Scalable and Efficient Intra- and Inter-node Interconnection Networks for Post-Exascale Supercomputers and Data centers
By: Joaquin Tarraga-Moreno , Daniel Barley , Francisco J. Andujar Munoz and more
Potential Business Impact:
Makes supercomputers faster by fixing data jams.
The rapid growth of data-intensive applications such as generative AI, scientific simulations, and large-scale analytics is driving modern supercomputers and data centers toward increasingly heterogeneous and tightly integrated architectures. These systems combine powerful CPUs and accelerators with emerging high-bandwidth memory and storage technologies to reduce data movement and improve computational efficiency. However, as the number of accelerators per node increases, communication bottlenecks emerge both within and between nodes, particularly when network resources are shared among heterogeneous components.
Similar Papers
Combined power management and congestion control in High-Speed Ethernet-based Networks for Supercomputers and Data Centers
Hardware Architecture
Makes supercomputers faster and use less power.
Compute Can't Handle the Truth: Why Communication Tax Prioritizes Memory and Interconnects in Modern AI Infrastructure
Distributed, Parallel, and Cluster Computing
Builds super-fast AI by connecting computer parts better.
The Future of Memory: Limits and Opportunities
Hardware Architecture
Makes computers faster by putting memory closer.