IEEE P2986

IEEE P2986

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New IEEE Standard – Active – Draft.Privacy and security issues pose great challenges to the federated machine leaning community. A general view on privacy and security risks while meeting applicable privacy and security requirements in federated machine learning is provided. A recommended practice is provided in four parts: malicious failure and non-malicious failure in federated machine learning, privacy and security requirements from the perspective of system and federated machine learning participants, defensive methods and fault recovery methods and the privacy and security risks evaluation. It also provides some guidance for typical federated learning scenarios in different industry areas which can facilitate practitioners to use federal learning in a better way.

Product Details

ISBN(s):
9798855700022
Number of Pages:
61
File Size:
1 file , 2.8 MB
Product Code(s):
STDUD26375
Note:
This product is unavailable in Russia, Belarus

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