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OpenDAS
TransformerEngine
Commits
970620a5
Commit
970620a5
authored
Dec 27, 2025
by
wenjh
Browse files
merge nv_release_v2.10 to release_v2.10
Signed-off-by:
wenjh
<
wenjh@sugon.com
>
parents
c1a1c04e
769ed778
Changes
135
Show whitespace changes
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Showing
20 changed files
with
66 additions
and
71 deletions
+66
-71
transformer_engine/pytorch/ops/basic/all_reduce.py
transformer_engine/pytorch/ops/basic/all_reduce.py
+1
-1
transformer_engine/pytorch/ops/basic/basic_linear.py
transformer_engine/pytorch/ops/basic/basic_linear.py
+12
-14
transformer_engine/pytorch/ops/basic/bias.py
transformer_engine/pytorch/ops/basic/bias.py
+5
-5
transformer_engine/pytorch/ops/basic/l2normalization.py
transformer_engine/pytorch/ops/basic/l2normalization.py
+3
-3
transformer_engine/pytorch/ops/basic/layer_norm.py
transformer_engine/pytorch/ops/basic/layer_norm.py
+4
-4
transformer_engine/pytorch/ops/basic/quantize.py
transformer_engine/pytorch/ops/basic/quantize.py
+2
-2
transformer_engine/pytorch/ops/basic/reduce_scatter.py
transformer_engine/pytorch/ops/basic/reduce_scatter.py
+1
-1
transformer_engine/pytorch/ops/basic/reshape.py
transformer_engine/pytorch/ops/basic/reshape.py
+1
-1
transformer_engine/pytorch/ops/basic/rmsnorm.py
transformer_engine/pytorch/ops/basic/rmsnorm.py
+7
-5
transformer_engine/pytorch/ops/fused/backward_activation_bias.py
...rmer_engine/pytorch/ops/fused/backward_activation_bias.py
+3
-3
transformer_engine/pytorch/ops/fused/backward_add_rmsnorm.py
transformer_engine/pytorch/ops/fused/backward_add_rmsnorm.py
+2
-2
transformer_engine/pytorch/ops/fused/backward_linear_add.py
transformer_engine/pytorch/ops/fused/backward_linear_add.py
+2
-2
transformer_engine/pytorch/ops/fused/backward_linear_scale.py
...sformer_engine/pytorch/ops/fused/backward_linear_scale.py
+2
-2
transformer_engine/pytorch/ops/fused/forward_linear_bias_activation.py
...ngine/pytorch/ops/fused/forward_linear_bias_activation.py
+2
-2
transformer_engine/pytorch/ops/fused/forward_linear_bias_add.py
...ormer_engine/pytorch/ops/fused/forward_linear_bias_add.py
+2
-2
transformer_engine/pytorch/ops/fused/forward_linear_scale_add.py
...rmer_engine/pytorch/ops/fused/forward_linear_scale_add.py
+2
-2
transformer_engine/pytorch/ops/fused/userbuffers_backward_linear.py
...r_engine/pytorch/ops/fused/userbuffers_backward_linear.py
+2
-5
transformer_engine/pytorch/ops/fused/userbuffers_forward_linear.py
...er_engine/pytorch/ops/fused/userbuffers_forward_linear.py
+2
-4
transformer_engine/pytorch/ops/fuser.py
transformer_engine/pytorch/ops/fuser.py
+1
-1
transformer_engine/pytorch/ops/linear.py
transformer_engine/pytorch/ops/linear.py
+10
-10
No files found.
transformer_engine/pytorch/ops/basic/all_reduce.py
View file @
970620a5
...
@@ -24,7 +24,7 @@ class AllReduce(BasicOperation):
...
@@ -24,7 +24,7 @@ class AllReduce(BasicOperation):
Parameters
Parameters
----------
----------
process_group: torch.distributed.ProcessGroup, default = world group
process_group
: torch.distributed.ProcessGroup, default = world group
Process group for communication
Process group for communication
"""
"""
...
...
transformer_engine/pytorch/ops/basic/basic_linear.py
View file @
970620a5
...
@@ -25,7 +25,6 @@ from ...module.base import (
...
@@ -25,7 +25,6 @@ from ...module.base import (
_2X_ACC_DGRAD
,
_2X_ACC_DGRAD
,
_2X_ACC_WGRAD
,
_2X_ACC_WGRAD
,
get_dummy_wgrad
,
get_dummy_wgrad
,
get_workspace
,
)
)
from
...tensor
import
Quantizer
from
...tensor
import
Quantizer
from
...tensor.float8_tensor
import
Float8Quantizer
from
...tensor.float8_tensor
import
Float8Quantizer
...
@@ -54,27 +53,27 @@ class BasicLinear(BasicOperation):
...
@@ -54,27 +53,27 @@ class BasicLinear(BasicOperation):
Parameters
Parameters
----------
----------
in_features: int
in_features
: int
Inner dimension of input tensor
Inner dimension of input tensor
out_features: int
out_features
: int
Inner dimension of output tensor
Inner dimension of output tensor
device: torch.device, default = default CUDA device
device
: torch.device, default = default CUDA device
Tensor device
Tensor device
dtype: torch.dtype, default = default dtype
dtype
: torch.dtype, default = default dtype
Tensor datatype
Tensor datatype
tensor_parallel_mode: {`None`, "column", "row"}, default = `None`
tensor_parallel_mode
: {`None`, "column", "row"}, default = `None`
Mode for tensor parallelism
Mode for tensor parallelism
tensor_parallel_group: torch.distributed.ProcessGroup, default = world group
tensor_parallel_group
: torch.distributed.ProcessGroup, default = world group
Process group for tensor parallelism
Process group for tensor parallelism
sequence_parallel: bool, default = `False`
sequence_parallel
: bool, default = `False`
Whether to apply sequence parallelism together with tensor
Whether to apply sequence parallelism together with tensor
parallelism, i.e. distributing input or output tensors along
parallelism, i.e. distributing input or output tensors along
outer dimension (sequence or batch dim) when not distributing
outer dimension (sequence or batch dim) when not distributing
along inner dimension (embedding dim)
along inner dimension (embedding dim)
rng_state_tracker_function: callable
rng_state_tracker_function
: callable
Function that returns `CudaRNGStatesTracker`, which is used
Function that returns `CudaRNGStatesTracker`, which is used
for model-parallel weight initialization
for model-parallel weight initialization
accumulate_into_main_grad: bool, default = `False`
accumulate_into_main_grad
: bool, default = `False`
Whether to directly accumulate weight gradients into the
Whether to directly accumulate weight gradients into the
weight's `main_grad` attribute instead of relying on PyTorch
weight's `main_grad` attribute instead of relying on PyTorch
autograd. The weight's `main_grad` must be set externally and
autograd. The weight's `main_grad` must be set externally and
...
@@ -138,8 +137,10 @@ class BasicLinear(BasicOperation):
...
@@ -138,8 +137,10 @@ class BasicLinear(BasicOperation):
out_features
=
out_features
,
out_features
=
out_features
,
)
)
#
Whether weight tensor is
natively quantized
#
Initialize recipe state if needed for
natively quantized
weight
self
.
_with_quantized_weight
:
bool
=
FP8GlobalStateManager
.
with_fp8_parameters
()
self
.
_with_quantized_weight
:
bool
=
FP8GlobalStateManager
.
with_fp8_parameters
()
if
self
.
_with_quantized_weight
:
self
.
reset_recipe_state
(
recipe
=
FP8GlobalStateManager
.
get_fp8_recipe
())
# Initialize parameters if needed
# Initialize parameters if needed
weight
=
torch
.
empty
(
weight
=
torch
.
empty
(
...
@@ -585,7 +586,6 @@ class BasicLinear(BasicOperation):
...
@@ -585,7 +586,6 @@ class BasicLinear(BasicOperation):
y
,
*
_
=
general_gemm
(
y
,
*
_
=
general_gemm
(
w
,
w
,
x
,
x
,
get_workspace
(),
out_dtype
=
dtype
,
out_dtype
=
dtype
,
quantization_params
=
output_quantizer
,
quantization_params
=
output_quantizer
,
alpha
=
alpha
,
alpha
=
alpha
,
...
@@ -875,7 +875,6 @@ class BasicLinear(BasicOperation):
...
@@ -875,7 +875,6 @@ class BasicLinear(BasicOperation):
dx
,
*
_
=
general_gemm
(
dx
,
*
_
=
general_gemm
(
w
,
w
,
dy
,
dy
,
get_workspace
(),
out_dtype
=
dtype
,
out_dtype
=
dtype
,
quantization_params
=
grad_input_quantizer
,
quantization_params
=
grad_input_quantizer
,
alpha
=
grad_input_alpha
,
alpha
=
grad_input_alpha
,
...
@@ -928,7 +927,6 @@ class BasicLinear(BasicOperation):
...
@@ -928,7 +927,6 @@ class BasicLinear(BasicOperation):
dw
,
*
_
=
general_gemm
(
dw
,
*
_
=
general_gemm
(
x
,
x
,
dy
,
dy
,
get_workspace
(),
out_dtype
=
dw_dtype
,
out_dtype
=
dw_dtype
,
alpha
=
grad_weight_alpha
,
alpha
=
grad_weight_alpha
,
beta
=
grad_weight_beta
,
beta
=
grad_weight_beta
,
...
...
transformer_engine/pytorch/ops/basic/bias.py
View file @
970620a5
...
@@ -22,16 +22,16 @@ class Bias(BasicOperation):
...
@@ -22,16 +22,16 @@ class Bias(BasicOperation):
Parameters
Parameters
----------
----------
size: int
size
: int
Inner dimension of input tensor
Inner dimension of input tensor
device: torch.device, default = default CUDA device
device
: torch.device, default = default CUDA device
Tensor device
Tensor device
dtype: torch.dtype, default = default dtype
dtype
: torch.dtype, default = default dtype
Tensor datatype
Tensor datatype
tensor_parallel: bool, default = `False`
tensor_parallel
: bool, default = `False`
Whether to distribute input tensor and bias tensors along
Whether to distribute input tensor and bias tensors along
inner dimension
inner dimension
tensor_parallel_group: torch.distributed.ProcessGroup, default = world group
tensor_parallel_group
: torch.distributed.ProcessGroup, default = world group
Process group for tensor parallelism
Process group for tensor parallelism
"""
"""
...
...
transformer_engine/pytorch/ops/basic/l2normalization.py
View file @
970620a5
...
@@ -10,7 +10,7 @@ import os
...
@@ -10,7 +10,7 @@ import os
import
torch
import
torch
from
...
import
torch_version
from
...
torch_version
import
torch_version
from
...cpu_offload
import
is_cpu_offload_enabled
,
mark_activation_offload
from
...cpu_offload
import
is_cpu_offload_enabled
,
mark_activation_offload
from
...jit
import
(
from
...jit
import
(
l2normalization_fused
,
l2normalization_fused
,
...
@@ -40,11 +40,11 @@ class L2Normalization(BasicOperation):
...
@@ -40,11 +40,11 @@ class L2Normalization(BasicOperation):
----------
----------
eps : float, default = 1e-6
eps : float, default = 1e-6
A value added to the denominator for numerical stability
A value added to the denominator for numerical stability
seq_length: int, default = None
seq_length
: int, default = None
sequence length of input samples. Needed for JIT Warmup, a technique where jit fused
sequence length of input samples. Needed for JIT Warmup, a technique where jit fused
functions are warmed up before training to ensure same kernels are used for forward
functions are warmed up before training to ensure same kernels are used for forward
propagation and activation recompute phase.
propagation and activation recompute phase.
micro_batch_size: int, default = None
micro_batch_size
: int, default = None
batch size per training step. Needed for JIT Warmup, a technique where jit
batch size per training step. Needed for JIT Warmup, a technique where jit
fused functions are warmed up before training to ensure same kernels are
fused functions are warmed up before training to ensure same kernels are
used for forward propagation and activation recompute phase.
used for forward propagation and activation recompute phase.
...
...
transformer_engine/pytorch/ops/basic/layer_norm.py
View file @
970620a5
...
@@ -42,14 +42,14 @@ class LayerNorm(BasicOperation):
...
@@ -42,14 +42,14 @@ class LayerNorm(BasicOperation):
Parameters
Parameters
----------
----------
normalized_shape: int or iterable of int
normalized_shape
: int or iterable of int
Inner dimensions of input tensor
Inner dimensions of input tensor
eps : float, default = 1e-5
eps : float, default = 1e-5
A value added to the denominator of layer normalization for
A value added to the denominator of layer normalization for
numerical stability
numerical stability
device: torch.device, default = default CUDA device
device
: torch.device, default = default CUDA device
Tensor device
Tensor device
dtype: torch.dtype, default = default dtype
dtype
: torch.dtype, default = default dtype
Tensor datatype
Tensor datatype
zero_centered_gamma : bool, default = 'False'
zero_centered_gamma : bool, default = 'False'
If `True`, the :math:`\gamma` parameter is initialized to zero
If `True`, the :math:`\gamma` parameter is initialized to zero
...
@@ -58,7 +58,7 @@ class LayerNorm(BasicOperation):
...
@@ -58,7 +58,7 @@ class LayerNorm(BasicOperation):
.. math::
.. math::
y = \frac{x - \mathrm{E}[x]}{\sqrt{\mathrm{Var}[x] + \varepsilon}} * (1 + \gamma) + \beta
y = \frac{x - \mathrm{E}[x]}{\sqrt{\mathrm{Var}[x] + \varepsilon}} * (1 + \gamma) + \beta
sm_margin: int or dict, default = 0
sm_margin
: int or dict, default = 0
Number of SMs to exclude when launching CUDA kernels. This
Number of SMs to exclude when launching CUDA kernels. This
helps overlap with other kernels, e.g. communication kernels.
helps overlap with other kernels, e.g. communication kernels.
For more fine-grained control, provide a dict with the SM
For more fine-grained control, provide a dict with the SM
...
...
transformer_engine/pytorch/ops/basic/quantize.py
View file @
970620a5
...
@@ -23,9 +23,9 @@ class Quantize(BasicOperation):
...
@@ -23,9 +23,9 @@ class Quantize(BasicOperation):
Parameters
Parameters
----------
----------
forward: bool, default = `True`
forward
: bool, default = `True`
Perform quantization in forward pass
Perform quantization in forward pass
backward: bool, default = `False`
backward
: bool, default = `False`
Perform quantization in backward pass
Perform quantization in backward pass
"""
"""
...
...
transformer_engine/pytorch/ops/basic/reduce_scatter.py
View file @
970620a5
...
@@ -23,7 +23,7 @@ class ReduceScatter(BasicOperation):
...
@@ -23,7 +23,7 @@ class ReduceScatter(BasicOperation):
Parameters
Parameters
----------
----------
process_group: torch.distributed.ProcessGroup, default = world group
process_group
: torch.distributed.ProcessGroup, default = world group
Process group for communication
Process group for communication
"""
"""
...
...
transformer_engine/pytorch/ops/basic/reshape.py
View file @
970620a5
...
@@ -24,7 +24,7 @@ class Reshape(BasicOperation):
...
@@ -24,7 +24,7 @@ class Reshape(BasicOperation):
Parameters
Parameters
----------
----------
shape: iterable of int
shape
: iterable of int
Output tensor dimensions. If one dimension is -1, it is
Output tensor dimensions. If one dimension is -1, it is
inferred based on input tensor dimensions.
inferred based on input tensor dimensions.
...
...
transformer_engine/pytorch/ops/basic/rmsnorm.py
View file @
970620a5
...
@@ -42,13 +42,13 @@ class RMSNorm(BasicOperation):
...
@@ -42,13 +42,13 @@ class RMSNorm(BasicOperation):
Parameters
Parameters
----------
----------
normalized_shape: int or iterable of int
normalized_shape
: int or iterable of int
Inner dimensions of input tensor
Inner dimensions of input tensor
eps : float, default = 1e-5
eps : float, default = 1e-5
A value added to the denominator for numerical stability
A value added to the denominator for numerical stability
device: torch.device, default = default CUDA device
device
: torch.device, default = default CUDA device
Tensor device
Tensor device
dtype: torch.dtype, default = default dtype
dtype
: torch.dtype, default = default dtype
Tensor datatype
Tensor datatype
zero_centered_gamma : bool, default = 'False'
zero_centered_gamma : bool, default = 'False'
If `True`, the :math:`\gamma` parameter is initialized to zero
If `True`, the :math:`\gamma` parameter is initialized to zero
...
@@ -57,7 +57,7 @@ class RMSNorm(BasicOperation):
...
@@ -57,7 +57,7 @@ class RMSNorm(BasicOperation):
.. math::
.. math::
y = \frac{x}{\sqrt{\mathrm{Var}[x] + \varepsilon}} * (1 + \gamma)
y = \frac{x}{\sqrt{\mathrm{Var}[x] + \varepsilon}} * (1 + \gamma)
sm_margin: int, default = 0
sm_margin
: int, default = 0
Number of SMs to exclude when launching CUDA kernels. This
Number of SMs to exclude when launching CUDA kernels. This
helps overlap with other kernels, e.g. communication kernels.
helps overlap with other kernels, e.g. communication kernels.
For more fine-grained control, provide a dict with the SM
For more fine-grained control, provide a dict with the SM
...
@@ -249,4 +249,6 @@ class RMSNorm(BasicOperation):
...
@@ -249,4 +249,6 @@ class RMSNorm(BasicOperation):
)
->
torch
.
Tensor
:
)
->
torch
.
Tensor
:
"""Every operand in this function has a defined ONNX translation."""
"""Every operand in this function has a defined ONNX translation."""
weight
=
self
.
weight
+
1
if
self
.
zero_centered_gamma
else
self
.
weight
weight
=
self
.
weight
+
1
if
self
.
zero_centered_gamma
else
self
.
weight
return
torch
.
nn
.
functional
.
rms_norm
(
input_
,
input_
.
shape
[
-
1
:],
weight
,
self
.
eps
)
variance
=
input_
.
pow
(
2
).
mean
(
-
1
,
keepdim
=
True
)
normalized
=
input_
*
torch
.
rsqrt
(
variance
+
self
.
eps
)
return
normalized
*
weight
transformer_engine/pytorch/ops/fused/backward_activation_bias.py
View file @
970620a5
...
@@ -90,15 +90,15 @@ def fuse_backward_activation_bias(
...
@@ -90,15 +90,15 @@ def fuse_backward_activation_bias(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Backward pass operations and the indices of the corresponding
Backward pass operations and the indices of the corresponding
basic operations.
basic operations.
recipe: Recipe, optional
recipe
: Recipe, optional
Used quantization recipe
Used quantization recipe
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated backward pass operations
Updated backward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/backward_add_rmsnorm.py
View file @
970620a5
...
@@ -87,13 +87,13 @@ def fuse_backward_add_rmsnorm(
...
@@ -87,13 +87,13 @@ def fuse_backward_add_rmsnorm(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Backward pass operations and the indices of the corresponding
Backward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated backward pass operations
Updated backward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/backward_linear_add.py
View file @
970620a5
...
@@ -119,13 +119,13 @@ def fuse_backward_linear_add(
...
@@ -119,13 +119,13 @@ def fuse_backward_linear_add(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Backward pass operations and the indices of the corresponding
Backward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated backward pass operations
Updated backward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/backward_linear_scale.py
View file @
970620a5
...
@@ -119,13 +119,13 @@ def fuse_backward_linear_scale(
...
@@ -119,13 +119,13 @@ def fuse_backward_linear_scale(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Backward pass operations and the indices of the corresponding
Backward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated backward pass operations
Updated backward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/forward_linear_bias_activation.py
View file @
970620a5
...
@@ -142,13 +142,13 @@ def fuse_forward_linear_bias_activation(
...
@@ -142,13 +142,13 @@ def fuse_forward_linear_bias_activation(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Forward pass operations and the indices of the corresponding
Forward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated forward pass operations
Updated forward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/forward_linear_bias_add.py
View file @
970620a5
...
@@ -139,13 +139,13 @@ def fuse_forward_linear_bias_add(
...
@@ -139,13 +139,13 @@ def fuse_forward_linear_bias_add(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Forward pass operations and the indices of the corresponding
Forward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated forward pass operations
Updated forward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/forward_linear_scale_add.py
View file @
970620a5
...
@@ -118,13 +118,13 @@ def fuse_forward_linear_scale_add(
...
@@ -118,13 +118,13 @@ def fuse_forward_linear_scale_add(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Forward pass operations and the indices of the corresponding
Forward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated forward pass operations
Updated forward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/userbuffers_backward_linear.py
View file @
970620a5
...
@@ -19,7 +19,6 @@ from ...module.base import (
...
@@ -19,7 +19,6 @@ from ...module.base import (
fill_userbuffers_buffer_for_all_gather
,
fill_userbuffers_buffer_for_all_gather
,
get_dummy_wgrad
,
get_dummy_wgrad
,
get_ub
,
get_ub
,
get_workspace
,
)
)
from
...quantized_tensor
import
Quantizer
from
...quantized_tensor
import
Quantizer
from
...tensor.mxfp8_tensor
import
MXFP8Quantizer
from
...tensor.mxfp8_tensor
import
MXFP8Quantizer
...
@@ -378,7 +377,6 @@ class UserbuffersBackwardLinear(FusedOperation):
...
@@ -378,7 +377,6 @@ class UserbuffersBackwardLinear(FusedOperation):
dx
,
*
_
=
general_gemm
(
dx
,
*
_
=
general_gemm
(
w
,
w
,
dy
,
dy
,
get_workspace
(),
out_dtype
=
dtype
,
out_dtype
=
dtype
,
quantization_params
=
grad_input_quantizer
,
quantization_params
=
grad_input_quantizer
,
layout
=
"NN"
,
layout
=
"NN"
,
...
@@ -464,7 +462,6 @@ class UserbuffersBackwardLinear(FusedOperation):
...
@@ -464,7 +462,6 @@ class UserbuffersBackwardLinear(FusedOperation):
dw
,
*
_
=
general_gemm
(
dw
,
*
_
=
general_gemm
(
x
,
x
,
dy
,
dy
,
get_workspace
(),
out_dtype
=
dw_dtype
,
out_dtype
=
dw_dtype
,
accumulate
=
accumulate_into_grad_weight
,
accumulate
=
accumulate_into_grad_weight
,
layout
=
"NT"
,
layout
=
"NT"
,
...
@@ -592,13 +589,13 @@ def fuse_userbuffers_backward_linear(
...
@@ -592,13 +589,13 @@ def fuse_userbuffers_backward_linear(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Backward pass operations and the indices of the corresponding
Backward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated backward pass operations
Updated backward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fused/userbuffers_forward_linear.py
View file @
970620a5
...
@@ -18,7 +18,6 @@ from ...quantization import FP8GlobalStateManager
...
@@ -18,7 +18,6 @@ from ...quantization import FP8GlobalStateManager
from
...module.base
import
(
from
...module.base
import
(
fill_userbuffers_buffer_for_all_gather
,
fill_userbuffers_buffer_for_all_gather
,
get_ub
,
get_ub
,
get_workspace
,
_2X_ACC_FPROP
,
_2X_ACC_FPROP
,
)
)
from
...quantized_tensor
import
Quantizer
from
...quantized_tensor
import
Quantizer
...
@@ -243,7 +242,6 @@ class UserbuffersForwardLinear(FusedOperation):
...
@@ -243,7 +242,6 @@ class UserbuffersForwardLinear(FusedOperation):
gemm_output
,
*
_
,
reduce_scatter_output
=
general_gemm
(
gemm_output
,
*
_
,
reduce_scatter_output
=
general_gemm
(
w
,
w
,
x
,
x
,
get_workspace
(),
out_dtype
=
dtype
,
out_dtype
=
dtype
,
quantization_params
=
output_quantizer
,
quantization_params
=
output_quantizer
,
bias
=
bias
,
bias
=
bias
,
...
@@ -379,13 +377,13 @@ def fuse_userbuffers_forward_linear(
...
@@ -379,13 +377,13 @@ def fuse_userbuffers_forward_linear(
Parameters
Parameters
----------
----------
ops: list of tuples
ops
: list of tuples
Forward pass operations and the indices of the corresponding
Forward pass operations and the indices of the corresponding
basic operations.
basic operations.
Returns
Returns
-------
-------
ops: list of tuples
ops
: list of tuples
Updated forward pass operations
Updated forward pass operations
"""
"""
...
...
transformer_engine/pytorch/ops/fuser.py
View file @
970620a5
...
@@ -310,7 +310,7 @@ class OperationFuser:
...
@@ -310,7 +310,7 @@ class OperationFuser:
Parameters
Parameters
----------
----------
ops: list of FusibleOperation
ops
: list of FusibleOperation
Pipeline of operations
Pipeline of operations
"""
"""
...
...
transformer_engine/pytorch/ops/linear.py
View file @
970620a5
...
@@ -27,29 +27,29 @@ class Linear(FusedOperation):
...
@@ -27,29 +27,29 @@ class Linear(FusedOperation):
Parameters
Parameters
----------
----------
in_features: int
in_features
: int
Inner dimension of input tensor
Inner dimension of input tensor
out_features: int
out_features
: int
Inner dimension of output tensor
Inner dimension of output tensor
bias: bool, default = `True`
bias
: bool, default = `True`
Apply additive bias
Apply additive bias
device: torch.device, default = default CUDA device
device
: torch.device, default = default CUDA device
Tensor device
Tensor device
dtype: torch.dtype, default = default dtype
dtype
: torch.dtype, default = default dtype
Tensor datatype
Tensor datatype
tensor_parallel_mode: {`None`, "column", "row"}, default = `None`
tensor_parallel_mode
: {`None`, "column", "row"}, default = `None`
Mode for tensor parallelism
Mode for tensor parallelism
tensor_parallel_group: torch.distributed.ProcessGroup, default = world group
tensor_parallel_group
: torch.distributed.ProcessGroup, default = world group
Process group for tensor parallelism
Process group for tensor parallelism
sequence_parallel: bool, default = `False`
sequence_parallel
: bool, default = `False`
Whether to apply sequence parallelism together with tensor
Whether to apply sequence parallelism together with tensor
parallelism, i.e. distributing input or output tensors along
parallelism, i.e. distributing input or output tensors along
outer dimension (sequence or batch dim) when not distributing
outer dimension (sequence or batch dim) when not distributing
along inner dimension (embedding dim)
along inner dimension (embedding dim)
rng_state_tracker_function: callable
rng_state_tracker_function
: callable
Function that returns CudaRNGStatesTracker, which is used for
Function that returns CudaRNGStatesTracker, which is used for
model-parallel weight initialization
model-parallel weight initialization
accumulate_into_main_grad: bool, default = `False`
accumulate_into_main_grad
: bool, default = `False`
Whether to directly accumulate weight gradients into the
Whether to directly accumulate weight gradients into the
weight's `main_grad` attribute instead of relying on PyTorch
weight's `main_grad` attribute instead of relying on PyTorch
autograd. The weight's `main_grad` must be set externally and
autograd. The weight's `main_grad` must be set externally and
...
...
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