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SoftJAX & SoftTorch: 有益な勾配情報を提供する自動微分ライブラリの強化

arXiv cs.LG / 2026/3/11

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要点

  • SoftJAXおよびSoftTorchは、しきい値処理や離散インデックス付けなど、従来はゼロまたは未定義の勾配を生成していたJAXおよびPyTorchの操作に対し、ソフトで微分可能な緩和表現を提供する新しいオープンソースライブラリです。
  • これらのライブラリは、要素ごとの関数、ブール値やインデックスのファジィ論理、最適輸送やペルムタヘドロン射影に基づくソートやランキングといった軸方向演算子、さらにはストレートスルー勾配推定のサポートなど、ハードプリミティブの代替となるドロップイン置換を提供します。
  • 様々なソフト緩和手法を統合し包括的なツールボックスとしてまとめることで、SoftJAXとSoftTorchは科学計算や機械学習における勾配ベースの最適化により有益な勾配をもたらします。
  • ベンチマークおよび実践的なケーススタディにより、これらのライブラリが実世界の微分可能プログラミング課題において有効かつ使いやすいことが示されています。
  • ソースコードは公開されており、JAXおよびPyTorchのフレームワークを利用する研究者や実務者にとってのアクセスの容易さと統合のしやすさを促進しています。

Computer Science > Machine Learning

arXiv:2603.08824 (cs)
[Submitted on 9 Mar 2026]

Title:SoftJAX & SoftTorch: Empowering Automatic Differentiation Libraries with Informative Gradients

View a PDF of the paper titled SoftJAX & SoftTorch: Empowering Automatic Differentiation Libraries with Informative Gradients, by Anselm Paulus and 5 other authors
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Abstract:Automatic differentiation (AD) frameworks such as JAX and PyTorch have enabled gradient-based optimization for a wide range of scientific fields. Yet, many "hard" primitives in these libraries such as thresholding, Boolean logic, discrete indexing, and sorting operations yield zero or undefined gradients that are not useful for optimization. While numerous "soft" relaxations have been proposed that provide informative gradients, the respective implementations are fragmented across projects, making them difficult to combine and compare. This work introduces SoftJAX and SoftTorch, open-source, feature-complete libraries for soft differentiable programming. These libraries provide a variety of soft functions as drop-in replacements for their hard JAX and PyTorch counterparts. This includes (i) elementwise operators such as clip or abs, (ii) utility methods for manipulating Booleans and indices via fuzzy logic, (iii) axiswise operators such as sort or rank -- based on optimal transport or permutahedron projections, and (iv) offer full support for straight-through gradient estimation. Overall, SoftJAX and SoftTorch make the toolbox of soft relaxations easily accessible to differentiable programming, as demonstrated through benchmarking and a practical case study. Code is available at this http URL and this http URL.
Subjects: Machine Learning (cs.LG)
Cite as: arXiv:2603.08824 [cs.LG]
  (or arXiv:2603.08824v1 [cs.LG] for this version)
  https://doi.org/10.48550/arXiv.2603.08824
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arXiv-issued DOI via DataCite

Submission history

From: Anselm Paulus [view email]
[v1] Mon, 9 Mar 2026 18:35:51 UTC (1,588 KB)
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