Practical Implementation
Practical implementation in scientific research focuses on translating theoretical concepts and algorithms into functional systems and applications. Current research emphasizes efficient model compression techniques (e.g., knowledge distillation, quantization) for resource-constrained environments like FPGAs, as well as robust and accurate implementations of established algorithms (e.g., gradient descent, PCA) for various applications, including biomedical image analysis and robotics. This work is crucial for bridging the gap between theoretical advancements and real-world impact, enabling the deployment of AI and other advanced technologies in diverse fields.
Papers
Implementation of a framework for deploying AI inference engines in FPGAs
Ryan Herbst, Ryan Coffee, Nathan Fronk, Kukhee Kim, Kuktae Kim, Larry Ruckman, J. J. Russell
Design and implementation of intelligent packet filtering in IoT microcontroller-based devices
Gustavo de Carvalho Bertoli, Gabriel Victor C. Fernandes, Pedro H. Borges Monici, César H. de Araujo Guibo, Lourenço Alves Pereira, Aldri Santos