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

TaoSecurity Blog
TaoSecurity Blog
L
LINUX DO - 最新话题
Help Net Security
Help Net Security
N
News | PayPal Newsroom
www.infosecurity-magazine.com
www.infosecurity-magazine.com
cs.AI updates on arXiv.org
cs.AI updates on arXiv.org
The Last Watchdog
The Last Watchdog
S
Security @ Cisco Blogs
W
WeLiveSecurity
C
CXSECURITY Database RSS Feed - CXSecurity.com
Webroot Blog
Webroot Blog
T
Troy Hunt's Blog
V
Vulnerabilities – Threatpost
Google Online Security Blog
Google Online Security Blog
N
News and Events Feed by Topic
T
Threat Research - Cisco Blogs
Security Archives - TechRepublic
Security Archives - TechRepublic
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
Tor Project blog
freeCodeCamp Programming Tutorials: Python, JavaScript, Git & More
D
Darknet – Hacking Tools, Hacker News & Cyber Security
PCI Perspectives
PCI Perspectives
Google DeepMind News
Google DeepMind News
T
Tailwind CSS Blog
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
Apple Machine Learning Research
Apple Machine Learning Research
IT之家
IT之家
S
SegmentFault 最新的问题
J
Java Code Geeks
P
Privacy & Cybersecurity Law Blog
Threat Intelligence Blog | Flashpoint
Threat Intelligence Blog | Flashpoint
博客园 - 【当耐特】
博客园_首页
H
Hacker News: Front Page
T
Threatpost
Jina AI
Jina AI
博客园 - Franky
月光博客
月光博客
L
LINUX DO - 热门话题
The Cloudflare Blog
H
Heimdal Security Blog
博客园 - 司徒正美
酷 壳 – CoolShell
酷 壳 – CoolShell
Cloudbric
Cloudbric
雷峰网
雷峰网
Hugging Face - Blog
Hugging Face - Blog
S
Secure Thoughts
T
Tenable Blog
I
Intezer
OSCHINA 社区最新新闻
OSCHINA 社区最新新闻

The New Stack | DevOps, Open Source, and Cloud Native News

Agentic development hinges on verification. For cloud-native software, that is a runtime problem. AI agents need infrastructure: Why Europe’s regional cloud strategy matters Transform your AI coding agent into a deterministic Java Spring expert WeAreDevelopers is coming to the US to give unsung developers a bigger voice Cleaner AI training data, fewer bugs: Sonar’s SonarSweep explained Observability overload is drowning engineers Google’s DiffusionGemma is 4x faster than its other Gemma models Fable 5: Guardrails and burn rate are annoying users, who say it’s still better than Opus 4.8 The Anthropic leader who built Claude Code says he ditched prompting — now he just writes loops. AWS can now mathematically prove your VMs are isolated Microsoft pulled 73 GitHub repos after malware attack — but still won’t say who’s compromised Databricks wants to kill the “email me a file” problem for AI agent skills Ramp bets forward deployed engineers can do what off-the-shelf finance AI can’t Git real: AI agents aren’t just for solo developers anymore Anthropic launches Claude Mythos/Fable 5, but you better try it soon Spring is 23 years old. AI just made it a security emergency. This AI agent startup ditched Anthropic for DeepSeek — and says it’s saving millions When your data model is the bottleneck: lessons from Medium’s feature store How long before we stop reading the code? The tokenmaxxing party is over, and Revenium is mopping up How AI is solving the memory crunch it created Microsoft’s pitch to enterprises: Ditch Azure Repos for GitHub, despite its rocky reliability record Claude Code’s biggest upgrade yet ran 5 agents at once — here’s what happened Why Anthropic just doubled Claude Cowork limits at no charge For years, Apache Cassandra handed this work to your team — 6.0 takes it back “A dangerous combination”: The 2 factors that can “corrupt” AI agent workflows With Foundry, Microsoft bets the enterprise AI battle is about reliability, not capability Microsoft unlocks Visual Studio for developers left behind by its own AI AI teams now deploy 1,000 times a month. Your pipeline wasn’t built for that. Microsoft just made the agent runtime free — and kept everything around it “Whoever builds the most joyous product wins”: The agent war begins Netlify CTO Dana Lawson: Writing code is no longer the job From Jupyter Notebook to production: How to ship AI systems that actually work OpenClaw used Gavriel Cohen’s code and exposed the AI Agent accountability problem Replit shows how vibe coding is getting its own financial stack — and a path to profit Cloudflare aqui-hires VoidZero: Did a piece of the open web just stabilize, or become more brittle? Cursor cuts prices and adds enterprise spend controls amid “tokenomics” reckoning Google Gemma 4 12B nearly matches 26B benchmarks — and runs on your laptop Snowflake thinks it knows what’s really slowing developers down Autonomous agents have met their biggest challenge yet: The database. Why agentic AI makes the ops platform the most important layer in the enterprise How to dramatically improve enterprise security alert tuning to battle cyberattacks Why the need for humans won’t disappear in the age of autonomous databases How to secure Kubernetes in the age of AI workloads Asana says its new AI “chief of staff” turns your Slack chaos into trackable work Nvidia’s best model is now live Mate Security’s Asaf Wiener made every backend engineer a model router. He’s right to. The AI cost crisis finally has a watchdog — just not the companies causing it How to get operational data off the factory floor without creating an IT breach Why CPUs still matter in the age of AI agents Rayfin: Microsoft’s answer to the gap between vibe coding and enterprise production Microsoft bets the enterprise AI race will be won on data context, not model power “A successful attack could be catastrophic”: Anthropic gives more groups access to Claude Mythos How GitHub plans to win developers back Microsoft really, really, really wants developers to love Windows again With Intelligent Terminal, Microsoft is reinventing the Windows terminal Microsoft debuts “Scout” at Build, a new personal agent for work OpenAI’s Codex adds new tools — Sites, Annotations, more plugins — for knowledge workers GitHub Copilot’s usage-based billing is live: Here’s what you need to know OpenAI, Anthropic, Google, Amazon, and xAI all fail on type of attack, study finds JetBrains open-sources Mellum2 to go where Claude Code can’t Claude Code vs. Cursor vs. Codex vs. Antigravity — six months in This coding agent doesn’t want your feedback — it ships without it “Blowing things up”: The one move vendors got wrong on AI agents At Sapphire, SAP makes the case that enterprise AI is a context problem Gavriel Cohen found his own code inside OpenClaw, so he walked away AI retrieval at scale is becoming a systems problem, not a tooling problem The DIY platform trap that’s burning out engineering teams I tested Cursor’s new Jira integration and it’s 5 stars, no notes. Here’s why. Why GPT-5.4, Claude, and Gemini can’t agree on basic, real-world facts Replit’s vibe coding platform just got a Visa-backed identity layer for AI agents — and it changes how agents spend money Opus 4.8 Made Claude Smarter. Token Discipline Got Urgent. Vendor neutrality isn’t magic: A hard look at the OpenTelemetry ecosystem “The AI did it” won’t save you when EU regulators come knocking The fix for soaring AI cloud bills exists — so why won’t we trust it? AI is shipping code faster than security was built to handle Why AWS scrapped OpenSearch’s architecture to chase agent workloads Claude Opus 4.8 is here: effort controls, dynamic workflows, cheaper fast mode, better honesty, less deception Percona celebrates 20th birthday with new foundation — and a goat cake Why OpenAI and Anthropic are hiring forward deployed engineer teams Claw-style AI agents are coming to the enterprise. The governance infrastructure is still catching up. The agentic identity crisis: Why your security isn’t ready for the AI revolution Debugging the undebuggable: building observability into probabilistic AI systems Snowflake commits $6B to AWS as it pushes deeper into AI Why MotherDuck refuses to fork DuckDB Researcher “gave Claude Code ‘ADHD’… and it thinks 2x better now.” Outside experts want more proof. “There is no accountability”: AI coding agents are installing packages no one owns “Tokenmaxxing is real, expensive & it’s spreading”: AI budgets are exploding With Google’s debut, the most important AI agent feature is now the most boring one Why AI agents need a Context Lake Google ranks the best AI for building Android apps, and the winner isn’t Gemini Google pushes Pro, Ultra, and free users from open-source Gemini CLI to closed-source Antigravity CLI The reason enterprise outages almost never start where ops teams think Taming the agentic influx: a blueprint for AI business observability How the AC/DC framework helps teams govern AI coding agents GitLab 19.0 trades its string section for a full DevSecOps orchestra Who’s monitoring the agents? How Jaeger hit 8.6× compression on 10 million spans with ClickHouse What ClickHouse learned from a year of coding with AI agents OpenClaw passed 300,000 GitHub stars. Then Google launched Spark.
Why Linux creator Linus Torvalds gets angry hearing “99% of code is AI”
B. Cameron Gain · 2026-05-29 · via The New Stack | DevOps, Open Source, and Cloud Native News

During his keynote at the recent Open Source Summit North America, Linux and Git creator Linus Torvalds did not mince words about those who contend AI will remove the need for human programmers. 

Instead of AI “replacing” programming, Torvalds told the audience gathered in Minneapolis that AI boosts productivity in the same way that past technological revolutions did.

Programmers will ultimately use AI to generate the source code, which compilers then turn into machine code. However, to build serious projects intended to last decades, developers must deeply understand the generated code and the system architecture, not just the prompts, he clarified.  

“AI is a great new tool, but it’s a tool, and when I see people saying, ‘Hey, 99% of our code is written by AI,’ I literally get angry, because those same people — I can pretty much guarantee — that 100% of their code is written by compilers. But they never say that.”

“When I see people saying, ‘Hey, 99% of our code is written by AI, I literally get angry”

From the perspective of a long-time open-source maintainer — the first maintainer of Linux, as its creator — Torvalds views AI as a significant, high-productivity tool, similar to the historical shift from machine code to assemblers and compilers.

Torvalds dismissed the idea that AI might one day “replace” programming, arguing instead that it boosts productivity, much like past revolutions in software development. Torvalds emphasized that true software engineering requires, in the immediate future, human understanding of the underlying systems, not just the ability to write AI prompts.

“I’m 100% convinced that AI is changing programming, but it’s not changing the fun.”

Programmers will ultimately use AI to generate the source code, which compilers then turn into machine code.  “I’m 100% convinced that AI is changing programming, but it’s not changing the fun,” Torvalds said. 

As Torvalds mentioned during his keynote, he initially began programming by working with the bare-number machine language in the pre-assembly days. Then assembly languages came into play, and higher-level languages like Fortran, which used compilers, came along. And then, with compilers, productivity actually increased dramatically for basic programming.

AI can increase productivity by a factor of 10, but another way to look at it, according to Torvalds, is that AI-assisted productivity for programming is 10 times less than the productivity gains compilers offer. This assertion is based on Torvalds’ calculation of how compilers have boosted programming by 1,000-fold.  

“People who don’t understand the complexity of systems will also prompt systems and write processes that will fail. So,  I think you do want to understand how it all works.”

“People who know what they’re doing to understand systems will be able to prompt tools to write good code,” Torvalds said. “People who don’t understand the complexity of systems will also prompt systems and write processes that will fail. So,  I think you do want to understand how it all works.”

The immediate dilemma of AI-generated code in open-source projects is the explosion of AI-generated pull requests, often containing bugs that AI tools have found. The people power required to assess and then merge these fixes as commits has been doable for the Linux project for now, thanks to its resources. However, for those thousands of projects that lack resources, many cannot keep up the pace. 

“Of all the projects that people maintain that are not the Linux kernel, that maybe is somebody’s head project that they’ve been working on for a decade or more, and they have only one person or three people [to patch bugs and create fixes], they get really burned out,” Torvalds said.

While AI helps identify deep-seated bugs in aging codebases, it also introduces a social burden: “Drive-by” AI bug reports that lack follow-up, causing maintainer burnout, Torvalds said. 

Torvalds noted that the Linux project has over 35 years of legacy code and that AI is successfully finding hidden issues. However, it takes extensive time for maintainers to sift through those, Torvalds said. 

Credit: The New Stack

“Sometimes, obviously, AI reports a bug, and when you ask for more information, the person has done that drive-by and doesn’t even answer your question,” Torvalds said. ”So, that’s the real burnout issue.”

Additionally, some tech companies invest in making a name for themselves by using AI to flag bugs for media attention — without providing the necessary code patches. “These companies enjoy spending a lot of money and a lot of tokens on pointing out the above, and strangely, none of these came with a patch, even though all of these were in open source code,” Torvalds asserted. “It’s all very good when AI finds a bug in any source code in the short term, but if AI finds issues that we did not find, it’s going to take us some time to just work through the new issues.”

“It’s all very good when AI finds a bug in any source code in the short term, but if AI finds issues that we did not find, it’s going to take us some time to just work through the new issues.”

The project maintainers saw a surge in pull requests ahead of the 7.1 release, resulting in more commits during preparation than in any previous release. However, it became apparent that the surge in pull requests was due to AI use rather than increased interest in the new release, as Torvalds initially thought.  

Still, as he noted, contributing to the kernel is a good thing with AI, and that very difficult process has been largely supported and, in many cases, augmented with AI tools. As he noted, there was a roughly 20% increase in submissions overall with the current Linux kernel release.

During the Q&A, Torvalds was asked which AI tools the Linux project maintainers use to review pull requests and vulnerability reports, to which he replied, “Sashiko.” However, even with that tool, humans must still maintain and review the implementation or proposed fixes, which still requires a significant amount of manpower across the project.

That said, given the number of layoffs in the tech sector, the actual act of programming itself is changing, but humans, at least in the near- to mid-term, will still require significant expertise and remain in demand.

YOUTUBE.COM/THENEWSTACK

Tech moves fast, don't miss an episode. Subscribe to our YouTube channel to stream all our podcasts, interviews, demos, and more.

Created with Sketch.