-
Book Overview & Buying
-
Table Of Contents
-
Feedback & Rating

Getting Started with Amazon SageMaker Studio
By :

Cloud computing is a technology that delivers on-demand IT resources that can grow and shrink at any time, depending on the need. There is no more buying and maintaining computer servers or data centers. It is much like utilities in your home, such as water, which is there when you turn on the faucet. If you turn it all the way, you get a high-pressure water stream. If you turn it down, you conserve water. If you don't need it anymore, you turn it off completely. With this model, developers and teams get the following benefits from on-demand cloud computing:
How does this impact the field of ML? As compute resources become easier to acquire, information exchange becomes much more frequent. As that happens, more data is generated and stored. And more data means more opportunities to train more accurate ML models. The agility, elasticity, and scale that cloud computing provides accelerates the development and application of ML models from weeks or months down to a much shorter cycle so that developers can now generate and improve ML models faster than ever. Developers are no longer constrained by physical compute resources available to them. With better ML models, businesses can make better decisions and provide better product experiences to customers.
For cloud computing, we will be using Amazon Web Services, which is the provider of Amazon SageMaker Studio, throughout the book.