Prompt Repetition Improves Non-Reasoning LLMs 解读 核心结论:在不使用推理(reasoning)时,重复输入提示(repeatitive prompts)可以提高主流模型(如:Gemini、GPT、Claude、Deepseek)的性能表现,且不会增加生成的 tokens 数量或带来延迟。发表团队及时间:谷歌团队 2025年末具体方法:① Prompt RepetitionLLMs are often trained as causal language models, i.e. past tokens cannot attend to future tokens. Therefore, the order of the tokens in a user’s query can affect prediction performance. For example, a query of the form “CONTEXT QUESTION” often performs differently from a query of the form “QUESTION CONTEXT” (see options-first vs. question-first in Figure 1). We propose to repeat the prompt, i.e. transform the input from “QUERY” to “QUERYQUERY”.

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