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by VHRanger
181 days ago
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In general encoder+decoder models are much more efficient at infererence than decoder-only models because they run over the entire input all at once (which leverages parallel compute more effectively). The issue is that they're generally harder to train (need input/output pairs as a training dataset) and don't naturally generalize as well |
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Decoder-only models also do this, the only difference is that they use a masked attention.