Rahma

57 posts

Rahma

Rahma

@Rahma_Chaa

Research Scientist at @GoogleDeepMind

Присоединился Aralık 2017
76 Подписки292 Подписчики
Rahma ретвитнул
Edouard Leurent
Edouard Leurent@eleurent·
Writing a STRONGLY WORDED LETTER with Gemini Diffusion and its Instant Edit tab
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John Lindquist
John Lindquist@johnlindquist·
The Future of Development: Gemini Diffusion
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Oriol Vinyals
Oriol Vinyals@OriolVinyalsML·
Today we introduced Gemini Diffusion⚡️ (& DeepThink, Veo3, Imagen4, 2.5 updates...). It's been a dream of mine to remove the need for "left to right" text generation. It's so fast, that we had to *slow down* the video during the presentation. deepmind.google/models/gemini-…
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Himanshu Sahni
Himanshu Sahni@sahnihim·
Such a privilege to work on Gemini Diffusion with an amazing team! From a small research project to launching at I/O - we've got unstoppable aura 🚀 Welcome to the era of live vibe coding ⚡️
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Ivana Balazevic
Ivana Balazevic@ibalazevic·
🚀Meet Gemini Diffusion, our first diffusion-based and super fast language model, just announced at Google I/O!🚀 Very excited to be able to share what I've been working on for the past little while with our amazing small team @GoogleDeepMind.
Google DeepMind@GoogleDeepMind

We’ve developed Gemini Diffusion: our state-of-the-art text diffusion model. Instead of predicting text directly, it learns to generate outputs by refining noise, step-by-step. This helps it excel at coding and math, where it can iterate over solutions quickly. #GoogleIO

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Vova “words are a motherfucker” Zakharov
Well now, the prospect of using this 'Gemini Diffusion' contraption... frankly, it's a rather delightful thought altogether!
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Rahma
Rahma@Rahma_Chaa·
It's been an incredible experience working on Gemini Diffusion. So much pride in what we've accomplished bringing this from a small research project to an I/O launch
Google DeepMind@GoogleDeepMind

We’ve developed Gemini Diffusion: our state-of-the-art text diffusion model. Instead of predicting text directly, it learns to generate outputs by refining noise, step-by-step. This helps it excel at coding and math, where it can iterate over solutions quickly. #GoogleIO

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Google DeepMind
Google DeepMind@GoogleDeepMind·
We’ve developed Gemini Diffusion: our state-of-the-art text diffusion model. Instead of predicting text directly, it learns to generate outputs by refining noise, step-by-step. This helps it excel at coding and math, where it can iterate over solutions quickly. #GoogleIO
GIF
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Jean Tarbouriech
Jean Tarbouriech@jean_tarbou·
1000+ words per second! ⚡ We just unleashed Gemini Diffusion at #GoogleIO! 🚀 Awesome being part of the team that took this from a small research project all the way to I/O @GoogleDeepMind 🪐
Google DeepMind@GoogleDeepMind

We’ve developed Gemini Diffusion: our state-of-the-art text diffusion model. Instead of predicting text directly, it learns to generate outputs by refining noise, step-by-step. This helps it excel at coding and math, where it can iterate over solutions quickly. #GoogleIO

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Demis Hassabis
Demis Hassabis@demishassabis·
In December we began the Gemini Era, and we’ve continued to make relentless progress since. Today we’re thrilled to introduce the next generation: Gemini 1.5 - hugely enhanced performance, highly efficient architecture & long-context length breakthrough blog.google/technology/ai/…
Demis Hassabis tweet media
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Richard Futrell
Richard Futrell@rljfutrell·
@tallinzen My experience is that ChatGPT is very bad at this kind of thing, especially for languages with lots of morphology
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Tal Linzen
Tal Linzen@tallinzen·
Very nice idea for a language model benchmark: can the model learn to translate a language (Kalamang, spoken by a small number of people in New Guinea) into English just from a grammar written by a field linguist? arxiv.org/abs/2309.16575
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Olivier Hénaff
Olivier Hénaff@olivierhenaff·
Humans and animals reason about events spanning days, weeks, and years, yet current CV systems live largely in the present. Introducing Memory-Consolidated ViT, whose context extends far into the past and sets a new SOTA in long-video understanding with a 10x smaller model
Olivier Hénaff tweet media
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ëugene kharitonov 🏴‍☠️
Transformer seq2seq models enjoy epic practical success, however, they miserably fail on SCAN data that probes for compositional reasoning.. - wait! compositionality is a cornerstone of the language. Is there a contradiction? Is work on SCAN compositionality even useful then? 🧶\
ëugene kharitonov 🏴‍☠️ tweet media
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Ted Gibson, Language Lab MIT
Ted Gibson, Language Lab MIT@LanguageMIT·
Wanted: Phd candidate Université de Paris 2021 Meaning-based approach to locality constraints Advisors: Anne Abeillé, Barbara Hemforth, Edward Gibson Please apply and retweet! llf.cnrs.fr/en/node/6836
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AI at Meta
AI at Meta@AIatMeta·
The way people use words to describe colors is remarkably consistent across thousands of languages. New Facebook AI research published in the “Proceedings of the National Academy of Sciences” shows that cutting-edge AI systems name colors in a similar way: ai.facebook.com/blog/ai-names-…
AI at Meta tweet media
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Rahma
Rahma@Rahma_Chaa·
We demonstrate next that the nature of the emergent systems depends on communication being discrete. Our study suggests that efficient semantic categorization is a general property of discrete communication systems, not limited to human language.
Rahma@Rahma_Chaa

I am very proud about our work with @n0mad_0, Emmanuel and Marco accepted at PNAS.

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Rahma
Rahma@Rahma_Chaa·
We show that artificial neural networks trained to play a discrimination game develop emergent communication systems whose distribution on the accuracy/complexity plane closely matches that of human languages.
Rahma@Rahma_Chaa

I am very proud about our work with @n0mad_0, Emmanuel and Marco accepted at PNAS.

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