A guide to building, training, and deploying machine learning models for developers and data scientists
- About AWS official websit
- Book First Addition Aug 2020
- Publisher: Packt
- 4000 industty professionals
- ebooks and videos also availabled.
- Get a free eBook or video every month
- customercare@packtpub.com
- Read free article on www.packt.com
- This domain evolves: algorithms, infrastructure, frameworks, best practices, experiment with a technique,shipping actual models to actual customers in production. Add debugging, scaling and monitoring to the list.
- Up-to-date and having the right set of tools, handling speed efficiently
- Streamline yourexperimentation's pipelines, shorten the time from development to production, scale projects removing all the hassle of infrastructure maintenance, setup and updates
- AWS storage solutions, Jupyter notebook, automated labelling, automated model debugging, hyper-parameter tuning and experiment handling *. Deployment stage *. Off-the-shelf Docker images, A/B testing, canary deployments capabilities, features' distribution shifts tracking
Francesco Pochetti, Senior Data Scientist at Mash & AWS ML Hero
- He learned first programming language 40 years ago. BASIC programming book for the Commodore VIC-20.
- I'd also like to thank the AWS service teams who work on Amazon SageMaker every day,You are the unspoken heroes of this book, and I'm but your messenger
- Principal AI and Machine learning develoer advocate.
- Frequently speak at conferences and blogs on AWS blogs and on Medium
- He served 10 years as CTO/VP in top-tier web start-ups he lead software and ops teams
- he fought his way through a wide range of technical, business, and procurement issues, which helped him gain a deep understanding of physical infrastructure, its limitations, and how cloud computing can help.