Cola DLM proposes a hierarchical latent diffusion model that learns a text-to-latent mapping, fits a global semantic prior in continuous space with a block-causal DiT, and performs conditional decoding, establishing latent prior modeling as an alternative to token-level autoregressive language model
When linear attention meets autoregressive decoding: Towards more effective and efficient linearized large language models
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RTP-LLM is a new LLM inference engine achieving 4.7x-6.3x model loading speedup and 1.12x-2.52x throughput gains over vLLM and SGLang via disaggregated phases, multi-tier KV cache, and modular optimizations in production at Alibaba.
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RTP-LLM: High-Performance Alibaba LLM Inference Engine
RTP-LLM is a new LLM inference engine achieving 4.7x-6.3x model loading speedup and 1.12x-2.52x throughput gains over vLLM and SGLang via disaggregated phases, multi-tier KV cache, and modular optimizations in production at Alibaba.