Code offloading solutions for audio processing in mobile healthcare applications: A case study Conference

Sanabria, P, Benedetto, JI, Neyem, A et al. (2018). Code offloading solutions for audio processing in mobile healthcare applications: A case study . 117-121. 10.1145/3197231.3197256

cited authors

  • Sanabria, P; Benedetto, JI; Neyem, A; Navon, J; Poellabauer, C

abstract

  • In this paper, we present a real-life case study of a mobile healthcare application that leverages code offloading techniques to accelerate the execution of a complex deep neural network algorithm for analyzing audio samples. Resource-intensive machine learning tasks take a significant time to complete on high-end devices, while lower-end devices may outright crash when attempting to run them. In our experiments, offloading granted the former a 3.6x performance improvement, and up to 80% reduction in energy consumption; while the latter gained the capability of running a process they originally could not.

publication date

  • May 27, 2018

Digital Object Identifier (DOI)

International Standard Book Number (ISBN) 13

start page

  • 117

end page

  • 121