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| conda deactivate
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| conda update conda -y
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| conda update anaconda -y
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| pip install --upgrade pip
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| python3 -m pip install --user virtualenv
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| conda create -n strata python=3.9 -y
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| conda activate strata
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| pip install transformers
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| pip install -r requirements.txt
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| WORK_DIR="/tmp/strata"
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| rm -rf "${WORK_DIR}" && mkdir -p "${WORK_DIR}"
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| wget https://storage.googleapis.com/gresearch/strata/demo.zip -P "${WORK_DIR}"
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| DEMO_ZIP_FILE="${WORK_DIR}/demo.zip"
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| unzip "${DEMO_ZIP_FILE}" -d "${WORK_DIR}" && rm "${DEMO_ZIP_FILE}"
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| DATA_DIR="${WORK_DIR}/demo/scitail-8"
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| OUTPUT_DIR="/tmp/output"
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| rm -rf "${OUTPUT_DIR}" && mkdir -p "${OUTPUT_DIR}"
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| MODEL_NAME_OR_PATH="bert-base-uncased"
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| NUM_NODES=1
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| NUM_TRAINERS=4
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| LAUNCH_SCRIPT="torchrun --nnodes='${NUM_NODES}' --nproc_per_node='${NUM_TRAINERS}' python -c"
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| MAX_SELFTRAIN_ITERATIONS=100
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| TRAIN_FILE="train.csv"
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| INFER_FILE="infer.csv"
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| EVAL_FILE="eval_256.csv"
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| MAX_STEPS=100000
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| ${LAUNCH_SCRIPT} "
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| import os
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| from selftraining import selftrain
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| data_dir = '${DATA_DIR}'
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| parameters_dict = {
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| 'max_selftrain_iterations': ${MAX_SELFTRAIN_ITERATIONS},
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| 'model_name_or_path': '${MODEL_NAME_OR_PATH}',
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| 'output_dir': '${OUTPUT_DIR}',
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| 'train_file': os.path.join(data_dir, '${TRAIN_FILE}'),
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| 'infer_file': os.path.join(data_dir, '${INFER_FILE}'),
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| 'eval_file': os.path.join(data_dir, '${EVAL_FILE}'),
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| 'eval_strategy': 'steps',
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| 'task_name': 'scitail',
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| 'label_list': ['entails', 'neutral'],
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| 'per_device_train_batch_size': 32,
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| 'per_device_eval_batch_size': 8,
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| 'max_length': 128,
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| 'learning_rate': 2e-5,
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| 'max_steps': ${MAX_STEPS},
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| 'eval_steps': 1,
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| 'early_stopping_patience': 50,
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| 'overwrite_output_dir': True,
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| 'do_filter_by_confidence': False,
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| 'do_filter_by_val_performance': True,
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| 'finetune_on_labeled_data': False,
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| 'seed': 42,
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| }
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| selftrain(**parameters_dict)
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| "
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