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Tokamaks / Nuclear physics / Nuclear technology / Fusion power / Massachusetts Institute of Technology / Alcator C-Mod / MIT Plasma Science and Fusion Center / Magnetic confinement fusion / Versatile Toroidal Facility / Physics / Fusion reactors / Plasma physics
Date: 2014-04-23 14:03:31
Tokamaks
Nuclear physics
Nuclear technology
Fusion power
Massachusetts Institute of Technology
Alcator C-Mod
MIT Plasma Science and Fusion Center
Magnetic confinement fusion
Versatile Toroidal Facility
Physics
Fusion reactors
Plasma physics

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