When I simply run the following code, I always gets this error.

s3 = boto3.resource('s3')
bucket_name = "python-sdk-sample-%s" % uuid.uuid4()
print("Creating new bucket with name:", bucket_name)

I have saved my credential file in

C:\Users\myname\.aws\credentials, from where Boto should read my credentials.

Is my setting wrong?

Here is the output from boto3.set_stream_logger('botocore', level='DEBUG').

2015-10-24 14:22:28,761 botocore.credentials [DEBUG] Skipping environment variable credential check because profile name was explicitly set.
2015-10-24 14:22:28,761 botocore.credentials [DEBUG] Looking for credentials via: env
2015-10-24 14:22:28,773 botocore.credentials [DEBUG] Looking for credentials via: shared-credentials-file
2015-10-24 14:22:28,774 botocore.credentials [DEBUG] Looking for credentials via: config-file
2015-10-24 14:22:28,774 botocore.credentials [DEBUG] Looking for credentials via: ec2-credentials-file
2015-10-24 14:22:28,774 botocore.credentials [DEBUG] Looking for credentials via: boto-config
2015-10-24 14:22:28,774 botocore.credentials [DEBUG] Looking for credentials via: iam-role
  • 5
    Can you post the debug output by adding boto3.set_stream_logger('botocore', level='DEBUG') before your code? It will show where it's looking for credentials.
    – jamesls
    Oct 23, 2015 at 16:07
  • it seems that Boto looks for quite few locations for the credential config file, but apparently does not look into my home directory for some reason...
    – d-_-b
    Oct 24, 2015 at 5:29
  • 3
    Try setting the environment variable HOME to point to C:\Users\myname or setting AWS_SHARED_CREDENTIALS_FILE to point directly to your credentials file.
    – garnaat
    Oct 24, 2015 at 13:29
  • 1
    I set the env variable HOME as you described, but now am getting the following error. botocore.exceptions.NoRegionError: You must specify a region. *my config file↓ is located in the same folder as my credentails. [default] ap-northeast-1
    – d-_-b
    Oct 24, 2015 at 14:55
  • 1
    I was able to fix the problem using garnaat's comment. Sep 29, 2017 at 7:09

19 Answers 19


try specifying keys manually

    s3 = boto3.resource('s3',
         aws_secret_access_key= ACCESS_KEY)

Make sure you don't include your ACCESS_ID and ACCESS_KEY in the code directly for security concerns. Consider using environment configs and injecting them in the code as suggested by @Tiger_Mike.

For Prod environments consider using rotating access keys: https://docs.aws.amazon.com/IAM/latest/UserGuide/id_credentials_access-keys.html#Using_RotateAccessKey

  • This way is useful when handling directly on Django. Thank You. Jun 16, 2017 at 14:01
  • 5
    This is more dangerous as you are putting your secrets in your code which could end up in version control.
    – nu everest
    Feb 22, 2018 at 23:05
  • 8
    @nueverest This is correct, but you can avoid this by moving the declaration to a settings file and then injecting via environment variables.
    – Tiger_Mike
    Mar 16, 2018 at 14:24
  • 1
    Though this works, I would say it's not following best practices.
    – ben jarman
    Jun 5, 2018 at 21:31
  • 1
    Thanks. This can be used as a temp fix in dev setup. Loading these variables from a .env file(not committed) would be ideal and would be better than having to pick from ~/.aws/ folder.
    – SuperNova
    Aug 1, 2018 at 12:29

I had the same issue and found out that the format of my ~/.aws/credentials file was wrong.

It worked with a file containing:


Note that there must be a profile name "[default]". Some official documentation make reference to a profile named "[credentials]", which did not work for me.

  • 4
    Works on windows too (C:\Users\User\.aws\credentials) Jun 18, 2017 at 14:26
  • 7
    you can specify which profile to use in boto3 using session = boto3.Session(profile_name=<your_profile>) Sep 11, 2017 at 9:42
  • 1
    Using aws configure also works if you have aws-cli installed
    – radtek
    Aug 3, 2018 at 15:24
  • 3
    I was running it via ansible so another thing to look for is if you become a different user while running the command. Make sure you're not doing it with 'sudo' for example or it will try to access roots aws credentials instead and fail if they don't exist.
    – radtek
    Nov 15, 2018 at 4:17
  • 3
    you don't need to have a default profile, you can set the environment variable AWS_PROFILE to any profile you want (credentials for example) export AWS_PROFILE=credentials and when you execute your code, it'll check the AWS_PROFILE value and then it'll take the corresponding credentials from the .aws\credentials file (in this example, it'll search for the credentials profile
    – Ichigo
    Oct 14, 2021 at 19:51

If you are looking for an alternative way, try adding your credentials using AmazonCLI

from the terminal type:-

aws configure

then fill in your keys and region.


Make sure your ~/.aws/credentials file in Unix looks like this:

aws_access_key_id = yourAccessId
aws_secret_access_key = yourSecretKey

aws_access_key_id = yourAccessId
aws_secret_access_key = yourSecretKey

Your Python script should look like this, and it'll work:

from __future__ import print_function
import boto3
import os

os.environ['AWS_PROFILE'] = "MyProfile1"
os.environ['AWS_DEFAULT_REGION'] = "us-east-1"

ec2 = boto3.client('ec2')

# Retrieves all regions/endpoints that work with EC2
response = ec2.describe_regions()
print('Regions:', response['Regions'])

Source: https://boto3.readthedocs.io/en/latest/guide/configuration.html#interactive-configuration.

  • 1
    The output = json normally is placed in the ~/.aws/config in a [profile MyProfile1] section. It may not work if specified in the credentials file instead.
    – cjs
    Oct 5, 2018 at 3:33
  • @Curt J. Sampson Without checking, I am sure you are right. Thanks for the correction. Feb 12, 2019 at 16:32
  • I did export AWS_PROFILE=myprofle and it didn't work but this worked. Any explanation on why that might be happenning. Jun 1, 2020 at 17:55

I also had the same issue,it can be solved by creating a config and credential file in the home directory. Below show the steps I did to solve this issue.

Create a config file :

touch ~/.aws/config

And in that file I entered the region

region = us-west-2

Then create the credential file:

touch ~/.aws/credentials

Then enter your credentials

aws_access_key_id = XXXXXXXXXXXXXXXXXXXX 

After set all these, then my python file to connect bucket. Run this file will list all the contents.

import boto3
import os

os.environ['AWS_PROFILE'] = "Profile1"
os.environ['AWS_DEFAULT_REGION'] = "us-west-2"

s3 = boto3.client('s3', region_name='us-west-2')
print("[INFO:] Connecting to cloud")

# Retrieves all regions/endpoints that work with S3

response = s3.list_buckets()
print('Regions:', response)

You can also refer below links:


Create an S3 client object with your credentials

    "aws_access_key_id":"your access key", # os.getenv("AWS_ACCESS_KEY")
    "aws_secret_access_key":"your aws secret key" # os.getenv("AWS_SECRET_KEY")
s3_client = boto3.client('s3',**AWS_S3_CREDS)

It is always good to get credentials from os environment

To set Environment variables run the following commands in terminal

if linux or mac

$ export AWS_ACCESS_KEY="aws_access_key"
$ export AWS_SECRET_KEY="aws_secret_key"

if windows

c:System\> set AWS_ACCESS_KEY="aws_access_key"
c:System\> set AWS_SECRET_KEY="aws_secret_key"
  • 1
    you need add the session token and the region information as well
    – Jason LiLy
    Dec 20, 2021 at 18:44

from the terminal type:-

aws configure

then fill in your keys and region.

after this do next step use any environment. You can have multiple keys depending your account. Can manage multiple enviroment or keys

import boto3
aws_session = boto3.Session(profile_name="prod")
# Create an S3 client
s3 = aws_session.client('s3')

Exporting the credential also work, In linux:


These instructions are for windows machine with a single user profile for AWS. Make sure your ~/.aws/credentials file looks like this

aws_access_key_id = yourAccessId
aws_secret_access_key = yourSecretKey

I had to set the AWS_DEFAULT_PROFILEenvironment variable to profile_name found in your credentials.
Then my python was able to connect. eg from here

import boto3

# Let's use Amazon S3
s3 = boto3.resource('s3')

# Print out bucket names
for bucket in s3.buckets.all():
  • 1
    If you set the environment variable on Win10 in the machine section, you will probably need to do a reboot too.
    – Trevor
    Apr 18, 2019 at 6:48
  • 1
    @Trevor, I tested this on a windows 7 machine with Jupyter notebook, I had to restart the Jupyter server and it worked for me, but I think reboot would be a good idea.
    – hru_d
    Apr 22, 2019 at 10:44

I work for a large corporation and encountered this same error, but needed a different work around. My issue was related to proxy settings. I had my proxy set up so I needed to set my no_proxy to whitelist AWS before I was able to get everything to work. You can set it in your bash script as well if you don't want to muddy up your Python code with os settings.


import os
os.environ["NO_PROXY"] = "s3.amazonaws.com"


export no_proxy = "s3.amazonaws.com"

Edit: The above assume a US East S3 region. For other regions: use s3.[region].amazonaws.com where region is something like us-east-1 or us-west-2

  • 2
    I had a similar issue - but had to say no_proxy for so that the AWS client could get to the metadata service to find the instance profile. Oct 15, 2019 at 10:59
  • In fact this works when you are running local setup (DynamoDB) and trying to connect it. I was getting error when running OFFLINE mode without deploying. May 14, 2022 at 10:22

If you have multiple aws profiles in ~/.aws/credentials like...

[Profile 1]
aws_access_key_id = *******************
aws_secret_access_key = ******************************************
[Profile 2]
aws_access_key_id = *******************
aws_secret_access_key = ******************************************

Follow two steps:

  1. Make one you want to use as a default using export AWS_DEFAULT_PROFILE=Profile 1 command in terminal.

  2. Make sure to run above command in the same terminal from where you use boto3 or you open an editor.[Understand the following scenario]


  • If you have two terminal open called t1 and t2.
  • And you run the export command in t1 and you open JupyterLab or any other from t2, you will get NoCredentialsError: Unable to locate credentials error.


  • Run the export command in t1 and then open JupyterLab or any other from the same terminal t1.

In case of MLflow a call to mlflow.log_artifact() will raise this error if you cannot write to AWS3/MinIO data lake.

The reason is not setting up credentials in your python env (as these two env vars):

os.environ['DATA_AWS_ACCESS_KEY_ID'] = 'login'
os.environ['DATA_AWS_SECRET_ACCESS_KEY'] = 'password'

Note you may also access MLflow artifacts directly, using minio client (which requires a separate connection to the data lake, apart from mlflow's connection). This client can be started like this:

minio_client_mlflow = minio.Minio(os.environ['MLFLOW_S3_ENDPOINT_URL'].split('://')[1],
  • in my case I had to set os.environ for all: MLFLOW_S3_ENDPOINT_URL, AWS_ACCESS_KEY_ID, AWS_SECRET_ACCESS_KEY
    – gndps
    Jul 27, 2022 at 1:27

I have solved the problem like this:

aws configure

Afterwards I manually entered:

AWS Access Key ID [None]: xxxxxxxxxx
AWS Secret Access Key [None]: xxxxxxxxxx
Default region name [None]: us-east-1
Default output format [None]: just hit enter

After that it worked for me


The boto3 is looking for the credentials in the folder like


You should save two files in this folder credentials and config.

You may want to check out the general order in which boto3 searches for credentials in this link. Look under the Configuring Credentials sub heading.


If you're sure you configure your aws correctly, just make sure the user of the project can read from ./aws or just run your project as a root


I just had this problem. This is what worked for me:

pip install botocore==1.13.20

Source: https://github.com/boto/botocore/issues/1892


In case of using AWS

In my case I had to add the following policy in IAM role to allow ec2 tags to be read by the EC2 instances. That would eliminate Unable to locate credentials error :

"Version": "2012-10-17",
"Statement": [
        "Sid": "VisualEditor0",
        "Effect": "Allow",
        "Action": "ec2:DescribeTags",
        "Resource": "*"

If you run those commands from ec2 instance, and the metadata endpoint is configured to require http tokens you can get the same error. Make the http tokens optional or upgrade your client.


this is Yogendra Shinde here. I faced similar issue and this is how I solved it.

import os

import boto3

os.environ['AWS_ACCESS_KEY_ID'] = 'HHHAWLUB6FRW5000000'

os.environ['AWS_SECRET_ACCESS_KEY'] = 0000KOuXmS00qVx+o1Ok/r000UgAGz9xd2000000'

client = boto3.client('s3')

bucket_name = 'yogendrafeb2022'


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