登入帳戶  | 訂單查詢  | 購物車/收銀台( 0 ) | 在線留言板  | 付款方式  | 聯絡我們  | 運費計算  | 幫助中心 |  加入書簽
會員登入 新註冊 | 新用戶登記
HOME新書上架暢銷書架好書推介特價區會員書架精選月讀2023年度TOP分類閱讀雜誌 香港/國際用戶
最新/最熱/最齊全的簡體書網 品種:超過100萬種書,正品正价,放心網購,悭钱省心 送貨:速遞 / EMS,時效:出貨後2-3日

2024年05月出版新書

2024年04月出版新書

2024年03月出版新書

2024年02月出版新書

2024年01月出版新書

2023年12月出版新書

2023年11月出版新書

2023年10月出版新書

2023年09月出版新書

2023年08月出版新書

2023年07月出版新書

2023年06月出版新書

2023年05月出版新書

2023年04月出版新書

『簡體書』深度学习原理与TensorFlow实践

書城自編碼: 3790604
分類: 簡體書→大陸圖書→教材研究生/本科/专科教材
作者: 闭应洲
國際書號(ISBN): 9787121441592
出版社: 电子工业出版社
出版日期: 2022-08-01

頁數/字數: /
釘裝: 平塑

售價:NT$ 313

我要買

share:

** 我創建的書架 **
未登入.



新書推薦:
忧乐圆融:北宋士大夫的精神世界   光明社科文库·政治与哲学
《 忧乐圆融:北宋士大夫的精神世界 光明社科文库·政治与哲学 》

售價:NT$ 494.0
下天山:亚洲腹地之旅
《 下天山:亚洲腹地之旅 》

售價:NT$ 530.0
企鹅英国史(套装八册)
《 企鹅英国史(套装八册) 》

售價:NT$ 4191.0
纪伯伦全集(全新修订增补版)
《 纪伯伦全集(全新修订增补版) 》

售價:NT$ 1550.0
时空大数据的"形状":几何和拓扑的视角
《 时空大数据的"形状":几何和拓扑的视角 》

售價:NT$ 614.0
交锋二十年 (日本奇迹系列,美国与日本贸易摩擦)
《 交锋二十年 (日本奇迹系列,美国与日本贸易摩擦) 》

售價:NT$ 411.0
公民们:法国大革命编年史
《 公民们:法国大革命编年史 》

售價:NT$ 978.0
金雀花帝国(中世纪史名著译丛)
《 金雀花帝国(中世纪史名著译丛) 》

售價:NT$ 442.0

建議一齊購買:

+

NT$ 286
《 问题驱动的中学数学课堂教学:函数与微积分卷 》
+

NT$ 428
《 艺术学概论(第5版) 》
+

NT$ 319
《 建筑设计基础教程(殷青) 》
+

NT$ 703
《 细胞生物学(第5版) 》
+

NT$ 458
《 方剂学·全国中医药行业高等教育“十四五”规划教材 》
+

NT$ 568
《 罗宾斯 管理学(第15版)(工商管理经典译丛) 》
內容簡介:
本书采用“理论 +实践”的方式,全面系统地讲授了深度学习的基本原理以及使用 TensorFlow实现各类深度学习网络的方法。全书共 10章,第 1~3章主要介绍深度学习的基础知识,包括深度学习的概念和应用、深层神经网络的训练和优化、 TensorFlow的内涵和特点等内容;第 4~5章主要介绍 TensorFlow的安装,以及计算模型、数据模型、运行模型等 TensorFlow编程的基础知识;第 6~10章主要围绕 TensorFlow介绍各类深度学习网络,包括单个神经元、多层神经网络、卷积神经网络、循环神经网络、深度学习网络进阶等。全书在各个章节设置有大量的实验和实操案例,兼具知识性和实用性。
關於作者:
闭应洲,南宁师范大学教授,主要研究方向为智能计算、智能医学图像处理及社会计算。主持和参与了10多项科研项目的研究工作,发布论文50多篇。2012年2月至2013年2月在美国亚利桑那州立大学访学,重点研究从海量数据中获取知识所必需的理论和技术。
目錄
目 录第 1章引言····················································································································1 1.1 人工智能简介······································································································1 1.2 机器学习简介······································································································2 1.2.1 机器学习的概念·····························································································2 1.2.2 机器学习的本质·····························································································2 1.2.3 机器学习的步骤·····························································································3 1.2.4 机器学习的关键点··························································································5 1.2.5 机器学习的实战·····························································································6 1.2.6 机器学习的教材·····························································································7 1.3 机器学习的分类 ··································································································8 1.3.1 有监督学习···································································································8 1.3.2 无监督学习···································································································9 1.3.3 半监督学习································································································.10 1.3.4 强化学习···································································································.11 1.4 本章小结··········································································································.12第 2章深度学习的原理 ·······························································································.13 2.1 深度学习简介···································································································.13 2.1.1 深度学习的概念··························································································.13 2.1.2 深度学习的特点··························································································.13 2.2 深度学习的现实意义 ························································································.14 2.2.1 多层神经网络的模型结构 ··············································································.14 2.2.2 非线性处理能力··························································································.14 2.2.3 特征自动提取和转换····················································································.16 2.3 深度学习的应用领域 ························································································.16 2.3.1 计算机视觉································································································.17 2.3.2 自然语言处理·····························································································.20 2.3.3 语音识别···································································································.21 2.4 深层神经网络简介····························································································.22 2.4.1 神经元模型································································································.22 2.4.2 单层神经网络·····························································································.23 2.4.3 深层神经网络·····························································································.24 2.4.4 深层神经网络节点·······················································································.24 2.4.5 深层神经网络参数·······················································································.25 2.4.6 节点输出值计算··························································································.25 2.5 深层神经网络的训练与优化 ··············································································.26 2.5.1 深层神经网络的训练····················································································.26 2.5.2 深层神经网络的优化····················································································.32 2.6 本章小结·····························

 

 

書城介紹  | 合作申請 | 索要書目  | 新手入門 | 聯絡方式  | 幫助中心 | 找書說明  | 送貨方式 | 付款方式 香港用户  | 台灣用户 | 海外用户
megBook.com.tw
Copyright (C) 2013 - 2024 (香港)大書城有限公司 All Rights Reserved.