Sahajpreet Singh Khasria

Computer science

Hometown: Kurukshetra, Haryana, India

Graduation date: Spring 2026

Additional details: First-generation college student

Energy icon, disabled. An orange lightning bolt.

FURI | Fall 2024, Summer 2024

Automated Neural Architecture Search for Resource-Constrained Environments

This research aims to develop an efficient Neural Architecture Search (NAS) method for resource-constrained environments like embedded systems and mobile devices. The study focuses on overcoming limitations in memory, computational power, latency, bandwidth, energy consumption, and hardware compatibility. By creating a streamlined NAS approach tailored for these environments, it enhances the deployment of advanced AI models, making AI more accessible and practical for various applications. The study builds on existing NAS techniques and evaluates the proposed approach using benchmarks like CIFAR-10 and CIFAR-100. Future work will explore further optimizations and broader applicability across diverse resource-constrained scenarios.

Mentor:

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.