官术网_书友最值得收藏!

  • 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.

主站蜘蛛池模板: 新源县| 阜平县| 龙川县| 扎兰屯市| 宝坻区| 丹巴县| 宁城县| 呈贡县| 平泉县| 屏东市| 怀来县| 定日县| 都兰县| 浦东新区| 临汾市| 和静县| 娱乐| 济南市| 阜阳市| 池州市| 淮滨县| 渝北区| 河曲县| 奇台县| 承德县| 沧源| 新源县| 罗甸县| 宜丰县| 海林市| 厦门市| 英德市| 南汇区| 双鸭山市| 芦山县| 水城县| 陆丰市| 梁山县| 广河县| 西平县| 河西区|