首页> 外文会议>ACM/IEEE Annual International Symposium on Computer Architecture >Gorgon: Accelerating Machine Learning from Relational Data
【24h】

Gorgon: Accelerating Machine Learning from Relational Data

机译:Gorgon:从关系数据加速机器学习

获取原文

摘要

Accelerator deployment in data centers remains limited despite domain-specific architectures’ promise of higher performance. Rapidly-changing applications and high nre cost make deploying fixed-function accelerators at scale untenable. More flexible than dsas, fpgas are gaining traction but remain hampered by cumbersome programming models, long synthesis times, and slow clocks. Coarse-grained reconfigurable architectures (cgra) are a compelling alternative and offer efficiency while retaining programmability—by providing general-purpose hardware and communication patterns, a single cgra targets multiple application domains.One emerging application is in-database machine learning: a high-performance, low-friction interface for analytics on large databases. We co-locate database and machine learning processing in a unified reconfigurable data analytics accelerator, Gorgon, which flexibly shares resources between db and ml without compromising performance or incurring excessive overheads in either domain. We distill and integrate database parallel patterns into an existing ML-focused cgra, increasing area by less than 4% while outperforming a multicore software baseline by 1500X. We also explore the performance impact of unifying db and ml in a single accelerator, showing up to 4x speedup over split accelerators.
机译:尽管特定于域的体系结构有望实现更高的性能,但数据中心中的加速器部署仍然受到限制。快速变化的应用程序和高昂的成本使大规模部署固定功能加速器变得站不住脚。 fpgas比dsas更加灵活,正逐渐受到人们的青睐,但仍因笨拙的编程模型,较长的合成时间和较慢的时钟而受阻。粗粒度可重构体系结构(cgra)是一种引人注目的替代方案,可在保持可编程性的同时提供效率,通过提供通用的硬件和通信模式,单个cgra可针对多个应用程序域。一个新兴的应用程序是数据库内机器学习:高性能,低摩擦的界面,可用于大型数据库的分析。我们将数据库和机器学习处理并置在一个统一的可重新配置的数据分析加速器Gorgon中,该加速器可在db和ml之间灵活地共享资源,而不会影响性能或在任何一个域中引起过多的开销。我们将数据库并行模式提炼并集成到现有的以ML为重点的cgra中,将面积增加不到4%,同时比多核软件基线提高了1500倍。我们还探索了在单个加速器中统一db和ml的性能影响,显示出比拆分加速器高出4倍的加速。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号