5

It is simple to get a StorageStreamDownloader using the azure.storage.blob package:

from azure.storage.blob import BlobServiceClient

blob_service_client = BlobServiceClient.from_connection_string("my azure connection string")
container_client = blob_service_client.get_container_client("my azure container name")
blob_client = container_client.get_blob_client("my azure file name")
storage_stream_downloader = blob_client.download_blob()

and it is simple to process a file-like object, or more specifically, I think, a string-returning iterator (or the file path of the object) in the csv package:

import csv
from io import StringIO
 
csv_string = """col1, col2
a,b
c,d"""
with StringIO(csv_string) as csv_file:
  for row in csv.reader(csv_file):
    print(row) # or rather whatever I actually want to do on a row by row basis, e.g. ascertain that the file contains a row that meets a certain condition

What I'm struggling with is getting the streaming data from my StorageStreamDownloader into csv.reader() in such a way that I can process each line as it arrives rather than waiting for the whole file to download.

The Microsoft docs strike me as a little underwritten by their standards (the chunks() method has no annotation?) but I see there is a readinto() method for reading into a stream. I have tried reading into a BytesIO stream but cannot work out how to get the data out into csv.reader() without just outputting the buffer to a new file and reading that file. This all strikes me as a thing that should be doable but I'm probably missing something obvious conceptually, perhaps to do with itertools or asyncio, or perhaps I'm just using the wrong csv tool for my needs?

2
  • 1
    You can use pandas to read CSV file with BytesIO.
    – Jim Xu
    Feb 5, 2021 at 6:45
  • That's really helpful, thanks Jim. I was trying to stick to the specialised csv library as I'm not doing any actual data point analysis but if pandas handles it then I'll give that a go Feb 5, 2021 at 11:03

2 Answers 2

5

Based on a comment by Jim Xu:

stream = blob_client.download_blob()  
with io.BytesIO() as buf:
  stream.readinto(buf)

  # needed to reset the buffer, otherwise, panda won't read from the start
  buf.seek(0)

  data = pd.read_csv(buf)

or

csv_content = blob_client.download_blob().readall()
data = pd.read_csv(io.BytesIO(csv_content ))
1

If you want to read csv file on row by one row, you can use the method pd.read_csv(filename, chunksize=1). For more details, please refer to here and here

For example (I use pandas1.2.1)

with pd.read_csv(content, chunksize=1) as reader:

    for chunk in reader:
        print(chunk)
        print('---------------')

enter image description here

Besides, if you want to use the method chunks(), we need to set max_chunk_get_size and max_single_get_size to the same value when we create BlobClient. For more details, please refer to here and here

For example

from azure.storage.blob import BlobClient

key = '<account_key>'

blob_client = BlobClient(account_url='https://andyprivate.blob.core.windows.net',
                         container_name='input',
                         blob_name='cities.csv',
                         credential=key,
                         max_chunk_get_size=1024,
                         max_single_get_size=1024)
stream = blob_client.download_blob()

for chunk in stream.chunks():
    print(len(chunk))

enter image description here

8
  • Thanks very much indeed. Will try and get it implemented today and accept answer Feb 8, 2021 at 10:55
  • Thanks again for this but I still haven't managed to get this working together. content in your first example seems to be effectively the same as csv_file in my question, and I still don't see how I stream azure files into it? The chunk params in the second example seem very helpful tho, for optimizing once I have the stream processing actually working Feb 8, 2021 at 15:11
  • 1
    @ChristopherAlcock in the first sample, you can use the method readinto() to read into BytesIO stream. Then use pandas to process the stream.
    – Jim Xu
    Feb 9, 2021 at 1:54
  • Hi Jim, I've finally worked out what was going wrong for me here. The pandas read_csv unsurprisingly returns a pandas dataframe, which behaves very differently to the csv reader, so I had to change all my processing code too, which I hadn't foolishly hadn't expected. Thanks for your help. Feb 10, 2021 at 11:22
  • 1
    @ChristopherAlcock please try to use the following code stream = blob_client.download_blob() with BytesIO() as buf : stream.readinto(buf) pandas.read_csv(buf)
    – Jim Xu
    Feb 13, 2021 at 4:51

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