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Accelerating GenAI Deployment at Scale with Media Understanding and Evaluation

Deploying GenAI applications is very challenging since AI-models are usually validated mostly on research content, and they don't automatically work well on User Generated Content (UGC). UGC can be significantly different due to non-pristineness and high diversity.

  • In general, UGC may have lower source quality than research dataset, because they may have been already compressed.

  • On the audio generation side, like autodubbing translation applications, the presence of echos, multiple speakers, and ambience noise are challenging for research models.

  • On the video generation side, like lipsync generation, it’s challenging to generate natural lip movements from occluded or partial faces, or faces in extreme angles.

  • On the enhancement of AI generated videos, strategies need to be optimized based on content characteristics, like factoring in multiple shots/scene boundaries, or presence of black border.

To address the challenges above, when deploying GenAI on UGC, Meta leverages both video understanding for optimal performances of models and algorithms as well as evaluation of media quality for efficient model iteration. This session will showcase the designs and insights.

Adam Brown

Co-Founder & CTO

Mux

Adam Brown co-founded Mux in 2015 and leads technology and architecture for the developer-first video infrastructure platform. With deep roots in video technology, Adam has built high-performance encoding systems, low‑latency live streaming pipelines, and scalable cloud video infrastructure, including during his time at Zencoder and Brightcove, with additional experience in VR rendering at Otoy.

Known for merging engineering rigor with developer empathy, he’s focused on enabling seamless, scalable video delivery and real-time analytics through API-first products like Mux Video and Mux Data.

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