run_openblas_infer.sh 1.8 KB
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set -e

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function clock_to_seconds() {
  hours=`echo $1 | awk -F ':' '{print $1}'`
  mins=`echo $1 | awk -F ':' '{print $2}'`
  secs=`echo $1 | awk -F ':' '{print $3}'`
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  echo `awk 'BEGIN{printf "%.2f",('$secs' + '$mins' * 60 + '$hours' * 3600)}'`
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}

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function infer() {
  unset OMP_NUM_THREADS MKL_NUM_THREADS OMP_DYNAMIC KMP_AFFINITY
  topology=$1
  layer_num=$2
  bs=$3
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  thread=`nproc`
  if [ $thread -gt $bs ]; then
    thread=$bs
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  fi
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  log="logs/infer-${topology}-${layer_num}-${thread}openblas-${bs}.log"
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  models_in="models/${topology}-${layer_num}/pass-00000/"
  if [ ! -d $models_in ]; then
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    echo "./run_mkl_infer.sh to save the model first"
    exit 0
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  fi
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  log_period=$((256 / bs))
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  paddle train --job=test \
    --config="${topology}.py" \
    --use_gpu=False \
    --trainer_count=$thread \
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    --log_period=$log_period \
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    --config_args="batch_size=${bs},layer_num=${layer_num},is_infer=True" \
    --init_model_path=$models_in \
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    2>&1 | tee ${log}

  # calculate the last 5 logs period time of 1280 samples,
  # the time before are burning time.
  start=`tail ${log} -n 7 | head -n 1 | awk -F ' ' '{print $2}' | xargs`
  end=`tail ${log} -n 2 | head -n 1 | awk -F ' ' '{print $2}' | xargs`
  start_sec=`clock_to_seconds $start`
  end_sec=`clock_to_seconds $end`
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  fps=`awk 'BEGIN{printf "%.2f",(1280 / ('$end_sec' - '$start_sec'))}'`
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  echo "Last 1280 samples start: ${start}(${start_sec} sec), end: ${end}(${end_sec} sec;" >> ${log}
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  echo "FPS: $fps images/sec" 2>&1 | tee -a ${log}
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}

if [ ! -f "train.list" ]; then
  echo " " > train.list
fi
if [ ! -f "test.list" ]; then
  echo " " > test.list
fi
if [ ! -d "logs" ]; then
  mkdir logs
fi

# inference benchmark
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for batchsize in 1 2 4 8 16; do
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  infer alexnet 2 $batchsize $use_mkldnn
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  infer googlenet v1 $batchsize
  infer resnet 50 $batchsize
  infer vgg 19 $batchsize
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done