LGMLMar 6, 2018

Learning Memory Access Patterns

arXiv:1803.02329v1233 citations
Originality Incremental advance
AI Analysis

This work addresses memory performance issues in computer architecture, representing an incremental step towards practical neural-network based prefetching.

The paper tackles the von Neumann bottleneck of memory performance by using deep learning to learn memory access patterns for prefetching, showing that neural networks achieve superior precision and recall on challenging benchmark datasets.

The explosion in workload complexity and the recent slow-down in Moore's law scaling call for new approaches towards efficient computing. Researchers are now beginning to use recent advances in machine learning in software optimizations, augmenting or replacing traditional heuristics and data structures. However, the space of machine learning for computer hardware architecture is only lightly explored. In this paper, we demonstrate the potential of deep learning to address the von Neumann bottleneck of memory performance. We focus on the critical problem of learning memory access patterns, with the goal of constructing accurate and efficient memory prefetchers. We relate contemporary prefetching strategies to n-gram models in natural language processing, and show how recurrent neural networks can serve as a drop-in replacement. On a suite of challenging benchmark datasets, we find that neural networks consistently demonstrate superior performance in terms of precision and recall. This work represents the first step towards practical neural-network based prefetching, and opens a wide range of exciting directions for machine learning in computer architecture research.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes