pub struct AttnBlock2D<T: Float> {
pub group_norm: GroupNorm<T>,
pub to_q: Linear<T>,
pub to_k: Linear<T>,
pub to_v: Linear<T>,
pub to_out_0: Linear<T>,
/* private fields */
}Expand description
Single-head spatial self-attention with residual + GroupNorm — the VAE mid-block attention.
Matches diffusers.models.attention_processor.Attention configured
with:
heads = in_channels / attention_head_dim = 512 / 512 = 1norm_num_groups = 32(sogroup_normis enabled)residual_connection = Truebias = True,out_bias = Trueeps = 1e-6
State-dict layout (HF diffusers):
group_norm.{weight,bias} [C], [C]
to_q.{weight,bias} [C, C], [C]
to_k.{weight,bias} [C, C], [C]
to_v.{weight,bias} [C, C], [C]
to_out.0.{weight,bias} [C, C], [C] // to_out[1] is Dropout (no params)Fields§
§group_norm: GroupNorm<T>GroupNorm over the channel axis.
to_q: Linear<T>Query projection Linear(C -> C, bias).
to_k: Linear<T>Key projection Linear(C -> C, bias).
to_v: Linear<T>Value projection Linear(C -> C, bias).
to_out_0: Linear<T>Output projection to_out[0] = Linear(C -> C, bias).
Implementations§
Source§impl<T: Float> AttnBlock2D<T>
impl<T: Float> AttnBlock2D<T>
Sourcepub fn new(
channels: usize,
norm_num_groups: usize,
eps: f64,
) -> FerrotorchResult<Self>
pub fn new( channels: usize, norm_num_groups: usize, eps: f64, ) -> FerrotorchResult<Self>
Build a randomly-initialized AttnBlock2D.
§Errors
Returns FerrotorchError::InvalidArgument when channels
is not divisible by norm_num_groups (the GroupNorm constructor
surfaces this).
Trait Implementations§
Source§impl<T: Float> Module<T> for AttnBlock2D<T>
impl<T: Float> Module<T> for AttnBlock2D<T>
Source§fn forward(&self, input: &Tensor<T>) -> FerrotorchResult<Tensor<T>>
fn forward(&self, input: &Tensor<T>) -> FerrotorchResult<Tensor<T>>
Forward pass. Takes input tensor, returns output tensor.
Source§fn parameters(&self) -> Vec<&Parameter<T>>
fn parameters(&self) -> Vec<&Parameter<T>>
Iterate over all learnable parameters.
Source§fn parameters_mut(&mut self) -> Vec<&mut Parameter<T>>
fn parameters_mut(&mut self) -> Vec<&mut Parameter<T>>
Iterate over all learnable parameters mutably.
Source§fn named_parameters(&self) -> Vec<(String, &Parameter<T>)>
fn named_parameters(&self) -> Vec<(String, &Parameter<T>)>
Named parameters for state dict serialization. Read more
Source§fn is_training(&self) -> bool
fn is_training(&self) -> bool
Whether the module is in training mode.
Source§fn load_state_dict(
&mut self,
state: &StateDict<T>,
strict: bool,
) -> FerrotorchResult<()>
fn load_state_dict( &mut self, state: &StateDict<T>, strict: bool, ) -> FerrotorchResult<()>
Load parameters from a state dict. Read more
Source§fn to_device(&mut self, device: Device) -> Result<(), FerrotorchError>
fn to_device(&mut self, device: Device) -> Result<(), FerrotorchError>
Move all parameters and buffers to a device. Read more
Source§fn state_dict(&self) -> HashMap<String, Tensor<T>>
fn state_dict(&self) -> HashMap<String, Tensor<T>>
Export parameters and buffers as a state dict (torch parity). Read more
Source§fn buffers(&self) -> Vec<&Buffer<T>>
fn buffers(&self) -> Vec<&Buffer<T>>
Iterate over all non-trainable buffers (e.g. running mean / variance
in BatchNorm). Default returns empty — concrete modules with buffers
override.
Source§fn buffers_mut(&mut self) -> Vec<&mut Buffer<T>>
fn buffers_mut(&mut self) -> Vec<&mut Buffer<T>>
Mutable iteration over all buffers. Default returns empty.
Source§fn named_buffers(&self) -> Vec<(String, &Buffer<T>)>
fn named_buffers(&self) -> Vec<(String, &Buffer<T>)>
Named buffers (dot-separated paths for nested modules). Default
returns empty.
Source§fn as_any(&self) -> Option<&(dyn Any + 'static)>
fn as_any(&self) -> Option<&(dyn Any + 'static)>
Downcast hook for type-erased buffer-loader dispatch. (#984) Read more
Source§fn children(&self) -> Vec<&dyn Module<T>>
fn children(&self) -> Vec<&dyn Module<T>>
Direct child modules. Default returns empty (leaf module).
Source§fn named_children(&self) -> Vec<(String, &dyn Module<T>)>
fn named_children(&self) -> Vec<(String, &dyn Module<T>)>
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Source§fn modules(&self) -> Vec<&dyn Module<T>>where
Self: Sized,
fn modules(&self) -> Vec<&dyn Module<T>>where
Self: Sized,
All modules in this subtree, depth-first (self first, then each
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Source§fn descendants_dyn(&self) -> Vec<&dyn Module<T>>
fn descendants_dyn(&self) -> Vec<&dyn Module<T>>
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self in depth-first order. Object-safe.Source§fn named_modules(&self) -> Vec<(String, &dyn Module<T>)>where
Self: Sized,
fn named_modules(&self) -> Vec<(String, &dyn Module<T>)>where
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All modules in this subtree with dot-separated path names. The root
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""; children paths are joined with ..Source§fn named_descendants_dyn(&self) -> Vec<(String, &dyn Module<T>)>
fn named_descendants_dyn(&self) -> Vec<(String, &dyn Module<T>)>
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Source§fn with_forward_hook(
self,
hook: Box<dyn Fn(&Tensor<T>, &Tensor<T>) + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
fn with_forward_hook(
self,
hook: Box<dyn Fn(&Tensor<T>, &Tensor<T>) + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
Wrap this module in a
HookedModule and register a forward hook.
Returns the wrapper paired with a HookHandle that can be used to
remove the hook later. The wrapper implements Module<T> itself, so
it slots into any place the original module did. Mirrors
torch.nn.Module.register_forward_hook.Source§fn with_forward_pre_hook(
self,
hook: Box<dyn Fn(&Tensor<T>) -> Result<Tensor<T>, FerrotorchError> + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
fn with_forward_pre_hook(
self,
hook: Box<dyn Fn(&Tensor<T>) -> Result<Tensor<T>, FerrotorchError> + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
Wrap this module in a
HookedModule and register a forward
pre-hook. See Self::with_forward_hook. Mirrors
torch.nn.Module.register_forward_pre_hook.Source§fn with_backward_hook(
self,
hook: Box<dyn Fn(&Tensor<T>, &Tensor<T>) + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
fn with_backward_hook(
self,
hook: Box<dyn Fn(&Tensor<T>, &Tensor<T>) + Send + Sync>,
) -> (HookedModule<Self, T>, HookHandle)where
Self: Sized,
Wrap this module in a
HookedModule and register a backward hook.
See Self::with_forward_hook. Mirrors
torch.nn.Module.register_backward_hook.Source§fn zero_grad(&self) -> Result<(), FerrotorchError>
fn zero_grad(&self) -> Result<(), FerrotorchError>
Set the gradient of every parameter to
None. Read moreSource§fn requires_grad_(&mut self, requires_grad: bool)
fn requires_grad_(&mut self, requires_grad: bool)
Toggle
requires_grad on every parameter (freeze / unfreeze the
module). Mirrors torch.nn.Module.requires_grad_.Source§fn apply_to_parameters(&mut self, f: &mut dyn FnMut(&mut Parameter<T>))
fn apply_to_parameters(&mut self, f: &mut dyn FnMut(&mut Parameter<T>))
Apply a function to every parameter in this module. Mirrors
torch.nn.Module.apply for the parameter case (true apply recurses
over all submodules; the recursive form requires &mut dyn Module
which conflicts with this trait’s &mut self borrow). Read moreAuto Trait Implementations§
impl<T> !RefUnwindSafe for AttnBlock2D<T>
impl<T> !UnwindSafe for AttnBlock2D<T>
impl<T> Freeze for AttnBlock2D<T>
impl<T> Send for AttnBlock2D<T>
impl<T> Sync for AttnBlock2D<T>
impl<T> Unpin for AttnBlock2D<T>
impl<T> UnsafeUnpin for AttnBlock2D<T>
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Source§impl<T> BorrowMut<T> for Twhere
T: ?Sized,
impl<T> BorrowMut<T> for Twhere
T: ?Sized,
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Mutably borrows from an owned value. Read more
Source§impl<T> DistributionExt for Twhere
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Converts
self into a Left variant of Either<Self, Self>
if into_left is true.
Converts self into a Right variant of Either<Self, Self>
otherwise. Read moreSource§fn into_either_with<F>(self, into_left: F) -> Either<Self, Self>
fn into_either_with<F>(self, into_left: F) -> Either<Self, Self>
Converts
self into a Left variant of Either<Self, Self>
if into_left(&self) returns true.
Converts self into a Right variant of Either<Self, Self>
otherwise. Read more