Joey Bose
@joeybose.bsky.social
1.7K followers 72 following 17 posts
Incoming Assistant Professor @Imperial College London. Post-doc @UniofOxford. Into Geometry ∩ Generative Models. @mila-quebec.bsky.social Affiliate member. Phd from @mila-quebec.bsky.social / McGill. website: https://joeybose.github.io/
Posts Media Videos Starter Packs
joeybose.bsky.social
📢 Interested in doing a PhD in generative models 🤖, AI4Science 🧬, Sampling 🧑‍🔬, and beyond? I am hiring PhD students at Imperial College London for the next application cycle.

🔗See the call below:
joeybose.github.io/phd-positions/

✨ And a light expression of interest: forms.gle/FpgTiuatz9ft...
Joey Bose
Personal website powered by Jekyll
joeybose.github.io
Reposted by Joey Bose
k-neklyudov.bsky.social
SuperDiff goes super big!
- Spotlight at #ICLR2025!🥳
- Stable Diffusion XL pipeline on HuggingFace huggingface.co/superdiff/su... made by Viktor Ohanesian
- New results for molecules in the camera-ready arxiv.org/abs/2412.17762
Let's celebrate with a prompt guessing game in the thread👇
Reposted by Joey Bose
Reposted by Joey Bose
martaowesyou.bsky.social
Super super excited to share our work SuperDiff 🦹‍♀️ for superimposing pretrained diffusion models at inference time 💪

Check out the 🧵 to see how we superimposed proteins as well as images, all thanks to a fast new density estimator. Curious to see what 🍩 & 🗺️ would produce?
k-neklyudov.bsky.social
🧵(1/7) Have you ever wanted to combine different pre-trained diffusion models but don't have time or data to retrain a new, bigger model?

🚀 Introducing SuperDiff 🦹‍♀️ – a principled method for efficiently combining multiple pre-trained diffusion models solely during inference!
joeybose.bsky.social
2/2 Papers accepted at #ICLR2025. Congrats to all my co-authors 🥳. Definitely check out these works if you're interested in fine-tuning/composing diffusion models!

Papers in thread 🧵 below 👇
Reposted by Joey Bose
k-neklyudov.bsky.social
🧵(1/7) Have you ever wanted to combine different pre-trained diffusion models but don't have time or data to retrain a new, bigger model?

🚀 Introducing SuperDiff 🦹‍♀️ – a principled method for efficiently combining multiple pre-trained diffusion models solely during inference!
Reposted by Joey Bose
martaowesyou.bsky.social
exciting new workshop announcement!! join us in Singapore for Frontiers in Probabilistic Inference: Learning Meets Sampling 🌏⚡️😃 details below 👇 #ICLR2025
joeybose.bsky.social
🔊 Super excited to announce the first ever Frontiers of Probabilistic Inference: Learning meets Sampling workshop at #ICLR2025 @iclr-conf.bsky.social!

🔗 website: sites.google.com/view/fpiwork...

🔥 Call for papers: sites.google.com/view/fpiwork...

more details in thread below👇 🧵
Reposted by Joey Bose
marvin-schmitt.com
This #ICLR2025 workshop on modern probabilistic inference sounds absolutely stunning! 🙌

Learning Sampling
🤝
Probabilistic Inference
joeybose.bsky.social
🔊 Super excited to announce the first ever Frontiers of Probabilistic Inference: Learning meets Sampling workshop at #ICLR2025 @iclr-conf.bsky.social!

🔗 website: sites.google.com/view/fpiwork...

🔥 Call for papers: sites.google.com/view/fpiwork...

more details in thread below👇 🧵
Reposted by Joey Bose
k-neklyudov.bsky.social
Come join us in Singapore at #ICLR2025 to discuss the latest developments everywhere where Learning meets Sampling!
joeybose.bsky.social
🔊 Super excited to announce the first ever Frontiers of Probabilistic Inference: Learning meets Sampling workshop at #ICLR2025 @iclr-conf.bsky.social!

🔗 website: sites.google.com/view/fpiwork...

🔥 Call for papers: sites.google.com/view/fpiwork...

more details in thread below👇 🧵
joeybose.bsky.social

Organizers continued:

Michael Bronstein @mmbronstein.bsky.social
Max Welling
Arnaud Doucet @arnauddoucet.bsky.social
Aapo Hyvärinen

Part 2/2
joeybose.bsky.social
🙏 Of course, this is co-organized with a dream team

Tara Akhound-Sadegh
Marta [email protected]
Yuanqi Du
Sarthak [email protected]
Alex [email protected]
Kirill [email protected]

Part 1/2
joeybose.bsky.social
⚡We have an electric lineup of speakers and panelists:

Sitan Chen(Harvard)
Rianne Van Den Berg(MSR)
Ricky Chen(Meta)
Anna Korba(ENSAE Paris, CREST)
Marylou Gabrié(ENS)
Emtiyaz Khan(RIKEN)
Grant Rotskoff(Stanford)
Francisco Vargas(Xaira, Cambridge)
Kyle Cranmer (University of Wisconsin-Madison)
joeybose.bsky.social
🚨 We invite submissions on sampling, Bayesian inference, accelerating sampling in AI4Science, Generative models in Probabilistic inference, and more!

🤖 We invite submissions along 3 tracks:

1.) Research Papers

2.) Challenges and Reflections

3.) Benchmarks and Datasets

Deadline is Deb 3 AOE!
joeybose.bsky.social
🔊 Super excited to announce the first ever Frontiers of Probabilistic Inference: Learning meets Sampling workshop at #ICLR2025 @iclr-conf.bsky.social!

🔗 website: sites.google.com/view/fpiwork...

🔥 Call for papers: sites.google.com/view/fpiwork...

more details in thread below👇 🧵
joeybose.bsky.social
Self Consuming Generative Models under Curated Data Provably Optimize Human Preferences (Spotlight), led by Damien Ferbach

arxiv.org/abs/2407.09499
joeybose.bsky.social
Metric Flow Matching for Smooth Interpolations on the Data Manifold, led by Kacper Kapusniak

arxiv.org/abs/2405.14780
joeybose.bsky.social
Fisher Flows for discrete generative modeling led by Oscar Davis

arxiv.org/abs/2405.14664
joeybose.bsky.social
FoldFlow-2 for sequence-conditioned protein structure design. Led by Guillaume Huguet and James Vuckovic

arxiv.org/abs/2405.20313
joeybose.bsky.social
I'll be at #NeurIPS2024 next week presenting 4 papers all on generative models!

Happy to meet old friends and new ones at all the fun events!

Papers in thread 🧵