Here you’ll find some technical resources for MarkLogic’s Smart Mastering, which provides the ability to master data quickly and automatically by leveraging the flexibility of our data modeling approach to quickly build your 360 view in the context of everything it knows. It looks at the multi-layered relationships across all of the data and uses fuzzy logic and AI (relevance scoring, database intelligence, and probabilistic algorithms to be specific) to match related records and provide confidence scores. Based on those scores, related records are merged automatically.

What’s more, MarkLogic’s Smart Mastering also makes it possible to un-merge records if necessary. Because it all happens in the context of an operational data hub, you can still easily access both the raw data and the harmonized, mastered versions. And it keeps the lineage and provenance so you can look back at all of your changes.

/
Master Data in Minutes with Smart Mastering
52:02

Watch Kasey Alderete, Director of Product Management, and Damon Feldman, Solutions Director, introduce Smart Mastering at MarkLogic World 2018. In this session, they show how Smart Mastering de-duplicates data from disparate sources by automatically identifying, scoring, matching, and merging. The end result: A harmonized view of your data in minutes, not months. After all, apps are only as good as the quality of the data they access.

Learn More

Smart Mastering Documentation

Learn how to get started using Smart Mastering in MarkLogic Data Hub. While you are there, read about matching and merging too.

Configure a Mastering Step Using QuickStart

Walk through a quickstart tutorial of how to configure the mastering step. It also explains what matching and merging mean.

Rethinking Master Data Management

Matt Allen discusses why MarkLogic’s Smart Mastering is a better approach to traditional MDM and how it works.

This website uses cookies.

By continuing to use this website you are giving consent to cookies being used in accordance with the MarkLogic Privacy Statement.