Tencent / TNN

TNN: developed by Tencent Youtu Lab and Guangying Lab, a uniform deep learning inference framework for mobile、desktop and server. TNN is distinguished by several outstanding features, including its cross-platform capability, high performance, model compression and code pruning. Based on ncnn and Rapidnet, TNN further strengthens the support and performance optimization for mobile devices, and also draws on the advantages of good extensibility and high performance from existed open source efforts. TNN has been deployed in multiple Apps from Tencent, such as Mobile QQ, Weishi, Pitu, etc. Contributions are welcome to work in collaborative with us and make TNN a better framework.
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Bump onnx from 1.6 to 1.13.0 in /tools/onnx2tnn/onnx-converter/script #1871

Closed dependabot[bot] closed 1 year ago

dependabot[bot] commented 1 year ago

Bumps onnx from 1.6 to 1.13.0.

Release notes

Sourced from onnx's releases.

v1.13.0

ONNX v1.13.0 is now available with exciting new features! We would like to thank everyone who contributed to this release! Please visit onnx.ai to learn more about ONNX and associated projects.

New operators

Operator extensions

Function updates

Reference Python runtime

Reference Python runtime dependent on only Python and numpy has been added. #4483

Python 3.11 support

ONNX 1.13.0 supports Python 3.11. #4490

Apple Silicon support

Support for M1/M2 ARM processors has been added. #4642

More

ONNX 1.13.0 also comes with numerous:

  • bugfixes
  • infrastructure improvements
  • CI improvements
  • documentation updates
  • security updates

For full details see Logistics for ONNX Release 1.13.0.

Deprecation notice

  • TENSOR_TYPE_TO_STORAGE_TENSOR_TYPE has been deprecated #4270
  • ONNXIFI: ONNX Interface for Framework Integration has been deprecated #4431

Installation

You can upgrade to the latest release using pip install onnx --upgrade or build from source following the README instructions.

Contributors

Thanks to these individuals for their contributions in this release since last 1.12.0 release: @​AnandKri, @​cbourjau, @​jcwchen, @​gramalingam, @​garymm, @​GaetanLepage, @​ilya-lavrenov, @​jnovikov, @​JackBoosY, @​jbachurski, @​tjich, @​jantonguirao, @​justinchuby, @​natke, @​philass, @​prasanthpul, @​p-wysocki, @​SpaceIm, @​stephenneuendorffer,@​take-cheeze, @​sechkova, @​thiagocrepaldi, @​xadupre, @​mszhanyi, @​yuanyao-nv, @​andife, @​daquexian, @​kylesayrs, @​liqunfu, @​longlee0622, @​HSQ79815, @​williamberman, @​YanBC

... (truncated)

Changelog

Sourced from onnx's changelog.

Operator Changelog

This file is automatically generated from the def files via this script. Do not modify directly and instead edit operator definitions.

For an operator input/output's differentiability, it can be differentiable, non-differentiable, or undefined. If a variable's differentiability is not specified, that variable has undefined differentiability.

ai.onnx (default)

Version 1 of the default ONNX operator set

Abs-1

Absolute takes one input data (Tensor) and produces one output data (Tensor) where the absolute is, y = abs(x), is applied to the tensor elementwise.

Version

This version of the operator has been available since version 1 of the default ONNX operator set.

Attributes

Inputs

Outputs

Type Constraints

... (truncated)

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