“How to Train BERT With an Academic Budget”, Peter Izsak, Moshe Berchansky, Omer Levy2021-04-15 (, ; similar)⁠:

While large language models a la BERT are used ubiquitously in NLP, pretraining them is considered a luxury that only a few well-funded industry labs can afford. How can one train such models with a more modest budget?

We present a recipe for pretraining a masked language model in 24 hours using a single low-end deep learning server. We demonstrate that through a combination of software optimizations, design choices, and hyperparameter tuning, it is possible to produce models that are competitive with BERT-base on GLUE tasks at a fraction of the original pretraining cost [$50 vs $2,000].