#!/bin/bash #SBATCH --job-name=asda-rccp-pj2 #SBATCH --partition=a6000 #SBATCH --gres=gpu:1 #SBATCH --time=13-11:30:00 #SBATCH --mem=28000 #SBATCH --cpus-per-task=3 #SBATCH --output=./exp_rccp_projection/pj_rccp_m10_tmp007_coarse_fthr070_oiou_bs28.log ml purge ml load cuda/11.8 eval "$(conda shell.bash hook)" conda activate asda cd /data2/projects/chaeyun/ASDA export NCCL_P2P_DISABLE=1 export NVIDIA_TF32_OVERRIDE=1 export NCCL_IB_TIMEOUT=100 export NCCL_IB_RETRY_CNT=15 export MASTER_PORT=8871 BS=28 SAVENAME=pj_rccp_m10_tmp007_coarse_fthr070_oiou_bs28 MARGIN=10 TEMP=0.07 MODE=hardpos_only_refined FILTER_THRES=0.68 FUSE_MODE=coarse # Running options # pj_rccp_m10_tmp007_coarse_fthr070_oiou_bs28 # TRAIN export CUDA_VISIBLE_DEVICES=0 python_args="--dataset refcoco+ \ --splitBy unc \ --ngpu 1 --batch_size ${BS} \ --savename ${SAVENAME} --time 17 \ --metric_learning --use_projections \ --margin_value ${MARGIN} \ --filter_thres ${FILTER_THRES} \ --temperature ${TEMP} \ --metric_mode ${MODE} \ --fuse_mode ${FUSE_MODE} " python train_rcc_sbert_oiou.py $python_args