From the sample code, I can upload 64MB, without any problem:
myblob = open(r'task1.txt', 'r').read() blob_service.put_blob('mycontainer', 'myblob', myblob, x_ms_blob_type='BlockBlob')
What if I want to upload bigger size?
I ran into the same problem a few days ago, and was lucky enough to find this. It breaks up the file into chunks and uploads it for you.
I hope this helps. Cheers!
I'm not a Python programmer. But a few extra tips I can offer (my stuff is all in C):
Use HTTP PUT operations(comp=block option) for as many Blocks (4MB each) as required for your file, and then use a final PUT Block List (comp=blocklist option) that coalesces the Blocks. If your Block uploads fail or you need to abort, the cleanup for deleting the partial set of Blocks previously uploaded is a DELETE command for the file you are looking to create, but this appears supported by the 2013-08-15 version only (Someone from the Azure support should confirm this).
If you need to add Meta information, an additional PUT operation (with the comp=metadata prefix) is what I do when using the Block List method. There might be a more efficient way to tag the meta information without requiring an additional PUT, but I'm not aware of it.
This is good question. Unfortunately I don't see a real implementation for uploading arbitrary large files. So, from what I see there is much more work to do on the Python SDK, unless I am missing something really crucial.
The sample code provided in the documentation indeed uses just a single text file and uploads at once. There is no real code that is yet implemented (from what I see in the SDK Source code) to support upload of larger files.
So, for you, to work with Blobs from Python you need to understand how Azure Blob Storage works. Start here.
Then take a quick look at the REST API documentation for PutBlob operation. It is mentioned in the remarks:
The good news is that PutBlock and PutBlockList is implemented in the Python SDK, but with no sample provided for how to use it. What you have to do is to manually split your file into chunks (blocks) of up to 4 MB each. and then use
Unfortunately I'm not Python expert to help you further, but at least I give you a good picture of the situation.