Verifiable Sustainability in Data Centers
- URL: http://arxiv.org/abs/2307.11993v3
- Date: Fri, 12 Jan 2024 05:30:32 GMT
- Title: Verifiable Sustainability in Data Centers
- Authors: Syed Rafiul Hussain, Patrick McDaniel, Anshul Gandhi, Kanad Ghose,
Kartik Gopalan, Dongyoon Lee, Yu David Liu, Zhenhua Liu, Shuai Mu and Erez
Zadok
- Abstract summary: Data centers have significant energy needs, both embodied and operational, affecting adversely sustainability.
The current techniques and tools for collecting, aggregating, and reporting verifiable sustainability data are vulnerable to cyberattacks and misuse.
This paper outlines security challenges and research directions for addressing these pressing requirements.
- Score: 8.53146020727443
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Data centers have significant energy needs, both embodied and operational,
affecting sustainability adversely. The current techniques and tools for
collecting, aggregating, and reporting verifiable sustainability data are
vulnerable to cyberattacks and misuse, requiring new security and
privacy-preserving solutions. This paper outlines security challenges and
research directions for addressing these pressing requirements.
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