Scaling multi-modal AI to 7 million users

Google Cloud Tech · Intermediate ·🤖 AI Agents & Automation ·1h ago
In this interview from Google I/O, Arthur Sroken speaks with Bianca Rangecroft, founder and CEO of Whering, about the intersection of computer vision, generative AI, and high growth consumer applications. Discover how Whering leverages multi-modal architectures like Gemini 2.5 and localized edge compute to process massive datasets, automate gallery scanning directly from camera rolls, and power low latency conversational styling chatbots. For cloud engineers and founders scaling media heavy apps, this discussion provides critical insights into managing token efficiency, gating high compute AI features behind a paywall, and balancing backend AI orchestration with human-centric UX design. Watch more Google I/O Interviews → https://goo.gle/io-tech-chats 🔔 Subscribe to Google Cloud Tech → https://goo.gle/GoogleCloudTech #GoogleIO #GoogleCloud Speakers: Arthur Soroken, Bianca Rangecroft Products Mentioned: Gemini
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