/MachineLearning

15.7K posts

/MachineLearning

/MachineLearning

@slashML

Cloud เข้าร่วม Aralık 2016
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Jianyang Gao
Jianyang Gao@gaoj0017·
The TurboQuant paper (ICLR 2026) contains serious issues in how it describes RaBitQ, including incorrect technical claims and misleading theory/experiment comparisons. We flagged these issues to the authors before submission. They acknowledged them, but chose not to fix them. The paper was later accepted and widely promoted by Google, reaching tens of millions of views. We’re speaking up now because once a misleading narrative spreads, it becomes much harder to correct. We’ve written a public comment on openreview (openreview.net/forum?id=tO3AS…). We would greatly appreciate your attention and help in sharing it.
Google Research@GoogleResearch

Introducing TurboQuant: Our new compression algorithm that reduces LLM key-value cache memory by at least 6x and delivers up to 8x speedup, all with zero accuracy loss, redefining AI efficiency. Read the blog to learn how it achieves these results: goo.gle/4bsq2qI

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Agentica
Agentica@agenticasdk·
We scored 36.08% on ARC-AGI-3 in one day using the Agentica SDK.
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The Spectator Index
The Spectator Index@spectatorindex·
Anthropic is resuming negotiations with the Pentagon for a deal on artificial intelligence, according to FT report.
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/MachineLearning@slashML·
@bubbleboi What financial commitments? Everything announced has thus far been optoinal ("up to X" amount)
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Eno Reyes
Eno Reyes@EnoReyes·
The most cost effective combination right now is setting Opus as your plan model and GLM 4.7 or GPT-5.2-Codex as your execution model. Gives you basically the same performance as opus, for a fraction of the tokens.
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/MachineLearning@slashML·
OpenAI plans to claim IP over the tokens sent to users?
/MachineLearning tweet media
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Jeffrey Emanuel
Jeffrey Emanuel@doodlestein·
Would you believe that, far from sponsoring me, @AnthropicAI today started banning several of my (now 22) Max accounts? For the crime of using their models to produce the most useful open-source agent coding tooling on the planet, and then giving it all away for free. And teaching my workflows and methods and prompts to everyone selflessly. Anthropic people who follow me (I know there are dozens of you), please DM me and make this right. I’m not asking for a handout. I’m paying $212 per month with tax for each of those accounts. And I also let you collect info on my usage and use the official harness. The RL from my usage is pure gold. I’ve also been a massive promoter of your company and it’s really messed up to try to ban me like this. Puts a really bad taste in my mouth and makes me never want to promote you guys again. I need to be spending my energy creating, not being made to feel like a criminal for making MIT-licensed tools. You’re also just helping your antagonist, Sam, since I’m now the proud owner of 11 GPT Pro accounts (and counting). I refuse to lose my momentum because of this nonsense. I will not be slowed.
John Thilén@JohnThilen

@doodlestein @AnthropicAI: please sponsor this man.

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Scott Stevenson
Scott Stevenson@scottastevenson·
Software is about to go through the same transition that stock trading did when algorithmic traders entered the market. AI will not be good for bootstrappers. They will be wrecked like retail traders were. There used to be many crevices of the market that large software companies couldn’t reach. Bootstrappers and small caps built nests there. But with AI, large software companies will start to look like multi-vertical hedge funds. With 1000 AI tentacles, they will suck the alpha out of every crevice. While one crevice may not have been appetizing enough to go after before, 1000 will be. Software will begin to have something like “market makers” who make money on everything. A small number of hedgefund-like software companies may come to own everything.
ᴅᴀɴɪᴇʟ ᴍɪᴇssʟᴇʀ 🛡️@DanielMiessler

Holy crap. This is the genre of software that's in the most danger: - Kind of mid in quality - Highly niche use-cases - It's been winner takes all for the space in the past - Often involved special formats or protocols And now Claude Code can just reverse engineer it. 🤯

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Tibo
Tibo@thsottiaux·
Codex ❤️ OSS. Over the coming days we are prioritizing working with open source coding agents and tools to support them in the same way as OpenCode, so that codex users can benefit from their account and usage in those combined with using our models in codex directly. We are already talking with OpenHands, RooCode and Pi. Reach out if you build in the open and would benefit from this. Our own work is OSS at github.com/openai/codex
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hardmaru
hardmaru@hardmaru·
Especially in such times, hackers and tinkerers tend to fare better at harnessing evolving technology with a high level of uncertainty and ambiguity, compared to traditional well-read professional types.
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Alec Helbling
Alec Helbling@alec_helbling·
I'm really enjoying the diffusion model speed running literature that seems to have been spurred by REPA. The goal is to figure out how to train a reasonable quality ImageNet generator as fast as possible. It is like the nanoGPT of diffusion.
Alec Helbling tweet media
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