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PipeSD(ICML 2026)阅读笔记:把云边协同推测解码重新建模为「草稿 / 网络 / 验证」三资源流水线问题,提出 O(N̂²) 动态规划的 token-batch 最优调度(额外开销 <0.013%),并配合 token-level + sequence-level 双阈值 NAV 触发器(Bayesian 优化约 16 次采样即可在线整定),在 ThinkBook 16+ ↔ 天翼云 A800 真实测试床上取得 1.16×–2.16× TPT 提速和 14.3%–25.3% ECS 能耗下降。
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A technical review of PipeSD (ICML 2026), a cloud-edge collaborative speculative decoding framework with two contributions: a DP-optimal token-batch pipeline schedule that overlaps draft, network, and verify across three resources, and a dual-threshold NAV trigger (token + sequence confidence, BO-autotuned) that suppresses unhelpful verifications. Reports 1.16×–2.16× TPT speedup and 14.3%–25.3% ECS reduction over Vanilla/HSL/EdgeLLM on a real ThinkBook 16+ ↔ Tianyi A800 testbed.
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Kong 等人提出的「面向真实服务的推测解码延迟模型」阅读笔记。用 roofline 风格的延迟分解加 Little 定律,把不同 RPS、模型、硬件下的延迟曲线压缩到同一条 1/(1-x) 通用形上,并从机制层面解释了「batch=1 SD 提速在高负载下消失」的现象。
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A detailed technical review of Kong et al.'s interpretable latency model for speculative decoding under real serving workloads. Using a roofline-style decomposition plus Little's Law, the paper collapses RPS-versus-latency curves onto a single universal form and gives a mechanistic explanation for why batch=1 SD speedups erode under load.
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一篇关于 Zero Sum SVD 的中文阅读笔记:把所有层的奇异值堆到一个全局优先队列里,用带符号的损失敏感度和「零和守恒」的贪心规则一次性决定全模型的秩预算,让异质化的逐层秩自然从一条标量约束里掉出来。
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A detailed technical review of Zero Sum SVD, which replaces per-layer rank optimization with a global, signed loss-sensitivity heap and a greedy zero-sum rule, letting heterogeneous per-layer ranks fall out of one scalar conservation law.
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一篇关于 DisagMoE 的中文阅读笔记:把 attention 和 FFN 分别放到独立 GPU 池,用 AF-Pipe 调度和 M2N 通讯原语把两侧拼起来,从而把 MoE 训练里的 all-to-all 瓶颈藏进计算之下。
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A detailed technical review of DisagMoE, which disaggregates attention and FFN layers onto separate GPU pools and stitches them together via the AF-Pipe schedule to hide the MoE all-to-all bottleneck during training.
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一篇关于 DAPO 的中文阅读笔记:它把 Clip-Higher、动态采样、token-level loss 与 overlong reward shaping 组合成可复现的大规模 LLM 强化学习配方。
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A detailed technical review of DAPO, an open-source large-scale reinforcement learning recipe for reasoning LLMs using Clip-Higher, dynamic sampling, token-level loss, and overlong reward shaping.
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