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Firefox 149 beta develops a split personality

by speckx · 3 minutes ago

1|www.theregister.com|0 comments

Show HN: IndieMe – AI for building music artist identity and release strategy

by JY058 · 6 minutes ago

Hi HN,

My team and I (a group of independent music artists and developers) have been building IndieMe, an AI system that helps artists define their identity while planning releases.

A pattern we kept seeing in independent music is that artists don’t necessarily struggle with making songs. They struggle with clarity — who they are, what they stand for, what their visual world looks like, and who they’re actually speaking to. Without that foundation, release marketing tends to feel scattered.

So we built a structured onboarding workflow that models an “Artist Profile” first — including target audience, visual direction, color palette, narrative positioning, and messaging backbone. From that profile, the system generates release strategies, content ideas, and actionable timelines that stay consistent with the artist’s identity.

Under the hood, we focus on structured outputs instead of open-ended chat. The goal is to generate modular, editable building blocks (identity system → strategy modules → task plan) rather than walls of AI text.

We’re officially launching now with a free tier and Pro subscription, and are actively testing whether artists are willing to pay for identity-first strategy tooling.

Would really appreciate feedback — especially from: - indie musicians - people building AI-native SaaS - anyone thinking about identity modeling/content planning for creators

Happy to answer questions.

https://indie-me.ai

— Jason

1|www.indie-me.ai|0 comments

Welcome (Back) to Macintosh

by Udo_Schmitz · 6 minutes ago

1|take.surf|0 comments

Show HN: Ed – A modern take on ancient codebook technology

by smalltorch · 8 minutes ago

ED is a new way to protect your messages in a old way.

The typical codebook comes with many challenges. They are hard to transport, hard to update, distribute. They do have one solid feature however. If the codebook can be kept secret, it will not be broken with compute.

ED attempts to solve these issues.

The words database included in the repo is a collection of over 2million common words, phrases, people, places and things. Each entry is tied to a unique string of numbers. To generate a 'key' we simply shuffle the map using secrets.randbelow() function. This is important as it's using device level entropy. Each entry reaches the 2million+! Permutation equally.

The combination of shuffles is now considered your key. This is what you can share with Bob.

Because each entry has multiple entries, based on how common a word or phrase is. You can send the same exact message many times without it ever repeating.

Alice and Bob can also generate long term keys that can be rotated. This comes at the cost of key size, but a 365 day key schedule is still only around 4gb.

Because of the ability to compress a long phrase into a single entry, this codebook shrinks the data efficiently.

Once the two ends are established, you should be able to privately communicate over any channel, including public channels.

Example Gallery: https://postimg.cc/gallery/Gs23JQW

1|gitlab.com|0 comments

SDK code mode shows SotA accuracy for operating APIs via MCP

by kwhinnery · 10 minutes ago

1|www.stainless.com|0 comments

Ask HN: Would engineers be interested in a technical prep consultant?

by TechPrepper · 10 minutes ago

Hi, apologies if this is the wrong thing to post, please delete as needed.

I've been a technical recruiter for 10+ years at major FAANG companies and startups, working on niche specialized roles. I used to come to Hacker News regularly to check "Who Wants To Be Hired," as I always like a more independent hacker mindset in engineers.

Would engineers here on Hacker News be interested in any interview prep consultation? I've been thinking about taking a sabbatical to travel, but I would stay active with work by offering consulting on technical prep and interview help.

I'm more just testing the waters here, but I would be open to doing a few free prep calls with anyone who has interviews lined up. The only ask is I would want updates on how thing went, and what you think the helpw as worth.

1||0 comments

Show HN: Flowly – a macOS app that brings smooth, fluid scrolling to any mouse

by simonij · 11 minutes ago

Hey HN! I built Flowly, a macOS utility that brings smooth, fluid scrolling to any external mouse. If you've ever used a third-party mouse on Mac, you know the pain. macOS gives trackpads beautiful inertial scrolling, but external mice get choppy/laggy, line-by-line movement. Flowly fixes this by intercepting scroll events and applying smoothing to create natural, fluid motion across every app.

· Works system-wide with any mouse (Logitech, Razer, etc.) · Per-app control: enable/disable smoothing per application · Customizable smoothness and speed · Lightweight: <1% CPU, ~20MB memory · macOS 12+ (Monterey through Sequoia)

Would love to hear your feedback! This is my first MacOS app also

https://flowlyapp.dev

2|flowlyapp.dev|1 comments

18,000 lines to replace a screenshot

by andrewmichael27 · 12 minutes ago

3|www.meetblueberry.com|1 comments

Evlog

by handfuloflight · 13 minutes ago

1|www.evlog.dev|0 comments

Show HN: Logcat.ai – Observability for Android, Telecom, Automotive System Logs

by vcodes · 15 minutes ago

I posted logcat.ai here several months ago when it was mostly an idea.

Since then I left my job and have been building full-time. 400+ organic signups, 3 paying customers across telecom, automotive, and device management. Time for a proper Show HN.

The problem: I've spent 13 years in Android OS internals (AOSP, LineageOS, founding engineer at Esper) and the debugging workflow has never meaningfully improved. You get a 100MB bugreport zip with 20+ files and spend hours ctrl+F'ing timestamps trying to correlate logcat with kernel logs with dumpsys with radio logs. Telecom engineers have it worse because they're also juggling QXDM modem traces. Automotive teams pile VHAL and CAN bus on top of all that.

What logcat.ai does: Upload the files you already have and get a root cause analysis with a correlated timeline across layers (app, framework, HAL, kernel, modem). No SDK, no agents, nothing to install.

How people actually use it: Telecom engineer uploads modem traces alongside a bugreport to figure out why VoLTE calls drop during handovers. MDM company uploads bugreports from fleet devices to triage field issues without reproducing them. Delta mode: upload two bugreports (working vs broken), get a structured diff of what changed without all the noise. Deep Research: autonomous multi-pass investigation that follows causal chains across log sources.

What's interesting technically: The hard part is preprocessing. A 200MB bugreport needs heavy denoising and intelligent chunking before an LLM can reason over it. Every other log type comes with its own challenges and then there is a mix of all of them. We use AI for human readable representation of the analysis and interaction. Currently supports bugreports, logcat, dmesg, tombstones, ANR traces, modem log exports from QXDM/QCAT or Mediatek's/Samsung's modem log outputs.

1|logcat.ai|0 comments

The Chinese Room Argument

by 1659447091 · 16 minutes ago

2|plato.stanford.edu|0 comments

Dota 2 guide on net worth [video]

by marysminefnuf · 16 minutes ago

1|www.youtube.com|0 comments

Show HN: BoardMint – upload a PCB, get a standards-backed issue report in ~30s

by pranavchahal · 21 minutes ago

Hi HN, I’m Pranav (founder). I design hardware and kept seeing a weird split: Engineers don’t trust AI to design full PCBs (hidden assumptions, stackups, manufacturing constraints, EMI/return paths, and the cost of being even slightly wrong - why tools like Flux still aren’t widely trusted for full designs). But customers keep asking ChatGPT to “review” boards. They paste screenshots/Gerbers and expect a real sign-off. It often sounds right, but it can hallucinate or miss what actually causes respins. Lesson building this: the hard part isn’t more AI, it’s deterministic, reproducible detection with explicit assumptions, with AI only to explain findings and suggest fixes. Would love critique: what’s worth catching pre-fab, what’s too noisy, and what would make you trust this as a release gate.

1|boardmint.io|0 comments

Show HN: Argus – A reproducible validation protocol for ML workloads (Free)

by Convia · 22 minutes ago

1|github.com|0 comments

Show HN: Pianoterm – Run shell commands from your Piano. A Linux CLI tool

by vustagc · 25 minutes ago

A little weekend project, made so I can pause/play/rewind directly on the piano, when learning a song by ear.

4|github.com|0 comments

Why are Agents better at searching with grep than embeddings?

by CShorten · 28 minutes ago

In this clip from the latest Weaviate Podcast, Doug Turnbull explains why simple lexical tools like grep work so well for agents: The transparent input-output relationship lets the agent reason about why results matched, adjust its strategy, and plan its next query.

https://x.com/weaviatepodcast/status/2028570908978262458

1||1 comments

Agents will pay like locals, not tourists

by gmays · 29 minutes ago

1|a16zcrypto.substack.com|0 comments

Show HN: DevToolKit – Free, Client-Side Dev Tools (Chmod, Cron, Docker Compose)

by THatch26 · 30 minutes ago

1|dev-tools.devtoolsite.workers.dev|0 comments

Show HN: Llmdoc – annotate codebase with LLM summaries only re-scan what changed

by tristanMatthias · 30 minutes ago

Hey HN!

I found myself constantly needing to pass complex codebases to LLMs for things like PRD generation, etc. Every time I paste a codebase into Claude I pay tokens for files the model doesn't care about. But if I only paste the relevant files, the model loses context about how everything fits together. It's an annoying tradeoff.

llmdoc is a small CLI that adds short LLM summaries for each file and intelligently updates them when the hash changes.

llmdoc annotate # Adds summaries for each file (respects .gitignore and you can configure it to ignore more)

llmdoc dump # Generates a handy "at a glance" summary to give to an LLM for complete context of your codebase.

There's also llmdoc check for CI — exits 1 if any annotation is stale or missing, no API key needed.

It supports Anthropic and OpenAI, works with 50+ languages, respects .gitignore, and has a --dry-run flag that estimates cost before touching anything.

A known issue is rate limiting for LLM providers, but because it all works with hashes, you can just rerun a few times to get it working.

Let me know what you think!

1|github.com|0 comments

No Code by Hand

by ashwch · 30 minutes ago

1|ashwch.com|1 comments