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Rationale for Using One-Shot and Few-Shot Learning

One-shot and few-shot learning methods are primarily utilized when a Large Language Model lacks the inherent zero-shot capability to perform a specific task. In such cases, providing one or a few demonstrations within the prompt becomes a crucial strategy for guiding the model's behavior and successfully addressing new tasks through in-context learning.

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Updated 2026-04-21

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Ch.2 Generative Models - Foundations of Large Language Models

Foundations of Large Language Models

Foundations of Large Language Models Course

Computing Sciences

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