Energy Efficient Machine Learning Hardware Co-design

From Center for Integrated Circuits and Devices Research (CIDR)
Revision as of 09:16, 29 September 2022 by Anastacia Alvarez (talk | contribs) (Created page with "This  component  project  of  the  CIDR  program tackles  the  co-design  of  energy-efficient  machine  learning algorithms and hardware. Methodologies to integrate machine learning on-chip for distributed data processing, network lifespan improvement and security will be explored. These methodologies will likewise pave the way for automated hardware generation for the accelerator needed to perform these tasks. ==Personnel== *Project Leader:...")
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This  component  project  of  the  CIDR  program tackles  the  co-design  of  energy-efficient  machine  learning algorithms and hardware. Methodologies to integrate machine learning on-chip for distributed data processing, network lifespan improvement and security will be explored. These methodologies will likewise pave the way for automated hardware generation for the accelerator needed to perform these tasks.

Personnel

  • Project Leader: Anastacia B. Alvarez, PhD
  • Supervising SRS: Sherry Joy Alvionne S. Baquiran
  • University Researcher: Fredrick Angelo Galapon

Allen Jason Tan

  • Science Research Specialist: Maria Luz Limun
  • Project Staff: Ryan Albert Antonio

Rhandley D. Cajote, PhD

Lawrence Roman Quizon

Activities

The project will have three major activities:

  1. The development of IR-UWB transmitter system models for analysis, energy optimization, and automated circuit generation,
  2. The design, implementation, and verification of IR-UWB transmitter building blocks, and
  3. The design, implementation, and verification of a proof-of-concept IR-UWB transmitter, all in 28nm fully-depleted silicon-on-insulator (FDSOI) CMOS technology.

Resources

  • Tutorials
  • Scripts
  • Presentations
  • Papers