LGARCLAug 25, 2025

Characterizing the Behavior of Training Mamba-based State Space Models on GPUs

arXiv:2508.17679v11 citationsh-index: 9
Originality Synthesis-oriented
AI Analysis

This work provides incremental analysis for GPU designers and researchers focusing on optimizing emerging SSM workloads.

The authors characterized the training behavior of Mamba-based State Space Models (SSMs) on GPUs to address the computational bottlenecks of transformers, revealing insights for architectural optimizations to scale performance.

Mamba-based State Space Models (SSM) have emerged as a promising alternative to the ubiquitous transformers. Despite the expressive power of transformers, the quadratic complexity of computing attention is a major impediment to scaling performance as we increase the sequence length. SSMs provide an alternative path that addresses this problem, reducing the computational complexity requirements of self-attention with novel model architectures for different domains and fields such as video, text generation and graphs. Thus, it is important to characterize the behavior of these emerging workloads on GPUs and understand their requirements during GPU microarchitectural design. In this work we evaluate Mamba-based SSMs and characterize their behavior during training on GPUs. We construct a workload suite that offers representative models that span different model architectures. We then use this suite to analyze the architectural implications of running Mamba-based SSMs on GPUs. Our work sheds new light on potential optimizations to continue scaling the performance for such models.

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