游戏安全——手游安全技术入门完整pdf+源码下载
2021-12-05 20:21:57 68.07MB 游戏安全 手游安全 外挂 游戏外挂
1
hbase权威指南中文完整版pdf 12章+6附录
2021-12-01 15:56:15 43.03MB hbase 中文 完整 pdf
1
本书的经典无需多说,接触过Linux的人应该都有耳闻,本书是其第3版的中文高清完整版,包括20章的全部内容。带书签方便查阅,网上很难找到同类更好的资源了,上传仅为分享。
2021-11-28 14:14:28 57.98MB 深入 Linux内核 第三版 完整
1
课程设计任务书 学生姓名 董航 专业班级 电信1006 班 指导教师 阙大顺李景松 工作单位 信息工程学院 课程设计名称Matlab 应用课程设计 课程设计题目Matlab 运算与应用设计5 初始条件 1. Matlab6.5 以上版本软件 2. 课程设计辅导资料Matlab 语言基础及使用入门Matlab 及在电子信息课程中的应 用线性代数及相关书籍等 3. 先修课程高等数学线性代数电路Mat
2021-11-25 10:42:17 507KB 文档 互联网 资源
完整的J2178文档。 This document consists of four parts, each published separately. SAE J2178-1 (Titled: Detailed Header Formats and Physical Address Assignments) describes the two allowed forms of message header formats, Single Byte and Consolidated. It also contains the physical node address range assignments for the typical sub-systems of an automobile. SAE J2178-2 (Titled: Data Parameter Definitions) defines the standard parametric data which may be exchanged on SAE J1850 (Class B) networks. The parameter scaling, ranges, and transfer functions are specified. Messages which refer to these parametric definitions shall always adhere to these parametric definitions. It is intended that at least one of the definitions for each parameter in this part matches the SAE J1979 definition. SAE J2178-3 (Titled: Frame IDs for Single Byte Forms of Headers) defines the message assignments for the single byte header format and the one byte form of the consolidated header format. SAE J2178-4 (Titled: Message Definition for Three Byte Headers) defines the message assignments for the three byte form of the consolidated header format.
2021-11-23 17:21:29 1.23MB J2178
1
本书包括Python程序设计的方方面面,首先从Python的安装开始,随后介绍了Python的基础知识和基本概念,包括列表、元组、字符串、字典以及各种语句。然后循序渐进地介绍了一些相对高级的主题,包括抽象、异常、魔法方法、属性、迭代器。此后探讨了如何将Python与数据库、网络、C语言等工具结合使用,从而发挥出Python的强大功能,同时介绍了Python程序测试、打包、发布等知识。最后,作者结合前面讲述的内容,按照实际项目开发的步骤向读者介绍了几个具有实际意义的 Python项目的开发过程。   本书内容涉及的范围较广,既能为初学者夯实基础,又能帮助程序员提升技能,适合各个层次的Python开发人员阅读参考。
2021-11-21 15:54:35 30.27MB python
1
Python_3.4.1官方教程中文版
2021-11-21 15:44:57 915KB python
1
学习VI和VIM编辑器(第7版)(中文版).pdf
2021-11-20 16:11:42 26.53MB vi vim
1
介绍了SDRAM DDR的访问方法,图文并茂,生动比喻,个人感觉比较好,适合初学者入门。
2021-11-20 08:32:18 1.41MB SDRAM DDR
1
This book is a comprehensive guide to machine learning with worked examples in MATLAB. It starts with an overview of the history of Artificial Intelligence and automatic control and how the field of machine learning grew from these. It provides descriptions of all major areas in machine learning. The book reviews commercially available packages for machine learning and shows how they fit into the field. The book then shows how MATLAB can be used to solve machine learning problems and how MATLAB graphics can enhance the programmer’s understanding of the results and help users of their software grasp the results. Machine Learning can be very mathematical. The mathematics for each area is introduced in a clear and concise form so that even casual readers can understand the math. Readers from all areas of engineering will see connections to what they know and will learn new technology. The book then provides complete solutions in MATLAB for several important problems in machine learning including face identification, autonomous driving, and data classification. Full source code is provided for all of the examples and applications in the book. What you'll learn An overview of the field of machine learning Commercial and open source packages in MATLAB How to use MATLAB for programming and building machine learning applications MATLAB graphics for machine learning Practical real world examples in MATLAB for major applications of machine learning in big data Who is this book for The primary audiences are engineers and engineering students wanting a comprehensive and practical introduction to machine learning. Table of Contents Part I Introduction to Machine Learning Chapter 1: An Overview of Machine Learning Chapter 2: The History of Autonomous Learning Chapter 3: Software for Machine Learning Part II MATLAB Recipes for Machine Learning Chapter 4: Representation of Data for Machine Learning in MATLAB Chapter 5: MATLAB Graphics: Chapter 6: Machine Learning Examples in
2021-11-18 15:10:34 9.87MB MATLAB Machine Learning
1