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Tag: prompt sensitivity

Prompt Sensitivity in Large Language Models: Why Small Word Changes Change Everything
Prompt Sensitivity in Large Language Models: Why Small Word Changes Change Everything

Tamara Weed, Nov, 20 2025

Small changes in how you phrase a question to an AI can drastically change its answer. Learn why prompt sensitivity happens, which models are most reliable, and how to get consistent results-especially in high-stakes fields like healthcare.

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