Back to Search Start Over

Scaling Laws for Fine-Grained Mixture of Experts

Authors :
Krajewski, Jakub
Ludziejewski, Jan
Adamczewski, Kamil
Pióro, Maciej
Krutul, Michał
Antoniak, Szymon
Ciebiera, Kamil
Król, Krystian
Odrzygóźdź, Tomasz
Sankowski, Piotr
Cygan, Marek
Jaszczur, Sebastian
Publication Year :
2024

Abstract

Mixture of Experts (MoE) models have emerged as a primary solution for reducing the computational cost of Large Language Models. In this work, we analyze their scaling properties, incorporating an expanded range of variables. Specifically, we introduce a new hyperparameter, granularity, whose adjustment enables precise control over the size of the experts. Building on this, we establish scaling laws for fine-grained MoE, taking into account the number of training tokens, model size, and granularity. Leveraging these laws, we derive the optimal training configuration for a given computational budget. Our findings not only show that MoE models consistently outperform dense Transformers but also highlight that the efficiency gap between dense and MoE models widens as we scale up the model size and training budget. Furthermore, we demonstrate that the common practice of setting the size of experts in MoE to mirror the feed-forward layer is not optimal at almost any computational budget.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2402.07871
Document Type :
Working Paper