#!/usr/bin/env # The port for communication. Note that if you want to run multiple tasks on the same machine, # you need to specify different port numbers. export MASTER_PORT=1051 export CUDA_VISIBLE_DEVICES=0 export GPUS_PER_NODE=1 bpe_dir=../../utils/BPE user_dir=../../ofa_module restore_file=../../checkpoints/ofa_large.pt data_dir=../../dataset/pretrain_data neg_sample_dir=${data_dir}/negative_sample data=${data_dir}/vision_language_examples.tsv text_data=${data_dir}/text_examples.tsv image_data=${data_dir}/image_examples.tsv detection_data=${data_dir}/detection_examples.tsv selected_cols=0,1,2,3,4,5,6,7 text_selected_cols=0,1 image_selected_cols=0,1,2 detection_selected_cols=0,1,2 task=unify_task arch=ofa_large criterion=adjust_label_smoothed_cross_entropy label_smoothing=0.0 lr=1e-4 max_epoch=50 warmup_ratio=0.01 batch_size=4 update_freq=1 resnet_drop_path_rate=0.0 encoder_drop_path_rate=0.1 decoder_drop_path_rate=0.1 dropout=0.1 attention_dropout=0.0 max_src_length=80 max_tgt_length=30 num_bins=1000 patch_image_size=384 sample_patch_num=196 max_image_size=512 save_path=./checkpoints python3 -m torch.distributed.launch --nproc_per_node=${GPUS_PER_NODE} --master_port=${MASTER_PORT} ../../train.py \ $data \ --text-data=${text_data} \ --image-data=${image_data} \ --detection-data=${detection_data} \ --selected-cols=${selected_cols} \ --text-selected-cols=${text_selected_cols} \ --image-selected-cols=${image_selected_cols} \ --detection-selected-cols=${detection_selected_cols} \ --bpe-dir=${bpe_dir} \ --user-dir=${user_dir} \ --restore-file=${restore_file} \ --reset-optimizer --reset-dataloader --reset-meters \ --save-dir=${save_path} \ --neg-sample-dir=${neg_sample_dir} \ --task=${task} \ --arch=${arch} \ --criterion=${criterion} \ --label-smoothing=${label_smoothing} \ --batch-size=${batch_size} \ --update-freq=${update_freq} \ --encoder-normalize-before \ --decoder-normalize-before \ --share-decoder-input-output-embed \ --share-all-embeddings \ --layernorm-embedding \ --patch-layernorm-embedding \ --code-layernorm-embedding \ --resnet-drop-path-rate=${resnet_drop_path_rate} \ --encoder-drop-path-rate=${encoder_drop_path_rate} \ --decoder-drop-path-rate=${decoder_drop_path_rate} \ --dropout=${dropout} \ --attention-dropout=${attention_dropout} \ --weight-decay=0.01 --optimizer=adam --adam-betas="(0.9,0.999)" --adam-eps=1e-08 --clip-norm=5.0 \ --lr-scheduler=polynomial_decay --lr=${lr} \ --max-epoch=${max_epoch} --warmup-ratio=${warmup_ratio} \ --log-format=simple --log-interval=10 \ --fixed-validation-seed=7 \ --keep-last-epochs=15 \ --save-interval=1 \ --save-interval-updates=6000 \ --disable-validation \ --max-src-length=${max_src_length} \ --max-tgt-length=${max_tgt_length} \ --add-type-embedding \ --scale-attn \ --scale-fc \ --scale-heads \ --disable-entangle \ --num-bins=${num_bins} \ --patch-image-size=${patch_image_size} \ --sample-patch-num=${sample_patch_num} \ --max-image-size=${max_image_size} \ --fp16 \ --fp16-scale-window=128 \ --num-workers=0