Exploring methods like supervised venturing data annotation and preference annotation, the chapter discusses the significance of training AI models using human feedback to outperform human annotations. Emphasizing the importance of human preferences in improving RLHF models, the conversation touches on the efficiency of blending human feedback with model capabilities and the challenges faced in catching up with private models like LAMMA 2 and GPT-4.

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