English

Training Foundation Models on a Full-Stack AMD Platform: Compute, Networking, and System Design

Computation and Language 2025-12-05 v2 Artificial Intelligence Distributed, Parallel, and Cluster Computing

Abstract

We report on the first large-scale mixture-of-experts (MoE) pretraining study on pure AMD hardware, utilizing both MI300X GPUs and Pollara networking. We distill practical guidance for both systems and model design. On the systems side, we deliver a comprehensive cluster and networking characterization: microbenchmarks for all core collectives (all-reduce, reduce-scatter, all-gather, broadcast) across message sizes and GPU counts over Pollara. To our knowledge, this is the first at this scale. We further provide MI300X microbenchmarks on kernel sizing and memory bandwidth to inform model design. On the modeling side, we introduce and apply MI300X-aware transformer sizing rules for attention and MLP blocks and justify MoE widths that jointly optimize training throughput and inference latency. We describe our training stack in depth, including often-ignored utilities such as fault-tolerance and checkpoint-reshaping, as well as detailed information on our training recipe. We also provide a preview of our model architecture and base model - ZAYA1 (760M active, 8.3B total parameters MoE, available at https://huggingface.co/Zyphra/ZAYA1-base) - which will be further improved upon in forthcoming papers. ZAYA1-base achieves performance comparable to leading base models such as Qwen3-4B and Gemma3-12B at its scale and larger, and outperforms models including Llama-3-8B and OLMoE across reasoning, mathematics, and coding benchmarks. Together, these results demonstrate that the AMD hardware, network, and software stack are mature and optimized enough for competitive large-scale pretraining.

Keywords

Cite

@article{arxiv.2511.17127,
  title  = {Training Foundation Models on a Full-Stack AMD Platform: Compute, Networking, and System Design},
  author = {Quentin Anthony and Yury Tokpanov and Skyler Szot and Srivatsan Rajagopal and Praneeth Medepalli and Anna Golubeva and Vasu Shyam and Robert Washbourne and Rishi Iyer and Ansh Chaurasia and Tomas Figliolia and Xiao Yang and Abhinav Sarje and Drew Thorstensen and Amartey Pearson and Zack Grossbart and Jason van Patten and Emad Barsoum and Zhenyu Gu and Yao Fu and Beren Millidge},
  journal= {arXiv preprint arXiv:2511.17127},
  year   = {2025}
}
R2 v1 2026-07-01T07:48:36.486Z