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Kimi K3: Open Frontier Intelligence

https://www.kimi.com/blog/kimi-k3
1385•vincent_s•14h ago•843 comments

How Has Roman Concrete Lasted for Millennia? 1,900-Year-Old Latrine Offers Clues

https://www.smithsonianmag.com/smart-news/how-has-roman-concrete-lasted-for-millennia-a-1900-year...
32•divbzero•1h ago•14 comments

An Engineer's Guide to USB Typе-С (2024)

https://www.ti.com/lit/eb/slyy228/slyy228.pdf?ts=1759892558029
70•gregsadetsky•6d ago•1 comments

Microsoft Comic Chat is now open source

https://opensource.microsoft.com/blog/2026/07/16/microsoft-comic-chat-is-now-open-source/
606•jervant•13h ago•136 comments

The Human-in-the-Loop Is Tired

https://pydantic.dev/articles/the-human-in-the-loop-is-tired
115•haritha1313•5h ago•58 comments

GrapheneOS recommended for domestic abuse victims

https://privacypros.com.au/privacy-hub/articles/dv-safe-phone-australia/
42•aussieguy1234•3h ago•21 comments

Decoy Font

https://www.mixfont.com/experiments/decoy-font
475•ray__•13h ago•112 comments

LM Studio Bionic: the AI agent for open models

https://lmstudio.ai/blog/introducing-lm-studio-bionic
197•minimaxir•9h ago•71 comments

$100 AI Music Video: Claude Fable 5 vs. GPT-5.6 Sol

https://www.tryai.dev/blog/ai-music-video-arena-claude-vs-gpt-5.6
199•hershyb_•9h ago•232 comments

Solod: Go can be a better C

https://solod.dev
88•koeng•3d ago•20 comments

The Little Book of Reinforcement Learning

https://github.com/alxndrTL/little-book-rl/
87•mustaphah•6h ago•10 comments

M 3.9 Experimental Explosion – 147 Km ENE of Ponce Inlet, Florida

https://earthquake.usgs.gov/earthquakes/eventpage/us7000t13l/executive
50•hnburnsy•4h ago•20 comments

NotebookLM is now Gemini Notebook

https://blog.google/innovation-and-ai/products/gemini-notebook/notebooklm-gemini-notebook/
277•xnx•13h ago•141 comments

Old Icons

https://leancrew.com/all-this/2026/07/old-icons/
25•zdw•5d ago•1 comments

'Likweli': A new monkey species discovered in the Congo Basin

https://news.yale.edu/2026/07/15/meet-likweli-new-monkey-species-discovered-congo-basin
65•gmays•7h ago•11 comments

Simulating everything, sort of: The promise and limits of world models

https://arstechnica.com/ai/2026/07/simulating-everything-sort-of-the-promise-and-limits-of-world-...
22•LorenDB•3d ago•1 comments

Mathematics of Data Science

https://arxiv.org/abs/2607.11938
124•Anon84•8h ago•3 comments

How Our Rust-to-Zig Rewrite Is Going

https://rtfeldman.com/rust-to-zig
450•jorangreef•17h ago•237 comments

Detecting LLM-Generated Texts with “Classical” Machine Learning

https://blog.lyc8503.net/en/post/llm-classifier/
175•uneven9434•12h ago•119 comments

Immersive Linear Algebra Book with Interactive Figures (2015)

https://immersivemath.com/ila/
189•srean•13h ago•26 comments

Helium escaping from atmosphere of nearby rocky exoplanet in a habitable zone

https://www.science.org/doi/10.1126/science.aea9708
85•anyonecancode•9h ago•23 comments

Ring-Zero: Scaling Zero RL to a Trillion Parameters for Emergent Reasoning

https://arxiv.org/abs/2607.12395
45•binyu•7h ago•15 comments

Show HN: Clx – Compile Lua to Native Executables Through C++20

https://github.com/samyeyo/clx
102•_samt_•5d ago•11 comments

Pseudpocalypse

https://dynomight.net/pseudpocalypse/
103•surprisetalk•2d ago•61 comments

What loss.backward() actually does

https://oraziorillo.com/blog/what-loss-backward-actually-does/
6•oraziorillo•5d ago•1 comments

Pebble Mega Update – July 2026

https://repebble.com/blog/pebble-mega-update-july-2026
4•crazysaem•1h ago•0 comments

Abstracting Effects with Continuations

https://crowdhailer.me/2026-07-15/abstracting-effects-with-continuations/
54•crowdhailer•18h ago•2 comments

How to Train a Gen AI Kick Drum Model on Your Old Linux Desktop with 6GB VRAM

https://www.zhinit.dev/blog/training-a-kick-drum-diffusion-model
115•zhinit•14h ago•56 comments

CD sales growth outpaced vinyl in the first half of 2026

https://consequence.net/2026/07/the-cd-revival-is-getting-hard-to-ignore/
81•speckx•12h ago•90 comments

Adaptional (YC S25) Is Hiring

https://www.ycombinator.com/companies/adaptional/jobs
1•acesohc•12h ago
Open in hackernews

Linear Programming for Fun and Profit

https://modal.com/blog/resource-solver
62•hmac1282•1y ago

Comments

ayhanfuat•1y ago
> X = [x1, ..., Xn]: instances of each type to launch

Is this a continuous variable? Seems discrete to me. I am surprised it is solved by simplex.

Frummy•1y ago
It's the answer, a vector of integers
ayhanfuat•1y ago
Simplex cannot give a vector of integers though, unless the constraint matrix is unimodular. Maybe the integrality constraint was relaxed.
cweld510•1y ago
You're right -- we do relax the integrality constraint, gaining performance at the expense of some precision, and we're generally able to paper over the difference at scheduling time. We've investigated integer linear programming for some use cases, but for solves to run quickly, we have to constrain the inputs significantly.
ayhanfuat•1y ago
Thanks for the clarification. I guess it wouldn’t matter much if the numbers are large. Initially I thought they were mostly ones and zeros.
stncls•1y ago
If this is business critical for you, you may want to switch to a faster solver. Glop is very nice, but it would be reasonable to expect a commercial solver (Gurobi, XPress, COpt) to be 60x faster [1]. By the same measure, the best open source solvers (CLP, HiGHS) are 2-3x faster than Glop.

Actually, the commercial solvers are so fast that I would not be surprised if they solved the IP problem as fast as Glop solves the LP. (Yes, the theory says it is impossible, but in practice it happens.) The cost of a commercial solver is 10k to 50k per license.

[1] ... this 60x number has very high variance depending on the type of problem, but it is not taken out of nowhere, it comes from the Mittelmann LP benchmarks https://plato.asu.edu/ftp/lpopt.html There are also benchmarks for other types of problems, including IP, see the whole list here: https://plato.asu.edu/bench.html

petters•1y ago
If you are able to paper over the fractional numbers and get a usable solution, an integer solver should also be able to find a feasible solution easily. Perhaps not optimal, but better than just solving the LP and rounding
hustwindmaple1•1y ago
You are basically doing a heurstic. Your solutions are not guaranteed to be optimal. Integer programming is the way to do.
cweld510•1y ago
Great to see this post here -- really enjoyed writing it! I think it's really cool how an algorithm from an operational research context can play a critical role in a high-availability large-scale cloud service.
sumtechguy•1y ago
LP is a shockingly good way to optimize a system. If you can put inputs/outputs into the correct form. Had an econ prof that loved these things for doing supply/demand maxima and minimum finding. He didnt outright say it but I think it was his current line of study when I was taking classes from him the 90s. I thought that, as he managed to bring it up in every class he taught.
Onavo•1y ago
Well, kantorovich did win the Nobel for inventing that.
underanalyzer•1y ago
Neat article. I do wish it mentioned that there are polynomial time algorithms to solve linear programming problems. According to the Google ortools docs it has the option to use those as well (but not with the GLOP solver). Might be good for when simplex is struggling (https://developers.google.com/optimization/lp/lp_advanced)
stncls•1y ago
You're right, but it's very subtle and complicated.

In theory, the simplex method is not known to be polynomial-time, and it is likely that indeed it is not. Some variants of the simplex method have been proven to take exponential time in some worst cases (Klee-Minty cubes). What solvers implement could be said to be one such variant ("steepest-edge pricing"), but because solvers have tons of heuristics and engineering, and also because they work in floating-point arithmetic... it's difficult to tell for sure.

In practice, the main alternative is interior-point (aka. barrier) methods which, contrary to the simplex method, are polynomial-time in theory. They are usually (but not always) faster, and their advantage tends to increase for larger instances. The problem is that they are converging numerical algorithms, and with floating-point arithmetic they never quite 100% converge. By contrast, the simplex method is a combinatorial algorithm, and the numerical errors it faces should not accumulate. As a result, good solvers perform "crossover" after interior-point methods, to get a numerically clean optimal solution. Crossover is a combinatorial algorithm, like the simplex method. Unlike the simplex method though, crossover is polynomial-time in theory (strongly so, even). However, here, theory and practice diverge a bit, and crossover implementations are essentially simplified simplex methods. As a result, in my opinion, calling iterior-point + crossover polynomial-time would be a stretch.

Still, for large problems, we can expect iterior-point + crossover to be faster than the simplex method, by a factor 2x to 10x.

There is also first-order methods, which are getting much attention lately. However, in my experience, you should only use that if you are willing to tolerate huge constraint violations in the solution, and wildly suboptimal solutions. Their main use case is when other solvers need too much RAM to solve your instance.

Onavo•1y ago
The most interesting question is how you scrape the prices. The cloudprovider really need to provide an API.
underanalyzer•1y ago
Very interesting! Thanks for the reply. I wonder if they tried these other solvers and decided they were either too slow b/c their problems were too small or the answers were too inaccurate