Back to Basics Bonus Week: Deploying to the Cloud

Welcome back to the KDnuggets’ "Back to Basics" series. This is the BONUS week and we will dive into learning about deploying to the cloud.



Back to Basics Bonus Week: Deploying to the Cloud
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The team at KDnuggets hope you have been enjoying the ‘Back to Basic’ series. To end it off, we have a bonus week for those who want to go that extra mile and increase their knowledge base. 

If you haven’t already, have a look at:

Moving onto the bonus week, 

  • Bonus 1: Getting Started with Google Platform in 5 Steps
  • Bonus 2: Deploying your Machine Learning Model to Production in the AWS Cloud

 

Getting Started with Google Platform in 5 Steps

 

Bonus Week - Part 1: Getting Started with Google Cloud Platform in 5 Steps

Explore the essentials of Google Cloud Platform for data science and ML, from account setup to model deployment, with hands-on project examples.

This article aims to provide a step-by-step overview of getting started with Google Cloud Platform (GCP) for data science and machine learning. We'll give an overview of GCP and its key capabilities for analytics, walk through account setup, explore essential services like BigQuery and Cloud Storage, build a sample data project, and use GCP for machine learning. 

Whether you're new to GCP or looking for a quick refresher, read on to learn the basics and hit the ground running with Google Cloud.

 

Deploying your Machine Learning Model to Production in the AWS Cloud

 

Bonus Week - Part 2: Deploying Your Machine Learning Model to Production in the Cloud

Learn a simple way to have a live model hosted on AWS.

AWS, or Amazon Web Services, is a cloud computing service used in many businesses for storage, analytics, applications, deployment services, and many others. It’s a platform utilizes several services to support business in a serverless way with pay-as-you-go schemes.

Machine learning modeling activity is also one of the activities that AWS supports. With several services, modeling activities can be supported, such as developing the model to making it into production. AWS has shown versatility, which is essential for any business that needs scalability and speed.

This article will discuss deploying a machine learning model in the AWS cloud into production. How could we do that? Let’s explore further.

 

Wrapping it Up

 

And that’s a wrap!

Congratulations on completing the Bonus Week to the Back to Basic series. 

The team at KDnuggets hope that the Back to Basics pathway has provided readers with a comprehensive and structured approach to mastering the fundamentals of data science. 

If you have enjoyed the Back to Basic series, let us know in the comments so the team can craft another series. Please drop suggestions too!
 
 

Nisha Arya is a data scientist, freelance technical writer, and an editor and community manager for KDnuggets. She is particularly interested in providing data science career advice or tutorials and theory-based knowledge around data science. Nisha covers a wide range of topics and wishes to explore the different ways artificial intelligence can benefit the longevity of human life. A keen learner, Nisha seeks to broaden her tech knowledge and writing skills, while helping guide others.