English

RPU -- A Reasoning Processing Unit

Hardware Architecture 2026-02-25 v2 Artificial Intelligence

Abstract

Large language model (LLM) inference performance is increasingly bottlenecked by the memory wall. While GPUs continue to scale raw compute throughput, they struggle to deliver scalable performance for memory bandwidth bound workloads. This challenge is amplified by emerging reasoning LLM applications, where long output sequences, low arithmetic intensity, and tight latency constraints demand significantly higher memory bandwidth. As a result, system utilization drops and energy per inference rises, highlighting the need for an optimized system architecture for scalable memory bandwidth. To address these challenges we present the Reasoning Processing Unit (RPU), a chiplet-based architecture designed to address the challenges of the modern memory wall. RPU introduces: (1) A Capacity-Optimized High-Bandwidth Memory (HBM-CO) that trades capacity for lower energy and cost; (2) a scalable chiplet architecture featuring a bandwidth-first power and area provisioning design; and (3) a decoupled microarchitecture that separates memory, compute, and communication pipelines to sustain high bandwidth utilization. Simulation results show that RPU performs up to 45.3x lower latency and 18.6x higher throughput over an H100 system at ISO-TDP on Llama3-405B.

Keywords

Cite

@article{arxiv.2602.18568,
  title  = {RPU -- A Reasoning Processing Unit},
  author = {Matthew Adiletta and Gu-Yeon Wei and David Brooks},
  journal= {arXiv preprint arXiv:2602.18568},
  year   = {2026}
}

Comments

To Appear in HPCA, 2026