Revision 14 as of 2020-06-30 13:33:40

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Slurm Pilot project for Biwi

The alpha version of a GPUMon alternative is available. Please don't send feedback yet, use it as it is.

Pilot-specific information

Involved machines are

All available GPU partitions are overlayed on biwirender03. They will be available on different nodes in the final cluster.

/!\ long partitions are not yet implemented in the pilot!

Initialising slurm

All slurm command read the cluster configuration from the environment variable SLURM_CONF, so it needs to be set:

export SLURM_CONF=/home/sladmcvl/slurm/slurm.conf

If you're interested, feel free to have a look at the configuration, feedback is welcome!

Available partitions

The equivalent to SGE's queues is called partitions in slurm.
sinfo shows all available partitions:

sinfo

PARTITION

AVAIL

TIMELIMIT

NODES

STATE

NODELIST

cpu.medium.normal

up

2-00:00:00

38

idle

bender[01-06,39-70]

gpu.low.normal

up

2-00:00:00

1

idle

biwirender[03,04]

gpu.medium.normal

up

2-00:00:00

15

idle

biwirender[05-12,17,20],bmicgpu[01-05]

gpu.medium.long

up

5-00:00:00

15

idle

biwirender[05-12,17,20],bmicgpu[01-05]

gpu.high.normal

up

2-00:00:00

3

idle

biwirender[13-15]

gpu.high.long

up

5-00:00:00

3

idle

biwirender[13-15]

gpu.debug

up

8:00:00

1

idle

biwirender[03,04]

Only the interactive partition gpu.debug should be specified (see below). The scheduler decides in which partition to put a job based on the resources requested by it.

Interactive jobs

For testing purposes a job with an interactive session with 1 GPU can be started:

srun --time 10 --partition=gpu.debug --gres=gpu:1 --pty bash -i

Allocating resources

GPUs

For a job to have access to a GPU, GPU resources need to be requested with the option --gres=gpu:<n>
Here's the sample job submission script primes_1GPU.sh requesting 1 GPU:

#!/bin/sh
#
#SBATCH  --mail-type=ALL
#SBATCH  --gres=gpu:1
#SBATCH  --output=log/%j.out
export LOGFILE=`pwd`/log/$SLURM_JOB_ID.out
# env | grep SLURM_ #Uncomment this line to show environment variables set by slurm for a job
#
# binary to execute
codebin/primes $1
echo ""
echo "Job statistics: "
sstat -j $SLURM_JOB_ID --format=JobID,AveVMSize%15,MaxRSS%15,AveCPU%15
echo ""
exit 0;

Memory

If you omit the --mem option, the default of 30G/GPU memory and 3CPUs/GPU will be allocated to your job, which will make the scheduler choose gpu.medium.normal:

sbatch primes_1GPU.sh
sbatch: GRES requested     : gpu:1
sbatch: GPUs requested     : 1
sbatch: Requested Memory   : ---
sbatch: CPUs requested     : ---
sbatch: Your job is a gpu job.
Submitted batch job 133

squeue --Format jobarrayid:8,partition:20,reasonlist:20,username:10,tres-alloc:45,timeused:10

JOBID   PARTITION           NODELIST(REASON)    USER      TRES_ALLOC                                   TIME
133     gpu.medium.normal   biwirender03        testuser  cpu=3,mem=30G,node=1,billing=3,gres/gpu=1    0:02

An explicit --mem option selects the partition as follows:

--mem

Partition

< 30G

gpu.low.normal

30G - 50G

gpu.medium.normal

>50G - 70G

gpu.high.normal

>70G

not allowed

For example with:

sbatch --mem=50G primes_2GPU.sh

the above squeue command shows:

JOBID   PARTITION           NODELIST(REASON)    USER      TRES_ALLOC                                   TIME
136     gpu.high.normal     biwirender03        testuser  cpu=6,mem=100G,node=1,billing=6,gres/gpu=2   0:28

Accounts and limits

In slurm lingo an account is equivalent to a user group. The following accounts are configured for users to be added to:

sacctmgr show account

Account

Descr

Org

deadconf

deadline_conference

biwi

deadline

deadline

biwi

long

longer time limit

biwi

root

default root account

root

staff

staff

biwi

student

student

biwi

GPU limits are stored in so-called QOS, each account is associated with the QOS we want to apply to it. Limits apply to all users added to an account.

sacctmgr show assoc format=account%15,user%15,partition%15,maxjobs%8,qos%15,defaultqos%15

Account

User

Partition

MaxJobs

QOS

Def QOS

deadconf

........

gpu_4

gpu_4

deadline

........

gpu_5

gpu_5

long

........

gpu_2

gpu_2

staff

........

gpu_7

gpu_7

student

........

gpu_3

gpu_3

The QOS' gpu_x only contain a limit for the amount of GPUs per user:

sacctmgr show qos format=name%15,maxtrespu%30

Name

MaxTRESPU

normal

gpu_1

gres/gpu=1

gpu_2

gres/gpu=2

gpu_3

gres/gpu=3

gpu_4

gres/gpu=4

gpu_5

gres/gpu=5

gpu_6

gres/gpu=6

Users with administrative privileges can move a user between accounts deadline or deadconf.

List associations of testuser:

sacctmgr show assoc where user=testuser format=account%15,user%15,partition%15,maxjobs%8,qos%15,defaultqos%15

        Account            User       Partition  MaxJobs             QOS         Def QOS
--------------- --------------- --------------- -------- --------------- ---------------
       deadline        testuser                                    gpu_3           gpu_3

Move testuser from deadline to staff:

/home/sladmcvl/slurm/change_account_of_user.sh testuser deadline staff

List associations of testuser again:

sacctmgr show assoc where user=testuser format=account%15,user%15,partition%15,maxjobs%8,qos%15,defaultqos%15

        Account            User       Partition  MaxJobs             QOS         Def QOS
--------------- --------------- --------------- -------- --------------- ---------------
          staff        testuser                                    gpu_2           gpu_2

Accounts with administrative privileges can be shown with:

sacctmgr show user format=user%15,defaultaccount%15,admin%15'

Last words

Have fun using SLURM for your jobs!

Content for the final page

Here starts the content which will eventually evolve into the final wiki page. The information won't be available all at once, it is an ongoing process.

Nodes

The following tables summarizes node specific information:

Server

CPU

Frequency

Cores

Memory

/scratch SSD

GPUs

Operating System

bender[01-06]

Intel Xeon E5-2670 v2

2.50 GHz

40

125 GB

-

-

Debian 9

bender[39-52]

Intel Xeon X5650

2.67 GHz

24

94 GB

-

-

Debian 9

bender[53-70]

Intel Xeon E5-2665 0

2.40 GHz

32

125 GB

-

-

Debian 9

biwirender03

Intel Xeon E5-2650 v2

2.60 GHz

32

125 GB

-

6 Tesla K40c (11 GB)

Debian 9

biwirender04

Intel Xeon E5-2637 v2

3.50 GHz

8

125 GB

5 Tesla K40c (11 GB)

Debian 9

biwirender0[5,6]

Intel Xeon E5-2637 v2

3.50 GHz

8

251 GB

5 GeForce GTX TITAN X (12 GB)

Debian 9

biwirender0[7-9]

Intel Xeon E5-2640 v3

2.60 GHz

16

251 GB

5 GeForce GTX TITAN X (12 GB)

Debian 9

biwirender10

Intel Xeon E5-2650 v4

2.20 GHz

24

251 GB

5 GeForce GTX TITAN X (12 GB)

Debian 9

biwirender11

Intel Xeon E5-2640 v3

2.60 GHz

16

251 GB

5 GeForce GTX TITAN X (12 GB)

Debian 9

biwirender12

Intel Xeon E5-2640 v3

2.60 GHz

32

251 GB

6 GeForce RTX 2080 Ti (10 GB)

Debian 9

biwirender13

Intel Xeon E5-2680 v3

2.50 GHz

24

503 GB

4 TITAN Xp (12 GB)
3 TITAN Xp COLLECTORS EDITION (12 GB)

Debian 9

biwirender14

Intel Xeon E5-2680 v4

2.40 GHz

28

503 GB

3 TITAN Xp (12 GB)
4 TITAN Xp COLLECTORS EDITION (12 GB)

Debian 9

biwirender15

Intel Xeon E5-2680 v4

2.40 GHz

28

503 GB

3 TITAN Xp (12 GB)
3 TITAN Xp COLLECTORS EDITION (12 GB)

Debian 9

biwirender17

Intel Xeon E5-2620 v4

2.10 GHz

32

503 GB

8 GeForce GTX 1080 Ti (11 GB)

Debian 9

biwirender20

Intel Xeon E5-2620 v4

2.10 GHz

32

377 GB

8 GeForce GTX 1080 Ti (11 GB)

Debian 9

bmicgpu01

Intel Xeon E5-2680 v3

2.50 GHz

24

251 GB

6 TITAN X (Pascal) (12 GB)

Debian 9

bmicgpu02

Intel Xeon E5-2640 v3

2.60 GHz

16

251 GB

5 TITAN Xp (12 GB)

Debian 9

bmicgpu0[3-5]

Intel Xeon E5-2630 v4

2.20 GHz

20

251 GB

6 TITAN Xp (12 GB)

Debian 9

Detailled information about all nodes can be seen by issuing the command

scontrol show nodes

An overview of utilization of individual node's resources can be shown with:

sinfo --Format nodehost:14,statecompact:7,cpusstate:16,cpusload:11,memory:8,allocmem:10,gres:55,gresused:62,reason:10

(Adapt the field length for gres and gresused to your needs)

Partitions

Partitions including their limits are shown in the following table:

Partition

DefMPG

MaxMPG

DefCPG

MaxCPG

Time limit

cpu.medium.normal

-

-

-

-

2 d

gpu.low.normal

20 GB

25 GB

3

3

2 d

gpu.medium.normal

40 GB

50 GB

3

5

2 d

gpu.medium.long

40 GB

50 GB

3

5

5 d

gpu.high.normal

70 GB

70 GB

4

4

2 d

gpu.high.long

70 GB

70 GB

4

4

5 d

gpu.debug

20 GB

25 GB

3

3

8 h

gpu.mon

-

-

-

-

15 m

Def: Default, Max: Maximum, MPG: Memory Per GPU, CPG: CPUs Per GPU

gpu.debug

This partition is reserved to run interactive jobs for debugging purposes. If a job doesn't run a process on an allocated GPU after 20 minutes it will be killed.

*.long

The *.long partitions are only accessible to members of the account "long". Membership is temporary and granted on demand by <contact to be filled in>.

Display specific information

The following is a collection of command sequences to quickly extract specific summaries.

GPUs per user

Show a sorted list of users and a summary of the GPU's used by their jobs:

scontrol -a show jobs \
    |grep -E '(UserId|TRES)=' \
    |paste - - \
    |grep 'gres/gpu' \
    |sed -E 's:^\s+UserId=([^\(]+).*gres/gpu=([0-9]+)$:\1;\2:' \
    |awk -F ';' -v OFS=';' '{a[$1]+=$2}END{for(i in a) print i,a[i]}' \
    |sort