In this episode of Unsupervised Learning, Jacob Effron interviews Tri Dao, a leading AI researcher and Chief Scientist at Together. They discuss the future of AI hardware, potential competitors to NVIDIA, and the stability of AI architectures for chip design. Tri shares his insights on optimizing models, the role of abstractions in hardware portability, and the use of AI in improving coding efficiency. The conversation also covers the advancements in AI inference, the diversification of workloads, and the importance of data in AI development, concluding with Tri's perspective on achieving expert-level AI and the future of robotics.
Sign in to continue reading, translating and more.
Continue