--- language: en tags: - azbert - pretraining - fill-mask widget: - text: "$f$ $($ $x$ [MASK] $y$ $)$" example_title: "mathy" - text: "$x$ [MASK] $x$ $equal$ $2$ $x$" example_title: "mathy" - text: "Proof by [MASK] that $n$ $fact$ $gt$ $3$ $n$ for $n$ $gt$ $6$" example_title: "mathy" - text: "Proof by induction that $n$ [MASK] $gt$ $3$ $n$ for $n$ $gt$ $6$" example_title: "mathy" - text: "The goal of life is [MASK]." example_title: "philosophical" license: mit --- ## About This [repository](https://github.com/approach0/azbert) is a boilerplate to push a mask-filling model to the HuggingFace Model Hub. ### Upload to huggingface Download your tokenizer, model checkpoints, and optionally the training logs (`events.out.*`) to the `./ckpt` directory. Optionally, test model using the MLM task: ```sh pip install pya0 python test.py --test_file test.txt ``` > **Note** > Modify the test examples in `test.txt` to play with it. > The test file is tab-separated, the first column is additional positions you want to mask for the right-side sentence (useful for masking tokens in math markups). > A zero means no additional mask positions. To upload to huggingface, use the `upload2hgf.sh` script. Before runnig this script, be sure to check: * `git-lfs` is installed * having git-remote named `hgf` reference to `https://huggingface.co/your/repo` * model contains all the files needed: `config.json` and `pytorch_model.bin` * tokenizer contains all the files needed: `added_tokens.json`, `special_tokens_map.json`, `tokenizer_config.json`, `vocab.txt` and `tokenizer.json` * no `tokenizer_file` field in `tokenizer_config.json` (sometimes it is located locally at `~/.cache`)