Pipeline for employing a Lightweight deep learning models for LOW-power systems

Related tags

Deep LearningPL-LOW
Overview

PL-LOW

A high-performance deep learning model lightweight pipeline that gradually lightens deep neural networks in order to utilize high-performance deep learning models in low-power systems with limited computational resources such as mobile/embedded devices.

PL-LOW includes the following three lightweight element technologies that reduce the size of the deep learning model, the amount of computation required for inference, and the memory usage.

  • Deep learning model parameter lightweight technology that maintains high expressive power.
  • Deep learning model knowledge distillation technology that effectively learns high-level information.
  • Deep learning model lightweight inference technology for fast computation and high accuracy

Authors

Principal Investigator (PI)

License

The code is licensed under the MIT License

Owner
POSTECH Data Intelligence Lab
POSTECH Data Intelligence Lab
POSTECH Data Intelligence Lab
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