Ligong Han

25 posts

Ligong Han

Ligong Han

@ligongh

Research scientist @RedHat & @MITIBMLab, PhD @Rutgers.

Cambridge, MA 가입일 Temmuz 2014
315 팔로잉73 팔로워
Ligong Han 리트윗함
Wei Yu
Wei Yu@GnosisYu·
World models have made impressive progress in video generation, yet they still struggle with a fundamental challenge: memory. In long rollouts, the camera trajectory gradually drifts from the user-specified motion and revisited scenes no longer align with earlier observations. These errors accumulate over time, causing the generated world to steadily lose coherence. 🚀Excited to share our solution MosaicMem 🌍🧠 — our new hybrid spatial memory for video world models. Project Page: mosaicmem.github.io/mosaicmem/ Paper: huggingface.co/papers/2603.17…
English
18
52
240
185.2K
Ligong Han 리트윗함
Ruijiang Gao
Ruijiang Gao@ruijianggao·
What happens when you invite 150 AI economists (Claude Code) to a research conference, give them the exact same data, and ask them to test the same hypotheses? We did just that. The results reveal a new phenomenon: Nonstandard Errors in AI Agents. 🧵👇
English
22
272
1.5K
192.5K
Ligong Han 리트윗함
Red Hat AI
Red Hat AI@RedHat_AI·
How is generative AI reshaping engineering design? In Episode 2 of No Math AI, hosts Dr. Akash Srivastava (@variational_i) and MIT PhD student Isha Puri (@ishapuri101) sit down with Dr. Faez Ahmed (@_faezahmed) from MIT DeCoDE Lab to explore just that. 👇
English
1
2
8
1.6K
Ligong Han 리트윗함
Hao Wang
Hao Wang@HaoGarfield·
#ICLR2025 #BayesDL #LLM #ICL Can LLMs enjoy the accuracy of many-shot in-context learning (ICL) with only the inference cost of zero-shot learning. To address this question, we proposed implicit in-context learning (I2CL).
English
1
3
16
1.5K
Ligong Han 리트윗함
Can Jin
Can Jin@CanJin12321·
🚀 Big News! Our latest preprint is out: 🧠 “Two Heads Are Better Than One: Test-time Scaling of Multi-agent Collaborative Reasoning” Introducing M1-32B — an LLM fine-tuned for multi-agent collaboration on M500, a dataset of 500 rich reasoning traces. 👇 (1/4)
English
1
3
2
768
Ligong Han 리트윗함
Zhuowei (Jack) Li
Zhuowei (Jack) Li@lzvv123456·
📣 Excited to share our ICLR 2025 paper "Implicit In-context Learning (I2CL), achieving few-shot performance at zero-shot inference cost! Don’t miss it at poster session Fri 24th 3:00-5:30pm #228! Paper and code is available at: arxiv.org/pdf/2405.14660 #ICLR2025 #LLM #ML
Zhuowei (Jack) Li tweet media
English
0
1
3
250
Ligong Han 리트윗함
Hao Wang
Hao Wang@HW_HaoWang·
[1/x] 🚀 We're excited to share our latest work on improving inference-time efficiency for LLMs through KV cache quantization---a key step toward making long-context reasoning more scalable and memory-efficient.
Hao Wang tweet media
English
9
8
26
3.6K
Ligong Han 리트윗함
Isha Puri
Isha Puri@ishapuri101·
[1/x] can we scale small, open LMs to o1 level? Using classical probabilistic inference methods, YES! Joint @MIT_CSAIL / @RedHat AI Innovation Team work introduces a particle filtering approach to scaling inference w/o any training! check out …abilistic-inference-scaling.github.io
Isha Puri tweet media
English
2
67
235
45K
Ligong Han 리트윗함
Hao Wang
Hao Wang@HaoGarfield·
If you're interested in Trustworthy LLMs, particularly probabilistic methods, generalization, or calibration, we' d love to see you there! 🤝This is done with @RutgersCS visiting student @Yibin_Wang_ and my PhD student @shihaizhou as well as @ligongh and Dimitris Metaxas
Hao Wang tweet media
English
0
2
3
450
Ligong Han 리트윗함
camenduru
camenduru@camenduru·
💃 Score-Guided Diffusion for 3D Human Recovery 🕺 Jupyter Notebook 🥳 Thanks to @statho_@ligongh ❤ Dimitris Metaxas ❤ 🌐page: statho.github.io/ScoreHMR/ 📄paper: arxiv.org/abs/2403.09623 🧬code: github.com/statho/ScoreHMR 🍊jupyter by modelslab.com: please try it 🐣 github.com/camenduru/Scor…
Anastasis Stathopoulos@statho_

Check out our new work "Score-Guided Diffusion for 3D Human Recovery", a.k.a. ScoreHMR, with @ligongh and Dimitris Metaxas that will appear at #CVPR2024! Paper: arxiv.org/abs/2403.09623 Project Page: statho.github.io/ScoreHMR/ Code & models: github.com/statho/ScoreHMR

English
3
30
128
10.4K
Ligong Han 리트윗함
AI Bites | YouTube Channel
Score-Guided Human Mesh Recovery (ScoreHMR) is an approach for solving inverse problems for 3D human pose and shape reconstruction. ScoreHMR mimics model fitting approaches, but alignment with the image observation is achieved through score guidance in the latent space of a diffusion model. Paper: ScoreHMR: Score-Guided Diffusion for 3D Human Recovery Link: arxiv.org/abs/2403.09623 Project: statho.github.io/ScoreHMR/ #AI #AI美女 #LLMs #deeplearning #3D
English
1
25
101
11.7K
Ligong Han 리트윗함
Peyman Milanfar
Peyman Milanfar@docmilanfar·
SVDiff: Compact Parameter Space for Diffusion Fine-Tuning Diffusion models are amazing, but customizing them is hard. SVDiff has 2,200x fewer parameters than DreamBooth because we fine-tune with the singular values of the weight matrices arxiv.org/abs/2303.11305 #ICCV2023 (2/3)
Peyman Milanfar tweet media
English
2
9
46
6.6K
Ligong Han 리트윗함
Honglu Zhou
Honglu Zhou@zhou_honglu·
📢 Our #SMART101 challenge is now open! 🎉 Join the brightest minds in multimodal reasoning and cognitive models of intelligence to drive AI progress. 🚀 Don't miss out! Challenge closes on Sept. 1. Winning teams will receive prizes! 🏆 eval.ai/web/challenges… #VLAR #ICCV2023 #AI
Honglu Zhou tweet media
English
1
20
17
3.2K
Ligong Han 리트윗함
Charlotte Loh
Charlotte Loh@charlotteloh_·
Can't decide if your representations should be invariant or equivariant to a transformation? Multi-Symmetry Ensembles (MSE) can help you by combining both! ImageNet results below. Humbled to have our work accepted at #ICML2023, @icmlconf. Joint work w/ @MITIBMLab, @MIT and @AWS.
Charlotte Loh tweet mediaCharlotte Loh tweet media
English
1
6
14
5.4K
Ligong Han 리트윗함
Akash Srivastava
Akash Srivastava@variational_i·
Do you want to estimate the density ratio accurately but are dissatisfied with the results?
GIF
English
1
6
20
5K
Ligong Han 리트윗함
AK
AK@_akhaliq·
SVDiff: Compact Parameter Space for Diffusion Fine-Tuning proposed SVDiff method has a significantly smaller model size (1.7MB for StableDiffusion) compared to existing methods (vanilla DreamBooth 3.66GB, Custom Diffusion 73MB), making it more practical for real-world applications abs: arxiv.org/abs/2303.11305
AK tweet media
English
3
38
235
47.9K
Ligong Han 리트윗함
Akash Srivastava
Akash Srivastava@variational_i·
If you are a PhD student at @MIT (sorry about this constraint) looking for an #internship and are interested in any of the topics listed in this 🧵, please get in touch with me or @HW_HaoWang, as my group is seeking talented students to join us at the @MITIBMLab
English
2
13
52
0