--- language: bn tags: - bert - bengali - bengali-lm - bangla license: MIT datasets: - common_crawl - wikipedia - oscar --- # Bangla BERT Base A long way passed. Here is our **Bangla-Bert**! It is now available in huggingface model hub. [Bangla-Bert-Base](https://github.com/sagorbrur/bangla-bert) is a pretrained language model of Bengali language using mask language modeling described in [BERT](https://arxiv.org/abs/1810.04805) and it's github [repository](https://github.com/google-research/bert) ## Pretrain Corpus Details Corpus was downloaded from two main sources: * Bengali commoncrawl copurs downloaded from [OSCAR](https://oscar-corpus.com/) * [Bengali Wikipedia Dump Dataset](https://dumps.wikimedia.org/bnwiki/latest/) After downloading these corpus, we preprocessed it as a Bert format. which is one sentence per line and an extra newline for new documents. ``` sentence 1 sentence 2 sentence 1 sentence 2 ``` ## Building Vocab We used [BNLP](https://github.com/sagorbrur/bnlp) package for training bengali sentencepiece model with vocab size 102025. We preprocess the output vocab file as Bert format. Our final vocab file availabe at [https://github.com/sagorbrur/bangla-bert](https://github.com/sagorbrur/bangla-bert) and also at [huggingface](https://huggingface.co/sagorsarker/bangla-bert-base) model hub. ## Training Details * Bangla-Bert was trained with code provided in Google BERT's github repository (https://github.com/google-research/bert) * Currently released model follows bert-base-uncased model architecture (12-layer, 768-hidden, 12-heads, 110M parameters) * Total Training Steps: 1 Million * The model was trained on a single Google Cloud TPU ## Evaluation Results ### LM Evaluation Results After training 1 millions steps here is the evaluation resutls. ``` global_step = 1000000 loss = 2.2406516 masked_lm_accuracy = 0.60641736 masked_lm_loss = 2.201459 next_sentence_accuracy = 0.98625 next_sentence_loss = 0.040997364 perplexity = numpy.exp(2.2406516) = 9.393331287442784 Loss for final step: 2.426227 ``` ### Downstream Task Evaluation Results Huge Thanks to [Nick Doiron](https://twitter.com/mapmeld) for providing evalution results of classification task. He used [Bengali Classification Benchmark](https://github.com/rezacsedu/Classification_Benchmarks_Benglai_NLP) datasets for classification task. Comparing to Nick's [Bengali electra](https://huggingface.co/monsoon-nlp/bangla-electra) and multi-lingual BERT, Bangla BERT Base achieves state of the art result. Here is the [evaluation script](https://github.com/sagorbrur/bangla-bert/blob/master/notebook/bangla-bert-evaluation-classification-task.ipynb). | Model | Sentiment Analysis | Hate Speech Task | News Topic Task | Average | | ----- | -------------------| ---------------- | --------------- | ------- | | mBERT | 68.15 | 52.32 | 72.27 | 64.25 | | Bengali Electra | 69.19 | 44.84 | 82.33 | 65.45 | | Bangla BERT Base | 70.37 | 71.83 | 89.19 | 77.13 | **NB: If you use this model for any nlp task please share evaluation results with us. We will add it here.** ## How to Use You can use this model directly with a pipeline for masked language modeling: ```py from transformers import BertForMaskedLM, BertTokenizer, pipeline model = BertForMaskedLM.from_pretrained("sagorsarker/bangla-bert-base") tokenizer = BertTokenizer.from_pretrained("sagorsarker/bangla-bert-base") nlp = pipeline('fill-mask', model=model, tokenizer=tokenizer) for pred in nlp(f"আমি বাংলায় {nlp.tokenizer.mask_token} গাই।"): print(pred) # {'sequence': '[CLS] আমি বাংলায গান গাই । [SEP]', 'score': 0.13404667377471924, 'token': 2552, 'token_str': 'গান'} ``` ## Author [Sagor Sarker](https://github.com/sagorbrur) ## Acknowledgements * Thanks to Google [TensorFlow Research Cloud (TFRC)](https://www.tensorflow.org/tfrc) for providing the free TPU credits - thank you! * Thank to all the people around, who always helping us to build something for Bengali. ## Reference * https://github.com/google-research/bert