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Intel’s Rewrite Of Linux MM CID Code Showing Some Nice Gains For AMD
Posted last month were new Linux kernel scheduler-related patches rewriting the MM CID management code. The main takeaway for end-users from this set of 19 Linux kernel patches from an Intel engineer was seeing 14~18% improvement in a PostgreSQL database benchmark but that more benchmarks were needed. Curiosity got the best of me and I recently tested these patches on an AMD EPYC server to seeing some very enticing results for this in-development c … ⌘ Read more

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Intel’s Rewrite Of Linux MM CID Code Showing Some Nice Gains For AMD
Posted last month were new Linux kernel scheduler-related patches rewriting the MM CID management code. The main takeaway for end-users from this set of 19 Linux kernel patches from an Intel engineer was seeing 14~18% improvement in a PostgreSQL database benchmark but that more benchmarks were needed. Curiosity got the best of me and I recently tested these patches on an AMD EPYC server to seeing some very enticing results for this in-development c … ⌘ Read more

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Code-level telemetry instrumentation: From “oh hell no” to “worth it”
A platform engineer’s guide to developer buy-in Originally published on the author’s personal blog, whitneylee.com As platform engineers, we want the holistic system insights that instrumented code can give us –  yes, please. With code-level insights… ⌘ Read more

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In-reply-to » @bender Thanks for this illustration, it completely “misunderstood” everything I wrote and confidently spat out garbage. 👌

@prologic@twtxt.net Let’s go through it one by one. Here’s a wall of text that took me over 1.5 hours to write.

The criticism of AI as untrustworthy is a problem of misapplication, not capability.

This section says AI should not be treated as an authority. This is actually just what I said, except the AI phrased/framed it like it was a counter-argument.

The AI also said that users must develop “AI literacy”, again phrasing/framing it like a counter-argument. Well, that is also just what I said. I said you should treat AI output like a random blog and you should verify the sources, yadda yadda. That is “AI literacy”, isn’t it?

My text went one step further, though: I said that when you take this requirement of “AI literacy” into account, you basically end up with a fancy search engine, with extra overhead that costs time. The AI missed/ignored this in its reply.

Okay, so, the AI also said that you should use AI tools just for drafting and brainstorming. Granted, a very rough draft of something will probably be doable. But then you have to diligently verify every little detail of this draft – okay, fine, a draft is a draft, it’s fine if it contains errors. The thing is, though, that you really must do this verification. And I claim that many people will not do it, because AI outputs look sooooo convincing, they don’t feel like a draft that needs editing.

Can you, as an expert, still use an AI draft as a basis/foundation? Yeah, probably. But here’s the kicker: You did not create that draft. You were not involved in the “thought process” behind it. When you, a human being, make a draft, you often think something like: “Okay, I want to draw a picture of a landscape and there’s going to be a little house, but for now, I’ll just put in a rough sketch of the house and add the details later.” You are aware of what you left out. When the AI did the draft, you are not aware of what’s missing – even more so when every AI output already looks like a final product. For me, personally, this makes it much harder and slower to verify such a draft, and I mentioned this in my text.

Skill Erosion vs. Skill Evolution

You, @prologic@twtxt.net, also mentioned this in your car tyre example.

In my text, I gave two analogies: The gym analogy and the Google Translate analogy. Your car tyre example falls in the same category, but Gemini’s calculator example is different (and, again, gaslight-y, see below).

What I meant in my text: A person wants to be a programmer. To me, a programmer is a person who writes code, understands code, maintains code, writes documentation, and so on. In your example, a person who changes a car tyre would be a mechanic. Now, if you use AI to write the code and documentation for you, are you still a programmer? If you have no understanding of said code, are you a programmer? A person who does not know how to change a car tyre, is that still a mechanic?

No, you’re something else. You should not be hired as a programmer or a mechanic.

Yes, that is “skill evolution” – which is pretty much my point! But the AI framed it like a counter-argument. It didn’t understand my text.

(But what if that’s our future? What if all programming will look like that in some years? I claim: It’s not possible. If you don’t know how to program, then you don’t know how to read/understand code written by an AI. You are something else, but you’re not a programmer. It might be valid to be something else – but that wasn’t my point, my point was that you’re not a bloody programmer.)

Gemini’s calculator example is garbage, I think. Crunching numbers and doing mathematics (i.e., “complex problem-solving”) are two different things. Just because you now have a calculator, doesn’t mean it’ll free you up to do mathematical proofs or whatever.

What would have worked is this: Let’s say you’re an accountant and you sum up spendings. Without a calculator, this takes a lot of time and is error prone. But when you have one, you can work faster. But once again, there’s a little gaslight-y detail: A calculator is correct. Yes, it could have “bugs” (hello Intel FDIV), but its design actually properly calculates numbers. AI, on the other hand, does not understand a thing (our current AI, that is), it’s just a statistical model. So, this modified example (“accountant with a calculator”) would actually have to be phrased like this: Suppose there’s an accountant and you give her a magic box that spits out the correct result in, what, I don’t know, 70-90% of the time. The accountant couldn’t rely on this box now, could she? She’d either have to double-check everything or accept possibly wrong results. And that is how I feel like when I work with AI tools.

Gemini has no idea that its calculator example doesn’t make sense. It just spits out some generic “argument” that it picked up on some website.

3. The Technical and Legal Perspective (Scraping and Copyright)

The AI makes two points here. The first one, I might actually agree with (“bad bot behavior is not the fault of AI itself”).

The second point is, once again, gaslighting, because it is phrased/framed like a counter-argument. It implies that I said something which I didn’t. Like the AI, I said that you would have to adjust the copyright law! At the same time, the AI answer didn’t even question whether it’s okay to break the current law or not. It just said “lol yeah, change the laws”. (I wonder in what way the laws would have to be changed in the AI’s “opinion”, because some of these changes could kill some business opportunities – or the laws would have to have special AI clauses that only benefit the AI techbros. But I digress, that wasn’t part of Gemini’s answer.)

tl;dr

Except for one point, I don’t accept any of Gemini’s “criticism”. It didn’t pick up on lots of details, ignored arguments, and I can just instinctively tell that this thing does not understand anything it wrote (which is correct, it’s just a statistical model).

And it framed everything like a counter-argument, while actually repeating what I said. That’s gaslighting: When Alice says “the sky is blue” and Bob replies with “why do you say the sky is purple?!”

But it sure looks convincing, doesn’t it?

Never again

This took so much of my time. I won’t do this again. 😂

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Solar-powered PV PI HAT delivers continuous off-grid operation for Raspberry Pi projects
Kickstarter recently featured the PV PI, a solar charging HAT designed to power Raspberry Pi and other 5V single board computers from a 12V LiFePO4 battery. The add-on enables continuous 24/7 off-grid operation through MPPT-based solar charging and intelligent power management. Developed by Melbourne-based engineer Luke Ditria and his team at AutoEcology, the PV PI [ … ⌘ Read more

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Magika 1.0 Goes Stable As Google Rebuilds Its File Detection Tool In Rust
BrianFagioli writes: Google has released Magika 1.0, a stable version of its AI-based file type detection tool, and rebuilt the entire engine in Rust for speed and memory safety. The system now recognizes more than 200 file types, up from about 100, and is better at distinguishing look-alike formats such as JSON vs JSONL, TS … ⌘ Read more

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Servo ported to Redox
Redox keeps improving every month, and this past one is certainly a banger. The big news this past month is that Servo, the browser engine written in Rust, has been ported to Redox. It’s extremely spartan at the moment, and crashes when a second website is loaded, but it’s a promising start. It also just makes sense to have the premier Rust browser engine running on the premier Rust operating system. Htop and bottom have been ported to Redox for much improved system monitoring, and they’ … ⌘ Read more

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A New White-Collar Gig Economy: Training AI To Take Over
AI labs are paying skilled professionals hundreds of dollars per hour to train their models in specialized fields. Companies like Mercor, Surge AI, Scale AI and Turing recruit bankers, lawyers, engineers and doctors to improve the accuracy of AI systems in professional settings. Mercor advertises roles for medical secretaries, movie directors and private detectives at … ⌘ Read more

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Cloud Native Computing Foundation Announces Graduation of Crossplane
Graduation marks Crossplane’s readiness for widespread use and its evolution from a control plane framework to groundwork for intelligent, secure, and scalable cloud operations and platform engineering Key Highlights: SAN FRANCISCO, Calif. – November 6, 2025… ⌘ Read more

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Manufacturer Bricks Smart Vacuum After Engineer Blocks It From Collecting Data
A curious engineer discovered that his iLife A11 smart vacuum was remotely “killed” after he blocked it from sending data to the manufacturer’s servers. By reverse-engineering it with custom hardware and Python scripts, he managed to revive the device to run fully offline. Tom’s Hardware reports: An engineer got cu … ⌘ Read more

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NVIDIA Preparing For Hopper & Blackwell GPU Support With Open-Source Nova Driver
NVIDIA engineers continue working a lot on the open-source and upstream Nova driver for the Linux kernel. This modern, Rust-written open-source NVIDIA driver is still taking shape as an alternative to NVIDIA’s official downstream open-source driver and the aging and reverse-engineered Nouveau driver. Out on the horizon for Nova is Hopper and Blackwell GPU support… ⌘ Read more

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More Intel Crescent Island Enablement Prepped For Linux 6.19
Following Intel’s disclosure less than one month ago of Crescent Island as a upcoming Xe3P graphics card with 160GB of vRAM focused on enterprise-level AI inferencing, Intel’s open-source Linux graphics driver engineers have been quick to begin plumbing the Xe kernel graphics driver for this next-generation graphics card… ⌘ Read more

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In-reply-to » For the innocent bystanders (because I know that I won’t change @bender’s opinion):

@movq@www.uninformativ.de Gemini liked your opinion very much. Here is how it countered:

1. The User Perspective (Untrustworthiness)

The criticism of AI as untrustworthy is a problem of misapplication, not capability.

  • AI as a Force Multiplier: AI should be treated as a high-speed drafting and brainstorming tool, not an authority. For experts, it offers an immense speed gain, shifting the work from slow manual creation to fast critical editing and verification.
  • The Rise of AI Literacy: Users must develop a new skill—AI literacy—to critically evaluate and verify AI’s probabilistic output. This skill, along with improving citation features in AI tools, mitigates the “gaslighting” effect.
2. The Moral/Political Perspective (Skill Erosion)

The fear of skill loss is based on a misunderstanding of how technology changes the nature of work; it’s skill evolution, not erosion.

  • Shifting Focus to High-Level Skills: Just as the calculator shifted focus from manual math to complex problem-solving, AI shifts the focus from writing boilerplate code to architectural design and prompt engineering. It handles repetitive tasks, freeing humans for creative and complex challenges.
  • Accessibility and Empowerment: AI serves as a powerful democratizing tool, offering personalized tutoring and automation to people who lack deep expertise. While dependency is a risk, this accessibility empowers a wider segment of the population previously limited by skill barriers.
3. The Technical and Legal Perspective (Scraping and Copyright)

The legal and technical flaws are issues of governance and ethical practice, not reasons to reject the core technology.

  • Need for Better Bot Governance: Destructive scraping is a failure of ethical web behavior and can be solved with better bot identification, rate limits, and protocols (like enhanced robots.txt). The solution is to demand digital citizenship from AI companies, not to stop AI development.

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AMD Contributes BFloat16 Support To LLVM’s SPIR-V Target
AMD software engineers continue making interesting contributions to the LLVM compiler stack around SPIR-V as the IR used by Vulkan and other Khronos APIs… ⌘ Read more

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Linux 6.19 Will Finally Support Intel’s Adaptive Sharpness Filter “CASF” With Lunar Lake
Going all the way back to early 2024, Intel Linux engineers have been working on supporting an Adaptive Sharpening Filter new to Lunar Lake. While Lunar Lake later launched in September 2024, the Linux patches for this feature remained under review and discussion. Besides the Intel driver implementation itself for Lunar Lake and newer, it also ushers in a new DRM sharpness property to help standardize such functionality … ⌘ Read more

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Why CNCF TAGs are the core of cloud native innovation (and where to find them at KubeCon Atlanta)
KubeCon + CloudNativeCon North America 2025 is just around the corner in Atlanta. While you’re mapping out your schedule for co-located events like Observability Day and Platform Engineering Day, don’t forget to connect with the groups… ⌘ Read more

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Spotlight Can’t Find Local Files on Mac? A Fix & Workaround
A fair number of Mac users are experiencing a frustrating issue with the Spotlight search engine which seems to prevent Spotlight on the Mac from finding any local files at all. This Spotlight problem is not subtle, and when you’re experiencing it, Spotlight basically has no ability to find any local file, even if your … [Read More](https://osxdaily.com/2025/11/03/spotlight-cant-find-local-files-on-mac-a-fix … ⌘ Read more

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Radxa Rolls Out Dragon Q6A Featuring Qualcomm QCS6490, 12 TOPS NPU, and 6th-Gen AI Engine
Radxa has rolled out the Dragon Q6A, a compact single-board computer built on Qualcomm’s QCS6490 octa-core platform. Designed for industrial, IoT, and edge computing environments, the board combines high-performance CPU and GPU cores with integrated AI acceleration, multiple display interfaces, and flexible storage options. Similar to the RUBIK Pi 3, the Dragon Q6A in … ⌘ Read more

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AI Guide to the Galaxy: MCP Toolkit and Gateway, Explained
This is an abridged version of the interview we had in AI Guide to the Galaxy, where host Oleg Šelajev spoke with Jim Clark, Principal Software Engineer at Docker, to unpack Docker’s MCP Toolkit and MCP Gateway. TL;DR What they are: The MCP Toolkit helps you discover, run, and manage MCP servers; the MCP Gateway… ⌘ Read more

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‘Weaponised’ CAR T-cell therapy shows promise against solid tumours
So far, immune cells that have been engineered to kill cancers, known as CAR T-cells, haven’t worked well against solid cancers - but a study in mice suggests that could soon change ⌘ Read more

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Getting Started with Offload: Automating Everyday Workflows with Docker
Every developer eventually hits a wall with their local machine. Maybe it’s training an AI model that drains your CPU, compiling a massive codebase that makes your fan sound like a jet engine, or simply trying to run GPU workloads on a laptop that doesn’t have one. The result is the same: slow builds, limited… ⌘ Read more

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Docker Model Runner Meets Open WebUI: A Simpler Way to Run Local AI Models
Hi, I’m Sergei Shitikov - a Docker Captain and Lead Software Engineer living in Berlin. I’m focused on DevOps, developer experience, open source, and local AI tools. I created this extension to make it easier for anyone - even without a technical background - to get started with local LLMs using Docker Model Runner and… ⌘ Read more

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