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In the latest episode of Brains and Machines , Sally Ward-Foxton of EE Times talks to Dr. Sunny Bains of the University College London. They discuss the importance of power in all AI systems, the benefit of having dedica...
Can the Nvidia Monopoly on AI Chips Be Broken? is an episode from EETimes On Air by EE Times On Air. In the latest episode of Brains and Machines , Sally Ward-Foxton of EE Times talks to Dr. Sunny Bains of the University College London. The...
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Published Mar 16, 2026, 0:49:00 long, audio available.
In the latest episode of Brains and Machines , Sally Ward-Foxton of EE Times talks to Dr. Sunny Bains of the University College London. They discuss the importance of power in all AI systems, the benefit of having dedicated inference chips, and where neuromorphic fits into the market. Discussion follows with Dr. Giulia D’Angelo from the Czech Technical University in Prague and Professor Ralph Etienne-Cummings of Johns Hopkins University.
You can listen to Can the Nvidia Monopoly on AI Chips Be Broken? online on Radio and Podcast. Open the player on this page to stream the available audio.
Can the Nvidia Monopoly on AI Chips Be Broken? is an episode from EETimes On Air by EE Times On Air.
This episode is 0:49:00 long.
This episode was published on Mar 16, 2026.
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Can the Nvidia Monopoly on AI Chips Be Broken? is from EETimes On Air by EE Times On Air.
Published Mar 16, 2026 and 0:49:00 long