- Learn Amazon SageMaker
- Julien Simon;Francesco Pochetti
- 115字
- 2021-04-09 23:11:21
Summary
In this chapter, you learned how Amazon SageMaker Ground Truth helps you build highly accurate training datasets using image and text labeling workflows. We'll see in Chapter 5, Training Computer Vision Models, how to use image datasets labeled with Ground Truth.
Then, you learned about Amazon SageMaker Processing, a capability that helps you run your own data processing workloads on managed infrastructure: feature engineering, data validation, model evaluation, and so on.
Finally, we discussed three other AWS services (Amazon EMR, AWS Glue, and Amazon Athena), and how they could fit into your analytics and machine learning workflows.
In the next chapter, we'll start training models using the built-in machine learning models of Amazon SageMaker.
- 金融科技(FinTech)發展的國際經驗和中國政策取向(中國金融四十人論壇書系)
- Big Data Visualization
- 基本有用的計量經濟學
- 新編統計學
- 下一場全球金融危機的到來:明斯基與金融不穩定
- 2017年度注冊會計師全國統一考試專用教材(圖解版):審計
- Getting Started with Microsoft Lync Server 2013
- Business Intelligence Cookbook:A Project Lifecycle Approach Using Oracle Technology
- 公司內部審計
- 績效考核與薪酬激勵精細化設計必備全書
- 獨立審計質量的激勵治理模式研究
- PMP 5A備考寶典
- Hyper-V Best Practices
- 內部審計數字化轉型:方法論與實踐
- 審計實務