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  • Episode

    Music Transformer and Machine Learning for Composition with Dr. Anna Huang

    2019-08-17 /
    https://media.blubrry.com/sostrangely/archive.org/download/so-strangely-011/SoStrangely_011.mp3

    Podcast: Play in new window | Download (Duration: 54:21 — 50.4MB)

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    Finn interviews Composer and Machine Learning specialist Dr. Cheng-Zhi Anna Huang about the Music Transformer project at Google’s Magenta Labs. They discuss representations of music for machine learning, algorithmic music generation as a compositional aid, the JS Bach Google Doodle, how self-reference defines structure in music, and compare the musicality of different systems with example outputs.

    Time Stamps

    • [0:01:05] Introducing Dr. Anna Huang
    • [0:03:43] JS Bach Google Doodle
    • [0:12:52] Representations of musical information for machine learning
    • [0:16:26] Music Transformer project
      • [0:25:15] RNN algorithm music sample
    • [0:25:45] ABA structure challenge for generative systems
      • [0:30:30] Vanilla Transformer algorithm music sample 
      • [0:32:07] Music Transformer algorithm music sample 
    • [0:36:30] Self Reference Visualisation (see blog post)
    • [0:43:27] Everyday music implications
    • [0:48:10] What this work says about music
      • [0:50:01] Music Transformer trained on Jazz Piano 

    Show notes

    • Recommended project:
      • Blog post: Huang, C.Z.A., Simon, I., & Dinculescu, M. (2018, Dec 12). Music Transformer: Generating Music with Long-Term Structure [Blog Post]
      • Paper: Huang, C.Z.A., Vaswani, A., Uszkoreit, J., Shazeer, N., Simon, I., Hawthorne, C., Dai, A.M., Hoffman, M.D., Dinculescu, M., & Eck, D. (2018) MUSIC TRANSFORMER: GENERATING MUSIC WITH LONG-TERM STRUCTURE on arXiv.org
    • Interviewee:  Dr. Cheng-Zhi Huang at Google AI, on twitter @huangcza
    • Google Doodle Celebrating JS Bach with AI harmonising melodies
    • Related papers:
      • Huang, C.Z.A., Cooijmans, T., Roberts, A., Courville, A., Eck, D. (2017). Coconet: Counterpoint by Convolution. ISMIR.
      • Huang, C.Z.A., Cooijmans, T., Dinculescu, M., Roberts, A., & Hawthorne, C. (2019, Mar 20). Coconet: the ML model behind today’s Bach Doodle.
      • Huang, C.Z.A., Hawthorne, C., Roberts, A., Dinculescu, M., Wexler, J., Hong, L., Howcroft, J. (2019). The Bach Doodle: Approachable music composition with machine learning at scale. ISMIR.

    Credits

    The So Strangely Podcast is produced by Finn Upham, 2018. Algorithmic music samples from the blog post Music Transformer: Generating Music with Long-Term Structure, and included under the principles of fair dealing. The closing music includes a sample of Diana Deutsch’s Speech-Song Illusion sound demo 1.

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