Comments (1)
So from what I understand, it works something like this:
There is the register.cc
file which registers all the kernels. The way that we add our own kernel is by providing register_lqce.cc
which includes our kernels.
Now the nice thing about a linker, is that when you do not register your kernel there, it will automatically detect that your Register_MyKernel()
function is never called and it will remove that function from your final binary. So even if you compiled your MyKernel.cc
file, it will just be removed at the end because it is seen as "unused".
So basically when you enable the selective registration feature, it generates a new register.cc
file for you and it only calls the Register_XXX
functions for those ops that are in your model. This way you get a binary that can only do your specific model or a subset of it.
So by providing our own register.cc
file we are already kind-of using a system similar to this.
from compute-engine.
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from compute-engine.