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Artificial Intelligence Computing Leadership from NVIDIA
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Research Labs
All Research Labs
3D Deep Learning
Applied Research
Autonomous Vehicles
Deep Imagination
Publications
AI Playground
New and Featured
AI Art Gallery
NGC Demos
Research Areas
AI & Machine Learning
3D Deep Learning
Computer Vision
Robotics
All Areas
Careers
Academic Collaborations
Government Collaborations
Graduate Fellowship
Internships
Research Openings
Research Scientists
Meet the Team
Licensing
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Publications
DiMSam: Diffusion Models as Samplers for Task and Motion Planning under Partial Observability
DiMSam: Diffusion Models as Samplers for Task and Motion Planning under Partial Observability
Authors
Xiaolin Fang (MIT CSAIL)
Caelan Garrett
Clemens Eppner
Tomás Lozano-Pérez (MIT CSAIL)
Leslie Pack Kaelbling (MIT CSAIL)
Dieter Fox
Publication Date
Monday, October 14, 2024
Published in
IEEE/RSJ International Conference on Intelligent Robots and Systems (IROS)
Research Area
Artificial Intelligence and Machine Learning
Robotics
Awards
Best Conference Paper Finalist
Best Student Paper Finalist