| #!/bin/bash |
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| export OMP_NUM_THREADS=20 |
| export CUDA_VISIBLE_DEVICES=0,1,2,3,4,5,6,7 |
| |
| lr=1e-5 |
| base=QwQ-32B |
| tokenizer=QwQ-32B |
| |
| train_data=no_error_data_871 |
| bsz=1 |
| acc=8 |
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| JOB_ID=$(( RANDOM % 100000 )) |
| save_path="JOB:${JOB_ID}#LR:${lr}#BASE:${base}#TOKEN:${tokenizer}#BSZ:${bsz}#ACC:${acc}_${train_data}_mixed_math" |
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| output_dir="/capacity/userdata/ss/sft_search/${save_path}" |
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| output_dir_1=${output_dir} |
| model_name_1=${base} |
| dataset_1=${train_data} |
| |
| mkdir -p "$output_dir" |
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| echo ${output_dir} |
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| /opt/aps/workdir/miniforge3/envs/ss_train/bin/deepspeed \ |
| --hostfile=hostfile \ |
| --no_ssh \ |
| --node_rank=1 \ |
| --master_addr=172.19.164.116 \ |
| --master_port=9944 \ |
| sft_2_math.py \ |
| --deepspeed ds_zero3_offload.json \ |
| --model_name_or_path "/capacity/userdata/models/${base}" \ |
| --tokenizer_name_or_path "/capacity/userdata/models/${tokenizer}" \ |
| --do_train \ |
| --save_safetensors true \ |
| --data_path "/opt/aps/workdir/sunshuang/deep_search/search_o1/sft_data/${train_data}.json" \ |
| --lr_scheduler_type cosine \ |
| --output_dir "$output_dir" \ |
| --overwrite_output_dir \ |
| --warmup_ratio 0.03 \ |
| --gradient_checkpointing true \ |
| --per_device_train_batch_size "$bsz" \ |
| --gradient_accumulation_steps "$acc" \ |
| --logging_steps 1 \ |
| --learning_rate "$lr" \ |
| --num_train_epochs 6 \ |
| --save_strategy epoch \ |
| --save_only_model true \ |
| --model_max_length 30000 \ |
| --save_total_limit 6 \ |
| --bf16 || exit 1 |
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| bash test_two_model_qwq_1.sh $output_dir_1 $model_name_1 $dataset_1 |
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