Saved in:
Bibliographic Details
Main Authors: Jagannadharao, Akshaya, Beckage, Nicole, Biswas, Sovan, Egan, Hilary, Gafur, Jamil, Metsch, Thijs, Nafus, Dawn, Raffa, Giuseppe, Tripp, Charles
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.17830
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866929646080098304
author Jagannadharao, Akshaya
Beckage, Nicole
Biswas, Sovan
Egan, Hilary
Gafur, Jamil
Metsch, Thijs
Nafus, Dawn
Raffa, Giuseppe
Tripp, Charles
author_facet Jagannadharao, Akshaya
Beckage, Nicole
Biswas, Sovan
Egan, Hilary
Gafur, Jamil
Metsch, Thijs
Nafus, Dawn
Raffa, Giuseppe
Tripp, Charles
contents Concerns about the environmental footprint of machine learning are increasing. While studies of energy use and emissions of ML models are a growing subfield, most ML researchers and developers still do not incorporate energy measurement as part of their work practices. While measuring energy is a crucial step towards reducing carbon footprint, it is also not straightforward. This paper introduces the main considerations necessary for making sound use of energy measurement tools and interpreting energy estimates, including the use of at-the-wall versus on-device measurements, sampling strategies and best practices, common sources of error, and proxy measures. It also contains practical tips and real-world scenarios that illustrate how these considerations come into play. It concludes with a call to action for improving the state of the art of measurement methods and standards for facilitating robust comparisons between diverse hardware and software environments.
format Preprint
id arxiv_https___arxiv_org_abs_2412_17830
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle A Beginner's Guide to Power and Energy Measurement and Estimation for Computing and Machine Learning
Jagannadharao, Akshaya
Beckage, Nicole
Biswas, Sovan
Egan, Hilary
Gafur, Jamil
Metsch, Thijs
Nafus, Dawn
Raffa, Giuseppe
Tripp, Charles
Signal Processing
Machine Learning
Concerns about the environmental footprint of machine learning are increasing. While studies of energy use and emissions of ML models are a growing subfield, most ML researchers and developers still do not incorporate energy measurement as part of their work practices. While measuring energy is a crucial step towards reducing carbon footprint, it is also not straightforward. This paper introduces the main considerations necessary for making sound use of energy measurement tools and interpreting energy estimates, including the use of at-the-wall versus on-device measurements, sampling strategies and best practices, common sources of error, and proxy measures. It also contains practical tips and real-world scenarios that illustrate how these considerations come into play. It concludes with a call to action for improving the state of the art of measurement methods and standards for facilitating robust comparisons between diverse hardware and software environments.
title A Beginner's Guide to Power and Energy Measurement and Estimation for Computing and Machine Learning
topic Signal Processing
Machine Learning
url https://arxiv.org/abs/2412.17830