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🧪 A new study led by Dr. Janani Durairaj and Prof. Torsten Schwede shows that current AI models in drug discovery still face limitations. Learn more👇 @ninjani.bsky.social @torstenschwede.bsky.social @unibas.ch @snsf.ch @natureportfolio.nature.com www.biozentrum.unibas.ch/news/detail/...
Computed Structure Models (CSMs) at RCSB PDB Updated from AlphaFold, ModelArchive Updated CSMs include data from AlphaFold v6 and a refresh of files from the ModelArchive
1mo
10d
Hat Kernenergie Zukunft? Mein Kommentar dazu hat einige Diskussion ausgelöst, daher hier noch ein Longread dazu: Es gibt bessere und schlechtere Argumente gegen Kernenergie. Nicht jede Kritik stimmt. Aber insgesamt hat Kernenergie gegen Solar und Wind keine Chance. Sehen wir uns das an:
Developing new medicines is a slow and costly process. For some years now, artificial intelligence (AI) has been considered a promising tool to accelerate drug discovery by identifying drug candidates...
AI models still reach limits in drug discovery
www.biozentrum.unibas.ch
Updated CSMs include data from AlphaFold v6 and a refresh of files from the ModelArchive
www.rcsb.org
27d
Computed Structure Models (CSMs) at RCSB.org Updated from AlphaFold, ModelArchive
Biozentrum, University of Basel
Kernenergie: die Zukunft von vorgestern
Kernenergie ist vielleicht noch nicht tot. Aber sie bewegt sich nicht mehr und riecht komisch. Ein Streifzug durch das Gewirr von besseren und schlechteren Argumenten rund um die Kernenergie.
www.florianaigner.at
RCSB Protein Data Bank
⬇️⬇️⬇️⬇️⬇️⬇️
Florian Aigner
A picture is worth a thousand words. What’s your favorite photo from the SNSF Scientific Image Competitions of the last 10 years? 🧪🧬🔬 www.snf.ch/en/1uKR6zjXH... @snsf.ch
1mo
1mo
📢 Swiss #Quantum #Call 2026: funding for projects of outstanding scientific quality with clear societal and technological benefits. 🗓️ Submission deadline: 1 September 2026 For more info ➡️ www.snf.ch/en/N01wa8jzDa…
🔍 How did we support Swiss research last year? And what were the results? The SNSF’s #AnnualReport 2025 presents graphics, facts and figures.💡 ➡️ sohub.io/amni
Looking to contribute to the future of #ScientificResearch 🧪 in 🇨🇭? The SNSF Research Council is recruiting 21 new members for its six committees. The mandates will start in April and October 2027. Interested? 🗓️ Apply by 14 June 2026. www.snf.ch/en/pk2qftWyV...
Now published in NSMB! Paper: doi.org/10.1038/s415... Full PDF: rdcu.be/fhBtI Overview of additions since the preprint👇 (1/5)
⌚🔎 Vahid Fakhfouri, Head of Research and Innovation at Richemont, highlights the systemic importance of Swiss research in keeping the luxury watch industry at the cutting edge of its craft. ➡️ sohub.io/p8w6
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The jury of the SNSF Scientific Image Competition 2026 has chosen twenty spectacular works.
www.snf.ch
Ten years of wondrous scientific images
Torsten Schwede
Torsten Schwede
The SNSF is seeking 21 researchers to join its Research Council.
Call for new Research Council members
www.snf.ch
Behind every watch made by the Richemont luxury goods group lies a hidden network supporting its workshops: that of Swiss research.
www.snf.ch
The science behind exceptional craftsmanship
Torsten Schwede
Looking to contribute to the future of #ScientificResearch? The SNSF Research Council is recruiting 21 new members for its six committees. The mandates will start in April and October 2027. Interested? 🗓️ Apply by 14 June 2026. 👉 www.snf.ch/en/pk2qftWyV9…
Swiss National Science Foundation (SNSF)
Swiss National Science Foundation (SNSF)
This work introduces the Runs N’ Poses dataset for benchmarking deep learning methods on the protein–ligand complex prediction task. It shows that current methods rely on memorization, challenging the...
doi.org