--- license: apache-2.0 language: - he library_name: transformers tags: - bert --- # Introducing BEREL 2.0 - New and Improved BEREL: BERT Embeddings for Rabbinic-Encoded Language When using BEREL 2.0, please reference: Avi Shmidman, Joshua Guedalia, Shaltiel Shmidman, Cheyn Shmuel Shmidman, Eli Handel, Moshe Koppel, "Introducing BEREL: BERT Embeddings for Rabbinic-Encoded Language", Aug 2022 [arXiv:2208.01875] 1. Usage: ```python from transformers import AutoTokenizer, BertForMaskedLM tokenizer = AutoTokenizer.from_pretrained('dicta-il/BEREL_2.0') model = BertForMaskedLM.from_pretrained('dicta-il/BEREL_2.0') ``` > NOTE: This code will **not** work and provide bad results if you use `BertTokenizer`. Please use `AutoTokenizer` or `BertTokenizerFast`. 2. Demo site: You can experiment with the model in a GUI interface here: https://dicta-bert-demo.netlify.app/?genre=rabbinic - The main part of the GUI consists of word buttons visualizing the tokenization of the sentences. Clicking on a button masks it, and then three BEREL word predictions are shown. Clicking on that bubble expands it to 10 predictions; alternatively, ctrl-clicking on that initial bubble expands to 30 predictions. - Ctrl-clicking adjacent word buttons combines them into a single token for the mask. - The edit box on top contains the input sentence; this can be modified at will, and the word-buttons will adjust as relevant.