### Description
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### Motivation and Context
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### Description
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### Motivation and Context
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### Description
See
454996d496
for manual changes (excluded auto-generated formatting changes)
### Why
Because the toolsets for old clang-format is out-of-date. This reduces
the development efficiency.
- The NPM package `clang-format` is already in maintenance mode. not
updated since 2 years ago.
- The VSCode extension for clang-format is not maintained for a while,
and a recent Node.js security update made it not working at all in
Windows.
No one in community seems interested in fixing those.
Choose Prettier as it is the most popular TS/JS formatter.
### How to merge
It's easy to break the build:
- Be careful of any new commits on main not included in this PR.
- Be careful that after this PR is merged, other PRs that already passed
CI can merge.
So, make sure there is no new commits before merging this one, and
invalidate js PRs that already passed CI, force them to merge to latest.
### Description
Added DequantizeLinear operator for JSEP.
### Motivation and Context
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### Description
<!-- Describe your changes. -->
### Motivation and Context
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### Description
Enabled more usecases
### Motivation and Context
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### Description
This PR supports
[DepthToSpace](https://onnx.ai/onnx/operators/onnx__DepthToSpace.html#depthtospace)
operator in webgpu backend.
### Test
We followed the steps described on [this
page](https://gist.github.com/fs-eire/a55b2c7e10a6864b9602c279b8b75dce)
to build, tested with the following commands, and confirmed that it
passed the Model and Op tests that already existed. (Probably, these
test cases were prepared in the past for WebGL backend)
```
~/onnxruntime/js/web>
% npm test -- suite0 -b=webgpu --wasm-number-threads=1 --debug
```
##### NOTE
I want to tell you that the main branch version failed 5 tests for the
resize_upsample_sizes_nearest operator.
Since I didn't touch this issue, those test cases still fail in my
branch as well.
Should I post an issue for this?
### Motivation and Context
Though the DepthToSpace operator plays a crucial role in
super-resolution domains, it was not supported in webgpu backend.
### Description
Add MatMulNBits to support MatMul using 4-bit quantized weights
### Motivation and Context
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### Description
Added Uniforms to SkipLayerNorm
### Motivation and Context
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Improve performance
---------
Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com>
### Description
This op is required in mobilenetv3-small-100. With this PR,
mobilenetv3-small-100 model becomes less than 10 ms from over 100 ms on
ADL.
This resolves the below build errors:
```
lib/wasm/jsep/webgpu/op-resolve-rules.ts:19:23 - error TS2724: '"./ops/instance-norm"' has no exported member named 'parseInstanceNormAttributes'. Did you mean 'InstanceNormAttributes'?
19 import {instanceNorm, parseInstanceNormAttributes} from './ops/instance-norm';
~~~~~~~~~~~~~~~~~~~~~~~~~~~
lib/wasm/jsep/webgpu/op-resolve-rules.ts:19:23 - error TS6133: 'parseInstanceNormAttributes' is declared but its value is never read.
19 import {instanceNorm, parseInstanceNormAttributes} from './ops/instance-norm';
~~~~~~~~~~~~~~~~~~~~~~~~~~~
lib/wasm/jsep/webgpu/op-resolve-rules.ts:20:20 - error TS2305: Module '"./ops/layer-norm"' has no exported member 'parseLayerNormAttributes'.
20 import {layerNorm, parseLayerNormAttributes} from './ops/layer-norm';
~~~~~~~~~~~~~~~~~~~~~~~~
lib/wasm/jsep/webgpu/op-resolve-rules.ts:20:20 - error TS6133: 'parseLayerNormAttributes' is declared but its value is never read.
20 import {layerNorm, parseLayerNormAttributes} from './ops/layer-norm';
```
### Description
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### Motivation and Context
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### Description
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Added uniforms to Reduce op
### Motivation and Context
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Improve perforamnce.
### Description
This PR adds `BatchNormalization` with `float` support.
Some Todos:
1. all inputs don't have same data type. For example, x/y is float16,
but bias/scale is float32 or double.
2. training mode support.
We see many models are using `BatchNormalization` ops. However, due to
the missing in jsep, all of them run on cpu, which result very poor
performance. With this PR's support, densenet-9 model becomes 20.29 ms
from 250.69 ms.
### Description
It was a mistake to use 2 different names for Clip operator in
op-resolve-rules.ts for different opset. An optimized implementation can
handle both cases (opset < 11 and opset >=11). Remove "ClipV10" as an
entry from the table.
### Description
This is a narrow implementation of Attention/MultiHeadAttention as it
does not support:
a. inputs 5-7 for MHA
b. packed QKV/KV
c. past/present
d. attention mask
But it works well for StableDiffusion and can be extended later. It
reduces VRAM usage as it combines many ops into few
I've updated demo here https://islamov.ai/stable-diffusion-webgpu/ it
takes ~13sec for 1 image with 20 steps on RTX3090Ti and about 25s on M1
Pro
VRAM usage is about 8gb if you don't use img2img
Going to focus on SDXL now
---------
Co-authored-by: Guenther Schmuelling <guschmue@microsoft.com>
Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com>
### Description
Added FusedConv and FusedConvTranspose
### Motivation and Context
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Improve performance
Supported type: float. int32_t, uint32_t, bool.
Case where_broadcast.jsonc is not enabled due to
https://github.com/microsoft/onnxruntime/issues/17405.
### Description
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### Motivation and Context
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---------
Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com>
### Description
Two contrib kernels that supposed to speed-up StableDiffusion according
to this doc
https://github.com/microsoft/onnxruntime/blob/main/onnxruntime/python/tools/transformers/models/stable_diffusion/README.md
However, there is no noticable effect in speed or memory consumption. So
i guess the only way to make it faster is to implement
MultiHeadAttention but i'm not capable of doing that right now. So i'll
focus on existing PRs and finding the JSEP kernel that produces
incorrect results. It should be one of the old ones (i suspect Conv or
ConvTranspose), as SD was not generating images correctly on webgpu
since i started working on it. I hoped someone else would fix that by
the time i finish with kernels/optimizations 😅
---------
Co-authored-by: Guenther Schmuelling <guschmue@microsoft.com>
Co-authored-by: Yulong Wang <7679871+fs-eire@users.noreply.github.com>
The patch also introduces the method which copies
data from GPU to CPU synchronously.
### Description
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### Motivation and Context
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### Description
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### Motivation and Context
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### Description
Added Einsum operator support to JSEP.
### Motivation and Context
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### Motivation and Context
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### Description
This PR adds kernel implementation for operator "Not" and "Equal". Also
removed download cache in gpu data manager.
**Why removing download cache**
The following test case failed. ("Or" is on CPU, "Greater" and "Equal"
are on JSEP)

after debugging, I found that both "Equal" and "Greater" are using the
same output GPU Data ID. This is because when ORT executes the graph, it
first run "Equal", allowing its shader to write into GPU Data ID 2; then
a Gpu2Cpu copy for it is issued (because currently "Or" is on CPU EP);
at this point, ORT thinks GPU Data ID=2 is free to use; so it reuse it
as output for "Greater". This means there is no allocation for output of
"Greater" kernel, and both kernel writes to GPU Data ID=2.
For gpu data manager, there will be 2 downloads from the same GPU
buffer. Previously I think this is a waste of resource so I cached the
data. But now it shoes that we need to perform 2 downloads because the
GPU data is already different. The download data cache should be
removed.
### Motivation and Context
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### Description
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### Motivation and Context
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### Description
Add SkipLayerNormalization operator to JSEP.
### Motivation and Context
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### Description
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### Motivation and Context
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### Description
This PR introduces the new incides helper.
IndicesHelper is a helper class for generating WGSL code for
manipulating indices and data for a shader's input or output.
This class is designed to offer a unified way to generate WGSL code for
manipulating indices and data for a shader's input or output. The
following is a list of terminologies used in this class:
- `offset`: a uint32 value representing the offset of an element in the
data buffer.
- `indices`: an abstraction of a multi-dimensional array's indices
representing the data's index on each dimension.
- `value`: a value of a data element.
Users are expected to create an instance of this class for each shader's
input or output, and use the instance to generate WGSL code for
manipulating indices and data. The following 2 exported functions are
for users to call to create an instance of an indices helper:
- `inputVariable()`: create an indices helper instance for an input.
- `outputVariable()`: create an indices helper instance for an output.
An indices helper instance contains helper functions for the following
operations:
- access readonly basic information, including: `name`(the name of the
input or output), `usage`(whether it's an input or an output) and
`shape`(the passed in shape).
- `type`: access readonly type information, including: `indices`(the
type of indices), `value`(the type of value at runtime), `storage`(the
type of value at storage) and `tensor`(the tensor type as represented in
TensorView).
- generate WGSL code for getting indices from offset. Use
`offsetToIndices()` for WGSL code snippet to calculate incides from
offset, and use `indicesToOffset()` for WGSL code snippet to calculate
offset from indices.
- to manipulate an instance of indices, use `setIndices()` and
`getIndices()` to set and get the indices on an indices variable.
- to manipulate data, use `set()`/`get()` to access data at the given
indices from parameter list, use `setByIndices()`/`getByIndices()` to
access data at the given indices from an indices variable, and use
`setByOffset()`/`getByOffset()` to access data at the given offset.
- `impl`: get WGSL code of function implementation for the util
functions mentioned above.
This change applies the usage of new IndicesHelper through the code, but
not necessary for all code.
### Description
Added two kernels for Layer and Instance norm
Also added maximum limits for `maxBufferSize` when requesting GPU device
as by default it's limited to 256mb and it fails allocating 600mb buffer
while running fp32 StableDiffusion weights.
### Motivation and Context
These two are used in StableDiffusion and many other networks
### Description
Added Gather op that works with both i32 and i64 indices, assuming that
values fall into i32 limit. The assumption is safe because it's not
possible to allocate more than 2gb buffer for inputs.
It treats all data from input tensor as u32, copying 1 or 2 elements for
i64, u64 and double.
---------
Co-authored-by: Guenther Schmuelling <guschmue@microsoft.com>
argmax and argmin are similar to reduce. Eventually we need to add
optimized flavors of the shader.
softmax is optimized but only works on the last axis for now which
should be the common use case.
todo: enable more ut for argmax/argmin
### Description
Implemented Resize operator support in JSEP
### Motivation and Context
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### Description
Added Gelu operator to JSEP
### Motivation and Context
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### Description
Added Slice operator support to JSEP.
### Motivation and Context
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### Description
Added Expand operator support.
### Motivation and Context
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### Description
Add ConvTranspose support for WebGPU
### Motivation and Context
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### Description
Added WeGPU/JSEP Split operator support.
### Motivation and Context
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