I'm trying to get an inventory of all files in a folder, which has a few sub-folders, all of which sit in a data lake. Here is the code that I'm testing.

import sys, os
import pandas as pd

mylist = []
root = "/mnt/rawdata/parent/"
path = os.path.join(root, "targetdirectory") 

for path, subdirs, files in os.walk(path):
    for name in files:
        mylist.append(os.path.join(path, name))

df = pd.DataFrame(mylist)

I also tried the sample code from this link:

Python list directory, subdirectory, and files

I'm working in Azure Databricks. I'm open to using Scala to do the job. So far, nothing has worked for me. Each time, I keep getting an empty dataframe. I believe this is pretty close, but I must be missing something small. Thoughts?

  • shouldn't be os.walk(path) instead of root.
    – furas
    Nov 7, 2019 at 14:58
  • maybe first check if this folder really exists in system. Maybe it is not folder but file. os.path.exists(path), os.path.isfile(path), os.path.isdir(path)
    – furas
    Nov 7, 2019 at 15:03
  • or maybe system mount it only when it need it and it doesn't know that you need it.? Or maybe it reads it from database?
    – furas
    Nov 7, 2019 at 15:06
  • I tried your suggestions. I'm getting the same thing...an empty dataframe. This is so bizarre. This code, or a very similar version of it, worked fine last week. Something changed, but I'm not sure what.
    – ASH
    Nov 7, 2019 at 15:09
  • first use any other program to check if folder exists, if it has the same name and if there are files. Maybe it is empty or it changed name.
    – furas
    Nov 7, 2019 at 15:25

3 Answers 3


Databricks File System (DBFS) is a distributed file system mounted into an Azure Databricks workspace and available on Azure Databricks clusters. If you are using local file API you have to reference the Databricks filesystem. Azure Databricks configures each cluster node with a FUSE mount /dbfs that allows processes running on cluster nodes to read and write to the underlying distributed storage layer with local file APIs (see also the documentation).

So in the path /dbfs: has to be included:

root = "/dbfs/mnt/rawdata/parent/"

That is different then working with the Databricks Filesystem Utility (DBUtils). The file system utilities access Databricks File System, making it easier to use Azure Databricks as a file system:


For larger Data Lakes I can recommend a Scala example in the Knowledge Base. Advantage is that it runs the listing for all child leaves distributed, so will work also for bigger directories.

  • I don't understand why, but for me, when using scala + java.io, I had to include the dbfs prefix. When using dbutils.fs.ls I did not.
    – Nick.Mc
    Jul 3, 2020 at 8:14
  • Reason might be that you don' t access data in a mount point path what is done in the examples above. Data written to mount point paths (/mnt) is stored outside of the DBFS root. For dbfs path you have to use dbfs:/ Jul 3, 2020 at 15:53
  • works perfectly for abfss:// as well (azure blob file system)
    – DaReal
    Feb 2, 2022 at 1:12

I wrote this & it works for me - it utilises the "dbutils.fs.ls" technique at the heart, and adds a recursive element to traverse subdirectories.

You just have to specify the root directory & it'll return paths to all the ".parquet"'s it finds.

# find parquet files in subdirectories recursively
def find_parquets(dbfs_ls_list):
    parquet_list = []
    if isinstance(dbfs_ls_list, str):
        # allows for user to start recursion with just a path
        dbfs_ls_list = dbutils.fs.ls(root_dir)
        parquet_list += find_parquets(dbfs_ls_list)
        for file_data in dbfs_ls_list:
            if file_data.size == 0 and file_data.name[-1] == '/':
                # found subdir
                new_dbdf_ls_list = dbutils.fs.ls(file_data.path)
                parquet_list += find_parquets(new_dbdf_ls_list)
            elif '.parquet' in file_data.name:
    return parquet_list

root_dir = 'dbfs:/FileStore/my/parent/folder/'
file_list = find_parquets(root_dir)

I got this to work.

from azure.storage.blob import BlockBlobService 

blob_service = BlockBlobService(account_name='your_account_name', account_key='your_account_key')

blobs = []
marker = None
while True:
    batch = blob_service.list_blobs('rawdata', marker=marker)
    if not batch.next_marker:
    marker = batch.next_marker
for blob in blobs:

The only prerequisite is that you need to import azure.storage. So, in the Clusters window, click 'Install-New' -> PyPI > package = 'azure.storage'. Finally, click 'Install'.

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