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Voyager 1 runs on 69 KB of memory and an 8-track tape recorder

https://techfixated.com/a-1977-time-capsule-voyager-1-runs-on-69-kb-of-memory-and-an-8-track-tape...
224•speckx•3h ago•97 comments

C++26 is done ISO C++ standards meeting, Trip Report

https://herbsutter.com/2026/03/29/c26-is-done-trip-report-march-2026-iso-c-standards-meeting-lond...
81•pjmlp•2h ago•37 comments

More on Version Control

https://bramcohen.com/p/more-on-version-control
13•velmu•36m ago•1 comments

Typing and Keyboards

https://lzon.ca/posts/series/grateful/typing-and-keyboards/
25•jpmitchell•1h ago•30 comments

Pretext: TypeScript library for multiline text measurement and layout

https://github.com/chenglou/pretext
108•emersonmacro•1d ago•16 comments

A Message from the Ruby Central Board

https://rubycentral.org/news/a-message-from-the-ruby-central-board/
11•nertzy•34m ago•4 comments

My MacBook Keyboard Is Broken and It's Insanely Expensive to Fix

https://tobiasberg.net/posts/my-macbook-keyboard-is-broken-and-its-insanely-expensive-to-fix/
15•TobiasBerg•54m ago•4 comments

The RISE RISC-V Runners: free, native RISC-V CI on GitHub

https://riseproject.dev/2026/03/24/announcing-the-rise-risc-v-runners-free-native-risc-v-ci-on-gi...
76•thebeardisred•3d ago•20 comments

Neovim 0.12.0

https://github.com/neovim/neovim/releases/tag/v0.12.0
142•pawelgrzybek•2h ago•66 comments

Personal AI Development Environment

https://github.com/rbren/personal-ai-devbox
10•pros•41m ago•1 comments

Midnight train from GA: A view of America from the tracks as airports struggle

https://isp.netscape.com/news/story/0001/20260329/e4d8ea591b3b036142c2bf2dee7dff5a
3•walterbell•2m ago•0 comments

AyaFlow: A high-performance, eBPF-based network traffic analyzer written in Rust

https://github.com/DavidHavoc/ayaFlow
55•tanelpoder•4h ago•3 comments

The "Vibe Coding" Wall of Shame

https://crackr.dev/vibe-coding-failures
5•wa5ina•20m ago•1 comments

The rise and fall of IBM's 4 Pi aerospace computers: an illustrated history

https://www.righto.com/2026/03/ibm-4-pi-computer-history.html
41•zdw•3h ago•9 comments

Show HN: QuickBEAM – run JavaScript as supervised Erlang/OTP processes

https://github.com/elixir-volt/quickbeam
41•dannote•22h ago•5 comments

Nitrile and latex gloves may cause overestimation of microplastics

https://news.umich.edu/nitrile-and-latex-gloves-may-cause-overestimation-of-microplastics-u-m-stu...
453•giuliomagnifico•10h ago•191 comments

The Epistemology of Microphysics

https://www.edwardfeser.com/unpublishedpapers/microphysics.html
20•danielam•4d ago•10 comments

Police used AI facial recognition to wrongly arrest TN woman for crimes in ND

https://www.cnn.com/2026/03/29/us/angela-lipps-ai-facial-recognition
238•ourmandave•5h ago•90 comments

LinkedIn uses 2.4 GB RAM across two tabs

452•hrncode•11h ago•281 comments

Kyushu Railway Company Train Varieties

https://www.jrkyushu.co.jp/english/train/index.html
4•NaOH•54m ago•0 comments

Full network of clitoral nerves mapped out for first time

https://www.theguardian.com/society/2026/mar/29/full-network-clitoral-nerves-mapped-out-first-tim...
126•onei•4h ago•35 comments

A nearly perfect USB cable tester

https://blog.literarily-starved.com/2026/02/technology-the-nearly-perfect-usb-cable-tester-does-e...
236•birdculture•3d ago•121 comments

Creating West Coast Buddhism (2024)

https://letter.palladiummag.com/p/creating-west-coast-buddhism
9•surprisetalk•3d ago•1 comments

Observations from carbon dioxide monitoring

https://grieve-smith.com/ftn/2026/03/nine-observations-from-carbon-dioxide-monitoring/
16•coloneltcb•2d ago•3 comments

Miasma: A tool to trap AI web scrapers in an endless poison pit

https://github.com/austin-weeks/miasma
235•LucidLynx•9h ago•184 comments

First Western Digital, now Sony: The tech giant suspends SD card sales

https://mashable.com/article/sony-sd-card-sales-suspended-memory-shortage
52•_tk_•2h ago•37 comments

I turned my Kindle into my own personal newspaper

https://manualdousuario.net/en/how-to-kindle-personal-newspaper/
157•rpgbr•2d ago•52 comments

Show HN: I made a "programming language" looking for feedback

https://github.com/alonsovm44/glupe
3•alonsovm•1h ago•2 comments

Show HN: Create a full language server in Go with 3.17 spec support

https://github.com/owenrumney/go-lsp
73•rumno0•4d ago•14 comments

Netscape News Feed Straight Out of the Late 00s

https://isp.netscape.com/
35•mistyvales•2h ago•8 comments
Open in hackernews

Llasa: Llama-Based Speech Synthesis

https://llasatts.github.io/llasatts/
168•CalmStorm•11mo ago

Comments

CalmStorm•11mo ago
LLaSA is a simple framework for speech synthesis that employs a single-layer vector quantizer (VQ) codec and a single Transformer architecture to fully align with standard LLMs such as LLaMA.
WastedCucumber•11mo ago
Probably the title should have the correct capitalization then. Cause I was fully expecting a speech synthesis tool that sounded like llamas talking human language and now I'm bummed out!
StevenNunez•11mo ago
I can't wait see this integrated into Open WebUI! These sound amazing.
gapeleon•11mo ago
You can run an openai-compatible endpoint and point open-webui at it if you want this. I had to add a function to filter out markdown lists, code, etc as the model was choking on them.
mring33621•11mo ago
the long 'uuuuhhhhhhh' from some of the lesser models is killing me.
jszymborski•11mo ago
based on the samples, it really seams like anything smaller than 3B is pretty useless.
hadlock•11mo ago
If you're doing a home lab voice assistant 1B is nice, because on a 12gb gpu you can run a moderately competent 7b LLM and two 1b models; 1 for speech to text and also text to speech, plus some for the wake word monitor. Maybe in a couple of years we can combine all this into a single ~8b model that runs efficiently on 12gb gpu. Nvidia doesn't seem very incentivized right now to sell consumer GPUs that can run all this on a single consumer grade chip when they're making so much money selling commercial grade 48gb cards.
Dlemo•11mo ago
Hui for the activation word?

Shouldn't there be some hardware module be available similar to how Alexa, Siri and Google do it?

Whith a ring buffer detection the word without recording everything?

gapeleon•11mo ago
This finetune seems pretty stable (1b llasa) https://huggingface.co/spaces/HKUST-Audio/Llasa-1B-multi-spe...

1B is actually huge for a TTS model. Here's an 82m model with probably the most stable/coherent output of all the open weights tts models I've tested: https://huggingface.co/spaces/hexgrad/Kokoro-TTS

But if you mean zero-shot cloning, yeah they all seem to have those slurred speech artefacts from time to time.

nialv7•11mo ago
the mispronunciation of 行 and 行 in the Chinese sample is killing me too XD
dheera•11mo ago
> employs a single-layer vector quantizer (VQ) codec and a single Transformer architecture to fully align

I really wish when new models were released that they would draw a diagram of all the layers and the tensor input and output sizes at each layer, with zoom in/out capabilities if needed using D3.js or whatever visualization framework if needed. Every single layer should be on there with its input and output sizes.

These one-sentence descriptions, and approximate block diagrams with arrows pointing at each other are never enough to understand how something is actually implemented.

exe34•11mo ago
Sounds like a solid SaaS business plan!
dr_kiszonka•11mo ago
That might be intentional.
imtringued•11mo ago
This already exists in Transformer Lab and ONNX (not recommended for transformers).

You can also build a custom version of llama.cpp that writes out the ggml compute graph. What's irritating is that hugging face didn't add it to their GGUF file viewer.

dheera•11mo ago
Oh, sure, for the well-known models that are already on there.

I just wish that new research would always spell it out in full instead of these silly block diagrams labelled with just e.g. "Cross Attention" and not the exact parameters, number of heads, layer sizes, etc.

Also some of these diagrams use a + for concatenation and some use it for addition, that's another headache to figure out, having layer sizes would make it clear.

ks2048•11mo ago
Odd that the page doesn't seem to link to either,

paper: https://arxiv.org/abs/2502.04128

github: https://github.com/zhenye234/LLaSA_training

thot_experiment•11mo ago
Interesting that there isn't a mention of Orpheus as prior art either since it's the exact same thing.

(https://github.com/canopyai/Orpheus-TTS)

gapeleon•11mo ago
> Interesting that there isn't a mention of Orpheus as prior art either

Llasa-3b (https://huggingface.co/HKUSTAudio/Llasa-3B) came out before Orpheus (https://huggingface.co/canopylabs/orpheus-3b-0.1-ft).

> it's the exact same thing.

They're very similar, but they're not the exact same thing.

Llasa uses xcodec2, a much simpler, lossless 16khz wav codec. This makes it superior for one-shot voice cloning.

Orpheus' 24khz snac codec is lossy which makes it difficult to use for zero-shot cloning as the reference audio gets degraded during tokenization. You can test this here: https://huggingface.co/spaces/Gapeleon/snac_test

But when finetuned on 50+ audio samples, it produces much cleaner 24khz audio than Llasa, and the snac model is much easier to run on consumer hardware than xcodec2 (87t/s for realtime speech, which can be achieved on an RTX3080 for example)

oezi•11mo ago
Do you happen to know why Orpheus and Llasa use Finetuning for voice cloning?

Zonos uses 128-float embeddings for voices and it seems so much nicer. Because you can just mix and match voices without changing the model.

thot_experiment•11mo ago
No, you just condition it with text-voice token pairs and then when conditioning further inference w/ text the voice tokens tend to match the pairs further up in the context.
oezi•11mo ago
Isn't xcodec2 also lossy? I thought it is also just another neural codec (50 tok/s, single codebook).

What are people using to upsampling back to 44,1 or 48 khz? Anything fancy?

woodson•11mo ago
They’re both lossy. They use a VAE-VQ type architecture trained with a combination of losses/discriminators. The differences are mainly the encoder/decoder architecture, the type of bottleneck quantization (RVQ, FSQ, etc.) and of course the training data.