The chapter delves into the experiment with the Image-Not dataset, showcasing retraining key ImageNet-era models and observing preserved model rankings. It also introduces the Lion dataset, comprised of 5.85 billion image-caption pairs for benchmarking, created using text-based selection of 10,000 classes. The chapter discusses the concept of achieving better results than previous benchmarks under certain conditions and explores a theoretical model for benchmarking with noisy labels, highlighting the efficiency of using a single noisy label per data point.

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