Building Closed-Loop Evals for a Multimodal Agent at Uber Scale

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This talk covers how we designed evals for Uber's food enhancement agent—which edits food

photography to better present dishes for smaller, independent Uber Eats merchants—along with the

pitfalls and lessons learned along the way. The problem is uniquely hard: we must stay faithful to

the original dish, preserve each merchant's brand and packaging, and avoid homogenizing the

marketplace—all without an existing playbook for multimodal evals in a narrow domain. We'll dig into

what we learned navigating reward hacking, where the agent figured out how to game the eval loop,

and how we built a closed feedback loop incorporating offline and online signals for continuous

improvement—all while balancing creativity against rigid safety guardrails at scale. If you're an

ML or applied AI practitioner working on multimodal systems, agentic pipelines, or eval

design—especially building generative features under tight safety or quality constraints—you'll walk

away with practical strategies for designing multimodal evals in a narrow domain, recognizing and

countering reward hacking, and building offline/online feedback loops that keep a generative agent

improving in production.

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