Comments (2)
Hey @fernando0315! I'm here to help you with any bugs, questions, or contributions. If you need assistance, feel free to ask.
The issue with the GoogleDriveReader
saving the token to disk even after setting is_cloud
to True
is due to a bug in the code. The _is_cloud
attribute is incorrectly set as a tuple instead of a boolean in the constructor:
self._is_cloud = (is_cloud,)
This should be corrected to:
self._is_cloud = is_cloud
This incorrect assignment causes the condition if not self._is_cloud:
in the _get_credentials
method to always evaluate to True
, leading to the token being saved to disk regardless of the is_cloud
setting [1].
To continue talking to Dosu, mention @dosu.
from llama_index.
I believe that's right, I want to make sure the internal team is aware of this
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