@GigaAI: Introducing hallucination correction. We have reduced hallucination by 70%. Giga's hallucination rate is at ~1%. Better…
Summary
GigaAI announces a new hallucination correction feature that reduces the model's hallucination rate to approximately 1%, claiming superior reliability compared to frontier models.
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Introducing hallucination correction. We have reduced hallucination by 70%. Giga’s hallucination rate is at ~1%. Better than the best frontier models.
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