# Summarization (Seq2Seq model) training examples The following example showcases how to finetune a sequence-to-sequence model for summarization using the JAX/Flax backend. JAX/Flax allows you to trace pure functions and compile them into efficient, fused accelerator code on both GPU and TPU. Models written in JAX/Flax are **immutable** and updated in a purely functional way which enables simple and efficient model parallelism. `run_summarization_flax.py` is a lightweight example of how to download and preprocess a dataset from the 🤗 Datasets library or use your own files (jsonlines or csv), then fine-tune one of the architectures above on it. For custom datasets in `jsonlines` format please see: https://huggingface.co/docs/datasets/loading_datasets.html#json-files and you also will find examples of these below. ### Train the model Next we can run the example script to train the model: ```bash python run_summarization_flax.py \ --output_dir ./bart-base-xsum \ --model_name_or_path facebook/bart-base \ --tokenizer_name facebook/bart-base \ --dataset_name="xsum" \ --do_train --do_eval --do_predict --predict_with_generate \ --num_train_epochs 6 \ --learning_rate 5e-5 --warmup_steps 0 \ --per_device_train_batch_size 64 \ --per_device_eval_batch_size 64 \ --overwrite_output_dir \ --max_source_length 512 --max_target_length 64 \ --push_to_hub ``` This should finish in 37min, with validation loss and ROUGE2 score of 1.7785 and 17.01 respectively after 6 epochs. training statistics can be accessed on [tfhub.de](https://tensorboard.dev/experiment/OcPfOIgXRMSJqYB4RdK2tA/#scalars). > Note that here we used default `generate` arguments, using arguments specific for `xsum` dataset should give better ROUGE scores.