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| |
| RANK=1 |
| MASTER_PORT=29571 |
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| |
| LOCAL_BATCH_SIZE=4 |
| GRADIENT_ACCUMULATION_STEPS=1 |
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| |
| export TRANSFORMERS_OFFLINE=1 |
| export WANDB_PROJECT=vtimellm |
| MODEL_VERSION=vicuna-v1-5-7b |
| OUTPUT_DIR=./outputs/ |
|
|
| RUN_NAME=vtimellm-$MODEL_VERSION-activitynet-stage4 |
| deepspeed --include localhost:$RANK --master_port $MASTER_PORT vtimellm/train/train_mem.py \ |
| --deepspeed ./scripts/zero2.json \ |
| --lora_enable True \ |
| --training_stage 3 --finetuning True \ |
| --model_name_or_path ./checkpoints/vtimellm/vicuna-7b-v1.5 \ |
| --version v1 \ |
| --data_path ./data/activitynet/cotasks-train.json \ |
| --feat_folder ./data/activitynet/clipvitl14-vtimellm.pth \ |
| --pretrain_mm_mlp_adapter ./checkpoints/vtimellm/vtimellm-$MODEL_VERSION-stage1/mm_projector.bin \ |
| --stage2_path ./checkpoints/vtimellm/vtimellm-$MODEL_VERSION-stage2 \ |
| --stage3_path ./checkpoints/vtimellm/vtimellm-$MODEL_VERSION-stage3 \ |
| --output_dir $OUTPUT_DIR/${RUN_NAME} \ |
| --bf16 True \ |
| --num_train_epochs 1 \ |
| --per_device_train_batch_size $LOCAL_BATCH_SIZE \ |
| --gradient_accumulation_steps $GRADIENT_ACCUMULATION_STEPS \ |
| --evaluation_strategy "no" \ |
| --save_strategy "no" \ |
| --save_steps 50000 \ |
| --save_total_limit 10 \ |
| --learning_rate 2e-5 \ |
| --freeze_mm_mlp_adapter True \ |
| --lora_r 64 --lora_alpha 128 --weight_decay 0. --warmup_ratio 0.03 \ |
| --lr_scheduler_type "cosine" \ |
| --logging_steps 1 \ |
| --tf32 True \ |
| --model_max_length 2048 \ |
| --gradient_checkpointing True \ |
| --dataloader_num_workers 4 \ |
| --lazy_preprocess True \ |
| --report_to wandb \ |
| --run_name $RUN_NAME |