Out of memory SVD solver for big data

A. Haidar, K. Kabir, Diana Fayad, S. Tomov, J. Dongarra
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引用次数: 13

Abstract

Many applications — from data compression to numerical weather prediction and information retrieval — need to compute large dense singular value decompositions (SVD). When the problems are too large to fit into the computer's main memory, specialized out-of-core algorithms that use disk storage are required. A typical example is when trying to analyze a large data set through tools like MATLAB or Octave, but the data is just too large to be loaded. To overcome this, we designed a class of out-of-memory (OOM) algorithms to reduce, as well as overlap communication with computation. Of particular interest is OOM algorithms for matrices of size m × n, where m >> n or m << n, e.g., corresponding to cases of too many variables, or too many observations. To design OOM SVDs, we first study the communications cost for the SVD techniques as well as for the QR/LQ factorization followed by SVD. We present the theoretical analysis about the data movement cost and strategies to design OOM SVD algorithms. We show performance results for multicore architecture that illustrate our theoretical findings and match our performance models. Moreover, our experimental results show the feasibility and superiority of the OOM SVD.
内存不足的SVD解决大数据
从数据压缩到数值天气预报和信息检索,许多应用都需要计算大密度奇异值分解(SVD)。当问题太大而无法装入计算机的主存储器时,就需要使用磁盘存储的专用外核算法。一个典型的例子是,当试图通过MATLAB或Octave等工具分析大型数据集时,但是数据太大而无法加载。为了克服这个问题,我们设计了一类内存不足(OOM)算法来减少通信与计算的重叠。特别感兴趣的是大小为m × n的矩阵的OOM算法,其中m >> n或m << n,例如,对应于太多变量或太多观察值的情况。为了设计面向对象的SVD,我们首先研究了SVD技术的通信成本,以及SVD之后的QR/LQ分解的通信成本。对数据移动成本进行了理论分析,并提出了面向对象奇异值分解算法的设计策略。我们展示了多核架构的性能结果,说明了我们的理论发现并匹配了我们的性能模型。实验结果表明了该方法的可行性和优越性。
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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