TCP and RDMA are Killing Inference Throughput; Homa can Fix It

Official Schedule Context

Official Description

Modern AI inferencing is shifting from monolithic requests to complex agentic workflows and

disaggregated KV stores. As a result, AI network traffic is no longer just very large transfers;

tiny metadata requests are becoming more and more common, and their latency has a critical impact on

throughput. Unfortunately, legacy transport protocols such as TCP and RDMA perform poorly on these

workloads due to poor congestion control and head-of-line blocking. This talk will discuss the

problems with TCP and RDMA and provide a brief introduction to the Homa transport protocol. Homa

uses receiver-driven flow control and capitalizes on priority queues in network switches to reduce

short-message latency by 10x for workloads like those in AI datacenters.

Related YouTube Video

No related AI Engineer channel video found yet.

Transcript Status

No official session recording transcript was found by exact title match on the AI Engineer YouTube channel during this run.

People

Notes