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AzFuse

AzFuse is a lightweight blobfuse-like python tool with the data transfer implemented through AzCopy. With this tool, reading/writing a file in azure storage is similar to reading a local file, which follows the same principle of blobfuse. However, the underlying data transfer is to leverage azcopy, which provides a much faster speed.

Installation

  1. Download azcopy from here. Copy azcopy as ~/code/azcopy/azcopy or under /usr/bin/ and make it executable. Make sure it is version 10 or higher.
  2. install by
    pip install git+https://github.com/microsoft/azfuse.git
    or
    git clone https://github.com/microsoft/azfuse.git
    cd azfuse
    python setup.py install

Preliminary

Azfuse contains 3 different kinds of file paths.

  1. local or logical path, which is populated by the user script. For example, the user script may want to access the file, named data/abc.txt, which is referred to as local path.
  2. remote path, which is the path in azure storage blob. For example, if the azure storage path is https://accountname.blob.core.windows.net/containername/path/data/abc.txt, the remote path will be path/data/abc.txt. Note that, the remote path does not include the containername in the url.
  3. cache path, which is the destination file of the azcopy, e.g. /tmp/data/abc.txt. We will use azcopy to download the file here or upload this file to Azure.

The pipeline is

  1. the user script tries to access data/abc.txt through with azfuse.File.open().
  2. if it is in read mode, the tool will check if the cache path exists.
    • if it exists, it returns the handle of the cache file
    • if it does not exist, it will download the file from remote path to cache path and return the handle of the cache file.
  3. if it is in write mode, the tool will open the cache path, and return the handle of the cache path. Before leaving with, the tool will upload the cache file to remote file.

Setup

  1. By default, the feature is disabled. That is, the file read/write will directly access the local file without trying to access the remote in azure blob. Thus, it is also recommended to first use such tool, but not to enable it (also, no need to configure it). To enable it, set AZFUSE_USE_FUSE=1 explicitly. The following describes how to configure it when enabled.

  2. Set the environment variable of AZFUSE_CLOUD_FUSE_CONFIG_FILE as the configuration file path, e.g. AZFUSE_CLOUD_FUSE_CONFIG_FILE=./aux_data/configs/azfuse.yaml

  3. The configuration file is in yaml format, and is a list of dictionary. Each dictionary contains local, remote, cache, and storage_account.

    - cache: /tmp/azfuse/data
      local: data
      remote: azfuse_data
      storage_account: storage_config_name
    - cache: /tmp/azfuse/models
      local: models
      remote: models
      storage_account: storage_config_name

    The path in the yaml file is the prefix of the corresponding path. For example, if the local path is data/abc.txt, the cache path will be /tmp/azfuse/data/abc.txt, and the remote path will be azfuse_data/abc.txt. The tool will match each prefix from the first to the last, and the one which is matched first will be the one used. If there is no match, it will assume this is a local file, which can also be a blobfuse mount file.

    The storage account here is the base file name. Here, the path will be ./aux_data/storage_account/storage_config_name.yaml. The folder can be changed by setting AZFUSE_STORAGE_ACCOUNT_CONFIG_FOLDER. The storage account yaml file's format should be like this

    account_name: accountname
    account_key: accountkey
    sas_token: sastoken
    container_name: containername

    account_key or sas_token can be null. The sas_token should start with ?.

Examples

  • Open a file to read

    from azfuse import File
    with File.open('data/abc.txt', 'r') as fp:
        content = fp.read()

    It will match the prefix of local path in the configuration file. If the cache file exists, it just returns the handle of the cache file. Otherwise, it will download the file from the remote path of the Azure Blob to the cache file, and then return the handle.

  • Open a file to write

    from azfuse import File
    with File.open('data/abc.txt', 'w') as fp:
         fp.write('abc')

    No matter whether there exists a cache file with the same name, it will open the cache file. Before it leaves with, it will upload the cache file to the remote file in the Azure Blob Storage.

  • Pre-cache a bunch of files for processing

    from azfuse import File
    File.prepare(['data/{}.txt'.format(i)] for i in range(1000))
    for i in range(1000):
        with File.open('data/{}.txt'.format(i), 'r') as fp:
           content = fp.read()

    The function of prepare will download all files in one azcopy call, which is much faster than download each file sequentially. As prepare() has already downloaded all the files to the cache folder, there will be no azcopy download when calling File.open().

  • Upload the file in an asynchronous way.

    from azfuse import File
    with File.async_upload(enabled=True):
       for i in range(1000):
           with File.open('data/{}.txt'.format(i), 'w') as fp:
                fp.write(str(i))

    A separate subprocess will be launched to upload the cache files. It will also upload multiple cache files at the same time in one azcopy call if there are. The cache file can also be re-directed to /dev/shm such that the file writing into cache files will be faster. It is enabled by File.async_upload(enabled=True, shm_as_tmp=True) In this case, the upload process will delete the cache file once it is uploaded.

Tips

  • Safe to read the same file from multiple processes.

    A lock is implemented to make sure there is only one process to launch azcopy if the file is not available in cache. The other processes will not re-launch the azcopy as long as it is ready in cache.

  • Clear cache if the file is updated on another machines.

    For the sake of speed, the tool does not check if the cached file is up-to-date. That is, if the file is updated on another machine, the current machine's cached file may be out-of-date. In this case, call File.clear_cache(local_path). The parameter here is not cache path.

  • No need to clear cache for writing.

    No matter whether there is an existing file in Blob, the writing will always overwrite the existing file or creating a new file in Blob

  • Patch the function if the open is inside some package.

    For example, in the package of Deepspeed, the torch.save is invoked in model_engine.save_checkpoint. We can patch torch.save by the following example.

    def torch_save_patch(origin_save, obj, f, *args, **kwargs):
        if isinstance(f, str):
            with File.open(f, 'wb') as fp:
                result = origin_save(obj, fp, *args, **kwargs)
        else:
            result = torch.save(obj, f, *args, **kwargs)
        return result
    
    def patch_torch_save():
        old_save = torch.save
        torch.save = lambda *args, **kwargs: torch_save_patch(old_save, *args, **kwargs)
        return old_save

    With the context of File.async_upload(enabled=True, shm_as_tmp=True), we can easily have the feature of asynchronously uploading the checkpoint to Azure Blob.

Command line

A command line tool is provided for some data management.

setup

set the following alias to use azfuse as a command line.

alias azfuse='ipython --pdb -m azfuse --'

usage

  • read a local file.
    azfuse cat data/file.tsv
    azfuse head data/file.tsv
    azfuse tail data/file.tsv
    azfuse display data/file.png
    azfuse nvim data/file.txt
    
    If you know the cache file is out of date, please manually delete the cache file and re-run this command.
  • list the files under a folder
    azfuse ls data/sub_folder
    
  • get the url of a local file, which refers to the remote file
    azfuse url data/file.tsv
    
    The SAS token is generated with 30 days expairation date. This is normally used for data sharing.
  • delete the remote file. Please note that this operation cannot be reverted. Run it with extreme caution.
    azfuse rm data/local_path.tsv
    
  • update a file
    azfuse update data/file.txt
    
    This will launch neovim as default. If the file changes, the changed content will be uploaded, and the change cannot be reverted. Thus, please also be careful.

Contributing

This project welcomes contributions and suggestions. Most contributions require you to agree to a Contributor License Agreement (CLA) declaring that you have the right to, and actually do, grant us the rights to use your contribution. For details, visit https://cla.opensource.microsoft.com.

When you submit a pull request, a CLA bot will automatically determine whether you need to provide a CLA and decorate the PR appropriately (e.g., status check, comment). Simply follow the instructions provided by the bot. You will only need to do this once across all repos using our CLA.

This project has adopted the Microsoft Open Source Code of Conduct. For more information see the Code of Conduct FAQ or contact opencode@microsoft.com with any additional questions or comments.

Trademarks

This project may contain trademarks or logos for projects, products, or services. Authorized use of Microsoft trademarks or logos is subject to and must follow Microsoft's Trademark & Brand Guidelines. Use of Microsoft trademarks or logos in modified versions of this project must not cause confusion or imply Microsoft sponsorship. Any use of third-party trademarks or logos are subject to those third-party's policies.