#!/bin/bash #SBATCH --partition=scavenger-gpu #SBATCH --exclude=dcc-youlab-gpu-28,dcc-gehmlab-gpu-56 #SBATCH --array=0-999 # 6 configurations to test #SBATCH --ntasks=1 #SBATCH --nodes=1 #SBATCH --cpus-per-task=1 #SBATCH --mem-per-cpu=8G #SBATCH --gres=gpu:1 #SBATCH --time=8:00:00 #SBATCH --output=/work/jf381/code/code/ICL_LOG/data_generation/%A_%a_%j.out #SBATCH --error=/work/jf381/code/code/ICL_LOG/data_generation/%A_%a_%j.err #SBATCH --requeue set -e # load_pretrain_model 0 # rbf 1 2 4 971 067 971 # 30,31,32 softmax use_cf # 18,19,20 softmax use_ff # exp 9 10 11 # 678 softmax # nvidia-smi | grep 'python' | awk '{ print $5 }' | xargs -n1 kill -9 # SLURM_ARRAY_TASK_ID=3 # conda activate /work/jf381/cache/conda_envs/paul3100 # source activate /work/jf381/cache/conda_envs/paul31 # use SLURM_ARRAY_TASK_ID to control # cd /work/jf381/code/code/ICL_Jay ## pretrain useful for pe+lap ## add noise add performance ## test context size ## test model # distribute 1000 tasks on # python /work/jf381/code/code/ICL_Jay/train_end2end_new.py --test_mode $SLURM_ARRAY_TASK_ID --n_epochs 3001 --data_type sphere --data_generation --slurm_id --slurm_tasks # n_epochs_stride # SLURM_ARRAY_TASK_ID=0 #!/bin/bash # 定义噪声水平列表 #!/bin/bash # 获取SLURM任务ID # SLURM_ARRAY_TASK_ID=34 # SLURM_ARRAY_TASK_ID=15 # SLURM_ID=${SLURM_ARRAY_TASK_ID:-0} # SLURM_ARRAY_TASK_ID=15 SLURM_ID=15 # 设置数据类型 # 设置基础噪声水平(或从列表中选择) add_noises=0 # 也可以从一个列表中基于SLURM_ID选择 # 使用SLURM_ID来确定模型配置 # 假设我们有以下变量组合: # 1. n_layer_icl: 1, 2, 3, 4 # 2. kernel: 'linear', 'rbf', 'softmax', 'exp' # 3. 使用选项: 无特殊选项, use_ff, use_ct # /work/jf381/code/code/ICL_LOG/ICL_MODEL_TEST_TYPE2_Finetune_Pretrain_ENDEND # NOW # data_type="cylinder" # test_data_type="cylinder" # data_type="cylinder" # test_data_type="cylinder" # data_type="cylinder" # test_data_type="cylinder" # 计算层数 (1, 2, 4) layer_options=(1 2 4) layer_idx=$(( SLURM_ID % 3 )) n_layer_icl=${layer_options[$layer_idx]} # 计算kernel类型 (0-3) kernel_idx=$(( (SLURM_ID / 3) % 4 )) kernels=("linear" "rbf" "softmax" "exp") kernel=${kernels[$kernel_idx]} # 计算使用选项 (0-2) option_idx=$(( (SLURM_ID / 12) % 3 )) options=("" "--use_ff" "--use_cf") option=${options[$option_idx]} icl_type=2 echo "Running with configuration:" echo "SLURM_ID = $SLURM_ID" echo "n_layer_icl = $n_layer_icl" echo "kernel = $kernel" echo "option = $option" echo "icl_type = $icl_type" batch_size=200 data_type="combine-5" test_data_type=$data_type SLURM_ARRAY_TASK_ID=0 # echo $SLURM_ARRAY_TASK_ID/ load_pretrain_model=0 test_mode=$load_pretrain_model seed=2 context_size=40 query_size=60 n_samples=$((context_size+query_size)) # SLURM_ARRAY_TASK_ID=0 python /work/jf381/code/code/ICL_Jay/train_end2end_new.py \ --test_mode $test_mode \ --n_epochs 30001 \ --data_type $data_type \ --n_layer_icl $n_layer_icl \ --test_data_type $test_data_type \ --add_noises $add_noises \ --kernel $kernel \ --load_pretrain_model -1 \ --fine_tune_n_epochs 31 \ --icl_type $icl_type \ --suffix n_samples_${n_samples}_context_size_${context_size} \ --train_context_size $context_size \ --test_context_size $context_size \ --n_samples $n_samples \ --seed $seed \ --batch_size $batch_size \ --data_generation \ --slurm_id $SLURM_ARRAY_TASK_ID \ --slurm_tasks 1 \ --batch_size $batch_size # distribute 1000 tasks to generate # python /work/jf381/code/code/ICL_Jay/train_end2end_new.py --n_epochs 3001 --data_type swiss_roll --data_generation --slurm_id $SLURM_ARRAY_TASK_ID --slurm_tasks 100 --batch_size 200