Resource Constrained
Resource-constrained computing focuses on developing efficient algorithms and models for applications with limited computational resources, memory, and power, such as embedded systems and mobile robots. Current research emphasizes lightweight model architectures (e.g., smaller convolutional neural networks, quantized models, pruned transformers) and techniques like knowledge distillation, federated learning, and efficient hyperparameter optimization to improve performance while minimizing resource demands. This field is crucial for deploying AI and machine learning in resource-limited environments, enabling applications in areas like robotics, healthcare diagnostics, and IoT devices where full computational power is unavailable.
Papers
Optimizing Vital Sign Monitoring in Resource-Constrained Maternal Care: An RL-Based Restless Bandit Approach
Niclas Boehmer, Yunfan Zhao, Guojun Xiong, Paula Rodriguez-Diaz, Paola Del Cueto Cibrian, Joseph Ngonzi, Adeline Boatin, Milind Tambe
L-VITeX: Light-weight Visual Intuition for Terrain Exploration
Antar Mazumder, Zarin Anjum Madhiha