UniSparse: An Intermediate Language for General Sparse Format Customization

ArXiv Pub Date : 2024-03-09 DOI:10.1145/3649816
Jie Liu, Zhongyuan Zhao, Zijian Ding, Benjamin Brock, Hongbo Rong, Zhiru Zhang
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Abstract

The ongoing trend of hardware specialization has led to a growing use of custom data formats when processing sparse workloads, which are typically memory-bound. These formats facilitate optimized software/hardware implementations by utilizing sparsity pattern- or target-aware data structures and layouts to enhance memory access latency and bandwidth utilization. However, existing sparse tensor programming models and compilers offer little or no support for productively customizing the sparse formats. Additionally, because these frameworks represent formats using a limited set of per-dimension attributes, they lack the flexibility to accommodate numerous new variations of custom sparse data structures and layouts. To overcome this deficiency, we propose UniSparse, an intermediate language that provides a unified abstraction for representing and customizing sparse formats. Unlike the existing attribute-based frameworks, UniSparse decouples the logical representation of the sparse tensor (i.e., the data structure) from its low-level memory layout, enabling the customization of both. As a result, a rich set of format customizations can be succinctly expressed in a small set of well-defined query, mutation, and layout primitives. We also develop a compiler leveraging the MLIR infrastructure, which supports adaptive customization of formats, and automatic code generation of format conversion and compute operations for heterogeneous architectures. We demonstrate the efficacy of our approach through experiments running commonly-used sparse linear algebra operations with specialized formats on multiple different hardware targets, including an Intel CPU, an NVIDIA GPU, an AMD Xilinx FPGA, and a simulated processing-in-memory (PIM) device.
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UniSparse:通用稀疏格式定制的中间语言
随着硬件专业化趋势的不断发展,在处理稀疏工作负载时,越来越多地使用定制数据格式,而这些工作负载通常是内存绑定的。这些格式通过利用稀疏模式或目标感知数据结构和布局来提高内存访问延迟和带宽利用率,从而促进优化软件/硬件实现。然而,现有的稀疏张量编程模型和编译器很少或根本不支持对稀疏格式进行有效定制。此外,由于这些框架使用有限的每维度属性集来表示格式,因此缺乏灵活性,无法适应自定义稀疏数据结构和布局的大量新变化。为了克服这一不足,我们提出了 UniSparse,一种为表示和定制稀疏格式提供统一抽象的中间语言。与现有的基于属性的框架不同,UniSparse 将稀疏张量的逻辑表示(即数据结构)与其底层内存布局分离开来,从而实现了两者的定制。因此,丰富的格式定制可以通过一小套定义明确的查询、突变和布局原语简洁地表达出来。我们还利用 MLIR 基础设施开发了一个编译器,它支持格式的自适应定制,以及异构架构的格式转换和计算操作的自动代码生成。我们通过在多个不同的硬件目标(包括英特尔 CPU、英伟达 GPU、AMD Xilinx FPGA 和模拟内存处理 (PIM) 设备)上运行具有专用格式的常用稀疏线性代数操作的实验,证明了我们的方法的功效。
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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