A Green(er) World for A.I
- URL: http://arxiv.org/abs/2301.11581v1
- Date: Fri, 27 Jan 2023 08:01:38 GMT
- Title: A Green(er) World for A.I
- Authors: Dan Zhao, Nathan C. Frey, Joseph McDonald, Matthew Hubbell, David
Bestor, Michael Jones, Andrew Prout, Vijay Gadepally, Siddharth Samsi
- Abstract summary: This paper outlines our outlook for Green A.I. -- a more sustainable, energy-efficient and energy-aware ecosystem.
We present a bird's eye view of various areas for potential changes and improvements.
We hope these points will spur further discussion, and action, on some of these issues and their potential solutions.
- Score: 9.330274375369802
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As research and practice in artificial intelligence (A.I.) grow in leaps and
bounds, the resources necessary to sustain and support their operations also
grow at an increasing pace. While innovations and applications from A.I. have
brought significant advances, from applications to vision and natural language
to improvements to fields like medical imaging and materials engineering, their
costs should not be neglected. As we embrace a world with ever-increasing
amounts of data as well as research and development of A.I. applications, we
are sure to face an ever-mounting energy footprint to sustain these
computational budgets, data storage needs, and more. But, is this sustainable
and, more importantly, what kind of setting is best positioned to nurture such
sustainable A.I. in both research and practice? In this paper, we outline our
outlook for Green A.I. -- a more sustainable, energy-efficient and energy-aware
ecosystem for developing A.I. across the research, computing, and practitioner
communities alike -- and the steps required to arrive there. We present a
bird's eye view of various areas for potential changes and improvements from
the ground floor of AI's operational and hardware optimizations for
datacenters/HPCs to the current incentive structures in the world of A.I.
research and practice, and more. We hope these points will spur further
discussion, and action, on some of these issues and their potential solutions.
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