I have a use case that’s solvable by ordinary methods but..

I want to find duplicates in customer data with low quality. Lack of standards, different order of names, punctuation, abbreviations, misspellings, etc

I need to be able to generate unique id’s for each person and cluster the records that refer to the same person under the same id.

There are roughly 1-2 billion records that would first need to be clustered.

After that, a scenario would be I get 100k to 20 million records and have to dedupe them against the larger dataset.

Conventionally, I could solve this via a normalization process, partitioning the records on something that drastically narrowed the search space and then manually figuring out some coded rules that caught most cases with a high amount of accuracy.

Easier said than done, but maybe doable. Maybe even the best way?

Or is there an appropriate use for deep learning here that can perform?

In my mind there are two primary challenges:

1) How to reliably determine if one record is a match for one other record, with lots of “fuzziness” built in

2) How to operate at such a volume of data and still scale

With things like Kubernetes, maybe I don’t need Spark? Or maybe Spark is better? Or something else?

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