What are the pros and cons of Deep Neural Networks (DNNs algorithms in artificial intelligence (AI)?
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A: (12)+(12)2+(12)3+(12)4+...................?(13)+(13)2+(13)3+(13)4+...................?
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What are the pros and cons of Deep Neural Networks (DNNs algorithms in artificial intelligence (AI)?
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