Lightweight Encoder
Lightweight encoders are compact neural network architectures designed to efficiently extract relevant features from various data types, such as images, audio, and time series, while minimizing computational cost and power consumption. Current research focuses on improving their performance through techniques like quantization, efficient attention mechanisms, and incorporating self-supervised learning or knowledge distillation from larger models, often within autoencoder or transformer frameworks. This pursuit of efficiency is crucial for deploying advanced machine learning models on resource-constrained devices like mobile phones and satellites, enabling applications in diverse fields ranging from real-time speech processing and video analysis to remote sensing and edge computing.