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Accelerating Database Workloads by Software-Hardware-System Co-design

机译:通过软件 - 硬件系统共同设计加速数据库工作负载

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The key objective of this tutorial is to provide a broad, yet an in-depth survey of the emerging field of co-designing software, hardware, and systems components for accelerating enterprise data management workloads. The overall goal of this tutorial is two-fold. First, we provide a concise system-level characterization of different types of data management technologies, namely, the relational and NoSQL databases and data stream management systems from the perspective of analytical workloads. Using the characterization, we discuss opportunities for accelerating key data management workloads using software and hardware approaches. Second, we dive deeper into the hardware acceleration opportunities using Graphics Processing Units (GPUs) and Field-Programmable Gate Arrays (FPGAs) for the query execution pipeline. Furthermore, we explore other hardware acceleration mechanisms such as single-instruction multiple-data (SIMD) that enables short-vector data parallelism.
机译:本教程的关键目标是提供广泛的,但对共同设计软件,硬件和系统组件的新兴领域进行了广泛的调查,以加速企业数据管理工作负载。本教程的整体目标是两倍。首先,我们从分析工作负载的角度提供不同类型的数据管理技术,即关系和NoSQL数据库和数据流管理系统的简洁系统级别。使用表征,我们讨论使用软件和硬件方法加速关键数据管理工作负载的机会。其次,我们深入了解查询执行管道的图形处理单元(GPU)和现场可编程门阵列(FPGA)的硬件加速机会。此外,我们探索其他硬件加速机制,例如单指令多数据(SIMD),其能够实现短向量数据并行性。

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