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ETSI GR ENI 010 V 1.1.1 - Experiential Networked Intelligence (ENI) - Evaluation of categories for AI application to Networks
The purpose of this work item is to specify quantitative evaluation criteria of network autonomicity categories, which is defined in the published GR ENI 007. This Work Item is composed of three components:
- (1) to further specify the categories and quantitative factors determing the network autonomicity categories;
- (2) to define a framework of quantitative evaluation process and a scoring criteria;
- (3) to describe several scenario examples of quantitative evaluation criteria.
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