Orthrus: Memory-Efficient Parallel Token Generation via Dual-View Diffusion [R]
Mirrored from r/MachineLearning for archival readability. Support the source by reading on the original site.
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Idea: Inject a trainable diffusion attention module into each layer of a frozen AR Transformer. Both heads share one KV cache. Diffusion head projects K=32 tokens in parallel; AR head verifies in a second pass and accepts the longest matching prefix. Output distribution is provably identical to the base model. Results:
Limitations: strictly bounded by the frozen base model (inherits its biases, hallucinations, knowledge gaps); Qwen3-only evaluation; greedy + rejection sampling only. [link] [comments] |
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