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Show HN: Gemini Pro 3 hallucinates the HN front page 10 years from now

https://dosaygo-studio.github.io/hn-front-page-2035/news
1042•keepamovin•5h ago•443 comments

10 Years of Let's Encrypt

https://letsencrypt.org/2025/12/09/10-years
133•SGran•1h ago•45 comments

PeerTube is recognized as a digital public good by Digital Public Goods Alliance

https://www.digitalpublicgoods.net/r/peertube
237•fsflover•3h ago•34 comments

Mistral Releases Devstral 2 (72.2% SWE-Bench Verified) and Vibe CLI

https://mistral.ai/news/devstral-2-vibe-cli
340•pember•5h ago•159 comments

If you're going to vibe code, why not do it in C?

https://stephenramsay.net/posts/vibe-coding.html
158•sramsay•3h ago•172 comments

Handsdown one of the coolest 3D websites

https://bruno-simon.com/
238•razzmataks•4h ago•67 comments

Pebble Index 01 – External memory for your brain

https://repebble.com/blog/meet-pebble-index-01-external-memory-for-your-brain
262•freshrap6•5h ago•265 comments

So You Want to Speak at Software Conferences?

https://dylanbeattie.net/2025/12/08/so-you-want-to-speak-at-software-conferences.html
45•speckx•1h ago•8 comments

Donating the Model Context Protocol and Establishing the Agentic AI Foundation

https://www.anthropic.com/news/donating-the-model-context-protocol-and-establishing-of-the-agenti...
63•meetpateltech•3h ago•27 comments

Kaiju – General purpose 3D/2D game engine in Go and Vulkan with built in editor

https://github.com/KaijuEngine/kaiju
119•discomrobertul8•5h ago•50 comments

LLM from scratch, part 28 – training a base model from scratch on an RTX 3090

https://www.gilesthomas.com/2025/12/llm-from-scratch-28-training-a-base-model-from-scratch
408•gpjt•1w ago•94 comments

The stack circuitry of the Intel 8087 floating point chip, reverse-engineered

https://www.righto.com/2025/12/8087-stack-circuitry.html
22•elpocko•2h ago•9 comments

Clearspace (YC W23) Is Hiring a Founding Designer

https://www.ycombinator.com/companies/clearspace/jobs/yamWTLr-founding-designer-at-clearspace
1•roycebranning•3h ago

My favourite small hash table

https://www.corsix.org/content/my-favourite-small-hash-table
86•speckx•5h ago•17 comments

Launch HN: Mentat (YC F24) – Controlling LLMs with Runtime Intervention

24•cgorlla•3h ago•21 comments

MCP Joins the Agentic AI Foundation

http://blog.modelcontextprotocol.io/posts/2025-12-09-mcp-joins-agentic-ai-foundation/
22•arthurdenture•1h ago•2 comments

"The Matilda Effect": Pioneering Women Scientists Written Out of Science History

https://www.openculture.com/2025/12/matilda-effect.html
32•binning•2h ago•5 comments

Show HN: AlgoDrill – Interactive drills to stop forgetting LeetCode patterns

https://algodrill.io
140•henwfan•9h ago•85 comments

Agentic QA – Open-source middleware to fuzz-test agents for loops

15•Saurabh_Kumar_•6d ago•5 comments

30 Year Anniversary of WarCraft II: Tides of Darkness

https://www.jorsys.org/archive/december_2025.html#newsitem_2025-12-09T07:42:19Z
131•sjoblomj•11h ago•81 comments

AWS Trainium3 Deep Dive – A Potential Challenger Approaching

https://newsletter.semianalysis.com/p/aws-trainium3-deep-dive-a-potential
50•Symmetry•5d ago•16 comments

The Joy of Playing Grandia, on Sega Saturn

https://www.segasaturnshiro.com/2025/11/27/the-joy-of-playing-grandia-on-sega-saturn/
157•tosh•10h ago•99 comments

Show HN: Detail, a Bug Finder

https://detail.dev/
36•drob•2h ago•15 comments

Apple's slow AI pace becomes a strength as market grows weary of spending

https://finance.yahoo.com/news/apple-slow-ai-pace-becomes-104658095.html
102•bgwalter•5h ago•115 comments

Constructing the Word's First JPEG XL MD5 Hash Quine

https://stackchk.fail/blog/jxl_hashquine_writeup
88•luispa•1w ago•17 comments

Transformers know more than they can tell: Learning the Collatz sequence

https://www.arxiv.org/pdf/2511.10811
89•Xcelerate•6d ago•32 comments

Ask HN: Should "I asked $AI, and it said" replies be forbidden in HN guidelines?

578•embedding-shape•4h ago•329 comments

Tutorial 48: my museum collections kit

https://svpow.com/2025/11/26/tutorial-48-my-museum-collections-kit/
5•surprisetalk•4d ago•0 comments

The Big Vitamin D Mistake [pdf]

https://pmc.ncbi.nlm.nih.gov/articles/PMC5541280/pdf/jpmph-50-4-278.pdf
28•felineflock•54m ago•9 comments

How private equity is changing housing

https://www.theatlantic.com/ideas/2025/12/private-equity-housing-changes/685138/
72•harambae•3h ago•162 comments
Open in hackernews

Llasa: Llama-Based Speech Synthesis

https://llasatts.github.io/llasatts/
168•CalmStorm•7mo ago

Comments

CalmStorm•7mo 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•7mo 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•7mo ago
I can't wait see this integrated into Open WebUI! These sound amazing.
gapeleon•7mo 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•7mo ago
the long 'uuuuhhhhhhh' from some of the lesser models is killing me.
jszymborski•7mo ago
based on the samples, it really seams like anything smaller than 3B is pretty useless.
hadlock•7mo 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•7mo 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•7mo 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•7mo ago
the mispronunciation of 行 and 行 in the Chinese sample is killing me too XD
dheera•7mo 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•7mo ago
Sounds like a solid SaaS business plan!
dr_kiszonka•7mo ago
That might be intentional.
imtringued•7mo 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•7mo 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•7mo 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•7mo 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•7mo 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•7mo 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•7mo 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•7mo 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•7mo 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.