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ITU GSR 2024

ITU-T work programme

[2022-2024] : [SG5] : [Q6/5]

[Declared patent(s)]  - [Associated work]

Work item: L.DLEE
Subject/title: Deep Learning Computation Energy Efficiency Evaluation Framework and Metrics
Status: Under study 
Approval process: AAP
Type of work item: Recommendation
Version: New
Equivalent number: -
Timing: 2026 (Medium priority)
Liaison: ISO/IEC JTC1/SC42, SG16
Supporting members: China, China Telecom, State Grid Corporation of China (China), Korea (Republic of)
Summary: The increasing energy demands of deep learning computing pose significant challenges to energy sustainability, cost-effectiveness, and the long-term evolution of AI technologies. To effectively address this issue, it is imperative to adopt a holistic approach aimed at optimizing energy efficiency across all stages of deep learning computing. Addressing the computing efficiency of deep learning computing requires the development of standardized metrics and evaluation methods to assess energy consumption across diverse models and tasks. By doing so, we can better manage energy resources, optimize computing efficiency, and ensure the sustainable evolution of AI technologies.
Comment: -
Reference(s):
  Historic references:
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Contact(s):
Lingyun Wan, Editor
Xin Wang, Editor
Jian Yao, Editor
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First registration in the WP: 2024-07-03 16:30:54
Last update: 2024-07-04 16:04:53