Musical Deep Neural Networks in the Browser by Tero Parviainen
This development has many exciting prospects. One of them is that all the work AI researchers have put into musical applications of neural nets is suddenly available to use in web apps. We can now use generative musical deep learning models and build interactive web-based experiences on top of them, with the help of Web Audio and the rest of the web platform. In this talk I will present some recent experiments I've made using deep neural nets and Web Audio in the browser. We'll see how recurrent neural networks can be used to build melodic "autocompletion" tools and arpeggiators, as well as generative drum patterns.
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