Internet of Thing Device
Internet of Things (IoT) devices are increasingly reliant on efficient and secure machine learning (ML) for tasks ranging from anomaly detection and intrusion prevention to resource optimization and personalized services. Current research emphasizes developing lightweight ML models, often employing neural networks (like CNNs and MLPs) and ensemble methods (e.g., XGBoost), optimized for resource-constrained IoT hardware and tailored to address privacy concerns through techniques such as federated learning and differential privacy. This work is crucial for enabling the secure and sustainable deployment of increasingly sophisticated IoT applications across diverse sectors, improving both security and energy efficiency.
Papers
Cost-Driven Hardware-Software Co-Optimization of Machine Learning Pipelines
Ravit Sharma, Wojciech Romaszkan, Feiqian Zhu, Puneet Gupta, Ankur Mehta
Enhancing Neural Architecture Search with Multiple Hardware Constraints for Deep Learning Model Deployment on Tiny IoT Devices
Alessio Burrello, Matteo Risso, Beatrice Alessandra Motetti, Enrico Macii, Luca Benini, Daniele Jahier Pagliari