About

Ken Goldberg is a pioneering roboticist and professor at UC Berkeley whose research spans robotic grasping, deep learning for manipulation, cloud robotics, surgical automation, and AI-driven perception. He is perhaps best known for the Dexterity Network (Dex-Net) project, which revolutionized robotic grasp planning by combining large-scale synthetic datasets, deep learning, and analytic grasp metrics. Dex-Net 2.0 alone has garnered over 1,400 citations across versions, establishing it as a landmark contribution to data-driven robotics. His work on Dex-Net 1.0 introduced cloud-based collaborative grasp planning using multi-armed bandit models, while his research on imitation learning via Virtual Reality teleoperation (590 citations) opened new pathways for intuitive robot skill acquisition. Goldberg has also pushed boundaries at the intersection of robotics and medicine, contributing to automated surgical suturing and AI-driven medical robotics. More recently, his involvement in Language Embedded Radiance Fields (LERF, 291 citations) reflects a forward-looking engagement with language-grounded 3D scene understanding. With foundational work in simulation-to-real transfer and object segmentation, Goldberg's cumulative impact makes him one of the most influential figures shaping the future of intelligent, dexterous robotic systems.

Research Focus

Key Achievements

44
H-Index
194
Papers
8,129
Total Citations
42
Avg Citations/Paper
🏆 Most Cited Paper
Dex-Net 2.0: Deep Learning to Plan Robust Grasps with Synthetic Point Clouds and Analytic Grasp Metrics
1,162 citations · 2017
📈 Most Prolific Year: 2020 (32 Papers)
🤝 Key Collaborators: 458
🏛 Institutions: University of California, Berkeley, Google (United States), Berkeley College, Institute of Occupational Medicine, Corvallis Environmental Center, Berkeley Systems (United States)

Top Papers

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Key Collaborators

Contact & Links

Available for collaboration
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