metric="min_diff_filter" scenes="A,B,D,G,H,I" all_scenes="A,B,C,D,E,F,G,H,I" # file which contains model names we want to use for simulation file_path="results/models_comparisons.csv" for window in {"3","5","7","9","11"}; do echo python generate/generate_reconstructed_data.py --features ${metric} --params ${window},${window} --size 100,100 --scenes ${all_scenes} done for scene in {"A","B","D","G","H","I"}; do # remove current scene test from dataset s="${scenes//,${scene}}" s="${s//${scene},}" for zone in {10,11,12}; do for balancing in {0,1}; do OUTPUT_DATA_FILE="${metric}_nb_zones_${zone}_W${width}_H${height}_balancing${balancing}_without_${scene}" OUTPUT_DATA_FILE_TEST="${metric}_nb_zones_${zone}_W${width}_H${height}_balancing${balancing}_scene_${scene}" if grep -q "${OUTPUT_DATA_FILE}" "${file_path}"; then echo "SVD model ${OUTPUT_DATA_FILE} already generated" else #echo "Run computation for SVD model ${OUTPUT_DATA_FILE}" echo python generate/generate_dataset.py --output data/${OUTPUT_DATA_FILE_TEST} --features ${metric} --scenes ${scene} --params ${width},${height} --nb_zones ${zone} --random 1 --size 100,100 echo python generate/generate_dataset.py --output data/${OUTPUT_DATA_FILE} --features ${metric} --scenes ${s} --params ${width},${height} --nb_zones ${zone} --random 1 --size 100,100 echo python train_model.py --data data/${OUTPUT_DATA_FILE} --output ${OUTPUT_DATA_FILE} --balancing ${balancing} echo python prediction_model.py --data data/${OUTPUT_DATA_FILE_TEST}.train --model saved_models/${OUTPUT_DATA_FILE}.json fi done done done