惯性聚合 高效追踪和阅读你感兴趣的博客、新闻、科技资讯
阅读原文 在惯性聚合中打开

推荐订阅源

GbyAI
GbyAI
Simon Willison's Weblog
Simon Willison's Weblog
Microsoft Security Blog
Microsoft Security Blog
Y
Y Combinator Blog
The GitHub Blog
The GitHub Blog
Engineering at Meta
Engineering at Meta
F
Fortinet All Blogs
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻
A
About on SuperTechFans
Last Week in AI
Last Week in AI
月光博客
月光博客
有赞技术团队
有赞技术团队
P
Proofpoint News Feed
MyScale Blog
MyScale Blog
Martin Fowler
Martin Fowler
钛媒体:引领未来商业与生活新知
钛媒体:引领未来商业与生活新知
C
Check Point Blog
U
Unit 42
The Register - Security
The Register - Security
奇客Solidot–传递最新科技情报
奇客Solidot–传递最新科技情报
Cyber Security Advisories - MS-ISAC
Cyber Security Advisories - MS-ISAC
Hugging Face - Blog
Hugging Face - Blog
阮一峰的网络日志
阮一峰的网络日志
V
Visual Studio Blog
酷 壳 – CoolShell
酷 壳 – CoolShell
D
DataBreaches.Net
WordPress大学
WordPress大学
aimingoo的专栏
aimingoo的专栏
H
Hacker News: Front Page
Recent Announcements
Recent Announcements
C
CXSECURITY Database RSS Feed - CXSecurity.com
Latest news
Latest news
小众软件
小众软件
P
Palo Alto Networks Blog
PCI Perspectives
PCI Perspectives
Security Latest
Security Latest
S
Secure Thoughts
Scott Helme
Scott Helme
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
T
Threat Research - Cisco Blogs
P
Proofpoint News Feed
M
MIT News - Artificial intelligence
Application and Cybersecurity Blog
Application and Cybersecurity Blog
Google DeepMind News
Google DeepMind News
Recorded Future
Recorded Future
O
OpenAI News
S
Securelist
云风的 BLOG
云风的 BLOG
H
Help Net Security
T
Troy Hunt's Blog

Computerworld

Microsoft 365: A guide to the updates Windows 11 Insider Previews: What’s in the latest build? Windows 11: A guide to the updates Ask Jeeves bites the dust Apple can't make chips fast enough, but that's only part of the story AI-led job cuts don’t always mean stronger ROI — Gartner Microsoft, Google push AI agent governance into enterprise IT mainstream Microsoft now has more than 20M paying Copilot users AI is more accurate than doctors in emergency diagnoses — study Start small, but start now: How to bring AI into your small business Apple is preparing to spend, but not necessarily on AI 10 quick productivity tips for Microsoft 365 mobile apps Relying on LLMs is nearly impossible when AI vendors keep changing things Apple breaks records, admits it can’t make Macs fast enough Spotlight report: Transforming software development with AI - Whitepaper Repository - 25 great uses for an old Android device AI chatbots need ‘deception mode’ Friendlier chatbots can be less reliable, study says Gartner sees untamed growth in agentic AI Apple reportedly abandons Vision Pro AI venture funding to shoot up this year as bubble looms Scaling up a tech startup in Europe is hard — 'EU Inc.' aims to help Apple will be behind on AI — until it isn’t EU lawmakers fail to agree on watered-down AI Act, talks pushed to May Android reminders, reinvented Who’s the better CEO, Apple’s Tim Cook or Microsoft’s Satya Nadella? AWS unveils trio of key AI strategy announcements SAS makes AI governance the centerpiece of its agent strategy Can Apple’s new CEO turn things around? Fleet hopes to be the MDM provider for the AI Era Why simplicity is the silent driver of hybrid workplace success Why security matters in the meeting room Can everyday IT decisions turn sustainability from intent into impact? Why the meeting room has become the true test of hybrid work Why smart meeting rooms are becoming strategic IT assets How collaboration technology defines the next phase of hybrid work Microsoft, OpenAI change contract terms–again OpenAI plans its own ‘iPhone killer’ Your AI strategy is all wrong Agent Mode is now available in Microsoft Word, Excel, and PowerPoint Adobe bets on AI agents to stay at the center of marketing workflows Microsoft to offer voluntary retirement buyouts to about 7% of the US workforce Google Keep cheat sheet: How to get started The AI workplace paradox: Higher productivity, higher anxiety Gartner: Global IT spending to grow by 13.5% this year Apple may be the only laptop vendor to grow in 2026 Tim Cook’s legacy: a successful CEO who stumbled over AI Google Chat becomes an agent interface for Workspace Gemini Enterprise update brings AI agents into collaborative workflows Meta to track employee keystrokes, screen activity to train AI agents The smartest ways to sync your Android and computer clipboards Microsoft trims cloud desktop pricing, even as it boosts AI costs Adobe builds an ‘agentic content supply chain’ for the AI era You can now test and compare AI models on LinkedIn With John Ternus as CEO, expect Apple’s platforms to proliferate Apple CEO Tim Cook stepping down, to be replaced by John Ternus Global RAM shortage appears set to continue through 2027 Is this where Apple Silicon will be in 5 years? AI-ready skills are not what you think World ID expands its ‘proof of human’ vision for the AI era Microsoft's Patch Tuesday updates: Keeping up with the latest fixes Microsoft’s Patch Tuesday release for April is a whopper Robot Zuckerberg shows how IT can free up CEOs’ time UK wants to build sovereign AI — with just 0.08% of OpenAI’s market cap 20 tricks for more efficient Android messaging AI is finally delivering productivity — for remote employees Google should share search data to break its monopoly, European Commission suggests How to think about Apple Business Microsoft Teams cheat sheet: How to get started Reporter’s notebook: In Nepal and Sri Lanka, AI boom brings hope How to create your own custom Android air gesture Can Microsoft really meet its carbon-negative goal by 2030? About the Best Places to Work in IT Microsoft to cut Windows 365 price for SMBs Blancco confirms Mac adoption is accelerating Apple devices’ satellite link is under new ownership IBM’s government DEI settlement could increase pressure to avoid tech hiring diversity Microsoft is developing Copilot features inspired by Openclaw Global RAM shortage prompts Microsoft to hike Surface prices Apple Business rolls out to 200+ countries today Windows 10: A guide to the updates Nvidia’s Stephen Jones on the toolkit powering GPUs: ‘A wild ride’ The French government eyes alternatives to Windows Apple preps for the face race How to build your own AI agents with Google Workspace Studio Adobe Summit 2026: How Adobe hopes to redesign marketing and creativity with AI DARPA wants to help AI agents to talk to one another Apple unveiled a new high-end market opportunity this week Microsoft adds hidden feature flags to Windows Insider builds Meta moves fast toward a world where AI builds the software PC sales rise in Q1 despite memory shortage — IDC Agentic AI – Ongoing coverage of its impact on the enterprise Google’s new AI app is a glimpse of the future This problem might not need a solution: customer-service bots that code for free Chrome, Vivaldi, and the challenge of changing browsers The new M5-based MacBook Air is built to last — and perform Apple worst, Asus best for laptop repairability US court refuses to stay Pentagon’s ‘supply-chain risk’ blacklisting of Anthropic The top priority for Adobe’s next CEO? Prepping for the ‘age of agents’ It's iPhone speculation time: flips, flaps — and Fold
Enterprises need to think beyond GPUs for agentic AI, analysts say
2026-04-29 · via Computerworld

The ongoing shift from generative AI (genAI) to agentic AI provides an opportunity for enterprises to move to more nimble and less expensive forms of computing, according to analysts.

Early AI models were largely built on expensive GPUs from Nvidia and AMD that offered raw processing power. But newer agentic AI tools, rooted in business process and workflow management, can run on more efficient, cost-effective hardware.

As a result, IT decision-makers who still think they require GPUs for anything AI-related need to reconsider their hardware options in terms of both cost and capabilities, analysts said.

“A better way of thinking about this is the cost of AI compute and now agentic AI platform services or systems,” said Leonard Lee, principal analyst at Next Curve. “’AI computing’ or ‘accelerated computing’ has clearly transcended the GPU as an inference accelerator.”

The new hardware options include CPUs and specialized AI chips, also known as ASICs in semiconductor parlance. Although these chips have been around for years, they are now showing real utility as agentic AI goes mainstream.

For one, the CPU — the main chip in any computer — is seeing something of a revival. “The CPU is reinserting itself as the indispensable foundation of the AI era. The CPU now serves as the orchestration layer and critical control plane for the entire AI stack,” Lee said.

CPUs are both power efficient and well-suited for AI on the edge, although specialized low-power chips are more capable depending on the task, said Jim McGregor, principal analyst at Tirias Research. “It will still be more efficient to use an ASIC instead of a CPU, and in most cases it will be less expensive over the life of a platform,” he said.

The growth of inference provides an opening for optimized AI accelerators, which can handle those jobs more efficiently than GPUs, said Mike Feibus, principal analyst at FeibusTech. “…The relative importance of [the] CPU is rising.”

Nvidia — sensing that it needed a low-power chip beyond its power-hungry GPUs — has already introduced an ASIC for inferencing in its hardware stack. And it recently licensed AI chip technology from Groq for $20 billion.

Because Agentic AI involves a different computing model than genAI training on GPUs, enterprises need to consider the hardware options and pricing models available through cloud providers. “It’s more about model management than about model building — and the CPU is critical in providing workflow management,” said Jack Gold, principal analyst at J. Gold Associates.

Pricing variations continue to be an issue. Straight CPU compute is not billed the same as heavy GPU use, making it difficult to nail down costs, Gold said. “GPUs in training use more electricity generically due to near 100% utilization in a training workload, whereas in general-purpose compute, servers and CPUs run more like 40% to 60% utilization,” he said. “But it’s highly variable depending on what the agent is doing.”

Gold predicts that 80% to 85% of AI workloads will move to inference in the next two to three years, especially as tools become more agentic. “CPUs take on a major significance in making everything work. It’s why all the hyperscalers are now loading up on CPUs, not just GPUs,” Gold said.

Major cloud providers Google, Amazon and Microsoft , for instance, have their own CPUs and low-power ASICs for inferencing.

What looks at the moment like a resurgence in CPU demand is actually pointing to a larger issue: the growing complexity of AI infrastructure, said Gaurav Shah, vice president of business development and strategic partnerships at NeuReality.

The overhead around data movement, orchestration and networking is exploding, Shah said. “That’s what’s driving demand — not CPUs doing more AI, but systems struggling to keep up with AI,” Shah said.

Beyond enterprises, genAI companies, AI-native companies and neoclouds all will need to rethink their architecture. “The winners will be the architectures that deliver the most inference per watt, not the most cores per server,” Shah said.

SUBSCRIBE TO OUR NEWSLETTER

From our editors straight to your inbox

Get started by entering your email address below.