From 0b6c255a95368163d2b1d37635e5ce5bdd1b9423 Mon Sep 17 00:00:00 2001 From: Patrick von Platen Date: Fri, 17 Jul 2020 11:41:56 +0200 Subject: [PATCH] [Model card] Bert2Bert (#5841) * Create README.md * Update README.md * Update README.md * Update README.md --- .../bert2bert-cnn_dailymail-fp16/README.md | 194 ++++++++++++++++++ 1 file changed, 194 insertions(+) create mode 100644 model_cards/patrickvonplaten/bert2bert-cnn_dailymail-fp16/README.md diff --git a/model_cards/patrickvonplaten/bert2bert-cnn_dailymail-fp16/README.md b/model_cards/patrickvonplaten/bert2bert-cnn_dailymail-fp16/README.md new file mode 100644 index 0000000000..a873aa0710 --- /dev/null +++ b/model_cards/patrickvonplaten/bert2bert-cnn_dailymail-fp16/README.md @@ -0,0 +1,194 @@ +# Bert2Bert Summarization with 🤗 EncoderDecoder Framework + +This model is a Bert2Bert model fine-tuned on summarization. + +Bert2Bert is a `EncoderDecoderModel`, meaning that both the encoder and the decoder are `bert-base-uncased` +BERT models. Leveraging the [EncoderDecoderFramework](https://huggingface.co/transformers/model_doc/encoderdecoder.html#encoder-decoder-models), the +two pretrained models can simply be loaded into the framework via: + +```python +bert2bert = EncoderDecoderModel.from_encoder_decoder_pretrained("bert-base-uncased", "bert-base-uncased") +``` + +The decoder of an `EncoderDecoder` model needs cross-attention layers and usually makes use of causal +masking for auto-regressiv generation. +Thus, ``bert2bert`` is consequently fined-tuned on the `CNN/Daily Mail`dataset and the resulting model +`bert2bert-cnn_dailymail-fp16` is uploaded here. + +## Example + +The model is by no means a state-of-the-art model, but nevertheless +produces reasonable summarization results. It was mainly fine-tuned +as a proof-of-concept for the 🤗 EncoderDecoder Framework. + +The model can be used as follows: + +```python +from transformers import BertTokenizer, EncoderDecoderModel + +model = EncoderDecoderModel.from_pretrained("patrickvonplaten/bert2bert-cnn_dailymail-fp16") +tokenizer = BertTokenizer.from_pretrained("patrickvonplaten/bert2bert-cnn_dailymail-fp16") + +article = """(CNN)Sigma Alpha Epsilon is under fire for a video showing party-bound fraternity members singing a racist chant. SAE's national chapter suspended the students, but University of Oklahoma President David B +oren took it a step further, saying the university's affiliation with the fraternity is permanently done. The news is shocking, but it's not the first time SAE has faced controversy. SAE was founded March 9, 185 +6, at the University of Alabama, five years before the American Civil War, according to the fraternity website. When the war began, the group had fewer than 400 members, of which "369 went to war for the Confede +rate States and seven for the Union Army," the website says. The fraternity now boasts more than 200,000 living alumni, along with about 15,000 undergraduates populating 219 chapters and 20 "colonies" seeking fu +ll membership at universities. SAE has had to work hard to change recently after a string of member deaths, many blamed on the hazing of new recruits, SAE national President Bradley Cohen wrote in a message on t +he fraternity's website. The fraternity's website lists more than 130 chapters cited or suspended for "health and safety incidents" since 2010. At least 30 of the incidents involved hazing, and dozens more invol +ved alcohol. However, the list is missing numerous incidents from recent months. Among them, according to various media outlets: Yale University banned the SAEs from campus activities last month after members al +legedly tried to interfere with a sexual misconduct investigation connected to an initiation rite. Stanford University in December suspended SAE housing privileges after finding sorority members attending a frat +ernity function were subjected to graphic sexual content. And Johns Hopkins University in November suspended the fraternity for underage drinking. "The media has labeled us as the 'nation's deadliest fraternity, +' " Cohen said. In 2011, for example, a student died while being coerced into excessive alcohol consumption, according to a lawsuit. SAE's previous insurer dumped the fraternity. "As a result, we are paying Lloy +d's of London the highest insurance rates in the Greek-letter world," Cohen said. Universities have turned down SAE's attempts to open new chapters, and the fraternity had to close 12 in 18 months over hazing in +cidents.""" + +input_ids = tokenizer(article, return_tensors="pt").input_ids +output_ids = model.generate(input_ids) + +print(tokenizer.decode(output_ids[0], skip_special_tokens=True)) +# should produce +# SAE's national chapter suspended the students from campus activities. The fraternity is under fire for a video showing the students singing a racist chant. SAE has had fewer than 400 members of the +# fraternity. The group had fewer alcohol consumption, along with about 15, 000 undergraduates populating 219 chapters. +``` + +## Training script: + +**IMPORTANT**: In order for this code to work, make sure you checkout to the branch +[more_general_trainer_metric](https://github.com/huggingface/transformers/tree/more_general_trainer_metric), which slightly adapts +the `Trainer` for `EncoderDecoderModels` according to this PR: https://github.com/huggingface/transformers/pull/5840. + +The following code shows the complete training script that was used to fine-tune `bert2bert-cnn_dailymail-fp16 +` for reproducability. The training last ~9h on a standard GPU. + +```python +#!/usr/bin/env python3 +import nlp +import logging +from transformers import BertTokenizer, EncoderDecoderModel, Trainer, TrainingArguments + +logging.basicConfig(level=logging.INFO) + +model = EncoderDecoderModel.from_encoder_decoder_pretrained("bert-base-uncased", "bert-base-uncased") +tokenizer = BertTokenizer.from_pretrained("bert-base-cased") + +# CLS token will work as BOS token +tokenizer.bos_token = tokenizer.cls_token + +# SEP token will work as EOS token +tokenizer.eos_token = tokenizer.sep_token + +# load train and validation data +train_dataset = nlp.load_dataset("cnn_dailymail", "3.0.0", split="train") +val_dataset = nlp.load_dataset("cnn_dailymail", "3.0.0", split="validation[:10%]") + +# load rouge for validation +rouge = nlp.load_metric("rouge") + + +# set decoding params +model.config.decoder_start_token_id = tokenizer.bos_token_id +model.config.eos_token_id = tokenizer.eos_token_id +model.config.max_length = 142 +model.config.min_length = 56 +model.config.no_repeat_ngram_size = 3 +model.early_stopping = True +model.length_penalty = 2.0 +model.num_beams = 4 + + +# map data correctly +def map_to_encoder_decoder_inputs(batch): + # Tokenizer will automatically set [BOS] [EOS] + # cut off at BERT max length 512 + inputs = tokenizer(batch["article"], padding="max_length", truncation=True, max_length=512) + # force summarization <= 128 + outputs = tokenizer(batch["highlights"], padding="max_length", truncation=True, max_length=128) + + batch["input_ids"] = inputs.input_ids + batch["attention_mask"] = inputs.attention_mask + + batch["decoder_input_ids"] = outputs.input_ids + batch["labels"] = outputs.input_ids.copy() + # mask loss for padding + batch["labels"] = [ + [-100 if token == tokenizer.pad_token_id else token for token in labels] for labels in batch["labels"] + ] + batch["decoder_attention_mask"] = outputs.attention_mask + + assert all([len(x) == 512 for x in inputs.input_ids]) + assert all([len(x) == 128 for x in outputs.input_ids]) + + return batch + + +def compute_metrics(pred): + labels_ids = pred.label_ids + pred_ids = pred.predictions + + pred_str = tokenizer.batch_decode(pred_ids, clean_special_tokens=True) + label_str = tokenizer.batch_decode(labels_ids, clean_special_tokens=True) + + pred_str = [pred.split("[CLS]")[-1].split("[SEP]")[0] for pred in pred_str] + label_str = [label.split("[CLS]")[-1].split("[SEP]")[0] for label in label_str] + + rouge_output = rouge.compute(predictions=pred_str, references=label_str, rouge_types=["rouge2"])["rouge2"].mid + + return { + "rouge2_precision": round(rouge_output.precision, 4), + "rouge2_recall": round(rouge_output.recall, 4), + "rouge2_fmeasure": round(rouge_output.fmeasure, 4), + } + + +# set batch size here +batch_size = 16 + +# make train dataset ready +train_dataset = train_dataset.map( + map_to_encoder_decoder_inputs, batched=True, batch_size=batch_size, remove_columns=["article", "highlights"], +) +train_dataset.set_format( + type="torch", columns=["input_ids", "attention_mask", "decoder_input_ids", "decoder_attention_mask", "labels"], +) + +# same for validation dataset +val_dataset = val_dataset.map( + map_to_encoder_decoder_inputs, batched=True, batch_size=batch_size, remove_columns=["article", "highlights"], +) +val_dataset.set_format( + type="torch", columns=["input_ids", "attention_mask", "decoder_input_ids", "decoder_attention_mask", "labels"], +) + +# set training arguments - these params are not really tuned, feel free to change +training_args = TrainingArguments( + output_dir="./", + per_device_train_batch_size=batch_size, + per_device_eval_batch_size=batch_size, + predict_from_generate=True, + evaluate_during_training=True, + do_train=True, + do_eval=True, + logging_steps=1000, + save_steps=1000, + eval_steps=1000, + overwrite_output_dir=True, + warmup_steps=2000, + save_total_limit=10, +) + +# instantiate trainer +trainer = Trainer( + model=model, + args=training_args, + compute_metrics=compute_metrics, + train_dataset=train_dataset, + eval_dataset=val_dataset, +) + +# start training +trainer.train() +``` + +## Results + +TODO