Abstract
Mixture of Experts layers (MoEs) enable efficient scaling of language models
through conditional computation. This paper presents a detailed empirical study
of how autoregressive MoE language models scale in comparison with dense models
in a wide range of settings: in- and out-of-domain language modeling, zero- and
few-shot priming, and full-shot fine-tuning. With the exception of fine-tuning,
we find MoEs to be substantially more compute efficient. At more modest
training budgets, MoEs can match the performance of dense models using $\sim$4
times less compute. This gap narrows at scale, but our largest MoE model (1.1T
parameters) consistently outperforms a compute-equivalent dense model (6.7B
parameters). Overall, this performance gap varies greatly across tasks and
domains, suggesting that MoE and dense models generalize differently in ways
that are worthy of future study. We make our code and models publicly available
for research use.
Users
Please
log in to take part in the discussion (add own reviews or comments).