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

Apple Machine Learning Research
Apple Machine Learning Research
AWS News Blog
AWS News Blog
Google DeepMind News
Google DeepMind News
U
Unit 42
博客园 - 叶小钗
博客园 - 聂微东
GbyAI
GbyAI
Stack Overflow Blog
Stack Overflow Blog
有赞技术团队
有赞技术团队
aimingoo的专栏
aimingoo的专栏
D
DataBreaches.Net
CTFtime.org: upcoming CTF events
CTFtime.org: upcoming CTF events
Jina AI
Jina AI
美团技术团队
The Cloudflare Blog
M
MIT News - Artificial intelligence
Microsoft Azure Blog
Microsoft Azure Blog
I
InfoQ
S
Schneier on Security
C
Check Point Blog
Project Zero
Project Zero
The Hacker News
The Hacker News
Scott Helme
Scott Helme
K
KPMG report finds enterprise disconnect between AI and its ROI | CIO
Cisco Talos Blog
Cisco Talos Blog
P
Privacy International News Feed
SecWiki News
SecWiki News
Latest news
Latest news
MongoDB | Blog
MongoDB | Blog
S
Secure Thoughts
Google Online Security Blog
Google Online Security Blog
F
Fortinet All Blogs
博客园 - 三生石上(FineUI控件)
H
Help Net Security
TaoSecurity Blog
TaoSecurity Blog
cs.CL updates on arXiv.org
cs.CL updates on arXiv.org
Last Week in AI
Last Week in AI
P
Privacy & Cybersecurity Law Blog
Forbes - Security
Forbes - Security
G
GRAHAM CLULEY
N
Netflix TechBlog - Medium
L
Lohrmann on Cybersecurity
A
About on SuperTechFans
T
The Exploit Database - CXSecurity.com
C
Cisco Blogs
PCI Perspectives
PCI Perspectives
大猫的无限游戏
大猫的无限游戏
T
Troy Hunt's Blog
H
Hacker News: Front Page
Vercel News
Vercel News

Swift for Visual Studio Code comes to Open VSX Registry | InfoWorld

Notion courts developers with a platform for AI agents and workflow automation Using continuous purple teaming to protect fast-paced enterprise environments A better way to work with SQL Server Evidence-driven workflows: Rethinking enterprise process design AWS debuts Graviton-powered Redshift RG instances to cut analytics costs SAP’s AI promises last year? Most are still rolling out First look: Lemonade serves up local AI with limitations GitLab CEO sees developer tool bill increasing 100-fold Red Hat adds support for agentic AI development What’s new and exciting in JDK 26 Kill the loading spinner with local-first data and reactive SQL A networking revolution at AWS Tokenmaxxing is super dumb How to add AI to an existing product (without annoying users) Your AI doesn’t need another database What happens when engineering teams reorganize around AI agents Python isn’t always easy When cloud giants meddle in markets 12 model-level deep cuts to slash AI training costs The best new features in Python 3.15 Teradata launches platform for enterprise AI agents moving beyond pilots Three skills that matter when AI handles the coding MongoDB targets AI’s retrieval problem Building AI apps and agents with Microsoft Foundry Designing front-end systems for cloud failure No, AI won’t destroy software development jobs Diskless databases: What happens when storage isn’t the bottleneck Vibe coding or spec-driven development? The agentic AI distraction Vibe coding or spec-driven development? How to choose Cloud providers are blinded by agentic AI SAP to acquire data lakehouse vendor Dremio Small language models: Rethinking enterprise AI architecture Making AI work through eval hygiene Improving AI agents through better evaluations Running AI in the cloud is easy – and expensive Making AI work for databases Harness teams of agentic coders with Squad Harness teams of coding agents with Squad Oracle NetSuite announces AI coding skills for SuiteCloud developers Why it’s so hard to create stand-alone Python apps A new challenge for software product managers The hidden cost of front-end complexity GitHub shifts Copilot to usage-based billing, signaling a new cost model for enterprise AI tools OpenAI’s Symphony spec pushes coding agents from prompts to orchestration The front-end architecture trilemma: Reactivity vs. hypermedia vs. local-first apps Enterprise AI is missing the business core The best JavaScript certifications for getting hired Google begins putting the guardrails on agentic AI Why world models are AI’s next frontier Where to begin a cloud career Google pitches Agentic Data Cloud to help enterprises turn data into context for AI agents How open source ideals must expand for AI Is your Node.js project really secure? How I doubled my GPU efficiency without buying a single new card SpaceX secures option to acquire AI coding startup Cursor for $60B Google’s Gemma 4 shines on local systems – both big and small AI is upending the SaaS game How AI is upending SaaS tools Snowflake offers help to users and builders of AI agents From the engine room to the bridge: What the modern leadership shift means for architects like me Addressing the challenges of unstructured data governance for AI The cookbook for safe, powerful agents Enterprises are rethinking Kubernetes GitHub pauses new Copilot sign-ups as agentic AI strains infrastructure Best practices for building agentic systems Making agents dull Oracle delivers semantic search without LLMs When cloud giants neglect resilience Exciting Python features are on the way Ease into Azure Kubernetes Application Network The agent tier: Rethinking runtime architecture for context-driven enterprise workflows The two-pass compiler is back – this time, it’s fixing AI code generation MuleSoft Agent Fabric adds new ways to keep AI agents in line Salesforce launches Headless 360 to support agent‑first enterprise workflows Tap into the AI APIs of Google Chrome and Microsoft Edge Where will developer wisdom come from? GitHub adds Stacked PRs to speed complex code reviews The hyperscalers are pricing themselves out of AI workloads HTMX 4.0: Hypermedia finds a new gear Google Cloud introduces QueryData to help AI agents create reliable database queries Hands-on with the Google Agent Development Kit Are AI certifications worth the investment? AWS targets AI agent sprawl with new Bedrock Agent Registry Cloud degrees are moving online Swift for Visual Studio Code comes to Open VSX Registry AI agents aren't failing. The coordination layer is failing How Agile practices ensure quality in GenAI-assisted development Anthropic rolls out Claude Managed Agents Microsoft’s reauthentication snafu cuts off developers globally Meta’s Muse Spark: a smaller, faster AI model for broad app deployment Bringing databases and Kubernetes together Rethinking Angular forms: A state-first perspective Minimus Welcomes Yael Nardi as CBO to Facilitate Strategic Growth Microsoft announces end of support for ASP.NET Core 2.3 Get started with Python’s new frozendict type AWS turns its S3 storage service into a file system for AI agents Microsoft’s new Agent Governance Toolkit targets top OWASP risks for AI agents The winners and losers of AI coding GitHub Copilot CLI adds Rubber Duck review agent
AI in the cloud is easy but expensive
2026-05-01 · via Swift for Visual Studio Code comes to Open VSX Registry | InfoWorld

Let’s be honest about what’s happening in the market: Public cloud has become the easy button for AI. It offers immediate access to compute, storage, managed services, foundation model ecosystems, automation tools, and global reach. For enterprises that want to launch quickly, it is hard to argue against it. You do not need to spend years standing up infrastructure, hiring specialized operations teams, or engineering your own scalable environment before you can test your first use case.

This is exactly why adoption continues even as confidence in cloud resilience becomes more complicated. This article about the expanding cloud market makes the point clearly. Enterprises are not pulling back from hyperscale clouds despite numerous outages. They continue to move forward because the benefits of agility, scalability, and rapid deployment are too valuable to ignore. The cloud remains deeply embedded in business operations, and for many organizations, stepping away would undo years, often decades, of progress.

That is the essence of the easy button. The cloud removes the upfront burden of building and operating the heavy machinery yourself. It centralizes capability. It shortens the time to value. It gives executive teams a way to say yes to AI projects without first funding a long infrastructure transformation. For boards and CEOs under pressure to show AI progress now, that is an attractive proposition.

The economics are not as simple

What gets lost in the excitement is that convenience has a compounding cost structure. The same characteristics that make the public cloud attractive for AI also make it expensive to operate at scale. You pay not only for raw infrastructure but also for abstraction, acceleration, service layering, managed operations, premium tools, and the provider’s margin. As AI success grows, operating costs rise as well.

This matters because AI is not a single-application story. Enterprises rarely stop at a single model, pilot, or use case. They want dozens of solutions spanning customer service, software development, supply chain planning, security operations, analytics, and internal productivity. Every dollar committed to one expensive cloud-based AI workload is a dollar unavailable for the next. That is the strategic issue too many companies overlook.

The question isn’t whether cloud can run AI. Of course it can. In many cases, it is the fastest route to value. The more important question is whether long-term operational spending leaves enough room in the budget to build a portfolio of AI solutions rather than a few isolated wins. If the answer is no, the convenience premium starts to look less like acceleration and more like a constraint.

The operational trade-off

This issue is about something larger than outages. It’s about the economic behavior of hyperscalers and the operating assumptions enterprises are being trained to accept. Major providers are under constant pressure to control costs while expanding services. That means rushed releases, tighter operational budgets, more automation, and fewer deeply experienced engineers to provide oversight. Reliability shifts from an assumed baseline to something closer to good enough.

Azure is described as generating, testing, and deploying tens of thousands of lines of AI-generated code daily. That is not a trivial operating model. It reflects a platform in continuous expansion, becoming more opaque and harder to govern, even as enterprises place increasingly strategic workloads on top of it.

This should matter to AI buyers for two reasons. First, the “easy cloud” button becomes the “cloud dependency” button. You are not just consuming compute. You are tying your AI road map to a provider’s economic incentives, operational discipline, and willingness to prioritize resilience versus revenue expansion. Second, once the cloud becomes the default home for AI, enterprises are often forced to spend more on risk mitigation. Multiregion design, failover architecture, monitoring, governance, and vendor management all contribute to the real operating cost.

None of that means enterprises should abandon public cloud. Enterprises need to enter this partnership with their eyes open and understand that the easy button is rarely the cheap button.

Cloud providers will keep getting rich

The economic logic is straightforward. Providers know enterprises are unlikely to reverse course. Cloud is too embedded, too connected, and too central to ongoing modernization efforts. Outages create frustration, but usually not enough to trigger a mass exodus. The result is a market where providers can continue to expand AI services, attract more workloads, and increase revenue while customers absorb more of the operational burden.

That burden is not limited to compute and storage invoices. It includes the architecture required to withstand provider failures, the in-house talent needed to monitor complex environments, and the governance needed to control sprawl. Building with failure in mind is now a standard cost, not an avoidable exception. That is a profound shift, and enterprises should treat it as such.

The likely outcome is that cloud providers will continue to aggressively grow their AI revenue. Enterprises will continue to buy because the alternative is slower, harder, and often politically difficult within the organization. But that revenue growth will come at a cost to enterprise buyers, who may discover too late that an expensive AI operating model reduces the total number of AI bets they can afford to place.

The smarter path forward

Rather than adopt an anti-cloud strategy, enterprises need a selective cloud strategy. Use public cloud where speed, scale, and ecosystem access matter most. Be deliberate about which AI workloads deserve that premium and which might be better served over time by private cloud, hybrid architecture, or more controlled on-premises environments. Preserve optionality. Avoid treating the first convenient platform choice as a permanent architectural truth.

Always remember that AI success is not defined by how quickly you launch the first solution. It is defined by how many useful, sustainable, and economically rational solutions you can build over the next several years. Public clouds often look like (and could be) the right choice for AI workloads. However, enterprises that conflate ease with efficiency will fund cloud providers’ growth while limiting their ability to scale AI where it matters most. Look beyond the day when an AI workload goes live.