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We have several terabytes of address data and are investigating the possibility of storing this in a DynamoDB NoSQL database. I've done quite a bit of reading on DynamoDB and NoSQL in general, but am coming from many years of MS SQL and am struggling with some of the NoSQL concepts.

My biggest question at this point is how to setup the table structure so that I can accommodate the various different ways the data could be queried. For example, in regular SQL I would expect some queries like:

WHERE Address LIKE '%maple st%' AND ZipCode = 12345

WHERE Address LIKE '%poplar ln%' AND City = 'Los Angeles' AND State = 'CA'

WHERE OwnerName LIKE '%smith%' AND CountyFIPS = '00239'

Those are just examples. The actual queries could be any combination of those various fields.

It's not clear to me what my index should look like or how the table (or tables) should be structured. Can anyone get me started on understanding how that could work?

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The post is relatively old, but I will try to give you an answer (maybe it will be helpful for someone having similar issues in the future).

DynamoDB is not really meant to be used in the way you describe. Its strengths are in fast (smoking fast in fact) look-ups of key/value pairs. To take your example of IP address if you wanted to really quickly look-up information associated with an IP address you could easily make the HashKey a string with the IP address and use this to do a look-up.

Things start to get complicated when you want to do queries (or scans) in dynamoDb, you can read about them here: Query and Scan in DynamDB

The gist being that scans/queries are really expensive when not performed on either the HaskKey or HaskKey+RangeKey combo (range keys are basically composite keys).

In other words I am not sure if DynamoDb is the right way to go. For smoking fast search functionality I would consider using something like Lucene. If you configure your indexes wisely you will be amazed how fast it works.

Hope this helps.

Edit: Seems Amazon has now added support for secondary indices: See here

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