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AWS Free Tier

The AWS Free Tier is a program that offers free usage of certain AWS products and services to new AWS customers. The free tier is designed to allow new customers to get started with AWS for free, so they can learn about AWS and try out some of its services at no cost.

The AWS Free Tier includes the following types of products and services:

  • Always Free: These products and services are available for free, without any time limits. Examples include the EC2 Micro Instances, Amazon S3 Standard Storage, and Amazon DynamoDB.

  • Free Tier: These products and services are available for free within certain usage limits. If you exceed these limits, you will be charged for the additional usage. Examples include EC2 Instances, Amazon RDS, and Amazon SNS.

  • Trials: These products and services are available for free for a limited time, usually between 30 and 90 days. Examples include AWS Marketplace products and AWS Managed Services.
To use the AWS Free Tier, you need to create an AWS account. Once you have an account, you can use the AWS Management Console to access and manage the products and services included in the free tier.

It's important to note that the AWS Free Tier is not a free trial, and you will not be charged for using the products and services included in the free tier. However, you will be required to provide a valid credit card when you sign up for an AWS account, and you may be charged for additional usage or resources that are not covered by the free tier.


For more information about the AWS Free Tier and its terms and conditions, you can refer to the AWS Free Tier page: https://aws.amazon.com/free/.

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