DCLGApr 29

FaaSMoE: A Serverless Framework for Multi-Tenant Mixture-of-Experts Serving

arXiv:2604.2688114.0Has Code
Predicted impact top 23% in DC · last 90 daysOriginality Incremental advance
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For cloud service providers deploying large MoE models, FaaSMoE offers a resource-efficient serving architecture that reduces waste in multi-tenant scenarios.

FaaSMoE addresses resource underutilization in multi-tenant MoE serving by deploying experts as stateless FaaS functions, achieving less than one third of the resource usage compared to a full-model baseline with Qwen1.5-moe-2.7B.

Mixture-of-Experts (MoE) models offer high capacity with efficient inference cost by activating a small subset of expert models per input. However, deploying MoE models requires all experts to reside in memory, creating a gap between the resource used by activated experts and the provisioned resources. This underutilization is further pronounced in multi-tenant scenarios. In this paper, we propose FaaSMoE, a multi-tenant MoE serving architecture built on Function-as-a-Service (FaaS) platforms. FaaSMoE decouples the control and execution planes of MoE by deploying experts as stateless FaaS functions, enabling on-demand and scale-to-zero expert invocation across tenants. FaaSMoE further supports configurable expert granularity within functions, trading off per-expert elasticity for reduced invocation overhead. We implement a prototype with an open-source edge-oriented FaaS platform and evaluate it using Qwen1.5-moe-2.7B under multi-tenant workloads. Compared to a full-model baseline, FaaSMoE uses less than one third of the resources, demonstrating a practical and resource-efficient path towards scalable MoE serving in a multi-tenant environment.

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