Eagle and Finch enhance RWKV with matrix-valued states and dynamic recurrence, trained on a 1.12-trillion-token multilingual corpus, and report competitive performance on standard benchmarks.
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Eagle and Finch: RWKV with Matrix-Valued States and Dynamic Recurrence
Eagle and Finch enhance RWKV with matrix-valued states and dynamic recurrence, trained on a 1.12-trillion-token multilingual corpus, and report competitive performance on standard benchmarks.