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The Janitor on Mars

https://www.newyorker.com/magazine/1998/10/26/the-janitor-on-mars
1•evo_9•1m ago•0 comments

Bringing Polars to .NET

https://github.com/ErrorLSC/Polars.NET
2•CurtHagenlocher•2m ago•0 comments

Adventures in Guix Packaging

https://nemin.hu/guix-packaging.html
1•todsacerdoti•4m ago•0 comments

Show HN: We had 20 Claude terminals open, so we built Orcha

1•buildingwdavid•4m ago•0 comments

Your Best Thinking Is Wasted on the Wrong Decisions

https://www.iankduncan.com/engineering/2026-02-07-your-best-thinking-is-wasted-on-the-wrong-decis...
1•iand675•4m ago•0 comments

Warcraftcn/UI – UI component library inspired by classic Warcraft III aesthetics

https://www.warcraftcn.com/
1•vyrotek•5m ago•0 comments

Trump Vodka Becomes Available for Pre-Orders

https://www.forbes.com/sites/kirkogunrinde/2025/12/01/trump-vodka-becomes-available-for-pre-order...
1•stopbulying•6m ago•0 comments

Velocity of Money

https://en.wikipedia.org/wiki/Velocity_of_money
1•gurjeet•9m ago•0 comments

Stop building automations. Start running your business

https://www.fluxtopus.com/automate-your-business
1•valboa•13m ago•1 comments

You can't QA your way to the frontier

https://www.scorecard.io/blog/you-cant-qa-your-way-to-the-frontier
1•gk1•14m ago•0 comments

Show HN: PalettePoint – AI color palette generator from text or images

https://palettepoint.com
1•latentio•15m ago•0 comments

Robust and Interactable World Models in Computer Vision [video]

https://www.youtube.com/watch?v=9B4kkaGOozA
2•Anon84•19m ago•0 comments

Nestlé couldn't crack Japan's coffee market.Then they hired a child psychologist

https://twitter.com/BigBrainMkting/status/2019792335509541220
1•rmason•20m ago•0 comments

Notes for February 2-7

https://taoofmac.com/space/notes/2026/02/07/2000
2•rcarmo•21m ago•0 comments

Study confirms experience beats youthful enthusiasm

https://www.theregister.com/2026/02/07/boomers_vs_zoomers_workplace/
2•Willingham•28m ago•0 comments

The Big Hunger by Walter J Miller, Jr. (1952)

https://lauriepenny.substack.com/p/the-big-hunger
2•shervinafshar•30m ago•0 comments

The Genus Amanita

https://www.mushroomexpert.com/amanita.html
1•rolph•35m ago•0 comments

We have broken SHA-1 in practice

https://shattered.io/
9•mooreds•35m ago•2 comments

Ask HN: Was my first management job bad, or is this what management is like?

1•Buttons840•36m ago•0 comments

Ask HN: How to Reduce Time Spent Crimping?

2•pinkmuffinere•38m ago•0 comments

KV Cache Transform Coding for Compact Storage in LLM Inference

https://arxiv.org/abs/2511.01815
1•walterbell•42m ago•0 comments

A quantitative, multimodal wearable bioelectronic device for stress assessment

https://www.nature.com/articles/s41467-025-67747-9
1•PaulHoule•44m ago•0 comments

Why Big Tech Is Throwing Cash into India in Quest for AI Supremacy

https://www.wsj.com/world/india/why-big-tech-is-throwing-cash-into-india-in-quest-for-ai-supremac...
2•saikatsg•44m ago•0 comments

How to shoot yourself in the foot – 2026 edition

https://github.com/aweussom/HowToShootYourselfInTheFoot
2•aweussom•45m ago•0 comments

Eight More Months of Agents

https://crawshaw.io/blog/eight-more-months-of-agents
4•archb•47m ago•0 comments

From Human Thought to Machine Coordination

https://www.psychologytoday.com/us/blog/the-digital-self/202602/from-human-thought-to-machine-coo...
1•walterbell•47m ago•0 comments

The new X API pricing must be a joke

https://developer.x.com/
1•danver0•48m ago•0 comments

Show HN: RMA Dashboard fast SAST results for monorepos (SARIF and triage)

https://rma-dashboard.bukhari-kibuka7.workers.dev/
1•bumahkib7•48m ago•0 comments

Show HN: Source code graphRAG for Java/Kotlin development based on jQAssistant

https://github.com/2015xli/jqassistant-graph-rag
1•artigent•53m ago•0 comments

Python Only Has One Real Competitor

https://mccue.dev/pages/2-6-26-python-competitor
4•dragandj•55m ago•0 comments
Open in hackernews

Memory Subsystem Optimizations

https://johnnysswlab.com/memory-subsystem-optimizations/
48•mfiguiere•1mo ago

Comments

jeffbee•1mo ago
I find this site interesting because of its mixture of good topic choice and inaccurate details. I think it's generated by LLMs.

Specifically catching my eye in this collection of articles is the highly misleading one about huge pages. All recent Linux distributions have THP set to "madvise" by default. Many programs exploit THP automatically, including any Go program and any JVM program with a flag set. The tcmalloc shared library that comes with Ubuntu is probably the single worst way to experience huge pages. Mi-malloc is the better choice if you must preload a library, but there are even better choices. Explicit huge pages are little-used because managing them is annoying. Finally, latest Linux kernels have features called "folios"and "mTHP" that make THP even smoother.

foltik•1mo ago
> Mi-malloc is the better choice if you must preload a library, but there are even better choices.

What’s a better choice?

jeffbee•1mo ago
Linking the allocator into your program when you build it, instead of overriding just malloc and free at runtime. Then you can choose between jemalloc, mi-malloc, TCMalloc, or whatever you please, and get better features such as C++ sized delete. Rust makes this easy with for example "use tcmalloc_better::TCMalloc".
kev009•1mo ago
The huge page article is sequitur with official documentation like https://docs.redhat.com/en/documentation/red_hat_enterprise_.... THP can only issue up to 2MB pages on amd64 so it's not necessarily a silver bullet for large persistent consumers like a DB or GC language and worth knowing about the older methods.

To me they look like marketing posts, but they aren't void of effort or meaning as a quick intro to various topics.

hairband_dude•1mo ago
It's been around for a while: https://web.archive.org/web/20230602031306/https://johnnyssw.... Not sure if the newer articles are LLM/AI assisted though.
matu3ba•1mo ago
The blog looks nice, especially having simple to understand numbers. To me the memory subsystem articles are missing the more spicy pieces like platform semantics, barriers, de-virtualization (latter discussed in an article separate of the series). In the other articles I'd also expect debugging format trade-offs (DWARF vs ORC vs alternatives), virtualization performance and relocation effects briefly discussed, but could not find them. There are a few C++ article missing: 1. cache-friendly structures in C++, because standard std::map etc are unfortunately not written to be cache-friendly (only std::vector and std::deque<T> with high enough block_size), ideally with performance numbers, 2. what to use for destructive moves or how to roll your own (did not make it into c++26).
adsharma•1mo ago
18 blog posts and very limited mention of NUMA and HT?

https://adsharma.github.io/more-performance-hints/

grayxu•1mo ago
While this guide covers roughly 80% of the material, it remains a high-level overview that lacks depth. I can't confirm if it was LLM-generated, but the content is undeniably superficial. Real-world production environments are far more complex; for instance, despite other users mentioning hugepages and TLB, there is no discussion of critical issues like TLB shootdown.