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English(EN) 🚀 Accelerating LLM Inference with TGI on Intel Gaudi

研究人员揭示提高 LLM 推理速度和效率的新方法

Google Research 推出了“投机级联”(speculative cascades),一种通过将投机解码与标准级联相结合来提高大型语言模型(LLM)效率的新颖方法。这种混合方法旨在降低计算成本和推理延迟,同时不损害输出质量。通过策略性地使用较小的模型来预测 token,然后用较大的模型进行验证,投机级联与单独使用任一技术相比,提供了更好的成本-质量权衡,GemmaT5 模型已证明了这一点。 AI

影响 像投机级联和 KV 缓存压缩这样的新推理技术可以显著降低 LLM 部署的运营成本。

排序理由 该集群包含详细介绍改进 LLM 推理效率新方法的学术论文。

在 Hugging Face Blog 阅读 →

AI 生成摘要 · Google Gemini · 来自 26 个来源。 我们如何撰写摘要 →

研究人员揭示提高 LLM 推理速度和效率的新方法

报道来源 [26]

  1. Google AI / Research TIER_1 English(EN) ·

    投机级联——一种更智能、更快速的LLM推理混合方法

    Generative AI

  2. Hugging Face Blog TIER_1 English(EN) ·

    🚀 使用 TGI 在 Intel Gaudi 上加速 LLM 推理

  3. Hugging Face Blog TIER_1 English(EN) ·

    Optimum-NVIDIA 仅用一行代码即可实现超高速 LLM 推理

  4. arXiv cs.AI TIER_1 English(EN) · Sanjeev Rao Ganjihal ·

    面向大规模GPU推理KV缓存的预测性多层内存管理

    arXiv:2604.26968v1 Announce Type: cross Abstract: Key-value (KV) cache memory management is the primary bottleneck limiting throughput and cost-efficiency in large-scale GPU inference serving. Current systems suffer from three compounding inefficiencies: (1) the absence of unifie…

  5. arXiv cs.LG TIER_1 English(EN) · Aditya Ukarande, Deep Shekhar, Marc Blackstein, Ram Rangan ·

    客户端高效、显存受限的 xLM 推理

    arXiv:2604.26334v1 Announce Type: cross Abstract: To usher in the next round of client AI innovation, there is an urgent need to enable efficient, lossless inference of high-accuracy large language models (LLMs) and vision language models (VLMs), jointly referred to as xLMs, on c…

  6. arXiv cs.AI TIER_1 English(EN) · Bodon Jeong, Hongsu Byun, Youngjae Kim, Weikuan Yu, Kyungkeun Lee, Jihoon Yang, Sungyong Park ·

    DUAL-BLADE: 边缘 LLM 推理的双路径 NVMe-直连 KV 缓存卸载

    arXiv:2604.26557v1 Announce Type: cross Abstract: The increasing deployment of Large Language Model (LLM) inference on edge AI systems demands efficient execution under tight memory budgets. A key challenge arises from Key-Value (KV) caches, which often exceed available device me…

  7. arXiv cs.AI TIER_1 English(EN) · Sungyong Park ·

    DUAL-BLADE:用于边缘 LLM 推理的双路径 NVMe 直连 KV 缓存卸载

    The increasing deployment of Large Language Model (LLM) inference on edge AI systems demands efficient execution under tight memory budgets. A key challenge arises from Key-Value (KV) caches, which often exceed available device memory. Although NVMe-based offloading offers scalab…

  8. arXiv cs.LG TIER_1 English(EN) · Ram Rangan ·

    客户端高效、显存受限的 xLM 推理

    To usher in the next round of client AI innovation, there is an urgent need to enable efficient, lossless inference of high-accuracy large language models (LLMs) and vision language models (VLMs), jointly referred to as xLMs, on client systems. To address this, we present pipelin…

  9. arXiv cs.LG TIER_1 English(EN) · Nada Zine, Cl\'ement Quinton, Romain Rouvoy ·

    Pimp My LLM:利用变异建模调整推理超参数

    arXiv:2602.17697v2 Announce Type: replace Abstract: Large Language Models (LLMs) are being increasingly used across a wide range of tasks. However, their substantial computational demands raise concerns about the energy efficiency and sustainability of both training and inference…

  10. arXiv cs.CL TIER_1 English(EN) · Ishan Patel, Ishan Joshi ·

    PolyKV:多智能体 LLM 推理的共享非对称压缩 KV 缓存池

    arXiv:2604.24971v1 Announce Type: cross Abstract: We present PolyKV, a system in which multiple concurrent inference agents share a single, asymmetrically compressed KV cache pool. Rather than allocating a separate KV cache per agent -- the standard paradigm -- PolyKV writes a co…

  11. arXiv cs.CL TIER_1 English(EN) · Zahra Dehghanighobadi, Asja Fischer ·

    DepthKV:面向长上下文 LLM 推理的层依赖 KV 缓存剪枝

    arXiv:2604.24647v1 Announce Type: new Abstract: Long-context reasoning is a critical capability of large language models (LLMs), enabling applications such as long-document understanding, summarization, and code generation. However, efficient autoregressive inference relies on th…

  12. arXiv cs.CL TIER_1 English(EN) · Marta Adamska, Daria Smirnova, Hamid Nasiri, Zhengxin Yu, Peter Garraghan ·

    绿色提示:LLM推理的提示驱动能源成本特征分析

    arXiv:2503.10666v4 Announce Type: replace Abstract: Large Language Models (LLMs) have become widely used across various domains spanning search engines, code generation, and text creation. However, a major concern associated with their adoption is the high cost of inference, impa…

  13. arXiv cs.CL TIER_1 English(EN) · Yi Su, Zhenxu Tian, Dan Qiao, Yuechi Zhou, Juntao Li, Min Zhang ·

    LongFlow:面向推理模型的高效KV缓存压缩

    arXiv:2603.11504v2 Announce Type: replace-cross Abstract: Recent reasoning models such as OpenAI-o1 and DeepSeek-R1 have shown strong performance on complex tasks including mathematical reasoning and code generation. However, this performance gain comes with substantially longer …

  14. arXiv cs.LG TIER_1 English(EN) · Yaoqi Chen, Jinkai Zhang, Baotong Lu, Qianxi Zhang, Chengruidong Zhang, Jing Liu, Jingjia Luo, Di Liu, Huiqiang Jiang, Qi Chen, Bailu Ding, Xiao Yan, Jiawei Jiang, Chen Chen, Mingxing Zhang, Cheng Li, Yuqing Yang, Fan Yang, Mao Yang ·

    RetroInfer:用于可扩展长上下文 LLM 推理的向量存储引擎

    arXiv:2505.02922v3 Announce Type: replace Abstract: Recent large language models (LLMs) are rapidly extending their context windows, yet inference throughput lags due to increasing GPU memory and bandwidth demands. This is because the key-value (KV) cache, an intermediate structu…

  15. arXiv cs.CL TIER_1 English(EN) · Ishan Joshi ·

    PolyKV:多智能体LLM推理的共享非对称压缩KV缓存池

    We present PolyKV, a system in which multiple concurrent inference agents share a single, asymmetrically compressed KV cache pool. Rather than allocating a separate KV cache per agent -- the standard paradigm -- PolyKV writes a compressed cache once and injects it into N independ…

  16. arXiv cs.CL TIER_1 English(EN) · Asja Fischer ·

    DepthKV:面向长上下文 LLM 推理的层依赖 KV 缓存剪枝

    Long-context reasoning is a critical capability of large language models (LLMs), enabling applications such as long-document understanding, summarization, and code generation. However, efficient autoregressive inference relies on the key-value (KV) cache, whose memory footprint g…

  17. Hugging Face Daily Papers TIER_1 English(EN) ·

    DepthKV:面向长上下文 LLM 推理的层依赖 KV 缓存剪枝

    Long-context reasoning is a critical capability of large language models (LLMs), enabling applications such as long-document understanding, summarization, and code generation. However, efficient autoregressive inference relies on the key-value (KV) cache, whose memory footprint g…

  18. arXiv cs.CL TIER_1 English(EN) · Dinghong Song, Jierui Xu, Weichu Yang, Pengfei Su, Dong Li ·

    NeuronMLP:通过奇异值分解压缩和 AWS Trainium 上的分块实现高效 LLM 推理

    arXiv:2510.25977v4 Announce Type: replace Abstract: Emerging AI accelerators have started to gain attention and offer new opportunities for efficient inference of large language models (LLMs). Trainium, an AI accelerator recently developed by Amazon Web Services (AWS), provides a…

  19. arXiv cs.LG TIER_1 English(EN) · Anurita Das ·

    MCAP:内存受限大模型推理的部署时层剖析

    arXiv:2604.21026v2 Announce Type: replace Abstract: Deploying large language models to heterogeneous hardware is often constrained by memory, not compute. We introduce MCAP (Monte Carlo Activation Profiling), a load-time per-layer importance estimator that enables dynamic precisi…

  20. X — Cohere TIER_1 English(EN) · cohere ·

    喜欢这篇文章吗?如果您在机器学习框架(训练或推理)方面拥有深厚的经验,并且热衷于解决这类问题,我们的团队正在招聘!

    Enjoyed the read? If you have deep experience in ML frameworks (training or inference) and love working on problems like these, our team is hiring! ML Systems Engineer, Frameworks & Tooling: https://t.co/IyMnsfplXv Audio Inference Engineer, Model Efficiency:

  21. X — Cohere TIER_1 English(EN) · cohere ·

    对于真实的代理工作负载(北方),短上下文校准不足。我们将 AWQ 校准在长内部代理痕迹(最多 64k 个 token)上,并添加了 token

    For real agentic workloads (North), short-context calibration wasn't enough. We calibrated AWQ on long internal agentic traces (up to 64k tokens) and added token masking in llm-compressor to exclude repetitive chat templates/tool descriptions from calibration stats. Plus QAD http…

  22. X — Cohere TIER_1 English(EN) · cohere ·

    🔧 棘手之处:天真地将 BF16 组尺度转换为 FP8 会降低质量。我们的修复方法:按通道量化尺度(外向量缩放)+ 乘以 1/8 进行重缩放至

    🔧 The tricky part: naïvely casting BF16 group scales to FP8 dropped the quality. Our fix: quantize scales per-channel (outer vector scaling) + rescale by 1/8 to avoid FP8 clipping. Result: >99.5% of W4A16 accuracy recovered on Command A & Cohere MoE. Paired with a CUTLASS …

  23. X — Cohere TIER_1 English(EN) · cohere ·

    很高兴分享我们在生产级 W4A8 推理方面的工作,现已集成到 vLLM 中!通过将 4 位权重(低内存)与 8 位激活(高计算

    Excited to share our work on production-ready W4A8 inference, now integrated in vLLM! By combining 4-bit weights (low memory) with 8-bit activations (high compute), we hit the sweet spot for both decoding and prefill — up to 58% faster TTFT and 45% faster TPOT vs W4A16 on Hopper.…

  24. Hugging Face Daily Papers TIER_1 English(EN) ·

    DASH-KV:通过非对称 KV 缓存哈希加速长上下文 LLM 推理

    The quadratic computational complexity of the standard attention mechanism constitutes a fundamental bottleneck for large language models in long-context inference. While existing KV cache compression methods alleviate memory pressure, they often sacrifice generation quality and …

  25. Mastodon — mastodon.social TIER_1 English(EN) · aihaberleri ·

    📰 2026年5种KV缓存压缩技术,将LLM内存开销最高降低7.7倍 顶级的KV缓存压缩技术正在通过r改变LLM推理

    📰 5 KV Cache Compression Techniques in 2026 That Slash LLM Memory Overhead by Up to 7.7x Top KV cache compression techniques are transforming LLM inference by reducing memory overhead through entropy coding, quantization, and rematerialization. These methods enable faster, cheape…

  26. Mastodon — mastodon.social TIER_1 Türkçe(TR) · aihaberleri ·

    📰 KV Cache 压缩:2026 年减少 LLM 内存溢出的 10 种验证方法 解决 LLM 最大挑战 KV 缓存内存溢出的 10 种创新方法

    📰 KV Cache Sıkıştırma: 2026'da LLM Bellek Aşırısını Azaltan 10 Kanıtlanmış Yöntem LLM'lerin en büyük zorluğu olan KV cache bellek aşırısını çözen 10 yenilikçi yöntem, entropy coding, low-rank decompositions ve rematerialization ile birleşiyor. Bu teknikler, model boyutunu yarıya …