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Multiple Choice

An AI development team is testing two methods to guide a language model for a text summarization task.

  • Method 1: The team provides the model with the explicit, human-written instruction: 'Summarize the following text in one sentence.'
  • Method 2: The team initializes a set of numerical vectors and uses an optimization algorithm to automatically adjust them based on performance over thousands of examples. These final, optimized vectors are then used as the instruction. These vectors do not correspond to any recognizable words.

What fundamental characteristic distinguishes the instruction used in Method 2 from the one in Method 1?

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Updated 2025-10-06

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