- Learn Amazon SageMaker
- Julien Simon;Francesco Pochetti
- 326字
- 2021-04-09 23:11:15
What this book covers
Chapter 1, Getting Started with Amazon SageMaker, provides an overview of Amazon SageMaker, what its capabilities are, and how it helps solve many pain points faced by ML projects today.
Chapter 2, Handling Data Preparation Techniques, discusses data preparation options. Although this it isn't the core subject of the book, data preparation is a key topic in ML, and it should be covered at a high level.
Chapter 3, AutoML with Amazon SageMaker AutoPilot, shows you how to build, train, and optimize ML models automatically with Amazon SageMaker AutoPilot.
Chapter 4, Training Machine Learning Models, shows you how to build and train models using the collection of statistical ML algorithms built into Amazon SageMaker.
Chapter 5, Training Computer Vision Models, shows you how to build and train models using the collection of computer vision algorithms built into Amazon SageMaker.
Chapter 6, Training Natural Language Processing Models, shows you how to build and train models using the collection of natural language processing algorithms built into Amazon SageMaker.
Chapter 7, Extending Machine Learning Services Using Built-In Frameworks, shows you how to build and train ML models using the collection of built-in open source frameworks in Amazon SageMaker.
Chapter 8, Using Your Algorithms and Code, shows you how to build and train ML models using your own code on Amazon SageMaker, for example, R or custom Python.
Chapter 9, Scaling Your Training Jobs, shows you how to distribute training jobs to many managed instances, using either built-in algorithms or built-in frameworks.
Chapter 10, Advanced Training Techniques, shows you how to leverage advanced training in Amazon SageMaker.
Chapter 11, Deploying Machine Learning Models, shows you how to deploy ML models in a variety of configurations.
Chapter 12, Automating Deployment Tasks, shows you how to automate the deployment of ML models on Amazon SageMaker.
Chapter 13, Optimizing Cost and Performance, shows you how to optimize model deployments, both from an infrastructure perspective and from a cost perspective.
- Mastering Microsoft Forefront UAG 2010 Customization
- 自愿審計動機(jī)與質(zhì)量研究:基于我國中期財務(wù)報告審計的經(jīng)驗證據(jù)
- Citrix? XenMobile? Mobile Device Management
- 基本有用的計量經(jīng)濟(jì)學(xué)
- 財務(wù)審計實務(wù)指南
- 大數(shù)據(jù)搜索與挖掘及可視化管理方案 :Elastic Stack 5:Elasticsearch、Logstash、Kibana、X-Pack、Beats (第3版)
- 中國政府統(tǒng)計問題研究
- Getting Started with Microsoft Lync Server 2013
- 中國審計市場:制度變遷與競爭行為
- 內(nèi)部審計情景案例:理解審計行為,辨析審計決策
- 看穿一切數(shù)字的統(tǒng)計學(xué)
- 統(tǒng)計學(xué)視角下的金融高頻數(shù)據(jù)挖掘理論與方法研究
- Microsoft SharePoint 2010 Developer’s Compendium:The Best of Packt for Extending SharePoint
- 汪博士解讀PMP?考試(第6版)
- 舞弊審計實務(wù)指南