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Polyphonic HMI: Mixing Music and Math
內容大綱
In 2003, Mike McCready, CEO of Barcelona-based Polyphonic HMI, was preparing to launch an artificial intelligence tool that could create significant value for music businesses. The technology, referred to as Hit Song Science (HSS), analyzed the mathematical characteristics of music and compared them to characteristics of past music hits, making it possible to determine a new song's hit potential. McCready must decide on a target market--record companies, producers, or unsigned artists--and develop a marketing plan that helps overcome the likely resistance against adoption.