MinT: Minimal Transformer Library and Tutorials
A minimalistic implementation of common Transformers from scratch!
Colabs
A series of tutorials on building common Transformer models from scratch. Each tutorial builds on the previous one, so they should be done in order.
- BERT from scratch
- GPT & GPT2 from scratch
- BART from scratch
- T5 from scratch
- Build your own SentenceBERT
The code here is also factored out here as a python package for easy use outside of the tutorial.
Because this is written for a tutorial to explain the modeling and training approach, we currently depend on the HuggingFace tokenizers library to implement subword tokenization. I selected it because its fast, and widely used. There are also other good, fast libraries (like BlingFire) that cover multiple subword approaches, but the library doesnt support them at this time.
A Tiny Library for Transformers from the ground up
Minimal PyTorch implementation of common Transformer architectures. Currently implements
Pretraining
There are example programs at this time showing how to pretrain from scratch (or continue pre-training on pre-trained models)
In-memory training on a small dataset
There are 2 pretraining examples, one is a toy example good for small datasets like Wikitext-2.
The loader preprocesses the data and slurps the tensors into a TensorDataset.
It uses the SimpleTrainer
to train several epochs. Because the dataset is small and a Map-style dataset, it makes sense to train a whole epoch and then evaluate a whole test dataset. For large datasets, I would not recommend this approach.
Out-of-memory training on a large dataset
The second example uses an infinite IterableDataset to read multiple files (shards) and converts them to tensors on the fly. This program is a more realistic example of language modeling.
Out-of-memory preprocessed shards on a large dataset
The library also supports fully preprocessed datasets, but there is no example for that usage at this time.
Wikipedia
To pretrain on English Wikipedia with this program, you'll need an XML wikipedia dump.
This is usually named enwiki-latest-pages-articles.xml.bz2
and can be found from the Wikipedia dump site.
For example, this should work for downloading:
wget https://dumps.wikimedia.org/enwiki/latest/enwiki-latest-pages-articles.xml.bz2
You also need to use this repository:
git clone https://github.com/attardi/wikiextractor
cd wikiextractor
git checkout 16186e290d9eb0eb3a3784c6c0635a9ed7e855c3
Here is how I ran it for my example:
python WikiExtractor.py ${INPUT}/enwiki-latest-pages-articles.xml.bz2 \
-q --json \
--processes 7 \
--output ${OUTPUT}/enwiki-extracted \
--bytes 100M \
--compress \
--links \
--discard_elements gallery,timeline,noinclude \
--min_text_length 0 \
--filter_disambig_pages
Regarding the command line above, only use --compress
if you have bzip2 on your system and your Python can
import bz2
In each target generated (e.g. AA, AB, AC), we are going to rename with a prefix (e.g. AA):
for file in *.bz2; do mv "$file" "AA_$file"; done;
We can then copy these to a single directory, or split them however we would like into train and test
Here is how you can train on multiple workers with DistributedDataParallel:
CUDA_VISIBLE_DEVICES=2,3,4,5,6,7,8,9 python -m torch.distributed.launch \
--node=1 \
--nproc_per_node=8 \
--node_rank=0 \
--master_port=$PORT \
pretrain_bert_wiki.py \
--vocab_file /data/k8s/hf-models/bert-base-uncased/vocab.txt \
--lowercase \
--train_file "/path/to/enwiki-extracted/train/" \
--valid_file "/path/to/enwiki-extracted/valid/" \
--num_train_workers 4 \
--num_valid_workers 1 --batch_size $B --num_steps $N --saves_per_cycle 1 \
--train_cycle_size 10000 \
--eval_cycle_size 500 \
--distributed
Fine-tuning
The tune_bert_for_cls program is a simple example of fine-tuning our BERT implementation from scratch.
Completer REPL
The bert_completer program allows you to type in masked strings and
see how BERT would complete them. When it starts, you can pass --sample
in order to get sampling from the output,
otherwise it uses the most likely values. You can switch between the 2 modes at runtime using:
BERT>> :sample
or
BERT>> :max
This example uses prompt_toolkit
which is not a core dependency, but you can install it like this:
pip install .[examples]