历史归档 当前入口:https://bupt.ai/reports/?date=2026-06-01

液冷与智算中心日报|2026-06-01

追踪液冷技术、AI 智算中心、数据中心能效、学术论文、产品发布、政策标准、投融资与供应链动态的每日中文报告。

液冷与智算中心日报视觉图
AI 数据中心、液冷热管理、电力约束与产业链动态每日追踪。
检索窗口 2026-05-31 08:00 北京时间 - 2026-06-01 08:00 北京时间
产业热度指数 10/10
更新时间 2026-06-01 09:15 北京时间

1. 今日一句话总结

总体判断:电力并网与能源约束、智算中心 CapEx/扩建、AI 芯片供给与交付仍是今日液冷与智算中心主线,短期关注电力约束和高密度部署,长期关注液冷标准化与能源系统协同。

  • 来源依据:本期摘要基于 Data Center Dynamics、Data Center Knowledge、The Register、ServeTheHome、HPCwire 等公开来源、Semantic Scholar 论文检索结果和固定权威监测源生成;仅对页面列出的可追溯条目做归纳。
  • 论文侧,Semantic Scholar 检索结果显示近期研究继续围绕算电协同、热管理与液冷、AI 运维优化、芯片与算力展开,说明“算力-电力-热管理”正在从单点设备问题扩展为系统工程问题。
  • 产业侧,本期可核验条目集中在电力并网与能源约束、智算中心 CapEx/扩建、AI 芯片供给与交付,热度指数为 10/10;该分值反映本次来源覆盖和议题密度,不等同于投资景气判断。

总的来看,高密度 AI 集群的瓶颈正在从单一服务器散热,扩展到机柜级液冷、供配电容量、并网弹性、余热回收和运维自动化的组合约束;后续应优先跟踪权威媒体、标准组织、公司公告和论文原文中的可核验指标。

学术与产业速览

将论文、视频、产业动态和政策项压缩为可快速扫描的标签;每个标签只保留题目、摘要和来源入口。

Academic

学术

论文、研究趋势、学术视频与方法论线索。

论文 1 S

Carbon-Aware Compute--Power Scheduling for AI Data Centers with Microgrid…

AI data centers are increasingly becoming tightly coupled compute--energy systems, where workload placement, cooling demand, electr…

展开全文
论文主题示意图
算电协同
论文 1S

Carbon-Aware Compute--Power Scheduling for AI Data Centers with Microgrid Prosumer Operations

发布时间
2026-05-05
作者
Johnny R. Zhang、Gaoyuan Du、Qianyi Sun、Shiqi Wang、Jiaxuan Li、Xian Sun
主题
算电协同
摘要

AI data centers are increasingly becoming tightly coupled compute--energy systems, where workload placement, cooling demand, electricity procurement, storage operation, and carbon emissions interact over time. This paper studies carbon-aware compute--power scheduling for geographically distributed AI data centers with microgrid prosumer capabilities. We propose a mixed-integer linear programming (MILP) framework that jointly schedules rigid training jobs, routes elastic inference workloads, dispatches local generation and battery storage, and manages bidirectional grid interaction under latency, continuity, power-balance, and carbon-budget constraints. The model captures two key features of emerging AI infrastructure: heterogeneous workload flexibility and site-level energy prosumer operation. Experiments on synthetic yet practically motivated instances show that the proposed joint MILP substantially improves total operational benefit over compute-only and energy-only baselines while reducing emissions. The results further indicate that inference-routing flexibility is a major source of value, battery storage provides useful temporal flexibility, and local-generation-rich settings are particularly favorable. The framework provides a tractable optimization abstraction for sustainable and grid-interactive AI data centers.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用建模优化、调度分析或算法评估,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向AI 负载波动对电网设备寿命和调频边界的影响。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Johnny R. Zhang, Gaoyuan Du, Qianyi Sun, 等. Carbon-Aware Compute--Power Scheduling for AI Data Centers with Microgrid Prosumer Operations[J/OL]. (2026-05-05)[2026-06-01]. http://arxiv.org/abs/2605.03751v2.

arXiv
论文 2 S

Limiting the Impact of AI Data Centers on Fatigue Life of Thermal Turbine…

A framework is established that assesses the impact of variations in artificial intelligence (AI) data center (DC) loads on the fat…

展开全文
论文主题示意图
算电协同
论文 2S

Limiting the Impact of AI Data Centers on Fatigue Life of Thermal Turbine Generators in the Grid: A Frequency-Domain Approach

发布时间
2026-05-02
作者
Fiaz Hossain、Nilanjan Ray Chaudhuri、Alok Sinha、Sai Gopal Vennelaganti、Mohammed E. Nassar
主题
算电协同
摘要

A framework is established that assesses the impact of variations in artificial intelligence (AI) data center (DC) loads on the fatigue damage of steam/gas turbines of the synchronous generators (SGs) from torsional oscillations. Next, a simple three-step process that is supported by frequency-domain analysis is laid out to quantify the limits on fluctuations in AI DC loads. In the first step, the maximum allowable variation in electrical power output at each SG terminal is independently determined from the first principles. This step needs only a lumped multi-mass model of the mechanical side of the SG. In the second step, we propose a new approach that relies on load flow to determine the so-called algebraic `interaction factor' that maps the change in AI DC load at a given bus to the corresponding change in each of the SG power outputs. In the third step, we propose a screening method to rank the candidate buses to site AI DCs and solve an optimization problem to determine the optimal allowable fluctuations in the AI DCs. We demonstrate the applicability of the proposed approach through frequency-domain and time-domain analyses in the modified IEEE 4-machine and IEEE-68 bus systems using a dynamic phasor framework. Finally, we demonstrate the scalability of the proposed approach on the synthetic 2000-bus Texas system.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用建模优化、调度分析或算法评估,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向AI 负载波动对电网设备寿命和调频边界的影响。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Fiaz Hossain, Nilanjan Ray Chaudhuri, Alok Sinha, 等. Limiting the Impact of AI Data Centers on Fatigue Life of Thermal Turbine Generators in the Grid: A Frequency-Domain Approach[J/OL]. (2026-05-02)[2026-06-01]. http://arxiv.org/abs/2605.01173v1.

arXiv
论文 3 S

The Hidden Cost of Thinking: Energy Use and Environmental Impact of LMs B…

Modern language model development extends far beyond pretraining, yet environmental reporting remains narrowly focused on the cost …

展开全文
论文主题示意图
热管理与液冷
论文 3S

The Hidden Cost of Thinking: Energy Use and Environmental Impact of LMs Beyond Pretraining

发布时间
2026-05-02
作者
Jacob Morrison、Noah A. Smith、Emma Strubell
主题
热管理与液冷
摘要

Modern language model development extends far beyond pretraining, yet environmental reporting remains narrowly focused on the cost of training a single final model. In this work, we provide the first detailed breakdown of the environmental impact of a full model development pipeline, from pretraining through supervised fine-tuning, preference optimization, and reinforcement learning, for Olmo 3, a family of 7 billion and 32 billion parameter models in both instruction-following and reasoning variants. We find that reasoning models are 17x more expensive to post-train than their instruction-tuned counterparts in terms of datacenter energy, driven by reinforcement learning rollout generation. Development costs (including experimentation, failed runs, and ablations) account for 82.2% of total compute, a roughly 65% increase over the ~50% reported for pretraining-focused pipelines in prior work. In total, we estimate our model development process consumed ~12.3 GWh of datacenter energy, emitted 4,251 tCO2eq, and consumed 15,887 kL of water, with water consumption driven entirely by power generation infrastructure rather than data center cooling. These costs, which are almost entirely unreported by model developers, are growing rapidly as post-training pipelines become more complex, and must be accounted for in environmental reporting standards and by the research community working to reduce AI's environmental impact.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用建模优化、调度分析或算法评估,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Jacob Morrison, Noah A. Smith, Emma Strubell. The Hidden Cost of Thinking: Energy Use and Environmental Impact of LMs Beyond Pretraining[J/OL]. (2026-05-02)[2026-06-01]. http://arxiv.org/abs/2605.01158v1.

arXiv
论文 4 S

Grid Capacity Expansion under Data Centers and Electrified Manufacturing …

In this paper, we consider the expansion of power grids under emerging large loads from data centers and electrified manufacturing.…

展开全文
论文主题示意图
算电协同
论文 4S

Grid Capacity Expansion under Data Centers and Electrified Manufacturing Large Loads

发布时间
2026-05-28
作者
Jiyong Lee、Melody Agustin、Joanne Langsdorf、Erhan Kutanolgu、Michael Baldea、Ilias Mitrai
主题
算电协同
摘要

In this paper, we consider the expansion of power grids under emerging large loads from data centers and electrified manufacturing. We develop a multi-period grid capacity expansion model to determine optimal investment profiles for power generation, storage, and transmission capacity while accounting for hourly power dispatch, such that electricity demand is satisfied and the total planning and operation cost is minimized. We also propose a new modeling approach regarding the spatial distribution of demand from large loads. The model is used to analyze the expansion of a synthetic grid that follows key characteristics of the ERCOT system over a seven-year planning horizon, under loads from data centers and electrified oil refining, which account for 17.5% and 4.7% of total annual electricity demand by the end of the planning horizon. The optimal investment policy leads to an 83.6% increase in generation capacity and exploits the short construction times of solar and storage as well as the operational flexibility of thermal generators. Finally, sensitivity analysis reveals that the construction time of grid assets substantially impacts investment timing, generation technology mix, and transmission capacity expansion. The proposed modeling framework is general and can be extended to other grid systems, enabling the exploration of diverse demand scenarios, policy assumptions, and regional characteristics.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用框架构建和频域/系统级分析,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向AI 负载波动对电网设备寿命和调频边界的影响。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Jiyong Lee, Melody Agustin, Joanne Langsdorf, 等. Grid Capacity Expansion under Data Centers and Electrified Manufacturing Large Loads[J/OL]. (2026-05-28)[2026-06-01]. http://arxiv.org/abs/2605.29053v1.

arXiv
论文 5 S

GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers

At global scale, data-center electricity demand is growing faster than the grids that supply it, while system operators increasingl…

展开全文
论文主题示意图
算电协同
论文 5S

GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers

发布时间
2026-05-26
作者
Denisa-Andreea Constantinescu、David Atienza
主题
算电协同
摘要

At global scale, data-center electricity demand is growing faster than the grids that supply it, while system operators increasingly require large flexible loads that can adjust power within seconds to absorb variable wind and solar generation. For multi-megawatt AI/HPC facilities, the key unresolved question is practical and measurable: how quickly can the software stack translate a grid request into a real change in GPU power at the facility meter, where commitments are settled? We answer this on real hardware with GridPilot, a three-tier predictive controller operating across milliseconds, seconds, and hours, augmented by a deterministic safety-island bypass for fast response. On a three-GPU NVIDIA V100 testbed, GridPilot achieves a measured end-to-end trigger-to-target response of 97.2 ms, which is 6.9x faster than the 700 ms requirement of Nordic Fast Frequency Reserve. We further incorporate an instantaneous Power Usage Effectiveness (PUE) correction so dispatched commitments remain robust at meter level rather than only at IT load level. In replay experiments across six representative European grids (from Sweden to Poland), the PUE-aware controller closes 2.5-5.8 percentage points of cooling-overhead drag. GridPilot is released as open source and serves as a proof of concept that MW-scale AI/HPC demand can be engineered as controllable, grid-responsive flexibility by design.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,算力负载与电网侧资源的协同调度正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用实验验证、原型测试或测量对比,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向AI 负载波动对电网设备寿命和调频边界的影响。意义:对日报读者而言,它可用于判断智算中心建设是否受电网容量、负载波动和调度机制约束。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Denisa-Andreea Constantinescu, David Atienza. GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers[J/OL]. (2026-05-26)[2026-06-01]. http://arxiv.org/abs/2605.26384v1.

arXiv
论文 6 S

Energy-Aware Computing in the Year 2026

High-Performance Computing (HPC) has recently entered the Exascale era, and considerable efforts are being made to fully harness th…

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论文主题示意图
AI 运维优化
论文 6S

Energy-Aware Computing in the Year 2026

发布时间
2026-05-23
作者
Roblex Nana Tchakoute、Claude Tadonki
主题
AI 运维优化
摘要

High-Performance Computing (HPC) has recently entered the Exascale era, and considerable efforts are being made to fully harness this potential power for large-scale applications, such as cutting-edge generative AI (training and exploitation). The corresponding energy consumption is very high, and forecasts are alarming, making this metric a critical systemic bottleneck. Addressing this issue presents a genuine challenge for the entire cloud-edge-HPC continuum at all scales, from low-power IoT microcontrollers to multi-megawatt data centers. Beyond financial costs, green computing is driven by considerations related to climate change and environmental concerns such as carbon footprint ($CO_2e$), as well as constraints on energy production and supply, leading to a real need to regulate {\em information and communication technology} (ICT) activities. This article presents a comprehensive overview of energy-efficient computing, taking into account the most recent and significant contributions. Based on this exploration of the state of the art, we design and describe a holistic taxonomy of the aforementioned publications, structured around various perspectives, including {\em hardware and software aspects, measurement instrumentation, software optimizations, dynamic task scheduling, voltage scaling, workload consolidation, federated learning}, and {\em cooling}. Particular emphasis is placed on large-scale AI, which receives significant attention due to its considerable resource requirements. We conclude with an analysis of a forward-looking roadmap that considers the main perspectives of sustainable computing.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,AI 运维、负载预测和设施调优正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用建模优化、调度分析或算法评估,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向能效评价口径、运营指标和优化目标的系统化梳理。意义:对日报读者而言,它可用于判断AI 工具是否能降低运维复杂度并提升可用性。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Roblex Nana Tchakoute, Claude Tadonki. Energy-Aware Computing in the Year 2026[J/OL]. (2026-05-23)[2026-06-01]. http://arxiv.org/abs/2605.24569v1.

arXiv
论文 7 S

ScaleAcross Explorer: Exploring Communication Optimization for Scale-Acro…

The rapid scaling of large language model training requires distributing GPU resources across multiple data center buildings and re…

展开全文
论文主题示意图
芯片与算力
论文 7S

ScaleAcross Explorer: Exploring Communication Optimization for Scale-Across AI Model Training

发布时间
2026-05-23
作者
Minghao Li、Alicia Golden、Samuel Hsia、Michael Kuchnik、Adi Gangidi、Xu Zhang、Ashmitha Jeevaraj Shetty、Zachary DeVito
主题
芯片与算力
摘要

The rapid scaling of large language model training requires distributing GPU resources across multiple data center buildings and regions. We refer to such paradigm as "scale-across" training. As infrastructure expands, the system design space becomes increasingly intricate, encompassing new model architectures, hardware heterogeneity, and evolving communication patterns. Drawing from Meta's production experience, we highlight the complexities of deploying training jobs across a few data centers housing hundreds of thousands of GPUs. To accelerate exploration of the large design space and to enable efficient training for frontier model development, we conduct in-depth characterization of three key design dimensions: parallelism placement, parallelism scheduling, and network layer technologies. We then propose ScaleAcross Explorer, an optimizer that considers the interplay of design dimensions and holistically optimizes scale-across training. Testbed experiments and simulations demonstrate up to 64.62% training speedups over production configuration and up to 37.59% training speedups over the state-of-the-art baseline across a wide range of design points.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,芯片、服务器和高密度算力部署正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用建模优化、调度分析或算法评估,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向跨地域数据中心负载与电力资源之间的调度关系。意义:对日报读者而言,它可用于判断芯片路线和服务器密度变化如何传导到机房设计。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Minghao Li, Alicia Golden, Samuel Hsia, 等. ScaleAcross Explorer: Exploring Communication Optimization for Scale-Across AI Model Training[J/OL]. (2026-05-23)[2026-06-01]. http://arxiv.org/abs/2605.24326v1.

arXiv
论文 8 S

Co-Design Optimization for Data Center Cooling System via Digital Twin

Liquid-cooled exascale supercomputers dissipate heat through cooling plants organized as multiple parallel subloops, but how to all…

展开全文
论文主题示意图
热管理与液冷
论文 8S

Co-Design Optimization for Data Center Cooling System via Digital Twin

发布时间
2026-05-15
作者
Shrenik Jadhav、Zheng Liu
主题
热管理与液冷
摘要

Liquid-cooled exascale supercomputers dissipate heat through cooling plants organized as multiple parallel subloops, but how to allocate coolant distribution units (CDUs) across subloops and how to distribute flow among them has not been systematically addressed for facilities at this scale. This paper presents a three-layer optimization framework that jointly determines the integer partition of CDUs across subloops, the continuous flow fraction allocation, and the per-timestep co-design optimization of total flow rate and supply temperature subject to per-subloop thermal safety constraints. The Modelica simulation model is built based on the data of Frontier exascale supercomputer at Oak Ridge National Laboratory. By developing a reduced-order surrogate model, all 611 feasible partitions of 25 CDUs are evaluated across the full year operational dataset of 49,353 timesteps. Three progressively richer operational strategies are compared, ranging from flow control optimization to full three-layer co-design optimization with dynamically adjusted flow fractions. The globally optimal design is a two-subloop plant achieving 35.48% annual cooling energy savings, only 0.18% above the current three-subloop Frontier design at 35.30%. Flow fraction optimization is shown to compensate for any feasible CDU-to-subloop assignment, reducing the design sensitivity by 93% and providing a low-cost software-only pathway to near-optimal performance on the existing Frontier hardware. The framework is transferable to other liquid-cooled high-performance computing plants.

中文解读

背景:AI 数据中心负载、功率密度和能源约束同步上升,液冷、热管理和数据中心能效正在成为智算中心设计的关键变量。问题:论文聚焦现有方案在效率、可靠性或工程协同上的瓶颈。方法:摘要显示作者采用综述归纳和指标比较,把运行负载、冷却/能源系统和基础设施约束放在同一分析框架中。结果:研究重点指向冷却效率、能源利用或运维策略的改进方向。意义:对日报读者而言,它可用于判断液冷方案、热管理路线和高密度部署节奏。仍需结合全文实验条件、样本范围和成本假设核验。

参考文献

Shrenik Jadhav, Zheng Liu. Co-Design Optimization for Data Center Cooling System via Digital Twin[J/OL]. (2026-05-15)[2026-06-01]. http://arxiv.org/abs/2605.15516v1.

arXiv
视频 B

Webinar: Data Centre Liquid Cooling Technology

Park Place Technologies · 检索词:data center thermal management seminar。适合作为技术背景或研究趋势补充。

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Webinar: Data Centre Liquid Cooling Technology

专家讲座 · Park Place Technologies · 检索词:data center thermal management seminar

在 YouTube 打开
视频 B

Aftermovie Liquid Cooling Seminar Spain 2025

STULZ · 检索词:data center liquid cooling conference presentation。适合作为技术背景或研究趋势补充。

展开全文

Aftermovie Liquid Cooling Seminar Spain 2025

学术会议报告 · STULZ · 检索词:data center liquid cooling conference presentation

在 YouTube 打开
视频 B

Collective Energy-Efficiency Approach to Data Center Networks Planning

MyProjectBazaar · 检索词:IEEE data center energy efficiency lecture。适合作为技术背景或研究趋势补充。

展开全文

Collective Energy-Efficiency Approach to Data Center Networks Planning

学术讲座 · MyProjectBazaar · 检索词:IEEE data center energy efficiency lecture

在 YouTube 打开
视频 B

DLS with Keren Bergmann: Scaling Energy-Efficient AI Systems Performance …

MPI for the Science of Light · 检索词:IEEE data center energy efficiency lecture。适合作为技术背景或研究趋势补充。

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DLS with Keren Bergmann: Scaling Energy-Efficient AI Systems Performance with Photonic Connectivity

学术讲座 · MPI for the Science of Light · 检索词:IEEE data center energy efficiency lecture

在 YouTube 打开
视频 B

Enhanced geothermal for AI data centers: Devilish or divine? | James F. G…

TEDx Talks · 检索词:AI data center energy conference keynote。适合作为技术背景或研究趋势补充。

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Enhanced geothermal for AI data centers: Devilish or divine? | James F. Groves | TEDxChantilly HS

学术会议报告 · TEDx Talks · 检索词:AI data center energy conference keynote

在 YouTube 打开
视频 B

Powering the Future of AI: Clean Energy Meets Next-Gen Data Centers

Birch Capital · 检索词:AI data center energy conference keynote。适合作为技术背景或研究趋势补充。

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Powering the Future of AI: Clean Energy Meets Next-Gen Data Centers

学术会议报告 · Birch Capital · 检索词:AI data center energy conference keynote

在 YouTube 打开
热词 B

电力并网与能源约束

本期命中 16 条,热度分 38。可作为论文检索、技术路线和后续研究跟踪关键词。

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热词B

电力并网与能源约束

详细内容

本期命中 16 条,热度分 38。可作为论文检索、技术路线和后续研究跟踪关键词,不等同于事实结论。

热词 B

智算中心 CapEx/扩建

本期命中 7 条,热度分 16。可作为论文检索、技术路线和后续研究跟踪关键词。

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热词B

智算中心 CapEx/扩建

详细内容

本期命中 7 条,热度分 16。可作为论文检索、技术路线和后续研究跟踪关键词,不等同于事实结论。

热词 B

AI 芯片供给与交付

本期命中 3 条,热度分 8。可作为论文检索、技术路线和后续研究跟踪关键词。

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热词B

AI 芯片供给与交付

详细内容

本期命中 3 条,热度分 8。可作为论文检索、技术路线和后续研究跟踪关键词,不等同于事实结论。

Industry

产业

产业新闻、技术产品、政策标准、投融资、项目和产业视频。

产业 A

数据中心产业动态:Data Center Dynamics 发布相关报道(原文标题:Lead or be regulated: Future-pr…

发布时间:2026-05-31;检索窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

数据中心产业动态:Data Center Dynamics 发布相关报道(原文标题:Lead or be regulated: Future-proofing data centers through responsible leadership)

摘要

发布时间:2026-05-31;检索窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

电力与能源约束观察:Data Center Dynamics 发布相关报道(原文标题:Meta's Andrew Rudersdorf joins…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

电力与能源约束观察:Data Center Dynamics 发布相关报道(原文标题:Meta's Andrew Rudersdorf joins Anthropic's data center energy team)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

电力与能源约束观察:Data Center Dynamics 发布相关报道,涉及 100MW(原文标题:UK's Reabold Resource…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:100MW;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

电力与能源约束观察:Data Center Dynamics 发布相关报道,涉及 100MW(原文标题:UK's Reabold Resources seeks partner for 100MW off-grid gas-powered data center in Yorkshire)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:100MW;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
100MW
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

智算中心/数据中心建设进展:Data Center Dynamics 发布相关报道(原文标题:Digital Edge tops out firs…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

智算中心/数据中心建设进展:Data Center Dynamics 发布相关报道(原文标题:Digital Edge tops out first data center at new campus outside Jakarta, Indonesia)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

电力与能源约束观察:Data Center Dynamics 发布相关报道,涉及 100MW(原文标题:Finland's Winda Energ…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:100MW;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

电力与能源约束观察:Data Center Dynamics 发布相关报道,涉及 100MW(原文标题:Finland's Winda Energy plans 100MW data center in Lapland industrial park)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:100MW;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
100MW
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

数据中心产业动态:Data Center Dynamics 发布相关报道(原文标题:Sabey backs out of proposal to …

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

数据中心产业动态:Data Center Dynamics 发布相关报道(原文标题:Sabey backs out of proposal to build data center in Butte, Montana)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

智算中心/数据中心建设进展:Data Center Dynamics 发布相关报道(原文标题:Riot Platforms files to ad…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

智算中心/数据中心建设进展:Data Center Dynamics 发布相关报道(原文标题:Riot Platforms files to add building to cryptomine and data center campus in Corsicana, Texas)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
产业 A

电力与能源约束观察:The Register 发布相关报道(原文标题:AI and data sovereignty in Postgres: A…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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产业A

电力与能源约束观察:The Register 发布相关报道(原文标题:AI and data sovereignty in Postgres: An answer to the datacenter energy crisis)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
The Register
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

The Register
技术 A

技术与产品进展:Data Center Dynamics 发布相关报道,涉及 5GW、€75bn(原文标题:SoftBank plans up t…

发布时间:2026-05-31;近 7 天补充观察,非 24 小时窗口内;可核验指标:5GW、€75bn;细节以来源原文为准,本页不复述未核验扩展信息

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技术A

技术与产品进展:Data Center Dynamics 发布相关报道,涉及 5GW、€75bn(原文标题:SoftBank plans up to 5GW data center buildout in France, investment of up to €75bn)

摘要

发布时间:2026-05-31;近 7 天补充观察,非 24 小时窗口内;可核验指标:5GW、€75bn;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
Schneider Electric
指标/金额
5GW、€75bn
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
技术 A

AI 算力基础设施动态:ServeTheHome 发布相关报道,涉及 300 GPU(原文标题:ASUS XA NB3I-E12 Review A…

发布时间:2026-05-31;近 7 天补充观察,非 24 小时窗口内;可核验指标:300 GPU;细节以来源原文为准,本页不复述未核验扩展信息

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技术A

AI 算力基础设施动态:ServeTheHome 发布相关报道,涉及 300 GPU(原文标题:ASUS XA NB3I-E12 Review A Massive 8x NVIDIA B300 GPU Server)

摘要

发布时间:2026-05-31;近 7 天补充观察,非 24 小时窗口内;可核验指标:300 GPU;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
NVIDIA
指标/金额
300 GPU
来源
ServeTheHome
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

ServeTheHome
技术 A

技术与产品进展:Data Center Knowledge 发布相关报道(原文标题:How the EPA’s New Rules Could S…

发布时间:2026-05-27;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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技术A

技术与产品进展:Data Center Knowledge 发布相关报道(原文标题:How the EPA’s New Rules Could Spark Backlash for Data Centers)

摘要

发布时间:2026-05-27;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Knowledge
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Knowledge
技术 A

技术与产品进展:Data Center Knowledge 发布相关报道,涉及 $4(原文标题:Modine’s $4B Deal Turns C…

发布时间:2026-05-27;近 7 天补充观察,非 24 小时窗口内;可核验指标:$4;细节以来源原文为准,本页不复述未核验扩展信息

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技术A

技术与产品进展:Data Center Knowledge 发布相关报道,涉及 $4(原文标题:Modine’s $4B Deal Turns Cooling Capacity into Reserved Infrastructure)

摘要

发布时间:2026-05-27;近 7 天补充观察,非 24 小时窗口内;可核验指标:$4;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
$4
来源
Data Center Knowledge
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Knowledge
政策 A

电力与能源约束观察:Data Center Dynamics 发布相关报道(原文标题:Japan’s data center industry w…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

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政策A

电力与能源约束观察:Data Center Dynamics 发布相关报道(原文标题:Japan’s data center industry will rise in prominence if we’re proactive)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
政策 A

电力与能源约束观察:Data Center Knowledge 发布相关报道(原文标题:Power and Permitting Are Redr…

发布时间:2026-05-28;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

展开全文
政策A

电力与能源约束观察:Data Center Knowledge 发布相关报道(原文标题:Power and Permitting Are Redrawing Europe’s Data Center Map)

摘要

发布时间:2026-05-28;近 7 天补充观察,非 24 小时窗口内;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
暂无可靠最新数据
来源
Data Center Knowledge
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Knowledge
投融资 A

投融资、财报或公司动态:Data Center Dynamics 发布相关报道,涉及 $283、45MW(原文标题:DDSP secures $2…

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:$283、45MW;细节以来源原文为准,本页不复述未核验扩展信息

展开全文
投融资A

投融资、财报或公司动态:Data Center Dynamics 发布相关报道,涉及 $283、45MW(原文标题:DDSP secures $283m financing for data center in Johor, Malaysia)

摘要

发布时间:2026-05-29;近 7 天补充观察,非 24 小时窗口内;可核验指标:$283、45MW;细节以来源原文为准,本页不复述未核验扩展信息

涉及主体
暂无可靠最新数据
指标/金额
$283、45MW
来源
Data Center Dynamics
解读提示

关键金额、规格、时间节点和订单影响需以原文或官方披露为准,本页不基于标题推断未披露信息。

Data Center Dynamics
视频 B

[WEBINAR] ASHRAE's 5th Edition of Thermal Guidelines: What's New and How …

Upsite Technologies · 检索词:ASHRAE data center cooling webinar。用于补充产业、产品或工程部署观察。

展开全文

[WEBINAR] ASHRAE's 5th Edition of Thermal Guidelines: What's New and How It Can Impact Your Facility

标准组织讲座 · Upsite Technologies · 检索词:ASHRAE data center cooling webinar

在 YouTube 打开
视频 B

Cooling Strategies for Data Center Design and Energy Efficiency with CFD …

SimScale · 检索词:ASHRAE data center cooling webinar。用于补充产业、产品或工程部署观察。

展开全文

Cooling Strategies for Data Center Design and Energy Efficiency with CFD (ASHRAE 90.4)

标准组织讲座 · SimScale · 检索词:ASHRAE data center cooling webinar

在 YouTube 打开
热度 B

产业热度指数 10/10

产业热度指数为 10/10:本期自动化检索记录到 23 条候选条目,指数按候选条目数量、来源可信度和栏目覆盖度保守计算。

展开全文
热度B

产业热度指数 10/10

详细内容

产业热度指数为 10/10:本期自动化检索记录到 23 条候选条目,指数按候选条目数量、来源可信度和栏目覆盖度保守计算。

4. 最新视频观察

Webinar: Data Centre Liquid Cooling Technology

专家讲座 · Park Place Technologies · 检索词:data center thermal management seminar

在 YouTube 打开

[WEBINAR] ASHRAE's 5th Edition of Thermal Guidelines: What's New and How It Can Impact Your Facility

标准组织讲座 · Upsite Technologies · 检索词:ASHRAE data center cooling webinar

在 YouTube 打开

Aftermovie Liquid Cooling Seminar Spain 2025

学术会议报告 · STULZ · 检索词:data center liquid cooling conference presentation

在 YouTube 打开

Collective Energy-Efficiency Approach to Data Center Networks Planning

学术讲座 · MyProjectBazaar · 检索词:IEEE data center energy efficiency lecture

在 YouTube 打开

Cooling Strategies for Data Center Design and Energy Efficiency with CFD (ASHRAE 90.4)

标准组织讲座 · SimScale · 检索词:ASHRAE data center cooling webinar

在 YouTube 打开

DLS with Keren Bergmann: Scaling Energy-Efficient AI Systems Performance with Photonic Connectivity

学术讲座 · MPI for the Science of Light · 检索词:IEEE data center energy efficiency lecture

在 YouTube 打开

Enhanced geothermal for AI data centers: Devilish or divine? | James F. Groves | TEDxChantilly HS

学术会议报告 · TEDx Talks · 检索词:AI data center energy conference keynote

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Powering the Future of AI: Clean Energy Meets Next-Gen Data Centers

学术会议报告 · Birch Capital · 检索词:AI data center energy conference keynote

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Data Center Dynamics Lead or be regulated: Future-proofing data centers through responsible leadership 可信度:A Data Center Dynamics SoftBank plans up to 5GW data center buildout in France, investment of up to €75bn 可信度:A Data Center Dynamics Meta's Andrew Rudersdorf joins Anthropic's data center energy team 可信度:A Data Center Dynamics UK's Reabold Resources seeks partner for 100MW off-grid gas-powered data center in Yorkshire 可信度:A Data Center Dynamics Digital Edge tops out first data center at new campus outside Jakarta, Indonesia 可信度:A Data Center Dynamics Finland's Winda Energy plans 100MW data center in Lapland industrial park 可信度:A Data Center Dynamics Japan’s data center industry will rise in prominence if we’re proactive 可信度:A Data Center Dynamics DDSP secures $283m financing for data center in Johor, Malaysia 可信度:A Data Center Dynamics Sabey backs out of proposal to build data center in Butte, Montana 可信度:A Data Center Dynamics Riot Platforms files to add building to cryptomine and data center campus in Corsicana, Texas 可信度:A The Register AI and data sovereignty in Postgres: An answer to the datacenter energy crisis 可信度:A The Register Europe told to cool its datacenter boom before water and power run short 可信度:A ServeTheHome ASUS XA NB3I-E12 Review A Massive 8x NVIDIA B300 GPU Server 可信度:A Data Center Knowledge Data Center Hardware Highlights: June 2026 可信度:A Data Center Knowledge The Breaking Points: Water Is the New Constraint for AI Data Centers 可信度:A Data Center Knowledge Why AI Infrastructure Is Moving Toward 800 VDC Power 可信度:A Data Center Knowledge Power and Permitting Are Redrawing Europe’s Data Center Map 可信度:A Data Center Knowledge How a Coal Plant in Buffalo Became TeraWulf’s 500 MW AI Campus 可信度:A Data Center Knowledge How the EPA’s New Rules Could Spark Backlash for Data Centers 可信度:A Data Center Knowledge Modine’s $4B Deal Turns Cooling Capacity into Reserved Infrastructure 可信度:A Data Center Knowledge Who Pays for AI’s Power Boom? North Carolina’s SB 730 Moves Forward 可信度:A Data Center Knowledge How Power Electronics Cut Generator Run Hours in AI-Scale Data Centers 可信度:A HPCwire Cadence and Samsung Foundry Deepen 2nm and 3D‑IC Collaboration 可信度:A arXiv Carbon-Aware Compute--Power Scheduling for AI Data Centers with Microgrid Prosumer Operations 可信度:S arXiv Limiting the Impact of AI Data Centers on Fatigue Life of Thermal Turbine Generators in the Grid: A Frequency-Domain Approach 可信度:S arXiv The Hidden Cost of Thinking: Energy Use and Environmental Impact of LMs Beyond Pretraining 可信度:S arXiv Grid Capacity Expansion under Data Centers and Electrified Manufacturing Large Loads 可信度:S arXiv GridPilot: Real-Time Grid-Responsive Control for AI Supercomputers 可信度:S arXiv Energy-Aware Computing in the Year 2026 可信度:S arXiv ScaleAcross Explorer: Exploring Communication Optimization for Scale-Across AI Model Training 可信度:S arXiv Co-Design Optimization for Data Center Cooling System via Digital Twin 可信度:S arXiv 计算机科学 https://arxiv.org/search/cs?query=data+center+cooling+liquid+thermal&searchtype=all 可信度:S NVIDIA 数据中心 https://www.nvidia.com/en-us/data-center/ 可信度:S 开放计算项目 OCP https://www.opencompute.org/ 可信度:S ASHRAE 技术资源 https://www.ashrae.org/technical-resources 可信度:S 工信部 https://www.miit.gov.cn/ 可信度:S 中国信通院 https://www.caict.ac.cn/ 可信度:S Data Center Dynamics https://www.datacenterdynamics.com/en/rss/ 可信度:A The Register https://www.theregister.com/headlines.atom 可信度:A ServeTheHome https://www.servethehome.com/feed/ 可信度:A Data Center Knowledge https://www.datacenterknowledge.com/rss.xml 可信度:A HPCwire https://www.hpcwire.com/feed/ 可信度:A NVIDIA Blog https://blogs.nvidia.com/feed/ 可信度:S