From Tokenmaxxing to Trusted Throughput
Official Schedule Context
- Date/time: 2026-06-30 · 2:25pm-2:45pm
- Track/room: AI-Native Enterprises · Leadership 1
- Speaker(s): Mingsheng Hong
- Session type/status: session · confirmed
Official Description
AI adoption is accelerating, but for many engineering organizations, token consumption is now
significant enough to demand real economic discipline. Drawing on Ironclad’s experience scaling AI
across engineering, Mingsheng Hong will introduce the concept of trusted throughput: the rate at
which teams convert AI usage into reviewed, validated, maintainable, and safely deployed customer
value. He will share a practical framework for measuring AI cost and return, identifying bottlenecks
in code review, CI, and merge workflows, and improving ROI through better guardrails, engineering
practices, build-versus-buy decisions, and token optimization. Attendees will leave with a clearer
way to evaluate AI efficiency—not by minimizing usage or rewarding tokenmaxxing, but by maximizing
trusted customer value per dollar of AI spend and unit of human attention.
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Notes
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