Alexander Immer
@a1mmer
PhD student in machine learning @ETH, @MPI_IS, and student researcher @GoogleAI | Previously MSc @EPFL_en and intern @RIKEN_AIP_EN.
ID: 1115411318578618369
http://aleximmer.github.io 09-04-2019 00:29:16
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675 Followers
536 Following
I'm thrilled to share that I'll be joining @RCTrustworthy at TU Dortmund to start a research group on Causality this summer! 📢Looking for #PhD students (link attached)! Feel free to reach out via email or dm #PhDposition #Causality #MachineLearning
If you're coming to European Conference on Computer Vision #ECCV2026 consider our freshly accepted tutorial on: A Bayesian Odyssey in Uncertainty: from Theoretical Foundations 📝 to Real-World Applications 🚀 w/ the amazing Gianni Franchi Olivier Laurent Alexander Immer Pavel Izmailov More info coming soon #eccv2024
It is my pleasure to announce the 2nd Bayes-Duality workshop, focusing on the design of AI that learns adaptively, robustly, and coninually, like humans. bayesduality.github.io/workshop_2024.… You can watch all 26 talks through zoom livestream (June 12-21). Register at …c59ed978213830355fc8978.doorkeeper.jp/events/172217
The The Bayes Duality Project workshop starts tomorrow. Full schedule (1 page) bayesduality.github.io/bdw24pictures/… (webpage version with detailed abstract etc.) bayesduality.github.io/talks_2024.html Register at the link in the tweet below to join!
🚨 laplace-torch v0.2 has been released! It’s all about foundation models! You can now easily do probabilistic inference on Huggingface’s LLMs and reward models 🤩 github.com/aleximmer/Lapl… New features! 👇 (1/6) Great effort by Runa Eschenhagen , Alexander Immer, and contributors!
🎉 Excited to share that we've just hit a remarkable $76M funding milestone, with a $41M round led by Cathay Innovation. We’re grateful to our incredible team, investors, and partners who believe in our mission to build the world's first universal AI foundation model for biology. 🚀
KFAC is everywhere—from optimization to influence functions. While the intuition is simple, implementation is tricky. We (Bálint Mucsányi, Tobias Weber ,Runa Eschenhagen) wrote a ground-up intro with code to help you get it right. 📖 arxiv.org/abs/2507.05127 💻 github.com/f-dangel/kfac-…