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[2017-2020] : [SG5] : [Q6/5]

[Declared patent(s)]  - [Publication]

Work item: L.Suppl.42 (ex L.Suppl.ee_ml_scm)
Subject/title: Guidelines on the Environmental Efficiency of Machine Learning Processes in Supply Chain Management
Status: Agreed on 2021-05-20 
Approval process: Agreement
Type of work item: Supplement
Version: New
Equivalent number: -
Timing: -
Liaison: -
Supporting members: Telecom Italia
Summary: This Supplement provides guidelines on the environmental efficiency of machine learning (ML) processes in supply chain management. This guidance document is intended to support machine learning researchers and operators to measure and improve the environmental efficiency of ML, and other emerging technologies (e.g. Blockchain, Big Data, 5G, …) use in supply chain management.
Comment: -
Reference(s):
  Historic references:
Contact(s):
Claudio Bianco, Editor
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First registration in the WP: 2021-05-31 14:12:56
Last update: 2021-07-15 17:20:07