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商品描述
This book offers a comprehensive exploration of the transformative role that edge devices play in advancing Internet of Things (IoT) applications. By providing real-time processing, reduced latency, increased efficiency, improved security, and scalability, edge devices are at the forefront of enabling IoT growth and success. As the adoption of AI on the edge continues to surge, the demand for real-time data processing is escalating, driving innovation in AI and fostering the development of cutting-edge applications and use cases. Delving into the intricacies of traditional deep neural network (deepNet) approaches, the book addresses concerns about their energy efficiency during inference, particularly for edge devices. The energy consumption of deepNets, largely attributed to Multiply-accumulate (MAC) operations between layers, is scrutinized. Researchers are actively working on reducing energy consumption through strategies such as tiny networks, pruning approaches, and weight quantization. Additionally, the book sheds light on the challenges posed by the physical size of AI accelerators for edge devices. The central focus of the book is an in-depth examination of SNNs' capabilities in radar data processing, featuring the development of optimized algorithms.
商品描述(中文翻譯)
本書全面探討邊緣設備在推動物聯網(IoT)應用中的變革性角色。透過提供即時處理、降低延遲、提高效率、改善安全性和可擴展性,邊緣設備在促進物聯網的增長和成功方面處於最前沿。隨著邊緣人工智慧(AI)採用的持續上升,對即時數據處理的需求也在增加,這推動了人工智慧的創新並促進了尖端應用和使用案例的發展。本書深入探討傳統深度神經網絡(deepNet)方法的複雜性,並針對其在推理過程中的能效問題,特別是對於邊緣設備的影響進行討論。深度神經網絡的能耗主要歸因於層之間的乘加(Multiply-accumulate, MAC)操作,這一點受到仔細檢視。研究人員正積極尋求透過微型網絡、剪枝方法和權重量化等策略來降低能耗。此外,本書還闡明了人工智慧加速器對邊緣設備所帶來的物理尺寸挑戰。本書的核心重點是深入檢視脈衝神經網絡(SNN)在雷達數據處理中的能力,並介紹優化算法的開發。
作者簡介
Muhammad Arsalan received the M.Sc. degree in Computational Engineering from the University of Rostock, and the M.Sc. degree in Biomedical Computing from the Technical University of Munich. He is currently working as a Senior Data Scientist.
作者簡介(中文翻譯)
穆罕默德·阿爾薩蘭(Muhammad Arsalan)獲得了羅斯托克大學的計算工程碩士學位,以及慕尼黑工業大學的生物醫學計算碩士學位。他目前擔任高級數據科學家。