frontpage.
newsnewestaskshowjobs

Made with ♥ by @iamnishanth

Open Source @Github

fp.

Paul Morphy

https://en.wikipedia.org/wiki/Paul_Morphy
1•nomilk•3m ago•0 comments

Learning State-Tracking from Code Using Linear RNNs

https://arxiv.org/abs/2602.14814
1•jul8234•4m ago•1 comments

Scientifically Ranking the Pokémon Crystal Trainers (2023) [video]

https://www.youtube.com/watch?v=Q6E6OaWb7LQ
2•aw1621107•6m ago•1 comments

Show HN: My attempt to make Vector search engine in Rust(350k Items, ~3.5ms Qs)

https://github.com/ronakgh97/blaze-db
2•ronakgh97•10m ago•0 comments

I Let Opus 4.6 and GSD Build a Programming Language

https://meshlang.dev/
2•andrew_da_miz•14m ago•1 comments

How the men in the Epstein files defeated MeToo

https://www.theverge.com/tech/874721/epstein-thiel-musk-trump-metoo
2•doener•16m ago•0 comments

GPT in 2 LOC

https://github.com/Lazarus-931/femto-gpt
2•AlazarManakelew•22m ago•0 comments

Why more men should be on Viagra and it's nothing to do with sex

2•benkan•24m ago•0 comments

Nematic: A Gameboy emulator with quasi-realistic LCD shaders

https://nematic.tulv.in/
3•atulvi•24m ago•1 comments

DNA Mutations Discovered in the Children of Chernobyl Workers

https://www.sciencealert.com/dna-mutations-discovered-in-the-children-of-chernobyl-workers
2•benkan•24m ago•0 comments

Secondhand laptop market goes 'mainstream' amid memory crunch

https://www.theregister.com/2026/02/16/refurbished_pcs_memory_crunch/
2•benkan•25m ago•0 comments

JWasm: Masm Compatible Assembler

https://github.com/Baron-von-Riedesel/JWasm
1•doener•26m ago•0 comments

In Defense of Boring Technology

https://aazar.me/posts/in-defense-of-boring-technology
1•44za12•27m ago•0 comments

"Signal sniffer" to detect Nancy Guthrie's pacemaker deployed

https://www.cbsnews.com/news/signal-sniffer-detect-nancy-guthrie-pacemaker-deployed-law-enforceme...
1•Brajeshwar•27m ago•0 comments

Show HN: Visualize S&P 500 financials with Sankey diagrams

https://10q10k.net
3•kyleslight•29m ago•0 comments

Federal Reserve set to loosen US bank rules in attempt to boost mortgage lending

https://www.ft.com/content/b36ca89c-39d6-47b6-9f62-0389ec8dda9d
3•petethomas•31m ago•0 comments

Show HN: Minimalist Glitch Art Maker (100% client-side)

https://yuyz0112.github.io/glitch-art-maker/
1•yz-yu•34m ago•0 comments

Show HN: VoiceNative Directory – Discover and Submit apps built for voice first

https://voicenativeapps.com
1•vikizz•37m ago•0 comments

A Scientific Table Generator

https://www.llambada.com/p/mz3XU3Jd/latex-table-generator
1•roody_wurlitzer•40m ago•0 comments

Show HN: Ucpify – JSON config to UCP-compliant commerce server

https://github.com/hemanth/ucpify
1•init0•42m ago•0 comments

An economist explains why he's still 'bullish on America' – AI and all

https://www.washingtonpost.com/podcasts/impromptu/an-economist-explains-why-hes-still-bullish-on-...
1•paulpauper•43m ago•0 comments

Submissions to Journals, by Terence Tao

https://www.math.ucla.edu/~tao/submissions_old.html
1•paulpauper•43m ago•0 comments

Publishing a Simple Paper as an Undergraduate

https://mathoverflow.net/questions/313961/publishing-a-simple-paper-as-an-undergraduate
1•paulpauper•44m ago•0 comments

SvarDOS – an open-source DOS distribution

http://svardos.org/
16•d_silin•52m ago•1 comments

Show HN: Agent Forge – Persistent memory and desktop automation for Claude Code

https://github.com/WeberG619/agent-forge
2•WeberG619•54m ago•0 comments

Fujitsu AI-Driven Software Development Platform

https://global.fujitsu/en-global/pr/news/2026/02/17-01
1•linguae•55m ago•1 comments

'Like a Virgin' songwriter Billy Steinberg dies at 74

1•poojagill•55m ago•1 comments

Anderson Cooper Reportedly Steps Away from 60 Minutes After Nearly 20 Years

1•poojagill•56m ago•0 comments

How Michael Abrash doubled Quake framerate

https://fabiensanglard.net/quake_asm_optimizations/
1•guiambros•57m ago•0 comments

Show HN: Alexa-like voice interface for OpenClaw

https://github.com/sachaabot/openclaw-voice-agent
1•sachaa•1h ago•0 comments
Open in hackernews

Smart-KNN: A production-focused, feature-weighted KNN optimized for CPU

1•Jashwanth01•1h ago
Hi HN,

I’ve been working on SmartKNN, a nearest-neighbor system designed specifically for production deployment rather than academic experimentation.

The goal was not to slightly tweak classical KNN, but to restructure it into a deployable, latency-aware system while preserving interpretability.

What it does differently

Traditional KNN is simple and interpretable, but in practice it struggles with:

Inference latency as datasets grow

Equal treatment of all features

Fixed distance metrics

Unpredictable performance under load

SmartKNN addresses these issues through:

1. Learned Feature Weighting

Feature importance is learned automatically and incorporated into the distance computation. This reduces noise and improves neighbor quality without manual tuning.

2. Adaptive Distance Behavior

Distance computation adapts to learned feature relevance instead of relying on a fixed metric like plain Euclidean.

3. Backend Selection

SmartKNN supports both brute-force and approximate nearest-neighbor strategies.

Small datasets → brute-force

Larger datasets → approximate candidate retrieval

Approximate search is used only to retrieve candidates. Final prediction always uses the learned distance function.

4. CPU-Focused Design

The system is optimized for predictable CPU inference performance rather than GPU-heavy workflows. The focus is stable latency characteristics suitable for production workloads.

5. Unified API

Supports both classification and regression through a scikit-learn compatible interface.

Performance

On structured/tabular datasets with strong local structure, SmartKNN achieves competitive accuracy against tree-based models.

It does not aim to replace tree models or neural networks universally. It performs best where neighborhood structure is meaningful and interpretability is desired.

Limitations

- Requires dataset to remain in memory - High-dimensional dense data can still challenge nearest-neighbor methods - No online/incremental updates yet - Backend preparation adds setup time for large datasets

Project Status

- Public release: 0.2.2 - Stable API - Open source - CPU-optimized core Repository: https://github.com/thatipamula-jashwanth/smart-knn I’d appreciate feedback, especially from people who have deployed nearest-neighbor systems in production.

Thanks.

- Jashwanth

Comments

verdverm•1h ago
1. just submit a title and link, what you have is unclickable

2. don't put readme like content on HN, let the other side of the link speak for itself

3. a blog post about the experience or lessons learned will often do much better

4. do you have a peer reviewed paper to go with this?

Jashwanth01•1h ago
Thanks for the feedback.. that makes sense.

I’ve updated the post to include a direct link to the repository. I appreciate the note about keeping the HN submission lighter and letting the linked page speak for itself.

This project is engineering-focused rather than academic research, so there isn’t a peer-reviewed paper at this stage. The goal was to explore practical deployment tradeoffs in nearest-neighbor systems.

I’ll consider writing a blog post focused on lessons learned and design decisions that’s a good suggestion.

verdverm•58m ago
My Phd dissertation started as an engineer's frustration, the papers can come later

urls in the text are not links, I believe you will need a new submission