Graph IRs for Impure Higher-Order Languages: Making Aggressive Optimizations Affordable with Precise Effect Dependencies

IF 2.2 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING
Oliver Bračevac, Guannan Wei, Songlin Jia, Supun Abeysinghe, Yuxuan Jiang, Yuyan Bao, Tiark Rompf
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引用次数: 3

Abstract

Graph-based intermediate representations (IRs) are widely used for powerful compiler optimizations, either interprocedurally in pure functional languages, or intraprocedurally in imperative languages. Yet so far, no suitable graph IR exists for aggressive global optimizations in languages with both effects and higher-order functions: aliasing and indirect control transfers make it difficult to maintain sufficiently granular dependency information for optimizations to be effective. To close this long-standing gap, we propose a novel typed graph IR combining a notion of reachability types with an expressive effect system to compute precise and granular effect dependencies at an affordable cost while supporting local reasoning and separate compilation. Our high-level graph IR imposes lexical structure to represent structured control flow and nesting, enabling aggressive and yet inexpensive code motion and other optimizations for impure higher-order programs. We formalize the new graph IR based on a λ-calculus with a reachability type-and-effect system along with a specification of various optimizations. We present performance case studies for tensor loop fusion, CUDA kernel fusion, symbolic execution of LLVM IR, and SQL query compilation in the Scala LMS compiler framework using the new graph IR. We observe significant speedups of up to 21 x .
非纯高阶语言的图ir:使用精确的效果依赖来实现积极的优化
基于图的中间表示(ir)广泛用于强大的编译器优化,无论是纯函数式语言的过程间优化,还是命令式语言的过程内优化。然而,到目前为止,还没有合适的图形IR用于在具有效果和高阶函数的语言中进行积极的全局优化:别名和间接控制传输使得难以维护足够细粒度的依赖信息以使优化有效。为了弥补这一长期存在的差距,我们提出了一种新的类型图IR,将可达性类型的概念与表达效果系统相结合,以可承受的成本计算精确和颗粒效果依赖关系,同时支持局部推理和单独编译。我们的高级图IR施加了词法结构来表示结构化的控制流和嵌套,从而为不纯的高阶程序提供了积极而廉价的代码移动和其他优化。我们基于λ-演算形式化了新的图IR,并给出了可达性类型和效果系统以及各种优化规范。我们介绍了张量循环融合、CUDA内核融合、LLVM IR的符号执行以及Scala LMS编译器框架中使用新图IR的SQL查询编译的性能案例研究。我们观察到高达21倍的显著加速。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Proceedings of the ACM on Programming Languages
Proceedings of the ACM on Programming Languages Engineering-Safety, Risk, Reliability and Quality
CiteScore
5.20
自引率
22.20%
发文量
192
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