SOTAVerified

Energy and Policy Considerations for Deep Learning in NLP

2019-06-05ACL 2019Code Available0· sign in to hype

Emma Strubell, Ananya Ganesh, Andrew McCallum

Code Available — Be the first to reproduce this paper.

Reproduce

Code

Abstract

Recent progress in hardware and methodology for training neural networks has ushered in a new generation of large networks trained on abundant data. These models have obtained notable gains in accuracy across many NLP tasks. However, these accuracy improvements depend on the availability of exceptionally large computational resources that necessitate similarly substantial energy consumption. As a result these models are costly to train and develop, both financially, due to the cost of hardware and electricity or cloud compute time, and environmentally, due to the carbon footprint required to fuel modern tensor processing hardware. In this paper we bring this issue to the attention of NLP researchers by quantifying the approximate financial and environmental costs of training a variety of recently successful neural network models for NLP. Based on these findings, we propose actionable recommendations to reduce costs and improve equity in NLP research and practice.

Tasks

Reproductions