Ragini Sistla

Computer science

Hometown: Hyderabad, Telangana, India

Graduation date: Spring 2018

Portrait of Sistala-Ragini
Education icon, disabled. A purple mortarboard.

MORE | Spring 2018

Are Existing Knowledge Transfer Techniques Effective to Train Deep Networks On Edge Devices?

With the emergence of the edge computing paradigm, many edge applications, such as image recognition and augmented reality requires performing machine learning and artificial intelligence workloads on edge devices. Most ML models are large and computationally heavy, whereas edge devices are usually equipped with limited power and energy. Unfortunately, small models cannot perform well. Recent works use KT technique to improve performance of smaller models. The research teams results show that KT technique behaviors and outcomes differ from one architecture to another, and the effectiveness of KT technique depends on the training dataset and network architecture.


QR code for the current page

It’s hip to be square.

Students presenting projects at the Fulton Forge Student Research Expo are encouraged to download this personal QR code and include it within your poster. This allows expo attendees to explore more about your project and about you in the future. 

Right click the image to save it to your computer.