Resumen
Increased system size and a greater reliance on utilizing system parallelism to achieve computational needs, requires innovative system architectures to meet the simulation challenges. The SHARP technology is a step towards a data-centric architecture, where data is manipulated throughout the system. This paper introduces a new SHARP optimization, and studies aspects that impact application performance in a data-centric environment. The use of UD-Multicast to distribute aggregation results is introduced, reducing the latency of an eight-byte MPI Allreduce() across 128 nodes by 16%. Use of reduction trees that avoid the inter-socket bus further improves the eight-byte MPI Allreduce() latency across 128 nodes, with 28 processes per node, by 18%. The distribution of latency across processes in the communicator is studied, as is the capacity of the system to process concurrent aggregation operations.