PRIME: Pseudo-Random Integrated Multi-Part Entropy for Adaptive Packet Spraying in AI/ML Data centers
Ashkan Sobhani, Sogand Sadrhaghighi, Xingjun Chu

TL;DR
PRIME introduces a pseudo-randomized packet spraying method tailored for AI/ML data center networks, improving load balancing and reducing latency under bursty, low-entropy traffic conditions.
Contribution
It proposes a novel congestion-aware, topology-informed packet spraying algorithm that outperforms existing solutions in large-scale simulations.
Findings
Up to 15% improvement in permutation traffic performance.
Up to 27% reduction in network degradation scenarios.
Enhanced load balancing and latency reduction.
Abstract
Large-scale distributed training in production data centers place significant demands on network infrastructure. In particular, significant load balancing challenges arise when processing AI/ML workloads, consisting of low-entropy, bursty and long-lived flows. Existing solutions designed for Ethernet, such as Equal-Cost Multi-Path (ECMP) struggle to maintain high network utilization. While major industry players (e.g., Ultra Ethernet Consortium) and parts of academia have proposed packet spraying to enhance AI/ML workload performance, we argue that existing packet spraying solutions lead to buffer inflation over time, negatively affecting network performance. Specifically, when ACK coalescing is used, these solutions lead to stale information, degrading network performance. Additionally, in asymmetric network conditions- such as mix of ordered an unordered traffic, or link degradation…
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Taxonomy
TopicsNetwork Security and Intrusion Detection · Anomaly Detection Techniques and Applications · Network Packet Processing and Optimization
