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ITU-T Y.3531 - Cloud computing - Functional requirements for machine learning as a service
This Recommendation provides system context, functional requirements and use cases for machine learning as a service (MLaaS).
In particular, the scope of this Recommendation includes:
- an overview of machine learning (ML);
- an introduction to MLaaS;
- functional requirements of MLaaS.
The use cases of MLaaS are developed to derive its functional requirements.
NOTE – Development of ML algorithms and methodologies lie outside the scope of this Recommendation. © ITU 2022 All rights reserved
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- System architecture
- Data collection
- Data processing
- Security and resilience
- Interoperability
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