Deep Learning - Ian Goodfellow 英文清晰原版,整理于2017-10-31,有完整的书签, 并且对大小做了优化。
2023-01-30 17:05:30 13.98MB Deep Learning Ian Goodfellow
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涵盖京东、百度、腾讯、网易、华为、美团点评、今日头条、滴滴出行、迅雷、好未来、携程2017秋招笔试真题!文档打开密码:niukewang,输入密码后,弹出对话框点击“只读”就可以开始学习啦!
2023-01-26 20:02:14 3.18MB 校招笔试真题
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充分利用这些模拟来了解从ABC到ALPHA-BETA到DQ转换,以及从ABC到DQ转换。 希望对您有帮助。 如果需要了解任何问题,请通过(nest2020engg@gmail.com)gmail与我联系。 谢谢....
2023-01-19 21:07:11 85KB matlab
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2017年新年快乐网站前端模板308.zip漂亮的前端后台静态代码,适合选用二次开发,bootstrap结构,自适应手机电脑,非常棒的代码。
2023-01-19 15:29:00 1.65MB 前端模板 html5模板 bootstrap 后台模板
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linux服务器挂载移动硬盘或者U盘,需要安装ntfs挂载格式软件ntfs-3g-2017.3.23-11.el6.x86_64.rpm
2023-01-17 01:01:39 251KB ntfs 挂载 centos挂载移动硬盘
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卫星计算 需要搅拌机!!! 所需的包 py pylab(matplotlib) urllib 数学 麻木 跑步 blender startup.blend --python main2.py 如果您不想启动Blender,而只想获取原始数据(控制台+ matplotlib),请像这样启动: blender startup.blend --python main2.py --background 代码: 从特定类别下载数据: TLE.download(category) example: TLE.download("iridium") 获取类别中的卫星数: TLE.numOfSat(category) example: TLE.numOfSat("noaa") 列印特定的TLE: TLE.printTLE(category, satNr) example: 从以下类
2023-01-15 12:18:02 4.85MB cpp blender satellite collision-detection
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用于安装Labview Runtime,Labview运行引擎(64位),LabWindows/CVI底层驱动程序
2023-01-11 10:35:21 170.82MB Labviewc#
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心音-深度学习 该项目旨在在低功耗ARM处理器(例如在树莓派上找到的处理器)上运行。 目的是将该软件打包到一个小型硬件设备中,发展中国家的护理工作者可以使用该设备来检测心脏病的早期发作。
2023-01-10 21:55:38 182.83MB tensorflow raspberrypi signal-processing heartbeat
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Thank you for purchasing the MEAP for Deep Learning with R. If you are looking for a resource to learn about deep learning from scratch and to quickly become able to use this knowledge to solve real-world problems, you have found the right book. Deep Learning with R is meant for statisticians, analysts, engineers and students with a reasonable amount of R experience, but no significant knowledge of machine learning and deep learning. This book is an adaptation of my previously published Deep Learning with Python, with all of the code examples using the R interface to Keras. The goal of the book is to provide a learning resource for the R community that goes all the way from basic theory to advanced practical applications. Deep learning is an immensely rich subfield of machine learning, with powerful applications ranging from machine perception to natural language processing, all the way up to creative AI. Yet, its core concepts are in fact very simple. Deep learning is often presented as shrouded in a certain mystique, with references to algorithms that “work like the brain”, that “think” or “understand”. Reality is however quite far from this science- fiction dream, and I will do my best in these pages to dispel these illusions. I believe that there are no difficult ideas in deep learning, and that’s why I started this book, based on premise that all of the important concepts and applications in this field could be taught to anyone, with very few prerequisites. This book is structured around a series of practical code examples, demonstrating on real- world problems every the notions that gets introduced. I strongly believe in the value of teaching using concrete examples, anchoring theoretical ideas into actual results and tangible code patterns. These examples all rely on Keras, the deep learning library. When I released the initial version of Keras almost two years ago, little did I know that it would quickly skyrocket to become one of the most widely used deep learning frameworks. A big part of that success is that Keras has always put ease of use and accessibility front and center. This same reason is what makes Keras a great library to get started with deep learning, and thus a great fit for this book. By the time you reach the end of this book, you will have become a Keras expert. I hope that you will this book valuable —deep learning will definitely open up new intellectual perspectives for you, and in fact it even has the potential to transform your career, being the most in-demand scientific specialization these days. I am looking forward to your reviews and comments. Your feedback is essential in order to write the best possible book, that will benefit the greatest number of people.
2023-01-10 02:56:41 18.3MB Deep Learning
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vs2017 lua脚本编辑插件,可以断点调试,可以跳转函数,比较方便,可以跟C++解决方案中添加lua项目
2023-01-03 22:07:30 3.86MB BabeLua 2017 BabeLua For
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