Each of the four Google employees Business Insider spoke with spent roughly a year preparing to pivot to an AI team. Mason Trinca/Getty Images Four Google employees share the paths they took to transition into AI-focused roles at the company. They upskilled through hackathons, content creation, reading, and getting advanced degrees. It typically took around
AI driven hybrid convolutional and transformer based deep learning architecture for precise lung nodule classification – Scientific Reports
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