- Learn Amazon SageMaker
- Julien Simon;Francesco Pochetti
- 117字
- 2021-04-09 23:11:19
Summary
In this chapter, you discovered the main capabilities of Amazon SageMaker, and how they help solve your ML pain points. By providing you with managed infrastructure and pre-installed tools, SageMaker lets you focus on the ML problem itself. Thus, you can go more quickly from experimenting with models to deploying them in production.
Then, you learned how to set up Amazon SageMaker on your local machine, on a notebook instance, and on Amazon SageMaker Studio. The latter is a managed ML IDE where many other SageMaker capabilities are just a few clicks away.
In the next chapter, we'll see how you can use Amazon SageMaker and other AWS services to prepare your datasets for training.
推薦閱讀
- 審計學(xué)
- Mastering System Center Configuration Manager
- 審計綜合模擬實訓(xùn)
- 注冊會計師全國統(tǒng)一考試專用教材:審計
- Metabase Up and Running
- Business Intelligence with MicroStrategy Cookbook
- Learning Informatica PowerCenter 9.x
- Microsoft Dynamics CRM 2011 Scripting Cookbook
- Microsoft System Center Data Protection Manager 2012 SP1
- 成功通過PMP(第3版)
- 陜西國家統(tǒng)計調(diào)查市、縣優(yōu)秀報告集萃(2006—2015)(上下)
- 內(nèi)審兵法
- 傳習(xí)集2
- Implementing VMware Horizon 7.7
- 中國國內(nèi)生產(chǎn)總值核算問題研究