Deep learning (DL) will continue to make significant progress in technical capabilities and scope of deployment across all aspects of life, including revolutionizing healthcare, retail, manufacturing, autonomous vehicles, security and fraud prevention, and data analytics. However, to build the future of AI, it is necessary to define a set of goals and expectations that will drive a new generation of technologies.
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