The [https://mbrc.umd.edu MBRC] at the University of Maryland is located within the Institute for Advanced Computer Studies.  The MBRC has a cluster of computational (CPU/GPU) resources that are available to be scheduled.
  
 
=Compute Infrastructure=
 
=Compute Infrastructure=

Latest revision as of 18:24, 29 September 2021

The MBRC at the University of Maryland is located within the Institute for Advanced Computer Studies. The MBRC has a cluster of computational (CPU/GPU) resources that are available to be scheduled.

Compute Infrastructure

Each of UMIACS cluster computational infrastructures is accessed through the submission node. Users will need to submit jobs through the SLURM resource manager once they have logged into the submission node. Each cluster in UMIACS has different quality of service (QoS) that need to be selected upon submission of a job and many like this one has specific other resources such as GPUs that need to be requested for a job.

The current submission node(s) for MBRC is:

  • mbrcsub00.umiacs.umd.edu

Partition

There are two partitions to the MBRC SLURM computational infrastructure. If you do not specify a partition when submitting your job you will receive the dpart.

  • dpart - This is the default partition and job allocations are guaranteed.
  • scavenger - This is the alternate partition that allows jobs longer run times and more resources but is preemptable when jobs in the dpart are ready to be scheduled.

QoS

MBRC currently has 3 QoS for the dpart and 1 QoS for the scavenger partition. The important parts here is that in different QoS you can have a shorter/longer maximum wall time, a total number of jobs running at once and a maximum number of track-able resources (TRES) for the job. In the scavenger QoS there is one more constraint that you are restricted by the total number of TRES per user (over multiple jobs).

# show_qos
      Name     MaxWall MaxJobs                        MaxTRES     MaxTRESPU   Priority
---------- ----------- ------- ------------------------------ ------------- ----------
   default  1-00:00:00       1       cpu=4,gres/gpu=2,mem=32G                       10
      high  2-00:00:00       2       cpu=4,gres/gpu=1,mem=32G                       10
    exempt  2-00:00:00       8       cpu=4,gres/gpu=1,mem=64G                        1
 scavenger  2-00:00:00       1                                   gres/gpu=8          0

GPUs

Jobs that require GPU resources need to explicitly request the resources within their job submission. This is done through Generic Resource Scheduling (GRES). Currently all nodes in the cluster are homogeneous however in the future this may not be the case. Users may use the most generic identifier in this case gpu a colon and a number to select without explicitly naming the type of GPU (ie. --gres gpu:4 for 4 GPUs).

$ sinfo -o "%15n %10c %10m  %25f %25G"
NODELIST        CPUS       MEMORY      AVAIL_FEATURES            GRES
mbrc[00]      32         191896          (null)                    gpu:rtx2080ti:8
mbrc[01]      32         191896          (null)                    gpu:rtx2080ti:8


Job Submission and Management

Users should review our SLURM job submission and job management documentation.

A very quick start to get an interactive shell is as follows when run on the submission node. This will allocate 1 GPU with 16GB of memory (system RAM) in the QoS default for 4 hours maximum time. If the job goes beyond these limits either the memory allocation or the maximum time it will be terminated immediately.

srun --pty --gres=gpu:1 --mem=16G --qos=default --time=04:00:00 bash
[jheager2@mbrcsub00:~ ] $ srun --pty --gres=gpu:1 --mem=16G --qos=default --time=04:00:00 bash
[jheager2@mbrc00:~ ] $ nvidia-smi -L
GPU 0: GeForce RTX 2080 Ti (UUID: GPU-4ad5c018-b9bc-e664-233a-5d9ee8ad05cb)

Data Storage

Until the final storage investment arrives we have made available a temporary allocation of storage. This section is subject to change. There are 3 types of storage available to users in the MBRC home directories, project directories and scratch directories.

Home Directories

Home directories in the MBRC computational infrastructure are available from the Institutes NFShomes as /nfshomes/USERNAME where USERNAME is your username. These home directories have very limited storage and are intended for your personal files, configuration and source code. Your home directory is not intended for datasets or other large scale data holdings. Users are encouraged to utilize our GitLab infrastructure to host your code repositories.

NOTE: To check your quota on this directory you will need to use the quota -s command.

Your home directory data is fully protected and has both snapshots and is backed up nightly.

Project Directories

For this cluster we have decided to allocate network storage on a project by project basis. Jonathan Heagerty will be the point of contact as it pertains to allocating the requested/required storage for each project. As a whole, the MBRC Cluster has limited network storage and for this there will be limits to how much and how long network storage can be appropriated.

If the requested storage size is significantly large relative to the total allotted amount, the request will be relayed from Jonathan Heagerty to the MBRC Cluster faculty for approval. Two other situations that would need approval from the MBRC Cluster faculty would be: To request an increase to a projects current storage allotment or To request a time extension for a projects storage.

When making a request for storage please provide the following information to staff@umiacs.umd.edu:

       - Name of user requesting storage:
               Example: jheager2
       - Name of project:
               Example: Foveated Rendering
       - Collaborators working on the project:
               Example: Sida Li
       - Storage size:
               Example: 1TB
       - Length of time for storage:
               Example: 6-8 months

Scratch Directories

Local Scratch Directory

Each computational node that a user can schedule compute jobs on has one or more local scratch directories. These are always named /scratch0, /scratch1 ~ 3.5TB. These are almost always more performant than any other storage available to the job. However users must stage their data within the confine of their job and stage the data out before the end of their job.