0

So I was browsing for mixed precision training recently and came across this link,

Another reference to make sure the above info is apt is from Nvidia

From Section 2.2,

In practice, higher performance is achieved when A and B dimensions are multiples of 8. cuDNN v7 and cuBLAS 9 include some functions that invoke tensor core operations, for performance reasons these require that input and output feature map sizes are multiples of 8

So, Why dimensions have to be a multiple of 8 ?

PS it's completely new concept to me, just reading about it and curious as to why it's so..

Thanks

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Browse other questions tagged or ask your own question.