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

B
Blog RSS Feed
P
Proofpoint News Feed
The GitHub Blog
The GitHub Blog
The Register - Security
The Register - Security
Recorded Future
Recorded Future
D
Docker
I
InfoQ
Recent Announcements
Recent Announcements
MongoDB | Blog
MongoDB | Blog
Microsoft Azure Blog
Microsoft Azure Blog
A
About on SuperTechFans
N
Netflix TechBlog - Medium
H
Hackread – Cybersecurity News, Data Breaches, AI and More
云风的 BLOG
云风的 BLOG
Spread Privacy
Spread Privacy
AWS News Blog
AWS News Blog
F
Full Disclosure
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
T
Threatpost
C
Cisco Blogs
P
Proofpoint News Feed
Google DeepMind News
Google DeepMind News
Security Latest
Security Latest
The Hacker News
The Hacker News
Microsoft Security Blog
Microsoft Security Blog
B
Blog
IT之家
IT之家
Latest news
Latest news
D
DataBreaches.Net
T
Tor Project blog
Scott Helme
Scott Helme
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
T
Threat Research - Cisco Blogs
博客园 - 司徒正美
S
SegmentFault 最新的问题
宝玉的分享
宝玉的分享
Project Zero
Project Zero
T
The Exploit Database - CXSecurity.com
P
Privacy International News Feed
Last Week in AI
Last Week in AI
C
CERT Recently Published Vulnerability Notes
WordPress大学
WordPress大学
博客园 - 【当耐特】
C
Cybersecurity and Infrastructure Security Agency CISA
G
GRAHAM CLULEY
小众软件
小众软件
让小产品的独立变现更简单 - ezindie.com
让小产品的独立变现更简单 - ezindie.com
博客园 - 聂微东
酷 壳 – CoolShell
酷 壳 – CoolShell
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More

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 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 AI in the cloud is easy but expensive 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
How are enterprises using cloud today?
by David Linthicum · 2026-05-29 · via Swift for Visual Studio Code comes to Open VSX Registry | InfoWorld

After 15 years of widespread cloud adoption, clear project categories have emerged, each with specific lessons that mean the difference between success and costly disappointment.

Over the past decade and a half, cloud computing has become a foundational technology. It started as a way to rent servers but has evolved into a complex ecosystem that supports everything from basic infrastructure shifts to transformative AI initiatives. Having advised enterprises on thousands of cloud projects over the years, I have seen that most projects fall into a handful of categories. I can say with certainty that success depends less on hype and more on understanding each project’s nature, risks, costs, and lessons.

Cloud migrations

Enterprises continue to migrate existing workloads from data centers to public, private, or hybrid environments. This can involve rehosting (lift and shift), replatforming with minor changes, or full refactoring into cloud-native architectures. The goal is usually cost reduction, scalability, or the end of hardware refresh cycles. The risks here are well documented. Many projects underestimate dependencies, leading to performance surprises or integration failures. Data egress fees and unexpected operational costs can wipe out projected savings.

Cost profiles vary widely. Initial migrations often run 20% to 50% over budget due to discovery gaps and testing. Ongoing expenses can decline through rightsizing and reserved instances, but poor management often leads to 25% to 35% waste from idle resources. These lessons underscore the importance of modeling the total cost of ownership up front, including people, training, and change management.

What we’ve learned: Pure lift-and-shift rarely delivers the promised ROI. Organizations that succeed treat migration as an opportunity for modernization rather than a simple move. Phased approaches with strong governance and finops practices minimize overruns, which have historically plagued most efforts.

Cloud-native applications

Teams build microservices, serverless functions, or containerized apps on platforms such as Kubernetes, AWS Lambda, or Azure Functions. This approach leverages elasticity, devops pipelines, and managed services to accelerate time to market.

Risks focus on architectural complexity and skills gaps. Overengineering with too many microservices creates operational nightmares, while underengineering leads to unscalable monoliths. Distributed systems need constant security vigilance. New apps often begin well but gain technical debt when teams prioritize features over observability and resilience. Entry costs are usage-based, which sounds attractive, but they often spike at scale due to poor design.

What we’ve learned: Based on my years of observation, successful teams embed cost awareness in CI/CD, use spot instances strategically, and design for observability from day one. Cloud-native development accelerates innovation when paired with disciplined architecture.

Business analytics projects

Enterprises are moving data lakes, data warehouses, and ETL processes to services such as Snowflake, BigQuery, or Redshift. Real-time analytics, dashboards, and predictive modeling become possible at scale. The primary risks are data gravity and quality issues. Moving petabytes is expensive and complex, while poor governance leads to compliance headaches or “garbage in, garbage out” results. Integrating with legacy systems often delays the realization of value.

What we’ve learned: Fifteen years later, we know that centralized data strategies outperform fragmented ones but only when paired with strong data mesh or data fabric approaches that respect domain ownership. Cost profiles include storage, compute for queries, and egress. Optimization through partitioning and materialized views pays off, but many organizations waste money on unused data. Lessons emphasize starting small with high-value use cases and building governance early rather than bolting it on later.

Artificial intelligence projects

Artificial intelligence and machine learning projects represent the current frontier of cloud. This includes training models, deploying inference endpoints, and integrating ML into applications. Managed services lower barriers, but custom needs often require GPU clusters or specialized hardware. Risks are significant: model drift, explainability issues, high compute demands, and ethical concerns. Many projects stall after the proof of concept because production deployment exposes scalability or cost issues. Managed AI offerings from providers help, but enterprises still struggle to integrate them into core business processes.

Costs run high, especially for training. Inference can be optimized, but it often dominates bills. What we have learned is that AI succeeds when treated as part of a broader cloud-native architecture, not as a standalone science project. Hybrid approaches and cost controls are essential.

Generative AI projects focus on large language models, image generation, code assistants, and custom agents using services like Bedrock, OpenAI integrations, or fine-tuned open source models. Enterprises are experimenting with retrieval-augmented generation for grounded responses and agentic workflows. Risks include hallucinations, data privacy leaks, intellectual property issues, and runaway token costs. Many early adopters built impressive demos only to face governance and compliance walls in production.

What we’ve learned: After observing the wave, the lessons are clear. Start with narrow, high-value use cases and layer in strong prompting, evaluation, and human oversight frameworks. Cost profiles are usage-driven and can escalate quickly with volume. Optimization through caching, smaller models, and hybrid on-prem inference helps. Generative AI delivers ROI fastest when embedded in existing workflows rather than used as standalone tools.

Other project types

Modernization of legacy mainframe or monolithic applications falls between migration and new development. Internet of Things (IoT) initiatives use the cloud for device management and edge analytics. Disaster recovery and backup projects leverage the cloud to improve resilience. Edge computing projects move processing closer to users or devices. Compliance-focused sovereign cloud deployments address data residency requirements. Finally, sustainability initiatives focus on reducing carbon footprints by implementing efficient architectures.

What we’ve learned: Each approach carries tailored risks and cost dynamics. Modernization often uncovers hidden dependencies. IoT requires reliable connectivity. Edge computing introduces latency considerations. Lessons across all types highlight the value of multicloud strategies for negotiation leverage and risk diversification, though they increase complexity.

Common themes

Most projects do not fail because of technology itself but from inadequate planning, cultural resistance, or neglect of operational realities. Cost overruns are often caused by the absence of strict finops discipline. Security and compliance issues remain ongoing and require integrated design considerations. Skills shortages hinder progress, which makes managed services appealing despite concerns about vendor lock-in.

Successful cloud stories share common traits: strong executive sponsorship, iterative delivery, cross-functional teams, and continuous optimization. Enterprises that treat the cloud as a business transformation rather than an IT project perform best. They measure outcomes using business metrics, such as revenue impact, customer satisfaction, and speed to market—not just uptime or instance counts.

The cloud landscape continues to evolve as capacity markets, neoclouds, and AI-driven operations offer new options. Yet cloud fundamentals endure. Choose the right project type for your cloud maturity and goals. Understand risks thoroughly. Model costs realistically. Apply lessons from the thousands of cloud deployments that came before.

My advice sounds simple, but it will determine which cloud projects and enterprises will thrive in the next decade of cloud computing. Those who chase hype without discipline will only become another cautionary tale.