The Frontier AI Inference Cloud for Agents
Official Schedule Context
- Date/time: 2026-07-01 · 2:25pm-2:45pm
- Track/room: Inference · Track 9
- Speaker(s): Byung-Gon (Gon) Chun
- Session type/status: session · confirmed
Official Description
Agents have changed the economics of AI inference. A chatbot’s cost scales roughly linearly with the
number of requests; an agent’s scales multiplicatively. A single task can fan out into hundreds of
model calls, each carrying a repeated context prefix and adding latency that compounds across tool
calls and reasoning steps. As open-weight models keep improving and agentic workloads grow, this
shift exposes the limits of traditional request-level optimization. Inference infrastructure becomes
a first-class concern, one that often shapes performance and cost as much as the model itself. In
this talk, we explore what changes when you optimize for the whole task rather than the individual
request, and how FriendliAI is rethinking the inference cloud for the era of agentic AI.
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
- Pending transcript synthesis when an official recording or confirmed matching video is available.