Zhang B. Neural Networks with Model Compression 2024
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Zhang B. Neural Networks with Model Compression 2024
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Added: 2025-03-10 23:38:48
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Info Hash: EC6E14D125F225BAA27FF0E79C579968D2D2EE2F
Last updated: 15.6 hours ago
Description:
Textbook in PDF format
Review recent advances in CNN compression and acceleration
Elaborate recent advances on deep model compression technologies
Introduce applications of model compression in image classification, speech recognition, object detection etc.
Deep learning has achieved impressive results in image classification, computer vision and natural language processing. To achieve better performance, deeper and wider networks have been designed, which increase the demand for computational resources. The number of floating-point operations (FLOPs) has increased dramatically with larger networks, and this has become an obstacle for convolutional neural networks (CNNs) being developed for mobile and embedded devices. In this context, our book will focus on CNN compression and acceleration, which are important for the research community. We will describe numerous methods, including parameter quantization, network pruning, low-rank decomposition and knowledge distillation. More recently, to reduce the burden of handcrafted architecture design, neural architecture search (NAS) has been used to automatically build neural networks by searching over a vast architecture space. Our book will also introduce NAS due to its superiority and state-of-the-art performance in various applications, such as image classification and object detection. We also describe extensive applications of compressed deep models on image classification, speech recognition, object detection and tracking. These topics can help researchers better understand the usefulness and the potential of network compression on practical applications. Moreover, interested readers should have basic knowledge about machine learning and deep learning to better understand the methods described in this book