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In this post, we look at how we can use AWS Glue and the AWS Lake Formation ML transform FindMatches to harmonize (deduplicate) customer data coming from different sources to get a complete customer profile to be able to provide better customer experience. The following diagram shows our solution architecture.
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By surrounding unparalleled human expertise with proven technology, data and AI tools, Octus unlocks powerful truths that fuel decisive action across financial markets. Visit octus.com to learn how we deliver rigorously verified intelligence at speed and create a complete picture for professionals across the entire credit lifecycle.
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Clearbit Capture, another valuable tool, focuses on lead capture on websites, auto-filling forms with data from Clearbit’s database to minimize form abandonment. Clearbit Capture and API : Facilitates lead capture and provides extensive API access for dataintegration.
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