Great Power, Great Responsibility: Recommendations for Reducing Energy for Training Language ModelsDownload PDF

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08 Mar 2022 (modified: 05 May 2023)NAACL 2022 Conference Blind SubmissionReaders: Everyone
Paper Link: https://openreview.net/forum?id=-zQAQktHq9e
Paper Type: Long paper (up to eight pages of content + unlimited references and appendices)
Abstract: The energy requirements of current natural language processing models continue to grow at a rapid, unsustainable pace. Recent works highlighting this problem conclude there is an urgent need for methods that reduce the energy needs of NLP and machine learning more broadly. In this article, we investigate techniques that can be used to reduce the energy consumption of common NLP applications. In particular, we focus on techniques to measure energy usage and different hardware and datacenter-oriented settings that can be tuned to reduce energy consumption for training and inference for language models. We characterize the impact of these settings on metrics such as computational performance and energy consumption through experiments conducted on a high performance computing system as well as popular cloud computing platforms. These techniques can lead to significant reduction in energy consumption when training language models or their use for inference. For example, power-capping, which limits the maximum power a GPU can consume, can enable a 15% decrease in energy usage with marginal increase in overall computation time when training a transformer-based language model.
Copyright Consent Signature (type Name Or NA If Not Transferrable): Joseph McDonald
Copyright Consent Name And Address: MIT Lincoln Laboratory, 244 Wood Street, Lexington, MA 02421
Presentation Mode: This paper will be presented in person in Seattle
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