#! /bin/bash # default param ILS=2000 LS=100 SS=50 LENGTH=32 # number of features POP=100 ORDER=2 TRAIN_EVERY=10 #output="rendering-attributes-ILS_${ILS}-POP_${POP}-LS_${LS}-SS_${SS}-SO_${ORDER}-SE_${TRAIN_EVERY}" DATASET="rnn/data/datasets/features-selection-rendering-scaled/features-selection-rendering-scaled" for run in {1,2,3,4,5,6,7,8,9,10}; do for POP in {20,60,100}; do for ORDER in {1,2,3}; do for LS in {1000,5000,10000}; do output="rendering-attributes-POP_${POP}-LS_${LS}-SS_${SS}-SO_${ORDER}-SE_${TRAIN_EVERY}-RUN_${run}" echo "Run optim attributes using: ${output}" python find_best_attributes_surrogate.py --data ${DATASET} --start_surrogate ${SS} --length 32 --ils ${ILS} --ls ${LS} --pop ${POP} --order ${ORDER} --train_every ${TRAIN_EVERY} --output ${output} done done done done