Top stories

Motorola announces a partnership with GrapheneOS
km about 14 hours ago

Motorola announces a partnership with GrapheneOS

Motorola Solutions introduced three new B2B solutions at MWC 2026, including a private wireless network, a cloud-based dispatch system, and an edge computing platform for mission-critical applications.

motorolanews.com
1,805 634
Summary
Show HN: uBlock filter list to blur all Instagram Reels
shraiwi about 1 hour ago

Show HN: uBlock filter list to blur all Instagram Reels

A filter list for uBO that blurs all video and non-follower content from Instagram. Works on mobile with uBO Lite.

related: https://news.ycombinator.com/item?id=47016443

gist.github.com
35 8
Summary
First in-utero stem cell therapy for fetal spina bifida repair is safe: study
gmays about 6 hours ago

First in-utero stem cell therapy for fetal spina bifida repair is safe: study

A study finds that the first-ever in utero stem cell therapy for fetal spina bifida repair is safe, paving the way for potential new treatments for this congenital condition.

health.ucdavis.edu
177 18
Summary
New iPad Air, powered by M4
Garbage about 7 hours ago

New iPad Air, powered by M4

Apple has introduced the new iPad Air powered by the M4 chip, offering improved performance and efficiency compared to previous models. The device features a sleek design, enhanced display, and expanded connectivity options.

apple.com
235 377
Summary
foxfoxx about 4 hours ago

Show HN: Govbase – Follow a bill from source text to news bias to social posts

Govbase tracks every bill, executive order, and federal regulation from official sources (Congress.gov, Federal Register, White House). An AI pipeline breaks each one down into plain-language summaries and shows who it impacts by demographic group.

It also ties each policy directly to bias-rated news coverage and politician social posts on X, Bluesky, and Truth Social. You can follow a single bill from the official text to how media frames it to what your representatives are saying about it.

Free on web, iOS, and Android.

https://govbase.com

I'd love feedback from the community, especially on the data pipeline or what policy areas/features you feel are missing.

govbase.com
85 46
Summary
doener about 12 hours ago

/e/OS is a complete, fully “deGoogled” mobile ecosystem

E OS is an open-source operating system designed to provide a secure and private digital experience. It focuses on user privacy, secure communications, and ethical technology, aiming to empower individuals in an increasingly digital world.

e.foundation
594 340
Summary
whoishiring about 5 hours ago

Ask HN: Who is hiring? (March 2026)

Please state the location and include REMOTE for remote work, REMOTE (US) or similar if the country is restricted, and ONSITE when remote work is not an option.

Please only post if you personally are part of the hiring company—no recruiting firms or job boards. One post per company. If it isn't a household name, explain what your company does.

Please only post if you are actively filling a position and are committed to replying to applicants.

Commenters: please don't reply to job posts to complain about something. It's off topic here.

Readers: please only email if you are personally interested in the job.

Searchers: try https://dheerajck.github.io/hnwhoishiring/, http://nchelluri.github.io/hnjobs/, https://hnresumetojobs.com, https://hnhired.fly.dev, https://kennytilton.github.io/whoishiring/, https://hnjobs.emilburzo.com, or this (unofficial) Chrome extension: https://chromewebstore.google.com/detail/hn-hiring-pro/mpfal....

Don't miss this other fine thread: Who wants to be hired? https://news.ycombinator.com/item?id=47219667

120 146
rohxnsxngh about 4 hours ago

Launch HN: OctaPulse (YC W26) – Robotics and computer vision for fish farming

Hi HN! My name is Rohan and, together with Paul, I’m the co-founder of OctaPulse (https://www.tryoctapulse.com/). We’re building a robotics layer for seafood production, starting with automated fish inspection. We are currently deployed at our first production site with the largest trout producer in North America.

You might be wondering how the heck we got into this with no background in aquaculture or the ocean industry. We are both from coastal communities. I am from Goa, India and Paul is from Malta and Puerto Rico. Seafood is deeply tied to both our cultures and communities. We saw firsthand the damage being done to our oceans and how wild fish stocks are being fished to near extinction. We also learned that fish is the main protein source for almost 55% of the world's population. Despite it not being huge consumption in America it is massive globally. And then we found out that America imports 90% of its seafood. What? That felt absurd. That was the initial motivation for starting this company.

Paul and I met at an entrepreneurship happy hour at CMU. We met to talk about ocean tech. It went on for three hours. I was drawn to building in the ocean because it is one of the hardest engineering domains out there. Paul had been researching aquaculture for months and kept finding the same thing: a $350B global industry with less data visibility than a warehouse. After that conversation we knew we wanted to work on this together.

Hatcheries, the early stage on-land part of production, are full of labor intensive workflows that are perfect candidates for automation. Farmers need to measure their stock for feeding, breeding, and harvest decisions but fish are underwater and get stressed when handled. Most farms still sample manually. They net a few dozen fish, anesthetize them, place them on a table to measure one by one, and extrapolate to populations of hundreds of thousands. It takes about 5 minutes per fish and the data is sparse.

When we saw this process we were baffled. There had to be a better way. This was the starting point that really kicked us off.

Here is the thing though. Most robots are not built to handle humid and wet environments. Salt water is the enemy of anything mechanical. Corrosion is such a pain to deal with. Don't get me started on underwater computer vision which has to parse through water turbidity and particles. Fish move unpredictably and deform while swimming. Occlusion is constant. Calibration is tricky in uncontrolled setups. Handling live fish with robotics is another challenge that hasn't really been solved before. Fish are slippery, fragile, and stress easily. All of this is coupled with the requirement that all materials must be food safe.

On the vision side we are using Luxonis OAK cameras which give us depth plus RGB in a compact form factor. The onboard Myriad X VPU lets us run lightweight inference directly on the camera for things like detection and tracking without needing to send raw frames over USB constantly. For heavier workloads like segmentation and keypoint extraction we bump up to Nvidia Jetsons. We have tested on the Orin Nano and Orin NX depending on power and thermal constraints at different sites.

The models themselves are CNN and transformer based architectures. We are running YOLO variants for detection, custom segmentation heads for body outlines, and keypoint models for anatomical landmarks. The tricky part is getting these to run fast enough on edge hardware. We are using a mix of TensorRT, OpenVINO, and ONNX Runtime depending on the deployment target. Quantization has been a whole journey. INT8 quantization on TensorRT gives us the speed we need but you have to be careful about accuracy degradation especially on the segmentation outputs where boundary precision matters. We spent a lot of time building calibration datasets that actually represent the variance we see on farms. Lighting changes throughout the day, water clarity shifts, fish density varies. Your calibration set needs to capture all of that or your quantized model falls apart in production.

There is no wifi at most of these farms so we are using Starlink for connectivity in remote or offshore locations. Everything runs locally first and syncs when connection is available. We are not streaming video to the cloud. All inference happens on device.

Behind the scenes we have been building our own internal tooling for labeling, task assignment, and model management. Early on we tried existing labeling platforms but they did not fit our workflow. We needed tight integration between labeling, training pipelines, and deployment. So we built our own system where we can assign labeling tasks to annotators, track progress, version datasets, and push models to edge devices with a single command. It is not fancy but it keeps everything under our control and makes iteration fast. When you are trying to close the loop between data collection on farm, labeling, training, quantization, and deployment you cannot afford to have fragmented tooling. We needed one system that handles all of it.

On the robotics side we are building custom enclosures around off the shelf components and modifying delta robots with soft robotics grippers for handling. Vacuum and typical gripper actuation will not work in this environment so we are using compliant grippers that can safely handle fish without damaging them. We started with the Delta X S as our test platform and are evaluating whether to move to industrial delta robots or build our own from scratch once we validate the kinematics and payload requirements in wet and humid environments. The end effector design is still evolving. Fish come in different sizes and body shapes depending on species and life stage so we need grippers that can adapt.

Right now we are focused on operations outside the water. Hatchery phenotyping, sorting, quality inspection. These are more accessible than full underwater deployment and cheaper to start with. The idea is that if we can combine genetics data, environmental data, and phenotypic imagery we can help farms identify which fish to breed and which to cull. This is where selective breeding starts.

Something that surprised us early on: only a tiny fraction of farmed fish species have been through genetic improvement programs. Chickens grow 4x faster than they did in 1950 because of decades of selective breeding. But most farmed fish are essentially wild genetics. The opportunity to improve aquaculture genetics is massive but it is completely bottlenecked on measurement. You cannot improve what you cannot measure, and farms can barely measure anything at scale so far.

The industry moves on trust though. We are dealing with live animals and farms are cautious about who they let near their stock. Coming from outside aquaculture, that trust had to be earned. Paul was already a Future Leader with the Coalition for Sustainable Aquaculture but the real turning point was attending World Aquaculture Society, the largest conference in the US. Through a connection of a connection he met the incoming lead geneticist at what became our first customer. That relationship turned into a paid pilot with the largest trout producer in North America.

I previously worked at ASML, Nvidia, Tesla, and Toyota. Paul worked at Bloomberg. We met at CMU and immediately knew that we wanted to tackle this problem and put our life's work into this.

We would love feedback from any of you who have worked on computer vision in harsh or unpredictable environments, edge deployment on constrained hardware, or gentle and appropriate handling of live animals with robotics. If you are running inference on Jetsons or OAK cameras and have opinions on quantization workflows we would love to hear what has worked for you. If you have aquaculture experience we are curious what problems we should be thinking about that we haven't encountered yet.

Dang told us you’re all used to demo videos but unfortunately we can’t share them due to NDAs. But here’s a photo of us building our initial dataset for phenotyping and morphometric analysis: https://drive.google.com/file/d/1z3oSlB8ed9hanrybzP24XTfjDJE....

This is a weird industry to be building in and we are learning something new every week. If you have experience with edge deployment, robotics in wet environments, or aquaculture itself we would love to hear your perspective. And if you just have questions about fish or the tech we are happy to go deep in the comments. Excited to hear what this community thinks.

40 15
casmalia about 2 hours ago

"That Shape Had None" – A Horror of Substrate Independence (Short Fiction)

The article explores the concept of a mysterious shape that lacks definitive form, yet exerts a powerful influence. It delves into the intricate and thought-provoking implications of this enigmatic phenomenon.

starlightconvenience.net
22 3
Summary
schipperai about 7 hours ago

Parallel coding agents with tmux and Markdown specs

This article explores the concept of parallel coding agents, a novel approach to software development that involves multiple autonomous agents working collaboratively on a codebase. The author discusses the potential benefits of this method, such as increased efficiency and reduced development time, and outlines the technical details of how parallel coding agents could be implemented.

schipper.ai
79 49
Summary
todsacerdoti about 5 hours ago

Packaging a Gleam app into a single executable

dhzdhd.dev
55 2
A case for Go as the best language for AI agents
karakanb about 2 hours ago

A case for Go as the best language for AI agents

The article discusses the advantages of the Go programming language for developing intelligent agents. It highlights Go's performance, concurrency support, and ease of deployment as key factors that make it well-suited for building effective agent systems.

getbruin.com
71 101
Summary
Reflex (YC W23) Is Hiring Software Engineers – Python
apetuskey about 4 hours ago

Reflex (YC W23) Is Hiring Software Engineers – Python

Reflex, a Y Combinator-backed company, is hiring for various engineering roles, including Full-Stack Engineer, Front-End Engineer, and Backend Engineer. The company focuses on building tools to help teams work more efficiently and effectively.

ycombinator.com
1 0
Summary
How to talk to anyone and why you should
Looky1173 about 14 hours ago

How to talk to anyone and why you should

theguardian.com
466 475
Use the Mikado Method to do safe changes in a complex codebase
foenix 4 days ago

Use the Mikado Method to do safe changes in a complex codebase

The article outlines a process to safely make changes in a complex codebase, involving understanding the existing system, creating a safety net through testing, making small incremental changes, and continuously monitoring the impact of those changes.

understandlegacycode.com
117 50
Summary
Inside the M4 Apple Neural Engine, Part 1: Reverse Engineering
zdw 1 day ago

Inside the M4 Apple Neural Engine, Part 1: Reverse Engineering

The article delves into the architecture and capabilities of the M4 Neural Engine, Apple's dedicated AI processing unit found in its latest mobile devices. It explores the chip's design, performance improvements, and how it enhances on-device machine learning tasks.

maderix.substack.com
186 53
Summary
Zclaw – The 888 KiB Assistant
kristianpaul 3 days ago

Zclaw – The 888 KiB Assistant

Zclaw is a software development and consulting company that offers a range of services, including web development, mobile app development, and custom software solutions. The article provides an overview of the company's expertise and highlights its focus on delivering high-quality, innovative technology solutions to its clients.

zclaw.dev
53 31
Summary
vinhnx 3 days ago

Build your own Command Line with ANSI escape codes (2016)

The article discusses how to build a command line interface (CLI) using ANSI escape codes, which allow for advanced text formatting and coloring in the terminal. It provides step-by-step instructions and sample code to create a customized CLI with features like syntax highlighting, progress bars, and interactive menus.

lihaoyi.com
11 2
Summary
ibobev about 5 hours ago

Notes on Lagrange Interpolating Polynomials

This article provides an overview of Lagrange interpolating polynomials, a method for constructing a polynomial that passes through a set of given data points. It explains the mathematical formulation of Lagrange polynomials and discusses their properties, including the fact that they are unique and can be used to interpolate values between the given data points.

eli.thegreenplace.net
31 8
Summary
Microsoft bans the word "Microslop" on its Discord, then locks the server
robtherobber about 11 hours ago

Microsoft bans the word "Microslop" on its Discord, then locks the server

Microsoft bans the use of the word 'Microslop' on its Discord server, leading to a backlash from users. The company then locks the server after the incident, highlighting the sensitivity around the use of controversial terms.

windowslatest.com
914 396
Summary
ynac about 6 hours ago

19th century silent film that first captured a robot attack

npr.org
19 4
iPhone 17e
meetpateltech about 7 hours ago

iPhone 17e

https://www.apple.com/iphone-17e/

apple.com
81 52
alvivar 4 days ago

Making Video Games in 2025 (without an engine)

The article explores how the game development industry may evolve by 2025, highlighting potential changes in game engines, hardware, monetization models, and the rise of cloud gaming and AI-driven content generation.

noelberry.ca
366 173
Summary
Anthropic Cowork feature creates 10GB VM bundle on macOS without warning
mystcb about 7 hours ago

Anthropic Cowork feature creates 10GB VM bundle on macOS without warning

github.com
333 166
is_taken about 5 hours ago

Felix "fx" Lindner has died

The article announces the retirement of Felix, the long-serving security researcher at Recurity Labs, and reflects on his significant contributions to the cybersecurity industry over the years.

blog.recurity-labs.com
111 25
Summary
gmays about 7 hours ago

Judge finalizes order for Greenpeace to pay $345M in ND oil pipeline case

A North Dakota judge has ordered Greenpeace to pay $345 million in damages to a company involved in the construction of an oil pipeline, finding the environmental group guilty of racketeering, conspiracy, and defamation in their opposition to the project.

northdakotamonitor.com
146 147
Summary
AMD Am386 released March 2, 1991
jnord about 8 hours ago

AMD Am386 released March 2, 1991

The article discusses the release of the AMD AM386 processor on March 2, 1991, which was a clone of the Intel 80386 microprocessor. It provides technical details about the AM386's performance and compatibility, as well as the historical context of AMD's efforts to compete with Intel in the x86 processor market.

dfarq.homeip.net
79 22
Summary
Language Model Contains Personality Subnetworks
PaulHoule about 5 hours ago

Language Model Contains Personality Subnetworks

The article explores the use of large language models for few-shot learning, demonstrating their ability to generalize knowledge and effectively solve tasks with limited training data. It presents a novel approach that significantly improves the performance of large language models on few-shot learning benchmarks.

arxiv.org
27 12
Summary
andsoitis 4 days ago

Thirty years on, Pokémon is still a monster hit

The article explores the enduring popularity of the Pokemon franchise, which has remained a cultural phenomenon for over three decades since its inception. It examines the franchise's evolution, its lasting appeal to multiple generations, and its ability to adapt and thrive in the ever-changing entertainment landscape.

economist.com
63 74
Summary
An Interesting Find: STM32 RDP1 Decryptor
carlossless about 7 hours ago

An Interesting Find: STM32 RDP1 Decryptor

The article describes a tool called the 'STM32 RDP1 Decryptor' that can be used to decrypt and recover data from STM32 microcontrollers that have their Read Protection (RDP) level set to 1. This can be useful for security research and reversing firmware on these devices.

carlossless.io
72 18
Summary