Package | Description |
---|---|
org.bytedeco.tensorflow |
Modifier and Type | Method and Description |
---|---|
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.getPointer(long i) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.getPointer(long i) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.position(long position) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.position(long position) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.use_locking_(boolean setter) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.use_locking_(boolean setter) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.use_nesterov_(boolean setter) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.use_nesterov_(boolean setter) |
static ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.UseLocking(boolean x) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.UseLocking(boolean x)
If
True , updating of the var and accum tensors will be protected
by a lock; otherwise the behavior is undefined, but may exhibit less
contention. |
static ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.UseLocking(boolean x) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.UseLocking(boolean x)
If
True , updating of the var and accum tensors will be protected
by a lock; otherwise the behavior is undefined, but may exhibit less
contention. |
static ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.UseNesterov(boolean x) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.UseNesterov(boolean x)
If
True , the tensor passed to compute grad will be
var + momentum * accum, so in the end, the var you get is actually
var + momentum * accum. |
static ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.UseNesterov(boolean x) |
ResourceApplyKerasMomentum.Attrs |
ResourceApplyKerasMomentum.Attrs.UseNesterov(boolean x)
If
True , the tensor passed to compute grad will be
var + momentum * accum, so in the end, the var you get is actually
var + momentum * accum. |
Constructor and Description |
---|
ResourceApplyKerasMomentum(Scope scope,
Input var,
Input accum,
Input lr,
Input grad,
Input momentum,
ResourceApplyKerasMomentum.Attrs attrs) |
ResourceApplyKerasMomentum(Scope scope,
Input var,
Input accum,
Input lr,
Input grad,
Input momentum,
ResourceApplyKerasMomentum.Attrs attrs) |
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