Hongjian Zhou

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Hongjian Zhou

Hongjian Zhou

@itsEmZee_

PhD @UniOfOxford, Clarendon Scholar. I work on autonomous AI scientists for medicine and biomedical research.

انضم Şubat 2022
287 يتبع1.4K المتابعون
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Hongjian Zhou
Hongjian Zhou@itsEmZee_·
If this is not obvious enough... > Mar 25, Sakana’s AI Scientist makes Nature > May 13, RSI raises $650M to build self-improving AI > May 13, Adaption ships AutoScientist for model training > May 19, Karpathy joins Anthropic pretraining > May 19, Nature drops 3 AI-scientist papers in one day The next frontier is not bigger models. It’s AI researchers building AI researchers.
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Hongjian Zhou
Hongjian Zhou@itsEmZee_·
> May 20, OpenAI solved unit distance problem!
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Hongjian Zhou أُعيد تغريده
Hongjian Zhou
Hongjian Zhou@itsEmZee_·
If this is not obvious enough... > Mar 25, Sakana’s AI Scientist makes Nature > May 13, RSI raises $650M to build self-improving AI > May 13, Adaption ships AutoScientist for model training > May 19, Karpathy joins Anthropic pretraining > May 19, Nature drops 3 AI-scientist papers in one day The next frontier is not bigger models. It’s AI researchers building AI researchers.
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Devin
Devin@_devingannon·
i work in ai enablement & integration within a large enterprise right now. fire up a company. take those learnings and move down market to MM and SMB to help drive adoption. sit with operators that are doing the work. map workflows. educate. integrate. host events. what do you think?
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Benjamin Chang
Benjamin Chang@benjamin0chang·
My first PhD paper is out now in @Nature! Very grateful to have worked with the FutureHouse team on this, and a big shoutout to my co-first author @agreeb66 😀
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Devin
Devin@_devingannon·
@itsEmZee_ Yeah it’s crazy. I’m working on this
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Hongjian Zhou
Hongjian Zhou@itsEmZee_·
This is plainly wrong. AI co-scientists will create more jobs in the field. When Lawrence Sperry demonstrated an aircraft could fly straight without hands on the controls, pilots feared for their jobs to be taken. But autopilot did not make pilots obsolete. It made flight scalable. We got more planes, more routes, because the sky was TOO BIG. Same with AI co-scientists. Science is TOO BIG. We don’t need fewer scientists. We need more people exploring more of the unexplored spaces.
Dr. Thomas Ichim@exosome

Today we all lost our jobs..... Three Nature papers showing that scientists in the conventional sense are obsolete At least read the first one.... the AI replaced all things that the scientist does .... nature.com/articles/s4158…

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Hongjian Zhou
Hongjian Zhou@itsEmZee_·
@usepapertrace Agreed. don’t think we’re there yet. But optimistic we’ll achieve it.
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PaperTrace
PaperTrace@usepapertrace·
@itsEmZee_ What counts as “discovery”? Preregistered hypothesis, novel result, independent replication, and open data and code. Until an agent clears those without human steering, it is a demo, not discovery.
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Jashan
Jashan@Jashanx_gill·
Hi there 👋 If you are new, Let me introduce myself. I’m Jashan, currently based in Ontario 🇨🇦 I post about: 
• AI
• Building apps
• Writing ✍️ I studied Data Analysis for Business 📊 Currently learning about Digital Asset Management 🌁 Also planning to launch a newsletter soon. Still figuring out the exact niche. If you have ideas, let me know 👀 And thank you to everyone who decided to follow me!!
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Thomas Trimoreau
Thomas Trimoreau@TTrimoreau·
If Claude/ ChatGPT/ Gemini disappeared tomorrow. Who would you actually reach out to for help?
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Hongjian Zhou أُعيد تغريده
Sungjin Ahn
Sungjin Ahn@SungjinAhn_·
🧠We introduce "Generative Recursive Reasoning"! Recursive Reasoning Models like HRM, TRM, and Looped Transformers are deterministic — same input, same reasoning, every time. They collapse the entire space of plausible reasoning paths into a single attractor. Our model GRAM (Generative Recursive reAsoning Models) turns recursion itself into a stochastic latent trajectory. Multiple hypotheses, alternative solution strategies, and inference-time scaling not just by depth, but by width — parallel trajectory sampling. And here's the kicker: the same formulation that gives us conditional reasoning p(y|x) also makes GRAM a general generative model p(x). With only 10M params: • Sudoku-Extreme: 97.0% (TRM 87.4%) • ARC-AGI-1: 52.0% • ARC-AGI-2: 11.1% • N-Queens coverage: 90%+ 📄 Paper: arxiv.org/abs/2605.19376 🌐 Project page: ahn-ml.github.io/gram-website w/ Junyeob Baek @JunyeobB (KAIST), Mingyu Jo @pyross0000 (KAIST), Minsu Kim @minsuuukim (KAIST & Mila), Mengye Ren @mengyer (NYU), Yoshua Bengio @Yoshua_Bengio (Mila), Sungjin Ahn @SungjinAhn_ (KAIST)
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