aws-samples / amazon-comprehend-examples Goto Github PK
View Code? Open in Web Editor NEWA sample set of notebooks demonstrating Amazon Comprehend capabilities.
License: MIT No Attribution
A sample set of notebooks demonstrating Amazon Comprehend capabilities.
License: MIT No Attribution
When using this method: https://boto3.amazonaws.com/v1/documentation/api/1.26.85/reference/services/comprehend/client/create_document_classifier.html
Is "SEMI_STRUCTURED_DOCUMENT" equivalent to Native documents, maybe we can call that out, since the naming convention differs from the docs and the console?
vs
https://docs.aws.amazon.com/comprehend/latest/dg/guidelines-and-limits.html
I have an example showing the preparation work necessary to split up multi-page documents into the single page format, required for context awareness, but are there best practices published handling that "pre-work?"
Also, are there published best practices to handle the 10,000 "Maximum number of pages across all documents" quota for semi-structured docs?
Thank you in advance.
my_callback = MyModCallback()
I am trying to invoke the callbacks similar to
comprehend_moderation = AmazonComprehendModerationChain(client=get_comprehend_client(), moderation_config = mod_config, moderation_callback= my_callback, verbose=False)
This is running me into above mentioned issue.
This is for the Amazon Comprehend Events Finance Tutorial.
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