- 本书细数淘宝成立十年来经历的重大变化、核心产品的设计,以及背后的思考,深挖到淘宝信奉的价值逻辑。内容涵盖商品分类与管理;首页、List页等导购产品;搜索与导航;C2C、B2C、C2B等电商模式的演化;交易的前中后:如营销工具、购物车、订单、评价;旺旺;天猫、聚划算,等等。适合产品经理、电商从业者及所有愿意思考的读者阅读。5 6浏览免费
- Machine learning is often used to build predictive models by extracting patterns from large datasets. These models are used in predictive data analytics applications including price prediction, risk assessment, predicting customer behavior, and document classification. This introductory textbook offers a detailed and focused treatment of the most important machine learning approaches used in predictive data analytics, covering both theoretical concepts and practical applications. Technical and mathematical material is augmented with explanatory worked examples, and case studies illustrate the application of these models in the broader business context. After discussing the trajectory from data to insight to decision, the book describes four approaches to machine learning: information-based learning, similarity-based learning, probability-based learning, and error-based learning. Each of these approaches is introduced by a nontechnical explanation of the underlying concept, followed by mathematical models and algorithms illustrated by detailed worked examples. Finally, the book considers techniques for evaluating prediction models and offers two case studies that describe specific data analytics projects through each phase of development, from formulating the business problem to implementation of the analytics solution. The book, informed by the authors' many years of teaching machine learning, and working on predictive data analytics projects, is suitable for use by undergraduates in computer science, engineering, mathematics, or statistics; by graduate students in disciplines with applications for predictive data analytics; and as a reference for professionals. Table of Contents Chapter 1 Machine Learning for Predictive Data Analytics Chapter 2 Data to Insights to Decisions Chapter 3 Data Exploration Chapter 4 Information-based Learning Chapter 5 Similarity-based Learning Chapter 6 Probability-based Learning Chapter 7 Error-based Learning Chapter 8 Evaluation Chapter 9 Case Study: Customer Churn Chapter 10 Case Study: Galaxy Classification Chapter 11 The Art of Machine Learning for Predictive Data Analytics Appendix A Descriptive Statistics and Data Visualization for Machine Learning Appendix B Introduction to Probability for Machine Learning Appendix C Differentiation Techniques for Machine Learning5 367浏览免费
- 新加坡管理大学信息系统学院教授朱飞达《大数据与金融创新: 从研究到实战》5 250浏览免费
- 市面上以及网络搜索中都基本很少有成体系的关于字节码编程的知识,这主要由于大部分开发人员其实很少接触这部分内容,包括;ASM、Javassist、Byte-buddy以及JavaAgent,没有很大的市场也就没有很多的资料。但大家其实已经从其他的框架或者中间件中使用到,就像你用到的;Cglib、混沌工程、非入侵的全链路监控以及你是否使用过jetbrains-agent.jar做了某项实验?0 8742浏览免费
- 本PPT为世纪佳缘研发中心总监吴金龙对Spark的介绍,侧重Mllib机器学习,GraphX图处理两个模块。世纪佳缘在Spark集群上利用机器学习和图算法实现推荐算法。5 373浏览免费
- 科研伦理与学术规范 期末考试1(50题)0 1w+浏览免费
- Hulu 资深研发主管梁宇明《Voidbox - Docker On YARN在Hulu的实践》5 301浏览免费
- 仅供测试pdf文件格式及研究学习使用,下载后请于24小时内删除!!!不得用于其他用途!5 0浏览免费
- 美团推荐与个性化团队技术经理沈国阳来到CSDN在线视频分享平台,为我们深度解析美团本地生活服务推荐的工作经验,并与群友进行互动交流。沈国阳重点介绍了美团推荐系统的架构和特色,以及在排序层面的主要工作。视频:http://www.csdn.net/article/2015-08-13/28254555 698浏览免费
- BIM是什么?它与三维GIS有什么关系?二者怎样结合起来?有哪些用途?5 2756浏览免费
- 介绍SuperMap 8C系列软件中倾斜摄影技术的原理,并深入讲解了倾斜摄影模型应用解决方案!5 1542浏览免费
- Build and execute robust and scalable applications using Apache Mesos About This Book Deploy Apache Mesos to concurrently run cutting edge data processing frameworks like Spark, Hadoop and Storm in parallel Share resources between various cluster computing applications and web applications Detailed guidance on Mesos best practices in a stable production environment Who This Book Is For This book is intended for developers and operators who want to build and run scalable and fault-tolerant applications leveraging Apache Mesos. A basic knowledge of programming with some fundamentals of Linux is a prerequisite. In Detail Apache Mesos is a cluster manager that provides efficient resource isolation and sharing across distributed applications, or frameworks. It allows developers to concurrently run the likes of Hadoop, Spark, Storm, and other applications on a dynamically shared pool of nodes. With Mesos, you have the power to manage a wide range of resources in a multi-tenant environment. Starting with the basics, this book will give you an insight into all the features that Mesos has to offer. You will first learn how to set up Mesos in various environments from data centers to the cloud. You will then learn how to implement self-managed Platform as a Service environment with Mesos using various service schedulers, such as Chronos, Aurora, and Marathon. You will then delve into the depths of Mesos fundamentals and learn how to build distributed applications using Mesos primitives. Finally, you will round things off by covering the operational aspects of Mesos including logging, monitoring, high availability, and recovery. Table of Contents Chapter 1. Running Mesos Chapter 2. Running Hadoop on Mesos Chapter 3. Running Spark on Mesos Chapter 4. Complex Data Analysis on Mesos Chapter 5. Running Services on Mesos Chapter 6. Understanding Mesos Internals Chapter 7. Developing Frameworks on Mesos Chapter 8. Administering Mesos5 105浏览免费
- GB50174-2017数据中心设计规范电子版,非扫描版,2018年1月1日执行,同时废止2008版,非扫描版,仅供参考5 1021浏览免费
- 下载、安装部署Office2019家族产品(Office 2019、Project 2019、Visio2019)及Office365家族产品的说明文档0 7362浏览免费
- Over 60 recipes on Spark, covering Spark Core, Spark SQL, Spark Streaming, MLlib, and GraphX libraries About This Book Become an expert at graph processing using GraphX Use Apache Spark as your single big data compute platform and master its libraries Learn with recipes that can be run on a single machine as well as on a production cluster of thousands of machines Who This Book Is For If you are a data engineer, an application developer, or a data scientist who would like to leverage the power of Apache Spark to get better insights from big data, then this is the book for you. What You Will Learn Install and configure Apache Spark with various cluster managers Set up development environments Perform interactive queries using Spark SQL Get to grips with real-time streaming analytics using Spark Streaming Master supervised learning and unsupervised learning using MLlib Build a recommendation engine using MLlib Develop a set of common applications or project types, and solutions that solve complex big data problems Use Apache Spark as your single big data compute platform and master its libraries In Detail By introducing in-memory persistent storage, Apache Spark eliminates the need to store intermediate data in filesystems, thereby increasing processing speed by up to 100 times. This book will focus on how to analyze large and complex sets of data. Starting with installing and configuring Apache Spark with various cluster managers, you will cover setting up development environments. You will then cover various recipes to perform interactive queries using Spark SQL and real-time streaming with various sources such as Twitter Stream and Apache Kafka. You will then focus on machine learning, including supervised learning, unsupervised learning, and recommendation engine algorithms. After mastering graph processing using GraphX, you will cover various recipes for cluster optimization and troubleshooting. Table of Contents Chapter 1: Getting Started with Apache Spark Chapter 2: Developing Applications with Spark Chapter 3: External Data Sources Chapter 4: Spark SQL Chapter 5: Spark Streaming Chapter 6: Getting Started with Machine Learning using MLlib Chapter 7: Supervised Learning with MLlib Regression Chapter 8: Supervised Learning with MLlib – Classification Chapter 9: Unsupervised Learning Chapter 10: Recommender Systems Chapter 11: Graph Processing Using GraphX Chapter 12: Optimizations and Performance Tuning5 100浏览免费
- 《LSTM and CTC training for speech recognition from Baidu》,百度语音技术部贾磊介绍百度语音识别技术的最新进展(2015.10.26)。5 343浏览免费
- 2021年1月,国内知名咨询机构“众诚智库”和工信部直属事业单位“中国电子学会”联合航天信息系统工程(北京)有限公司、无锡先进技术研究院、联想控股股份有限公司、麒麟软件有限公司、北京中科院软件中心有限公司、曙光星云信息技术(北京)有限公司、金蝶国际软件集团有限公司、北京中企伍佰信息技术研究院、统信软件技术有限公司、北京鸿腾智能科技有限公司、江苏汤谷智能科技有限公司、国能信控互联技术有限公司、中国民航信息集团有限公司、北京元年科技股份有限公司、北京东华合创科技有限公司、中国智能终端操作系统产业联盟16家企业和机构,经过全面的调研和梳理,共同发布了国内信创领域首本《中国信创产业发展白皮书(2021)》。 该白皮书首先分析了信创产业的发展背景,在全球产业从工业化向数字化升级的关键时期,中国明确提出“数字中国”建设战略,以抢占下一时期的技术优先权。但2018年以来,受“华为、中兴事件”影响,我国科技尤其是上游核心技术受制于人的现状对我国经济持续高质量发展提出了严峻考验,为了摆脱这一现状,国家将信创产业纳入国家战略,提出“2+8”发展体系,2020-2022年中国IT产业在基础硬件、基础软件、行业应用软件、信息安全等诸多领域迎来了黄金发展期。 其次,该白皮书绘制了信创产业的全景图,信创产业生态体系庞大,分别在CPU、操作系统、数据库、中间件、网络和信息安全等产品维度具体描述发展态势。0 6906浏览免费
- python Tweepy中文库0 1162浏览免费
- Optimize the power of Docker to run your applications quickly and easily About This Book Learn to compose, use, and publish the Docker containers Leverage the features of Docker to deploy your existing applications Explore real world examples of securing and managing Docker containers Who This Book Is For If you are an application developer who wants to learn Docker in order to utilize its features for application deployment, then this book is for you. No prior knowledge of Docker is required. What You Will Learn Build a Docker image using Dockerfiles Push and publish images on Docker Hub Run your own private Docker Hub and upload images onto it Create and run services inside a container to deploy your applications with ease Share data between the Docker host and containers Orchestrate multiple containers with Docker Compose Test and debug applications inside a Docker container Secure your Docker containers with SELinux In Detail Docker is a next-generation platform for simplifying application containerization life-cycle. Docker allows you to create a robust and resilient environment in which you can generate portable, composable, scalable, and stable application containers. This book is a step-by-step guide that will walk you through the various features of Docker from Docker software installation to the impenetrable security of containers. The book starts off by elucidating the installation procedure for Docker and a few troubleshooting techniques. You will be introduced to the process of downloading Docker images and running them as containers. You'll learn how to run containers as a service (CaaS) and also discover how to share data among containers. Later on, you'll explore how to establish the link between containers and orchestrate containers using Docker Compose. You will also come across relevant details about application testing inside a container. You will discover how to debug a container using the docker exec command and the nsenter tool. Finally, you will learn how to secure your containers with SELinux and other proven methods. Table of Contents Chapter 1. Getting Started with Docker Chapter 2. Handling Docker Containers Chapter 3. Building Images Chapter 4. Publishing Images Chapter 5. Running Your Private Docker Infrastructure Chapter 6. Running Services in a Container Chapter 7. Sharing Data with Containers Chapter 8. Orchestrating Containers Chapter 9. Testing with Docker Chapter 10. Debugging Containers Chapter 11. Securing Docker Containers5 159浏览免费
- Dive into the world of SQL on Hadoop and get the most out of your Hive data warehouses. This book is your go-to resource for using Hive: authors Scott Shaw, Ankur Gupta, David Kjerrumgaard, and Andreas Francois Vermeulen take you through learning HiveQL, the SQL-like language specific to Hive, to analyze, export, and massage the data stored across your Hadoop environment. From deploying Hive on your hardware or virtual machine and setting up its initial configuration to learning how Hive interacts with Hadoop, MapReduce, Tez and other big data technologies, Practical Hive gives you a detailed treatment of the software. In addition, this book discusses the value of open source software, Hive performance tuning, and how to leverage semi-structured and unstructured data. What You Will Learn Install and configure Hive for new and existing datasets Perform DDL operations Execute efficient DML operations Use tables, partitions, buckets, and user-defined functions Discover performance tuning tips and Hive best practices Who This Book Is For Developers, companies, and professionals who deal with large amounts of data and could use software that can efficiently manage large volumes of input. It is assumed that readers have the ability to work with SQL. Table of Contents Chapter 1: Setting the Stage for Hive: Hadoop Chapter 2: Introducing Hive Chapter 3: Hive Architecture Chapter 4: Hive Tables DDL Chapter 5: Data Manipulation Language (DML) Chapter 6: Loading Data into Hive Chapter 7: Querying Semi-Structured Data Chapter 8: Hive Analytics Chapter 9: Performance Tuning: Hive Chapter 10: Hive Security Chapter 11: The Future of Hive Appendix A: Building a Big Data Team Appendix B: Hive Functions4 157浏览免费
- 近年来,倾斜摄影建模、激光扫描等数据采集技术的发展,有效降低了三维空间数据的获取成本和 时间周期,提高了数据精度。伴随大规模三维空间数据的不断积累,三维空间数据的高效发布、数据共 享和数据交换,成为三维GIS研究重要内容。 本标准定义了一种开放式可扩展的空间三维模型数据格式———Spatial3DModel( S3M),适用于空 间三维模型数据的传输、交换与共享,有助于解决多源空间三维模型数据在不同终端(移动设备、浏览 器、桌面电脑)地理信息平台中的存储、高效可视化、共享与互操作等难题,对于推动我国三维地理空间 数据的共享及深入应用具有重要作用。0 1856浏览免费
- 这是一份物联网毕业设计(论文)的外文翻译文献,全文27页,英汉对照翻译的,跟大家要求的差不多。5 1300浏览免费
- SuperMap三维不仅提供Revit、Bentley、CATIA(V5)三款BIM设计软件数据导出插件,一键式导入rvt、dgn、CATProduct等BIM格式数据,而且支持AutoCAD Civil 3D 数据导出插件。更为重要的是,SuperMap GIS支持直接读取Revit数据,实现与Revit软件的快速协同。0 2134浏览免费
- 这是redis的笔记整理,是狂神整理这里我自己收藏的,有需要的小伙伴可以领取即可。0 3223浏览免费
- uperMap GIS突破了BIM主流数据的无损接入、BIM数据到GIS平台的精准匹配、超百万级BIM模型实时绘制等关键技术,突破了BIM数据与三维体模型无缝对接技术,借助三维体数据模型,实现了BIM数据在GIS平台中的分析及运算能力,开拓了三维GIS向建筑、桥梁、隧道、水利大坝等大型工程应用领域的发展,为BIM+GIS应用提供了有力的技术和平台支撑。0 1268浏览免费
- 这是whut编译原理课内实验的实验报告! 内容包含: (1)词法分析 (2)简单赋值语句的语法分析5 1640浏览免费
- P2PCast-ISW03.pdf 看看2 58浏览免费
- 本报告是基于一年一度的CSDN开发者大调查数据分析结果形成。CSDN最早从2004年开始针对中国开发者进行大规模调查,是迄今为止覆盖国内各类开发者人群数量最多,辐射地域、行业分布最广的调查活动。该调查旨在全面和深入地了解中国开发者群体整体现状、应用开发技术以及开发工具、平台的状况和发展趋势等,它是各相关行业了解中国开发者群体以及软硬件开发服务领域市场的重要参考资料。5 4337浏览免费
- AspectTestingFramework.pdf 看看0 55浏览免费
- Google_云计算三大论文中文版 Google 云计算 论文 中文版 BigTable GFS MapReduce PDF格式,一共60页。 学习云计算必读的资料!5 102浏览免费
- 本报告的形成是基于开源社与 CSDN 携手推出的“2015 年中国开源社区参与调 查问卷”,旨在对中国开源社区、开源生态、开源开发者做一次全面性地摸底调 查。5 261浏览免费
- Early Release This book explains how to take advantage of technologies like cloud, virtualization, and configuration automation to manage IT infrastructure using tools and practices from software development. These technologies have decoupled infrastructure from the underlying hardware, turning it into data and code. "Infrastructure as Code" has emerged alongside the DevOps movement as a label for approaches that merge concepts like source control systems, Test Driven Development (TDD) and Continuous Integration (CI) with infrastructure management. Virtualization and cloud make it easy to rapidly expand the size of infrastructure, but the habits and practices we used in the past with hardware-based infrastructure don't keep up. Teams end up with hundreds of servers, all a bit different, and find themselves unable to fully automate their infrastructure. The book will go through the challenges and problems created by all these wonderful new tools, and the principles and mindset changes that a team needs to make to use them effectively. It describes patterns, practices, and ideas that have been adopted from software development, especially Agile concepts, and brought into the IT Ops world as part of the DevOps movement. These ways of working have been proven in many organizations, including well known names like Netflix, Amazon, and Etsy, and also in more established organizations including publishers, banks, and even the British government. Table of Contents Chapter 1. Challenges and Principles Chapter 2. Server Management Tools Chapter 3. Infrastructure orchestration services Chapter 4. Patterns for provisioning servers Chapter 5. Patterns for creating servers Chapter 6. Patterns for managing server templates Chapter 7. Patterns for updating and changing servers Chapter 8. Software engineering practices for infrastructure Chapter 9. Testing Infrastructure Changes5 224浏览免费
- live555经典分析,很牛B哦,好好看看把,很有用的4 78浏览免费
- 基于Python的电影信息爬取与数据可视化分析.pdf5 2316浏览免费
- 结网-互联网产品经理改变世界-第二版 结网-互联网产品经理改变世界-第二版5 0浏览免费
- 百度世界2015大会,百度技术部刘洋就百度在智能语音技术上的重大创新进行解读。0 199浏览免费
- 两年前的博士毕业论文,全部信息基于公开信息,不涉及保密信息。对中国互联网监管体制历史做了回顾。便于大家了解这一政策行动。4 367浏览免费
- 人机交互复习的要点,主要包括绪论,感知和认识基础,交互设备,交互技术,界面设计,人机交互界面表示模型和实现,Web界面设计,移动界面设计,可用性与用户体验评价0 2142浏览免费
- 《数据资产管理实践白皮书(5.0版)》结合业界数据资产管理先进理念和关注焦点,总结最新实践案例,在《数据资产管理实践白皮书(4.0版)》基础上,聚焦数据资产前沿问题、优化数据资产管理理念,进一步完善数据资产管理框架、明确数据资产管理路径。5 988浏览免费
- 本白皮书重点介绍了钢铁、石化、煤炭、航空航天、船舶、汽车、轨道交通、工程机械、家电、电子、风电等 11 个垂直行业的数字化转型路径,涵盖原材料、消费品、电子和其他行业等不同门类。每个细分行业包含行业痛点和数字化转型趋势、典型应用场景、推进应用场景的着力点等三方面内容。0 1078浏览免费
- 李彦宏 智能革命5 0浏览免费
- 文因互联(Memect)鲍捷在在第三届全国中文知识图谱研讨会的演讲PPT,《知识图谱的知识表现方法回顾与展望》。4 222浏览免费
- Scala is a statically and strongly typed language that blends functional and object-oriented paradigms. It has experienced growing popularity as an appealing and pragmatic choice to write production-ready software in the functional paradigm. Scala and the functional programming paradigm enable you to solve problems with less code and lower maintenance costs than the alternatives. However, these gains can come at the cost of performance if you are not careful. Scala High Performance Programming arms you with the knowledge you need to create performant Scala applications. Starting with the basics of understanding how to define performance, we explore Scala's language features and functional programming techniques while keeping a close eye on performance throughout all the topics. We introduce you as the newest software engineer at a fictitious financial trading company, named MV Trading. As you learn new techniques and approaches to reduce latency and improve throughput, you'll apply them to MV Trading's business problems. By the end of the book, you will be well prepared to write production-ready, performant Scala software using the functional paradigm to solve real-world problems. Table of Contents Chapter 1: The Road to Performance Chapter 2: Measuring Performance on the JVM Chapter 3: Unleashing Scala Performance Chapter 4: Exploring the Collection API Chapter 5: Lazy Collections and Event Sourcing Chapter 6: Concurrency in Scala Chapter 7: Architecting for Performance0 57浏览免费
- esp32-c3芯片资料0 1702浏览免费
- Title: Hadoop for Finance Essentials Author: Rajiv Tiwari Length: 168 pages Edition: 1 Language: English Publisher: Packt Publishing Publication Date: 2015-04-30 ISBN-10: 1784395161 ISBN-13: 9781784395162 Title: Hadoop for Finance Essentials Author: Rajiv Tiwari Length: 168 pages Edition: 1 Language: English Publisher: Packt Publishing Publication Date: 2015-04-30 ISBN-10: 1784395161 ISBN-13: 97817843951625 76浏览免费
- 1800个程序员必备词汇,本词汇汇集了前后端软件开发中常用词汇,同时带有音标,基本满足日常开发需求,适合编程初学者及各阶段开发者学习使用。4 2768浏览免费
- Allen Downey的Think系列的一本,最新的英文版。5 156浏览免费
- 如题5 849浏览免费
- 海康威视h5player.js 2.0版 跨域隔离0 2731浏览免费
- 雷军是现任金山软件公司董事长、现任欢聚时代(YY语音)公司董事长,(前UC优视公司董事长,[1]前金山公司总裁兼前CEO),雷军于1992年加入金山软件,1998出任金山软件首席执行官。在他的领导下,金山软件进一步将应用软件扩展至实用软件、互联网安全软件及网络游戏等领域,并在金山的全面互联网转型的过程中做出了重要贡献5 159浏览免费
- 企业数据安全中的数据脱敏 阿里巴巴0 1021浏览免费
- 近日,物联网智库正式发布《中国物联网产业全景图谱报告2020》(以下简称“报告”),据悉,这是物联网智库连续第4年推出物联网产业全景图谱。该报告结合上一版本的物联网产业生态图谱,对产业链各环节核心企业和机构继续进行调研,对原有图谱中细分内容进行更新,希望业界能够“一张图了解物联网产业全貌”。 报告指出,“下沉”和“扩展”是今年物联网市场的主流方向,同时也是未来整个物联网产业发展的趋势。同时。对于物联网整体而言,需要处理各种不同类型的海梁的数据,进而催生了不同的芯片需求,5G芯片、AI芯片、量子芯片等成了新的增长点。0 506浏览免费
- 课后习题答案0 2068浏览免费
- 超图基于标准 C++重构GIS内核,建立了一套高性能、支持多种CPU 架构和操作系统的原生跨平台 GIS 技术体系0 669浏览免费
- 在服务端通过KEPServer读取PLC的数据,在客户端通过UA Client通道对服务端的数据进行读写。0 1632浏览免费
- CTO俱乐部第96期嘉宾侯明强演讲PPT:《DevOps的实践与挑战》。4 191浏览免费
- capwap协议的研究与分析 capwap协议的设计和实现 AC-AP系统移植4 159浏览免费
- 1、建立两个模拟信号的数学模型S_a1 (t) 和S_a2 (t),其中S_a1 (t)为有用信号, S_a2 (t)为干扰信号。两个信号的中心频率,信号带宽等参数由学生自己选定,要求两个信号的频率不重叠,S_a2 (t)的幅度比S_a1 (t)的幅度高20dB,两个信号时域叠加得到合成信号X_a (t),即X_a (t)= S_a1 (t)+ S_a2 (t),设计计算机程序仿真产生以上三个信号,分别画出三个模拟信号的时域波形和频谱图。 2、根据X_a (t)的中心频率和带宽,按照奈奎斯特采样定理选择采样频率fs,分别对三个信号进行时域采样,得到离散信号S_1 (n), S_2 (n), x0 1529浏览免费
- SVN搭建和使用手册,想使用svn的同学可以看看0 62浏览免费
- 文章列表 零基础入门深度学习(1) - 感知器 零基础入门深度学习(2) - 线性单元和梯度下降 零基础入门深度学习(3) - 神经网络和反向传播算法 零基础入门深度学习(4) - 卷积神经网络 零基础入门深度学习(5) - 循环神经网络 零基础入门深度学习(6) - 长短时记忆网络(LSTM) 零基础入门深度学习(7) - 递归神经网络5 978浏览免费