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Three weeks into testing, a learner told me my AI tutor gave her the wrong answer.

Not obviously wrong — just outdated enough to mislead.

That was the moment I realized something most RAG systems quietly ignore: they have no sense of time. My system retrieved the most similar document, not the most current one. And in a knowledge base that changes constantly, that’s a serious flaw.

The fix wasn’t in the retriever or the model. It was in the gap between them.

I built a temporal layer that filters expired facts, boosts time-sensitive signals, and makes the system prefer what’s still true — not just what matches.

The post RAG Is Blind to Time — I Built a Temporal Layer to Fix It in Production appeared first on Towards Data Science.

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