| #!/bin/bash |
|
|
| export LC_ALL=C.UTF-8 |
| export LANG=C.UTF-8 |
|
|
| export OUTPUT_DIR=/home/m3hrdadfi/code/t5-recipe-generation |
| export MODEL_NAME_OR_PATH=t5-base |
| |
| export NUM_BEAMS=3 |
|
|
| export TRAIN_FILE=/home/m3hrdadfi/code/data/train.csv |
| export VALIDATION_FILE=/home/m3hrdadfi/code/data/test.csv |
| export TEST_FILE=/home/m3hrdadfi/code/data/test.csv |
| export TEXT_COLUMN=inputs |
| export TARGET_COLUMN=targets |
| export MAX_SOURCE_LENGTH=256 |
| export MAX_TARGET_LENGTH=1024 |
| export SOURCE_PREFIX=items |
| export MAX_EVAL_SAMPLES=5000 |
|
|
| export PER_DEVICE_TRAIN_BATCH_SIZE=8 |
| export PER_DEVICE_EVAL_BATCH_SIZE=8 |
| export GRADIENT_ACCUMULATION_STEPS=2 |
| export NUM_TRAIN_EPOCHS=5.0 |
| export LEARNING_RATE=5e-4 |
| export WARMUP_STEPS=5000 |
| export LOGGING_STEPS=500 |
| export EVAL_STEPS=2500 |
| export SAVE_STEPS=2500 |
|
|
| python src/run_recipe_nlg_flax.py \ |
| --output_dir="$OUTPUT_DIR" \ |
| --train_file="$TRAIN_FILE" \ |
| --validation_file="$VALIDATION_FILE" \ |
| --max_eval_samples=$MAX_EVAL_SAMPLES \ |
| --text_column="$TEXT_COLUMN" \ |
| --target_column="$TARGET_COLUMN" \ |
| --source_prefix="$SOURCE_PREFIX: " \ |
| --max_source_length="$MAX_SOURCE_LENGTH" \ |
| --max_target_length="$MAX_TARGET_LENGTH" \ |
| --model_name_or_path="$MODEL_NAME_OR_PATH" \ |
| --extra_tokens="" \ |
| --special_tokens="<sep>,<section>" \ |
| --per_device_train_batch_size=$PER_DEVICE_TRAIN_BATCH_SIZE \ |
| --per_device_eval_batch_size=$PER_DEVICE_EVAL_BATCH_SIZE \ |
| --gradient_accumulation_steps=$GRADIENT_ACCUMULATION_STEPS \ |
| --num_train_epochs=$NUM_TRAIN_EPOCHS \ |
| --learning_rate=$LEARNING_RATE \ |
| --warmup_steps=$WARMUP_STEPS \ |
| --logging_step=$LOGGING_STEPS \ |
| --eval_steps=$EVAL_STEPS \ |
| --save_steps=$SAVE_STEPS \ |
| --prediction_debug \ |
| --do_train \ |
| --do_eval \ |
| --overwrite_output_dir \ |
| --predict_with_generate \ |
| --push_to_hub |
|
|