#!/bin/bash export SAMA_CONFIG=./config/sama_cms_lla.yaml # export SAMA_CONFIG=./config/sama_cms_fb.yaml export TOKENIZERS_PARALLELISM=true # CUDA Include (/cuda.h) CUDA_INCLUDE_PATH="/home/work/miniconda3/envs/allm/include" export CPATH=$CPATH:$CUDA_INCLUDE_PATH export CPLUS_INCLUDE_PATH=$CPLUS_INCLUDE_PATH:$CUDA_INCLUDE_PATH export WANDB_PROJECT="SAMA_CMS_Test_s" export WANDB_API_KEY=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 date +"%F %T" STEP=100 accelerate launch --dynamo_backend=inductor --dynamo_mode=max-autotune --main_process_port 41353 -m src.cms_main \ --config_path $SAMA_CONFIG --trainer_args.learning_rate=6e-4 --trainer_args.output_dir "./Llama2_loss" \ --trainer_args.load_best_model_at_end False --trainer_args.save_strategy '"no"' \ --sama_adapter.col_L 4 --sama_adapter.row_R 16 \ --trainer_args.num_train_epochs 2 --trainer_args.report_to wandb \ --trainer_args.save_steps $STEP --trainer_args.eval_steps $STEP --trainer_args.logging_steps $STEP \ --sama_adapter.num_unique_blocks_L 16 --sama_adapter.num_unique_blocks_R 4 \ --sama_adapter.target_modules '["q_proj", "v_proj", "k_proj", "up_proj","down_proj"]' \ --data.path ft_training_set/commonsense_147k.json --trainer_args.eval_delay 0 \ --sama_adapter.scaling 0.5 --seed 57 --run_text sd57 --trainer_args.eval_strategy '"steps"' --trainer_args.max_steps 2400 wandb sync wandb/latest-run date +"%F %T" STEP=100 accelerate launch --dynamo_backend=inductor --dynamo_mode=max-autotune --main_process_port 41353 -m src.cms_main \ --config_path $SAMA_CONFIG --trainer_args.learning_rate=6e-4 --trainer_args.output_dir "./Llama2_loss" \ --trainer_args.load_best_model_at_end False --trainer_args.save_strategy '"no"' \ --sama_adapter.col_L 4 --sama_adapter.row_R 16 \ --trainer_args.num_train_epochs 2 --trainer_args.report_to wandb \ --trainer_args.save_steps $STEP --trainer_args.eval_steps $STEP --trainer_args.logging_steps $STEP \ --sama_adapter.num_unique_blocks_L 16 --sama_adapter.num_unique_blocks_R 4 \ --sama_adapter.target_modules '["q_proj", "v_proj", "k_proj", "up_proj","down_proj"]' \ --data.path ft_training_set/commonsense_147k.json --trainer_args.eval_delay 0 \ --sama_adapter.scaling 0.8 --seed 57 --run_text sd57 --trainer_args.eval_strategy '"steps"' --trainer_args.max_steps 2400 wandb sync wandb/latest-run date +"%F %T" STEP=100 accelerate launch --dynamo_backend=inductor --dynamo_mode=max-autotune --main_process_port 41353 -m src.cms_main \ --config_path $SAMA_CONFIG --trainer_args.learning_rate=6e-4 --trainer_args.output_dir "./Llama2_loss" \ --trainer_args.load_best_model_at_end False --trainer_args.save_strategy '"no"' \ --sama_adapter.col_L 4 --sama_adapter.row_R 16 \ --trainer_args.num_train_epochs 2 --trainer_args.report_to wandb \ --trainer_args.save_steps $STEP --trainer_args.eval_steps $STEP --trainer_args.logging_steps $STEP \ --sama_adapter.num_unique_blocks_L 16 --sama_adapter.num_unique_blocks_R 4 \ --sama_adapter.target_modules '["q_proj", "v_proj", "k_proj", "up_proj","down_proj"]' \ --data.path ft_training_set/commonsense_147k.json --trainer_args.eval_delay 0 \ --sama_adapter.scaling 1 --seed 57 --run_text sd57 --trainer_args.eval_strategy '"steps"' --trainer_args.max_steps 2400 wandb sync wandb/latest-run date +"%F %T" STEP=100 accelerate launch --dynamo_backend=inductor --dynamo_mode=max-autotune --main_process_port 41353 -m src.cms_main \ --config_path $SAMA_CONFIG --trainer_args.learning_rate=6e-4 --trainer_args.output_dir "./Llama2_loss" \ --trainer_args.load_best_model_at_end False --trainer_args.save_strategy '"no"' \ --sama_adapter.col_L 4 --sama_adapter.row_R 16 \ --trainer_args.num_train_epochs 2 --trainer_args.report_to wandb \ --trainer_args.save_steps $STEP --trainer_args.eval_steps $STEP --trainer_args.logging_steps $STEP \ --sama_adapter.num_unique_blocks_L 16 --sama_adapter.num_unique_blocks_R 4 \ --sama_adapter.target_modules '["q_proj", "v_proj", "k_proj", "up_proj","down_proj"]' \ --data.path ft_training_set/commonsense_147k.json --trainer_args.eval_delay 0 \ --sama_adapter.scaling 1.4142 --seed 57 --run_text sd57 --trainer_args.eval_strategy '"steps"' --trainer_args.max_steps 2400 wandb sync wandb/latest-run date +"%F %T"