Due to their massive computational power, graphics processing units (GPUs) have become a popular platform for executing general purpose parallel applications. GPU programming models allow the programmer to create thousands of threads, each executing the same computing kernel. GPUs exploit this parallelism in two ways. First, threads are grouped into fixed-size SIMD batches known as warps, and second, many such warps are concurrently executed on a single GPU core. Despite these techniques, the computational resources on GPU cores are still underutilized, resulting in performance far short of what could be delivered. Two reasons for this are conditional branch instructions and stalls due to long latency operations.To improve GPU performance, computational resources must be more effectively utilized. To accomplish this, we propose two independent ideas: the large warp microarchitecture and two-level warp scheduling. We show that when combined, our mechanisms improve performance by 19.1% over traditional GPU cores for a wide variety of general purpose parallel applications that heretofore have not been able to fully exploit the available resources of the GPU chip.
HPS (High Performance Substrate) is a new microarchitecture targeted for implementing very high performance computing engines. Our model of execution is a restriction on fine granularity data flow. This paper introduces the model, provides the rationale for its selection, and describes the data path and flow of instructions through the microengine.
Recent studies have concluded that little parallelism Q 1991 ACM 0-89791 -394-9/91 /0005/0276$1 .50 276 2 The RDF Model of Execution To exploit whatever parallelism exists in the instruction stream, one needs an execution model devoid of artifacts that limit the utilization of that parallelism. The abstract restricted data flow (RDF) paradigm is such a model. It is characterized by three parameters: window size, issue rate, and instruction class latencies.
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