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Are LLMs not getting better?

https://entropicthoughts.com/no-swe-bench-improvement
69•4diii•2h ago

Comments

mike_hearn•2h ago
That's an interesting claim, but I don't see it in my own work. They have got better but it's very hard to quantify. I just find myself editing their work much less these days (currently using GPT 5.4).
nkozyra•2h ago
The problem with evals is the underlying rubric will always be either subjective, or a quantitative score based on something that is likely now baked into the training set directly.

You kind of have to go on "feels" for a lot of this.

dwedge•2h ago
Without meaning to sound dismissive, because I'm really not intending to, there's also the possibility that you've gotten worse after enough time using them. You're treating yourself as a constant in this, but man cannot walk in the same river twice.
Mond_•1h ago
This is such a silly response when "You've gotten better at using them and know how to work around their flaws now." is right there and seems a lot more plausible.
mike_hearn•36m ago
That's a possibility, but I doubt it. I've been programming for 35 years and know what I like in code. I've also previously maintained a long review prompt in which I tell the models all the ways in which they get things wrong and to go look for/fix those problems. But those review passes now don't take as long because there are fewer such problems to begin with.

In particular GPT 5.4 is much better at not duplicating code unnecessarily. It'll take the time to refactor, to search for pre-existing utility functions, etc.

boonzeet•2h ago
Interesting article, although with so few data points and such a specific time slice it is difficult to draw serious conclusions about the "improvement" of LLM models.

It's notably lacking newer models (4.5 Opus, 4.6 Sonnet) and models from Gemini.

LLMs appear to naturally progress in short leaps followed by longer plateaus, as breakthroughs are developed such as chain-of-thought, mixture-of-experts, sub-agents, etc.

raincole•2h ago
No Gemini. No Opus 4.5. No GPT codex.

As they said, ragebait used to be believable.

reedf1•2h ago
Given that it is the general consensus that a step function occurred with Opus 4.5/4.6 only 3 months ago - it seems like an insane omission.
jeremyjh•2h ago
This has been the general consensus for about three years now. "Drastic increases in capability have happened the last 3-6 months" have been a constant refrain.

Without any data from the study past September I think its not unreasonable, if you want to make an argument based on evidence.

For me personally, I agree with you, I'm really seeing it as well.

postflopclarity•2h ago
> "Drastic increases in capability have happened the last 3-6 months" have been a constant refrain.

well, yeah. because that's been the experience for many people.

3 years ago, trying to use ChatGPT 3.5 for coding tasks was more of a gimmick than anything else, and was basically useless for helping me with my job.

today, agentic Opus 4.6 provides more value to me than probably 2 more human engineers on my team would

josephg•1h ago
Yep this has been my experience too.

I tried GPT3.5 for translating code from typescript to rust. It made many mistakes in rust. It couldn't fix borrow checker issues. The context was so small that I could only feed it small amounts of my program at a time. It also introduced new bugs into the algorithm.

Yesterday I had an idea for a simple macos app I wanted. I prompted claude code. It programmed the whole thing start to finish in 10 minutes, no problem. I asked it to optimize the program using a technique I came up with, and it did. I asked it to make a web version and it did. (Though for some reason, the web version needed several rounds of "it doesn't work, here's the console output").

I'm slowly coming to terms with the idea that my job is fundamentally changing. I can get way more done by prompting claude than I can by writing the code myself.

suddenlybananas•1h ago
>well, yeah. because that's been the experience for many people.

Yes but this blogpost argues that at least over the course of 2024 to the end of 2025, those people were mistaken.

Toutouxc•2h ago
There's a consensus that SOMETHING changed with Opus 4.5. It might have been the "merge rates" metric, it might have not.

I'm certainly getting faster and cleaner-looking solutions for certain issues on Opus 4.6 than I was 5 months ago, but I'm not sure about the ability to solve (or even weigh in) the actual hard stuff, i.e. the stuff I'm paid for.

And I'm definitely not sure about the supposed big step between 4.5 and 4.6. I'm literally not seeing any.

Flavius•2h ago
> This means llms have not improved in their programming abilities for over a year. Isn’t that wild? Why is nobody talking about this?

Because it's not true. They have improved tremendously in the last year, but it looks like they've hit a wall in the last 3 months. Still seeing some improvements but mostly in skills and token use optimization.

postflopclarity•2h ago
> but mostly in skills and token use optimization.

I have heard rumors that token use optimization has been a recent focus to try to tidy up the financials of these companies before they IPO. take that with a grain of salt though

saulpw•1h ago
After only 3 months (!) you can claim a plateau, but not a wall.
jeffnv•2h ago
I don't think it's true, but am I alone in wishing it was? My world is disrupted somewhat but so far I don't think we have a thing that upends our way of life completely yet. If it stayed exactly this good I'd be pretty content.
cj•2h ago
I agree with your sentiment, but I think we've yet to see the full application of the current technology. (Even if LLMs themselves don't improve, there's significant opportunity for people to use it in ways not currently being done)
jygg4•58m ago
The issue with llm’s is trust.

I don’t see that ever going away. Humans have learned to trust other humans over a large time scale with rules in place to control behaviour.

roxolotl•2h ago
These studies are always really hard to judge the efficacy of. I would say though the most surprising thing to me about LLMs in the past year is how many people got hyped about the Opus 4.5 release. Having used Claude Code at work since it was released I haven't really noticed any step changes in improvement. Maybe that's because I've never tried to use it to one shot things?

Regardless I'm more inclined to believe that 4.5 was the point that people started using it after having given up on copy/pasting output in 2024. If you're going from chat to agentic level of interaction it's going to feel like a leap.

tossandthrow•2h ago
Nah, pre 4.5 it was not comfortable to use agentic coding.
eterm•1h ago
I used it with Sonnet 4.0 a lot, and there was vastly more back-and-forth and correction of "dumb" things, such as forgetting to add "using" statements in C# files.

I don't know if it's model, or harness improvements, or inbuilt-memory or all of the above, but it often has a step where it'll check itself that is done now before trying to build and getting an inevitable failure.

Those small things add up to a much smoother and richer experience today compared to 6 months ago.

ryanackley•2h ago
I agree completely. I haven't noticed much improvement in coding ability in the last year. I'm using frontier models.

What's been the game changer are tools like Claude Code. Automatic agentic tool loops purpose built for coding. This is what I have seen as the impetus for mainstream adoption rather than noticeable improvements in ability.

mavamaarten•2h ago
Maybe n=1, but I disagree? I notice that Sonnet 4.6 follows instructions much better than 4.5 and it generates code much closer to our already in-place production code.

It's just a point release and it isn't a significant upgrade in terms of features or capabilities, but it works... better for me.

ryanackley•1h ago
Are you using a tool like Claude Code or Codex or windsurf? I ask because I've found their ability to pull in relevant context improves tasks in exactly the way you're describing.

My own experience is that some things get better and some things get worse in perceived quality at the micro-level on each point release. i.e. 4.5->4.6

sho_hn•1h ago
My anecdotal experience is rather different.

I write a lot of C++ and QML code. Codex 5.3, only released in Feb, is the the first model I've used that would regularly generate code that passes my 25 years expert smell test and has turned generative coding from a timesap/nuisance into a tool I can somewhat rely on not to set me back.

Claude still wasn't quite there at the time, but I haven't tried 4.6 yet.

QML is a declarative-first markup language that is a superset of the JavaScript syntax. It's niche and doesn't have a giant amount of training data in the corpus. Codex 5.3 is the first model that doesn't super botch it or prefers to write reams of procedural JS embeds (yes, after steering). Much reduced is also the tendency to go overboard on spamming everything with clouds of helper functions/methods in both C++ and QML. It knows when to stop, so to speak, and is either trained or able to reason toward a more idiomatic ideal, with far less explicit instruction / AGENTS.md wrangling.

It's a huge difference. It might be the result of very specific optimization, or perhaps simultaneous advancements in the harness play a bigger role, but in my books my kneck of the woods (or place on the long tail) only really came online in 2026 as far as LLMs are concerned.

fluidcruft•2h ago
Yeah I'm not buying the last bit about lower MSE with one term in the model vs two (Brier with one outcome category is MSE of the probabilities). That's the sort of thing that would make me go dig to find where I fucked up the calculation.
kqr•1h ago
With one term it gets more robust in the face of excluding endpoints when constructing the jackknife train/test split, I think. But you're right, it does sound fishy.
fluidcruft•1h ago
What the post is describing is just ANOVA. If removing a category improves the overall fit then fitting the two terms independently has the same optimal solution (with the two independent terms found to be identical). MSE never increases when adding a category.

This is why you have to reach to things that penalize adding parameters to models when running model comparisons.

kqr•25m ago
No, the post is doing cross-validation to test predictive power directly. The error will not decompose as neatly then.
davecoffin•1h ago
I've been able to supercharge a hobby project of mine over the last couple months using Opus 4.6 in claude code. I had to collaborate and write code still, but claude did like 75% of the work to add meaningful new features to an iOS/Android native mobile app, including Live Activities which is so overly complicated i would not have been able to figure that out. I have it running in a folder that contains both my back end api (express) and my mobile app (nativescript), so it does back end and front end work simultaneously to support new features. this wasnt possible 8 months ago.
curiouscube•1h ago
There is a decent case for this thesis to hold true especially if we look at the shift in training regimes and benchmarking over the last 1-2 years. Frontier labs don't seem to really push pure size/capability anymore, it's an all in focus on agentic AI which is mainly complex post-training regimes.

There are good reasons why they don't or can't do simple param upscaling anymore, but still, it makes me bearish on AGI since it's a slow, but massive shift in goal setting.

In practice this still doesn't mean 50 % of white collar can't be automated though.

thomascgalvin•1h ago
Anecdotally, I haven't seen any real improvement from the AI tools I leverage. They're all good-ish at what they do, but all still lie occasionally, and all need babysitting.

I also wonder how much of the jump in early 2025 comes from cultural acceptance by devs, rather than an improvement in the tools themselves.

egwor•1h ago
I think it depends on what you're using it for. If it is a simple kubernetes config then the model doesn't matter too much. Contract that with writing the scenario for a backtest for an algo that trades on a venue: it is not the same complexity and the basic models are terrible. I've had it tell me that it has added tests to find that they're just stubs! Opus seems to be getting there, but on more complex tasks the others are a complete waste of time.
utopiah•1h ago
> If it is a simple kubernetes config then the model doesn't matter too much

I guess at least this person https://www.tomshardware.com/tech-industry/artificial-intell... might disagree. I think already to know what Kubernetes even is requires quite a bit of knowledge. Using a tool that manipulate its configuration files IN PRODUCTION without risking data loss is another ball game entirely.

rustyhancock•1h ago
I think I'm coming to the same conclusion Gpt-3 to 5.3 have had real tangible but incremental improvements with quite diminishing returns.

Perhaps we won't see a phase change like improvement as we did from gpt-2 through to 3 until there is several more orders of magnitude parameters and/or training. Perhaps we will never see it again!

What is getting rapidly better is scaffolding but this seems to be more about understanding and building tools around LLMs than the LLMs themselves improving.

I'm still excited about AI but not constantly hyped to the rafters as some.

jwpapi•56m ago
It’s better pre and post training + better harnessing
ordersofmag•1h ago
Even if one-shot LLM performance has plateaued (which I'm not convinced this data shows given omission of recent models that are widely claimed to be better) that missing the point that I see in my own work. The improved tooling and agent-based approaches that I'm using now make the LLM one-shot performance only a small part of the puzzle in terms of how AI tools have accelerated the time from idea to decent code. For instance the planning dialogs I now have with Claude are an important part of what's speeding things up for me. Also, the iterative use of AI to identify, track, and take care of small coding tasks (none of which are particularly challenging in terms of benchmarks) is simply more effective. Could this all have been done with the LLM engines of late 2024. Perhaps, but I think the fine-tuning (and conceivably the system prompts) that make the current LLM's more effective at agent-centered workflows (including tool-use) are a big part of it. One-shot task performance at challenging tasks is an interesting, certainly foundational, metric. But I don't think it captures the important advances I see in how LLM's have gotten better over the last year in ways that actually matter to me. I rarely have a well-defined programming challenge and the obligation to solve it in a single-shot.
WithinReason•1h ago
If you look at a separate trend for the smaller Sonnet models, you can see a rapid trend
suddenlybananas•1h ago
3.7 to 4.5 looks pretty flat here.
antisthenes•1h ago
They are getting better, but they are also hitting diminishing returns.

There's only so much data to train on, and we are unlikely to see giant leaps in performance as we did in 2023/2024.

2026-27 will be the years of primarily ecosystem/agentic improvements and reducing costs.

camdenreslink•1h ago
From my personal experience, they have gotten better, but they haven’t unlocked any new capabilities. They’ve just improved at what I was already using them for.

At the end of the day they still produce code that I need to manually review and fully understand before merging. Usually with a session of back-and-forth prompting or manual edits by me.

That was true 2 years ago, and it’s true now (except 2 years ago I was copy/pasting from the browser chat window and we have some nicer IDE integration now).

idorozin•1h ago
My experience has been that raw “one-shot intelligence” hasn’t improved as dramatically in the last year, but the workflow around the models has improved massively.

When you combine models with:

tool use

planning loops

agents that break tasks into smaller pieces

persistent context / repos

the practical capability jump is huge.

sunaurus•1h ago
I am pretty convinced that for most types of day to day work, any perceived improvements from the latest Claude models for example were total placebo. In blind tests and with normal tasks, people would probably have no idea if they're using Opus 4.5 or 4.6.
AussieWog93•1h ago
I'd agree with you on 4.5 to 4.6, but going from gpt-5 or 4.0 to 4.5 was night and day.
NewLogic•56m ago
Because post 4.0 dropped the sycophancy?
varispeed•1h ago
In my niche the Opus 4.6 has been a game changer. In comparison all other LLMs look stupid. I am considering cancelling all other subscriptions.
pu_pe•1h ago
Benchmaxxing aside, if you are using those tools for programming on a regular basis it should be self-evident that they are improving. I find it very hard to believe that someone using LLMs today vs what was available one year ago (Claude Code released Feb 2025) would have any difficulty answering this question.
Zababa•1h ago
I think it is important to try to find more rigorous things to test than the general sentiment of the people using the tools. If only because the more benchmarks we have the more we can improve models without regressions. METR is asking a really interesting question here, "are models improving at making one shot PRs?". The answer seems to be, yes, but slower than benchmarks suggest, if you look at the pass rate of different versions of Claude Sonnet. A reasonable answer is "you're not supposed to use them by making one shot PRs", but then ideally we would need to have some kind of standarized test for the ability of models to incorporate feedback and evolve PRs.
wongarsu•1h ago
I don't find this very compelling. If you look at the actual graph they are referencing but never showing [1] there is a clear improvement from Sonnet 3.7 -> Opus 4.0 -> Sonnet 4.5. This is just hidden in their graph because they are only looking at the number of PRs that are mergable with no human feedback whatsoever (a high standard even for humans).

And even if we were to agree that that's a reasonable standard, GPT 5 shouldn't be included. There is only one datapoint for all OpenAI models. That data point more indicative of the performance of OpenAI models (and the harness used) than of any progression. Once you exclude it it matches what you would expect from a logistic model. Improvements have slowed down, but not stopped

1: https://metr.org/assets/images/many-swe-bench-passing-prs-wo...

roxolotl•1h ago
I don't know that graph to me shows Sonnet 4.5 as worse than 3.7. Maybe the automated grader is finding code breakages in 3.7 and not breaking that out? But I'd much prefer to add code that is a different style to my codebase than code that breaks other code. But even ignoring that the pass rate is almost identical between the two models.
yorwba•1h ago
Yes, I think this is basically an instance of the "emergent abilities mirage." https://arxiv.org/abs/2304.15004

If you measure completion rate on a task where a single mistake can cause a failure, you won't see noticeable improvements on that metric until all potential sources of error are close to being eliminated, and then if they do get eliminated it causes a sudden large jump in performance.

That's fine if you just want to know whether the current state is good enough on your task of choice, but if you also want to predict future performance, you need to break it down into smaller components and track each of them individually.

pnathan•1h ago
Data is missing on this chart.

It's my experience that opus 4, and then, particularly, 4.5, in Claude code, are head and shoulders above the competition.

I wrote an agentic coder years ago and it yielded trash. (Tried to make it do then what kiro does today).

The models are better. Now, caveat - I don't use anything but opus for coding - Sonnet doesn't do the trick. My experience with Codex and Gemini is that their top models are as good as Sonnet for coding...

BloondAndDoom•1h ago
I feel like anyone used AI coding tools before 11/25 and after 1/26 (with frontier models) will say there has been a massive jump in, there is a difference between whether LLM can do a specific task or pass some arguably arbitrary checks by maintainers vs. what the are capable of.

We still have tons of gaps about how to build and maintain code with AI, but LLM themselves getting better at an unbelievable pace, even with this kind of data analysis I’m surprised anyone can even question it.

utopiah•1h ago
I gave up on trying months ago, you can see the timeline on top of https://fabien.benetou.fr/Content/SelfHostingArtificialIntel...

Truth is I'm probably wrong. I should keep on testing ... but at the same time I precisely gave up because I didn't think the trend was fast enough to keep on investing on checking it so frequently. Now I just read this kind of post, ask around (mainly arguing with comments asking for genuine examples that should be "surprising" and kept on being disappointed) and that seems to be enough for a proxy.

I should though, as I mentioned in another comment, keep track of failed attempts.

PS: I check solely on self-hosted models (even if not on my machine but least on machines I could setup) because I do NOT trust the scaffolding around proprietary closed sources models. I can't verify that nobody is in the loop.

jwpapi•1h ago
I had this suspicion for a while I think we just got way better in harnessing not the models actual reasoning

So we got better in giving it the right context and tools to do the stuff we need to do but not the actual thinking improvements

sigmar•1h ago
>This means the step function has more predictive power (“fits better”) than the linear slope. For fun, we can also fit a function that is completely constant across the entire timespan. That happens to get the best Brier score.

I mean, sure. but it's obvious in that graph that the single openai model is dragging down the right side. Wouldn't it be better to just stick to analyzing models from only one lab so that this was showing change over time rather than differences between models?

codeulike•1h ago
This means llms have not improved in their programming abilities for over a year. Isn’t that wild? Why is nobody talking about this?

Because hype makes money.

sd9•1h ago
You really can't model these 5 data points with a linear regression or a step function. The models are of different sizes / use cases, and from two different labs. I feel like what we've observed generally is that different labs releasing similarly sized models at similar times are generally pretty similar.

I think the only reasonable thing to read into is Sonnet 3.5 -> 3.7 -> 4.5. But yeah, you just can't draw a line through this thing.

I will die on the hill that LLMs are getting better, particularly Anthropic's releases since December. But I can't point at a graph to prove that, I'm just drawing on my personal experience. I do use Claude Code though, so I think a large part of the improvement comes from the harness.

Havoc•1h ago
As they become more capable peoples commits will also become more ambitious.

So I’d say fairly flat commit acceptance numbers make sense even in the context of improving LLMs

GaggiX•1h ago
How the "costant function" result fits the data points better than a slope that has two parameters instead of one.
aerhardt•1h ago
I feel that two things are true at the same time:

1) Something happened during 2025 that made the models (or crucially, the wrapping terminal-based apps like Claude Code or Codex) much better. I only type in the terminal anymore.

2) The quality of the code is still quite often terrible. Quadruple-nested control flow abounds. Software architecture in rather small scopes is unsound. People say AI is “good at front end” but I see the worst kind of atrocities there (a few days ago Codex 5.3 tried to inject a massive HTML element with a CSS before hack, rather than proprerly refactoring markup)

Two forces feel true simultaneously but in permanent tension. I still cannot make out my mind and see the synthesis in the dialectic, where this is truly going, if we’re meaningfully moving forward or mostly moving in circles.

orwin•1h ago
> People say AI is “good at front end”

I only say that because I'm a shit frontend dev. Honestly, I'm not that bad anymore, but I'm still shit, and the AI will probably generate better code than I will.

jygg4•45m ago
As long as humans are needed to review code, it sounds your role evolves toward prompting and reviewing.

Which is akin to driving a car - the motor vehicle itself doesn’t know where to go. It requires you to prompt via steering and braking etc, and then to review what is happening in response.

That’s not necessarily a bad thing - reviewing code ultimately matters most. As long as what is produced is more often than not correct and legible.. now this is a different issue for which there isn’t a consensus across software engineer’s.

jygg4•56m ago
The models lose the ability to inject subtle and nuance stuff as they scale up, is what I’ve observed.
orwin•1h ago
I think what happened with static image generation is happening with LLMs. Basically the tools around are becoming better, but all the AI improvements stall, the error rate stay the same (but external tools curate the results so it won't be noticeable if you don't run your own model), the accuracy is still slightly improving, but slower and slower, and never reach the 'perfect' point. Basically stablediffusion early 2025
GaggiX•1h ago
Image quality has improved a lot in recent months thanks to better models. The ability of people to notice these improvements is plateauing because they are not trained to spot artifacts, which are becoming more obscure.
sigbottle•1h ago
LLM's have 100% gotten better, but it's hard to say if it's "intrinsically better", if that makes sense.

> OpenAI’s leading researchers have not completed a successful full-scale pre-training run that was broadly deployed for a new frontier model since GPT-4o in May 2024 [1]

That's evidence against "intrinsically better". They've also trained on the entire internet - we only have 1 internet, so.

However, late 2024 was the introduction of o1 and early 2025 was Deepseek R1 and o3. These were definitely significant reasoning models - the introduction of test time compute and significant RL pipelines were here.

Mid 2025 was when they really started getting integrated with tool calling.

Late 2025 is when they really started to become agentic and integrate with the CLI pretty well (at least for me). For example, codex would at least try and run some smoke tests for itself to test its code.

In early 2026, the trend now appears to be harness engineering - as opposed to "context engineering" in 2025, where we had to preciously babysit 1 model's context, we make it both easier to rebuild context (classic CS trick btw: rebooting is easier than restoring stale state [2]) and really lean into raw cli tool calling, subagents, etc.

[1] https://newsletter.semianalysis.com/p/tpuv7-google-takes-a-s...

[2] https://en.wikipedia.org/wiki/Kernel_panic

FWIW, AI programming has still been as frustrating as it was when it was just TTC in 2025. Maybe because I don't have the "full harness" but it still has programming styles embedded such as silent fallback values, overly defensive programming, etc. which are obvoiusly gleaned from the desire to just pass all tests, rather than truly good programming design. I've been able to do more, but I have to review more slop... also the agents are really unpleasant to work with, if you're trying to have any reasonable conversation with them and not just delegate to them. It's as if they think the entire world revolves around them, and all information from the operator is BS, if you try and open a proper 2-way channel.

It seems like 2026 will go full zoom with AI tooling because the goal is to replace devs, but hopefully AI agents become actually nice to work with. Not sycophantic, but not passively aggressively arrogant either.

Zababa•1h ago
From the METR study (https://metr.org/notes/2026-03-10-many-swe-bench-passing-prs...):

>To study how agent success on benchmark tasks relates to real-world usefulness, we had 4 active maintainers from 3 SWE-bench Verified repositories review 296 AI-generated pull requests (PRs). We had maintainers (hypothetically) accept or request changes for patches as well as provide the core reason they were requesting changes: core functionality failure, patch breaks other code or code quality issues.

I would also advise taking a look at the rejection reasons for the PRs. For example, Figure 5 shows two rejections for "code quality" because of (and I quote) "looks like a useless AI slop comment." This is something models still do, but that is also very easily fixable. I think in that case the issue is that the level of comment wanted hasn't been properly formalized in the repo and the model hasn't been able to deduce it from the context it had.

As for the article, I think mixing all models together doesn't make sense. For example, maybe a slope describe the increasing Claude Sonnet better than a step function.

BoppreH•1h ago
Controversial opinion from a casual user, but state-of-art LLMs now feel to me more intelligent then the average person on the steet. Also explains why training on more average-quality data (if there's any left) is not making improvements.

But LLMs are hamstrung by their harnesses. They are doing the equivalent of providing technical support via phone call: little to no context, and limited to a bidirectional stream of words (tokens). The best agent harnesses have the equivalent of vision-impairment accessibility interfaces, and even those are still subpar.

Heck, giving LLMs time to think was once a groundbreaking idea. Yesterday I saw Claude Code editing a file using shell redirects! It's barbaric.

I expect future improvements to come from harness improvements, especially around sub agents/context rollbacks (to work around the non-linear cost of context) and LLM-aligned "accessibility tools". That, or more synthetic training data.

xyzsparetimexyz•51m ago
Steet? Do you mean street? They're smarter in the same way a search engine is smarter.
delichon•54m ago
Yesterday I asked a frontier model to help generate a report. It said great, it can do that, and output a table. I asked it to evaluate its prompt compliance in the result. It concluded that it had failed on every requirement. I asked why it had expressed such confidence, was it analagous to narcissism or psycopathy? It said no, and then said that if I just had to anthropomorphize it, I should think of it as a brilliant friend with severe frontal lobe brain damage.

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3D-Knitting: The Ultimate Guide

https://www.oliver-charles.com/pages/3d-knitting
151•ChadNauseam•6h ago•54 comments

Malus – Clean Room as a Service

https://malus.sh
10•microflash•59m ago•4 comments

Show HN: s@: decentralized social networking over static sites

http://satproto.org/
357•remywang•14h ago•159 comments

The purpose of Continuous Integration is to fail

https://blog.nix-ci.com/post/2026-02-05_the-purpose-of-ci-is-to-fail
10•Norfair•2d ago•5 comments

SBCL: A Sanely-Bootstrappable Common Lisp (2008) [pdf]

https://research.gold.ac.uk/id/eprint/2336/1/sbcl.pdf
84•pabs3•7h ago•45 comments

Show HN: Calyx – Ghostty-Based macOS Terminal with Liquid Glass UI

https://github.com/yuuichieguchi/Calyx
8•yuu1ch13•1h ago•18 comments

Printf-Tac-Toe

https://github.com/carlini/printf-tac-toe
71•carlos-menezes•4d ago•6 comments

Returning to Rails in 2026

https://www.markround.com/blog/2026/03/05/returning-to-rails-in-2026/
244•stanislavb•8h ago•152 comments

High fidelity font synthesis for CJK languages

https://github.com/kaonashi-tyc/zi2zi-JiT
19•kaonashi-tyc-01•3d ago•2 comments

ArcaOS 5.1.2 (based on OS/2 Warp 4.52) now available

https://www.arcanoae.com/arcaos-5-1-2-now-available/
19•speckx•1h ago•7 comments

Emacs internals: Tagged pointers vs. C++ std:variant and LLVM (Part 3)

https://thecloudlet.github.io/blog/project/emacs-03/
9•thecloudlet•1h ago•2 comments

Datahäxan

https://0dd.company/galleries/witches/7.html
102•akkartik•2d ago•8 comments

I was interviewed by an AI bot for a job

https://www.theverge.com/featured-video/892850/i-was-interviewed-by-an-ai-bot-for-a-job
375•speckx•20h ago•376 comments

Tested: How Many Times Can a DVD±RW Be Rewritten? Methodology and Results

https://goughlui.com/2026/03/07/tested-how-many-times-can-a-dvd%C2%B1rw-be-rewritten-part-2-metho...
197•giuliomagnifico•4d ago•65 comments

1B identity records exposed in ID verification data leak

https://www.aol.com/articles/1-billion-identity-records-exposed-152505381.html
141•robtherobber•4h ago•32 comments

Don't post generated/AI-edited comments. HN is for conversation between humans

https://news.ycombinator.com/newsguidelines.html#generated
3868•usefulposter•19h ago•1445 comments

WebPKI and You

https://blog.brycekerley.net/2026/03/08/webpki-and-you.html
75•aragilar•3d ago•9 comments

NASA's DART spacecraft changed an asteroid's orbit around the sun

https://www.sciencenews.org/article/spacecraft-changed-asteroid-orbit-nasa
60•pseudolus•3d ago•33 comments

USDA is closing buildings, relocating staff, and downsizing-a lot

https://www.foodpolitics.com/2026/03/usda-is-closing-buildings-relocating-staff-and-downsizing-a-...
17•speckx•55m ago•4 comments

Show HN: I built a tool that watches webpages and exposes changes as RSS

https://sitespy.app
289•vkuprin•22h ago•75 comments

Reliable Software in the LLM Era

https://quint-lang.org/posts/llm_era
38•mempirate•6h ago•19 comments

Faster asin() was hiding in plain sight

https://16bpp.net/blog/post/faster-asin-was-hiding-in-plain-sight/
230•def-pri-pub•1d ago•122 comments