新書推薦:
《
恶的哲学研究(社会思想丛书)
》
售價:NT$
500.0
《
不止江湖
》
售價:NT$
449.0
《
天才留步!——从文艺复兴到新艺术运动(一本关于艺术天才的鲜活故事集,聚焦艺术史的高光时刻!)
》
售價:NT$
704.0
《
双城史
》
售價:NT$
505.0
《
冯友兰和青年谈心系列:不是问题的问题(哲学大师冯友兰和年轻人谈心,命运解读)
》
售價:NT$
254.0
《
月与蟹(青鲤文库)荣获第144届直木奖,天才推理作家经典作品全新译本。一部青春狂想曲,带你登上心理悬疑之巅。
》
售價:NT$
230.0
《
索恩丛书·盛清统治下的太监与皇帝
》
售價:NT$
403.0
《
透过器物看历史(全6册)
》
售價:NT$
2234.0
內容簡介:
本书重点讲解基于云平台的超参数优化、神经构架搜索以及算法选择等内容,是自动机器学习的基本任务。介绍了基于三个主要云服务提供商(包括 Microsoft Azure、Amazon Web Services (AWS) 和 Google Cloud Platform)进行 AutoML,同时部署 ML 模型和管道,具有较强的实用性。在应用场景中评估 AutoML 方面,例如算法选择、自动特征化和超参数调整,并区分云和 OSS 产品等。本书适用于从事机器学习或人工智能方向的数据科学家或工程师学习,也适合学生或行业初学者进行入门学习实践。
關於作者:
Adnan Masood,工程师、教师、研究员,在金融技术和开发大型系统方面拥有超过20年的全球经验。被微软评为微软区域总监和微软人工智能领域最有价值专家。担任UST-Global的首席人工智能官和首席架构师,负责公司在认知计算、人工智能、机器学习和学术关系方面的整体战略。与斯坦福人工智能实验室、麻省理工学院CSAIL合作,领导数据科学家和工程师团队构建人工智能解决方案,以产生影响一系列业务、产品和计划的商业价值和见解。在帕克大学教授数据科学,并在加州大学圣地亚哥分校教授Windows WCF课程。担任《财富》500强企业和初创企业顾问。曾出版亚马逊编程语言畅销书《f#函数编程》。Adnan Masood,工程师、教师、研究员,在金融技术和开发大型系统方面拥有超过20年的全球经验。被微软评为微软区域总监和微软人工智能领域最有价值专家。担任UST-Global的首席人工智能官和首席架构师,负责公司在认知计算、人工智能、机器学习和学术关系方面的整体战略。与斯坦福人工智能实验室、麻省理工学院CSAIL合作,领导数据科学家和工程师团队构建人工智能解决方案,以产生影响一系列业务、产品和计划的商业价值和见解。在帕克大学教授数据科学,并在加州大学圣地亚哥分校教授Windows WCF课程。担任《财富》500强企业和初创企业顾问。曾出版亚马逊编程语言畅销书《f#函数编程》。
目錄 :
第 1 章 走进自动机器学习··············································································.1 1.1 机器学习开发生命周期 ·······································································.1 1.2 自动机器学习简介 ·············································································.2 1.3 自动机器学习的工作原理 ····································································.3 1.4 数据科学的大众化 ·············································································.5 1.5 揭穿自动机器学习的迷思 ····································································.5 1.6 自动机器学习生态系统 ·······································································.6 1.7 小结 ·······························································································11 第 2 章 自动机器学习、算法和技术··································································12 2.1 自动机器学习概述 ·············································································12 2.2 自动特征工程 ···················································································15 2.3 超参数优化 ······················································································16 2.4 神经架构搜索 ···················································································18 2.5 小结 ·······························································································19 第 3 章 使用开源工具和库进行自动机器学习······················································20 3.1 技术要求 ·························································································20 3.2 自动机器学习的开源生态系统 ······························································21 3.3 TPOT······························································································22 3.4 Featuretools ······················································································29 3.5 Microsoft NNI ···················································································32 3.6 auto-sklearn ······················································································38 3.7 AutoKeras ························································································41 3.8 Ludwig ····························································································44 3.9 AutoGluon························································································44 3.10 小结······························································································44 第 4 章 Azure Machine Learning········································································45 4.1 Azure Machine Learning 入门 ································································45 4.2 Azure Machine Learning 栈 ···································································46 4.3 Azure Machine Learning 服务 ································································50 4.4 使用 Azure Machine Learning 建模 ·························································56 4.5 使用 Azure Machine Learning 部署和测试模型 ··········································68 4.6 小结 ·······························································································70 第 5 章 使用 Azure 进行自动机器学习 ·······························································71 5.1 Azure 中的自动机器学习 ·····································································715.2 使用自动机器学习进行时间序列预测 ·····················································85 5.3 小结 ·······························································································97 第 6 章 使用 AWS 进行机器学习 ······································································98 6.1 AWS 环境中的机器学习······································································98 6.2 开始使用 AWS ···············································································.101 6.3 使用 Amazon SageMaker Autopilot·······················································.109 6.4 使用 Amazon SageMaker JumpStart······················································.111 6.5 小结 ····························································································.111 第 7 章 使用 Amazon SageMaker Autopilot 进行自动机器学习······························.113 7.1 技术要求 ······················································································.113 7.2 创建 Amazon SageMaker Autopilot