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“This innovation could lead to a more compact and scalable platform for quantum photonic processors,” Peruzzo said. Yang Yang, lead author and RMIT PhD scholar, said the device was “fully controllable,” enabled fast reprogramming with reduced power consumption, and replaced the need for making...
the Office of Naval Research, a Presidential Scholar Award, and two NSERC Discovery Accelerators. Rich is a Fellow of the Canadian Institute for Advanced Research and is on the Executive Board of the Neural Information Processing Society, which runs the premier international machine learning ...
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