Long Short-Term Memory-Based Neural Networks in an AI Music Generation Platform

Author:

Nagarajan Suresh Kumar1,Narasimhan Geetha2,Mishra Ankit2,Kumar Rishabh2

Affiliation:

1. Presidency University, India

2. Vellore Institute of Technology, Vellore, India

Abstract

Music is an essential component of a promotional video since it helps to establish a brand's or entity's identity. Music composition and production, on the other hand, is quite costly. The expense of engaging a competent team capable of creating distinctive music for your firm could be prohibitively expensive. In the last decade, artificial intelligence has accomplished feats previously unimaginable to humanity. Artificial intelligence can be a lifesaver, not only in terms of the amount of money a company would have to spend on creating their own unique music but also in terms of the amount of time and work required on the firm's part. A web-based platform that can be accessed from anywhere in the world would help the product obtain customers without regard to geography. AI algorithms can be taught to recognize which sound combinations produce a pleasing melody (or music). Multiple machine learning algorithms can be used to accomplish this.

Publisher

IGI Global

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