A. Build a graph-based recommendation engine by using Amazon Neptune. Search the documents for vertices with relationships among the different sources to connect.
B. Create an AWS Lambda application in which the documents are uploaded into Amazon S3. Populate Amazon DynamoDB tables with the metadata of the documents for users to search.
C. Develop a serverless document scanner by using Amazon Textract to analyze the text from the various sources. Store the detected text in an Amazon Aurora database for analysis.
D. Define the data sources in an Amazon S3 data lake. Analyze the documents by using AWS Glue. Query the documents for relationships by using Amazon Athena.
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