Improving models requires datasets with diverse information that push the model's boundaries, not just repeating patterns it already knows. Updating datasets to expose more capabilities is crucial. Consider the balance between dataset diversity and the model's existing knowledge. It's essential to assess if newer datasets are too far from the pre-training data for the model to understand. As models become more extensive, older datasets may not align with the model's knowledge, necessitating thorough consideration of token usage in the initial model training.

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