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This repository was archived by the owner on Apr 8, 2026. It is now read-only.
I don't know if this question belongs here, but I am currently making a custom tf keras gan with feature matching loss and I am struggling to understand when to use inference mode on a model, that is, making use of training layers like dropout and updating batch norm parameters. This goes both for discriminator and generator as I understand that they should be trained separately.
I don't know if this question belongs here, but I am currently making a custom tf keras gan with feature matching loss and I am struggling to understand when to use inference mode on a model, that is, making use of training layers like dropout and updating batch norm parameters. This goes both for discriminator and generator as I understand that they should be trained separately.