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Father, Husband, and a Senior Researcher and Manager of the AI Multimodal group at IBM Research.
Assaf Arbelle









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“There is nothing quite so useless, as doing with great efficiency, something that should not be done at all.”
Let’s make a generation of amazing open source image generation models from high quality data. The best image generation models train on human preferences. Unfortunately, many of these datasets are closed. Let’s change that! 🧵 we're building a community dataset and we need help reviewing!
Overleaf now incorporates an AI assistant, as of this morning. It is opt-out, not opt-in. I have very mixed feelings about this: and by "mixed", I mean ranging from annoyance to anger. www.overleaf.com/learn/how-to...
🎺 Here comes the official 2024 NeurIPS paper browser: - browse all NeurIPS papers in a visual way - select clusters of interest and get cluster summary - ZOOOOM in - filter by human assigned keywords - filter by substring (authors, titles) neurips2024.vizhub.ai #neurips by IBM Research Cambridge
We just dropped CAT4D, text to dynamic 3D models that you can render in real time. Not posting a video because Bluesky is garbage in this respect; go straight to the real time viewer on a desktop browser and look around. The cat kneading dough is my favorite. cat-4d.github.io
Time sink 😡
Super cool work! If you're interested in context-aware models- We've done it for autoregressive models through structured dialogue data
Gumbel-softmax (magic) trick: Gradients for high dimensional discrete variables are hard. Gradients for high dimensional continuous variables are easy. You swap a discrete variable by a continuous one and🤞no one realizes. Algos that need sequences of hard choices are not amused.