
ChatGPT has stopped taking your prompts so literally — and that’s a bigger deal than it sounds
THE SO WHAT
A less literal ChatGPT-5.5 means prompt engineering drifts toward intent specification and away from brittle syntax hacks. Teams should standardize on interaction patterns now—how you express constraints, tone, and edge cases—because those will age better than prompt “spells.”
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