Software-Defined Agentic Serving
By: Saurabh Agarwal , Marco Laju , Jayanth Srinivasa and more
Potential Business Impact:
Makes smart computer teams work faster and smarter.
As multi-agent LLM pipelines grow in complexity, existing serving paradigms fail to adapt to the dynamic serving conditions. We argue that agentic serving systems should be programmable and system-aware, unlike existing serving which statically encode the parameters. In this work, we propose a new SDN-inspired agentic serving framework that helps control the key attributes of communication based on runtime state. This architecture enables serving-efficient, responsive agent systems and paves the way for high-level intent-driven agentic serving.
Similar Papers
Supporting Dynamic Agentic Workloads: How Data and Agents Interact
Multiagent Systems
Helps AI teams share information faster and smarter.
Agentic Services Computing
Software Engineering
Makes smart computer helpers work together better.
Governing Cloud Data Pipelines with Agentic AI
Distributed, Parallel, and Cluster Computing
Makes data pipelines run smarter, cheaper, and faster.