blob: f91ae3ce1f6ca94eb7c876066aec9952c4cbfc97 [file] [log] [blame]
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export PYTHONPATH=$PYTHONPATH:./internal/ml/model_selection
conda activate trails
############## c10 dataset ##############
# run both 2phase-MS and training-free MS
python internal/ml/model_selection/exps/micro/benchmark_budget_aware_alg.py \
--search_space nasbench201 \
--api_loc NAS-Bench-201-v1_1-096897.pth \
--dataset cifar10 \
--epoch 200 \
--base_dir ../exp_data/ \
--log_name logs_default \
--result_dir ./internal/ml/model_selection/exp_result/
############## c100 dataset ##############
python internal/ml/model_selection/exps/micro/benchmark_budget_aware_alg.py \
--search_space nasbench201 \
--api_loc NAS-Bench-201-v1_1-096897.pth \
--dataset cifar100 \
--epoch 200 \
--base_dir ../exp_data/ \
--log_name logs_default \
--result_dir ./internal/ml/model_selection/exp_result/
############## imageNet dataset ##############
python internal/ml/model_selection/exps/micro/benchmark_budget_aware_alg.py \
--search_space nasbench201 \
--api_loc NAS-Bench-201-v1_1-096897.pth \
--dataset ImageNet16-120 \
--epoch 200 \
--base_dir ../exp_data/ \
--log_name logs_default \
--result_dir ./internal/ml/model_selection/exp_result/
############## draw graphs ##############
python internal/ml/model_selection/exps/micro/draw_budget_aware_alg.py