"SecTL: Secure and Verifiable Transfer Learning-based inference."

Abbass Madi et al. (2022)

Details and statistics

DOI: 10.5220/0010987700003120

access: closed

type: Conference or Workshop Paper

metadata version: 2022-03-16

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