In this episode of the a16z AI podcast, Matt Bornstein interviews Manu Sharma, the co-founder and CEO of Labelbox, about the evolution and importance of data labeling and evaluation in the AI industry. Sharma discusses how Labelbox has adapted from focusing on computer vision and supervised learning to addressing the needs of large language models and reinforcement learning, emphasizing the crucial role of human experts in training AI systems. The conversation covers the shift from labeling pre-training data to evaluating outputs, the increasing complexity of tasks for human annotators, and the need for high-quality, specialized data sets for AI agents and various applications like coding and customer service. Sharma also shares insights on navigating the rapid changes in the AI landscape and the strategic decision to cater to hyperscalers and AI labs, highlighting the balance between software tools and human expertise in producing effective AI solutions.
Sign in to continue reading, translating and more.
Continue