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Georgia Institute of Technology

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  • Evaluation of Generative Models in Music
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  • Latte: Cross-framework Python Package for Evaluation of Latent-Based Generative Models
  • Score-Informed Networks for Music Performance Assessment

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https://musicinformatics.gatech.edu/wp-content_nondefault/uploads/2019/01/audio_content1.mp3
Posted on January 9, 2019

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