This guide details the steps needed to install or update the AWS SDK for Python.
The SDK is composed of two key Python packages: Botocore (the library providing the low-level functionality shared between the Python SDK and the AWS CLI) and Boto3 (the package implementing the Python SDK itself).
Note
Documentation and developers tend to refer to the AWS SDK for Python as "Boto3," and this documentation often does so as well.
To use Boto3, you first need to install it and its dependencies.
Before installing Boto3, install Python 3.6 or later; support for Python 3.5 and earlier is deprecated. After the deprecation date listed for each Python version, new releases of Boto3 will not include support for that version of Python. For details, including the deprecation schedule and how to update your project to use Python 3.6, see Migrating to Python 3.
For information about how to get the latest version of Python, see the official Python documentation.
Install the latest Boto3 release via pip:
pip install boto3
If your project requires a specific version of Boto3, or has compatibility concerns with certain versions, you may provide constraints when installing:
# Install Boto3 version 1.0 specifically
pip install boto3==1.0.0
# Make sure Boto3 is no older than version 1.15.0
pip install boto3>=1.15.0
# Avoid versions of Boto3 newer than version 1.15.3
pip install boto3<=1.15.3
Note
The latest development version of Boto3 is on GitHub.
In addition to the default install of Boto3, you can choose to include the new AWS Common Runtime (CRT). The AWS CRT is a collection of modular packages that serve as a new foundation for AWS SDKs. Each library provides better performance and minimal footprint for the functional area it implements. Using the CRT, SDKs can share the same base code when possible, improving consistency and throughput optimizations across AWS SDKs.
When the AWS CRT is included, Boto3 uses it to incorporate features not otherwise available in the AWS SDK for Python.
At this time, Boto3 uses the AWS CRT's authentication package (aws-c-auth) to add support for the AWS Signature Version 4 (sigv4) signer, which adds authentication to your AWS requests using your security credentials (your AWS access key and secret access key).
Boto3 doesn't use the AWS CRT by default but you can opt into using it by specifying the crt extra feature when installing Boto3:
pip install boto3[crt]
To revert to the non-CRT version of Boto3, use this command:
pip uninstall awscrt
If you need to re-enable CRT, reinstall boto3[crt] to ensure you get a compatible version of awscrt:
pip install boto3[crt]
Before using Boto3, you need to set up authentication credentials for your AWS account using either the IAM Console or the AWS CLI. You can either choose an existing user or create a new one.
For instructions about how to create a user using the IAM Console, see Creating IAM users. Once the user has been created, see Managing access keys to learn how to create and retrieve the keys used to authenticate the user.
If you have the AWS CLI installed, then you can use the aws configure command to configure your credentials file:
aws configure
Alternatively, you can create the credentials file yourself. By default, its location is ~/.aws/credentials. At a minimum, the credentials file should specify the access key and secret access key. In this example, the key and secret key for the account are specified the default profile:
[default]
aws_access_key_id = YOUR_ACCESS_KEY
aws_secret_access_key = YOUR_SECRET_KEY
You may also want to add a default region to the AWS configuration file, which is located by default at ~/.aws/config:
[default]
region=us-east-1
Alternatively, you can pass a region_name when creating clients and resources.
You have now configured credentials for the default profile as well as a default region to use when creating connections. See Configuration for in-depth configuration sources and options.
To use Boto3, you must first import it and indicate which service or services you're going to use:
import boto3
# Let's use Amazon S3
s3 = boto3.resource('s3')
Now that you have an s3 resource, you can make send requests to the service. The following code uses the buckets collection to print out all bucket names:
# Print out bucket names
for bucket in s3.buckets.all():
print(bucket.name)
You can also upload and download binary data. For example, the following uploads a new file to S3, assuming that the bucket my-bucket already exists:
# Upload a new file
data = open('test.jpg', 'rb')
s3.Bucket('my-bucket').put_object(Key='test.jpg', Body=data)
Resources and Collections are covered in more detail in the following sections.