Yeda Song (@__runamu__) 's Twitter Profile
Yeda Song

@__runamu__

Interested in multimodal agents - combining RL and (V)LM @ UMich 🇺🇸

ID: 1478647755690344463

linkhttp://yedasong.com calendar_today05-01-2022 08:42:02

4 Tweet

45 Followers

162 Following

Sangdoo Yun (@oodgnas) 's Twitter Profile Photo

Glad to share our work at #ACL2023, "MPChat: Towards Multimodal Persona-Grounded Conversation" arxiv.org/abs/2305.17388 ! #multimodal #persona_chat authors: Jaewoo Ahn, Yeda Song, Gunhee Kim

Rada Mihalcea (@radamihalcea) 's Twitter Profile Photo

I love our Michigan AI Lab MichiganAI! A group of people who not only does some of the coolest research in AI, but also care for and of each other, and enjoy each other’s company. A picture from this week’s fun picnic. ❤️

I love our Michigan AI Lab <a href="/michigan_AI/">MichiganAI</a>! A group of people who not only does some of the coolest research in AI, but also care for and of each other, and enjoy each other’s company. A picture from this week’s fun picnic. ❤️
Kenneth Li (@ke_li_2021) 's Twitter Profile Photo

LLM chatbots are moving fast, but how do we make them better? In my new blog at The Gradient, I argue that an important next step is giving them a sense of "purpose."

LLM chatbots are moving fast, but how do we make them better? In my new blog at The Gradient, I argue that an important next step is giving them a sense of "purpose."
Shunyu Yao (@shunyuyao12) 's Twitter Profile Photo

I finally wrote another blogpost: ysymyth.github.io/The-Second-Hal… AI just keeps getting better over time, but NOW is a special moment that i call “the halftime”. Before it, training > eval. After it, eval > training. The reason: RL finally works. Lmk ur feedback so I’ll polish it.

Jianwei Yang (@jw2yang4ai) 's Twitter Profile Photo

🚀 Excited to announce our 4th Workshop on Computer Vision in the Wild (CVinW) at #CVPR2025 2025! 🔗 computer-vision-in-the-wild.github.io/cvpr-2025/ ⭐We have invinted a great lineup of speakers: Prof. Kaiming He, Prof. Boqing Gong, Prof. Cordelia Schmid, Prof. Ranjay Krishna, Prof. Saining Xie, Prof.

🚀 Excited to announce our 4th Workshop on Computer Vision in the Wild (CVinW) at <a href="/CVPR/">#CVPR2025</a> 2025!
🔗 computer-vision-in-the-wild.github.io/cvpr-2025/

⭐We have invinted a great lineup of speakers: Prof. Kaiming He, Prof. <a href="/BoqingGo/">Boqing Gong</a>, Prof. <a href="/CordeliaSchmid/">Cordelia Schmid</a>, Prof. <a href="/RanjayKrishna/">Ranjay Krishna</a>, Prof. <a href="/sainingxie/">Saining Xie</a>, Prof.
Furong Huang (@furongh) 's Twitter Profile Photo

Excited to speak at the Workshop on Computer Vision in the Wild #CVPR2025 2025! 🎥🌍 🗓️ June 11 | 📍 Room 101 B, Music City Center, Nashville, TN 🎸 🧠 Talk: From Perception to Action: Building World Models for Generalist Agents Let’s connect if you're around! #CVPR2025 #robotics

Excited to speak at the Workshop on Computer Vision in the Wild <a href="/CVPR/">#CVPR2025</a> 2025! 🎥🌍
🗓️ June 11 | 📍 Room 101 B, Music City Center, Nashville, TN 🎸
🧠 Talk: From Perception to Action: Building World Models for Generalist Agents
Let’s connect if you're around! #CVPR2025 #robotics
MichiganAI (@michigan_ai) 's Twitter Profile Photo

We're heading to #CVPR2025! 📰Curious about what’s coming? Take a look at our list of accepted papers and come to meet the authors! Get ready for innovative #AI research and fresh insights!

We're heading to #CVPR2025!
📰Curious about what’s coming? Take a look at our list of accepted papers and come to meet the authors!

Get ready for innovative #AI research and fresh insights!
Yeda Song (@__runamu__) 's Twitter Profile Photo

Arrived in Nashville for #CVPR 🤠 Excited to present MONDAY, a collaboration with LG AI Research! 📍 MMFM Workshop - Thu, 9:40 AM 📍 Main Conference - Fri, 4:00 PM Let’s connect and chat!🤝 Also exploring Summer 2026 internships 🔍 MONDAY website: monday-dataset.github.io

Sangwoo Mo (@sangwoomo) 's Twitter Profile Photo

Can scaling data and models alone solve computer vision? 🤔 Join us at the SP4V Workshop at #ICCV2025 in Hawaii to explore this question! 🎤 Speakers: Danfei Xu, joao carreira, Jiajun Wu, Kristen Grauman, Saining Xie, Vincent Sitzmann 🔗 sp4v.github.io

Can scaling data and models alone solve computer vision? 🤔
Join us at the SP4V Workshop at #ICCV2025 in Hawaii to explore this question!

🎤 Speakers: <a href="/danfei_xu/">Danfei Xu</a>, <a href="/joaocarreira/">joao carreira</a>, <a href="/jiajunwu_cs/">Jiajun Wu</a>, Kristen Grauman, <a href="/sainingxie/">Saining Xie</a>, <a href="/vincesitzmann/">Vincent Sitzmann</a>

🔗 sp4v.github.io
Andrej Karpathy (@karpathy) 's Twitter Profile Photo

The race for LLM "cognitive core" - a few billion param model that maximally sacrifices encyclopedic knowledge for capability. It lives always-on and by default on every computer as the kernel of LLM personal computing. Its features are slowly crystalizing: - Natively multimodal

Yeda Song (@__runamu__) 's Twitter Profile Photo

✨Two life updates✨ 1. Started my internship at LG AI Research in Ann Arbor, Michigan — Advancing AI for a better life! 🔮 2. Advanced to PhD candidacy at UMich CSE. This means I’ve completed my coursework and passed the qualification process. 🙌

Seohong Park (@seohong_park) 's Twitter Profile Photo

Flow Q-learning (FQL) is a simple method to train/fine-tune an expressive flow policy with RL. Come visit our poster at 4:30p-7p this Wed (evening session, 2nd day)!

Flow Q-learning (FQL) is a simple method to train/fine-tune an expressive flow policy with RL.

Come visit our poster at 4:30p-7p this Wed (evening session, 2nd day)!
Aviral Kumar (@aviral_kumar2) 's Twitter Profile Photo

🚨🚨New paper on core RL: a way to train value-functions via flow-matching for scaling compute! No text/images, but a flow directly on a scalar Q-value. This unlocks benefits of iterative compute, test-time scaling for value prediction & SOTA results on whatever we tried. 🧵⬇️

🚨🚨New paper on core RL: a way to train value-functions via flow-matching for scaling compute!

No text/images, but a flow directly on a scalar Q-value. This unlocks benefits of iterative compute, test-time scaling for value prediction &amp; SOTA results on whatever we tried.

🧵⬇️