Albina Klepach

23 posts

Albina Klepach

Albina Klepach

@_cinemere

researching RL

Se unió Temmuz 2024
220 Siguiendo67 Seguidores
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Albina Klepach
Albina Klepach@_cinemere·
🤩Excited to share our #AAAI2026 Oral on #EmbodiedAI: How can robots learn from noisy, unlabeled videos—like those on the internet—without action labels? Our new work, Object-Centric Latent Action Learning, tackles exactly this. Thread ↓
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Albina Klepach
Albina Klepach@_cinemere·
Don't forget to visit my oral or/and poster today on scalable imitation learning via object-centric pretraining. Oral: Garnet 218 @ 9:50 am Poster: Hall 4 Also, feel free to reach out if you want to chat about continual, imitation and/or reinforcement learning while at AAAI!
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Amit LeVi
Amit LeVi@AmitLeViAI·
Drop a link to your #AAAI2026 paper in the comments if you’re coming this week👇 #AAAI starts soon, and I’m heading there tomorrow(but I will actually arrive on the day after🥲) ✈️ I’d love to meet fellow researchers, industry professionals, and investors who are passionate about AI, to exchange ideas, get feedback, or explore potential collaborations. My ongoing research focuses on LLMs, including (but not limited to): •Safety: Evaluation, Alignment •Interpretability •Unlearning •Continual learning •Pre-training •Model optimization and compression •Diffusion LMs •AI Agents Security If you’re attending AAAI, feel free to message me 😊 See you at the conference!
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Albina Klepach
Albina Klepach@_cinemere·
🤩Excited to share our #AAAI2026 Oral on #EmbodiedAI: How can robots learn from noisy, unlabeled videos—like those on the internet—without action labels? Our new work, Object-Centric Latent Action Learning, tackles exactly this. Thread ↓
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Albina Klepach retuiteado
Vladislav Kurenkov
Vladislav Kurenkov@vladkurenkov·
We released 87 hours of @LeRobotHF SO 100/101 datasets. It is a unified, cleaned, and annotated repackage of 598 open-source community datasets (SO100 and SO101), totaling 22,709 episodes, ~9.4M frames, and 563 tasks.
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Denis Tarasov
Denis Tarasov@ML_is_overhyped·
I’m asking for help. I was meant to start my PhD with @_rockt and @robertarail at UCL, but my UK background check was refused. My appeal seems unlikely to succeed, so I’m urgently searching for any PhD or research positions in academia or industry. Any help is appreciated.
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Vladislav Kurenkov
Vladislav Kurenkov@vladkurenkov·
🚀 Introducing cadrille: a new SOTA model for CAD reconstruction from images, point clouds, and text—all in one framework with the use of RLVR. Multimodal inputs + RLVR = clean, editable 3D models. 🧵👇
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Denis Tarasov
Denis Tarasov@ML_is_overhyped·
LLMs are amazing because they can learn in context — read, adapt, and act. Can we do the same for reinforcement learning? That’s the promise of In-Context RL (ICRL). But existing offline ICRL methods don’t even optimize rewards. Our new paper shows why RL matters 🧵
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Alexander Nikulin
Alexander Nikulin@how_uhh·
🎥 Pre-training VLAs on human videos is tempting — Latent Action Models quickly become an essential part of leading VLAs, like GR00T (@DrJimFan) — but can they effectively handle messy real‐world videos? In our #ICML paper we give an answer: not yet, at least without some help!
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Maksim Zhdanov
Maksim Zhdanov@max_nygma·
🔥 Φ-Module 🔥 We present Φ-Module - an easy way to compute partial charges and electrostatic energy in a self-supervised way for any neural network interatomic potential. Learn more below!
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