| | #!/usr/bin/env bash |
| | CUDA_VISIBLE_DEVICES=0 python run_speech_recognition_whisper.py \ |
| | --model_name_or_path="medium.en" \ |
| | --dataset_name="esb/datasets" \ |
| | --dataset_config_name="librispeech" \ |
| | --max_steps="5000" \ |
| | --output_dir="./" \ |
| | --run_name="whisper-librispeech" \ |
| | --wandb_project="whisper" \ |
| | --per_device_train_batch_size="64" \ |
| | --per_device_eval_batch_size="16" \ |
| | --logging_steps="25" \ |
| | --learning_rate="1e-4" \ |
| | --warmup_steps="500" \ |
| | --report_to="wandb" \ |
| | --preprocessing_num_workers="16" \ |
| | --evaluation_strategy="steps" \ |
| | --eval_steps="1000" \ |
| | --save_strategy="steps" \ |
| | --save_steps="1000" \ |
| | --generation_max_length="224" \ |
| | --length_column_name="input_lengths" \ |
| | --gradient_checkpointing \ |
| | --group_by_length \ |
| | --freeze_encoder \ |
| | --fp16 \ |
| | --overwrite_output_dir \ |
| | --do_train \ |
| | --do_eval \ |
| | --do_predict \ |
| | --predict_with_generate \ |
| | --use_auth_token |
| |
|