Summary
We have climbed through many techniques for our data platform. Let’s take some time to review those ideas as we close this chapter. We discussed the ins and outs of data governance basics. We transitioned into data catalogs and the importance of having a metadata catalog. With data catalogs, we also discussed data lineage or the evolutionary path of each column in our data. We next covered basic security in a Databricks platform using grants. We then tackled data quality and testing for quality using the Great Expectations Python package. Data quality is a complex topic, and this approach addresses one direction. Other directions include allowing users to report errors or using complex AI systems. Finally, we delved into Databricks Unity Catalog, an enhanced Hive metastore-based product offering metastore capability across many workspaces, among many other growing features.
We have yet to cover all the theory chapters and will look at a comprehensive lab across two...