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A research team is aligning a language model using a technique that learns directly from a large, static dataset of human-labeled preference pairs (i.e., chosen vs. rejected responses). The team has completed one full training cycle. Given that this technique operates without any active exploration or interaction to gather new data during training, which of the following strategies for improving the model represents a fundamental departure from this core operational principle?
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Ch.4 Alignment - Foundations of Large Language Models
Foundations of Large Language Models
Foundations of Large Language Models Course
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Analysis in Bloom's Taxonomy
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A research team is aligning a language model using a technique that learns directly from a large, static dataset of human-labeled preference pairs (i.e., chosen vs. rejected responses). The team has completed one full training cycle. Given that this technique operates without any active exploration or interaction to gather new data during training, which of the following strategies for improving the model represents a fundamental departure from this core operational principle?
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