• 设为首页
  • 点击收藏
  • 手机版
    手机扫一扫访问
    迪恩网络手机版
  • 关注官方公众号
    微信扫一扫关注
    迪恩网络公众号

JuliaDiff/ChainRules.jl: forward and reverse mode automatic differentiation prim ...

原作者: [db:作者] 来自: 网络 收藏 邀请

开源软件名称:

JuliaDiff/ChainRules.jl

开源软件地址:

https://github.com/JuliaDiff/ChainRules.jl

开源编程语言:

Julia 100.0%

开源软件介绍:

ChainRules

CI Travis Coveralls PkgEval Code Style: Blue ColPrac: Contributor's Guide on Collaborative Practices for Community Packages DOI

Docs:

The ChainRules package provides a variety of common utilities that can be used by downstream automatic differentiation (AD) tools to define and execute forward-, reverse-, and mixed-mode primitives.

The core logic of ChainRules is implemented in ChainRulesCore.jl. To add ChainRules support to your package, by defining new rrules or frules, you only need to depend on the very light-weight package ChainRulesCore.jl. This repository contains ChainRules.jl, which is what people actually use directly. ChainRules reexports all the ChainRulesCore functionality, and has all the rules for the Julia standard library.

Here are some of the core features of the package:

  • Mixed-mode composability without being coupled to a specific AD implementation.
  • Extensible rules: package authors can add rules (and thus AD support) to the functions in their packages, without needing to make a PR to ChainRules.jl .
  • Control-inverted design: rule authors can fully specify derivatives in a concise manner that supports computational efficiencies, so we will only compute as much as the user requests.
  • Propagation semantics built-in, with default implementations that allow rule authors to easily opt-in to common optimizations (fusion, increment elision, memoization, etc.).



鲜花

握手

雷人

路过

鸡蛋
该文章已有0人参与评论

请发表评论

全部评论

专题导读
热门推荐
阅读排行榜

扫描微信二维码

查看手机版网站

随时了解更新最新资讯

139-2527-9053

在线客服(服务时间 9:00~18:00)

在线QQ客服
地址:深圳市南山区西丽大学城创智工业园
电邮:jeky_zhao#qq.com
移动电话:139-2527-9053

Powered by 互联科技 X3.4© 2001-2213 极客世界.|Sitemap