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347•tambourine_man•2h ago•518 comments

The Rise of the Bullshittery

https://xn--gckvb8fzb.com/the-rise-of-the-bullshittery/
103•dxs•1h ago•59 comments

CERT is releasing six CVEs for serious security vulnerabilities in dnsmasq

https://lists.thekelleys.org.uk/pipermail/dnsmasq-discuss/2026q2/018471.html
125•chizhik-pyzhik•2h ago•36 comments

How to make your text look futuristic

https://typesetinthefuture.com/2016/02/18/futuristic/
15•_vaporwave_•18m ago•0 comments

Show HN: Needle: We Distilled Gemini Tool Calling into a 26M Model

https://github.com/cactus-compute/needle
102•HenryNdubuaku•2h ago•26 comments

Why senior developers fail to communicate their expertise

https://www.nair.sh/guides-and-opinions/communicating-your-expertise/why-senior-developers-fail-t...
209•nilirl•5h ago•97 comments

The Future of Obsidian Plugins

https://obsidian.md/blog/future-of-plugins/
200•xz18r•4h ago•78 comments

Rendering the Sky, Sunsets, and Planets

https://blog.maximeheckel.com/posts/on-rendering-the-sky-sunsets-and-planets/
340•ibobev•7h ago•30 comments

Snowflake Postgres, Lakebase, HorizonDB: Picking the Lock-In You Want

https://thebuild.com/blog/2026/05/12/snowflake-postgres-lakebase-horizondb-picking-the-lock-in-yo...
12•samaysharma•49m ago•0 comments

Quack: The DuckDB Client-Server Protocol

https://duckdb.org/2026/05/12/quack-remote-protocol
67•aduffy•2h ago•9 comments

Launch HN: Voker (YC S24) – Analytics for AI Agents

https://voker.ai
29•ttpost•4h ago•13 comments

Dead.Letter (CVE-2026-45185) – How XBOW found an unauthenticated RCE on Exim

https://xbow.com/blog/dead-letter-cve-2026-45185-xbow-found-rce-exim
42•fedek_•2h ago•14 comments

Bambu Lab is abusing the open source social contract

https://www.jeffgeerling.com/blog/2026/bambu-lab-abusing-open-source-social-contract/
892•rubenbe•5h ago•306 comments

Learning Software Architecture

https://matklad.github.io/2026/05/12/software-architecture.html
471•surprisetalk•11h ago•97 comments

We accidentally recreated old Facebook

https://amrshawky.com/posts/we-accidentally-recreated-fb/
23•amr_shawky•2d ago•5 comments

Show HN: Statewright – Visual state machines that make AI agents reliable

https://github.com/statewright/statewright
33•azurewraith•6h ago•7 comments

Show HN: Agentic interface for mainframes and COBOL

https://www.hypercubic.ai/hopper
32•sai18•3h ago•13 comments

Instructure pays ransom to Canvas hackers

https://www.insidehighered.com/news/tech-innovation/administrative-tech/2026/05/11/instructure-pa...
177•Cider9986•17h ago•158 comments

Screenshots of Old Desktop OSes

http://www.typewritten.org/Media/
599•adunk•15h ago•312 comments

When life gives you lemons, write better error messages

https://wix-ux.com/when-life-gives-you-lemons-write-better-error-messages-46c5223e1a2f
71•luispa•3d ago•22 comments

Show HN: Gigacatalyst – Extend your SaaS with an embedded AI builder

27•namanyayg•4h ago•8 comments

Postmortem: TanStack NPM supply-chain compromise

https://tanstack.com/blog/npm-supply-chain-compromise-postmortem
1046•varunsharma07•23h ago•434 comments

Text Blaze (YC W21) Is Hiring for a No-AI Summer Internship

https://www.ycombinator.com/companies/text-blaze/jobs/P4CCN62-the-blaze-no-ai-summer-internship
1•scottfr•8h ago

Canada’s Bill C-22 Is a Repackaged Version of Last Year’s Surveillance Nightmare

https://www.eff.org/deeplinks/2026/05/canadas-bill-c-22-repackaged-version-last-years-surveillanc...
115•Brajeshwar•2h ago•39 comments

Testing UPS Output Waveforms

https://www.lttlabs.com/articles/2026/05/12/ups-exploration
34•LabsLucas•3h ago•28 comments

SQL: Incorrect by Construction

https://chreke.com/posts/sql-incorrect-by-construction
13•ingve•2h ago•4 comments

The Real Story of Troy

https://storica.club/blog/troy-was-real/
37•cemsakarya•2d ago•16 comments

The Moth Story Map

https://themoth.org/dispatches/story-map
15•jxmorris12•3d ago•1 comments

They Live (1988) inspired Adblocker

https://github.com/davmlaw/they_live_adblocker
522•tokenburner•19h ago•168 comments

If AI writes your code, why use Python?

https://medium.com/@NMitchem/if-ai-writes-your-code-why-use-python-bf8c4ba1a055
826•indigodaddy•23h ago•879 comments
Open in hackernews

Building an agentic image generator that improves itself

https://simulate.trybezel.com/research/image_agent
67•palashshah•11mo ago
Hey HN! We recently graduated from YC, and have been building customer personas for large e-commerce companies. We recently expanded into the image generation space, and have been working on research about how to automatically improve the quality of generated images.

Comments

average_r_user•11mo ago
Quite interesting, do you have some documentation of your platform and capabilities? Your landing page is quite synthetic
palashshah•11mo ago
hey! we're working with an initial set of customers, and plan to launch full capabilities soon. stay tuned :)
ramesh31•11mo ago
This is a wonderful writeup of building a simple agentic system in general. What OP describes is more or less the bare minimum you should be doing at this point to get good (consistent) results from an LLM; single-shot prompting is a thing of the past.
palashshah•11mo ago
appreciate the compliment! yep, it's definitely necessary and is the bare minimum for building image generation systems in production.
shmoogy•11mo ago
I'm surprised you landed on using o3 as the judge - we found it way too expensive. I use llm as a judge for generating color variations of products, definitely hoping for some improvements - it can be brutal to get non hallucinated features along with proper final rendering.
omneity•11mo ago
Have you tried open weights vision models such as Qwen VL, MiniCPM, PaliGemma...?

I'm also curious how usable are simpler vision models such as Florence in case you explored this direction.

palashshah•11mo ago
we're currently in the process of doing this. i think something that could potentially work is to iterate upon the initial image composition / structure using cheaper models, and then upscale at the end. this way you're saving on that iteration cost, but eventually land on a higher-scale image.
shmoogy•11mo ago
I actually haven't but nova from Amazon was surprisingly good at things like bounding boxes compared to some others You kind of have to test and measure so many different aspects to get the best at specific tasks Thanks for the idea
elif•11mo ago
This is great and provides a good starting point for any similar efforts.

However I think the temptation to lean all tasks on AI is perhaps a little naive if not lazy.

For mask generation, there is really not much reason to use AI. In this example, simple stochastic blob detection, a trivial function you could get from openCV or ask a college sophomore to write would generate much better quality masks.

palashshah•11mo ago
totally agreed here. i think my goal primarily with the mask generation was to test out how effective openai's capabilities were.

we're currently working on pipelines that limit the the involvement of AI to various tasks. for example, when generating an ad there's usually logo, some banner text, and background image.

we can use gpt-image-1 to generate the background image, another LLM to identify the coordinates of where we place the logo, and just add the logo onto the image. this is just one example!

jackphilson•11mo ago
Why do you agree? I think we should outsource as much as we can to abstraction. We've been doing it forever.
dandelany•11mo ago
"Simple stochastic blob detection" is an abstraction. You write (or import) a function where the the gnarly logic lives and call `detectBlobs()`. "Use an abstraction" doesn't mean you should use the same abstraction for every task, you should use the right tool for the job.
mentalgear•11mo ago
Again another example of "the unreasonable effectiveness of LLMs in a loop". At with time, the tasks for loop become bigger and more complex, until we find ourselves "outlooped" at least job wise.
ramoz•11mo ago
Nice retrospective but I guess this process is no longer needed as model's get better; esp as they start enabling features like consistent subjects. Seems like a lot of overhead to correct text for inspirational images, but I can imagine you need to always present some form of _quality_ to your clients.

Feel like control nets and some minimal photoshop work would've been better.

palashshah•11mo ago
totally. it got to a point where most of the text generated in our images was incorrect, and so it wasn't a great look showing that to our clients.

we're actually working on some form of what you described where we take images generated from LLMs + add consistent logos discretely rather than generatively.

abshkbh•11mo ago
Palash this is a great post, I learnt a lot as an image gen noob! Keep writing more :)
palashshah•11mo ago
this is incredible to hear! i plan to keep writing on a weekly basis, and will be posting them on twitter.
t_mann•11mo ago
I was kind of hoping this would be in the 'Dreambooth mold' of finetuning open weights models. I have used that with some success some ~2 years ago, does anyone know what improvements there have been in that direction since Dreambooth?
zahlman•11mo ago
It's frankly amazing to me that "ask another LLM to evaluate the image" actually produces useful feedback that results in actual improvement from the first LLM.

But then, I guess it's not much different of an idea from the earlier use of GANs, or of telling LLMs to "stop hallucinating", etc.

palashshah•11mo ago
totally. the way i think about it (purely based on intuition) is that asking an LLM to do understanding + image generation is too complex for it to be effective. if we separate out the tasks into discrete steps, the evaluation becomes better, and the generation simply becomes instruction following.
jacob019•11mo ago
This is all edited with gpt-image-1? The revised images are amazing. Were example logos provided or is it just working off of it's knowledge of a well known brand?