-
Notifications
You must be signed in to change notification settings - Fork 3k
New issue
Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.
By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.
Already on GitHub? Sign in to your account
[js/webgpu] Support f16 uniform #19098
Conversation
/azp run ONNX Runtime Web CI Pipeline |
/azp run Linux CPU CI Pipeline,Linux CPU Minimal Build E2E CI Pipeline,Linux GPU CI Pipeline,Linux GPU TensorRT CI Pipeline,Linux OpenVINO CI Pipeline,Linux QNN CI Pipeline,MacOS CI Pipeline,Windows ARM64 QNN CI Pipeline,Windows CPU CI Pipeline |
Azure Pipelines successfully started running 1 pipeline(s). |
/azp run Windows GPU CI Pipeline,Windows GPU TensorRT CI Pipeline,onnxruntime-binary-size-checks-ci-pipeline,orttraining-linux-ci-pipeline,orttraining-linux-gpu-ci-pipeline,orttraining-ortmodule-distributed,Windows x64 QNN CI Pipeline |
Azure Pipelines could not run because the pipeline triggers exclude this branch/path. |
Azure Pipelines successfully started running 1 pipeline(s). |
/azp run ONNX Runtime Web CI Pipeline |
/azp run Linux CPU CI Pipeline,Linux CPU Minimal Build E2E CI Pipeline,Linux GPU CI Pipeline,Linux GPU TensorRT CI Pipeline,Linux OpenVINO CI Pipeline,Linux QNN CI Pipeline,MacOS CI Pipeline,Windows ARM64 QNN CI Pipeline,Windows CPU CI Pipeline |
/azp run Windows GPU CI Pipeline,Windows GPU TensorRT CI Pipeline,onnxruntime-binary-size-checks-ci-pipeline,orttraining-linux-ci-pipeline,orttraining-linux-gpu-ci-pipeline,orttraining-ortmodule-distributed,Windows x64 QNN CI Pipeline |
Azure Pipelines successfully started running 1 pipeline(s). |
Azure Pipelines could not run because the pipeline triggers exclude this branch/path. |
Azure Pipelines successfully started running 1 pipeline(s). |
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Sorry for the late response. Two more comments to supplement. You can do it in follow-up PRs.
@@ -461,6 +474,9 @@ export class WebGpuBackend { | |||
new Int32Array(arrayBuffer, offset, data.length).set(data); | |||
} else if (v.type === 'uint32') { | |||
new Uint32Array(arrayBuffer, offset, data.length).set(data); | |||
} else if (v.type === 'float16') { | |||
// TODO: use Float16Array. | |||
new Uint16Array(arrayBuffer, offset, data.length).set(data); |
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Do we need to do some preprocessing to pass cpu data to Uint16Array if the cpu data is treated as float32? For example, the pad2~pad10, the constant_value
is float not T
as input.
cc @jzm-intel
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Sorry, my example is not correct for this case. If constant_value
is float, the code will directly go to the float32
path not float16
case. But the concern is still there.
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
Yes, user should make sure the "data" is stored float16 bits, for example: If "data" is 1.0, then the corresponding float16 bits is 0x3c00. I am trying to add some warning msg to inform user that this should be unit test only: https://github.com/microsoft/onnxruntime/pull/19307/files#diff-006fc84d3997f96a29b8033bd2075d6a0a9509211bd5812a6b934fc74fedfd9dR520
@@ -24,7 +24,7 @@ ONNX_OPERATOR_VERSIONED_KERNEL_EX( | |||
12, | |||
kJsExecutionProvider, | |||
(*KernelDefBuilder::Create()) | |||
.TypeConstraint("T", DataTypeImpl::GetTensorType<float>()) | |||
.TypeConstraint("T", JsepSupportedFloatTypes()) |
There was a problem hiding this comment.
Choose a reason for hiding this comment
The reason will be displayed to describe this comment to others. Learn more.
For version <=10, we can use JsepSupportedFloatTypes()
. After versions (>10), use JsepSupportedDataTypes()
?
### Description <!-- Describe your changes. --> ### Motivation and Context <!-- - Why is this change required? What problem does it solve? - If it fixes an open issue, please link to the issue here. -->
### Description This PR is a preview of cherry-picks for ort-web to `rel-1.17.3` based on `rel-1.17.2`. <details> <summary>Changes of ort-web to cherry-pick</summary> The following commits are from main branch. `o` stands for pick, and `x` stands for skip. ``` o 2e0a388 [js/webgpu] Add HardSigmoid support (#19215) o d226e40 [js/webgpu] set query type in onRunStart (#19202) o 61610ff [js/webgpu] Add FusedConv clip test case (#18900) o a33b5bd [JS/WebGPU] Added Uniforms to SkipLayerNorm. (#18788) o 591f90c [js/webgpu] Fix issue of timestamp query (#19258) o 7252c6e [WebNN EP] Support WebNN async API with Asyncify (#19145) o 5b06505 [js/webgpu] Fix Tanh explosion (#19201) o 656ca66 [js/webgpu] Support uniforms for conv, conv transpose, conv grouped (#18753) o a3f0e24 [js/webgpu] Support f16 uniform (#19098) o 9e69606 fix f16 for attention, enable slice and flatten for more types (#19262) o 624b4e2 [js/webgpu] Remove enableShapesUniforms (#19279) o 90883a3 [js/webgpu] Add hardSigmoid activation for fusedConv (#19233) o 85cef0a [js/webgpu] Support capture and replay for jsep (#18989) o d73131c [js/webgpu] Use DataType as uniform cpu type (#19281) o dd1f6cc [js/webgpu] resolve codescan alert (#19343) o 3a2ab19 [js/webgpu] Refactor createTensorShapeVariables (#18883) o efc17e7 [js/webgpu] Fix the undefined push error (#19366) x 50806a7 [js/web] support external data in npm test (#19377) o ccbe264 [js/webgpu] Add LeakyRelu activation for fusedConv (#19369) o 5ff27ef [js/webgpu] support customop FastGelu (#19392) x 03be65e [js/web] fix types exports in package.json (#19458) o 06269a3 [js/webgpu] allow uint8 tensors for webgpu (#19545) o dfeda90 [JS/WebGPU] Add MatMulNBits (#19446) o 1b48054 [js/webgpu] Create Split indices helpers by rank, not by shape (#19554) o 3fe2c13 [js] small fix to workaround formatter (#19400) x 70567a4 [js/web] use ApiTensor insteadof onnxjs Tensor in TensorResultValidator (#19358) o 6e04e36 [js/common] upgrade tsc in common from 4.9.5 to 5.2.2 (#19317) o 58f4921 [js] changes to allow Float16Array if any polyfill is available (#19305) o 57d6819 [js/web] Fix fused-conv is not included in npm test (#19581) o ebd220b Misspelling in README.md (#19433) o 38c3432 Bump ip from 1.1.8 to 1.1.9 in /js/react_native (#19582) o fe82fcc [js/webgpu] Fix Conv2DTransposeMatMul f16 compilation failure (#19596) o 76a2a48 Bump ip from 1.1.8 to 1.1.9 in /js/react_native/e2e (#19583) o 29b1106 [node] Switch to setImmediate to avoid starving the Node.js event loop (#19610) o ae3d73c [JS/WebGPU] Fix Split and Where to handle corner cases. (#19613) o aec2389 [js/webgpu] allows a ProgramInfo's RunData to use zero sized output (#19614) o bb43a0f [js/webgpu] minor fixes to make tinyllama work (#19564) o 0edb035 [js/web] fix suite test list for zero sized tensor (#19638) o 3cb81cd [js/common] move 'env.wasm.trace' to 'env.trace' (#19617) o e30618d [js/webgpu] use Headless for webgpu test by default (#19702) o f06164e [js/web] transfer input buffer back to caller thread (#19677) x a788514 [js/web] dump debug logs for karma for diagnose purpose (#19785) o 24b72d2 [JS/WebGPU] Preserve zero size input tensor dims. (#19737) o 4538d31 [js/webgpu] expose a few properties in WebGPU API (#19857) o 53de2d8 [js/webgpu] Enable GroupedConvVectorize path (#19791) o ed250b8 [JS/WebGPU] Optimize MatMulNBits (#19852) x e771a76 [js/test] align web test runner flags with ort.env (#19790) o 79e50ae [js/web] rewrite backend resolve to allow multiple EPs (#19735) o acb0df2 Fix #19931 broken Get Started link of "ONNX Runtime JavaScript API" page (#19932) o b29849a [js/common] fix typedoc warnings (#19933) o afdab62 Bump follow-redirects from 1.15.4 to 1.15.6 in /js/web (#19949) o 28ad6c3 Bump follow-redirects from 1.15.4 to 1.15.6 in /js/node (#19951) o 7e0d424 accumulate in fp32 for Reduce* (#19868) o 4c6a6a3 [js/webgpu] Fix NAN caused by un-initialized buffer in instance-norm (#19387) o 01c7aaf [js/webgpu] allow setting env.webgpu.adapter (#19940) o c45cff6 [js/webgpu] fix maxpool / fp16 (#19981) ``` </details> <details> <summary>Cherry-pick commandlines</summary> ```sh git cherry-pick 2e0a388 git cherry-pick d226e40 git cherry-pick 61610ff git cherry-pick a33b5bd git cherry-pick 591f90c git cherry-pick 7252c6e git cherry-pick 5b06505 git cherry-pick 656ca66 git cherry-pick a3f0e24 git cherry-pick 9e69606 git cherry-pick 624b4e2 git cherry-pick 90883a3 git cherry-pick 85cef0a #<<<<< Note: conflicts git cherry-pick d73131c git cherry-pick dd1f6cc git cherry-pick 3a2ab19 git cherry-pick efc17e7 git cherry-pick ccbe264 git cherry-pick 5ff27ef git cherry-pick 06269a3 git cherry-pick dfeda90 git cherry-pick 1b48054 git cherry-pick 3fe2c13 git cherry-pick 6e04e36 git cherry-pick 58f4921 git cherry-pick 57d6819 git cherry-pick ebd220b git cherry-pick 38c3432 git cherry-pick fe82fcc git cherry-pick 76a2a48 git cherry-pick 29b1106 git cherry-pick ae3d73c git cherry-pick aec2389 git cherry-pick bb43a0f git cherry-pick 0edb035 git cherry-pick 3cb81cd git cherry-pick e30618d git cherry-pick f06164e git cherry-pick 24b72d2 git cherry-pick 4538d31 git cherry-pick 53de2d8 git cherry-pick ed250b8 git cherry-pick 79e50ae git cherry-pick acb0df2 git cherry-pick b29849a git cherry-pick afdab62 git cherry-pick 28ad6c3 git cherry-pick 7e0d424 git cherry-pick 4c6a6a3 git cherry-pick 01c7aaf git cherry-pick c45cff6 ``` </details> <details> <summary>Cherry-pick conflicts</summary> - 85cef0a #18989 this change is for enabling graph capture feature for JSEP, and it is done after ROCM EP enabled graph capture feature. However, the ROCM EP graph capture feature is not cherry-picked in rel-1.17.2. </details> --------- Signed-off-by: dependabot[bot] <[email protected]> Co-authored-by: Jiajia Qin <[email protected]> Co-authored-by: Xu Xing <[email protected]> Co-authored-by: satyajandhyala <[email protected]> Co-authored-by: Yang Gu <[email protected]> Co-authored-by: Wanming Lin <[email protected]> Co-authored-by: Jiajie Hu <[email protected]> Co-authored-by: Guenther Schmuelling <[email protected]> Co-authored-by: Matttttt <[email protected]> Co-authored-by: dependabot[bot] <49699333+dependabot[bot]@users.noreply.github.com> Co-authored-by: Segev Finer <[email protected]> Co-authored-by: Belem Zhang <[email protected]>
### Description <!-- Describe your changes. --> ### Motivation and Context <!-- - Why is this change required? What problem does it solve? - If it fixes an open issue, please link to the issue here. -->
Description
Motivation and Context