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NVIDIA Research continues to drive progress across the field — including generative AImodels that transform text to images or speech, autonomous AI agents that learn new tasks faster, and neuralnetworks that calculate complex physics,” said Jan Kautz, vice president of learning and perception research at NVIDIA.
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pitneybowes.com In The News How Google taught AI to doubt itself Today let’s talk about an advance in Bard, Google’s answer to ChatGPT, and how it addresses one of the most pressing problems with today’s chatbots: their tendency to make things up. [Get your FREE eBook.] Get your FREE eBook.]
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