drscotthawley/ml-audio-start
Suggestions for those interested in developing audio applications of machine learning
This guide provides resources and suggestions for students and researchers interested in applying machine learning to audio and acoustics problems. It offers curated lists of active practitioners, online courses, tutorials, key academic papers, and software tools to help you develop audio applications. This is designed for anyone, from students to seasoned researchers, looking to bridge their audio expertise with machine learning techniques.
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Use this if you are an audio or acoustics professional, student, or enthusiast eager to apply machine learning to sound, but aren't sure where to start.
Not ideal if you are looking for a step-by-step coding tutorial for a specific audio machine learning project, as this is a resource guide, not a direct implemention.
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May 28, 2023
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