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Python pathlib-style classes for cloud storage services such as Amazon S3, Azure Blob Storage, and Google Cloud Storage.

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Our goal is to be the meringue of file management libraries: the subtle sweetness of pathlib working in harmony with the ethereal lightness of the cloud.

A Python library with classes that mimic pathlib.Path's interface for URIs from different cloud storage services.

with CloudPath("s3://bucket/filename.txt").open("w+") as f:
    f.write("Send my changes to the cloud!")

Why use cloudpathlib?

  • Familiar: If you know how to interact with Path, you know how to interact with CloudPath. All of the cloud-relevant Path methods are implemented.
  • Supported clouds: AWS S3, Google Cloud Storage, and Azure Blob Storage are implemented. FTP is on the way.
  • Extensible: The base classes do most of the work generically, so implementing two small classes MyPath and MyClient is all you need to add support for a new cloud storage service.
  • Read/write support: Reading just works. Using the write_text, write_bytes or .open('w') methods will all upload your changes to cloud storage without any additional file management as a developer.
  • Seamless caching: Files are downloaded locally only when necessary. You can also easily pass a persistent cache folder so that across processes and sessions you only re-download what is necessary.
  • Tested: Comprehensive test suite and code coverage.
  • Testability: Local filesystem implementations that can be used to easily mock cloud storage in your unit tests.

Installation

cloudpathlib depends on the cloud services' SDKs (e.g., boto3, google-cloud-storage, azure-storage-blob) to communicate with their respective storage service. If you try to use cloud paths for a cloud service for which you don't have dependencies installed, cloudpathlib will error and let you know what you need to install.

To install a cloud service's SDK dependency when installing cloudpathlib, you need to specify it using pip's "extras" specification. For example:

pip install cloudpathlib[s3,gs,azure]

Currently supported cloud storage services are: azure, gs, s3. You can also use all to install all available services' dependencies.

If you do not specify any extras or separately install any cloud SDKs, you will only be able to develop with the base classes for rolling your own cloud path class.

conda

cloudpathlib is also available using conda from conda-forge. Note that to install the necessary cloud service SDK dependency, you should include the appropriate suffix in the package name. For example:

conda install cloudpathlib-s3 -c conda-forge

If no suffix is used, only the base classes will be usable. See the conda-forge/cloudpathlib-feedstock for all installation options.

Development version

You can get latest development version from GitHub:

pip install https://github.com/drivendataorg/cloudpathlib.git#egg=cloudpathlib[all]

Note that you similarly need to specify cloud service dependencies, such as all in the above example command.

Quick usage

Here's an example to get the gist of using the package. By default, cloudpathlib authenticates with the environment variables supported by each respective cloud service SDK. For more details and advanced authentication options, see the "Authentication" documentation.

from cloudpathlib import CloudPath

# dispatches to S3Path based on prefix
root_dir = CloudPath("s3://drivendata-public-assets/")
root_dir
#> S3Path('s3://drivendata-public-assets/')

# there's only one file, but globbing works in nested folder
for f in root_dir.glob('**/*.txt'):
    text_data = f.read_text()
    print(f)
    print(text_data)
#> s3://drivendata-public-assets/odsc-west-2019/DATA_DICTIONARY.txt
#> Eviction Lab Data Dictionary
#>
#> Additional information in our FAQ evictionlab.org/help-faq/
#> Full methodology evictionlab.org/methods/
#>
#> ... (additional text output truncated)

# use / to join paths (and, in this case, create a new file)
new_file_copy = root_dir / "nested_dir/copy_file.txt"
new_file_copy
#> S3Path('s3://drivendata-public-assets/nested_dir/copy_file.txt')

# show things work and the file does not exist yet
new_file_copy.exists()
#> False

# writing text data to the new file in the cloud
new_file_copy.write_text(text_data)
#> 6933

# file now listed
list(root_dir.glob('**/*.txt'))
#> [S3Path('s3://drivendata-public-assets/nested_dir/copy_file.txt'),
#>  S3Path('s3://drivendata-public-assets/odsc-west-2019/DATA_DICTIONARY.txt')]

# but, we can remove it
new_file_copy.unlink()

# no longer there
list(root_dir.glob('**/*.txt'))
#> [S3Path('s3://drivendata-public-assets/odsc-west-2019/DATA_DICTIONARY.txt')]

Supported methods and properties

Most methods and properties from pathlib.Path are supported except for the ones that don't make sense in a cloud context. There are a few additional methods or properties that relate to specific cloud services or specifically for cloud paths.

Methods + properties AzureBlobPath S3Path GSPath
absolute
anchor
as_uri
drive
exists
glob
is_absolute
is_dir
is_file
is_relative_to
iterdir
joinpath
match
mkdir
name
open
parent
parents
parts
read_bytes
read_text
relative_to
rename
replace
resolve
rglob
rmdir
samefile
stat
stem
suffix
suffixes
touch
unlink
with_name
with_suffix
write_bytes
write_text
as_posix
chmod
cwd
expanduser
group
home
is_block_device
is_char_device
is_fifo
is_mount
is_reserved
is_socket
is_symlink
lchmod
link_to
lstat
owner
readlink
root
symlink_to
with_stem
cloud_prefix
copy
copytree
download_to
etag
fspath
is_valid_cloudpath
rmtree
upload_from
blob
bucket
container
key
md5

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Sample code block generated using the reprexpy package.

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