CUDA_DEVICE=${1} # Current GPU number NUM_INDEX=${2} # Current eval set index TOTAL_GPU=8 # Total number of GPUs (We used 8 GPUs) # PATHS OUTPUT_PATH=./outputs/ LOG_FOLDER_NAME=log STAGE2=./checkpoints/vtimellm/vtimellm-vicuna-v1-5-7b-stage2 STAGE3=./checkpoints/vtimellm/vtimellm-vicuna-v1-5-7b-stage3 ACT_FEAT_FOLDER=./data/activitynet/clipvitl14-vtimellm.pth YCOOK_FEAT_FOLDER=./data/YouCook2/clipvitl14-vtimellm.pth BASE_MODEL=./checkpoints/vtimellm/vicuna-7b-v1.5 #================= CoTasks ================# # STAGE4=$OUTPUT_PATH/vtimellm-vicuna-v1-5-7b-activitynet-stage4 # CUDA_VISIBLE_DEVICES=$CUDA_DEVICE python vtimellm/eval/eval_combined.py \ # --data_path ./data/activitynet/val_2.json \ # --feat_folder $ACT_FEAT_FOLDER \ # --model_base $BASE_MODEL \ # --stage2 $STAGE2 \ # --stage3 $STAGE3 \ # --stage4 $STAGE4 \ # --total_gpu $TOTAL_GPU \ # --num_gpu $NUM_INDEX \ # --log_path $STAGE4/$LOG_FOLDER_NAME #================= CoTasks + MDPO ================# STAGE4=$OUTPUT_PATH/vtimellm-vicuna-v1-5-7b-activitynet-stage4 STAGE5=$OUTPUT_PATH/vtimellm-vicuna-v1-5-7b-activitynet-stage5 CUDA_VISIBLE_DEVICES=$CUDA_DEVICE python vtimellm/eval/eval_combined.py \ --data_path ./data/activitynet/val_2.json \ --feat_folder $ACT_FEAT_FOLDER \ --model_base $BASE_MODEL \ --stage2 $STAGE2 \ --stage3 $STAGE3 \ --stage4 $STAGE4 \ --stage5 $STAGE5 \ --total_gpu $TOTAL_GPU \ --num_gpu $NUM_INDEX \ --log_path $STAGE5/$LOG_FOLDER_NAME # Automatic metric evaluation if CUDA_DEVICE is 0 if [ "$CUDA_DEVICE" -eq "0" ]; then echo "Metric Evaluation starts. After 3 minutes (just in case)" sleep 3m bash scripts/eval/metric-act.sh else echo "Finished Generating Results." fi