Google I/O Afterparty: The Future of Human-AI Collaboration, From Veo to Mariner
Fresh off impressive releases at Google’s I/O event, three Google Labs leaders explain how they’re reimagining creative tools and productivity workflows. Thomas Iljic details how video generation is merging filmmaking with gaming through generative AI cameras and world-building interfaces in Whisk and Veo. Jaclyn Konzelmann demonstrates how Project Mariner evolved from a disruptive browser takeover to an intelligent background assistant that remembers context across multiple tasks. Simon Tokumine reveals NotebookLM’s expansion beyond viral audio overviews into a comprehensive platform for transforming information into personalized formats. The conversation explores the shift from prompting to showing and telling, the economics of AI-powered e-commerce, and why being “too early” has become Google Labs’ biggest challenge and advantage. Hosted by Sonya Huang, Sequoia Capital 00:00 Introduction 02:12 Google's AI models and public perception 04:18 Google's history in image and video generation 06:45 Where Whisk and Flow fit 10:30 How close are we to having the ideal tool for the craft? 13:05 Where do the movie and game worlds start to merge? 16:25 Introduction to Project Mariner 17:15 How Mariner works 22:34 Mariner user behaviors 27:07 Temporary tattoos and URL memory 27:53 Project Mariner's future 29:26 Agent capabilities and use cases 31:09 E-commerce and agent interaction 35:03 Notebook LM evolution 48:26 Predictions and future of AI

State-Of-The-Art Prompting For AI Agents

The future of intelligence | Demis Hassabis (Co-founder and CEO of DeepMind)

AI in Sales: What's Actually Working in 2026 (Close, Clay, ElevenLabs & PandaDoc)

Inside Anthropic, the $965 Billion AI Juggernaut | The Circuit

From Data Centers to Dyson Spheres: P-1 AI's Path to Hardware Engineering AGI

How Cursor is building the future of AI coding with Claude

Josh Woodward: Google Labs is Rapidly Building AI Products from 0-to-1

Demis Hassabis On The Future of Work in the Age of AI

Demis Hassabis: Agents, AGI & The Next Big Scientific Breakthrough

Introduction to Generative AI

Stanford CS153 Frontier Systems | Scale, AGI, and the Future of Everything

Andrej Karpathy: Software Is Changing (Again)

Why Voice Will Be the Fundamental Interface for Tech ft ElevenLabs’ Mati Staniszewski

The Hardest Problem AI Ever Solved, with Google DeepMind CEO

The Model Context Protocol (MCP)

NVIDIA's Jensen Huang on Building the Dynamo of the Intelligence Age

Google DeepMind's Logan Kilpatrick: Why the Model Eats the Harness

Gong’s Amit Bendov: From Meeting Recordings to Revenue AI

OpenAI’s Deep Research Team on Why Reinforcement Learning is the Future for AI Agents

