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The protein denitrosylase SCoR2 regulates lipogenesis and fat storage [pdf]

https://www.science.org/doi/10.1126/scisignal.adv0660
1•thunderbong•1m ago•0 comments

Los Alamos Primer

https://blog.szczepan.org/blog/los-alamos-primer/
1•alkyon•4m ago•0 comments

NewASM Virtual Machine

https://github.com/bracesoftware/newasm
1•DEntisT_•6m ago•0 comments

Terminal-Bench 2.0 Leaderboard

https://www.tbench.ai/leaderboard/terminal-bench/2.0
1•tosh•6m ago•0 comments

I vibe coded a BBS bank with a real working ledger

https://mini-ledger.exe.xyz/
1•simonvc•7m ago•1 comments

The Path to Mojo 1.0

https://www.modular.com/blog/the-path-to-mojo-1-0
1•tosh•9m ago•0 comments

Show HN: I'm 75, building an OSS Virtual Protest Protocol for digital activism

https://github.com/voice-of-japan/Virtual-Protest-Protocol/blob/main/README.md
4•sakanakana00•13m ago•0 comments

Show HN: I built Divvy to split restaurant bills from a photo

https://divvyai.app/
3•pieterdy•15m ago•0 comments

Hot Reloading in Rust? Subsecond and Dioxus to the Rescue

https://codethoughts.io/posts/2026-02-07-rust-hot-reloading/
3•Tehnix•16m ago•1 comments

Skim – vibe review your PRs

https://github.com/Haizzz/skim
2•haizzz•17m ago•1 comments

Show HN: Open-source AI assistant for interview reasoning

https://github.com/evinjohnn/natively-cluely-ai-assistant
4•Nive11•17m ago•6 comments

Tech Edge: A Living Playbook for America's Technology Long Game

https://csis-website-prod.s3.amazonaws.com/s3fs-public/2026-01/260120_EST_Tech_Edge_0.pdf?Version...
2•hunglee2•21m ago•0 comments

Golden Cross vs. Death Cross: Crypto Trading Guide

https://chartscout.io/golden-cross-vs-death-cross-crypto-trading-guide
2•chartscout•24m ago•0 comments

Hoot: Scheme on WebAssembly

https://www.spritely.institute/hoot/
3•AlexeyBrin•26m ago•0 comments

What the longevity experts don't tell you

https://machielreyneke.com/blog/longevity-lessons/
2•machielrey•28m ago•1 comments

Monzo wrongly denied refunds to fraud and scam victims

https://www.theguardian.com/money/2026/feb/07/monzo-natwest-hsbc-refunds-fraud-scam-fos-ombudsman
3•tablets•32m ago•1 comments

They were drawn to Korea with dreams of K-pop stardom – but then let down

https://www.bbc.com/news/articles/cvgnq9rwyqno
2•breve•35m ago•0 comments

Show HN: AI-Powered Merchant Intelligence

https://nodee.co
1•jjkirsch•37m ago•0 comments

Bash parallel tasks and error handling

https://github.com/themattrix/bash-concurrent
2•pastage•37m ago•0 comments

Let's compile Quake like it's 1997

https://fabiensanglard.net/compile_like_1997/index.html
2•billiob•38m ago•0 comments

Reverse Engineering Medium.com's Editor: How Copy, Paste, and Images Work

https://app.writtte.com/read/gP0H6W5
2•birdculture•43m ago•0 comments

Go 1.22, SQLite, and Next.js: The "Boring" Back End

https://mohammedeabdelaziz.github.io/articles/go-next-pt-2
1•mohammede•49m ago•0 comments

Laibach the Whistleblowers [video]

https://www.youtube.com/watch?v=c6Mx2mxpaCY
1•KnuthIsGod•50m ago•1 comments

Slop News - The Front Page right now but it's only Slop

https://slop-news.pages.dev/slop-news
1•keepamovin•55m ago•1 comments

Economists vs. Technologists on AI

https://ideasindevelopment.substack.com/p/economists-vs-technologists-on-ai
1•econlmics•57m ago•0 comments

Life at the Edge

https://asadk.com/p/edge
4•tosh•1h ago•0 comments

RISC-V Vector Primer

https://github.com/simplex-micro/riscv-vector-primer/blob/main/index.md
4•oxxoxoxooo•1h ago•1 comments

Show HN: Invoxo – Invoicing with automatic EU VAT for cross-border services

2•InvoxoEU•1h ago•0 comments

A Tale of Two Standards, POSIX and Win32 (2005)

https://www.samba.org/samba/news/articles/low_point/tale_two_stds_os2.html
4•goranmoomin•1h ago•0 comments

Ask HN: Is the Downfall of SaaS Started?

4•throwaw12•1h ago•0 comments
Open in hackernews

LLMs contain all knowledge – I built way to mine deep meaning from them

https://github.com/andres-ulloa-de-la-torre/NoA
3•scraper01•5mo ago

Comments

scraper01•5mo ago
Hey everyone.

I've been looking into a fundamental problem in modern AI. We have these massive language models trained on a huge chunk of the internet—they "know" almost everything, but without novel techniques like DeepThink they can't truly think about a hard problem. If you ask a complex question, you get a flat, one-dimensional answer. The knowledge is in there, or may i say, potential knowledge, but it's latent. There's no step-by-step, multidimensional refinement process to allow a sophisticated solution to be conceptualized and emerge.

The big labs are tackling this with "deep think" approaches, essentially giving their giant models more time and resources to chew on a problem internally. That's good, but it feels like it's destined to stay locked behind a corporate API. I wanted to explore if we could achieve a similar effect on a smaller scale, on our own machines. So, I built a project called Network of Agents (NoA) to try and create the process that these models are missing.

The core idea is to stop treating the LLM as an answer machine and start using it as a cog in a larger reasoning engine. NoA simulates a society of AI agents that collaborate to mine a solution from the LLM's own latent knowledge.

It works through a cycle of thinking and refinement, inspired by how a team of humans might work:

The Forward Pass (Conceptualization): Instead of one agent, NoA builds a whole network of them in layers. The first layer tackles the problem from diverse angles. The next layer takes their outputs, synthesizes them, and builds a more specialized perspective. This creates a deep, multidimensional view of the problem space, all derived from the same base model.

The Reflection Pass (Refinement): This is the key to mining. The network's final, synthesized answer is analyzed by a critique agent. This critique acts as an error signal that travels backward through the agent network. Each agent sees the feedback, figures out its role in the final output's shortcomings, and rewrites its own instructions to be better in the next round. It’s a slow, iterative process of the network learning to think better as a collective. Through multiple cycles (epochs), the network refines its approach, digging deeper and connecting ideas that a single-shot prompt could never surface. It's not learning new facts; it's learning how to reason with the facts it already has. The solution is mined, not just retrieved. The project is still a research prototype, but it’s a tangible attempt at democratizing deep thinking. I genuinely believe the next breakthrough isn't just bigger models, but better processes for using them. I’d love to hear what you all think about this approach.

Thanks for reading.

physix•5mo ago
Do you have any examples?