Luca Eyring
@lucaeyring.bsky.social
350 followers 210 following 5 posts
ELLIS PhD student at TU Munich & Helmholtz AI Generative Modeling - Optimal Transport - Representation Learning https://lucaeyring.com/
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lucaeyring.bsky.social
Can we enhance the performance of T2I models without any fine-tuning?

We show that with our ReNO, Reward-based Noise Optimization, one-step models consistently surpass the performance of all current open-source Text-to-Image models within the computational budget of 20-50 sec!
#NeurIPS2024
Reposted by Luca Eyring
eml-munich.bsky.social
🎓PhD Spotlight: Karsten Roth

Celebrate @confusezius.bsky.social , who defended his PhD on June 24th summa cum laude!

🏁 His next stop: Google DeepMind in Zurich!

Join us in celebrating Karsten's achievements and wishing him the best for his future endeavors! 🥳
Reposted by Luca Eyring
dominik1klein.bsky.social
From cell lines to full embryos, drug treatments to genetic perturbations, neuron engineering to virtual organoid screens — odds are there’s something in it for you!

Built on flow matching, CellFlow can help guide your next phenotypic screen: biorxiv.org/content/10.1101/2025.04.11.648220v1
Reposted by Luca Eyring
eml-munich.bsky.social
(4/4) Disentangled Representation Learning with the Gromov-Monge Gap
@lucaeyring.bsky.social will present GMG, a novel regularizer that matches prior distributions with minimal geometric distortion.
📍 Hall 3 + Hall 2B #603
🕘 Sat Apr 26, 10:00 a.m.–12:30 p.m.
Reposted by Luca Eyring
eml-munich.bsky.social
Happy to share that we have 4 papers to be presented in the coming #ICLR2025 in the beautiful city of #Singapore . Check out our website for more details: eml-munich.de/publications. We will introduce the talented authors with their papers very soon, stay tuned😉
Reposted by Luca Eyring
eml-munich.bsky.social
Thrilled to announce that four papers from our group have been accepted to #CVPR2025 in Nashville! 🎉 Congrats to all authors & collaborators.
Our work spans multimodal pre-training, model merging, and more.
📄 Papers & codes: eml-munich.de#publications
See threads for highlights in each paper.
#CVPR
Reposted by Luca Eyring
zeynepakata.bsky.social
📄 Disentangled Representation Learning with the Gromov-Monge Gap

with Théo Uscidda, Luca Eyring, @confusezius.bsky.social, Fabian J Theis, Marco Cuturi

📄 Decoupling Angles and Strength in Low-rank Adaptation

with Massimo Bini, Leander Girrbach
Reposted by Luca Eyring
Reposted by Luca Eyring
dominik1klein.bsky.social
Good to see moscot-tools.org published in @nature.com ! We made existing Optimal Transport (OT) applications in single-cell genomics scalable and multimodal, added a novel spatiotemporal trajectory inference method and found exciting new biology in the pancreas! tinyurl.com/33zuwsep
Mapping cells through time and space with moscot - Nature
Moscot is an optimal transport approach that overcomes current limitations of similar methods to enable multimodal, scalable and consistent single-cell analyses of datasets across spatial and temporal...
tinyurl.com
Reposted by Luca Eyring
marcocuturi.bsky.social
Today is a great day for optimal transport 🎉! Lots of gratitude 🙏 for all folks who contributed to ott-jax.readthedocs.io and pushed for the MOSCOT (now @ nature!) paper, from visionaries @dominik1klein.bsky.social, G. Palla, Z. Piran to the magician, Michal Klein! ❤️

www.nature.com/articles/s41...
Reposted by Luca Eyring
fatemehx2.bsky.social
This is maybe my favorite thing I've seen out of #NeurIPS2024.

Head over to HuggingFace and play with this thing. It's quite extraordinary.
lucaeyring.bsky.social
Thanks to @fffiloni.bsky.social and @natanielruiz.bsky.social, we have a running live Demo of ReNO, play around with it here:

🤗: huggingface.co/spaces/fffil...

We are excited to present ReNO at #NeurIPS2024 this week!
Join us tomorrow from 11am-2pm at East Exhibit Hall A-C #1504!
Reposted by Luca Eyring
nicolasdufour.bsky.social
ReNO shows that some initial noise are better for some prompts! This is great to improve image generation, but i think it also shows a deeper property of diffusion models.
lucaeyring.bsky.social
Can we enhance the performance of T2I models without any fine-tuning?

We show that with our ReNO, Reward-based Noise Optimization, one-step models consistently surpass the performance of all current open-source Text-to-Image models within the computational budget of 20-50 sec!
#NeurIPS2024
lucaeyring.bsky.social
Even within the same computational budget, a ReNO-optimized one-step model outperforms popular multi-step models such as SDXL and PixArt-α. Additionally, our strongest model, ReNO-enhanced HyperSDXL, is on par even with SOTA proprietary models, achieving a win rate of 54% vs SD3.
lucaeyring.bsky.social
ReNO optimizes the initial noise in one-step T2I models at inference based on human preference reward models. We show that ReNO achieves significant improvements over five different one-step models quantitatively on common benchmarks and using comprehensive user studies.
lucaeyring.bsky.social
Thanks to @fffiloni.bsky.social and @natanielruiz.bsky.social, we have a running live Demo of ReNO, play around with it here:

🤗: huggingface.co/spaces/fffil...

We are excited to present ReNO at #NeurIPS2024 this week!
Join us tomorrow from 11am-2pm at East Exhibit Hall A-C #1504!
lucaeyring.bsky.social
Can we enhance the performance of T2I models without any fine-tuning?

We show that with our ReNO, Reward-based Noise Optimization, one-step models consistently surpass the performance of all current open-source Text-to-Image models within the computational budget of 20-50 sec!
#NeurIPS2024
Reposted by Luca Eyring
shyamgopal.bsky.social
After a break of over 2 years, I'm attending a conference again! Excited to attend NeurIPS, even more so to be presenting ReNO, getting inference-time scaling and preference optimization to work for text-to-image generation.
Do reach out if you'd like to chat!