| PhD @UMBaltimore | omics, immuno/micro, AI/ML | 🇺🇸🇸🇰 |
Posts are my own views, not those of my employer.
📄 www.nature.com/articles/s41...
💿 mmseqs.com
📄 www.nature.com/articles/s41...
💿 mmseqs.com
It means:
→ Next-gen protein AI data waves
→ Interactive protein design loops (DMTA in hours)
→ Proteome-scale insights with fewer resources
It means the bottleneck doesn't have to be compute.
It's close (preprint below).
It means:
→ Next-gen protein AI data waves
→ Interactive protein design loops (DMTA in hours)
→ Proteome-scale insights with fewer resources
It means the bottleneck doesn't have to be compute.
It's close (preprint below).
a partially‑latent flow‑matching model that co‑generates sequence + all‑atom structure for proteins up to 800 aa 🧬
Side‑chains live in latents, backbone explicit → 75 % codesign & SOTA motif scaffolds 🔥
a partially‑latent flow‑matching model that co‑generates sequence + all‑atom structure for proteins up to 800 aa 🧬
Side‑chains live in latents, backbone explicit → 75 % codesign & SOTA motif scaffolds 🔥
This is a win for protein AI, but let's not forget MSAs, the bioinformatics backbone many structure models lean on.
This is a win for protein AI, but let's not forget MSAs, the bioinformatics backbone many structure models lean on.
#ICLR2025 (Oral Presentation)
🔥 Project page: research.nvidia.com/labs/genair/...
📜 Paper: arxiv.org/abs/2503.00710
🛠️ Code and weights: github.com/NVIDIA-Digit...
🧵Details in thread...
(1/n)
#ICLR2025 (Oral Presentation)
🔥 Project page: research.nvidia.com/labs/genair/...
📜 Paper: arxiv.org/abs/2503.00710
🛠️ Code and weights: github.com/NVIDIA-Digit...
🧵Details in thread...
(1/n)
From @commsbio.bsky.social's "Reliability and reproducibility checklist for molecular dynamics simulations" (doi.org/10.1038/s420...)
IMO the number 3 is meaningless and could equally well be 1 or 1000
From @commsbio.bsky.social's "Reliability and reproducibility checklist for molecular dynamics simulations" (doi.org/10.1038/s420...)
IMO the number 3 is meaningless and could equally well be 1 or 1000
www.biorxiv.org/content/10.1...
www.biorxiv.org/content/10.1...
Recent DiffDock versions + other DL models are advancing rapidly + solving real problems for researchers.
Let's have a balanced conversation about it.
arxiv.org/abs/2412.02889
Recent DiffDock versions + other DL models are advancing rapidly + solving real problems for researchers.
Let's have a balanced conversation about it.
arxiv.org/abs/2412.02889
code: github.com/NVIDIA/bione...
paper: arxiv.org/abs/2411.10548
docs: docs.nvidia.com/bionemo-fram...
explainer: t.co/7MOamSChGN
code: github.com/NVIDIA/bione...
paper: arxiv.org/abs/2411.10548
docs: docs.nvidia.com/bionemo-fram...
explainer: t.co/7MOamSChGN
Real-time, accurate protein structure prediction has never felt so imminent.
Code: github.com/soedinglab/m...
Publication: www.biorxiv.org/content/10.1...
Blog: developer.nvidia.com/blog/boost-a...
Press: blogs.nvidia.com/blog/japan-s...
Real-time, accurate protein structure prediction has never felt so imminent.
Code: github.com/soedinglab/m...
Publication: www.biorxiv.org/content/10.1...
Blog: developer.nvidia.com/blog/boost-a...
Press: blogs.nvidia.com/blog/japan-s...
Boost Alphafold2 Protein Structure Prediction with GPU-Accelerated MMseqs2
Nice improvements in speed
Boost Alphafold2 Protein Structure Prediction with GPU-Accelerated MMseqs2
Nice improvements in speed
This latest #NVIDIANIM update offers computational chemists and researchers a significant boost with 16% improved accuracy in identifying potential protein-small molecule interactions with
Test for free:
build.nvidia.com/mit/diffdock...
This latest #NVIDIANIM update offers computational chemists and researchers a significant boost with 16% improved accuracy in identifying potential protein-small molecule interactions with
Test for free:
build.nvidia.com/mit/diffdock...
This #NVIDIANIM enables researchers to efficiently design protein therapeutic candidates 1.9x faster due to accelerations in the inference engine, making their preclinical research smarter and less expensive.
Test for free:
build.nvidia.com/ipd/rfdiffus...
This #NVIDIANIM enables researchers to efficiently design protein therapeutic candidates 1.9x faster due to accelerations in the inference engine, making their preclinical research smarter and less expensive.
Test for free:
build.nvidia.com/ipd/rfdiffus...
#MMseqs2GPU now makes #AlphaFold2 predictions faster and more efficient than ever.
1/🧵
developer.nvidia.com/blog/boost-a...
#MMseqs2GPU now makes #AlphaFold2 predictions faster and more efficient than ever.
1/🧵
developer.nvidia.com/blog/boost-a...
Read more about #AlphaFold and #MMseqs2GPU:
developer.nvidia.com/blog/boost-a...
Read more about #AlphaFold and #MMseqs2GPU:
developer.nvidia.com/blog/boost-a...
formation.bio/blog/introdu...
formation.bio/blog/introdu...
biorxiv.org/content/10.1...
biorxiv.org/content/10.1...