归纳逻辑程序的可伸缩加速

A. Fidjeland, W. Luk, S. Muggleton
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引用次数: 15

摘要

归纳逻辑编程系统是一种新兴的、强大的机器学习范式,它可以利用背景知识来产生用逻辑表达的理论。它们已经成功地应用于从蛋白质结构预测到卫星故障诊断等广泛的问题领域。然而,它们的执行可能需要大量的计算。我们引入了一个可扩展的基于fpga的架构来执行归纳逻辑程序,这样执行速度就会随着处理器数量的增加而线性增加。该架构包含来自Warren抽象机的多个处理器,该处理器使用指令分组和推测分配等技术对硬件实现进行了优化。使用包含12000个化合物事实的诱变数据集证明了该架构的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scalable acceleration of inductive logic programs
Inductive logic programming systems are an emerging and powerful paradigm for machine learning which can make use of background knowledge to produce theories expressed in logic. They have been applied successfully to a wide range of problem domains, from protein structure prediction to satellite fault diagnosis. However, their execution can be computationally demanding. We introduce a scalable FPGA-based architecture for executing inductive logic programs, such that the execution speed largely increases linearly with respect to the number of processors. The architecture contains multiple processors derived from Warren's Abstract Machine, which has been optimised for hardware implementation using techniques such as instruction grouping and speculative assignment. The effectiveness of the architecture is demonstrated using the mutagenesis data set containing 12000 facts of chemical compounds.
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