Understanding the progression of Universal Language Model (ULM) fine-tuning is vital. The steps of pre-training, instruction tuning, and task training should not be viewed as distinct phases but as a continuum that allows for greater integration of the original dataset in later stages. This approach enhances expectations regarding the capabilities of pre-trained models, enabling significant modifications and behavior changes without reverting to random initialization. Research focuses on leveraging existing models for further enhancement rather than building from scratch, emphasizing the potential of expanding model functions through extended training.

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