blob: aea5ff9e79f2417323ed59afcb1d22cc97e74524 [file] [log] [blame]
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export PYTHONPATH=$PYTHONPATH:./internal/ml/model_selection
conda activate trails
# cifar10 + nb101
python ./internal/ml/model_selection/exps/nas_bench_img/1_explore_models_100_run.py \
--search_space=nasbench101 \
--api_loc=nasbench_only108.pkl \
--base_dir=../exp_data/ \
--dataset=cifar10 \
--num_labels=10 \
--device=cpu \
--log_folder=log_img_explore_ea \
--result_dir=./internal/ml/model_selection/exp_result/
# cifar10 + nb201
python ./internal/ml/model_selection/exps/nas_bench_img/1_explore_models_100_run.py \
--search_space=nasbench201 \
--api_loc=NAS-Bench-201-v1_1-096897.pth \
--base_dir=../exp_data/ \
--dataset=cifar10 \
--init_channels=16 \
--num_stacks=3 \
--num_modules_per_stack=3 \
--num_labels=10 \
--device=cpu \
--log_folder=log_img_explore_ea \
--result_dir=./internal/ml/model_selection/exp_result/
# cifar100 + nb201
python ./internal/ml/model_selection/exps/nas_bench_img/1_explore_models_100_run.py \
--search_space=nasbench201 \
--api_loc=NAS-Bench-201-v1_1-096897.pth \
--base_dir=../exp_data/ \
--dataset=cifar100 \
--init_channels=16 \
--num_stacks=3 \
--num_modules_per_stack=3 \
--num_labels=100 \
--device=cpu \
--log_folder=log_img_explore_ea \
--result_dir=./internal/ml/model_selection/exp_result/
# imgnet + nb201
python ./internal/ml/model_selection/exps/nas_bench_img/1_explore_models_100_run.py \
--search_space=nasbench201 \
--api_loc=NAS-Bench-201-v1_1-096897.pth \
--base_dir=../exp_data/ \
--dataset=ImageNet16-120 \
--init_channels=16 \
--num_stacks=3 \
--num_modules_per_stack=3 \
--num_labels=120 \
--device=cpu \
--log_folder=log_img_explore_ea \
--result_dir=./internal/ml/model_selection/exp_result/