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- Released
- Jun 2021
Transformers with linearised attention (“linear Transformers”) have demonstrated the practical scalability and effectiveness of outer product-based Fast Weight .
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A head-to-head benchmark comparison of Delta RNN (+ full context) across 0 evaluations.
Transformers with linearised attention (“linear Transformers”) have demonstrated the practical scalability and effectiveness of outer product-based Fast Weight .
Full Delta RNN (+ full context) specs →No shared benchmark scores found for these models yet.
This comparison covers 0 benchmarks on which at least one of the selected models has a published score.
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