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[ARTICLE · art-16349] src=dev.to pub= topic=artificial-intelligence verified=true sentiment=· neutral

A Refreshing Perspective on AI and Truth

A developer argues that large language models cannot produce truth because they lack a fixed position in time or context, flattening conflicting perspectives into a statistical average. The engineer explains that an LLM is "never wrong because it is incapable of being right" in a meaningful sense, as being right requires standing somewhere. The post concludes that a specific, contextual prompt is the closest an AI can get to having a position, making the human user the essential source of provenance.

read2 min publishedMay 28, 2026

Everyone has a favorite movie. Some of us ask why.

A kid might say Spiderverse. A cinephile might insist on Lawrence of Arabia. A film historian might point further back — to a Buster Keaton two-reeler from 1921 that quietly invented half of what cinema still does today.

None of them are wrong. Each is right relative to where they stand: their experience, their era, the conversations they've been part of. Truth, for humans, has an address.

Artificial Intelligence has no address.

During training, a model ingests millions of documents simultaneously — texts from opposing centuries, conflicting political movements, irreconcilable cultures — and flattens them into a single mathematical space. To a film historian, that 1921 Keaton film explains the 2026 blockbuster. To an AI, both exist at the same depth, in the same timeless fog. There is no before. There is no provenance. So when you ask an AI to review your article and it loves a sentence, then in the next session calls that same sentence weak -- that isn't a bug or a bad day. There is no plot, and there is no twist, because there is no story being told from anywhere.

When forced to answer, the model doesn't reason from a position. It calculates a statistical average — blending the kid, the cinephile, and the historian into something that sounds authoritative because it contains all of them and is anchored by none of them.

This is the core paradox: an LLM is never wrong because it is incapable of being right. Not in the way that matters. Being right requires standing somewhere.

Which is why a good prompt is more important than most people think. The prompt is the only provenance the model has. It's the only "when" and "who" and "from where" available to it. A vague prompt doesn't just get a vague answer — it gets an answer from nowhere, averaged from everywhere. A specific, contextual prompt is the closest thing an LLM has to a position in time.

So maybe "truth-seeking AI" isn't entirely a broken idea. It's just that the seeking starts with — and depends on — you (whatever "you" really means).

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