Started by timer Running as SYSTEM Building in workspace /var/lib/jenkins/jobs/pytorch_train/workspace [SSH] script: TARGETNODE="""" module load anaconda3_gpu/4.13.0 module load cuda/11.7.0 cd pytorch_train rm -f train_results_jenkins.csv # Slurm Arguments sargs="--nodes=1 " sargs+="--ntasks-per-node=1 " sargs+="--mem=16g " sargs+="--time=00:10:00 " sargs+="--account=bbmb-hydro " sargs+="--gpus-per-node=1 " sargs+="--gpu-bind=closest " # Add Target node if it exists if [[ ! -z ${TARGETNODE} ]] then PARTITION=`sinfo --format="%R,%N" -n hydro61 | grep hydro61 | cut -d',' -f1 | tail -1` sargs+="--partition=${PARTITION} " sargs+="--nodelist=${TARGETNODE} " else sargs+="--partition=a100 " fi # Executable to run scmd="python train.py | tee time.txt" # Run the command start_time=`date +%s.%N` echo $"Starting srun with command" echo "srun $sargs $scmd" srun $sargs $scmd end_time=`date +%s.%N` runtime=$( echo "$end_time - $start_time" | bc -l ) echo "YVALUE=$runtime" > time.txt printf "Pytorch test completed in %0.3f secs\n" $runtime [SSH] executing... Starting srun with command srun --nodes=1 --ntasks-per-node=1 --mem=16g --time=00:10:00 --account=bbmb-hydro --gpus-per-node=1 --gpu-bind=closest --partition=a100 python train.py | tee time.txt srun: job 98389 queued and waiting for resources srun: job 98389 has been allocated resources Running benchmark on hydro04 Epoch [1/64], Step [100/600], Loss: 0.2111 Epoch [1/64], Step [200/600], Loss: 0.2059 Epoch [1/64], Step [300/600], Loss: 0.0928 Epoch [1/64], Step [400/600], Loss: 0.0733 Epoch [1/64], Step [500/600], Loss: 0.0532 Epoch [1/64], Step [600/600], Loss: 0.0909 Epoch [2/64], Step [100/600], Loss: 0.0603 Epoch [2/64], Step [200/600], Loss: 0.0442 Epoch [2/64], Step [300/600], Loss: 0.0930 Epoch [2/64], Step [400/600], Loss: 0.0160 Epoch [2/64], Step [500/600], Loss: 0.0240 Epoch [2/64], Step [600/600], Loss: 0.0631 Epoch [3/64], Step [100/600], Loss: 0.0306 Epoch [3/64], Step [200/600], Loss: 0.0342 Epoch [3/64], Step [300/600], Loss: 0.0819 Epoch [3/64], Step [400/600], Loss: 0.0166 Epoch [3/64], Step [500/600], Loss: 0.0294 Epoch [3/64], Step [600/600], Loss: 0.0166 Epoch [4/64], Step [100/600], Loss: 0.0056 Epoch [4/64], Step [200/600], Loss: 0.0054 Epoch [4/64], Step [300/600], Loss: 0.0133 Epoch [4/64], Step [400/600], Loss: 0.0089 Epoch [4/64], Step [500/600], Loss: 0.0376 Epoch [4/64], Step [600/600], Loss: 0.0645 Epoch [5/64], Step [100/600], Loss: 0.0151 Epoch [5/64], Step [200/600], Loss: 0.0131 Epoch [5/64], Step [300/600], Loss: 0.0303 Epoch [5/64], Step [400/600], Loss: 0.0070 Epoch [5/64], Step [500/600], Loss: 0.0038 Epoch [5/64], Step [600/600], Loss: 0.0154 Epoch [6/64], Step [100/600], Loss: 0.0047 Epoch [6/64], Step [200/600], Loss: 0.0064 Epoch [6/64], Step [300/600], Loss: 0.0294 Epoch [6/64], Step [400/600], Loss: 0.0432 Epoch [6/64], Step [500/600], Loss: 0.0056 Epoch [6/64], Step [600/600], Loss: 0.0080 Epoch [7/64], Step [100/600], Loss: 0.0605 Epoch [7/64], Step [200/600], Loss: 0.0110 Epoch [7/64], Step [300/600], Loss: 0.0072 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Epoch [11/64], Step [300/600], Loss: 0.0079 Epoch [11/64], Step [400/600], Loss: 0.0091 Epoch [11/64], Step [500/600], Loss: 0.0012 Epoch [11/64], Step [600/600], Loss: 0.0280 Epoch [12/64], Step [100/600], Loss: 0.0024 Epoch [12/64], Step [200/600], Loss: 0.0026 Epoch [12/64], Step [300/600], Loss: 0.0138 Epoch [12/64], Step [400/600], Loss: 0.0012 Epoch [12/64], Step [500/600], Loss: 0.0042 Epoch [12/64], Step [600/600], Loss: 0.0038 Epoch [13/64], Step [100/600], Loss: 0.0221 Epoch [13/64], Step [200/600], Loss: 0.0022 Epoch [13/64], Step [300/600], Loss: 0.0054 Epoch [13/64], Step [400/600], Loss: 0.0005 Epoch [13/64], Step [500/600], Loss: 0.0212 Epoch [13/64], Step [600/600], Loss: 0.0020 Epoch [14/64], Step [100/600], Loss: 0.0117 Epoch [14/64], Step [200/600], Loss: 0.0048 Epoch [14/64], Step [300/600], Loss: 0.0004 Epoch [14/64], Step [400/600], Loss: 0.0233 Epoch [14/64], Step [500/600], Loss: 0.0006 Epoch [14/64], Step [600/600], Loss: 0.0005 Epoch [15/64], Step [100/600], 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[600/600], Loss: 0.0010 Epoch [19/64], Step [100/600], Loss: 0.0036 Epoch [19/64], Step [200/600], Loss: 0.0043 Epoch [19/64], Step [300/600], Loss: 0.0006 Epoch [19/64], Step [400/600], Loss: 0.0023 Epoch [19/64], Step [500/600], Loss: 0.0013 Epoch [19/64], Step [600/600], Loss: 0.0006 Epoch [20/64], Step [100/600], Loss: 0.0037 Epoch [20/64], Step [200/600], Loss: 0.0285 Epoch [20/64], Step [300/600], Loss: 0.0025 Epoch [20/64], Step [400/600], Loss: 0.0110 Epoch [20/64], Step [500/600], Loss: 0.0572 Epoch [20/64], Step [600/600], Loss: 0.0001 Epoch [21/64], Step [100/600], Loss: 0.0024 Epoch [21/64], Step [200/600], Loss: 0.0152 Epoch [21/64], Step [300/600], Loss: 0.0029 Epoch [21/64], Step [400/600], Loss: 0.0020 Epoch [21/64], Step [500/600], Loss: 0.0040 Epoch [21/64], Step [600/600], Loss: 0.0015 Epoch [22/64], Step [100/600], Loss: 0.0052 Epoch [22/64], Step [200/600], Loss: 0.0006 Epoch [22/64], Step [300/600], Loss: 0.0004 Epoch [22/64], Step [400/600], Loss: 0.0003 Epoch 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0.0019 Epoch [26/64], Step [400/600], Loss: 0.0004 Epoch [26/64], Step [500/600], Loss: 0.0001 Epoch [26/64], Step [600/600], Loss: 0.0001 Epoch [27/64], Step [100/600], Loss: 0.0002 Epoch [27/64], Step [200/600], Loss: 0.0004 Epoch [27/64], Step [300/600], Loss: 0.0386 Epoch [27/64], Step [400/600], Loss: 0.0008 Epoch [27/64], Step [500/600], Loss: 0.0016 Epoch [27/64], Step [600/600], Loss: 0.0006 Epoch [28/64], Step [100/600], Loss: 0.0014 Epoch [28/64], Step [200/600], Loss: 0.0000 Epoch [28/64], Step [300/600], Loss: 0.0002 Epoch [28/64], Step [400/600], Loss: 0.0001 Epoch [28/64], Step [500/600], Loss: 0.0000 Epoch [28/64], Step [600/600], Loss: 0.0002 Epoch [29/64], Step [100/600], Loss: 0.0001 Epoch [29/64], Step [200/600], Loss: 0.0002 Epoch [29/64], Step [300/600], Loss: 0.0010 Epoch [29/64], Step [400/600], Loss: 0.0003 Epoch [29/64], Step [500/600], Loss: 0.0000 Epoch [29/64], Step [600/600], Loss: 0.0000 Epoch [30/64], Step [100/600], Loss: 0.0005 Epoch [30/64], Step 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[56/64], Step [500/600], Loss: 0.0000 Epoch [56/64], Step [600/600], Loss: 0.0000 Epoch [57/64], Step [100/600], Loss: 0.0000 Epoch [57/64], Step [200/600], Loss: 0.0000 Epoch [57/64], Step [300/600], Loss: 0.0000 Epoch [57/64], Step [400/600], Loss: 0.0000 Epoch [57/64], Step [500/600], Loss: 0.0000 Epoch [57/64], Step [600/600], Loss: 0.0740 Epoch [58/64], Step [100/600], Loss: 0.0004 Epoch [58/64], Step [200/600], Loss: 0.0113 Epoch [58/64], Step [300/600], Loss: 0.0013 Epoch [58/64], Step [400/600], Loss: 0.0093 Epoch [58/64], Step [500/600], Loss: 0.0181 Epoch [58/64], Step [600/600], Loss: 0.0001 Epoch [59/64], Step [100/600], Loss: 0.0000 Epoch [59/64], Step [200/600], Loss: 0.0000 Epoch [59/64], Step [300/600], Loss: 0.0000 Epoch [59/64], Step [400/600], Loss: 0.0015 Epoch [59/64], Step [500/600], Loss: 0.0000 Epoch [59/64], Step [600/600], Loss: 0.0000 Epoch [60/64], Step [100/600], Loss: 0.0002 Epoch [60/64], Step [200/600], Loss: 0.0002 Epoch [60/64], Step [300/600], Loss: 0.0000 Epoch [60/64], Step [400/600], Loss: 0.0002 Epoch [60/64], Step [500/600], Loss: 0.0001 Epoch [60/64], Step [600/600], Loss: 0.0001 Epoch [61/64], Step [100/600], Loss: 0.0000 Epoch [61/64], Step [200/600], Loss: 0.0000 Epoch [61/64], Step [300/600], Loss: 0.0000 Epoch [61/64], Step [400/600], Loss: 0.0001 Epoch [61/64], Step [500/600], Loss: 0.0000 Epoch [61/64], Step [600/600], Loss: 0.0000 Epoch [62/64], Step [100/600], Loss: 0.0002 Epoch [62/64], Step [200/600], Loss: 0.0000 Epoch [62/64], Step [300/600], Loss: 0.0001 Epoch [62/64], Step [400/600], Loss: 0.0000 Epoch [62/64], Step [500/600], Loss: 0.0001 Epoch [62/64], Step [600/600], Loss: 0.0000 Epoch [63/64], Step [100/600], Loss: 0.0001 Epoch [63/64], Step [200/600], Loss: 0.0000 Epoch [63/64], Step [300/600], Loss: 0.0000 Epoch [63/64], Step [400/600], Loss: 0.0000 Epoch [63/64], Step [500/600], Loss: 0.0000 Epoch [63/64], Step [600/600], Loss: 0.0001 Epoch [64/64], Step [100/600], Loss: 0.0000 Epoch [64/64], Step [200/600], Loss: 0.0001 Epoch [64/64], Step [300/600], Loss: 0.0001 Epoch [64/64], Step [400/600], Loss: 0.0001 Epoch [64/64], Step [500/600], Loss: 0.0000 Epoch [64/64], Step [600/600], Loss: 0.0001 Pytorch test completed in 381.534 secs [SSH] completed [SSH] exit-status: 0 [workspace] $ /bin/sh -xe /tmp/jenkins11890660099099468709.sh + scp 'HYDRO_REMOTE:~svchydrojenkins/pytorch_train/time.txt' /var/lib/jenkins/jobs/pytorch_train/workspace Recording plot data Saving plot series data from: /var/lib/jenkins/jobs/pytorch_train/workspace/time.txt Finished: SUCCESS