On peut faire des trucs sympas avec un tableau de l'artiste peintre Zigou (https://t.co/1RyVZ0T6f6) animé par une vidéo d'un poème de Fernando Pessoa lu par .@mariademedeiros :)
Thx @tg_bomze for the Face-Image-Motion-Model colab and @akai_katto for the dandere2x docker image !
Big news: Kimi-K3 by @Kimi_Moonshot is now #1 in the Frontend Code Arena with 1679 pts, surpassing Claude Fable 5.
This is a 17-place jump from Kimi-k2.6 (#18 -> #1).
In Frontend, Kimi-K3 ranked #1 in 6 of 7 domains: Brand & Marketing, Reference-Based Design, Data & Analytics, Consumer Product, Simulations, and Content Creation Tools, landing #2 only in Gaming behind Fable 5.
The full model weights will be released by July 27.
Congrats to the @Kimi_Moonshot team on this major milestone!
🦞 #100000
100,000 issues + PRs in 222 days.
🛠️ built by volunteers
🌍 every timezone, every day
🧡 zero VC, one lobster
Number 100000 itself? A community bug report. We'll fix that one too.
Thank you for building this with us.
Alibaba allegedly ran 28.8 million fraudulent API exchanges across 25,000 fake accounts to steal Claude's intelligence. If confirmed, it's the largest AI model theft ever attempted. The same week, the White House restricted GPT 5.6 to 20 companies, OpenAI delayed its IPO, and Neuralink announced it may attempt brain-to-brain telepathy this year.
-- GPT 5.6 launches in three tiers: Sol, Terra, Luna all throttled by the White House.
-- Chinese proxy services offer Western frontier models at 90% discount. The trade: your reasoning traces get harvested for distillation.
-- OpenAI won't IPO below $1 trillion. Revenue is at $40–50B annually but they're burning $26B.
-- Elon's endgame for Neuralink is I/O layer for the singularity, allowing humans to couple with AI directly.
Got GLM-5.2 running on my Mac Studio via llama.cpp, the reasoning behind all my medical agentic workflows.
It orchestrates a swarm of tiny on-device OpenMed experts: oncology, meds, labs.
No cloud, no rate limits, nobody can take it away.
AI must be owned, not rented.
thanks @_akhaliq for sharing our Data2Story!
🔮Turn the ‘Humanity's Last Exam’ dataset into a generative blog.
Explore more agent-generated stories here
https://t.co/TIIMWBamyU
Introducing GLM-5.2: Frontier Intelligence, Open Weights
- Significant improvements in coding and agentic tasks
- Strong long-horizon capabilities with a 1M context window
- Two levels of reasoning effort: GLM-5.2 (max) pushes the limits, while GLM-5.2 (high) strikes a strong balance between performance and token efficiency
- MIT-licensed open weights
- Same API pricing as GLM-5.1
Tech Blog: https://t.co/LAsxUdN0JZ
Weights: https://t.co/g0A1C4UWx4
API: https://t.co/Kc3E22cbN7
Coding Plan: https://t.co/Nk8Y98HNhU
Chat: https://t.co/WCqWT0qCQb
Kimi 2.7 ranked 2nd after Fable 5 and before GPT-5 xhigh
We have re-run our ErdosBench smoke test on 14 problems with Kimi 2.7, Qwen 3.7 Max, Grok 4.3 and compared it with the top performers from previous runs.
Kimi 2.7 is amazingly good. More below.
MRT2 on @huggingface Spaces and pytorch/transformers!
Now you can play the demos just from your browser (with a bit of extra latency)
https://t.co/BwbbPWbrcq
https://t.co/KwthTXTJNq
Introducing DiffusionBlocks: Block-wise Neural Network Training via Diffusion Interpretation
https://t.co/c9AvsRKybj
What if we didn’t have to hold an entire neural network in memory to train it?
Standard neural net training optimizes all parameters jointly. As a result, the memory required during training grows linearly with the depth of the network.
In our #ICLR2026 paper, we propose DiffusionBlocks, a principled framework to train networks one block at a time, drastically reducing memory requirements while matching end-to-end performance.
With DiffusionBlocks, we split the network into blocks and train them one at a time, so you only need memory for a single block.
How? We explicitly assign each block a role: to move the representation a little closer to the target than the block before it did. That role turns out to be precisely what a diffusion model does, step by step. Each block only needs to optimize its own objective and can be trained independently.
We validated this across five different architectures:
• ViT
• DiT
• Masked diffusion
• Autoregressive transformers
• Recurrent-depth transformers
In each case, performance is competitive with end-to-end training while using a fraction of the memory.
This perspective also extends naturally to recurrent-depth (Looped) transformers, which apply the same network iteratively and normally require expensive backpropagation through time (BPTT). Viewed through DiffusionBlocks, we can replace those multiple iterations with a single forward pass during training.
Read our paper and code, to learn more.
Paper: https://t.co/CRj96VGYQn
GitHub: https://t.co/eNW0K9Xh8E
🐟
If the Founder of Hugging Face asks, you gotta do it. Models and dataset now live: https://t.co/9gY7AiQ9xs
Also built an explorer:
https://t.co/2wSMBS5tQ7
Every time Proton VPN receives a data request, we *politely* decline, but if push comes to shove, we have been known to send out blank A4 pieces of paper titled "user logs"
https://t.co/QtkzZNs2Ft