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Implementation:NVIDIA TransformerEngine Ops Fused Backward Linear Scale

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Field Value
Sources TransformerEngine
Domains Deep_Learning, PyTorch, Optimization
Last Updated 2026-02-07 14:00 GMT

Overview

Fused backward pass operation that combines dgrad GEMM with constant scaling, applying the scale factor directly during the GEMM computation.

Description

BackwardLinearScale is a FusedOperation that fuses the backward pass of BasicLinear and ConstantScale by passing the scale factor as grad_input_alpha and grad_weight_alpha to the BasicLinear._functional_backward call. This avoids a separate scaling kernel. The fusion requires a BasicLinear followed by ConstantScale in the backward operation list, and column tensor parallelism is not supported.

Usage

Automatically applied by the operation fuser in backward pass pattern matching. Common in architectures that use residual scaling.

Code Reference

Source Location

Repository
NVIDIA/TransformerEngine
File
transformer_engine/pytorch/ops/fused/backward_linear_scale.py
Lines
1--165

Signature

class BackwardLinearScale(FusedOperation):
    def __init__(self, *, scale: ConstantScale, linear: BasicLinear): ...
    def fuser_backward(self, basic_op_ctxs, grad_output, *, basic_op_grad_extra_outputs) -> Tuple: ...

    @staticmethod
    def fuse_backward_ops(ops, **unused) -> list[FusibleOperation]: ...

Import

from transformer_engine.pytorch.ops.fused.backward_linear_scale import BackwardLinearScale

I/O Contract

Inputs

Name Type Required Description
scale ConstantScale Yes The constant scaling operation
linear BasicLinear Yes BasicLinear operation (not column TP)
grad_output torch.Tensor Yes Upstream gradient

Outputs

Name Type Description
grad_input torch.Tensor Scaled dgrad
grad_weight torch.Tensor Scaled weight gradient

Usage Examples

# Automatically fused by the operation fuser when detecting pattern:
# [BasicLinear, ConstantScale] in the backward pass
# No manual usage required

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