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Performance Modeling in CUDA Streams - A Means for High-Throughput Data Processing

机译:CUDA流中的性能建模-高通量数据处理的一种手段

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摘要

Push-based database management system (DBMS) is a new type of data processing software that streams large volume of data to concurrent query operators. The high data rate of such systems requires large computing power provided by the query engine. In our previous work, we built a push-based DBMS named G-SDMS to harness the unrivaled computational capabilities of modern GPUs. A major design goal of G-SDMS is to support concurrent processing of heterogenous query processing operations and enable resource allocation among such operations. Understanding the performance of operations as a result of resource consumption is thus a premise in the design of G-SDMS. With NVIDIA’s CUDA framework as the system implementation platform, we present our recent work on performance modeling of CUDA kernels running concurrently under a runtime mechanism named CUDA stream. Specifically, we explore the connection between performance and resource occupancy of compute-bound kernels and develop a model that can predict the performance of such kernels. Furthermore, we provide an in-depth anatomy of the CUDA stream mechanism and summarize the main kernel scheduling disciplines in it. Our models and derived scheduling disciplines are verified by extensive experiments using synthetic and real-world CUDA kernels.
机译:基于推的数据库管理系统(DBMS)是一种新型的数据处理软件,可将大量数据流传输到并发查询运算符。这种系统的高数据速率需要查询引擎提供大计算能力。在之前的工作中,我们构建了一个名为G-SDMS的基于推送的DBMS,以利用现代GPU无与伦比的计算能力。 G-SDMS的主要设计目标是支持异构查询处理操作的并发处理,并在这些操作之间实现资源分配。因此,了解资源消耗导致的操作性能是G-SDMS设计的前提。以NVIDIA的CUDA框架作为系统实现平台,我们展示了我们在名为CUDA流的运行时机制下同时运行的CUDA内核性能建模的最新工作。具体来说,我们探索了计算绑定内核的性能和资源占用之间的联系,并开发了可以预测此类内核性能的模型。此外,我们提供了CUDA流机制的深入剖析,并总结了其中的主要内核调度学科。我们的模型和派生的调度规则已通过使用合成的和实际的CUDA内核的大量实验得到了验证。

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