Power-aware Deep Learning Model Serving with µ-Serve
Haoran Qiu, Weichao Mao, et al.
USENIX ATC 2024
Fast-evolving machine learning (ML) workloads have increasing requirements for networking. However, host network transport on RDMA NICs is hard to evolve, causing problems for ML workloads. For example, single-path RDMA traffic is prone to flow collisions that severely degrade collective communication performance. We present UCCL, an extensible software transport layer to evolve GPU networking. UCCL decouples the data path and control path of existing RDMA NICs and efficiently runs the control-path transport on host CPUs. This software extensibility brings in transport innovations that cannot be achieved in hardware for ML workloads, e.g., a multipath transport to resolve flow collisions. ML collectives atop UCCL achieve up to 4.5× higher performance compared to existing RDMA NICs.
Haoran Qiu, Weichao Mao, et al.
USENIX ATC 2024
Anna Maria Nestorov, Diego Marron, et al.
Middleware 2024
Roman Pletka, Jovan Blanusa, et al.
FMS 2025
Kaoutar El Maghraoui
ISPASS 2021