1

I am facing something similar to How to load file from custom hosted Minio s3 bucket into pandas using s3 URL format?

however, I already have an initialized s3 session (from boto3). How can I get the credentials returned from it to feed these directly to pandas? I.e. how can I extract the AWS_ACCESS_KEY_ID and AWS_SECRET_ACCESS_KEY from the initialized boto3 s3 client?

1
  • aren't you the one that is initialising the client with the creds? initialise pandas in the same way? can you show some code please? May 15, 2022 at 14:23

1 Answer 1

6

You can use session.get_credentials

import boto3

session = boto3.Session()
credentials = session.get_credentials()

AWS_ACCESS_KEY_ID = credentials.access_key
AWS_SECRET_ACCESS_KEY = credentials.secret_key
AWS_SESSION_TOKEN = credentials.token

If you only have access to boto client (like the S3 client), you can find the credentials hidden here:

client = boto3.client("s3")

client._request_signer._credentials.access_key
client._request_signer._credentials.secret_key
client._request_signer._credentials.token

If you don't want to handle credentials (I assume you're using the SSO here), you can load the S3 object directly with pandas: pd.read_csv(s3_client.get_object(Bucket='Bucket', Key ='FileName').get('Body'))

2
  • Thanks. What you are suggesting is an exciting option. But for now, I think I want to keep using the path (with the extra options) as this is more generic. However, session.meta.client is the object I am dealing with (and not session). How would I need to modify the parameter accordingly for this type? May 15, 2022 at 14:48
  • 1
    I edited my answer with an example with a S3 client, hope this one helps
    – RobinFrcd
    May 15, 2022 at 15:14

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

Not the answer you're looking for? Browse other questions tagged or ask your own question.