AI RESEARCH

Evolutionary fine tuning of quantized convolution-based deep learning models

arXiv CS.LG

ArXi:2605.05228v1 Announce Type: new Deep learning models are the most efficient models in many machine learning tasks. The main disadvantage when using them in IoT, mobile devices, independent autonomous or real-time systems is their complexity and memory size. Therefore, much research has concentrated on compression techniques of deep learning architectures. One of the most popular technique is quantization. In most of the works, the quantization is done based on the nearest neighbour quantization technique.