BenchFriend

Abstract
Graphics processing units (GPUs) have become an important platform for general-purpose computing, thanks to their high parallel throughput and high memory bandwidth. GPUs present significantly different architectures from CPUs and require specific mappings and optimizations to achieve high performance. This makes GPU workloads demonstrate application characteristics different from those of CPU workloads. It is critical for researchers to understand the first-order metrics that most influence GPU performance and scalability. Furthermore, methodologies and associated tools are needed to analyze and predict the performance of GPU applications and help guide users’ purchasing decisions. In this work, we study the approach of predicting the performance of GPU applications by correlating them to existing workloads. One tenet of benchmark design, also a motivation of this paper, is that users should be given the capability to leverage standard workloads to infer the performance of applications of their interest. We first identify a set of important GPU application characteristics and then use them to predict performance of an arbitrary application by determining its most similar proxy benchmarks. We demonstrate the prediction methodology and conduct predictions with benchmarks from different suites to achieve better workload coverage. The experimental results show that we are able to achieve satisfactory performance predictions, although errors are higher for outlier applications. Finally, we discuss several considerations for systematically constructing future benchmark suites.

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