#!/bin/bash export LC_ALL=C.UTF-8 export LANG=C.UTF-8 #export MODEL_NAME_OR_PATH=t5-base export OUTPUT_DIR=/home/saied/code/gpt2-medium-persian export MODEL_TYPE=gpt2 export CONFIG_NAME=/home/saied/code/gpt2-medium-persian export TOKENIZER_NAME=/home/saied/code/gpt2-medium-persian #export TRAIN_FILE=/home/saied/code/data/...csv #export VALIDATION_FILE=/home/saied/code/data/...csv #export TEST_FILE=/home/saied/code/data/...csv export DATASET_NAME=oscar export DATASET_CONFIG_NAME=unshuffled_deduplicated_fa export MAX_SEQUENCE_LENGTH=512 #export MAX_TRAIN_SAMPLE=5000 #export MAX_EVAL_SAMPLES=5000 export PER_DEVICE_TRAIN_BATCH_SIZE=16 export PER_DEVICE_EVAL_BATCH_SIZE=16 export NUM_TRAIN_EPOCHS=10.0 export LEARNING_RATE=1e-3 export WARMUP_STEPS=5000 export LOGGING_STEPS=500 export EVAL_STEPS=2500 export SAVE_STEPS=2500 python src/run_clm_flax.py \ --output_dir="$OUTPUT_DIR" \ --model_type="$MODEL_TYPE" \ --config_name="$CONFIG_NAME" \ --tokenizer_name="$TOKENIZER_NAME" \ --dataset_name="$DATASET_NAME" \ --dataset_config_name="$DATASET_CONFIG_NAME" \ --block_size=$MAX_SEQUENCE_LENGTH \ --per_device_train_batch_size=$PER_DEVICE_TRAIN_BATCH_SIZE \ --per_device_eval_batch_size=$PER_DEVICE_EVAL_BATCH_SIZE \ --num_train_epochs=$NUM_TRAIN_EPOCHS \ --learning_rate=$LEARNING_RATE \ --warmup_steps=$WARMUP_STEPS \ --logging_step=$LOGGING_STEPS \ --eval_steps=$EVAL_STEPS \ --save_steps=$SAVE_STEPS \ --do_train \ --do_eval \ --overwrite_output_dir \ --push_to_hub