Deep Learning Application

Deep learning applications are rapidly expanding across diverse fields, driven by the need for efficient, accurate, and privacy-preserving solutions. Current research focuses on improving model efficiency through techniques like lossy compression, quantization, and efficient inference frameworks for resource-constrained devices, as well as addressing challenges related to data privacy (e.g., machine unlearning) and model robustness (e.g., verification-friendly networks). These advancements are significantly impacting various sectors, from healthcare (medical image analysis) to environmental monitoring (seafloor image classification) and industrial automation, by enabling faster, more accurate, and resource-efficient solutions. Furthermore, the use of foundation models and federated learning is enabling broader data access and collaborative model training while preserving privacy.

Papers