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Home »News»Invited talk at CISC 2017

Invited talk at CISC 2017

Posted onSeptember 10, 2017July 31, 2019Authorminje

Minje is giving an invited talk at the Workshop on Computational Intelligence and Soft Computing (CISC 2017), a satellite workshop of the Int’l Conf. on Parallel Architectures and Compilation Techniques (PACT). Title: “Using Bitwise Machine Learning Models for Resource-Constrained Edge Devices”

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  • Home
  • News
  • People
  • Research Projects
    • Personalized Speech Enhancement
      • Collaborative Deep Learning
      • Sparse Mixture of Local Experts
      • Knowledge Distillation for PSE
      • Self-Supervised Learning and Data Purification for PSE
    • Music Applications
      • Neural Pitch Correction of Singing Voice
      • SpaIn-Net: Spatially Informed Music Source Separation
      • Don’t Separate, Learn to Remix: End-to-End Neural Remixing
      • Neural Upmixing via Style Transfer
    • Learning to Hash for Source Separation
    • Neural Audio Coding
      • Psychoacoustic Loss Functions for Neural Audio Coding
      • Source-Aware Neural Audio Coding
      • HARP-Net
    • Collaborative Audio Enhancement
  • Publication
  • Prospective Members
  • QuickFacts