Jonathan Siddharth, founder and CEO of Turing, discusses the evolution of data requirements for training AI, emphasizing the shift from simple data to complex, real-world data needed for agentic systems. He differentiates Turing as a research accelerator, creating reinforcement learning environments across various industries, functions, and roles to train AI for economically valuable work. Siddharth addresses the challenges of data acquisition and the slow takeoff of AGI, highlighting the potential for AI to automate knowledge work and increase human productivity. He also touches on the debate between incumbents and upstarts in adopting AI, the importance of data-driven feedback loops, and the future of SaaS in an AI-driven world. The conversation explores the potential for AI to transform industries and the need for humans to adapt and upskill in response to these changes.
Sign in to continue reading, translating and more.
Continue