Modern GPUs support special protocols to exchange data directly across the PCI Express bus. While these protocols could be used to reduce GPU data transmission times, basically by avoiding staging to host memory, they require specific hardware features which are not available on current generation network adapters. In this paper we describe the architectural modifications required to implement peer-topeer access to NVIDIA Fermi-and Kepler-class GPUs on an FPGA-based cluster interconnect.Besides, the current software implementation, which integrates this feature by minimally extending the RDMA programming model, is discussed, as well as some issues raised while employing it in a higher level API like MPI.Finally, the current limits of the technique are studied by analyzing the performance improvements on low-level benchmarks and on two GPU-accelerated applications, showing when and how they seem to benefit from the GPU peer-to-peer method.
The ExaNeSt project started on December 2015 and is funded by EU H2020 research framework (call H2020-FETHPC-2014, n. 671553) to study the adoption of low-cost, Linux-based power-efficient 64-bit ARM processors clusters for Exascale-class systems. The ExaNeSt consortium pools partners with industrial and academic research expertise in storage, interconnects and applications that share a vision of an European Exascale-class supercomputer. Their goal is designing and implementing a physical rack prototype together with its cooling system, the storage non-volatile memory (NVM) architecture and a low-latency interconnect able to test different options for interconnection and storage. Furthermore, the consortium is to provide real HPC applications to validate the system. Herein we provide a status report of the project initial developments.
NaNet is an FPGA-based PCIe X8 Gen2 NIC supporting 1/10 GbE links and the custom 34 Gbps APElink channel. The design has GPUDirect RDMA capabilities and features a network stack protocol offloading module, making it suitable for building low-latency, real-time GPU-based computing systems. We provide a detailed description of the NaNet hardware modular architecture. Benchmarks for latency and bandwidth for GbE and APElink channels are presented, followed by a performance analysis on the case study of the GPU-based low level trigger for the RICH detector in the NA62 CERN experiment, using either the NaNet GbE and APElink channels. Finally, we give an outline of project future activities.
We developed a custom FPGA-based Network Interface Controller named APEnet+ aimed at GPU accelerated clusters for High Performance Computing. The card exploits peer-to-peer capabilities (GPU-Direct RDMA) for latest NVIDIA GPGPU devices and the RDMA paradigm to perform fast direct communication between computing nodes, offloading the host CPU from network tasks execution. In this work we focus on the implementation of a Virtual to Physical address translation mechanism, using the FPGA embedded soft-processor. Address management is the most demanding task -we estimated up to 70% of the µC load -for the NIC receiving side, resulting being the main culprit for data bottleneck. To improve the performance of this task and hence improve data transfer over the network, we added a specialized hardware logic block acting as a Translation Lookaside Buffer. This block makes use of a peculiar Content Address Memory implementation designed for scalability and speed. We present detailed measurements to demonstrate the benefits coming from the introduction of such custom logic: a substantial address translation latency reduction (from a measured value of 1.9 µs to 124 ns) and a performance enhancement of both host-bound and GPU-bound data transfers (up to ∼ 60% of bandwidth increase) in given message size ranges.
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