Have you ever typed import mne in #Python?
Did it help you publish a paper, save hours, or even land your dream job? 💡
Now’s your chance to give back — @mne_news can finally receive 💸 donations to keep the lights on (CIs, forum, etc.) 🙌 https://t.co/bPPOgp2gqT
🥳Very happy to see SKADA-Bench accepted at TMLR 2025 @TmlrOrg! This was a huge team effort to design a reproducible open-source Domain Adaptation benchmark with realistic validation.
📜 https://t.co/CQafMGHCtW
🖥️ https://t.co/SdT49DGrzJ
🧵 https://t.co/qCuq4vWmmS
1/2
MNE-Python 1.10 now includes our EEG montage interpolation method from our EUSIPCO 2024 paper 🎉
→ .interpolate_to() works on Epochs, Evoked, ...
→ One line to align signals across caps
📄 Paper: https://t.co/0FHXJ1nW4v
🧠 Demo: https://t.co/hZBYJJy5P3
#EEG#MNEPython#AI
Also, many of my students and colleagues working in the field of AI feel that there is an unfair competition between the academia and the industry. I do not think so. While industry focuses on the technology, academia should focus on the methodology. I believe that, methodology-wise, current practice of AI does not have any major secrets and, in fact, it is rather primitive and brute force. That is the reason why it is easily emulated given sufficient resource for reverse engineering. This is another reason why closed-door proprietary practice is doomed to be surpassed.
Merci @lemondefr pour un joli résumé de mes aventures scientifiques et logiciels 📈📠
https://t.co/i8l6iPExCD
Beaucoup de messages qui me tiennent à cœur : travail d'équipe, logiciel libre, rigueur scientifique
Merci aux collègues et amis qui ont témoigné, je suis ému de lire
Next week, we’ll present our spotlight paper at #NeurIPS2024 on domain adaptation for EEG data. Join us in East Exhibit Hall A-C on Friday at 4:30 PM! Learn how we address shifts in both data and label distributions. Looking forward to your thoughts!
Geomstats first provides common manifolds embedded in vector spaces.
🌐 Symmetric Positive Definite (SPD) matrices, and its many families of Riemannian metrics
🌐 Hyperbolic spaces
🌐 Hyperspheres
🌐 Stiefel manifolds
🌐 Grassmanians
You can also learn your manifold from data!
I am excited! 🎸🚀 Checkout our latest work accepted @NeurIPSConf on Riemannian domain adaptation for #EEG —led by @apmellot & @AntoineCollas — they prepared a very nice #thread 🪡 👇👇🏼👇🏿
🚀I’m beyond excited to share that our paper has been accepted as a Spotlight at #NeurIPS2024! Super proud of the team’s great work! Once again, we make learning across neuroscience datasets easier!
99% ML engineer i talked to don't realize gradient is actually defined via inner product. If you have a different definition of inner product (metric), you have different definition of gradient. This will free up your mind.. now preconditioning and layerwise lr tuning makes lot more sense: its actually redefining your notion of distance.
🤗Officially started Ph.D. with @IevgenRedko, @rtavenar and Laetitia Chapel @Inria@irisa_lab on Transformers & Distribution Shifts
🥳🇨🇦 Also, 2 papers accepted at #NeurIPS2024
📈 *Spotlight* https://t.co/kphqSjHRHG
✋🏾 MaNO https://t.co/pzojhoYA0R
More details soon!
Pymanopt 2.2.1 is here!
Highlights include bug fixes, support for SciPy versions >=1.13, and updated documentation. 🎉 Special thanks to new contributors! See: https://t.co/oCbQge5U6j
#Python#Optimization#Manifolds