Data Science Education: The Signal Processing Perspective [SP Education]

  • Sharon Gannot ,
  • Zheng-Hua Tan ,
  • Martin Haardt ,
  • Nancy F. Chen ,
  • Hoi-To Wai ,
  • ,
  • Walter Kellermann ,
  • Justin Dauwels

IEEE Signal Processing Magazine | , Vol 40(7): pp. 89-93

In the last decade, the signal processing (SP) community has witnessed a paradigm shift from model-based to data-driven methods. Machine learning (ML)—more specifically, deep learning—methodologies are nowadays widely used in all SP fields, e.g., audio, speech, image, video, multimedia, and multimodal/multisensor processing, to name a few. Many data-driven methods also incorporate domain knowledge to improve problem modeling, especially when computational burden, training data scarceness, and memory size are important constraints.