DASH discovers stronger hybrid attention architectures for LLMs via minutes-scale differentiable search, outperforming selector baselines and Jet-Nemotron on RULER while using 0.006% of prior search tokens.
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DeepSeekMoE 2B matches GShard 2.9B performance and approaches a dense 2B model; the 16B version matches LLaMA2-7B at 40% compute by using fine-grained expert segmentation plus shared experts.
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DASH: Fast Differentiable Architecture Search for Hybrid Attention in Minutes on a Single GPU
DASH discovers stronger hybrid attention architectures for LLMs via minutes-scale differentiable search, outperforming selector baselines and Jet-Nemotron on RULER while using 0.006% of prior search tokens.
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DeepSeekMoE: Towards Ultimate Expert Specialization in Mixture-of-Experts Language Models
DeepSeekMoE 2B matches GShard 2.9B performance and approaches a dense 2B model; the 16B version matches LLaMA2-7B at 40% compute by using fine-grained expert segmentation plus shared experts.