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GenCAD

https://gencad.github.io/
239•dagenix•9h ago•54 comments

I turned a $80 RK3562 Android tablet into a Debian Linux workstation

https://github.com/tech4bot/rk3562deb
311•tech4bot•17h ago•143 comments

Ask an Astronaut: 333 hours of Q&A footage with astronauts

https://askanastronaut.issinrealtime.org/
108•gaws•2d ago•9 comments

Prolog Coding Horror

https://www.metalevel.at/prolog/horror
101•RohanAdwankar•9h ago•33 comments

Show HN: Semble – Code search for agents that uses 98% fewer tokens than grep

https://github.com/MinishLab/semble
279•Bibabomas•15h ago•95 comments

Jank now has its own custom IR

https://jank-lang.org/blog/2026-05-08-optimization/
103•DASD•2d ago•7 comments

WriteUp: 16 Bytes of x86 that turn Matrix rain into sound

https://hellmood.111mb.de//wake_up_16b_writeup.html
90•HellMood•7h ago•11 comments

Two EA-18 fighter jets collide at Mountain Home airshow, pilots ejected safely

https://idahonews.com/news/local/two-f-18-fighter-jets-have-crashed-during-an-airshow-at-mountain...
171•ChrisArchitect•8h ago•153 comments

Show HN: Mezz, a curl-able WiFi sandbox for IoT pentesting

https://github.com/ABGEO/mezz
14•ABGEO•2d ago•2 comments

Crystals found inside wreckage from the first nuclear bomb test

https://www.scientificamerican.com/article/strange-crystals-found-inside-wreckage-from-the-first-...
17•jumploops•2d ago•3 comments

A Good Lemma Is Worth a Thousand Theorems (2007)

https://sites.math.rutgers.edu/~zeilberg/Opinion82.html
40•susam•2d ago•7 comments

Étienne Ghys: The Shape of Letters: From Leonardo da Vinci to Donald Knuth

https://www.youtube.com/watch?v=1OIxzewWilc
17•tzury•2h ago•3 comments

CUDA Books

https://github.com/alternbits/awesome-cuda-books
173•dariubs•17h ago•35 comments

Tesla Solar Roof is on life support as it pivot to panels

https://electrek.co/2026/05/14/tesla-solar-roof-promise-vs-reality-pivot-panels/
224•celsoazevedo•1d ago•223 comments

Hindenburg’s Smoking Room

https://www.airships.net/hindenburg-smoking-room/
185•crescit_eundo•3d ago•150 comments

Prolog Basics Explained with Pokémon

https://unplannedobsolescence.com/blog/prolog-basics-pokemon/
241•birdculture•2d ago•38 comments

Magical Realism: “Northern Exposure” 25 Years Later (2015)

https://www.rogerebert.com/streaming/magical-realism-nothern-exposure-25-years-later
97•walterbell•2d ago•42 comments

Cannibalistic attacks between gray seals leave telltale “corkscrew” injuries

https://www.science.org/content/article/scientists-id-corkscrew-killer-behind-gruesome-seal-deaths
59•gmays•3d ago•18 comments

I don't think AI will make your processes go faster

https://frederickvanbrabant.com/blog/2026-05-15-i-dont-think-ai-will-make-your-processes-go-faster/
550•TheEdonian•18h ago•381 comments

High-Entropy Alloy

https://en.wikipedia.org/wiki/High-entropy_alloy
130•leonidasrup•3d ago•23 comments

Which country voted the best at Eurovision?

https://lalitm.com/post/which-country-voted-best-at-eurovision/
4•shintoist•3h ago•0 comments

Trials on veterans suggest ibogaine could provide a new treatment for PTSD

https://www.bbc.com/future/article/20260514-how-hallucinogenic-ibogaine-helps-veterans-overcome-ptsd
91•bushwart•18h ago•95 comments

VoIP brings back old-fashioned pay phones to rural Vermont (2025)

https://spectrum.ieee.org/payphone-voip
144•bookofjoe•11h ago•42 comments

The History of ThinkPad: From IBM’s Bento Box to Lenovo’s AI Workstations

https://www.jdhodges.com/blog/thinkpad-history/
91•zdw•8h ago•43 comments

Mercurial, 20 years and counting: how are we still alive and kicking? [video]

https://fosdem.org/2026/schedule/event/AGWUVH-mercurial-aint-you-dead-yet/
183•ibobev•2d ago•188 comments

A nicer voltmeter clock

https://lcamtuf.substack.com/p/a-nicer-voltmeter-clock
332•surprisetalk•1d ago•43 comments

Colossus: The Forbin Project

https://en.wikipedia.org/wiki/Colossus:_The_Forbin_Project
229•doener•3d ago•91 comments

America's Most-Spoken Languages After English and Spanish

https://www.visualcapitalist.com/mapped-americas-most-spoken-languages-after-english-and-spanish/
31•RyeCombinator•3h ago•1 comments

The SGI Buyer's Guide (2003)

https://hardware.majix.org/computers/sgi/buyers-guide.shtml
20•uticus•2d ago•8 comments

Mozilla to UK regulators: VPNs are essential privacy and security tools

https://blog.mozilla.org/netpolicy/2026/05/15/mozilla-to-uk-regulators-vpns-are-essential-privacy...
696•WithinReason•1d ago•295 comments
Open in hackernews

EM-LLM: Human-Inspired Episodic Memory for Infinite Context LLMs

https://github.com/em-llm/EM-LLM-model
113•jbotz•1y ago

Comments

MacsHeadroom•1y ago
So, infinite context length by making it compute bound instead of memory bound. Curious how much longer this takes to run and when it makes sense to use vs RAG.
zfountas•12mo ago
Hi MacsHeadroom, first author here. Thanks for the great questions about compute/memory trade-offs.

The quick take: To give you an example of processing speed, with a 7B model on an NVIDIA V100, EM-LLM processes (or generates) about 326 tokens/sec with a 51.2K context window (which is quite competitive for these old GPUs).

More broadly, EM-LLM is designed to make ultra-long contexts (memory-prohibitive for standard O(n^2) attention) computationally tractable. The Appendix C of our paper https://openreview.net/pdf?id=BI2int5SAC details how: significantly better attention scaling, efficient O(nm) memory formation, and large KV cache management via CPU/disk offloading. While there's a slight per-chunk overhead compared to the simplest retrieval methods initially, the crucial part is our ability to handle sequences at scales infeasible for full-context models. For instance, we're successfully using 8B models with 10M token contexts on a single GPU without prohibitive delays.

Regarding RAG in particular, EM-LLM often shows significant gains on tasks needing deep understanding of a single, long, coherent context. A key reason is that EM-LLM allows each layer to retrieve and integrate relevant information from different "episodes" of the context independently, offering more nuance than a typical single RAG step, for similar overall resource use.

mountainriver•1y ago
TTT, cannon layers, and titans seem like a stronger approach IMO.

Information needs to be compressed into latent space or it becomes computationally intractable

searchguy•1y ago
do you have references to

> TTT, cannon layers, and titans

najarvg•1y ago
This was the nearest reference I could find. Links to an unofficial pytorch implementation on Github are also linked in the threads somewhere - https://www.reddit.com/r/LocalLLaMA/comments/1i0q8nw/titans_...
vessenes•1y ago
is titans replicated? I feel like lucidrains couldn't replicate.
logicchains•1y ago
I think something like Titans explains Gemini's excellent long context performance. That would explain why the Titan team hasn't released the training code or hyperpameters used even though they said in the paper that they would, and why soon after that it came out that DeepMind would be holding off publishing new results for 6 months to avoid giving away competitive advantages.
p_v_doom•1y ago
Interesting. Before there even was attention I was thinking that the episodic memory model offers something that could be very useful for neural nets, so its cool to see people testing that
killerstorm•1y ago
Note that this works within a single sequence of tokens. It might be consistent with "episodic memory" metaphor if we consider a particular transformer run as its experience.

But this might be very different from what people expect from "memory" - i.e. ability to learn vast amounts of information and retrieve it as necessary.

This is more like a refinement of transformer attention: instead of running attention over all tokens (which is very expensive as it's quadratic), it selects a subset of token spans and runs fine-grained attention only on those. So it essentially breaks transformer attention into two parts - coarse-grained (k-NN over token spans) and fine-grained (normal).

It might be a great thing for long-context situations. But it doesn't make sense when you want millions of different facts to be considered - making them into long context is rather inefficient.

yorwba•1y ago
It would be inefficient if you had to do it from scratch for every query, but if you can do it once as a preprocessing step and reuse the prepared context for many queries, it might start to become more efficient than a shorter context that includes only some documents but has to be reprocessed because it's different every time.
killerstorm•1y ago
Yes, I think it might be a good solution where you have a context up to 10M of tokens and you do a lot of requests with that context. It might be relevant for agentic stuff which tends to produce long chat logs - especially with some gadgets on top, e.g. some 'episodes' might be completely removed as obsolete.

But I don't think it's a good solution for bigger amounts of data - as in that case it's more beneficial if that can be formed into independent memories.